Build data science skills with courses on data analysis, visualization, statistics, pandas, and end-to-end data science workflows.
Complete data science workflow specialization covering data cleaning, analysis, visualization, and machine learning applications.
Introduction to Python programming for data analysis. Learn pandas, numpy, and visualization libraries for data science.
A comprehensive, hands-on guide to Tableau for data science, covering all the essential skills for creating powerful visualizations for EDA.
This course focuses on the fundamentals of Data Science, Machine learning, and deep learning in the beginning and with the passage of time, the content and lectures become advanced and more practical. But before everything, the introduction of python is discussed. Python is one of the fastest-growing programming languages and if we specifically look from the perspective of Data Science, Machine learning and deep learning, there is no other choice then “python” as a programming language.First of all, there is a crash course on python for those who are not very good with python and then there is an exercise for python that is supposed to be solved by you but if you feel any difficulty in solving the exercise, the solution is also provided.Then we moved on towards the Data Science and we start from data parsing using Scrapy then the data visualizations by using several libraries of python and finally we end up learning different data preprocessing techniques. And in the end, there is a complete project that we’ll do together.After that, we’ll be learning a few classical and a few advanced machine learning algorithms. Some of them will be implemented from scratch and the others will be implemented by using the builtin libraries of python. At the end of every algorithm, there will be a mini-project.Finally, Deep learning will be discussed, the basic structure of an artificial neural network and it’s the implementation in TensorFlow followed by a complete deep learning-based project. And in the end, some hyperparameter tuning techniques will be discussed that’ll improve the performance of the model.About The Instructor:Below is an introduction to Mr. Sajjad Mustafa, the instructor of this course.He an expert in Web
Welcome to my " Complete Python for Data Science & Machine Learning from A-Z " course.Python with Machine Learning & Data Science, Data Visulation, Numpy & Pandas for Data Analysis, Kaggle projects from A-Z Python is a computer programming language often used to build websites and software, automate tasks, and conduct data analysis. Python is a general-purpose language, meaning it can be used to create a variety of different programs and isn't specialized for any specific problems.Python instructors at OAK Academy specialize in everything from software development to data analysis and are known for their effective, friendly instruction for students of all levels.Whether you work in machine learning or finance or are pursuing a career in web development or data science, Python is one of the most important skills you can learn.Python's simple syntax is especially suited for desktop, web, and business applications. Python's design philosophy emphasizes readability and usability. Python was developed upon the premise that there should be only one way (and preferably one obvious way) to do things, a philosophy that has resulted in a strict level of code standardization. The core programming language is quite small and the standard library is also large. In fact, Python's large library is one of its greatest benefits, providing a variety of different tools for programmers suited for many different tasks.Do you want to learn one of the employer’s most requested skills? If you think so, you are at the right place. Python, machine learning, Django, python programming, machine learning python, python Bootcamp, coding, data science, data analysis, programming languages.We've designed for you "Complete Python for Data Science & Machine Learning from A-Z” a straightforward course for the Complete Python programming langu
Complete Tensorflow Mastery For Machine Learning & Deep Learning in PythonTHIS IS A COMPLETE DATA SCIENCE TRAINING WITH TENSORFLOW IN PYTHON!It is a full 7-Hour Python Tensorflow Data Science Boot Camp that will help you learn statistical modelling, data visualization, machine learning and basic deep learning using the Tensorflow framework in Python.. HERE IS WHY YOU SHOULD ENROLL IN THIS COURSE:This course is your complete guide to practical data science using the Tensorflow framework in Python.. This means, this course covers all the aspects of practical data science with Tensorflow (Google's powerful Deep Learning framework) and if you take this course, you can do away with taking other courses or buying books on Python Tensorflow based data science. In this age of big data, companies across the globe use Python to sift through the avalanche of information at their disposal and advent of Tensorflow is revolutionizing Deep Learning... By storing, filtering, managing, and manipulating data in Python and Tensorflow, you can give your company a competitive edge and boost your career to the next level.THIS IS MY PROMISE TO YOU: COMPLETE THIS ONE COURSE & BECOME A PRO IN PRACTICAL PYTHON TENSORFLOW BASED DATA SCIENCE!But first things first. My name is Minerva Singh and I am an Oxford University MPhil (Geography and Environment) graduate. I recently finished a PhD at Cambridge University (Tropical Ecology and Conservation). I have several years of experience in analyzing real life data from different sources using data science related techniques and producing publications for international peer reviewed journa
Welcome to the Full Stack Data Science & Machine Learning BootCamp Course, the only course you need to learn Foundation skills and get into data science.At over 40+ hours, this Python course is without a doubt the most comprehensive data science and machine learning course available online. Even if you have zero programming experience, this course will take you from beginner to mastery. Here's why:The course is taught by the lead instructor at the PwC, India's leading in-person programming bootcamp.In the course, you'll be learning the latest tools and technologies that are used by data scientists at Google, Amazon, or Netflix.This course doesn't cut any corners, there are beautiful animated explanation videos and real-world projects to build.The curriculum was developed over a period of three years together with industry professionals, researchers and student testing and feedback.To date, I’ve taught over 10000+ students how to code and many have gone on to change their lives by getting jobs in the industry or starting their own tech startup.You'll save yourself over $12,000 by enrolling, but get access to the same teaching materials and learn from the same instructor and curriculum as our in-person programming bootcamp.We'll take you step-by-step through video tutorials and teach you everything you need to know to succeed as a data scientist and machine learning professional.The course includes over 40+ hours of HD video tutorials and builds your programming knowledge while solving real-world problems.In the curriculum, we cover a large number of important data science and machine learning topics, such as:<
Selamat datang di program Pelatihan Data Science dengan Deep Learning dan PythonPelatihan ini diperuntukan untuk rekan - rekan ingin belajar data science dan machine learning dengan titik fokus pemanfaatan Deep Learning untuk model machine learning dan data science.Peserta diharapkan sudah menguasai pemrograman Python dasar implementasi machine learning dan data science dengan menggunakan Python. Kami juga menyediakan konten mengenai Pelatihan Data Science dan Machine Learning Dengan Python yang ada di Udemy ini.Seluruh konten didalam pelatihan ini dilaksanan secara step - by - step (langkah demi langkah) dan berurutan sehingga ini diharapkan semua peserta dapat dengan mudah mengikuti semua praktikum yang diberikan didalam pelatihan ini. Diharapkan semua peserta dapat mengikuti konten pelatihan ini secara berurutan ;).Berikut ini konten yang akan diberikan pada pelatihan ini.Persiapan pelatihanKonsep dan teori mengenai Deep LearningPengenalan TensorFlow dan KerasDasar Tensor TensorFlow Pemanfaatan GPU dan TPU pada komputasi TensorFlow dan KerasPembuat Model dan Layer Untuk TensorFlowTraining dan evaluasi Deep Learning pada TensorFlowPengenalan dan instalasi PyTorchPemanfaatan GPU dan TPU pada komputasi PyTorchMembangun model Deep Learning dengan PyTorchTraining dan evaluasi Deep Learning pada PyTorchPenggunaan TensorBoard untuk visualisasi model pada TensorFlow dan PyTorchPenerapan Hyperparameter Tuning pada TensorFlow dan KerasPenerapan Hyperparameter Tuning pada PyTorchPenggunaan TensorBoard untuk implementasi HyperparameterKumpulan Studi KasusJika ada hal - hal yang ingin ditanyakan mengenai topik diatas, rekan - rekan dapat langsung ditulisnya di ruang diskusi pada we
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Si estás buscando un curso práctico, completo y avanzado para aprender Machine Learning y Data Science con Big Data utilizando PySpark, has venido al lugar correcto.Este curso está diseñado para aprender todo lo relacionado con el Machine Learning y Data Science en Spark como modelos de aprendizaje automático de clasificación, regresión, clustering, NLP, Pipelines y técnicas para la ingeniería de datos y preprocesamiento. También te enseñaremos a programar en PySpark y las buenas prácticas para trabajar con Big Data, visualización de datos o analítica avanzada. Finalmente, aprenderás las últimas tecnologías que han permitido impulsar el Machine learning con Spark como MLFlow, Databricks, Spark ML o Spark Koalas.Este curso es para científicos de datos o aspirantes a científicos de datos que desean obtener capacitación práctica, con las últimas tecnologías y aplicable al mundo real en PySpark (Python para Apache Spark)El Big Data ha revolucionado el campo del Machine Learning, permitiendo entrenar modelos sobre grandes cantidades de datos. El Machine Learning convencional con Python se ha quedado obsoleto y nuevas tecnologías como Apache Spark han cobrado gran relevancia. Este curso te enseñará todo lo que necesitas saber para posicionarte en el mercado laboral del Machine Learning y aprenderás una de las habilidades más demandadas para ingenieros de datos y científicos de datos.En este curso te enseñaremos todas las habilidades de Machine Learning con PySpark, partiendo desde las bases hasta las funcionalidades más avanzadas. Para ello utilizaremos presentaciones visu
This is the most complete course online for learning about Python, Data Science, and Machine Learning. Join Jose Portilla's over 3 million students to learn about the future today!What is in the course?Welcome to the most complete course on learning Data Science and Machine Learning on the internet! After teaching over 2 million students I've worked for over a year to put together what I believe to be the best way to go from zero to hero for data science and machine learning in Python!This course is designed for the student who already knows some Python and is ready to dive deeper into using those Python skills for Data Science and Machine Learning. The typical starting salary for a data scientists can be over $150,000 dollars, and we've created this course to help guide students to learning a set of skills to make them extremely hirable in today's workplace environment.We'll cover everything you need to know for the full data science and machine learning tech stack required at the world's top companies. Our students have gotten jobs at McKinsey, Facebook, Amazon, Google, Apple, Asana, and other top tech companies! We've structured the course using our experience teaching both online and in-person to deliver a clear and structured approach that will guide you through understanding not just how to use data science and machine learning libraries, but why we use them. This course is balanced between practical real world case studies and mathematical theory behind the machine learning algorithms.We cover advanced machine learning algorithms that most other courses don't! Including advanced regularization methods and state of the art unsupervised learning methods, such as DBSCAN.This comprehensive course is designed to be on par with Bootcamps that usually cost thousands
Are you interested in data science and machine learning, but you don't have any background, and you find the concepts confusing?Are you interested in programming in Python, but you always afraid of coding?I think this course is for you!Even if you are familiar with machine learning, this course can help you to review all the techniques and understand the concept behind each term.This course is completely categorized, and we don't start from the middle! We actually start from the concept of every term, and then we try to implement it in Python step by step. The structure of the course is as follows:Chapter1: Introduction and all required installationsChapter2: Useful Machine Learning libraries (NumPy, Pandas & Matplotlib)Chapter3: PreprocessingChapter4: Machine Learning TypesChapter5: Supervised Learning: ClassificationChapter6: Supervised Learning: RegressionChapter7: Unsupervised Learning: ClusteringChapter8: Model TuningFurthermore, you learn how to work with different real datasets and use them for developing your models. All the Python code templates that we write during the course together are available, and you can download them with the resource button of each section.Remember! That this course is created for you with any background as all the concepts will be explained from the basics! Also, the programming in Python will be explained from the basic coding, and you just need to know the syntax of Python.
Hello there,Welcome to the " Complete Data Science & Machine Learning A-Z with Python " CourseMachine Learning & Data Science all in one course with Python Data Visualization, Data Analysis Pandas & Numpy, KaggleMachine learning is a branch of artificial intelligence (AI) and computer science which focuses on the use of data and algorithms to imitate the way that humans learn, gradually improving its accuracy.You can develop the foundational skills you need to advance to building neural networks and creating more complex functions through the Python and R programming languages. Machine learning helps you stay ahead of new trends, technologies, and applications in this field.Machine learning is being applied to virtually every field today. That includes medical diagnoses, facial recognition, weather forecasts, image processing, and more. In any situation in which pattern recognition, prediction, and analysis are critical, machine learning can be of use. Machine learning is often a disruptive technology when applied to new industries and niches. Machine learning engineers can find new ways to apply machine learning technology to optimize and automate existing processes. With the right data, you can use machine learning technology to identify extremely complex patterns and yield highly accurate predictions.It’s hard to imagine our lives without machine learning. Predictive texting, email filtering, and virtual personal assistants like Amazon’s Alexa and the iPhone’s Siri, are all technologies that function based on machine learning algorithms and mathematical models. Python, machine learning, django, python programming, machine learning python, python for beginners, data science. Kaggle, statistics, r, python data science, deep learning, python programming, django, machine learning a-z, data scientist, python for data sciencePandas is an open source Python package that is most widely used for
Hello there,Welcome to the “Machine Learning & Data Science with Python & Kaggle | A-Z” course.Data Science & Machine Learning A-Z & Kaggle with Heart Attack Prediction projects and Machine Learning Python projectsMachine learning is a branch of artificial intelligence (AI) and computer science which focuses on the use of data and algorithms to imitate the way that humans learn, gradually improving its accuracy.You can develop the foundational skills you need to advance to building neural networks and creating more complex functions through the Python and R programming languages. Machine learning helps you stay ahead of new trends, technologies, and applications in this field.Machine learning is being applied to virtually every field today. That includes medical diagnoses, facial recognition, weather forecasts, image processing, and more. In any situation in which pattern recognition, prediction, and analysis are critical, machine learning can be of use. Machine learning is often a disruptive technology when applied to new industries and niches. Machine learning engineers can find new ways to apply machine learning technology to optimize and automate existing processes. With the right data, you can use machine learning technology to identify extremely complex patterns and yield highly accurate predictions.It’s hard to imagine our lives without machine learning. Predictive texting, email filtering, and virtual personal assistants like Amazon’s Alexa and the iPhone’s Siri, are all technologies that function based on machine learning algorithms and mathematical models. Python, machine learning, django, python programming, machine learning python, python for beginners, data science. Kaggle, statistics, r, python data science, deep learning, python programming, django, machine learning a-z, data scientist, python for data sciencePython instructors on OAK Academy specialize in everything from software d
Learning how to program in Python is not always easy especially if you want to use it for Data science. Indeed, there are many of different tools that have to be learned to be able to properly use Python for Data science and machine learning and each of those tools is not always easy to learn. But, this course will give all the basics you need no matter for what objective you want to use it so if you :- Are a student and want to improve your programming skills and want to learn new utilities on how to use Python- Need to learn basics of Data science- Have to understand basic Data science tools to improve your career- Simply acquire the skills for personal useThen you will definitely love this course. Not only you will learn all the tools that are used for Data science but you will also improve your Python knowledge and learn to use those tools to be able to visualize your projects.The structure of the courseThis course is structured in a way that you will be able to to learn each tool separately and practice by programming in python directly with the use of those tools. Indeed, you will at first learn all the mathematics that are associated with Data science. This means that you will have a complete introduction to the majority of important statistical formulas and functions that exist. You will also learn how to set up and use Jupyter as well as Pycharm to write your Python code. After, you are going to learn different Python libraries that exist and how to use them properly. Here you will learn tools such as NumPy or SciPy and many others. Finally, you will have an introduction to machine learning and learn how a machine learning algorithm works. All this in just one course.Another very interesting thing about this course it contains a lot of practice. Indeed, I build all my course on a concept of learning by practice. In other words, this course contains a lot of practice this way you will be able to be sure that you completely underst
Hello there,Welcome to the “Complete Machine Learning & Data Science with Python | A-Z” course Use Scikit, learn NumPy, Pandas, Matplotlib, Seaborn, and dive into machine learning A-Z with Python and Data Science Machine learning isn’t just useful for predictive texting or smartphone voice recognition Machine learning is constantly being applied to new industries and new problems Whether you’re a marketer, video game designer, or programmer, my course on OAK Academy here to help you apply machine learning to your work Complete machine learning & data science with python | a-z, machine learning a-z, Complete machine learning & data science with python, complete machine learning and data science with python a-z, machine learning using python, complete machine learning and data science, machine learning, complete machine learning, data scienceIt’s hard to imagine our lives without machine learning Predictive texting, email filtering, and virtual personal assistants like Amazon’s Alexa and the iPhone’s Siri, are all technologies that function based on machine learning algorithms and mathematical models Python, machine learning, django, python programming, machine learning python, python for beginners, data sciencePython instructors on OAK Academy specialize in everything from software development to data analysis, and are known for their effective, friendly instruction for students of all levels Whether you work in machine learning or finance, or are pursuing a career in web development or data science, Python is one of the most important skills you can learn Python's simple syntax is especially suited for desktop, web, and business applications Python's design philosophy emphasizes readability and usability Python was developed upon the premise that there should be only one way (and preferably one obvious way) to do things, a philosophy that has resulted in a strict level of code standardization The core programming language is quite small
Do you want to master NumPy and unlock your potential in data science? This course is your comprehensive, hands-on introduction to the foundational library of modern Python computing!NumPy is the absolute core building block for essential data science and machine learning libraries like Pandas, Scikit-learn, and PyTorch. By mastering it, you gain the technical edge needed for advanced topics like linear algebra, image processing, and fast numerical computations. If you want to start a career in Data Science or understand the engine behind Machine Learning in Python, this course is for you.What You'll Master in this Hands-On Python Course:This course will teach you everything you need to professionally use NumPy for scientific computing. We start with the basics and rapidly move into advanced techniques crucial for complex data science tasks.Foundation: Introduction to NumPy arrays, N-dimensional arrays, and the fundamental concepts of vectors and matrices.Data Analysis Tools: Leverage Universal Functions (ufuncs), Randomness, and Statistics to analyze and explore data efficiently in Python.Linear Algebra for ML: Master Basic and Advanced Linear Algebra operations, which are the backbone of all Machine Learning algorithms.Advanced Techniques: Understand Broadcasting and Advanced Indexing to write fast, memory-efficient Python code.Real-World Scientif
Data Science and Machine Learning are the hottest skills in demand but challenging to learn. Did you wish that there was one course for Data Science and Machine Learning that covers everything from Math for Machine Learning, Advance Statistics for Data Science, Data Processing, Machine Learning A-Z, Deep learning and more? Well, you have come to the right place. This Data Science and Machine Learning course has 11 projects, 250+ lectures, more than 25+ hours of content, one Kaggle competition project with top 1 percentile score, code templates and various quizzes.We are going to execute following real-life projects,Kaggle Bike Demand Prediction from Kaggle competitionAutomation of the Loan Approval processThe famous IRIS ClassificationAdult Income Predictions from US Census DatasetBank Telemarketing PredictionsBreast Cancer PredictionsPredict Diabetes using Prima Indians Diabetes DatasetToday Data Science and Machine Learning is used in almost all the industries, including automobile, banking, healthcare, media, telecom and others. As the Data Science and Machine Learning practioner, you will have to research and look beyond normal problems, you may need to do extensive data processing. experiment with the data using advance tools and build amazing solutions for business. However, where and how are you going to learn these skills required for Data Science and Machine Learning? Data Science and Machine Learning require in-depth knowledge of various topics. Data Science is not just about knowing certain packages/libraries and learning how to apply them. Data Science and Machine Learning require an indepth understanding of the following skills,Understanding of the overall landscape of Data Science and Machine LearningDifferent types of Data Analy
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Are you planing to build your career in Data Science in This Year?Do you the the Average Salary of a Data Scientist is $100,000/yr?Do you know over 10 Million+ New Job will be created for the Data Science Filed in Just Next 3 years??If you are a Student / a Job Holder/ a Job Seeker then it is the Right time for you to go for Data Science!Do you Ever Wonder that Data Science is the "Most Hottest" Job Globally in 2018 - 2019!Above, we just give you a very few examples why you Should move into Data Science and Test the Hot Demanding Job Market Ever Created!The Good News is That From this Hands On Data Science and Machine Learning in R course You will Learn All the Knowledge what you need to be a MASTER in Data Science.Why Data Science is a MUST HAVE for Now A Days?The Answer Why Data Science is a Must have for Now a days will take a lot of time to explain. Let's have a look into the Company name who are using Data Science and Machine Learning. Then You will get the Idea How it BOOST your Salary if you have Depth Knowledge in Data Science & Machine Learning!Here we list a Very Few Companies : -Google - For Advertise Serving, Advertise Targeting, Self Driving Car, Super Computer, Google Home etc. Google use Data Science + ML + AI to Take DecisionApple: Apple Use Data Science in different places like: Siri, Face Detection etcFacebook: Data Science , Machine Learning and AI used in Graph Algorithm for Find a Friend, Photo Tagging, Advertising Targeting, Chatbot, Face Detection etcNASA: Use Data Science For different PurposeMicrosoft: Amplifying human ingenuity with Data ScienceSo From the List of the Companies you can Understand all Big Giant to Very Small
This course teaches big ideas in machine learning like how to build and evaluate predictive models. This course provides an intro to clustering in R from a machine learning perspective.This online machine learning course is perfect for those who have a solid basis in R and statistics but are complete beginners with machine learning. You’ll get your first intro to machine learning.After learning the true fundamentals of machine learning, you'll experiment with the techniques that are explained in more detail. By the end, you'll be able to learn and build a decision tree and to classify unseen observations with k-Nearest Neighbors.Also, you'll be acquainted with simple linear regression, multi-linear regression, and k-Nearest Neighbors regression.This course teaches the big ideas in machine learning: how to build and evaluate predictive models, how to tune them for optimal performance, how to preprocess data for better results, and much more.At the end of this course, our machine learning and data science video tutorials, you’ll have a great understanding of all the main principles.Details of the course:Module 01: Basics of R toolIn this video, we are going to install r programming with rstudio in Windows Platform.Lab 01 R Installation and ConceptsIn this lab, we are going to learn about how we can install R Programing in Windows and learn about its several key concepts that are necessary for Programming in R.Video 2_R Programming ConceptsIn this video, we are going to learn the necessary concepts of RProgramming.Video 3_R Progrming ComputationsIn this tutorial, we will be learning about several mathematical algorithms and computations.Lab 02 R P
Greetings, I am so excited to learn that you have started your path to becoming a Data Scientist with my course. Data Scientist is in-demand and most satisfying career, where you will solve the most interesting problems and challenges in the world. Not only, you will earn average salary of over $100,000 p.a., you will also see the impact of your work around your, is not is amazing?This is one of the most comprehensive course on any e-learning platform (including Udemy marketplace) which uses the power of Python to learn exploratory data analysis and machine learning algorithms. You will learn the skills to dive deep into the data and present solid conclusions for decision making. Data Science Bootcamps are costly, in thousands of dollars. However, this course is only a fraction of the cost of any such Bootcamp and includes HD lectures along with detailed code notebooks for every lecture. The course also includes practice exercises on real data for each topic you cover, because the goal is "Learn by Doing"! For your satisfaction, I would like to mention few topics that we will be learning in this course:Basis Python programming for Data ScienceData Types, Comparisons Operators, if, else, elif statement, Loops, List Comprehension, Functions, Lambda Expression, Map and FilterNumPyArrays, built-in methods, array methods and attributes, Indexing, slicing, broadcasting & boolean masking, Arithmetic Operations & Universal FunctionsPandasPandas Data Structures - Series, DataF
Il s'agit du cours en ligne le plus complet pour apprendre Python, la Data Science (science des données) et le Machine Learning (apprentissage automatique). Rejoignez-nous dès maintenant pour apprendre et maîtriser ces sujets !Que contient ce cours ?Bienvenue dans le cours le plus complet pour apprendre en ligne la Data Science et le Machine Learning ! Cette MasterClass a été conçue pour mettre en place ce qui semble être la meilleure façon de passer de zéro à héros pour la Data Science et le Machine Learning avec Python !Ce cours est conçu pour une personne qui connaît déjà un peu le langage Python et qui est prêt à s'immerger en profondeur dans l'utilisation de ces compétences Python pour la Data Science et le Machine Learning. Le salaire de départ typique d'un data scientist peut dépasser aisément les 100 000 euros annuel, et nous avons créé ce cours pour aider à guider les apprenants vers l'apprentissage d'un ensemble de compétences qui les rendront extrêmement intéressants (et attractifs !) dans le monde du travail actuel.Nous couvrirons tout ce que vous devez savoir sur la stack tech (compétences techniques) complète de Data Science et Machine Learning requise dans les meilleures entreprises du monde. Nos étudiants ont obtenu des emplois chez McKinsey, Facebook, Amazon, Google, Apple, Asana et d'autres grandes entreprises technologiques ! Nous avons structuré le cours en nous appuyant sur notre expérience de l'enseignement en ligne (et en présentiel) afin de proposer une approche claire et structurée. Cela vous guidera pour comprendre non seulement comment utiliser les bibliothèques populaires de Data Science et Machine Learning, mais aussi pourquoi et quand nous les utilisons. Ce cours est un équilibre parfait entre les études de cas pratiques issues du monde réel et la théorie mathématique qui se cache derrière les algorithmes de Machine Learning <strong
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Hi.. Hello and welcome to my new course, Machine Learning with Python for Dummies. We will discuss about the overview of the course and the contents included in this course.Artificial Intelligence, Machine Learning and Deep Learning Neural Networks are the most used terms now a days in the technology world. Its also the most mis-understood and confused terms too.Artificial Intelligence is a broad spectrum of science which tries to make machines intelligent like humans. Machine Learning and Neural Networks are two subsets that comes under this vast machine learning platformLets check what's machine learning now. Just like we human babies, we were actually in our learning phase then. We learned how to crawl, stand, walk, then speak words, then make simple sentences.. We learned from our experiences. We had many trials and errors before we learned how to walk and talk. The best trials for walking and talking which gave positive results were kept in our memory and made use later. This process is highly compared to a Machine Learning MechanismThen we grew young and started thinking logically about many things, had emotional feelings, etc. We kept on thinking and found solutions to problems in our daily life. That's what the Deep Learning Neural Network Scientists are trying to achieve. A thinking machine.But in this course we are focusing mainly in Machine Learning. Throughout this course, we are preparing our machine to make it ready for a prediction test. Its Just like how you prepare for your Mathematics Test in school or college. We learn and train ourselves by solving the most possible number of similar mathematical problems. Lets call these sample data of similar problems and their solutions as the 'Training Input' and 'Training Output' Respectively. And then the day comes when we have the actual test. We will be given new set of problems to solve, but very similar to the problems we learned, and based on th
Learn Python for Data Science & Machine Learning from A-ZIn this practical, hands-on course you’ll learn how to program using Python for Data Science and Machine Learning. This includes data analysis, visualization, and how to make use of that data in a practical manner. Our main objective is to give you the education not just to understand the ins and outs of the Python programming language for Data Science and Machine Learning, but also to learn exactly how to become a professional Data Scientist with Python and land your first job.We'll go over some of the best and most important Python libraries for data science such as NumPy, Pandas, and Matplotlib +NumPy — A library that makes a variety of mathematical and statistical operations easier; it is also the basis for many features of the pandas library.Pandas — A Python library created specifically to facilitate working with data, this is the bread and butter of a lot of Python data science work.NumPy and Pandas are great for exploring and playing with data. Matplotlib is a data visualization library that makes graphs as you’d find in Excel or Google Sheets. Blending practical work with solid theoretical training, we take you from the basics of Python Programming for Data Science to mastery.This Machine Learning with Python course dives into the basics of machine learning using Python. You'll learn about supervised vs. unsupervised learning, look into how statistical modeling relates to machine learning, and do a comparison of each.We understand that theory is important to build a solid foundation, we understand that theory alone isn’t going to get the job done so that’s why this course is packed with practical hands-on examples that you can follow step by step. Even if you already have some coding experience, or want to learn about the advanced features of the Python programming language, this course is for you!Python coding experience
Learn Feature Engineering for Machine Learning
Comprehensive Course Description:Electrification was undeniably one of the greatest engineering feats of the 20th century. The invention of the electric motor dates back to 1821, with mathematical analysis of electrical circuits following in 1827. However, it took several decades for the full electrification of factories, households, and railways to begin. Fast forward to today, and we are witnessing a similar trajectory with Artificial Intelligence (AI). Despite being formally founded in 1956, AI has only recently begun to revolutionize the way humanity lives and works.Similarly, Data Science is a vast and expanding field that encompasses data systems and processes aimed at organizing and deriving insights from data. One of the most important branches of AI, Machine Learning (ML), involves developing systems that can autonomously learn and improve from experience without human intervention. ML is at the forefront of AI, as it aims to endow machines with independent learning capabilities.Our "Data Science & Machine Learning Full Course in 90 Hours" offers an exhaustive exploration of both data science and machine learning, providing in-depth coverage of essential concepts in these fields. In today's world, organizations generate staggering amounts of data, and the ability to store, analyze, and derive meaningful insights from this data is invaluable. Data science plays a critical role here, focusing on data modeling, warehousing, and deriving practical outcomes from raw data.For data scientists, AI and ML are indispensable, as they not only help tackle large data sets but also enhance decision-making processes. The ability to transition between roles and apply these methodologies across different stages of a data science project makes them invaluable to any organization.What Makes This Course Unique?This course is designed to provide both theoretical foundations and practical, hands-on experience. By the end of the
Embark on a comprehensive journey through the fascinating realm of data science and machine learning with our course, "Data Science and Machine Learning with Python and GPT 3.5." This course is meticulously designed to equip learners with the essential skills required to excel in the dynamic fields of data science and machine learning.Throughout this immersive learning experience, you will delve deep into the core concepts of data science and machine learning, leveraging the power of Python programming alongside the cutting-edge capabilities of ChatGPT 3.5. Our course empowers you to seamlessly navigate the entire data science workflow, from data acquisition and cleaning to exploratory data analysis and model deployment.You will master the art of cleaning raw data effectively, employing techniques tailored to handle missing values, diverse data types, and outliers, thus ensuring the integrity and quality of your datasets. Through hands-on exercises, you will become proficient in data manipulation using Python's pandas library, mastering essential techniques such as sorting, filtering, merging, and concatenating.Exploratory data analysis techniques will be thoroughly explored, empowering you to uncover valuable insights through frequencies, percentages, group-by operations, pivot tables, crosstabulation, and variable relationships. Additionally, you will gain practical experience in data preprocessing, honing your skills in feature engineering, selection, and scaling to optimize datasets for machine learning models.The course curriculum features a series of engaging projects designed to reinforce your understanding of key data science and machine learning concepts. You will develop expertise in building and evaluating supervised regression and classification models, utilizing a diverse array of algorithms including linear regression, random forest, decision tree, xgboost, logistic regression, KNN, lightgbm, and more.Unsupervised learning techniques will also b
Learn Introduction to Data Science with Python
Welcome to the Learn Data Science and Machine Learning with R from A-Z Course!In this practical, hands-on course you’ll learn how to program in R and how to use R for effective data analysis, visualization and how to make use of that data in a practical manner. You will learn how to install and configure software necessary for a statistical programming environment and describe generic programming language concepts as they are implemented in a high-level statistical language.Our main objective is to give you the education not just to understand the ins and outs of the R programming language, but also to learn exactly how to become a professional Data Scientist with R and land your first job.The course covers practical issues in statistical computing which include programming in R, reading data into R, accessing R packages, writing R functions, debugging, profiling R code, and organizing and commenting on R code. Blending practical work with solid theoretical training, we take you from the basics of R Programming to mastery.We understand that theory is important to build a solid foundation, we understand that theory alone isn’t going to get the job done so that’s why this course is packed with practical hands-on examples that you can follow step by step. Even if you already have some coding experience, or want to learn about the advanced features of the R programming language, this course is for you!R coding experience is either required or recommended in job postings for data scientists, machine learning engineers, big data engineers, IT specialists, database developers and much more. Adding R coding language skills to your resume will help you in any one of these data specializations requiring mastery of statistical techniques.Together we’re going to give you the foundational education that you need to know not just on how to write code in R, analyze and visualize data but also how to get paid for your newly developed programming skills.The cour
Unlock the power of Artificial Intelligence, Python, Machine Learning, Data Science, and Big Data Analytics in this comprehensive, hands-on course. Whether you’re a beginner or an aspiring data professional, this course equips you with the practical skills and knowledge to solve real-world problems using cutting-edge technologies.What You Will Learn:Fundamentals of Python programming for AI and data analysisBuilding and deploying Machine Learning models from scratchExploring Data Science techniques, including data cleaning, visualization, and analysisWorking with Big Data Analytics tools to handle massive datasetsImplementing AI solutions for real-world projects and business applicationsUnderstanding key concepts in Deep Learning, Neural Networks, and Predictive AnalyticsWho This Course is For:Anyone passionate about leveraging AI and Big Data to make smarter decisionsWhy Choose This Course:Hands-on projects and real-world examplesLearn from beginner-friendly to advanced concepts in a structured wayFocused on practical applications that can boost your career or businessCertificate after course completeBy the end of this course, you will have the confidence and skills to design and implement AI-powered solutions, build machine learning models, analyze complex datasets, and tackle big data challenges.Start your journey to becoming an AI, Machine Learning, and Data Science expert today!
This Data Science Course is a comprehensive program designed to provide learners with the essential skills and knowledge needed to understand, analyze, and apply data-driven solutions in the modern world. This course is carefully structured to take you from the basics of data handling to advanced concepts in data analysis, visualization, and predictive modeling.Beginning with fundamental programming skills in Python and R, the course introduces you to core topics such as data cleaning, exploratory data analysis, and statistical methods. From there, you’ll gain hands-on experience with popular tools and libraries, including Pandas, NumPy, Matplotlib, and Scikit-learn, to manipulate and visualize data effectively. Machine learning concepts are introduced gradually, ensuring a strong foundation in supervised and unsupervised learning, model building, and evaluation techniques.Beyond technical skills, this course emphasizes practical, real-world applications of data science across industries such as business, healthcare, finance, and technology. Through projects and case studies, you will develop the ability to extract actionable insights, solve complex problems, and communicate findings clearly to both technical and non-technical audiences.By the end of the program, you will not only understand the theory but also be confident in applying data science methods to real datasets. Whether you are a student, professional, or aspiring data scientist, the Data Science Course by Shimwa Bonheur equips you with the tools and confidence to thrive in today’s data-driven world.
Programmer en Python pour la Data Science, le Machine Learning, la DataViz et l'Intelligence ArtificielleCe cours a pour objectif de vous initier à la programmation en Python en lien avec les concepts essentiels du Big Data (Data Science, Machine Learning, IA, etc.). Il ne requiert aucun prérequis et vous permet d'atteindre un niveau solide en seulement 4 heures de formation.Acquérir des bases solidesPlus besoin de partir à la chasse aux informations sur Google, l'essentiel de votre apprentissage est concentré dans ce cours.Gagner du tempsCe cours est conçu pour vous familiariser avec la Data Science et Python de manière rapide et efficace. Vous pourrez ainsi atteindre un niveau solide en seulement 4 heures de cours.Une formation qui va à votre rythmeLes concepts sont présentés progressivement, à travers des exemples concrets issus de projets d'entreprises et d'universités, vous permettant d'appliquer ce que vous avez appris.Cours récent et régulièrement mis à jourMis à jour récemment, ce cours est en adéquation avec les compétences actuellement recherchées par les entreprises.Éviter les pièges de débutantsCe cours détaille les bonnes pratiques d'un Data Scientist expérimenté pour rédiger un code de qualité professionnelle.Préparation réussie pour vos examens, certifications et tests techniques sur PythonLes exercices inclus dans ce cours constituent un excellent moyen de préparation pour vos examens, certifications et tests techniques en entreprise.Travailler pour les plus grandes entreprisesDes entreprises prestigieuses telles qu'Intel, Google, Netflix, Spotify, Meta, mais aussi Renault, la SNCF, Orange, Total, Capgemini, sont actuellement à la recherche de Data Scientists expérimentés maîtrisant Python.Se former à des métiers actuellement recherchés</stron
Formation Complète Data Science et Machine Learning avec PythonDevenez Data Scientist et Maîtrisez l’Apprentissage Automatique avec PythonÊtes-vous prêt à acquérir les compétences les plus recherchées dans la tech et l’analyse de données ? Cette formation complète en Data Science et Machine Learning avec Python vous guidera pas à pas, même si vous partez de zéro, pour devenir un expert capable de transformer des données en décisions stratégiques.Pourquoi choisir cette formation ?Le métier de Data Scientist figure parmi les plus demandés et les mieux rémunérés. Grâce à cette formation unique, vous apprendrez à :Analyser et manipuler des données complexes avec Python.Créer des visualisations impactantes et interactives.Développer et entraîner des modèles prédictifs avancés.Maîtriser les principales bibliothèques Python en Data Science.Un programme complet et progressifAvec plus de 100 vidéos HD, des notebooks Jupyter détaillés, des exemples concrets et des exercices pratiques, vous progresserez étape par étape jusqu’à devenir autonome.Voici un aperçu de ce que vous allez maîtriser :Programmation et traitement des donnéesProgrammation avec Python orienté Data ScienceManipulation des tableaux numériques avec NumPyGestion et analyse de données tabulaires avec PandasLecture et traitement des fichiers CSV et ExcelVisualisation de donnéesCréation de graphiques professionnels avec MatplotlibAnalyse exploratoire et visualisations avancées avec SeabornMachine Learning supervisé et non supervisé avec Scikit-Lear
Jetzt neu: Zusätzlicher Bonus zum Thema Deep Learning (Neuronale Netze) mit Python, Tensorflow und Keras!Dieser Kurs enthält über 300 Lektionen, Quizze, Praxisbeispiele, ... - der einfachste Weg, wenn du Machine Learning lernen möchtest. Schritt für Schritt bringe ich dir maschinelles Lernen bei. In jedem Abschnitt lernst du ein neues Thema - zuerst die Idee / Intuition dahinter, und anschließend den Code sowohl in Python als auch in R.Machine Learning macht erst dann richtig Spaß, wenn man echte Daten auswertet. Deswegen analysierst du in diesem Kurs besonders viele Praxisbeispiele:Schätze den Wert von GebrauchtwagenSchreibe einen Spam-FilterDiagnostiziere BrustkrebsSchreibe ein Programm, was die Bedeutung von Adjektiven lerntLese Zahlen aus Bildern einAlle Codebeispiele werden dir beiden Programmiersprachen gezeigt - du kannst also wählen, ob du den Kurs in Python, R, oder in beiden Sprachen sehen möchtest!Nach dem Kurs kannst du Machine Learning auch auf eigene Daten anwenden und eigenständig fundierte Entscheidungen treffen:Du weißt, wann welche Modelle in Frage kommen könnten und wie du diese vergleichst. Du kannst analysieren, welche Spalten benötigt werden, ob zusätzliche Daten benötigt werden, und weißt, die die Daten vorab aufbereitet werden müssen. Dieser Kurs behandelt alle wichtigen Themen:RegressionKlassifizierungClusteringNatural Language ProcessingBonus: Deep Learning (nur für Python, weil die Tools hier sehr viel ausgereifter sind)Zu allen diesen Themen lernst du verschiedene Algorithmen kennen. Die Ideen dahinter werden einfach erklärt - keine trockenen, mathematischen Formeln, sondern anschauliche, grafische Erklärungen.Wir verwenden hierbei g
Selamat datang di program pelatihan data science dan machine learning dengan Python!Pelatihan ini diperuntukan untuk rekan - rekan ingin belajar data science dan machine learning dari sudut terapan dengan memanfaatkan Python.Bagi rekan - rekan yang belum menguasai pemrograman Python, pelatihan juga memberikan konten pemrograman dasar untuk Python sehingga rekan - rekan dapat mengikuti pelatihan ini dengan baik. Bagi yang sudah bisa pemrograman Python, rekan - rekan dapat melanjutkan di topik berikutnya.Seluruh konten didalam pelatihan ini dilaksanan secara step - by - step (langkah demi langkah) dan berurutan sehingga ini diharapkan semua peserta dapat dengan mudah mengikuti semua praktikum yang diberikan didalam pelatihan ini. Diharapkan semua peserta dapat mengikuti konten pelatihan ini secara berurutan ;).Berikut ini konten yang akan diberikan pada pelatihan ini.Persiapan pelatihanPemrograman PythonPython Virtual EnvironmentPengolahan dan Analisa Data - Numpy dan PandasTopik Khusus - Numpy dan Pandas - DatabaseVisualisasi Data dengan memanfaatkan library Matplotlib, Seaborn dan BokehTopik Khusus Visualisasi Data Time SeriesDataset, Pra-Proses dan Pengurangan Dimensi Feature (Dimensionality Reduction)Permasalahan dan Penyelesaian Kasus Linear RegressionPermasalahan dan Penyelesaian Kasus Klasifikasi (Classification)Permasalahan dan Penyelesaian Kasus Kekelompokkan (Clustering)Hyperparameter Tuning Untuk Model Machine LearningEnsemble MethodsReinforcement LearningAutomated Machine Learning (AutoML)Kumpulan Studi KasusJika ada hal - hal yang ingin ditanyakan mengenai topik diatas, rekan - rekan dapat langsung ditulisnya di ruang diskusi pada web ini sehingga rekan-rekan lainnya dapat mengetahui dan
You want to be able to perform your own data analyses with R? You want to learn how to get business-critical insights out of your data? Or you want to get a job in this amazing field? In all of these cases, you found the right course!We will start with the very Basics of R, like data types and -structures, programming of loops and functions, data im- and export.Then we will dive deeper into data analysis: we will learn how to manipulate data by filtering, aggregating results, reshaping data, set operations, and joining datasets. We will discover different visualisation techniques for presenting complex data. Furthermore find out to present interactive timeseries data, or interactive geospatial data.Advanced data manipulation techniques are covered, e.g. outlier detection, missing data handling, and regular expressions.We will cover all fields of Machine Learning: Regression and Classification techniques, Clustering, Association Rules, Reinforcement Learning, and, possibly most importantly, Deep Learning for Regression, Classification, Convolutional Neural Networks, Autoencoders, Recurrent Neural Networks, ...You will also learn to develop web applications and how to deploy them with R/Shiny.For each field, different algorithms are shown in detail: their core concepts are presented in 101 sessions. Here, you will understand how the algorithm works. Then we implement it together in lab sessions. We develop code, before I encourage you to work on exercise on your own, before you watch my solution examples. With this knowledge you can clearly identify a problem at hand and develop a plan of attack to solve it.You will understand the advantages and disadvantages of d
3.997 / 5.000Aprender a programar en Python no siempre es fácil, especialmente si desea usarlo para la ciencia de datos. De hecho, hay muchas herramientas diferentes que deben aprenderse para poder usar correctamente Python para la ciencia de datos y el aprendizaje automático, y cada una de esas herramientas no siempre es fácil de aprender. Pero, este curso le dará todos los conceptos básicos que necesita sin importar para qué objetivo quiera usarlo, así que si: - Es estudiante y desea mejorar sus habilidades de programación y desea aprender nuevas utilidades sobre cómo usar Python - Necesidad de aprender los conceptos básicos de la ciencia de datos. - Debe comprender las herramientas básicas de ciencia de datos para mejorar su carrera. - Simplemente adquiera las habilidades para uso personal Entonces definitivamente te encantará este curso. No solo aprenderá todas las herramientas que se utilizan para la ciencia de datos, sino que también mejorará su conocimiento de Python y aprenderá a usar esas herramientas para poder visualizar sus proyectos. La estructura del curso Este curso está estructurado de manera que podrá aprender cada herramienta por separado y practicar programando en Python directamente con el uso de esas herramientas. De hecho, al principio aprenderá todas las matemáticas asociadas con la ciencia de datos. Esto significa que tendrá una introducción completa a la mayoría de las funciones y fórmulas estadísticas importantes que existen. También aprenderá a configurar y utilizar Jupyter, así como a escribir su código Python. Después, aprenderá las diferentes bibliotecas de Python que existen y cómo usarlas correctamente. Aquí aprenderás herramientas como NumPy o muchas otras.Finalmente, tendrá una introducción al aprendizaje automático y aprenderá cómo funciona un
Data Science is an interdisciplinary field that leverages statistical analysis, data exploration, and machine learning techniques to derive knowledge and meaningful insights from data.Definition of Data Science:Data Science encompasses various processes, including data acquisition, thorough analysis, and informed decision-making.Data Science involves the identification and interpretation of data patterns to make predictive assessments.Through the application of Data Science, organizations can achieve:1. Improved decision-making processes, enabling the selection between alternatives (A or B) with greater confidence.2. Predictive analysis that anticipates future events or trends, aiding in proactive planning.3. Discovery of hidden patterns and valuable information within datasets, leading to actionable insights.Applications of Data Science:Data Science finds extensive application across diverse industries such as banking, consultancy, healthcare, and manufacturing.Examples of Data Science applications include:1. Optimizing route planning for shipping purposes.2. Anticipating potential delays in flights, ships, trains, etc., through predictive analysis.3. Crafting personalized promotional offers for customers.4. Determining the best time to deliver goods for maximum efficiency.5. Forecasting future revenue for a company.6. Analyzing the health benefits of specific training regimens.7. Predicting election outcomes.Data Science Integration in Business:Data Science can be seamlessly integrated into various facets of business operations where relevant data is available, including:1. Consumer goods industries for market analysis and consumer behavior prediction.2. Stock markets for financial analysis and forecasting.3. Industrial settings for process optimization and quality control.4. Political scenarios for opinion
In the dynamic and rapidly evolving landscape of data science and machine learning, certification serves as a powerful testament to your expertise and a crucial stepping stone in your career progression. The "Data Science & Machine Learning Proficiency Exam March 2025" represents a significant milestone for intermediate professionals seeking to validate their skills and solidify their position within the industry. This course is meticulously designed to provide you with the comprehensive knowledge, practical experience, and strategic insights necessary to not only pass this exam but to excel in the real-world applications of data science and machine learning.Why This Course?This course goes beyond simple memorization and rote learning. It’s a journey of deep understanding, practical application, and strategic exam preparation. We recognize that intermediate learners possess a foundational knowledge base but require targeted guidance to refine their skills and bridge the gap between theoretical understanding and practical proficiency. Therefore, this course is designed to:Provide a Structured Learning Path: The curriculum is structured to follow the exam's blueprint, ensuring that you cover all essential topics in a logical and progressive manner.Offer Real-World Relevance: We emphasize the practical application of concepts, demonstrating how data science and machine learning are used to solve real-world problems.Deliver Targeted Practice: Realistic practice exams and quizzes are designed to simulate the actual exam experience, allowing you to build confidence and identify areas for improvement.Foster Deep Understanding: In-depth explanations and detailed examples help you grasp complex concepts and develop a strong foundation in data science and machine learning.Ensure March 2025 Readiness: The course content is co
Learn Data Science with Python Certification
Готовы ли вы начать свой путь, чтобы стать Data Scientist?Специалист по анализу данных - одна из наиболее подходящих профессий для процветания в этом веке. Он цифровой, ориентированный на программирование и аналитический. Поэтому неудивительно, что спрос на специалистов по анализу данных на рынке труда растет.Однако предложение было очень ограниченным. Трудно получить навыки, необходимые для работы в качестве специалиста по данным.И как это сделать?Университеты не спешили создавать специализированные программы по науке о данных. (Не говоря уже о том, что существующие очень дороги и требуют много времени)Большинство онлайн-курсов сосредоточено на конкретной теме, и трудно понять, как навыки, которым они обучают, вписываются в общую картину.Этот всеобъемлющий курс станет вашим руководством к изучению того, как использовать возможности Python для анализа данных, создания красивых визуализаций и использования мощных алгоритмов машинного обучения! Курс регулярно пополняется новыми материалами!Этот курс подойдёт для всех - для начинающих без опыта программирования, для имеющих некоторый опыт программирования и для опытных разработчиков, стремящихся изучить Data Science!Вы научитесь программировать на Python, создавать удивительные визуализации данных и использовать машинное обучение с Python! Чему вы научитесь:Применять Python для Data ScienceИспользовать инструменты для работы в Data Science Научитесь использовать NumPy для числовых данныхНаучитесь использовать Pandas для анализа данныхНаучитесь использовать Matplotlib для визуализации данныхНаучитесь использовать Seaborn для визуализации данныхНаучитесь использовать встроенную визуализацию библиотеки PandasНаучитесь применять новые знания на практикеНаучитесь использовать библиотеки Machine LearningИ многое другое!Записывайтесь на курс и получите одну из самых востребованных профессий и супер
Would you like to learn how to detect if someone is wearing a Face Mask or not using Artificial Intelligence that can be deployed in bus stations, airports, or other public places?Would you like to build a Convolutional Neural Network model using Deep learning to detect Covid-19 Face Mask?If the answer to any of the above questions is "YES", then this course is for you.Enroll Now in this course and learn how to detect Face Mask on the static images as well as in the video streams using Tensorflow and OpenCV. As we know, COVID-19 has affected the whole world very badly. It has a huge impact on our everyday life, and this crisis is increasing day by day. In the near future, it seems difficult to eradicate this virus completely.To counter this virus, Face Masks have become an integral part of our lives. These Masks are capable of stopping the spread of this deadly virus, which will help to control the spread. As we have started moving forward in this ‘new normal’ world, the necessity of the face mask has increased. So here, we are going to build a model that will be able to classify whether the person is wearing a mask or not. This model can be used in crowded areas like Malls, Bus stands, and other public places.This is a hands-on Data Science guided project on Covid-19 Face Mask Detection using Deep Learning and Computer Vision concepts. We will build a Convolutional Neural Network classifier to classify people based on whether they are wearing masks or not and we will make use of OpenCV to detect human faces on the video streams. No unnecessary lectures. As our students like to say :"Short, sweet, to the point course"The same techniques can be used in :Skin cancer detectionNormal pneumonia detectionBrain
A practical guide to data wrangling using Python and the pandas library. The article covers reading data, accessing columns and rows, handling missing values, and data normalization, which are crucial steps for preparing data for analysis and machine learning.
Unlock the potential of data-driven insights with our comprehensive course, "Deep Dive into Mastering Data Science and Machine Learning." In today's data-driven world, the ability to extract knowledge, predict trends, and make informed decisions is a crucial skill. This course is designed to empower you with the expertise required to navigate the intricate landscape of data science and machine learning.**Course Highlights:**Dive into Data: Learn to wrangle, clean, and preprocess data from various sources, preparing it for in-depth analysis. Discover techniques to identify and handle missing values, outliers, and anomalies that could affect your analysis.Algorithm Mastery: Delve into the world of machine learning algorithms, from foundational concepts to cutting-edge techniques. Understand the nuances of classification, regression, clustering, and recommendation systems, and explore ensemble methods and deep learning architectures for enhanced performance.Visualize Insights: Develop the art of data visualization to effectively communicate your findings. Learn to create compelling graphs, plots, and interactive dashboards that bring data to life and aid decision-making.Real-world Projects: Put theory into practice with hands-on projects that simulate real-world scenarios. Tackle challenges ranging from predicting customer behavior to image recognition, gaining experience that mirrors the complexities of the field.Ethical and Transparent AI: Understand the ethical considerations in data science and machine learning. Explore methods to interpret and explain model predictions, ensuring transparency and accountability in your applications.Model Deployment: Take your models from the development stage to real-world deployment. Learn about containerization, cloud services, and deployment pipelines, ensuring your solutions are accessible and scalable.Peer Learning: Engage with a
Hi there,Welcome to "Generative AI & ChatGPT Mastery for Data Science and Python" course.Master Generative AI, ChatGPT and Prompt Engineering for Data Science and Python from scratch with hands-on projectsArtificial Intelligence (AI) is transforming the way we interact with technology, and mastering AI tools has become essential for anyone looking to stay ahead in the digital age. In today's data-driven world, the ability to analyze data, draw meaningful insights, and apply machine learning algorithms is more crucial than ever. This course is designed to guide you through every step of that journey, from the basics of Exploratory Data Analysis (EDA) to mastering advanced machine learning algorithms, all while leveraging the power of ChatGPT-4o.Data science application is an in-demand skill in many industries worldwide — including finance, transportation, education, manufacturing, human resources, and banking. Explore data science courses with Python, statistics, machine learning, and more to grow your knowledge. Get data science training if you’re into research, statistics, and analytics.Machine learning describes systems that make predictions using a model trained on real-world data. For example, let's say we want to build a system that can identify if a cat is in a picture. We first assemble many pictures to train our machine learning model. During this training phase, we feed pictures into the model, along with information about whether they contain a cat. While training, the model learns patterns in the images that are the most closely associated with cats. This model can then use the patterns learned during training to predict whether the new images that it's fed contain a cat.A machine learning course teach
The Python for Data Science and Machine Learning course is designed to equip learners with a comprehensive understanding of Python programming, data science techniques, and machine learning algorithms. Whether you are a beginner looking to enter the field or a seasoned professional seeking to expand your skillset, this course provides the knowledge and practical experience necessary to excel in the rapidly growing field of data science.Course Objectives:1. Master Python Programming: Develop a strong foundation in Python programming, including syntax, data structures, control flow, and functions. Gain proficiency in using Python libraries such as NumPy, Pandas, and Matplotlib to manipulate and visualize data effectively.2. Data Cleaning and Preprocessing: Learn how to handle missing data, outliers, and inconsistent data formats. Acquire skills in data cleaning and preprocessing techniques to ensure the quality and reliability of datasets.3. Exploratory Data Analysis: Understand the principles and techniques of exploratory data analysis. Learn how to extract insights, discover patterns, and visualize data using statistical methods and Python libraries.4. Statistical Analysis: Gain a solid understanding of statistical concepts and techniques. Apply statistical methods to analyze data, test hypotheses, and draw meaningful conclusions.5. Machine Learning Fundamentals: Learn the foundations of machine learning, including supervised and unsupervised learning, regression, classification, and clustering. Understand the strengths and limitations of different machine learning algorithms.6. Machine Learning Implementation: Gain hands-on experience in implementing machine learning models using Python libraries such as scikit-learn. Learn how to train, evaluate, and optimize machine learning models.7. Feature Engineering and Selection: Develop skills in feature engineering to create mea
Welcome to the ultimate ChatGPT and Python Data Science course—your golden ticket to mastering the art of data science intertwined with the latest AI technology from OpenAI.This course isn't just a learning journey—it's a transformative experience designed to elevate your skills and empower you with practical knowledge.With AI's recent evolution, many tasks can be accelerated using models like ChatGPT. We want to share how to leverage AI it for data science tasks.Embark on a journey that transcends traditional learning paths. Our curriculum is designed to challenge and inspire you through:Comprehensive Challenges: Tackle 10 concrete data science challenges, culminating in a case study that leverages our unique 365 data to address genuine machine learning problems.Real-World Applications: From preprocessing with ChatGPT to dissecting a furniture retailer's client database, explore a variety of industries and data types.Advanced Topics: Delve into retail data analysis, utilize regular expressions for comic book analysis, and develop a ChatGPT-powered movie recommendation system. Engage with such critical topics as AI ethics to combat biases and ensure data privacy.This course emphasizes practical application over theoretical knowledge, where you will:Perform dynamic sentiment analysis using a Naïve Bayes algorithm.Craft nuanced classification reports with our proprietary data.Gain hands-on experience with real datasets—preparing you to solve complex data science problems confidently.We’ll be using ChatGPT, Python, and Jupyter Notebook throughout the course, and I’ll link all the datasets, Notebooks for you to play around with on your own.I'll help you create a ChatGPT profile, but I’ll assume you're adept in Python and somewhat experienced in machine learning. Are you ready to dive into the
Welcome to the first Data Science and Machine Learning course with ChatGPT. Learn how to use ChatGPT to master complex Data Science and Machine Learning real-life projects in no time! Why is this a game-changing course?Real-world Data Science and Machine Learning projects require a solid background in advanced statistics and Data Analytics. And it would be best if you were a proficient Python Coder. Do you want to learn how to master complex Data Science projects without the need to study and master all the required basics (which takes dozens if not hundreds of hours)? Then this is the perfect course for you! What you can do at the end of the course:At the end of this course, you will know and understand all strategies and techniques to master complex Data Science and Machine Learning projects with the help of ChatGPT! And you don´t have to be a Data Science or Python Coding expert! Use ChatGPT as your assistant and let ChatGPT do the hard work for you! Use ChatGPT forthe theoretical part Python codingevaluating and interpreting coding and ML resultsThis course teaches prompting strategies and techniques and provides dozens of ChatGPT sample prompts toload, initially inspect, and understand unknown datasets clean and process raw datasets with Pandasmanipulate, aggregate, and visualize datasets with Pandas and matplotlibperform an extensive Explanatory Data Analysis (EDA) for complex datasetsuse advanced statistics, multiple regression analysis, and hypothesis testing to gain further insightsselect the most suitable Machine Learning Model for your prediction tasks (Model Selection)evaluate and interpret the performance of your Machine Learning models (Perfo
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An advanced course by IBM that covers feature engineering, data ethics, unsupervised learning, and dimensionality reduction. Students will learn about responsible AI, text mining, and data wrangling.
This course will help you in understanding of the Linear Algebra and math’s behind Data Science and Machine Learning. Linear Algebra is the fundamental part of Data Science and Machine Learning. This course consists of lessons on each topic of Linear Algebra + the code or implementation of the Linear Algebra concepts or topics.There’re tons of topics in this course. To begin the course:We have a discussion on what is Linear Algebra and Why we need Linear AlgebraThen we move on to Getting Started with R, where you will learn all about how to setup the R environment, so that it’s easy for you to have a hands-on experience.Then we get to the essence of this course;Vectors & Operations on VectorsMatrices & Operations on MatricesDeterminant and InverseSolving Systems of Linear EquationsNorms & Basis VectorsLinear IndependenceMatrix FactorizationOrthogonalityEigenvalues and EigenvectorsSingular Value Decomposition (SVD)Again, in each of these sections you will find R code demos and solved problems apart from the theoretical concepts of Linear Algebra.You will also learn how to use the R's pracma, matrixcalc library which contains numerous functions for matrix computations and solving Linear Algebric problems. So, let’s get started….
Unlock the boundless potential of data by enrolling in our comprehensive course, "Mastering Machine Learning, Data Science, Neural Networks, and Artificial Intelligence with Python and Libraries." This meticulously crafted program is designed to empower individuals with the skills and knowledge needed to navigate the dynamic landscape of modern technology.Course Overview:In this immersive learning journey, participants will delve into the core principles of Machine Learning, Data Science, Neural Networks, and Artificial Intelligence using Python as the primary programming language. The course is structured to cater to both beginners and intermediate learners, ensuring a gradual progression from fundamental concepts to advanced applications.Key Highlights:Foundations of Machine Learning:Gain a solid understanding of machine learning fundamentals, algorithms, and models.Explore supervised and unsupervised learning techniques.Master feature engineering, model evaluation, and hyperparameter tuning.Data Science Essentials:Learn the art of extracting valuable insights from data.Acquire proficiency in data manipulation, cleaning, and exploratory data analysis.Harness the power of statistical analysis for informed decision-making.Neural Networks and Deep Learning:Dive into the realm of neural networks and deep learning architectures.Understand the mechanics of artificial neural networks, convolutional neural networks (CNNs), and recurrent neural networks (RNNs).Implement state-of-the-art deep learning models using Python libraries.Artificial Intelligence (AI) Applications:Explore the practical applications of AI in various industries.Wor
In today's data-driven world, the ability to harness and interpret data is not just a valuable skill but a crucial advantage. Whether you're an aspiring data scientist, a seasoned professional looking to expand your skill set, or an entrepreneur aiming to leverage data for strategic decisions, our comprehensive course on data science offers a transformative learning experience.Course OverviewOur course begins with a foundational exploration of data science, introducing you to its principles and importance in various industries. You'll delve into the distinctions between data science, data engineering, and data analysis, gaining a clear understanding of their respective roles and applications. Through real-world case studies and examples, you'll discover how data science drives innovation and impacts decision-making processes across different sectors.Essential Tools and TechnologiesTo equip you with the tools needed for effective data analysis, the course covers essential programming languages such as Python . Whether you're manipulating data with Pandas, performing numerical operations with NumPy, or creating insightful visualizations with Matplotlib and Seaborn, you'll develop a versatile skill set that forms the backbone of data science projects.Practical Skills DevelopmentA significant focus of the course is hands-on learning. You'll gain practical experience in gathering, cleaning, and analyzing data from diverse sources. Through interactive exercises and projects, you'll hone your ability to transform raw data into actionable insights that drive business decisions.Environment Setup and Best PracticesNavigating the data science environment can be daunting, especially for beginners. That's why we guide you through the setup of Python and Jupyter Notebook on both Windows and macOS, ensuring you're equipped with the right tools from the start. You'll learn to create and manage virtual environments, enhancing your ability to work efficiently a
Welcome to the Python for Data Science Bootcamp: From Zero to Hero. In this course, we're going to learn how to use Python for Data Science. In this practical course, we'll learn how to collect data, clean data, make visualizations and build a machine learning model using Python.The main goal of this course is to take your programming and analytical skills to the next level to build your career in Data Science. To achieve this goal, we're going to solve hundreds of exercises and many cool projects that will help you put into practice all the programming concepts used in Data Science.We'll learn the top Python Libraries used in Data Science such as Pandas, Numpy and Scikit Learn and we will use them to learn to solve tasks data scientists deal with on a daily basis (Data Cleaning, Data Visualization, Data Collection and Model Building)This course covers 4 main sections.1. Python for Data Science Crash Course: In the first section, we'll learn all the Python core concepts you need to know for Data Science. We'll learn how to use variables, lists, dictionaries and more.2. Python for Data Analysis: We'll learn Python libraries used for data analysis such as Pandas and Numpy. Both are great tools for exploring and working with data. We'll use Pandas and Numpy to deal with data science tasks such as cleaning and preparing data.3. Python for Data Visualization: In the third section, we'll learn how to make static and interactive visualizations with Pandas. Also, I'll show you some techniques to properly make data visualization.4. Machine Learning with Python: In the fourth section, we'll learn scikit-learn by solving a text classification problem in Python. This is the most popular machine learning library in Python and we'll not only learn how to implement machine learning algorithms in Python but also we'll learn the core concepts behind the most common algorithms using practical examples.Bonus (Basic Web Scraping with Python): Remember that at the end o
This course introduces Bayesian approaches to time series analysis, covering models like Autoregressive (AR) and Dynamic Linear Models (DLMs).
This course in the DeepLearning.AI specialization covers the essential calculus concepts needed to understand and build machine learning models.
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An in-depth, hands-on course on applying Data Science, Machine Learning, and GIS to Real Estate. It covers Python, Pandas, and Scikit-Learn for analyzing and forecasting property globally.
Welcome to 'AI in Coding & Data Science: Master ChatGPT, GitHub Copilot', a comprehensive course designed to revolutionize your coding and data science journey. This course is meticulously crafted to help you harness the power of AI in coding and data science, thereby boosting your productivity and making you future-ready.With Udemy's 30-day money-back guarantee, you have nothing to lose. So why wait? Start learning today and supercharge your coding efficiency with AIIn this course, you will learn how to leverage AI tools like ChatGPT, GitHub Copilot, and Noteable to enhance your coding efficiency and data science capabilities. These tools are designed to assist you in code generation, debugging, testing, data analysis, visualization, and machine learning. They can significantly speed up your development process and make it easier to get started with new technologies.The course is structured into several modules, each focusing on a different aspect of AI-assisted coding and data science. You will learn how to set up and use these AI tools, understand their features and benefits, and see them in action through hands-on exercises and real-world examples. The course also includes sections on how to use these tools for job search and interview preparation, making it a comprehensive guide for anyone looking to boost their career in development or data science.One of the highlights of this course is the section on ChatGPT Plugins for Data Analytics, Visualizations, and Machine Learning. Here, you will get hands-on experience with the CodeInterpreter plugin, which allows you to generate Python code, perform data analysis, and even build machine learning models using natural language commands. You will work on several real-world datasets, including the Titanic, Iris, and MNIST datasets, and build predictive models to solve complex problems.By the end of this course, you will:Understand the role of AI in coding and data science and
This course, part of the 'Advanced Machine Learning' specialization, delves into the practical aspects of machine learning competitions. It covers advanced feature engineering, ensembling methods, and other techniques used by top Kaggle competitors.
A collection of articles and tutorials on various optimization algorithms used in deep learning, providing both theoretical explanations and practical code examples.
Artificial Intelligence is the next digital frontier, with profound implications for business and society. The global AI market size is projected to reach $202.57 billion by 2026, according to Fortune Business Insights.This Data Science & Machine Learning (ML) course is not only ‘Hands-On’ practical based but also includes several use cases so that students can understand actual Industrial requirements, and work culture. These are the requirements to develop any high level application in AI. In this course several Machine Learning (ML) projects are included.1) Project - Customer Segmentation Using K Means Clustering2) Project - Fake News Detection using Machine Learning (Python)3) Project COVID-19: Coronavirus Infection Probability using Machine Learning4) Project - Image compression using K-means clustering | Color Quantization using K-MeansThis course include topics ---What is Data Science Describe Artificial Intelligence and Machine Learning and Deep Learning Concept of Machine Learning - Supervised Machine Learning , Unsupervised Machine Learning and Reinforcement LearningPython for Data Analysis- Numpy Working envirnment-Google ColabAnaconda Installation Jupyter Notebook Data analysis-PandasMatplotlib What is Supervised Machine LearningRegressionClassification Multilinear Regression Use Case- Boston Housing Price Prediction Save Model Logistic Regression on Iris Flower Dataset Naive Bayes Classifier on Wine Dataset Naive Bayes Classifier for Text Classification Decision TreeK-Nearest Neighbor(KNN) Algorithm Support Vector Machine Algor
A hands-on project that teaches you how to perform data analysis and create visualizations directly within Google Sheets.
Part of the IBM Data Analyst Professional Certificate, this course covers the fundamentals of data analysis using Python, including working with data, exploratory data analysis, and an introduction to machine learning models.
This course equips you with the skills to optimize data workflows, automate analysis, and generate actionable insights using AI. It covers automating ETL processes and generating synthetic data with tools like ChatGPT-4 and MOSTLY AI.
Machine learning allows you to build more powerful, more accurate and more user friendly software that can better respond and adapt.Many companies are integrating machine learning or have already done so, including the biggest Google, Facebook, Netflix, and Amazon.There are many high paying machine learning jobs.Jump into this fun and exciting course to land your next interesting and high paying job with the projects you’ll build and problems you’ll learn how to solve.In just a matter of hours you'll have new skills with projects to back them up: Deep dive into machine learningProblems that machine learning solvesTypes of machine learningCommon machine learning structuresSteps to building a machine learning modelBuild a linear regression machine learning model with TensorFlowTest and train the modelPython variables and operatorsCollection typesConditionals and loopsFunctionsClasses and objectsInstall and import NumPyBuild NumPy arraysMultidimensional NumPy arraysArray indexes and propertiesNumPy functionsNumPy operationsAnd much more!Add new skills to your resume in this project based course: Graph data with PyPlotCustomize graphsBuild 3D graphs with PyPlotUse TensorFlow to build a program to categorize irises into different species.Build a classification modelTrack dataImplement logicImplement responsivenessBuild data structuresReplace Python lists with NumPy arraysBuild and use NumPy arraysUse common array
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Unlock the Power of Calculus in Machine Learning, Deep Learning, Data Science, and AI with Python: A Comprehensive Guide to Mastering Essential Mathematical Skills"Are you striving to elevate your status as a proficient data scientist? Do you seek a distinctive edge in a competitive landscape? If you're keen on enhancing your expertise in Machine Learning and Deep Learning by proficiently applying mathematical skills, this course is tailor-made for you.Calculus for Deep Learning: Mastering Calculus for Machine Learning, Deep Learning, Data Science, Data Analysis, and AI using PythonEmbark on a transformative learning journey that commences with the fundamentals, guiding you through the intricacies of functions and their applications in data fitting. Gain a comprehensive understanding of the core principles underpinning Machine Learning, Deep Learning, Artificial Intelligence, and Data Science applications.Upon mastering the concepts presented in this course, you'll gain invaluable intuition that demystifies the inner workings of algorithms. Whether you're crafting self-driving cars, developing recommendation engines for platforms like Netflix, or fitting practice data to a function, the essence remains the same.Key Learning Objectives:Function Fundamentals: Initiate your learning journey by grasping the fundamental definitions of functions, establishing a solid foundation for subsequent topics.Data Fitting Techniques: Progress through the course, delving into data fitting techniques essential for Machine Learning, Deep Learning, Artificial Intelligence, and Data Science applications.Approximation Concepts: Explore important concepts related to approximation, a cornerstone for developing robust models in Machine Learning, Deep Learning, Artificial Intelligence, and Data Science.Neural Network Training: Leverage you
An intermediate-level course that builds on exploratory data analysis to lay the foundation for predictive modeling. It covers merging data, handling missing data, and special techniques for textual, audio, and image data.
This University of Michigan course explores the ethical considerations in data science, including fairness, accountability, and transparency, which are deeply connected to statistical concepts of bias and variance.
This University of London course provides a practical introduction to the K-Means clustering algorithm, with a focus on the underlying statistical concepts.
This course covers the mathematical foundations of optimization and its applications in data science.
This cheat sheet from Dummies.com provides a quick overview of the key concepts in statistics. It covers topics such as descriptive statistics, probability, and inference. The cheat sheet is a great resource for a quick review or to refresh your memory.
Obtain skills in one of the most sort after fields of this centuryIn this course, you'll learn how to get started in data science. You don't need any prior knowledge in programming. We'll teach you the Python basics you need to get started. Here are some of the items we will cover in this courseThe Data Science ProcessPython for Data ScienceNumPy for Numerical ComputationPandas for Data ManipulationMatplotlib for VisualizationSeaborn for Beautiful VisualsPlotly for Interactive VisualsIntroduction to Machine LearningDask for Big DataPower BI DesktopGoogle Data StudioAssociation Rule Mining - AprioriDeep Learning Apache Spark for Handling Big DataFor the machine learning section here are some items we'll cover :How Algorithms WorkAdvantages & Disadvantages of Various AlgorithmsFeature ImportancesMetricsCross-ValidationFighting OverfittingHyperparameter TuningHandling Imbalanced DataTensorFlow & KerasAutomated Machine Learning(AutoML)Natural Language ProcessingThe course also contains exercises and solutions that will help you practice what you have learned. By enrolling in this course, you'll have lifetime access to the videos and Notebooks. Purchasing the course also comes with a 30-day money-back guarantee, so you can try it at no risk at all. Let's now add Data Science, Machine Learning, and Deep Learning to your CV. See you inside the course. The course also contains exercises and solutions that will help you practice what you have learned. By enrolling in this course
This course covers the essential exploratory techniques for summarizing data. It is part of the Data Science Specialization from Johns Hopkins University and focuses on applying these techniques before formal modeling.
Learn to think like a data scientist by using interactive features in MATLAB to explore, analyze, and visualize data. The course focuses on extracting subsets of data, computing statistics, and creating customized visualizations.
This course, offered by Google Cloud, delves into what constitutes a good feature and how to effectively represent it in a machine learning model. It covers essential data processing techniques for preparing a feature set, including preprocessing and feature creation, as well as feature crosses and TensorFlow Transform.
This course covers making inferences from sample data to the broader population. It delves into the principles of significance testing, including p-values, power, and Type I and II errors, and covers a wide range of statistical tests for different data types and research designs.
Hello there,Welcome to the “Machine Learning Python with Theoretically for Data Science” course.Machine Learning with Python in detail both practically and theoretically with machine learning project for data scienceMachine learning courses teach you the technology and concepts behind predictive text, virtual assistants, and artificial intelligence. You can develop the foundational skills you need to advance to building neural networks and creating more complex functions through the Python and R programming languages. Machine learning training helps you stay ahead of new trends, technologies, and applications in this field.Machine learning describes systems that make predictions using a model trained on real-world data. For example, let's say we want to build a system that can identify if a cat is in a picture. We first assemble many pictures to train our machine learning model. During this training phase, we feed pictures into the model, along with information around whether they contain a cat. While training, the model learns patterns in the images that are the most closely associated with cats. This model can then use the patterns learned during training to predict whether the new images that it's fed contain a cat. In this particular example, we might use a neural network to learn these patterns, but machine learning can be much simpler than that. Even fitting a line to a set of observed data points, and using that line to make new predictions, counts as a machine learning model.Machine learning isn’t just useful for predictive texting or smartphone voice recognition. Machine learning is constantly being applied to new industries and new problems. machine learning, python, data science, machine learning python, python data science, machine learning a-z, python for data science and machine learning bootcamp, python for data science, complete machine learning, machine learning projects,Use Scikit Learn, NumPy, Pandas, Matpl
An open and free course from Carnegie Mellon University that introduces causal and statistical reasoning for critical thinking.
Lets learn basics to transform your career. I promise not to exhaust you with huge number of videos.Artificial Intelligence, Machine Learning, Data Science are the most hot skills in the markets which has potential to help you earn highest salary. These skills has potential to turn your financial to better level which can provide you growth and prosperity. Welcome to the most comprehensive Introduction to AI, Machine Learning and Data Science course! An excellent choice for beginners and professionals looking to expand their knowledge on Artificial Intelligence, Machine Learning, Data Science, Deep Learning, Supervised and Unsupervised Learning. This is an introductory course for beginners to boost your knowledge. This course gives introduction to to AI, Machine Learning, Data Science, Deep Learning, Supervised and Unsupervised learning with real time examples where machine learning can be applied to solve or simplify real world business problems.What you'll learnIntroduction to buzz words like AI, Machine Learning, Data Science and Deep Learning etc.Real time examples where Machine Learning can be used to solve real world business problemsIntroduction to Supervised Learning and Unsupervised LearningIntroduction to Natural Language ProcessingWhy python is popular for Machine LearningPrerequisite: You just need computer or mobile phone with internet connection to access course material.No prerequisites !Happy Learning!
Ever wondered how AI technologies like OpenAI ChatGPT, GPT-4, DALL-E, Midjourney, and Stable Diffusion really work? In this course, you will learn the foundations of these groundbreaking applications.This course continues where my first course, Deep Learning in Python, left off. You already know how to build an artificial neural network in Python, and you have a plug-and-play script that you can use for TensorFlow. Neural networks are one of the staples of machine learning, and they are always a top contender in Kaggle contests. If you want to improve your skills with neural networks and deep learning, this is the course for you.You already learned about backpropagation, but there were a lot of unanswered questions. How can you modify it to improve training speed? In this course you will learn about batch and stochastic gradient descent, two commonly used techniques that allow you to train on just a small sample of the data at each iteration, greatly speeding up training time.You will also learn about momentum, which can be helpful for carrying you through local minima and prevent you from having to be too conservative with your learning rate. You will also learn about adaptive learning rate techniques like AdaGrad, RMSprop, and Adam which can also help speed up your training.Because you already know about the fundamentals of neural networks, we are going to talk about more modern techniques, like dropout regularization and batch normalization, which we will implement in both TensorFlow and Theano. The course is constantly being updated and more advanced regularization techniques are coming in the near future.In my last course, I just wanted to give you a little sneak peak at TensorFlow. In this course we are going t
This course covers the basics of unsupervised learning, supervised learning, reinforcement learning algorithms, and generative models with applications in electric power systems.
This is a top selling Machine Learning and Data Science course just updated this month with the latest trends and skills for 2023! Become a complete Data Scientist and Machine Learning engineer! Join a live online community of 900,000+ engineers and a course taught by industry experts that have actually worked for large companies in places like Silicon Valley and Toronto. Graduates of Andrei’s courses are now working at Google, Tesla, Amazon, Apple, IBM, JP Morgan, Meta, + other top tech companies. You will go from zero to mastery!Learn Data Science and Machine Learning from scratch, get hired, and have fun along the way with the most modern, up-to-date Data Science course on Udemy (we use the latest version of Python, Tensorflow 2.0 and other libraries). This course is focused on efficiency: never spend time on confusing, out of date, incomplete Machine Learning tutorials anymore. We are pretty confident that this is the most comprehensive and modern course you will find on the subject anywhere (bold statement, we know).This comprehensive and project based course will introduce you to all of the modern skills of a Data Scientist and along the way, we will build many real world projects to add to your portfolio. You will get access to all the code, workbooks and templates (Jupyter Notebooks) on Github, so that you can put them on your portfolio right away! We believe this course solves the biggest challenge to entering the Data Science and Machine Learning field: having all the necessary resources in one place and learning the latest trends and on the job skills that employers want.The curriculum is going to be very hands on as we walk you from start to finish of becoming a professional Machine Learning and Data Science engineer. The course covers 2 tracks. If you already know programming, you can dive right in and skip the section where we teach you Python from scratch. If
Academy of Computing & Artificial Intelligence proudly present you the course "Data Engineering with Python". It all started when the expert team of Academy of Computing & Artificial Intelligence (PhD, PhD Candidates, Senior Lecturers , Consultants , Researchers) and Industry Experts . hiring managers were having a discussion on the most highly paid jobs & skills in the IT/Computer Science / Engineering / Data Science sector in 2021. At the end of the Course you will be able to start your career in Data Mining & Machine Learning. 1) Introduction to Machine Learning - [A -Z] Comprehensive Training with Step by step guidance2) Setting up the Environment for Machine Learning - Step by step guidance [R Programming & Python]3) Supervised Learning - (Univariate Linear regression, Multivariate Linear Regression, Logistic regression, Naive Bayes Classifier, Trees, Support Vector Machines (SVM), Random Forest)4) Unsupervised Learning5) Convolutional Neural Networks - CNN6) Artificial Neural Networks 7) Real World Projects with SourceCourse Learning OutcomesTo provide awareness of (Supervised & Unsupervised learning) coming under Machine Learning (Why we need Data Mining & Machine Learning, What is Data Mining, What is Machine Learning, Traditional Programming Vs Machine Learning, Steps to Solve a Data Mining & Machine Learning Problem, Classification , Clustering)Describe intelligent problem-solving methods via appropriate usage of Machine Learning techniques.To build appropriate neural models from using state-of-the-art python framework.To setup the Environment for Machine Learning - Step by step guidance [R Progra
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Part of the DeepLearning.AI specialization, this course teaches the core concepts of linear algebra and how they are applied in machine learning and data science.
Data Science , Machine Learning : Ultimate Course For AllCourse Description:Welcome to the ultimate Data Science , Machine Learning course for 2025 – your complete guide to mastering Data Science , Machine Learning from the ground up with real-world examples and hands-on projects.This course is designed for beginners and intermediate learners who want to dive deep into the fields of Data Science , Machine Learning. Whether you’re starting from zero or brushing up your skills, this course will walk you through all the essential concepts, tools, and techniques used in Data Science , Machine Learning today.You’ll begin by understanding the core principles of Data Science , Machine Learning, then move into Python programming, data preprocessing, model training, evaluation, and deployment. With step-by-step explanations and practical exercises, you’ll gain real-world experience in solving problems using Data Science , Machine Learning.By the end of the course, you’ll be fully equipped to handle real projects and pursue career opportunities in Data Science , Machine Learning confidently.Class Overview:Introduction to Data Science , Machine Learning:Understand the principles and concepts of data science and machine learning.Explore real-world applications and use cases of data science across various industries.Python Fundamentals for Data Science:Learn the basics of Python programming language and its libraries for data science, including NumPy, Pandas, and Matplotlib.Master data manipulation, analysis, and visualization techniques using Python.Data Preprocessing and Cleaning:Understan
The third course in the DeepLearning.AI specialization, focusing on the fundamentals of probability and statistics for machine learning and data science.
Welcome to the most in-depth and engaging Machine Learning & Data Science Bootcamp designed to equip you with practical skills and knowledge for a successful career in the AI field. This comprehensive course is tailor-made for beginners and aspiring professionals alike, guiding you from the fundamentals to advanced topics, with a strong emphasis on Python programming and real-world applications.Become a master of Machine Learning, Deep Learning, and Data Science with Python in this comprehensive bootcamp. This course is designed to take you from beginner to expert, equipping you with the skills to build powerful AI models, solve real-world problems, and land your dream job in 2024.Master the fundamentals of Data Science:Learn how to work with data effectively, from collection and cleaning to analysis and visualization.Master essential Python libraries like NumPy, Pandas, and Matplotlib for data manipulation and exploration.Discover the power of data preprocessing techniques to enhance your model's performance.Unlock the potential of Machine Learning with Python:Dive into the core concepts of machine learning algorithms, including regression, classification, and clustering.Implement popular ML algorithms using Scikit-learn, the go-to library for ML in Python.Build your own predictive models and evaluate their accuracy with real-world datasets.Launch your career in Data Science and Machine Learning:Gain practical experience by working on real-world projects and case studies.Learn how to deploy your models in production environments to create real-world impact.Prepare for technical interviews and land your dream job with career guidance and tips.Why choose this course:Comprehensive curriculum covering all essential aspects of
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This University of London course provides a comprehensive introduction to probability and statistics, focusing on understanding and interpreting p-values and confidence intervals.
Part of the IBM Data Science Professional Certificate, this course focuses on data visualization techniques in Python using libraries like Matplotlib, Seaborn, and Folium, which are essential for EDA.
Take your first step towards becoming a data science expert with our comprehensive R programming course. This course is designed for beginners with little or no programming experience, as well as experienced R developers looking to expand their skill set.You'll start with the basics of R programming and work your way up to advanced techniques used in data science. Along the way, you'll gain hands-on experience with popular R libraries such as dplyr, ggplot2, and tidyr.You will learn how to import, clean and manipulate data, create visualizations and statistical models to gain insights and make predictions. You will also learn data wrangling techniques and how to use R for data visualization.By the end of the course, you'll have a solid understanding of R programming and be able to apply your new skills to a wide range of data science projects. You'll also learn how to use R in Jupyter notebook, so that you can easily share your work and collaborate with others.So, if you're ready to take your first step towards becoming a data science expert, this is the course for you! With our hands-on approach and interactive quizzes, you'll be able to put your new skills into practice right away.In this course, you learn:How to install R-PackagesHow to work with R-data typesWhat is R DataFrame, Matrices, Vectors, etc?How to work with DataFramesHow to perform join and merge operations on DataFramesHow to plot data using ggplot2 in R 4Analysis of real-life dataset Covid-19 How this course will help you?This course will give you a very solid foundation in machine learning. You will be able to use the concepts of this course in other machine learning models. If you are a business manager or an executive or a student who wants to learn and excel in machine learning, this is the perfect course for you.
While not exclusively an EDA course, it teaches the SQL skills essential for extracting and manipulating data from databases, a crucial first step in any exploratory analysis.
This Stanford University course teaches essential statistical thinking concepts for learning from data. Topics include descriptive statistics, sampling, probability, and regression.
This course focuses on applying statistical methods in R to public health research, covering data management, descriptive statistics, and basic inferential statistics.
Part of the Data Science Specialization from Johns Hopkins University, this course presents the fundamentals of statistical inference in a practical, hands-on manner for data analysis.
This course is designed for scientists, engineers, and other problem-solvers who want to learn the basics of statistical thinking and how to apply it to real-world problems. You will learn about data analysis, experimental design, and statistical modeling.
Offered by IBM, this course provides a hands-on approach to statistical analysis using Python. It covers descriptive statistics, probability distributions, hypothesis testing, and regression analysis.
You’ve just stumbled upon the most complete, in-depth Neural Networks for Classification course online.Whether you want to:- build the skills you need to get your first data science job- move to a more senior software developer position- become a computer scientist mastering in data science- or just learn Neural Networks to be able to create your own projects quickly....this complete Neural Networks for Classification Masterclass is the course you need to do all of this, and more.This course is designed to give you the Neural Network skills you need to become a data science expert. By the end of the course, you will understand the Multilayer Perceptron Neural Networks for Classification method extremely well and be able to apply them in your own data science projects and be productive as a computer scientist and developer.What makes this course a bestseller?Like you, thousands of others were frustrated and fed up with fragmented Youtube tutorials or incomplete or outdated courses which assume you already know a bunch of stuff, as well as thick, college-like textbooks able to send even the most caffeine-fuelled coder to sleep.Like you, they were tired of low-quality lessons, poorly explained topics, and confusing info presented in the wrong way. That’s why so many find success in this complete Neural Networks for Classification course. It’s designed with simplicity and seamless progression in mind through its content.This course assumes no previous data science experience and takes you from absolute beginner core concepts. You will learn the core dimensionality reduction skills and master the Multilayer Perceptron (MLP) technique. It's a one-stop shop to learn Multilayer Networks. If you want to go beyond the core content you can do so at any time.What if I have questions?As if this course wasn’t com
You will build a binary classification machine learning model to predict if a person is looking for a new job or not. You'll go through the end to end machine learning project-- data collection, exploration, feature engineering, model selection, data transformation, model training, model evaluation and model explainability. We will brainstorm ideas throughout each step and by the end of the project you'll be able to explain which features determine if someone is looking for a new job or not.The template of this Jupyter Notebook can be applied to many other binary classification use cases. Questions like -- will X or Y happen, will a user choose A or B, will a person sign up for my product (yes or no), etc. You will be able to apply the concepts learned here to many useful projects throughout your organization!This course is best for those with beginner to senior level Python and Data Science understanding. For more beginner levels, feel free to dive in and ask questions along the way. For more advanced levels, this can be a good refresher on model explainability, especially if you have limited experience with this. Hopefully you all enjoy this course and have fun with this project!
Hello and welcome to the Machine Learning with STATA course. Machine Learning is influencing our daily lives and is one of the most significant aspects of technological advancements. The goal of this course is to provide you with the most up-to-date Machine Learning methodologies using STATA . It will teach you how to think about data science and machine learning in a new way. This is an excellent approach to begin a career in Machine Learning because you will learn some fundamental principles and receive practical experience. I'm thrilled to share what I know about Machine Learning using STATA with you. I assure you that it will be well worth your time and effort, and that you will gain a vital skill.Based on our research this is the only course that uses STATA to apply Machine Learning Models in Credit Risk Scenario. Because we know that many of you are already familiar with STATA or want to be familiar, we chose it as our platform. From the beginning to the finish of the course, we will start from scratch and work together to build new abilities. In this course, we will work together to create a complete data science project utilizing Credit Risk Data from start to finish. For this course, we have information on around 40,000 consumers, including their level of education, age, marital status, where they live, if they own a home, and other pertinent information. We'll get our hands filthy with these numbers and dig deep into them, and you'll be able to practice on your own. Additionally, you will have access to essential resources like as lectures, homework, quizzes, slides, and a literature analysis on modeling methodologies. Let's see what the course structure looks like right now!
Welcome to Complete Python Data Science, Deep Learning, R Programming course.Python Data Science A-Z, Data Science with Machine Learning A-Z, Deep Learning A-Z, Pandas, Numpy and R Statistics Data science, python data science, r statistics, machine learning, deep learning, data visualization, NumPy, pandas, data science with r, r, complete data science, maths for data science, data science a-zData Science A-Z, Python Data Science with Machine Learning, Deep Learning, Pandas, Numpy, Data visualization, and RReady for the Data Science career? Are you curious about Data Science and looking to start your self-learning journey into the world of data?Are you an experienced developer looking for a landing in Data Science!In both cases, you are at the right place! The two most popular programming tools for data science work are Python and R at the moment. It is hard to pick one out of those two amazingly flexible data analytics languages. Both are free and open-source.Train up with a top-rated data science course on Udemy. Gain in-demand skills and help organizations forecast product and service demands for the future. From machine learning to data mining to data analysis, we’ve got a data science course to help you progress on your career path.R for statistical analysis and Python as a general-purpose programming language. For anyone interested in machine learning, working with large datasets, or creating complex data visualizations, they are absolutely essential.With my full-stack Data Science course, you will be able to learn R and Python together.If you have some programming experience, Python might be the language for you. R was built as a statistical language, it suits much better to do statistical learning with R programming.But do not worry! In this course, yo
Solve Business Problems Using Data Science Practically. Learn To Build & Deploy Artificial Intelligence, Machine Learning, Data Science , Auto Ml, Deep Learning, Natural Language Processing (NLP) Web Applications Projects With Python (Flask, Django, Heruko, Streamlit Cloud).How much does a Data Scientist make in the United States?The national average salary for a Data Scientist is US$1,20,718 per year in the United States, 2.8k salaries reported, updated on July 15, 2021 (source: glassdoor)Salaries by Company, Role, Average Base Salary in (USD)Facebook Data Scientist makes USD 1,36,000/yr. Analyzed from 1,014 salaries.Amazon Data Scientist makes USD 1,25,704/yr. Analyzed from 307 salaries.Apple Data Scientist makes USD 1,53,885/yr. Analyzed from 147 salaries.Google Data Scientist makes USD 1,48,316/yr. Analyzed from 252 salaries.Quora, Inc. Data Scientist makes USD 1,22,875/yr. Analyzed from 509 salaries.Oracle Data Scientist makes USD 1,48,396/yr. Analyzed from 458 salaries.IBM Data Scientist makes USD 1,32,662/yr. Analyzed from 388 salaries.Microsoft Data Scientist makes USD 1,33,810/yr. Analyzed from 205 salaries.Walmart Data Scientist makes USD 1,08,937/yr. Analyzed 187 salaries.Cisco Systems Data Scientist makes USD 1,57,228/yr. Analyzed from 184 salaries.Uber Data Scientist makes USD 1,43,661/yr. Analyzed from 151 salaries.Intel Corporation Data Scientist makes USD 1,25,930/yr. Analyzed from 131 salaries.Airbnb Data Scientist makes USD 1,80,569/yr. Analyzed from 122 salaries.Adobe Data Scientist makes USD 1,39,074/yr. Analyzed from 109 salaries.<
This professional certificate program from IBM is designed for those who want to take their data science skills to the next level. It covers advanced topics, including advanced machine learning, deep learning, and big data.
Another course in Harvard's Data Science Professional Certificate that introduces the basics of statistical inference using the R programming language.
A comprehensive program designed to prepare individuals for a career in data analytics. It covers data cleaning, analysis, visualization, and the use of tools like spreadsheets, SQL, R, and Tableau.
Real-Life Machine Learning and Data Science Projects [2025]: Unleash the Future of Data Mastery! Are you ready to embark on an extraordinary voyage into the realm of Real Life Machine Learning and Data Science Projects? Brace yourself for an electrifying experience that will elevate your skills, boost your career prospects, and open the doors to limitless possibilities!What Awaits You in this Cutting-Edge Course:1. Data Empowerment: Navigate the vast data landscape with finesse as you learn to upload datasets in Google Colab and unleash the true potential of your data.2. The Data Sorcerer: Unlock the secrets of data manipulation using the powerful Pandas library, transforming raw data into actionable insights.3. The Data Alchemist: Harness the true power of Google Colab as you embark on thrilling Machine Learning and Data Science Projects that will leave you spellbound.4. Mastering Real-Life Data Challenges: Fearlessly conquer missing values in real-world datasets, both categorical and numerical, becoming a data superhero.5. The Code Whisperer: Unravel the language of data with Label Encoding, empowering you to speak the language of machines fluently.6. Data Splitting Zen: Achieve data harmony through expertly splitting datasets into Training and Testing sets, laying the foundation for brilliant model creation.7. The Model Architect: Build robust models using KNN, Logistic Regression, SVM, and XGBoost Regressor, transforming data into valuable predictions.8. The Art of Data Storytelling: Immerse yourself in the mesmerizing world of Data Visualization using Seaborn and Ma
Welcome to our Data Science and Machine Learning course, meticulously crafted for those passionate about leveraging data and developing sophisticated models. This program starts with the fundamentals of data science, where you'll learn to collect, clean, and analyze data using Python libraries like pandas and NumPy. We’ll cover essential data visualization techniques to transform raw data into meaningful insights that drive decision-making.As you advance, we will delve into a range of machine learning algorithms, including both supervised and unsupervised methods. You'll gain hands-on experience with practical applications such as regression, classification, clustering, and dimensionality reduction. Our approach ensures that you not only understand theoretical concepts but also apply them to real-world scenarios through engaging projectsThe culmination of the course involves building a stock prediction tool, allowing you to apply your accumulated knowledge to a practical problem. This final project will showcase your ability to develop, implement, and evaluate predictive models, demonstrating your readiness for real-world challenges. By the end of this course, you'll possess a solid foundation in data science and machine learning, equipping you to tackle complex challenges and make valuable contributions in any industry. Join us to unlock your potential and advance your career in this dynamic and rapidly evolving field!
Are you ready to embark on a data-driven journey into the world of machine learning and data science? If you're looking for a practical yet powerful starting point, then you're in the right place. Linear regression, the simple yet highly popular machine learning algorithm, is your gateway. It's not just jargon; it's a versatile tool used to uncover crucial insights in your data and predict the future.In this hands-on data science and machine learning project, we'll delve into the driving factors behind California house prices. You'll learn how to clean and visualize data, process it, and harness various Python libraries. By the end of this project, you'll have mastered linear regression in Python and gained essential skills for conducting data science projects.What You'll Gain:Mastery of Python Libraries: Dive into data science and machine learning with pandas, Scikit-learn, statsmodels, matplotlib, and seaborn.Real-World Application: Apply your knowledge to a hands-on project that you can showcase on your personal website and resume.Step-by-Step Approach: Follow a clear, concise case study to build your confidence and expertise in machine learning and data science.Start your data science journey with a simple yet strong foundation. Let's get started!This course will empower you to unlock the potential of data science, equipping you with the skills to make informed decisions and drive success in the tech industry.
This chapter from an online book on Data Science with Python focuses on data wrangling operations using the Pandas library. It covers hierarchical indexing, combining datasets through merging, joining, and concatenating, and reshaping data with pivot and melt functions.
This course is designed by an industry expert who has over 2 decades of IT industry experience including 1.5 decades of project/ program management experience, and over a decade of experience in independent study and research in the fields of Machine Learning and Data Science.The course will equip students with a solid understanding of the theory and practical skills necessary to learn machine learning models and data science.When building a high-performing ML model, it’s not just about how many algorithms you know; instead, it’s about how well you use what you already know.Throughout the course, I have used appealing visualization and animations to explain the concepts so that you understand them without any ambiguity.This course contains 9 sections: 1. Introduction to Machine Learning 2. Anaconda – An Overview & Installation 3. JupyterLab – An Overview 4. Python – An Overview 5. Linear Algebra – An Overview 6. Statistics – An Overview 7. Probability – An Overview 8. OOPs – An Overview 9. Important Libraries – An OverviewThis course includes 20 lectures, 10 hands-on sessions, and 10 downloadable assets.By the end of this course, I am confident that you will outperform in your job interviews much better than those who have not taken this course, for sure.
This resource discusses the central role of statistics in the data science approach. It emphasizes the need for statistical thinking in designing data collection, deriving insights from data visualization, supporting data-based decisions, and constructing predictive models.
Learn the Most demanding language of industry with concept applied to Data Science, Machine Learning and AIImportant topics are covered such as Python Basic Concepts, Advance Concept, Python Crash Course, Python Libraries such as numpy, pandas, matplotlib, seaborn, Data Science Concept with Case Studies , Machine Learning and it's types, Artificial Intelligence with Case Studies This Course will design to understand Data Visualization and Data Analysis with Machine Learning Algorithms with case Studies. Data Analysis with Machine Learning Algorithms such as Linear Regression, Logistic Regression, SVM, K Mean, KNN, Naïve Bayes, Decision Tree and Random Forest are covered. The course provides path to start career in Data Analysis. Importance of Data, Collection of Data with Case Study is covered. Machine Learning Types such as Supervise Learning, Unsupervised Learning, are also covered. Machine Learning concept such as Train Test Split, Machine Learning Models, Model Evaluation are also covered. The course provides path to start career in Data Analysis. Importance of Data, Collection of Data with Case Study is covered. Machine Learning Types such as Supervise Learning, Unsupervised Learning, are also covered. Machine Learning concept such as Train Test Split, Machine Learning Models, Model Evaluation are also covered. Data Visualization and Analysis with ML using Python, Numpy Pandas, Matplotlib, Seaborn, Plotly & Scikit Learn libraryThis Course will design to understand Machine Learning Algorithms with case Studies using Scikit Learn Library. The Machine Learning Algorithms such as Linear Regression, Logistic Regression, SVM, K Mean, KNN, Naïve Bayes, Decision Tree and Random Forest are covered with case studies Data science continues to evolve as one of the most promising and in-demand career paths for skilled professionals. Today, successful data professionals understand that they must advance past the trad
This course will help you in understanding of the Linear Algebra and math’s behind Data Science and Machine Learning. Linear Algebra is the fundamental part of Data Science and Machine Learning. This course consists of lessons on each topic of Linear Algebra + the code or implementation of the Linear Algebra concepts or topics.There’re tons of topics in this course. To begin the course:We have a discussion on what is Linear Algebra and Why we need Linear AlgebraThen we move on to Getting Started with Python, where you will learn all about how to setup the Python environment, so that it’s easy for you to have a hands-on experience.Then we get to the essence of this course;Vectors & Operations on VectorsMatrices & Operations on MatricesDeterminant and InverseSolving Systems of Linear EquationsNorms & Basis VectorsLinear IndependenceMatrix FactorizationOrthogonalityEigenvalues and EigenvectorsSingular Value Decomposition (SVD)Again, in each of these sections you will find Python code demos and solved problems apart from the theoretical concepts of Linear Algebra.You will also learn how to use the Python's numpy library which contains numerous functions for matrix computations and solving Linear Algebric problems.So, let’s get started….
This course is ideal for you if you want to gain knowledge in statistical methods required for Data Science and machine learning!Learning Statistics is an essential part of becoming a professional data scientist. Most data science learners study python for data science and ignore or postpone studying statistics. One reason for that is the lack of resources and courses that teach statistics for data science and machine learning.Statistics is a huge field of science, but the good news for data science learners is that not all statistics are required for data science and machine learning. However, this fact makes it more difficult for learners to study statistics because they are not sure where to start and what are the most relevant topics of statistics for data science.This course comes to close this gap.This course is designed for both beginners with no background in statistics for data science or for those looking to extend their knowledge in the field of statistics for data science.I have organized this course to be used as a video library for you so that you can use it in the future as a reference. Every lecture in this comprehensive course covers a single topic.In this comprehensive course, I will guide you to learn the most common and essential methods of statistics for data analysis and data modeling.My course is equivalent to a college-level course in statistics for data science and machine learning that usually cost thousands of dollars. Here, I give you the opportunity to learn all that information at a fraction of the cost! With 77 HD video lectures, many exercises, and two projects with solutions.All materials presented in this course are provided in detailed downloadable notebooks for every lecture.Most students focus on learning python codes for data science, however, this is not enough to be a proficient data scientis
This book provides a practical introduction to exploratory data analysis using Python. It covers topics such as distributions, probability, and hypothesis testing. The book is very hands-on and includes many case studies.
Are you looking to ace your next data scientist or data analyst interview? Look no further! This comprehensive Udemy course, "Machine Learning & Data Science Interview Guide: 2025" is designed to equip you with the knowledge and skills necessary to excel in your data science job interviews.600+ Most Asked Interview Questions around Wide topics:Curated selection covering essential topics frequently tested during interviews.Dives deep into various domains, including Python, SQL, Statistics and Mathematics, Machine Learning and Deep Learning, Power BI, Advanced Excel, and Behavioral and Scenario-based questions.Python Section (100 Questions):Tests proficiency in coding with Python.Ensures a strong understanding of this popular programming language.SQL Section (100 Questions):Sharpens SQL querying skills.Tests knowledge of database querying and manipulation.Statistics and Mathematics Section (100 Questions):Solidifies understanding of foundational concepts.Covers essential statistical and mathematical principles.Machine Learning and Deep Learning Section (135 Questions):Explores theoretical knowledge and practical application.Prepares for ML and DL-related interview questions.Power BI and Advanced Excel Sections (105 Questions):Demonstrates expertise in data visualization and analysis tools.Covers a range of topics in Power BI and Advanced Excel functionalities.To round off your interview preparation, the course includes 60 questions that focus on behavioral and scenario-based aspects,
Bienvenidos a este Curso Completo de Data Science en Python Desde Cero. En este curso, aprenderemos cómo usar Python para Data Science. Aprenderemos cómo recopilar datos, limpiar datos, hacer visualizaciones y construir un modelo de machine learning usando Python.El objetivo principal de este curso es llevar tus habilidades analíticas y de programación al siguiente nivel para desarrollar tu carrera como data scientist. Para lograr este objetivo, vamos a resolver +100 ejercicios y varios proyectos que te ayudarán a poner en práctica todos los conceptos de programación utilizados en Data Science.Aprenderemos las principales librerías de Python utilizadas en data science, como Pandas, Numpy y Scikit Learn, y las usaremos para hacer tareas que data scientist realizan a diario (limpieza de datos, visualización de datos, recopilación de datos y creación de modelos).Este curso cubre 4 secciones.1. Curso básico de Python para Data Science: En la primera sección, aprenderemos todos los conceptos básicos de Python que necesita saber para data science. Aprenderemos a usar variables, listas, diccionarios y más.2. Python para análisis de datos: Aprenderemos las librerías de Python que se utilizan para el análisis de datos, como Pandas y Numpy. Ambas son excelentes herramientas para explorar y trabajar con datos. Usaremos Pandas y Numpy para realizar tareas de data science como limpiar y preparar datos.3. Python para visualización de datos: En la tercera sección, aprenderemos como hacer visualizaciones estáticas e interactivas con Pandas. Además, te mostraré algunas técnicas para realizar correctamente la visualización de datos.4. Machine Learning con Python: En la cuarta sección, aprenderemos scikit-learn resolviendo un problema de clasificación de texto en Python. Esta es la librería de machine learning más popular en Python y no solo aprenderemos como implementar algoritmos de machine learning en Python, sino que también aprenderemos conceptos básicos detrás de los a
This course, part of the Master in Applied Artificial Intelligence program, covers the fundamentals of theoretical statistics that form the foundation for analyzing machine learning algorithms. Topics include statistical models, inference, maximum likelihood estimation, hypothesis testing, and Bayesian inference.
Short Summary about the need and importance of the CourseLinear Algebra is the backbone of Data Science, Machine Learning (ML), and Artificial Intelligence (AI). Understanding its core concepts is essential to grasp the functionality of ML algorithms. However, most courses make this process overwhelming by focusing on complex calculations rather than the practical application you need to understand the working of Machine Learning Algorithms. How our course is different ?We’ve designed this Linear Algebra course specifically for aspiring Data Scientists and Machine Learning enthusiasts who want to dive into the essentials without wasting time. In just around 7.5 hours, you’ll master the key concepts required for Machine Learning, with a clear focus on how these concepts apply directly to real-world Machine Learning algorithms. This Course will teach you the geometric intuition and essential computations so that you can think like a Machine Learning Expert.Please find the Complete Syllabus for the Course belowMathematics for Machine Learning: 1. Introduction to linear AlgebraDifference between Algebra and Linear Algebra, Definition of Linear Algebra, Linear Equation and System of linear equations with an Example, Attributes and properties of system of linear equation.Mathematics for Machine Learning: 2. Geometric representation of an expressionGeometric visualization of an algebraic expression with an example, Gradient of a straight line, Generalization of an expression geometrically on an N dimensional plane.Mathematics for Machine Learning: 3. Importance of a System of linear EquationDefinition and Goal of System of Linear Equations, General form of system of Linear Equations, representing a dataset in terms of System of linear equations, Applications of system of linear equations in solving a classification and a regression problem with an e
Welcome to the best Machine Learning and Data Science with Python course in the planet. Are you ready to start your journey to becoming a Data Scientist?In this comprehensive course, you’ll begin your journey with installation and learning the basics of Python. Once you are ready, the introduction to Machine Learning section will give you an overview of what Machine Learning is all about, covering all the nitty gritty details before landing on your very first algorithm. You'll learn a variety of supervised and unsupervised machine learning algorithms, ranging from linear regression to the famous boosting algorithms. You’ll also learn text classification using Natural Language processing where you’ll deal with an interesting problem.Data science has been recognized as one of the best jobs in the world and it’s on fire right now. Not only it has a very good earning potential, but also it facilitates the freedom to work with top companies globally. Data scientists also gets the opportunity to deal with interesting problems, while being invaluable to the organization and enjoy the satisfaction of transforming the way how businesses make decisions. Machine learning and data science is one of the fastest growing and most in demand skills globally and the demand is growing rapidly. Parallel to that, Python is the easiest and most used programming language right now and that’s the first language choice when it comes to the machine learning. So, there is no better time to learn machine learning using python than today.I designed this course keeping the beginners and those who with some programming experience in mind. You may be coming from the Finance, Marketing, Engineering, Medical or even a fresher, as long as you have the passion to learn, this course will be your first step to become a Data Scientist.I have 20 hours of best quality video contents. There are over 90 HD video lectures each rangi
Science des Données et Apprentissage Automatique : Compréhension Théorique ApprofondieLa science des données (Data Science) est un domaine vaste et fascinant, tandis que l'apprentissage automatique (Machine Learning) est une branche passionnante de la Data Science. Ce cours de deux heures offre une exploration détaillée de ces domaines pour ceux qui souhaitent comprendre leur fonctionnement.Ce cours se distingue par son approche visuelle et simplifiée, qui démystifie les concepts et algorithmes de l'apprentissage automatique sans se perdre dans les détails mathématiques. Il se concentre sur la théorie, offrant une base solide pour quiconque souhaite exceller dans le domaine de la science des données.Les sections de ce cours sont interconnectées et progressives, formant un ensemble cohérent qui facilite l'apprentissage. Chaque section se construit sur les précédentes, vous permettant d'explorer des concepts de plus en plus avancés au fur et à mesure de votre progression.Ce cours aborde les compétences les plus recherchées dans le monde réel de la science des données et de l'apprentissage automatique. Il est conçu pour être simple, facile à comprendre, et descriptif, vous permettant de progresser rapidement.Rejoignez ce cours pour démystifier la science des données et l'apprentissage automatique. C'est une opportunité unique d'acquérir des connaissances solides dans un format accessible et inspirant !Contenu du cours :Après avoir suivi ce cours avec succès, vous serez en mesure de :Comprendre les concepts, principes et théories de la science des données et de l'apprentissage automatiqueAppréhender la méthodologie de la science des données et de l'apprentissage automatiqueÉvaluer les avantages et les inconvénients des différents algorithmes d'apprentissage automatiqueSélectionner l'algorithme d'apprentissage automat
Welcome to the ultimate ChatGPT and Python Data Science course—your golden ticket to mastering the art of data science intertwined with the latest AI technology from OpenAI.This course isn't just a learning journey—it's a transformative experience designed to elevate your skills and empower you with practical knowledge.With AI's recent evolution, many tasks can be accelerated using models like ChatGPT. We want to share how to leverage AI it for data science tasks.Embark on a journey that transcends traditional learning paths. Our curriculum is designed to challenge and inspire you through:Comprehensive Challenges: Tackle 10 concrete data science challenges, culminating in a case study that leverages our unique 365 data to address genuine machine learning problems.Real-World Applications: From preprocessing with ChatGPT to dissecting a furniture retailer's client database, explore a variety of industries and data types.Advanced Topics: Delve into retail data analysis, utilize regular expressions for comic book analysis, and develop a ChatGPT-powered movie recommendation system. Engage with such critical topics as AI ethics to combat biases and ensure data privacy.This course emphasizes practical application over theoretical knowledge, where you will:Perform dynamic sentiment analysis using a Naïve Bayes algorithm.Craft nuanced classification reports with our proprietary data.Gain hands-on experience with real datasets—preparing you to solve complex data science problems confidently.We’ll be using ChatGPT, Python, and Jupyter Notebook throughout the course, and I’ll link all the datasets, Notebooks for you to play around with on your own.I'll help you create a ChatGPT profile, but I’ll assume you're adept in Python and somewhat experienced in machine learning. Are you ready to dive into the
As data scientists, we know the importance of being able to process and analyze large amounts of data quickly and accurately. However, with the explosion of data in recent years, traditional methods are becoming increasingly inadequate. That's where ChatGPT comes in.In this course, you'll learn how to use ChatGPT in data science, including how to train it on your own data and how to use it to generate new data. We'll also cover advanced techniques such as fine-tuning and transfer learning, so you can customize ChatGPT to your specific needs.Top Reasons why you should become a Data Scientist : Why data science? It is simple. Making sense of data will reduce the horrors of uncertainty for organizations. As organizations trying to meddle with petabytes of data, a data scientist’s role is to help them utilize this opportunity to find insights from this data pool.Data scientists are in constant demand because it is a data-heavy world!Be a part of the world's digital transformation.The demand for Data Science professionals is on the rise. This is one of the most sought-after profession currently.There are multiple opportunities across the Globe for everyone with this skill.Great career trajectory with data science – you will have rewarding career growth in this field.As a Data scientist, you can expect to take away a great salary package. Usual data scientists are paid great salaries, sometimes much above the normal market standards due to the critical roles and responsibilities.Competition is less, but demand is not.Top Reasons why you should choose this Course :This course is designed keeping in mind the students from all backgrounds - hence we cover everything from basics, and gradually progress towards more important topics around leveraging ChatGPT as a Data Scientist.</
¿Te apetece hacer un curso diferente, en el que no solo aprenderás a dominar todos los pasos de un proyecto de Data Science, sino que también te proporcionará un montón de documentos con toda la teoría y el código que verás en las clases? ¿Te interesa tener una guía, en formato visual y también escrito? Este programa es una mezcla entre el formato de un videocurso tradicional y un máster convencional: está pensado para que, clase a clase, vayas almacenando toda una colección de recursos que, sin duda, se convertirá en tu manual de referencia. Aprenderás a estructurar un proyecto desde cero: sabrás cómo empezar y desarrollar cualquier análisis de datos y conocerás a la perfección todas las herramientas que necesitarás durante el proceso, desde simples funciones de carga de datos, hasta completas librerías de Machine Learning. Además, repasarás todos los conceptos clave de estadística y conocerás cómo funcionan los algoritmos de Machine Learning desde el punto de vista matemático, explicados de una forma gráfica y sencilla. No necesitas tener experiencia previa, ¡pero verás cómo al final del curso te conviertes en todo un experto!A día de hoy, encontrarás:Una colección de más de 30 cuadernos y archivos de Python, totalmente documentados.Documentos en PDF con copia de lo que vamos a ver en las pizarras de trabajo.Recursos y referencias útiles.Trucos, consejos y advertencias de errores que se suelen cometer.Además, tendrás acceso a todas las actualizaciones del curso y a los nuevos recursos que se vayan añadiendo, para siempre.
Para entender cómo organizaciones como Google, Amazon e incluso Udemy utilizan el Machine Learning y la inteligencia artificial (IA) para extraer el significado y los conocimientos de enormes conjuntos de datos , este curso de Machine Learning te proporciona lo esencial. Según Glassdoor y Indeed, los científicos de datos ganaron un sueldo medio de 120.000 dólares, ¡y eso es solo la norma!Cuando se trata de ser atractivo, los científicos de datos ya lo son. En un mercado laboral altamente competitivo, es difícil retenerlos una vez contratados. Las personas con una mezcla única de formación científica, experiencia informática y capacidad de análisis son difíciles de encontrar.Al igual que los "quants" de Wall Street de los años ochenta y noventa, se espera que los científicos de datos de hoy en día tengan un conjunto de habilidades similares. Las personas con formación en física y matemáticas acudieron a los bancos de inversión ya los fondos de cobertura en aquella época porque pudieron idear algoritmos y métodos de datos novedosos.Dicho esto, la ciencia de los datos se está convirtiendo en una de las ocupaciones más adecuadas para el éxito en el siglo XXI. Se trata de una profesión informatizada, basada en la programación y de naturaleza analítica. Por lo tanto, no es de extrañar que la necesidad de científicos de datos haya preocupado en el mercado laboral en los últimos años.La oferta, en cambio, ha sido bastante restringida. Es un reto conseguir los conocimientos y habilidades necesarios para ser contratado como científico de datos .En este curso, las notaciones y matemáticas la jerga se reducen a lo más básico, cada tema se explica en un lenguaje sencillo, lo que facilita su comprensión. Una vez que tengas en tus manos el código, podrás jugar con él y construir sobre él. El énfasis de este curso está en entender y usar estos algoritmos en el mu
Atenção: nesse curso ainda estão sendo adicionadas aulas! Machine Learning (aprendizado de máquina) é uma área que representa uma evolução nos campos de Ciência da Computação, Análise de Dados, Engenharia de Software e Inteligência Artificial. Nesse curso você aprenderá Machine Learning com a linguagem de Programação Python. Não é preciso ter conhecimento em Python, pois o curso possui uma seção para quem é iniciante na linguagem. Além disso, o curso trata das principais bibliotecas para análise de dados e utilização de técnicas de aprendizado de máquina tais como NumPy, Pandas, scikit-learn e Matplotlib. Também serão explicadas técnicas de aprendizado de máquina para facilitar o entendimento e utilização das mesmas nos exemplos práticos. Todo o curso é 100% em vídeo-aulas, tem direito a certificado e acesso vitalício! Os instrutores Marcos Castro (mais de 12 mil alunos na Udemy) e Gileno Filho (mais de 10 mil alunos na Udemy) irão estar disponíveis para tirar quaisquer dúvidas através do fórum do curso. O que está esperando? Machine Learning é utilizado por empresas ao redor do mundo para facilitar a análise de dados. Vivemos a era do Big Data, o volume de dados produzidos é gigantesco e precisamos de técnicas para automatizar e nos ajudar a encontrar algum padrão nesses dados de forma que possamos resolver os problemas. Aguardamos você no curso!
Java Server Pages (JSP) is a server-side programming technology that enables the creation of dynamic, platform-independent method for building Web-based applications. JSP have access to the entire family of Java APIs, including the JDBC API to access enterprise databases. This tutorial will teach you how to use Java Server Pages to develop your web applications in simple and easy steps.Why to Learn JSP?JavaServer Pages often serve the same purpose as programs implemented using the Common Gateway Interface (CGI). But JSP offers several advantages in comparison with the CGI.Performance is significantly better because JSP allows embedding Dynamic Elements in HTML Pages itself instead of having separate CGI files.JSP are always compiled before they are processed by the server unlike CGI/Perl which requires the server to load an interpreter and the target script each time the page is requested.JavaServer Pages are built on top of the Java Servlets API, so like Servlets, JSP also has access to all the powerful Enterprise Java APIs, including JDBC, JNDI, EJB, JAXP, etc.JSP pages can be used in combination with servlets that handle the business logic, the model supported by Java servlet template engines.Finally, JSP is an integral part of Java EE, a complete platform for enterprise class applications. This means that JSP can play a part in the simplest applications to the most complex and demanding.AudienceThis tutorial has been prepared for the beginners to help them understand basic functionality of Java Server Pages (JSP) to develop your web applications. After completing this tutorial you will find yourself at a moderate level of expertise in using JSP from where you can take yourself to next levels.
Let me tell you my story. I graduated with my Ph. D. in computational nano-electronics but I have been working as a data scientist in most of my career. My undergrad and graduate major was in electrical engineering (EE) and minor in Physics. After first year of my job in Intel as a "yield analysis engineer" (now they changed the title to Data Scientist), I literally broke into data science by taking plenty of online classes. I took numerous interviews, completed tons of projects and finally I broke into data science. I consider this as one of very important achievement in my life. Without having a degree in computer science (CS) or a statistics I got my second job as a Data Scientist. Since then I have been working as a Data Scientist. If I can break into data science without a CS or Stat degree I think you can do it too! In this class allow me sharing my journey towards data science and let me help you breaking into data science. Of course it is not fair to say that after taking one course you will be a data scientist. However we need to start some where. A good start and a good companion can take us further.We will definitely discuss Python, Pandas, NumPy, Sk-learn and all other most popular libraries out there. In this course we will also try to de-mystify important complex concepts of machine learning. Most of the lectures will be accompanied by code and practical examples. I will also use “white board” to explain the concepts which cannot be explained otherwise. A good data scientist should use white board for ideation, problem solving. I also want to mention that this course is not designed towards explaining all the math needed to “practice” machine learning. Also, I will be continuously upgrading the contents of this course to make sure that all the latest tools and libraries are taught here. Stay tuned!
This is a hands-on, project-based course designed to help you master the foundations for unsupervised machine learning in Python.We’ll start by reviewing the Python data science workflow, discussing the techniques & applications of unsupervised learning, and walking through the data prep steps required for modeling. You’ll learn how to set the correct row granularity for modeling, apply feature engineering techniques, select relevant features, and scale your data using normalization and standardization.From there we'll fit, tune, and interpret 3 popular clustering models using scikit-learn. We’ll start with K-Means Clustering, learn to interpret the output’s cluster centers, and use inertia plots to select the right number of clusters. Next, we’ll cover Hierarchical Clustering, where we’ll use dendrograms to identify clusters and cluster maps to interpret them. Finally, we’ll use DBSCAN to detect clusters and noise points and evaluate the models using their silhouette score.We’ll also use DBSCAN and Isolation Forests for anomaly detection, a common application of unsupervised learning models for identifying outliers and anomalous patterns. You’ll learn to tune and interpret the results of each model and visualize the anomalies using pair plots.Next, we’ll introduce the concept of dimensionality reduction, discuss its benefits for data science, and explore the stages in the data science workflow in which it can be applied. We’ll then cover two popular techniques: Principal Component Analysis, which is great for both feature extraction and data visualization, and t-SNE, which is ideal for data visualization.Last but not least, we’ll introduce recommendation engines, and you'll practice creating both content-based and collaborative filtering recommenders using techniques such as Cosine Similarity and Singular Value Decomposition.<
Learn Machine Learning from scratch, this course for beginners who want to learn the fundamental of machine learning and artificial intelligence. The course includes video explanation with introductions(basics), detailed theory and graphical explanations. Some daily life projects have been solved by using Python programming. Downloadable files of ebooks and Python codes have been attached to all the sections. The lectures are appealing, fancy and fast. They take less time to walk you through the whole content. Each and every topic has been taught extensively in depth to cover all the possible areas to understand the concept in most possible easy way. It's highly recommended for the students who don’t know the fundamental of machine learning studying at college and university level.The objective of this course is to explain the Machine learning and artificial intelligence in a very simple and way to understand. I strive for simplicity and accuracy with every definition, code I publish. All the codes have been conducted through colab which is an online editor. Python remains a popular choice among numerous companies and organization. Python has a reputation as a beginner-friendly language, replacing Java as the most widely used introductory language because it handles much of the complexity for the user, allowing beginners to focus on fully grasping programming concepts rather than minute details. Below is the list of topics that have been covered:Introduction to Machine LearningSupervised, Unsupervised and Reinforcement learningTypes of machine learningPrincipal Component Analysis (PCA)Confusion matrixUnder-fitting & Over-fittingClassificationLinear RegressionNon-linear Regression</
Este curso sobre el lenguaje de programación R está diseñado para aprender desde cero, paso a paso, hasta convertirte en un experto.Todo está explicado mediante ejemplos para facilitar el aprendizajeEstos son los temas tratados en este curso sobre RConfiguración del entornoInstalación de R y RStudioIntroducción a R Operaciones aritméticas, variables, tipos de datos, vectores, operadores de comparación, ayuda y documentaciónMatrices en R Operaciones aritméticas con matrices, selección de elementos, selección por filas y columnas, función factorData Frames en R Creación de Data Frames, dataset, selección y ordenación, exportar e importar datos y tratamiento de valores nulosListas en R Creación y manejo de listasEntrada y salida de datos en R Ficheros CSV, ficheros EXCEL y bases de datosProgramación básica de R Operadores lógicos, condicionales if else, bucle while, bucle for y funcionesProgramación avanzada de R Funciones predefinidas, funciones sobre vectores, funciones anónimas, funciones matemáticas, expresiones regulares, fecha/horaManipulación de datos con R Manipulación de datos con dplyr, operador pipe y limpieza de datos con tidyrVisualización de datos con R Histogramas, scatterplots, barplots, boxplots, gráficos de distribución, límites y dimensionesGráficos interactivos con PlotlyIntroducción a Machine LearningMachine LearningAlgoritmo de regresión lineal Algoritmo de regresión logística Algoritmo de los K vecinos más cercanos Algoritmo de árboles de decisiónAlgo
This comprehensive course, Machine Learning & Python Data Science for Business and AI, is designed to transform you from a data novice into a proficient practitioner. Whether you're a business professional looking to leverage data driven insights, a student eager to enter the field of AI, or a developer aiming to add powerful new skills to your toolkit, this course provides a clear, practical, and project based path to mastery.I'll skip the heavy, academic theory and dive straight into the practical application of machine learning. You'll learn by doing, building a portfolio of real world projects that are immediately applicable to business and AI challenges. Our focus is on problem-solving using the most popular and powerful tools in the industry: Python, Pandas, NumPy, Scikit-learn, and Matplotlib.By the end of this course, you'll not only understand the core concepts of machine learning but also be able to implement them with confidence. You'll gain a deep understanding of how to collect, clean, and analyze data to make accurate predictions and informed decisions.Why This Course?In today’s data driven world, organizations rely on data science and AI to stay competitive. Understanding how to harness data effectively can help businesses predict trends, optimize operations, and make smarter decisions. This course is specifically tailored to bridge the gap between technical machine learning concepts and practical business applications.What You Will LearnStart with Python fundamentals and learn how to write clean, efficient code for data analysis.Learn how to process, clean, and visualize data using popular Python libraries like Pandas, NumPy, and Matplotlib to extract meaningful insights.Understand core statistical concepts that form the foundation of machine learning, including probability, distributions, and hypoth
Becoming Data Science professional (Data Scientist) is a long journey and need guidance from seasoned Data Science professional (Chief Data Scientist). We are trying to manage the journey such a way that you learn right skills and in the right way. The whole concepts of the course are to make you ready for Data Science projects, mainly in Machine learning and AI projects. You will learn1. Foundation of Machine learning2. Supervised Machine learning - Regression3. Supervised Machine learning - Classifications4. Unsupervised Machine learning (Clustering, KNN, PCA)5. Text Analytics6. Time Series
Unlock the Power of Python for Data Science and VisualizationWelcome to a comprehensive Python programming course tailored by Selfcode Academy for data science and visualization enthusiasts. Whether you're a beginner or looking to expand your skill set, this course will equip you with the knowledge you need.Master the Python Basics:Start from scratch with Python fundamentals.Learn about variables, data types, and the logic behind programming.Explore conditional statements and loops.Dive into essential data structures like lists, tuples, dictionaries, and sets.Discover the world of functions, including powerful lambda functions.Get familiar with Object-Oriented Programming (OOP) concepts.Python's Role in Data Science:Transition to data science seamlessly.Manipulate dates and times using Python's datetime module.Tackle complex text patterns with regular expressions (regex).Harness the power of built-in Python functions.Embrace NumPy for efficient numerical computing.Master Pandas and its data structures, including Series and DataFrames.Acquire data cleaning skills to handle missing values and outliers.Excel at data manipulation with Pandas, including indexing, grouping, sorting, and merging.Dive into data visualization with Matplotlib to create compelling graphs.Advanced Data Science and Visualization:Uncover insights through Exploratory Data Analysis (EDA) techniques.Automate data analysis with Pandas Profiling, DABL, and Sweetviz.Perfect your data cleaning and preprocessing techniques.Craft captivating visualizations using Seaborn.
The first course in the HarvardX Data Science Professional Certificate, it provides the foundational R programming skills necessary for data wrangling and exploration.
This machine learning course will provide you the fundamentals of how companies like Google, Amazon, and even Udemy utilize machine learning and artificial intelligence (AI) to glean meaning and insights from massive data sets. Glassdoor and Indeed both report that the average salary for a data scientist is $120,000. This is the standard, not the exception.Data scientists are already quite desirable. It's difficult to keep them on staff in today's tight labor market. There is a severe shortage of people who possess the rare combination of scientific training, computer expertise, and analytical talents.Today's data scientists are held to the same standards as the Wall Street "quants" of the '80s and '90s. When the need arose for innovative algorithms and data approaches, physicists and mathematicians flocked to investment banks and hedge funds.So, it's no surprise that data science is rising to prominence as a promising career path in the modern day. It is analytic in focus, driven by code, and performed on a computer. As a result, it shouldn't be a shock that the demand for data scientists has been growing steadily in the workplace for the past few years.On the other hand, availability has been low. Obtaining the education and experience necessary to be hired as a data scientist is tough. And that's why we made this course in the first place!Each topic is described in plain English, and the course does its best to avoid mathematical notations and jargon. Once you have access to the source code, you can experiment with it and improve upon it. Learning and applying these algorithms in the real world, rather than in a theoretical or academic setting, is the focus of this course.Each video will leave you with a new perspective that you can implement right away!If you have no background in statistics, don't let that stop you from enrolling in this course; we welcome students of all levels.
Hi there,Welcome to my " Data Science | The Power of ChatGPT in Python & Data Science " course.Data Science & ChatGPT | Complete Hands-on Python Training using Chat GPT with Data Science, AI, Machine LearningData science application is an in-demand skill in many industries worldwide — including finance, transportation, education, manufacturing, human resources, and banking. Explore data science courses with Python, statistics, machine learning, and more to grow your knowledge. Get data science training if you’re into research, statistics, and analytics.Python instructors at OAK Academy specialize in everything from software development to data analysis and are known for their effective, friendly instruction for students of all levels.Whether you work in machine learning or finance or are pursuing a career in web development or data science, Python is one of the most important skills you can learn. Python, python programming, python examples, python example, python hands-on, pycharm python, python pycharm, python with examples, python: learn python with real python hands-on examples, learn python, real pythonPython's simple syntax is especially suited for desktop, web, and business applications. Python's design philosophy emphasizes readability and usability. Python was developed upon the premise that there should be only one way (and preferably one obvious way) to do things, a philosophy that has resulted in a strict level of code standardization. The core programming language is quite small and the standard library is also large. In fact, Python's large library is one of its greatest benefits, providing a variety of different tools for programmers suited for many different tasks.ChatGPT is a prototype AI chatbot developed by OpenAI that specializes in conversation. A chatbot is a large language model that has been fine-tuned with both supervis
Ever wondered how AI technologies like OpenAI ChatGPT, GPT-4, DALL-E, Midjourney, and Stable Diffusion really work? In this course, you will learn the foundations of these groundbreaking applications.In this course you will build MULTIPLE practical systems using natural language processing, or NLP - the branch of machine learning and data science that deals with text and speech. This course is not part of my deep learning series, so it doesn't contain any hard math - just straight up coding in Python. All the materials for this course are FREE.After a brief discussion about what NLP is and what it can do, we will begin building very useful stuff. The first thing we'll build is a cipher decryption algorithm. These have applications in warfare and espionage. We will learn how to build and apply several useful NLP tools in this section, namely, character-level language models (using the Markov principle), and genetic algorithms.The second project, where we begin to use more traditional "machine learning", is to build a spam detector. You likely get very little spam these days, compared to say, the early 2000s, because of systems like these.Next we'll build a model for sentiment analysis in Python. This is something that allows us to assign a score to a block of text that tells us how positive or negative it is. People have used sentiment analysis on Twitter to predict the stock market.We'll go over some practical tools and techniques like the NLTK (natural language toolkit) library and latent semantic analysis or LSA.Finally, we end the course by building an article spinner. This is a very hard problem and even the most popular products out there these days don't get it right. These lectures are designed to just get you started and to giv
Data Scientist wurde von Glassdoor als Nummer 1 Job gerankt und erzielt laut Indeed einen überdurchschnittlichen Gehalt. Die Karriere im Bereich Data Science ist eine bereichernde Tätigkeit und erlaubt es euch an den größten und interessantesten Herausforderungen der Welt zu arbeiten. Dieser Kurs richtet sich sowohl an Anfänger, die zum ersten Mal mit der Programmiersprache R in Berührung kommen, als auch für erfahrene Entwickler, die ihr Portfolio um Fähigkeiten in Richtung R, Data Sciene und Machine Learning ausbauen wollen! "Perfekter Einstieg in die Sprache R. Zuvor hatte ich keine Kenntnis dieser Sprache. Gut gefällt mir, dass direkt auch Data Science Anwendungen inbegriffen sind, da ich diese beruflich brauche. Top! (★★★★★ D. Mika)Dieser umfangreiche Kurs ist vergleichbar mit anderen Data Science Bootcamps die mehrere tausend Euro kosten. Das alles findest du in über 120 HD Video Lektionen und detaillierten Code Notebooks zu jeder Lektion. Dies macht diesen Kurs zum umfangreichsten Data Science Kurs mit R auf Udemy!Wir werden gemeinsam lernen, wie man mit R programmiert, grandiose Visualisierungen erstellt und mit echten Daten und echte Data Science Fälle umgeht. Dazu verwenden wir R-Studio und das Jupyter Notebook mit R. Hier ist eine Übersicht einiger Themen:Programmieren mit RFortgeschrittene Programmierung in RR Date Frames zur Lösung komplexer Aufgaben verwendenMit R Excel Datein bearbeitenWeb Scraping mit RR mit SQL verbindenGGPlot2 zur Visualisierung verwendenÜbersicht und Einsatz von DplyR und TidyRPlotly für interaktive Visualisierungen verwendenAnalysiere echte Daten an&
Welcome to the course on Data Science & Deep Learning for Business™ 20 Case Studies!This course teaches you how Data Science & Deep Learning can be used to solve real-world business problems and how you can apply these techniques to 20 real-world case studies. Traditional Businesses are hiring Data Scientists in droves, and knowledge of how to apply these techniques in solving their problems will prove to be one of the most valuable skills in the next decade!What student reviews of this course are saying, "I'm only half way through this course, but i have to say WOW. It's so far, a lot better than my Business Analytics MSc I took at UCL. The content is explained better, it's broken down so simply. Some of the Statistical Theory and ML theory lessons are perhaps the best on the internet! 6 stars out of 5!""It is pretty different in format, from others. The appraoch taken here is an end-to-end hands-on project execution, while introducing the concepts. A learner with some prior knowledge will definitely feel at home and get to witness the thought process that happens, while executing a real-time project. The case studies cover most of the domains, that are frequently asked by companies. So it's pretty good and unique, from what i have seen so far. Overall Great learning and great content."--"Data Scientist has become the top job in the US for the last 4 years running!" according to Harvard Business Review & Glassdoor.However, Data Science has a difficult learning curve - How does one even get started in this industry awash with mystique, confusion, impossible-looking mathematics, and code? Even if you get your feet wet, applying your newfound Data Science knowledge to a real-world problem is even more confusing.This course seeks to fill all those gaps in knowledge that scare off
Neste curso, exploramos o vasto mundo de Data Science e Machine Learning, focando na base lógica e matemática por trás dos principais algoritmos utilizados na área. Veremos como funcionam os principais algoritmos de Regressão, Classificação, Clusterização, NLP, Deep Learning, Regras de Associação, Algoritmos Genéticos, Séries Temporais e muito mais - sem exagerar no "matematiquês". O curso foi pensado de forma a ser o mais democrático possível, servindo como porta de entrada para pessoas que queiram aprender de verdade os principais conceitos antes de entrar no mercado, pessoas que já estejam trabalhando com ciência de dados mas se veem com dificuldades de entender como funcionam os modelos, ou pessoas que simplesmente se interessam pela área e gostariam de aprender como funciona - não necessariamente visando adentrar o mercado. Até por isso, o curso não é tão orientado a código; ao invés de criar código para cada modelo e cada técnica mostrada, ao final do curso há uma seção com alguns projetos da vida real, em que podemos ver tanto como o código é feito, mas, principalmente, como é o raciocínio e as decisões tomadas para resolver problemas de dados.Também trago uma seção bastante rica e dedicada a explicar como se "produtizam" modelos em empresas, falando sobre coisas como deploy, monitoramento, construção de features, pré-processamento, definição de um projeto de ML, expectativa e visão do mercado, progressão de carreira e muito mais!O curso ainda tem um "crash course" de Python, opcional para quem já programa na linguagem, mas valiosa para aqueles que precisam de uma base mais sólida.
Hello there,Welcome to the “Data Science and Machine Learning Fundamentals [Theory Only]” course.Theorical Course for Data Science, Machine Learning, Deep Learning to understand the logic of Data Science algorithmsMachine learning is a branch of artificial intelligence (AI) and computer science which focuses on the use of data and algorithms to imitate the way that humans learn, gradually improving its accuracy.You can develop the foundational skills you need to advance to building neural networks and creating more complex functions through the Python and R programming languages. Machine learning helps you stay ahead of new trends, technologies, and applications in this field.Machine learning describes systems that make predictions using a model trained on real-world data.Machine learning is being applied to virtually every field today. That includes medical diagnoses, facial recognition, weather forecasts, image processing, and more. In any situation in which pattern recognition, prediction, and analysis are critical, machine learning can be of use. Machine learning is often a disruptive technology when applied to new industries and niches. Machine learning engineers can find new ways to apply machine learning technology to optimize and automate existing processes. With the right data, you can use machine learning technology to identify extremely complex patterns and yield highly accurate predictions.It’s hard to imagine our lives without machine learning. Predictive texting, email filtering, and virtual personal assistants like Amazon’s Alexa and the iPhone’s Siri, are all technologies that function based on machine learning algorithms and mathematical models. Python, machine learning, python programming, machine learning python, python for beginners, data science. Python instructors on OAK Academy specialize in everything from software development to data analysis, and are known for their effective, fri
In today's data-driven world, the ability to harness and interpret data is not just a valuable skill but a crucial advantage. Whether you're an aspiring data scientist, a seasoned professional looking to expand your skill set, or an entrepreneur aiming to leverage data for strategic decisions, our comprehensive course on data science offers a transformative learning experience.Course OverviewOur course begins with a foundational exploration of data science, introducing you to its principles and importance in various industries. You'll delve into the distinctions between data science, data engineering, and data analysis, gaining a clear understanding of their respective roles and applications. Through real-world case studies and examples, you'll discover how data science drives innovation and impacts decision-making processes across different sectors.Essential Tools and TechnologiesTo equip you with the tools needed for effective data analysis, the course covers essential programming languages such as Python . Whether you're manipulating data with Pandas, performing numerical operations with NumPy, or creating insightful visualizations with Matplotlib and Seaborn, you'll develop a versatile skill set that forms the backbone of data science projects.Practical Skills DevelopmentA significant focus of the course is hands-on learning. You'll gain practical experience in gathering, cleaning, and analyzing data from diverse sources. You'll hone your ability to transform raw data into actionable insights that drive business decisions.Environment Setup and Best PracticesNavigating the data science environment can be daunting, especially for beginners. That's why we guide you through the setup of Python and Jupyter Notebook on both Windows and macOS, ensuring you're equipped with the right tools from the start. You'll learn to create and manage virtual environments, enhancing your ability to work efficiently and maintain project dependencies.Data
Machine Learning is not just technology—it’s a modern wonder. It powers self-driving cars, recommends your next favorite movie, predicts market trends, and even helps doctors detect diseases earlier.And the best part? You can learn it—easily, enjoyably, and professionally.This course transforms Machine Learning and Data Science from “intimidating tech jargon” into simple, engaging lessons packed with real-world applications, practical coding exercises, and a touch of fun that makes learning addictive.What you’ll master:Effortless data handling with Python’s most powerful libraries—Scikit-Learn, NumPy, Pandas, and Matplotlib.Data visualization that makes patterns and trends leap off the screen to make boring data colourful.Supervised & unsupervised learning explained in easy to understand language, with hands-on coding.Regression, classification, and clustering—built from scratch and applied to real problems.Complete project pipelines from messy raw data to polished, predictive models with performance evaluation.Why this course works:Fun, engaging explanations that make even complex algorithms feel simple.No overwhelming theory dumps—just clear concepts and immediate application.Hands-on projects so you learn by doing, not just watching.Step-by-step guidance so you never feel lost, even if you’re starting fresh.Whether you’re aiming to start a career in AI, add Machine Learning to your professional toolkit, or simply explore one of the most exciting fields of our time—this course will guide you with clarity, confidence, and maybe even a few laughs along the way.By the end of this course, you will:</
Module-1Welcome to the Pre-Program Preparatory ContentSession-1:1) Introduction2) Preparatory Content Learning ExperienceMODULE-2INTRODUCTION TO PYTHONSession-1:Understanding Digital Disruption Course structure1) Introduction2) Understanding Primary Actions3) Understanding es & Important PointersSession-2:Introduction to python1) Getting Started — Installation2) Introduction to Jupyter NotebookThe Basics Data Structures in Python3) Lists4) Tuples5) Dictionaries6) SetsSession-3:Control Structures and Functions1) Introduction2) If-Elif-Else3) Loops4) Comprehensions5) Functions6) Map, Filter, and Reduce7) SummarySession-4:Practice Questions1) Practice Questions I2) Practice Questions IIModule-3Python for Data ScienceSession-1:Introduction to NumPy1) Introduction2) NumPy Basics3) Creating NumPy Arrays4) Structure and Content of Arrays5) Subset, Slice, Index and Iterate through Arrays6) Multidimensional Arrays7) Computation Times in NumPy and Standard Python Lists8) SummarySession-2:Operations on NumPy Arrays1) Introduction2) Basic Operations3) Operations on Arrays4) Basic Linear Algebra Operations5) SummarySession-3:Introduction to Pandas1) Introduction2) Pandas Basics3) Indexing and Selecting Data4) Merge and Append5) Grouping and Summarizing Data frames6) Lambda function & Pivot tables7) SummarySession-4:Getting and Cleaning Data1) Introduction2) Reading Delimited and Relational Databases3) Reading Data from Websites4) Getting Data from APIs5) Reading Data from PDF Files6) Cl
In This Course, Solve Business Problems Using Data Science Practically. Learn To Build & Deploy Machine Learning, Data Science, Artificial Intelligence, Auto Ml, Deep Learning, Natural Language Processing (Nlp) Web Applications Projects With Python (Flask, Django, Heroku, AWS, Azure, GCP, IBM Watson, Streamlit Cloud).According to Glassdoor, the average salary for a Data Scientist is $117,345/yr. This is above the national average of $44,564. Therefore, a Data Scientist makes 163% more than the national average salary.This makes Data Science a highly lucrative career choice. It is mainly due to the dearth of Data Scientists resulting in a huge income bubble.Since Data Science requires a person to be proficient and knowledgeable in several fields like Statistics, Mathematics, and Computer Science, the learning curve is quite steep. Therefore, the value of a Data Scientist is very high in the market.A Data Scientist enjoys a position of prestige in the company. The company relies on its expertise to make data-driven decisions and enable them to navigate in the right direction.Furthermore, the role of a Data Scientist depends on the specialization of his employer company. For example – A commercial industry will require a data scientist to analyze their sales.A healthcare company will require data scientists to help them analyze genomic sequences. The salary of a Data Scientist depends on his role and type of work he has to perform. It also depends on the size of the company which is based on the amount of data they utilize.Still, the pay scale of Data scientists is way above other IT and management sectors. However, the salary observed by Data Scientists is proportional to the amount of work that they must put in. Data Science needs hard work and requires a person to be thorough with his/her skills.Due to several luc
The course Fundamentals Data Science and Machine Learning is a meticulously designed program that provides a comprehensive understanding of the theory, techniques, and practical applications of data science and machine learning. This immersive course is suitable for both beginners and experienced professionals seeking to enhance their knowledge and skills in this rapidly evolving field.Greetings, Learners! Welcome to the Data Science and Machine Learning course. My name is Usama, and I will be your instructor throughout this program. This comprehensive course consists of a total of 9 lectures, each dedicated to exploring a new and crucial topic in this field.For those of you who may not possess prior experience or background knowledge in Data Science and Machine Learning, there is no need to worry. I will commence the course by covering the fundamentals and gradually progress towards more advanced concepts.Now, let's delve into the course outline, which encompasses the following key areas:Data Science: We will dive into the interdisciplinary field of Data Science, exploring techniques and methodologies used to extract meaningful insights from data.Artificial Intelligence: This topic delves into the realm of Artificial Intelligence (AI), where we will explore the principles and applications of intelligent systems and algorithms.Deep learning: Subfield of machine learning that focuses on training artificial neural networks to learn and make predictions from complex and large-scale data. This course provides an overview of deep learning, covering key concepts, algorithms, and applications.Machine Learning: We will extensively cover Machine Learning, which forms the backbone of Data Science, enabling computers to learn and make predictions from data without being explicitly programmed.Data Engineering: This area focuses on the
In this course I will cover, how to develop a Sentiment Analysis model to categorize a tweet as Positive or Negative using NLP techniques and Machine Learning Models. This is a hands on project where I will teach you the step by step process in creating and evaluating a machine learning model and finally deploying the same on Cloud platforms to let your customers interact with your model via an user interface.This course will walk you through the initial data exploration and understanding, data analysis, data pre-processing, data preparation, model building, evaluation and deployment techniques. We will explore NLP concepts and then use multiple ML algorithms to create our model and finally focus into one which performs the best on the given dataset.At the end we will learn to create an User Interface to interact with our created model and finally deploy the same on Cloud.I have splitted and segregated the entire course in Tasks below, for ease of understanding of what will be covered.Task 1 : Installing Packages.Task 2 : Importing Libraries.Task 3 : Loading the data from source.Task 4 : Understanding the dataTask 5 : Preparing the data for pre-processingTask 6 : Pre-processing steps overviewTask 7 : Custom Pre-processing functionsTask 8 : About POS tagging and Lemmatization Task 9 : POS tagging and lemmatization in action.Task 10 : Creating a word cloud of positive and negative tweets.Task 11 : Identifying the most frequent set of words in the dataset for positive and negative cases.Task 12 : Train Test SplitTask 13 : About TF-IDF VectorizerTask 14 : TF-IDF Vectorizer in actionTask 15 : About Confusion MatrixTask 16 : About Classification ReportTask 17 : About AUC-ROCT
In today's data-driven world, the ability to harness and interpret data is not just a valuable skill but a crucial advantage. Whether you're an aspiring data scientist, a seasoned professional looking to expand your skill set, or an entrepreneur aiming to leverage data for strategic decisions, our comprehensive course on data science offers a transformative learning experience.Course OverviewOur course begins with a foundational exploration of data science, introducing you to its principles and importance in various industries. You'll delve into the distinctions between data science, data engineering, and data analysis, gaining a clear understanding of their respective roles and applications. Through real-world case studies and examples, you'll discover how data science drives innovation and impacts decision-making processes across different sectors.Essential Tools and TechnologiesTo equip you with the tools needed for effective data analysis, the course covers essential programming languages such as Python and R. Whether you're manipulating data with Pandas, performing numerical operations with NumPy, or creating insightful visualizations with Matplotlib and Seaborn, you'll develop a versatile skill set that forms the backbone of data science projects.Practical Skills DevelopmentA significant focus of the course is hands-on learning. From introductory SQL for data querying to advanced techniques in web scraping for data retrieval, you'll gain practical experience in gathering, cleaning, and analyzing data from diverse sources. Through interactive exercises and projects, you'll hone your ability to transform raw data into actionable insights that drive business decisions.Environment Setup and Best PracticesNavigating the data science environment can be daunting, especially for beginners. That's why we guide you through the setup of Python and Jupyter Notebook on both Windows and macOS, ensuring you're equipped with the right tools from the start. You'll l
A guided project on Coursera that provides a hands-on introduction to essential causal inference techniques for data science.
Learn how to use Numpy and Pandas for Data Analysis. This will cover all basic concepts of Numpy and Pandas that are useful in data analysis.Learn to create impactful visualizations using Matplotlib and Seaborn. Creating impactful visualizations is a crucial step in developing a better understanding about your data.This course covers all Data Preprocessing steps like working with missing values, Feature Encoding and Feature Scaling.Learn about different Machine Learning Models like Random Forest, Decision Trees, KNN, SVM, Linear Regression, Logistic regression etc... All the video sessions will first discuss the basic theory concept behind these algorithms followed by the practical implementation.Learn to how to choose the best hyper parameters for your Machine Learning Model using GridSearch CV. Choosing the best hyper parameters is an important step in increasing the accuracy of your Machine Learning Model.You will learn to build a complete Machine Learning Pipeline from Data collection to Data Preprocessing to Model Building. ML Pipeline is an important concept that is extensively used while building large scale ML projects.This course has two projects at the end that will be built using all concepts taught in this course. The first project is about Diabetes Prediction using a classification machine learning algorithm and second is about prediciting the insurance premium using a regression machine learning algorithm.
Data science is the field that encompasses the various techniques and methods used to extract insights and knowledge from data. Machine learning (ML) and deep learning (DL) are both subsets of data science, and they are often used together to analyze and understand data.In data science, ML algorithms are often used to build predictive models that can make predictions based on historical data. These models can be used for tasks such as classification, regression, and clustering. ML algorithms include linear regression, decision trees, and k-means.DL, on the other hand, is a subset of ML that is based on artificial neural networks with multiple layers, which allows the system to learn and improve through experience. DL is particularly well-suited for tasks such as image recognition, speech recognition, and natural language processing. DL algorithms include convolutional neural networks (CNNs) and recurrent neural networks (RNNs).In a data science project, DL models are often used in combination with other techniques such as feature engineering, data cleaning, and visualization, to extract insights and knowledge from data. For instance, DL models can be used to automatically extract features from images, and then these features can be used in a traditional ML model.In summary, Data science is the field that encompasses various techniques and methods to extract insights and knowledge from data, ML and DL are subsets of data science that are used to analyze and understand data, ML is used to build predictive models and DL is used to model complex patterns and relationships in data. Both ML and DL are often used together in data science projects to extract insights and knowledge from data.IN THIS COURSE YOU WILL LEARN ABOUT :Life Cycle of a Data Science Project.Python libraries like Pandas and Numpy used extensively in Data Science.Matplotlib and Seaborn for Data Visualizatio
Join our interactive course, "Complete Guide to ChatGPT & Copilot for Python & R Projects", designed to give you hands-on experience in solving real data science problems using AI, Copilot, and ChatGPT. With Udemy's 30-day money-back guarantee in place, there's no need to worry if the class doesn't meet your expectations.The course is taught both in Python and R with RStudio. A complete installation guide on how to install and configure Python and R, was added in April 2024. It also explains how to connect RStudio to Python and use it as Python's IDE.Each lesson in this course stands alone, focusing on a different data science challenge.You'll learn how to apply AI tools like Copilot and ChatGPT to navigate through these challenges efficiently.Incorporating AI tools like Copilot and ChatGPT into your data science workflow can significantly enhance your speed and efficiency, often doubling (X2) or even increasing productivity tenfold (X10), depending on the task at hand.Here's what we'll cover, using practical, project-based learning:Data Clean-up and Tidy: Learn how to organize your data neatly, making it ready for analysis. This is a key step in data science to ensure your data is accurate and easy to work with. Using Pandas with Python and dplyr with R.Load Files of Different Formats: Discover how to bring in data from different kinds of files. This skill is important in data science because it lets you work with all sorts of data in tools like Copilot and ChatGPT.Data Visualization with Graphs: Find out how to use graphs to show your data in a clear and interesting way. Graphs help you see patterns and important points, which is a big part of data science.</
Unlock the power of interactive data science with Interactive Data Science in Python — a comprehensive, beginner-friendly course designed to take you from novice to confident practitioner. We begin by exploring Shiny, the dynamic and popular web app framework for Python, where you'll learn how to build interactive dashboards, responsive data visualizations, and user-friendly interfaces using the classic Shiny library. Once you’ve gained solid skills, you’ll transition smoothly to Shiny Express, a modern, more streamlined toolkit that accelerates app development while maintaining full flexibility.Alongside Shiny, you’ll dive deep into essential Python data science libraries like Pandas, Seaborn, and Matplotlib. You’ll master how to clean, analyze, visualize, and explore complex datasets with clarity and precision, empowering you to uncover patterns and tell compelling stories with data.This course also introduces PyTorch basics from scratch — perfect for beginners eager to explore deep learning and neural networks. You’ll grasp fundamental machine learning concepts and get hands-on experience building your own models, preparing you to confidently tackle more advanced AI projects.Throughout the course, you’ll engage with practical coding exercises, real-world datasets, and projects focused on creating interactive applications that captivate users and dynamically reveal insights. Whether you aspire to be a data scientist, analyst, or developer, this course will equip you with the skills and confidence to build powerful data-driven applications and understand foundational deep learning techniques in Python.Jump in today and bring your data to life with interactive, intelligent applications!
Learn Python for Data Analysis and Visualization
Ever wondered how AI technologies like OpenAI ChatGPT, GPT-4, Gemini Pro, Llama 3, DALL-E, Midjourney, and Stable Diffusion really work? In this course, you will learn the foundations of these groundbreaking applications.Hello friends!Welcome to Data Science: Transformers for Natural Language Processing.Ever since Transformers arrived on the scene, deep learning hasn't been the same.Machine learning is able to generate text essentially indistinguishable from that created by humansWe've reached new state-of-the-art performance in many NLP tasks, such as machine translation, question-answering, entailment, named entity recognition, and moreWe've created multi-modal (text and image) models that can generate amazing art using only a text promptWe've solved a longstanding problem in molecular biology known as "protein structure prediction"In this course, you will learn very practical skills for applying transformers, and if you want, detailed theory behind how transformers and attention work.This is different from most other resources, which only cover the former.The course is split into 3 major parts:Using TransformersFine-Tuning TransformersTransformers In-DepthPART 1: Using TransformersIn this section, you will learn how to use transformers which were trained for you. This costs millions of dollars to do, so it's not something you want to try by yourself!We'll see how these prebuilt models can already be used for a wide array of tasks, including:text classification (e.g. spam detection, sentiment analysis, document categorization)named entity recognitiontext summarizationmachine transla
The future world is the AI era of machine learning, so mastering the application of machine learning is equivalent to getting a key to the future career. If you can only learn one tool or algorithm for machine learning or building predictive models now, what is this tool? Without a doubt, that is Xgboost! If you are going to participate in a Kaggle contest, what is your preferred modeling tool? Again, the answer is Xgboost! This is proven by countless experienced data scientists and new comers. Therefore, you must register for this course!The Xgboost is so famous in Kaggle contests because of its excellent accuracy, speed and stability. For example, according to the survey, more than 70% the top kaggle winners said they have used XGBoost.The Xgboost is really useful and performs manifold functionalities in the data science world; this powerful algorithm is so frequently utilized to predict various types of targets – continuous, binary, categorical data, it is also found Xgboost very effective to solve different multiclass or multilabel classification problems. In addition, the contests on Kaggle platform covered almost all the applications and industries in the world, such as retail business, banking, insurance, pharmaceutical research, traffic control and credit risk management.The Xgboost is powerful, but it is not that easy to exercise it full capabilities without expert’s guidance. For example, to successfully implement the Xgboost algorithm, you also need to understand and adjust many parameter settings. For doing so, I will teach you the underlying algorithm so you are able to configure the Xgboost that tailor to different data and application scenarios. In addition, I will provide intensive lectures on feature engineering, feature selection and parameters tuning aiming at Xgboost. So, after training you should also be able to prepare the suitable data or features that can well feed the XGBoost model.This course is really practical but not lacking in theory; w
This course equips Python developers with the foundational NumPy skills essential for data science and machine learning. You’ll move beyond basic lists to master high-performance ndarrays: creating, reshaping, indexing, slicing, and performing vectorized operations — all without slow loops. Learn key concepts like shape, dtype, axis, and the powerful broadcasting mechanism that makes NumPy so efficient. Through hands-on examples (e.g., analyzing grades or sensor data), you’ll gain confidence in mathematical computation, array manipulation, and data preparation. By the end, you’ll seamlessly integrate NumPy with Pandas and scikit-learn — setting the stage for real-world DS/ML workflows. No advanced math needed — just core Python (variables, loops, functions) and a willingness to practice. Includes setup guides, Jupyter notebooks, and practical exercises. Whether you're a student, career-switcher, or self-learner, this is your essential first step into the data ecosystem.هذه الدورة مُعدَّة لمُطوري بايثون لإتقان NumPy — حجر الأساس في علم البيانات وتعلم الآلة. ستنتقل من استخدام القوائم العادية إلى إنشاء ومعالجة المصفوفات عالية الأداء (ndarray) بثقة: التشكيل (reshape)، الفهرسة الذكية، العمليات المتجهية (بدون حلقات بطيئة)، وفهم الخصائص مثل shape وdtype وaxis. ستتعلم مفهوم الـ Broadcasting السحري الذي يجعل العمليات سريعة ومرنة، عبر أمثلة واقعية (مثل تحليل درجات طلاب أو بيانات مناخية). كما ستُجهّز البيانات للانتقال السلس إلى أدوات مثل Pandas و scikit-learn. لا تحتاج إلى خلفية رياضية متقدمة — يكفي أن تعرف أساسيات بايثون (متغيرات، حلقات، دوال). تشمل الدورة شرحًا خطوة بخطوة، دفاتر جوبيتر جاهزة، وتمارين تطبيقية. سواء كنت طالبًا أو تُغيّر مسارك المهني، فهذه الدورة هي بداية رحلتك العملية في عالم البيانات.
The demand for Big Data Hadoop Developers, Architects, Data Scientists, Machine Learning Engineers is increasing day by day and one of the main reason is that companies are more keen these days to get more accurate predictions & forecasting result using data. They want to make sense of data and wants to provide 360 view of customers thereby providing better customer experience. This course is designed in such a way that you will get an understanding of best of both worlds i.e. both Hadoop as well as Data Science. You will not only be able to perform Hadoop related operations to gather data from the source directly but also they can perform Data Science specific tasks and build model on the data collected. Also, you will be able to do transformations using Hadoop Ecosystem tools. So in a nutshell, this course will help the students to learn both Hadoop and Data Science Natural Language Processing in one course. Companies like Google, Amazon, Facebook, Ebay, LinkedIn, Twitter, and Yahoo! are using Hadoop on a larger scale these days and more and more companies have already started adopting these digital technologies. If we talk about Text Analytics, there are several applications of Text Analytics (given below) and hence companies prefer to have both of these skillset in the professionals. One of the application of text classification is a faster emergency response system can be developed by classifying panic conversation on social media.Another application is automating the classification of users into cohorts so that marketers can monitor and classify users based on how they are talking about products, services or brands online.Content or product tagging using categories as a way to improve browsing experience or to identify related content on the website. Platforms such as news agencies, directories, E-commerce, blogs, content curators, and likes can use automated technologies to classify and tag content a
Learn Python for Data Science and Machine Learning Bootcamp
Learn To Master Data Science And Machine Learning Without Coding And Earn a 6-Figure Income Why Data Science and Machine Learning are the Hottest and Most In-Demand Technology Jobs. Data Scientist was recently dubbed “The Sexiest Job of the 21st Century” by Harvard Business Review, and for good reason! If you’re looking for a fast and effective way to earn a 6-figure income without spending thousands of dollars in training, keep reading to learn about this revolutionary Udemy course. Glassdoor reports that Data Scientist was named the “Best Job in America for 2016,” which was based on the huge amount of career opportunities and 6-figure average salary. Business media from Forbes to The New York Times also frequently report about the increasing demand for data scientists. Why is this great news for you? The sudden increase in demand for Data Scientists has created an incredible skills gap in the job market. According to a McKinsey Report, by the end of 2018 the demand for them is expected to be 60% higher than the available talent! Machine Learning is the Key to Your High-Earning FutureLeading companies understand that Machine Learning is the future, and are investing millions of dollars into Machine Learning Research. Machine Learning is the subset of Artificial Intelligence (AI) that enables computers to learn and perform tasks they haven’t been explicitly programmed to do. Data Scientists and Machine Learning Engineers who are skilled in Machine Learning are even higher in demand across the entire employment spectrum. Many diverse industries are searching for innovation in the field, and their need for Machine Learning experts and engineers is rapidly increasing. Traditional Machine Learning requires students to know software programming, which enables them to write machine le
This course is an exciting hands-on view of the fundamentals of Data Science and Machine LearningData Science and Machine Learning are developing on a massive scale. Everywhere you look in society, the world wide web, or in technology, you will find Data Science and Machine Learning algorithms working behind the scenes to analyze and optimize all aspects of our lives, businesses, and our society. Data Science and Machine Learning with Artificial Intelligence are some of the hottest and fastest-developing areas right now. This course will teach you the fundamentals of Data Science and Machine Learning. This course has exclusive content that will teach you many new things regardless of if you are a beginner or an experienced Data Scientist, and aspires to be one of the best Udemy courses in terms of education and value. You will learn aboutRegression and Prediction with Machine Learning models using supervised learning. This course has the most complete and fundamental master-level regression analysis content packages on Udemy, with hands-on, useful practical theory, and automatic Machine Learning algorithms for model building, feature selection, and artificial intelligence. You will learn about models ranging from linear regression models to advanced multivariate polynomial regression models.Classification with Machine Learning models using supervised learning. You will learn about the classification process, classification theory, and visualizations as well as some useful classifier models, including the very powerful Random Forest Classifier Ensembles and Voting Classifier Ensembles.Cluster Analysis with Machine Learning models using unsupervised learning. In this part of the course, you will learn about unsupervised learning, cluster theory, artificial intelligence, explorative data analysis, and seven useful Machine Learning clustering algorithms ranging from hierarchical cl
Master Data Science Workflows with H2O: From Prep to Deployment & Generative AI with Michelle Tanco and Jon Farland!This course equips you with H2O's suite of cutting-edge tools, such as Driverless AI, H2O Actions, the Wave App, Gen AI AppStore, LLM DataStudio, H2O LLMStudio, Enterprise GPTe, h2oGPT, and Eval Studio. In this comprehensive course, you will develop a thorough understanding of data preparation and visualization using H2O's intuitive tools, enabling you to efficiently clean, transform, and explore data to uncover actionable insights without the traditional complexities of data wrangling. Dive deep into automated machine learning mastery with Driverless AI, leveraging its automation capabilities to streamline model building processes, allowing you to focus on strategic analysis and solving complex problems effectively. Gain expertise in seamless model deployment techniques, ensuring that your models translate into impactful business outcomes with ease and efficiency. Explore the best of what generative AI has to offer with Enterprise GPTe and H2OGPT, where you will delve into advanced tasks such as text generation, language translation, and creative content development, empowering you to innovate and excel in data science and business decision-making. Join us on this transformative journey to elevate your skills and harness the full potential of H2O's tools for driving data-driven insights and strategic business success.Come aboard our dynamic course and elevate your data science skills!
No Prior Experience Needed – Learn with Real Projects!Are you curious about Data Science & Machine Learning but don’t know where to start? This beginner-friendly bootcamp is your perfect first step! We’ll guide you from absolute zero to building real-world projects—no math or coding background required!What You’ll Learn:Python for Beginners – Learn from scratch with easy-to-follow examples Data Science Essentials – Pandas, NumPy, and data visualization (Matplotlib & Seaborn) Machine Learning Made Simple – Predict trends, classify data & uncover patternsHands-On Projects – Work with real datasets (sales predictions, customer behavior, and more!)AI & ChatGPT Basics – Get introduced to cutting-edge tools like LLMs (Large Language Models) Why This Course?Perfect for Beginners – Starts slow, explains every step, and builds confidenceLearn by Doing – No boring theory—just fun, practical projects you can showcaseNo Experience Needed – We teach Python & math basics along the way Supportive Community – Get help whenever you’re stuck Certificate of Completion – Boost your resume with a valuable skill Who Is This For? Total beginners who want to explore Data Science & AI Students & professionals looking for a high-income skill Career changers curious about tech jobs Anyone who wants to future-proof their skills in 2025! Tools You’ll Use (No Setup Hassle!): Python (easy-to-learn) Jupyter Notebooks (user-friendly coding) Scikit-Learn (simple ML models) ChatGPT & AI tools (see how they work!) Bonus: Downloadable exercises & solutions Cheat sheets & study guides Lifetime access & updates Start Your Data Science Journey Today – No Experience Needed!
Machine Learning é uma disciplina da área da Inteligência Artificial que, por meio de algoritmos, dá aos computadores a capacidade de identificar padrões em dados massivos e fazer previsões (análise preditiva).Data Science é o estudo disciplinado dos dados e informações inerentes ao negócio e todas as visões que podem cercar um determinado assunto. É uma ciência que estuda as informações, seu processo de captura, transformação, geração e, posteriormente, análise de dados para converter em evidência.A Análise de Dados é um processo de inspeção, limpeza, transformação e modelagem de dados com o objetivo de descobrir informações úteis, informar conclusões e apoiar a tomada de decisões. A análise de dados tem múltiplas facetas e abordagens, abrangendo diversas técnicas sob uma variedade de nomes, e é usada em diferentes domínios dos negócios, ciências e ciências sociais. No mundo dos negócios de hoje, a análise de dados desempenha um papel tornando a tomada de decisões mais científicas e ajudando as empresas a operar com mais eficáciaNeste curso você vai entender que juntos a Data Science, Machine Learning e Data Analytics além de inovações tecnológicas são aliados para o bom funcionamento das ações organizacionais, e tem poder de influência em toda cadeia produtiva.Bons estudos!
In recent years, we've seen a resurgence in AI, or artificial intelligence, and machine learning.Machine learning has led to some amazing results, like being able to analyze medical images and predict diseases on-par with human experts.Google's AlphaGo program was able to beat a world champion in the strategy game go using deep reinforcement learning.Machine learning is even being used to program self driving cars, which is going to change the automotive industry forever. Imagine a world with drastically reduced car accidents, simply by removing the element of human error.Google famously announced that they are now "machine learning first", meaning that machine learning is going to get a lot more attention now, and this is what's going to drive innovation in the coming years. It's embedded into all sorts of different products.Machine learning is used in many industries, like finance, online advertising, medicine, and robotics.It is a widely applicable tool that will benefit you no matter what industry you're in, and it will also open up a ton of career opportunities once you get good.Machine learning also raises some philosophical questions. Are we building a machine that can think? What does it mean to be conscious? Will computers one day take over the world?In this course, we are first going to discuss the K-Nearest Neighbor algorithm. It’s extremely simple and intuitive, and it’s a great first classification algorithm to learn. After we discuss the concepts and implement it in code, we’ll look at some ways in which KNN can fail.It’s important to know both the advantages and disadvantages of each algorithm we look at.Next we’ll look at the Naive Bayes Classifier and the General Bayes Classifier. This is a very interesting algorithm to look at because it is grounded in probability.We’ll see how we can transform the Bayes Classifier into a linear and
Der Bedarf an Data-Experten wächst wesentlich schneller als das Angebot an Fachkräften. 2022 fehlten laut einer repräsentativen Bitkom-Umfrage rund 137.000 IT-Fachkräfte in Deutschland. Damit liegt der Mangel sogar noch höher als vor der Pandemie.Die Karriere im Bereich Data Science bietet nicht nur finanzielle Vorteile, sondern auch die Möglichkeit, an den herausforderndsten und faszinierendsten Aufgaben der Welt zu arbeiten. Bist du bereit, den Weg als Data Scientist einzuschlagen? "Perfektes Niveau, motivierend und verständlich/gründlich erklärt." (★★★★★ P. Fuchs)Dieser Grundlagenkurs richtet sich sowohl an Anfänger, die zum ersten Mal mit Data Science in Berührung kommen, als auch an Entwickler, die ihr Portfolio um Fähigkeiten in Richtung Data Science und Machine Learning ausbauen wollen!Wichtig: Unser DataScience-Kurs erfordert Grundkenntnisse der Programmierung mit Python! Falls du die Grundlagen von Python bisher noch nicht erlernt hast, solltest du zuerst einen unserer Python-Kurse durcharbeiten!Dieser umfassende Kurs ist inhaltlich vergleichbar mit anderen Data Science Bootcamps, die sonst mehrere tausend Euro kosten. Nun kannst Du all das zu einem Bruchteil der Kosten lernen. Und dank der Plattform Udemy lernst Du wann und wo Du möchtest. Mit über 100 HD Video Lektionen und den detaillierten Code Notebooks zu jeder Lektion ist dies einer der umfangreichsten deutschsprachigen Kurse für Data Science und Maschinelles Lernen (Machine Learning) auf Udemy!Wir bringen dir bei, wie man Python zur Analyse von Daten einsetzt, wie man Daten visualisiert und wie Python zum Maschinellen Lernen (Machine Learning) genutzt werden kann! Hier sind einige der Punkte die wir behandeln werd
This specialization from Johns Hopkins University covers advanced statistical concepts, including mathematical statistics, regression models, and statistical inference, aimed at aspiring data scientists.
Welcome to the 10 Days of Prompt Engineering, Generative AI, and Data Science CourseGet hands-on with Prompt Engineering, Generative AI, and Data Science in just 10 days. I’m Diogo, and I’ve structured this course to take you from basics to advanced topics quickly. We’ll cover live sessions, hands-on labs, and real-world projects—all in 14 hours and 30 minutes of published video content. You’ll also receive lifetime updates so your learning never goes stale.You will build a portfolio of project on topics like:Prompt Engineering Fundamentals: Understand transformers, attention mechanisms, and how to structure prompts for optimal performance.Generative AI Workflows: Master tools like Google Colab, Jupyter Notebook, LM Studio, and learn how to fine-tune system messages and model parameters.OpenAI API for Text & Images: Integrate the OpenAI API into Python projects, explore parameters for better text generation, and tap into image generation (coming soon).Machine Learning with XGBoost & Random Forest: Explore advanced ML topics, including parameter tuning, SHAP values, and real-world approaches to customer satisfaction modeling.AI Agents with CrewAI: Dive into the next wave of AI automation (coming in Q1 2025).COURSE BREAKDOWNIntroductionMeet your instructor, download course materials, set up your environment (Google Colab, Jupyter Notebook, RStudio).Preview the core projects we’ll tackle.Day 1 – Basics of Prompt EngineeringLearn about transformers, attention, and chain-of-thought prompting.Experiment with LM Studio to practice
Este curso pretende ser una introducción a las técnicas más relevantes de Machine Learning y mostrar ejemplos de aplicación de estas técnicas. Que sirva para conocer qué técnicas existen, en qué se fundamentan y sobre qué tipos de problemas pueden aplicarse. El enfoque será teórico-práctico y se hará uso del lenguaje de programación Python y del toolkit Scikit Learn. Se recomienda a los alumnos instalarse ANACONDA en su plataforma habitual. ANACONDA incluye Python, Scikit-Learn y Matplotlib. La versión de python que utilizaremos será la 3.6.También veremos pyspark como plataforma de desarrollo de aplicaciones distribuídasEntre los principales objetivos podemos destacar:Introducir los conceptos de ciencias de datos y machine learning.Introducir las principales librerías que podemos encontrar en python para aplicar técnicas de machine learning a los datos.Introducir las principales librerías que podemos encontrar en python para tratamiento y visualización de datos Dar a conocer los pasos para construir un modelo de machine learning, desde la adquisición de datos,pasando por la generación de funciones, hasta la selección de modelos.Dar a conocer los principales algoritmos para resolver problemas de machine learning.Introducir scikit-learn como herramienta para resolver problemas de machine learning.Introducir pyspark como herramienta para aplicar técnicas de big data y map-reduce a los datos.Conocer y aplicar algoritmos de machine learning con pyspark.Introducir los sistemas de recomendación basados en contenidos
Welcome to this course on Data Science and Machine Learning with Microsoft Azure. You would learn various lessons for Data Visualization, Data Cleaning and Data Analysis using Microsoft Power BI. It is a powerful Business Intelligence software that can be used for various domains ranging from creating Analytics dashboard and Business Intelligence reports to fetching information from wide range of data sources. You could also perform various types of data cleaning operations using Power Query. Moreover, if you want to create some advanced types of Analytics charts you can write a few lines of code in python using frameworks such as Matplotlib and Seaborn. And if you want to modify the dataset either by creating derived values based on certain mathematical formula or specified conditions you could perform various Data Modelling operations as well by using creating Calculated fields and by using Power Query editor. In this course you would learn various such concepts with completely practical examples on Power BI Desktop, that can be applied in the similar way on azure cloud.After you have learned various lessons on Power BI, you would be learning Azure Machine learning in the later sections of this course. Here you would learn to analyze an image using Computer Vision. And you would also learn to perform language detection, sentiment analysis, key phrase extraction and entity recognition using Azure Text Analytics. Here in this course you will learn following lessons on Data Science using Microsoft Power BI-Creating Visualization charts such as Bar chartPie chartDonut or Ring chartTreemap chartInteractive charts and Drill downTable and MatrixDate and other SlicersCreating a calculated fieldGauge chartMap chart and modesScatterplot and Animation PlaybackBasics of Power QueryRow deletion and
Do you want to super charge your career by learning the most in demand skills? Are you interested in data science but intimidated from learning by the need to learn a programming language?I can teach you how to solve real data science business problems that clients have paid hundreds of thousands of dollars to solve. I'm not going to turn you into a data scientist; no 2 hour, or even 40 hour online course is able to do that. But this course can teach you skills that you can use to add value and solve business problems from day 1.This course is different than most for several reasons:1. We start with problem solving instead of coding. I feel like starting to code before solving problems is misguided; many students are turned off by hours of work to try to write a couple of meaningless lines rather than solving real problems. The key value add data scientists make is solving problems, not writing something in a language a computer understands.2. The examples are based on real client work. This is not like other classes that use Kaggle data sets for who survived the Titanic, or guessing what type of flower it is based on petal measurements. Those are interesting, but not useful for people wanting to sell more products, or optimize the performance of their teams. These examples are based on real client problems that companies spent big money to hire consultants (me) to solve.3. Visual workflows. KNIME uses a visual workflow similar to what you'll see in Alteryx or Azure Machine Learning Studio and I genuinely think it is the future of data science. It is a better way of visualizing the problem as your are exploring data, cleaning data, and ultimately modeling. It is also something that makes your process far easier to explain to non-data scientists making it easier to work with other parts of your business.Summary: This course covers the full gamut of the machine learning workflow, from data and business u
One of the most essential aspects of Data Science or Machine Learning is Data Cleaning. In order to get the most out of the data, your data must be clean as uncleaned data can make it harder for you to train ML models. In regard to ML & Data Science, data cleaning generally filters & modifies your data making it easier for you to explore, understand and model.A good statistician or a researcher must spend at least 90% of his/her time on collecting or cleaning data for developing a hypothesis and remaining 10% on the actual manipulation of the data for analyzing or deriving the results. Despite these facts, data cleaning is not commonly discussed or taught in detail in most of the data science or ML courses. With the rise of big data & ML, now data cleaning has also become equally important.Why should you learn Data Cleaning?Improve decision makingImprove the efficiencyIncrease productivityRemove the errors and inconsistencies from the datasetIdentifying missing valuesRemove duplicationWhy should you take this course?Data Cleaning is an essential part of Data Science & AI, and it has become an equally important skill for a programmer. It’s true that you will find hundreds of online tutorials on Data Science and Artificial Intelligence but only a few of them cover data cleaning or just give the basic overview. This online guide for data cleaning includes numerous sections having over 5 hours of video which are enough to teach anyone about all its concepts from the very beginning. Enroll in this course now to learn all the concepts of Data Cleaning. This course teaches you everything including the basics of Data Cleaning, Data Reading, merging or splitting datasets, different visualization tools, locate or handling missing/absurd values and hands-on sessions whe
¿Te suenan términos como *Machine Learning* o *Data Scientist*? ¿Te has preguntado para qué se utilizan estas técnicas y por qué las empresas están dispuestas a pagar entre 120.000 y 200.000 dólares al año a un científico de datos?Este curso está diseñado para resolver todas tus dudas y brindarte una formación integral en Data Science. Juan Gabriel Gomila, un profesional reconocido en el campo del Data Science, te guiará a lo largo del curso, compartiendo su vasto conocimiento y ayudándote a desmitificar la teoría matemática detrás de los algoritmos de Machine Learning. Aprenderás a dominar las librerías de Python que son esenciales en esta área, convirtiéndote en un experto en la materia.A lo largo del curso, abordarás conceptos y algoritmos clave del Machine Learning, de manera progresiva y detallada. Cada sección te proporcionará nuevas habilidades que te permitirán comprender y aplicar los principios del Data Science, una disciplina no solo fascinante, sino también altamente lucrativa.Además, este curso mantiene el estilo característico y ameno de Juan Gabriel Gomila, lo que hará que disfrutes aprendiendo técnicas de Machine Learning con Python.El curso incluye ejercicios prácticos y datasets basados en ejemplos del mundo real, lo que te permitirá no solo aprender la teoría, sino también aplicarla en la creación de tus propios modelos de Machine Learning. Además, tendrás acceso a un repositorio en GitHub con todo el código fuente en Python, listo para descargar y usar en tus proyectos.¡No esperes más! Únete a este curso y comienza a formarte en Machine Learning con el programa más completo y práctico del mercado en español.
Learn Python for Machine Learning & Data Science Masterclass
Hi all Its Jay I am a data scientist by profession and Instructor by passion I have around 4 years of experience as data scientist, I started my career as analyst as gradually moved to data scientist hence I can understand what are programming prerequisites for data scientist. This course is created for absolute beginners of data science and machine learning. It covers all aspect of python languages required in data science machine learning and deep learning.
DATA SCIENCE with MACHINE LEARNING and DATA ANALYTICS using R Programming, PYTHON Programming, WEKA Tool Kit and SQL. This course is designed for any graduates as well as Software Professionals who are willing to learn data science in simple and easy steps using R programming, Python Programming, WEKA tool kit and SQL.Data is the new Oil. This statement shows how every modern IT system is driven by capturing, storing and analysing data for various needs. Be it about making decision for business, forecasting weather, studying protein structures in biology or designing a marketing campaign. All of these scenarios involve a multidisciplinary approach of using mathematical models, statistics, graphs, databases and of course the business or scientific logic behind the data analysis. So we need a programming language which can cater to all these diverse needs of data science. R and Python shines bright as one such language as it has numerous libraries and built in features which makes it easy to tackle the needs of Data science.In this course we will cover these the various techniques used in data science using the R programming, Python Programming, WEKA tool kit and SQL.The most comprehensive Data Science course in the market, covering the complete Data Science life cycle concepts from Data Collection, Data Extraction, Data Cleansing, Data Exploration, Data Transformation, Feature Engineering, Data Integration, Data Mining, building Prediction models, Data Visualization and deploying the solution to the customer. Skills and tools ranging from Statistical Analysis, Text Mining, Regression Modelling, Hypothesis Testing, Predictive Analytics, Machine Learning, Deep Learning, Neural Networks, Natural Language Processing, Predictive Modelling, R Studio, programming languages like R programming, Python are covered extensively as part of this Data Science training.
This specialization covers the foundational concepts of data science, including data wrangling and visualization as part of the exploratory data analysis process.
¡Bienvenido al apasionante mundo de la Ciencia de Datos y Machine Learning en R! En este curso, te embarcarás en un viaje transformador para descubrir el poder de los datos y cómo convertirlos en conocimiento significativo. Aprenderás a dominar las herramientas y técnicas más avanzadas de R para analizar, visualizar y manipular datos caóticos. Además, desbloquearás el potencial de la inteligencia artificial al desarrollar modelos de aprendizaje automático capaces de predecir tendencias, clasificar información y comprender el lenguaje humano. ¡Prepárate para convertirte en un experto en la ciencia detrás de los datos y llevar tu capacidad analítica a un nivel completamente nuevo! ¿Listo para desafiar tus límites y cambiar el juego con la ciencia de datos y el aprendizaje automático en R? ¡Únete a nosotros y comienza tu emocionante aventura hacia el futuro de la tecnología y la innovación! Lo mas importante de este curso es que haremos un proyecto real para que puedas tener conocimientos adecuados y útiles en tu vida profesional. Cada que repliques este curso que realizaremos acá, iras aumentando tu probabilidad de tener {éxito en esta área. Es fundamental que tengas toda la disposición de retarte a entender este apasionante mundo. No olvides que cualquier duda puedes contactarme para que nada obstaculice tu aprendizaje
This course is for everyday people looking for an intuitive, beginner-friendly introduction to the world of machine learning and data science.Build confidence with guided, step-by-step demos, and learn foundational skills from the ground up. Instead of memorizing complex math or learning a new coding language, we'll break down and explore machine learning techniques to help you understand exactly how and why they work.Follow along with simple, visual examples and interact with user-friendly, Excel-based models to learn topics like linear and logistic regression, decision trees, KNN, naïve bayes, hierarchical clustering, sentiment analysis, and more – without writing a SINGLE LINE of code.This course combines 4 best-selling courses from Maven Analytics into a single masterclass:PART 1: Univariate & Multivariate ProfilingPART 2: Classification ModelingPART 3: Regression & ForecastingPART 4: Unsupervised LearningPART 1: Univariate & Multivariate ProfilingIn Part 1 we’ll introduce the machine learning workflow and common techniques for cleaning and preparing raw data for analysis. We’ll explore univariate analysis with frequency tables, histograms, kernel densities, and profiling metrics, then dive into multivariate profiling tools like heat maps, violin & box plots, scatter plots, and correlation:Section 1: Machine Learning Intro & LandscapeMachine learning process, definition, and landscapeSection 2: Preliminary Data QAVariable types, empty values, range & count calculations, left/right
Welcome to the course wine quality prediction! In this course you will learn how to work with data from end-to-end and create a machine learning model that predicts the quality of wines.This data set contains records related to red and white variants of the Portuguese Vinho Verde wine. It contains information from 1599 red wine samples and 4898 white wine samples. Input variables in the data set consist of the type of wine (either red or white wine) and metrics from objective tests (e.g. acidity levels, PH values, ABV, etc.).It is super important to notice that you will need python knowledge to be able to understand this course. You are going to develop everything using Google Colab, so there is no need to download Python or Anaconda. You also need basic knowledge of Machine Learning and data science, but don't worry we will cover the theory and the practical needs to understand how each of the models that we are going to use work.In our case, we will work with a classification problem (a set from the supervised learning algorithms). That means that we will use the quality as the target variable and the other variables as the inputs. In this sense, we will some examples to train our model and predict the quality of other wines.You will learn to work with Decision Trees, Logistic Regression, how to use LazyPredict and how to tune the hyperparameters using Grid Search.
A warm welcome to the Machine Learning and Data Science Interview Guide course by Cloud Excellence Academy.We provides this unique list of Data Science Interview Questions and Answers to help you prepare for the Data Scientist and Machine Learning Engineer interviews. This exhaustive list of important data science interview questions and answers might play a significant role in your interview preparation career and helping you get your next dream job. The course contains real questions with fully detailed explanations and solutions. Not only is the course designed for candidates to achieve a full understanding of possible interview questions, but also for recruiters to learn about what to look for in each question response. Why Data Science Job ?According to Glassdoor, a career as a Data Scientist is the best job in America! With an average base salary of over $120,000, not only do Data Scientists earn fantastic compensation, but they also get to work on some of the world's most interesting problems! Data Scientist positions are also rated as having some of the best work-life balances by Glassdoor. Companies are in dire need of filling out this unique role, and you can use this course to help you rock your Data Scientist Interview!Let's get started!Unlike others, We offer details explanation to each and every questions that will help you to understand the question100% money back guarantee (Unconditional, we assure that you will be satisfied with our services and be ready to face the data science interview).The Course highlights100 Questions on Machine Learning Algorithms , Use Cases ,Scenarios, Regularizations etc.75 Questions on Deep Learning ( ANN , CNN , RNN , LSTM , Transformer)100 Questions on Statistics and Probability 50 Question on Pyth
Learn how to create a variety of visualizations in Python using Matplotlib and Seaborn to effectively explore and present your data.
Hi there,Welcome to "Generative AI for Data Analysis and Engineering with ChatGPT" course.ChatGPT and AI | Data Analytics and ML Mastering Course with ChatGPT-4o and Next-Gen AI Techniques for Data AnalystArtificial Intelligence (AI) is transforming the way we interact with technology, and mastering AI tools has become essential for anyone looking to stay ahead in the digital age. In today's data-driven world, the ability to analyze data, draw meaningful insights, and apply machine learning algorithms is more crucial than ever. This course is designed to guide you through every step of that journey, from the basics of Exploratory Data Analysis (EDA) to mastering advanced machine learning algorithms, all while leveraging the power of ChatGPT-4o.Machine learning describes systems that make predictions using a model trained on real-world data. For example, let's say we want to build a system that can identify if a cat is in a picture. We first assemble many pictures to train our machine learning model. During this training phase, we feed pictures into the model, along with information about whether they contain a cat. While training, the model learns patterns in the images that are the most closely associated with cats. This model can then use the patterns learned during training to predict whether the new images that it's fed contain a cat.A machine learning course teaches you the technology and concepts behind predictive text, virtual assistants, and artificial intelligence. You can develop the foundational skills you need to advance to building neural networks and creating more complex functions through the Python and R programming languages. We have more data than ever before. But data alone cannot tell us much about the world around us. We need to interpret the information and discover
A área de Machine Learning (Aprendizagem de Máquina) e Data Science (Ciência de Dados) é atualmente um dos campos de trabalho mais relevantes da Inteligência Artificial, sendo responsável pela utilização de algoritmos inteligentes que tem a função de fazer com que os computadores aprendam por meio de bases de dados. O mercado de trabalho de Machine Learning nos Estados Unidos e em vários países da Europa está em grande ascensão; e a previsão é que no Brasil cada vez mais esse tipo de profissional seja requisitado! Inclusive alguns estudos apontam que o conhecimento dessa área será em breve um pré-requisito para os profissionais de Tecnologia da Informação! E dentro deste contexto está o cientista de dados, que já foi classificado como o trabalho "número 1" por vários veículos da mídia internacional.E para levar você até essa área, neste curso completo você terá uma visão teórica e prática sobre os principais algoritmos de machine learning utilizando o Python, que é uma das linguagens de programação mais relevantes nesta área. Além disso, vamos utilizar o Google Colab para a implementação dos exemplos, o que facilita o entendimento dos conceitos e evita problemas de instalação de bibliotecas. Este curso é considerado de A à Z pelo fato de apresentar desde os conceitos mais básicos até técnicas mais avançadas, de modo que ao final você terá todas as ferramentas necessárias para construir soluções complexas e que podem ser aplicadas em problemas do dia-a-dia das empresas! Você aprenderá tudo passo a passo, ou seja, tanto a teoria quanto a prática de cada algoritmo! O curso é dividido em cinco partes principais:Classificação - pré-processamento dos dados, naïve bayes, árvores de decisão, random forest, regras, regressão logística, máquinas de vetores de suporte (SVM), redes neurais artificiais, avaliação de algoritmos e combinação e rejeição de classificadoresRegressão - regressão linear simples e múltipla, polinomial, árvores de dec
This beginner's course builds an understanding of the essential math required for data analytics.
Get instant access to a 69-page Machine Learning workbook containing all the reference materialOver 9 hours of clear and concise step-by-step instructions, practical lessons, and engagementIntroduce yourself to our community of students in this course and tell us your goalsEncouragement & celebration of your progress: 25%, 50%, 75%, and then 100% when you get your certificateWhat will you get from doing this course?This course will help you develop Machine Learning skills for solving real-life problems in the new digital world. Machine Learning combines computer science and statistics to analyse raw real-time data, identify trends, and make predictions. You will explore key techniques and tools to build Machine Learning solutions for businesses. You don’t need to have any technical knowledge to learn these skills.What will you learn:What is Machine LearningSupervised Machine LearningUnsupervised Machine LearningSemi-Supervised Machine LearningTypes of Supervised Learning: ClassificationRegressionTypes of Unsupervised Learning: ClusteringAssociationData CollectionData PreparingSelection of a ModelData Training and EvaluationHPT in Machine LearningPrediction in MLDPP in MLNeed of DPPSteps in DPPPython LibrariesMissing, Encoding, and Splitting Data in MLPython, Java, R,and C ++How to install python and anaconda?Interface of Jupyter NotebookMathematics in PythonEuler's Number and VariablesDegree into Radians and Radians into Degrees in PythonPrinting Functions in PythonFeature Scaling for ML<p
A Wesleyan University specialization that teaches how to analyze and interpret data, with a focus on statistical methods and their application in various fields.
This specialization provides a deep dive into data wrangling techniques using Python, including data collection, assessment, and cleaning, as well as handling missing values.
This specialization demonstrates how to use Excel for data analysis and visualization, which can be a powerful tool for initial data exploration.
You don’t want to code, but you do want to know about Big Data, Artificial Intelligence and Machine Learning? Then this course is for you!You do want to code and you do want to learn more about Machine Learning, but you don’t know how to start? Then this course is for you!The goal of this course is to get you as smoothly as possible into the World of Machine Learning. All the buzzwords will now be clear to you. No more confusion about “What’s the difference between Machine Learning and Artificial Intelligence.” No more stress about “This is just too much information. I don’t know where to start”The topics in this course will make it all clear to you. They are :Part 1 - WelcomePart 2 - Why machine learning?Part 3 - BuzzwordsPart 4 - The Machine Learning ProcessPart 5 - ConclusionBut it does not have to end here. As a bonus, this course includes references to the courses which I find the most interesting. As well as other resources to get you going.
This Johns Hopkins University specialization provides a comprehensive overview of the entire data science pipeline, including statistical modeling and machine learning algorithms.
A specialization that provides the foundational SQL skills needed to query and extract data for exploratory data analysis.
This specialization from DeepLearning.AI provides a foundational understanding of the mathematics essential for AI and machine learning. It covers linear algebra, calculus, probability, and statistics, with a focus on their application in data science. Learners will gain skills in statistical hypothesis testing, Bayesian statistics, and exploratory data analysis.
Learn The Data Science Course 2025: Complete Data Science Bootcamp
A three-course specialization from the University of Michigan that teaches beginning and intermediate concepts of statistical analysis using Python, covering data design, exploration, and modeling.
This specialization from Duke University teaches you how to analyze and visualize data in R. It covers topics such as probability, inference, regression, and machine learning. The specialization is very hands-on and includes several projects.
En este curso se enseñan todos los conocimientos necesarios para convertirse en un Data Scientist (Científico de Datos). Para ello usaremos el lenguaje de Programación Python como herramienta, ya que es uno de los lenguajes con más demanda hoy en dia.En concreto, se tratarán en profundidad los siguientes apartados:- Programación en Python, donde aprendemos a programar en uno de los lenguajes más populares hoy en día como es Python.- Análisis de Datos, donde aprenderemos como realizar un Análisis Exploratorio de Datos, usando técnicas estadísticas y de Visualización de Datos.- Machine Learning, donde aprenderemos como crear modelos predictivos, evaluarlos y usarlos en un entorno de desarrollo.- Deep Learning, donde nos enfocamos en la creación de Redes Neuronales.- Web Scraping, donde aprenderemos técnicas para extraer información de páginas web.- Big Data, donde aprenderemos a como procesar datasets de gran tamaño asi como entrenar modelos predictivos con ellos.
An intermediate-level course that introduces an important class of statistical models. It covers the basic concepts of mixture models, Bayesian estimation for these models, and their applications in density estimation and clustering.
In this self-paced course, you will learn how to apply Naive Bayes to many real-world datasets in a wide variety of areas, such as:computer visionnatural language processingfinancial analysishealthcaregenomicsWhy should you take this course? Naive Bayes is one of the fundamental algorithms in machine learning, data science, and artificial intelligence. No practitioner is complete without mastering it.This course is designed to be appropriate for all levels of students, whether you are beginner, intermediate, or advanced. You'll learn both the intuition for how Naive Bayes works and how to apply it effectively while accounting for the unique characteristics of the Naive Bayes algorithm. You'll learn about when and why to use the different versions of Naive Bayes included in Scikit-Learn, including GaussianNB, BernoulliNB, and MultinomialNB.In the advanced section of the course, you will learn about how Naive Bayes really works under the hood. You will also learn how to implement several variants of Naive Bayes from scratch, including Gaussian Naive Bayes, Bernoulli Naive Bayes, and Multinomial Naive Bayes. The advanced section will require knowledge of probability, so be prepared!Thank you for reading and I hope to see you soon!Suggested Prerequisites:Decent Python programming skillComfortable with data science libraries like Numpy and MatplotlibFor the advanced section, probability knowledge is requiredWHAT ORDER SHOULD I TAKE YOUR COURSES IN?Check out the lecture "Machine Learning and AI Prerequisite Roadmap" (available in the FAQ of any of my courses, including my free course)UNIQUE FEATURESEvery line of code explained in detail - email me any time if you disagreeLess than 24 hour
A comprehensive article that explains the concepts of feature engineering and selection, and provides methods for handling missing data, continuous features, and categorical features, along with different feature selection techniques.
A specialization that teaches how to create effective data visualizations and dashboards using Tableau, a key skill for exploratory data analysis.
A comprehensive data science program that covers R programming, data visualization, probability, inference, and machine learning. The machine learning section includes classification algorithms and case studies.
An introductory course that covers the data science process, including data acquisition, cleaning, and transformation, using tools like R and Python.
This HarvardX course covers central concepts of statistical inference and modeling, including how to perform inference on high-dimensional data.
Part of Harvard's Data Science Professional Certificate, this course covers the fundamentals of probability theory needed for a data science career.
Part of the HarvardX Data Science Professional Certificate, this course covers the basics of data visualization and exploratory data analysis using ggplot2 in R.
This MIT course develops a deep understanding of the principles of statistical inference, including estimation, hypothesis testing, and prediction, on firm mathematical grounds.
Learn Complete Python Pandas Data Science Course
Learn about various optimization algorithms and their applications in machine learning and data analysis.
A Harvard University course that covers statistical concepts and models relevant for causal inference in the context of high-throughput experiments.
This course from the University of Edinburgh introduces the fundamental concepts of statistics. You will learn about data collection, analysis, and interpretation. The course covers topics such as descriptive statistics, probability, and inference.
Welcome to this non-technical training for executives!This exclusive Udemy for Business training is designed to give you a high level overview of the key topics in Data Science and Machine Learning. Designed exclusively for students who want to learn about the basics of data science and machine learning at a high level, without needing to learn how to code or cover complex mathematics.In this course you'll learn the fundamentals to high quality data, allowing you to understand what makes data suitable for analysis and machine learning. Then we'll give you a quick overview of important statistical topics, such as mean, standard deviation, and the normal distribution. Afterwards you will learn the different ways data scientists are able to visualize data to convey their ideas in a clear manner.Once we've learned the basics of data, statistics, and visualization we'll explore the amazing opportunities machine learning has to offer. We'll teach you about the machine learning process, acquiring data, cleaning data, and an overview of the train/test split philosophy that supervised learning adheres to. Then we'll show you some examples of regression and classification algorithms, as well as how to evaluate their results.Once we understand regression and classification, we'll teach you about clustering techniques such as KMeans algorithm and dimensionality reduction methods like Principal Component Analysis.Let's being your first steps into data science and machine learning! Enroll today and we'll see you inside the course!
Der Kurs ist ein Einsteiger-Kurs in die Welt des Data Science, des Machine Learning, der künstlichen Intelligenz und dem Arbeiten mit Daten. In Zeiten der Digitalisierung und der digitalen Transformation stellt die Wissenschaft der Daten (Data Science) immer mehr eine zentrale Disziplin dar. Ohne grundlegende Kenntnisse und Qualifikationen im Bereich der Daten sind viele Arbeitsplätze kaum noch denkbar.Der Kurs liefert daher einen unkomplizierten Einstieg in die Welt der Daten und der Algorithmen. Dadurch ergibt sich ein Grundverständnis, was Daten überhaupt sind und man sie einer automatischen Verarbeitung mit Algorithmen zugänglich machen kann. Alle Algorithmen und mathematischen Verfahren werden Schritt für Schritt erklärt.Der Lernpfad dieses Kurses besteht u.a. aus folgenden Abschnitten:- Was sind Daten?- Datentypen, Data Mining und Visualisierung von Daten- Statistische Grundbegriffe- Einfache Clustering-Verfahren- Lineare und logistische Regression- Kurze Einführung in die Graphentheorie- Entscheidungsbäume und Random Forest- Einführung in die neuronalen Netze- Überblick über generative KI und deren AnwendungenAlle Algorithmen und Verfahren werden so ausführlich erläutert, dass keine speziellen mathematischen Vorkenntnisse oder IT-Fähigkeiten erforderlich sind. Ein grundlegendes Interesse an mathematischen Zusammenhängen wird hingegen vorausgesetzt. Die Beispiele stehen im Quellcode in der Programmiersprache Python zum Download und zum selber ausprobieren bereit.Der Kurs richtet sich insbesondere an Fach- und Führungskräfte, die selbst mit Daten arbeiten und sich ein tieferes Verständnis grundlegender Zusammenhänge erarbeiten möchten.
A área de Machine Learning (Aprendizagem de Máquina) é atualmente um dos campos de trabalho mais relevantes da Inteligência Artificial, sendo responsável pela utilização de algoritmos inteligentes que tem a função de fazer com que os computadores aprendam por meio de bases de dados. O mercado de trabalho de Machine Learning nos Estados Unidos e em vários países da Europa está em grande ascensão; e a previsão é que no Brasil cada vez mais esse tipo de profissional seja requisitado! Inclusive alguns estudos apontam que o conhecimento dessa área será em breve um pré-requisito para os profissionais de Tecnologia da Informação! E dentro deste contexto está o cientista de dados, que já foi classificado como o trabalho "número 1" por vários veículos da mídia internacional.E para levar você até essa área, neste curso completo você terá uma visão teórica e prática sobre os principais algoritmos de machine learning utilizando a ferramenta Weka, que é uma das ferramentas mais utilizadas para machine learning e mineração de dados. Além disso, também utilizaremos a linguagem de programação Java para fazer a integração com o Weka! Este curso apresenta desde os conceitos mais básicos até técnicas mais avançadas, de modo que ao final você terá todas as ferramentas necessárias para construir soluções complexas e que podem ser aplicadas em problemas do dia-a-dia das empresas! Você aprenderá tudo passo a passo, ou seja, tanto a teoria quanto a prática de cada algoritmos! O curso é dividido em cinco partes:Classificação - extração de características de imagens, naive bayes, árvores de decisão, random forest, regras, regressão logística, máquinas de vetores de suporte (SVM), redes neurais artificiais, avaliação de algoritmos e combinação e rejeição de classificadoresRegressão - regressão linear simples e múltipla, polinomial, árvores de decisão, random forest, vetores de suporte e redes neurais artificiaisRegras de associação - algoritmo aprio
A área de Machine Learning (Aprendizagem de Máquina) é atualmente um dos campos de trabalho mais relevantes da Inteligência Artificial, sendo responsável pela utilização de algoritmos inteligentes que tem a função de fazer com que os computadores aprendam por meio de bases de dados. O mercado de trabalho de Machine Learning nos Estados Unidos e em vários países da Europa está em grande ascensão; e a previsão é que no Brasil cada vez mais esse tipo de profissional seja requisitado! Inclusive alguns estudos apontam que o conhecimento dessa área será em breve um pré-requisito para os profissionais de Tecnologia da Informação! E dentro deste contexto está o cientista de dados, que já foi classificado como o trabalho "número 1" por vários veículos da mídia internacional.E para levar você até essa área, neste curso completo você terá uma visão teórica e prática sobre os principais algoritmos de machine learning utilizando o R, que é uma das linguagens de programação mais relevantes nesta área de ciência de dados. Este curso é considerado de A à Z pelo fato de apresentar desde os conceitos mais básicos até técnicas mais avançadas, de modo que ao final você terá todas as ferramentas necessárias para construir soluções complexas e que podem ser aplicadas em problemas do dia-a-dia das empresas! Você aprenderá tudo passo a passo, ou seja, tanto a teoria quanto a prática de cada algoritmos! O curso é dividido em cinco partes principais:Classificação - pré-processamento dos dados, naive bayes, árvores de decisão, random forest, regras, regressão logística, máquinas de vetores de suporte (SVM), redes neurais artificiais, avaliação de algoritmos e combinação e rejeição de classificadoresRegressão - regressão linear simples e múltipla, polinomial, árvores de decisão, random forest, vetores de suporte (SVR) e redes neurais artificiaisRegras de associação - algoritmos apriori e ECLATAgrupamento - k-means, agrupamento hierárqu
Common scenario: You try to get into machine learning and data science, but there's SO MUCH MATH.Either you never studied this math, or you studied it so long ago you've forgotten it all.What do you do?Well my friends, that is why I created this course.Probability is one of the most important math prerequisites for data science and machine learning. It's required to understand essentially everything we do, from the latest LLMs like ChatGPT, to diffusion models like Stable Diffusion and Midjourney, to statistics (what I like to call "probability part 2").Markov chains, an important concept in probability, form the basis of popular models like the Hidden Markov Model (with applications in speech recognition, DNA analysis, and stock trading) and the Markov Decision Process or MDP (the basis for Reinforcement Learning).Machine learning (statistical learning) itself has a probabilistic foundation. Specific models, like Linear Regression, K-Means Clustering, Principal Components Analysis, and Neural Networks, all make use of probability.In short, probability cannot be avoided!If you want to do machine learning beyond just copying library code from blogs and tutorials, you must know probability.This course will cover everything that you'd learn (and maybe a bit more) in an undergraduate-level probability class. This includes random variables and random vectors, discrete and continuous probability distributions, functions of random variables, multivariate distributions, expectation, generating functions, the law of large numbers, and the central limit theorem.Most important theorems will be derived from scratch. Don't worry, as long as you meet the prerequisites, they won't be difficult to understand. This will ensure you have the strongest foundation possible in this subject. No more memorizing "rules" only to apply them incorrectly / inappropriately in the future! This course will provide you with
Common scenario: You try to get into machine learning and data science, but there's SO MUCH MATH.Either you never studied this math, or you studied it so long ago you've forgotten it all.What do you do?Well my friends, that is why I created this course.Calculus is one of the most important math prerequisites for machine learning. It's required to understand probability and statistics, which form the foundation of data science. Backpropagation, the learning algorithm behind deep learning and neural networks, is really just calculus with a fancy name.If you want to do machine learning beyond just copying library code from blogs and tutorials, you must know calculus.Normally, calculus is split into 3 courses, which takes about 1.5 years to complete.Luckily, I've refined these teachings into just the essentials, so that you can learn everything you need to know on the scale of hours instead of years.This course will cover Calculus 1 (limits, derivatives, and the most important derivative rules), Calculus 2 (integration), and Calculus 3 (vector calculus). It will even include machine learning-focused material you wouldn't normally see in a regular college course. We will even demonstrate many of the concepts in this course using the Python programming language (don't worry, you don't need to know Python for this course). In other words, instead of the dry old college version of calculus, this course takes just the most practical and impactful topics, and provides you with skills directly applicable to machine learning and data science, so you can start applying them today.Are you ready?Let's go!Suggested prerequisites:Firm understanding of high school math (functions, algebra, trigonometry)
With the increase of data by each passing day, Data Science has become one of the most important aspects in most of the fields. From healthcare to business, everywhere data is important. However, it revolves around 3 major aspects i.e. data, foundational concepts and programming languages for interpreting the data. This course teaches you everything about all the foundational mathematics for Data Science using R programming language, a language developed specifically for performing statistics, data analytics and graphical modules in a better way.Why Learn Foundational mathematical Concepts for Data Science Using R?Data Science has become an interdisciplinary field which deals with processes and systems used for extracting knowledge or making predictions from large amounts of data. Today, it has become an integral part of numerous fields resulting in the high demand of professionals of data science. From helping brands to understand their customers, solving complex IT problems, to its usability in almost every other field makes it very important for the functioning and growth of any organizations or companies. Depending upon the location the average salary of data scientist expert can be over $120,000. This course will help you learn the concepts the correct way.Why You Should Take This Online Tutorial?Despite the availability of several tutorials on data science, it is one of the online guides containing hand-picked topics on the concepts for foundational mathematics for Data Science using R programming language. It includes myriads of sections (over 9 hours of video content) lectured by Timothy Young, a veteran statistician and data scientists . It explains different concepts in one of the simplest form making the understanding of Foundational mathematics for Data Science very easy and effective.This Course includes:Overview of Machine Learning and R programming languageLinear Algebra- Scalars
In this training programme, you will learn Data Science and Machine Learning using Python & R. It will prepare students of any discipline to find lucrative jobs in the vast field of Data Science. Students will also learn Python and R in the process. Data Science is all about processing data received from various sources and deriving information and knowledge from that. This field uses statistics and machine learning tools. Applications are Market analysis, Predictive analytics, Demand Forecast, Recommender Systems, Social Media Analysis, Person analysis etc.
This course from MIT provides an introduction to computational thinking and data science. You will learn how to use computation to solve problems and explore data, which is a great foundation for machine learning.
“We are bringing technology to philosophers and poets.”Machine Learning is usually considered to be the forte of professionals belonging to the programming and technology domain. People from arts and social science with no background in programming/technology often find it challenging to learn Machine Learning. However, Machine learning is not for technologists and programmers only. It is for everyone who wants to be a better researcher and decision-maker.Machine Learning is for anyone looking to model how humans and machines make decisions, develop mathematical models of decisions, improve decision-making accuracy based on data, and do science with data.Machine Learning brings you closer to the fascinating world of artificial intelligence. Machine Learning is a cross-disciplinary field encompassing computer science, mathematics, statistics, psychology, and management. It’s currently tough for normal learners to understand so many subjects, making Machine Learning inaccessible to many, especially those from social science backgrounds.We built this course, “Machine Learning for Social Scientists,” to help learners master this topic without getting stuck in its technicalities or fear of coding. This course is built as a scratch to the advanced level course for Machine Learning. All the topics are explained with the basics. The instructor creates a connection with everyday instances and fundamental tools so that learners feel connected to their previous learning. For example, we demo some Excel calculations to ensure learners can see the connection between Excel spreadsheet analysis and Machine Learning using R language.The course covers the following topics:· Fundamentals of Machine Learning· Applications of Machine Learning· Statistical concepts underlying Machine Learning· Supervised Machine Learning Algorithms· Unsupervised Machine Learning Algorithms· How to Use R to Implement Machi
Questo corso sul Data Science con R nasce per essere un percorso completo su come si è evoluta l'analisi dati negli ultimi anni a partire dall'algebra e dalla statistica classiche. L'obiettivo è accompagnare uno studente che ha qualche base di R in un percorso attraverso le varie anime del Data Science.Cominceremo con un ripasso delle basi di R, a partire dallo scaricamento e installazione, all'impostazione dell'ambiente di lavoro, passando per le strutture, la creazione di funzioni, l'uso degli operatori e di alcune funzioni importanti. Passeremo poi a vedere come manipolare e gestire un dataset, estrarne dei casi oppure delle variabili, generare dei dataset casuali, calcolare delle misure statistiche di base, creare grafici con i pacchetti Matplotlib e Seaborn.Nelle sezioni successive cominciamo a entrare nel cuore del Data Science con R, a cominciare dal preprocessing: vediamo infatti come ripulire e normalizzare un dataset, e come gestire i dati mancanti. La sezione successiva ci permette di cominciare a impostare dei modelli di machine learning con Python: vedremo tutti gli algoritmi più comuni, sia supervisionati che non supervisionati, come la regressione, semplice, multipla e logistica, il k-nearest neighbors, il Support Vector Machines, il Naive Bayes, gli alberi di decisione e il clustering. Passeremo poi ai più comuni metodi ensemble, come il Random Forest, il Bagging e il Boosting, e all'analisi del linguaggio naturale e al suo utilizzo nel machine learning per la catalogazione dei testi.Nelle ultime sezioni vedremo alcuni rudimenti di analisi temporale, sistemi di raccomandazione e social media mining.
¿Por qué estudiar ciencia de datos?Las empresas tienen un problema: recolectan y guardan enormes cantidades de datos en su día a día. El problema es que no tienen las herramientas y capacidades para extraer conocimiento y tomar decisiones a partir de esos datos. Pero eso está cambiando. Desde hace algunos años, la demanda de científicos de datos ha crecido exponencialmente. Tanto es así, que el número de personas con estas habilidades no es suficiente para cubrir todas las vacantes que hay. Una búsqueda básica en Glassdoor o Indeed te revelará por qué los salarios de los científicos de datos han crecido tanto en los últimos años.¿Por qué este curso?Casi todos los cursos que existen son demasiado teóricos o demasiado prácticos. Los cursos de universidad no suelen desarrollar las habilidades necesarias para enfrentarse a problemas de ciencia de datos desde cero, ni te enseñan a utilizar el software necesario de forma fluida. Por otra parte, muchos cursos y bootcamps online enseñan a utilizar estas técnicas sin llegar a entenderlas en profundidad, pasando por la teoría de forma superficial.Nuestro curso combina lo mejor de cada método. Por una parte, veremos de dónde surgen y por qué se utilizan estos métodos, entendiendo por qué funcionan de la forma que lo hacen. Por otra, vamos a programar estos métodos desde cero, utilizando las librerías más populares de la ciencia de datos y el machine learning en Python. Solo cuando hayas entendido exactamente cómo funciona cada algoritmo, aprenderemos a usarlos con las librerías avanzadas de Python.Contenido del cursoIntroducción al machine learning y a la ciencia de datos.Regresión lineal simple. Aprenderemos a estudiar la relación entre distintos fenómenos.Regresión lineal multiple. Crearemos modelos de más de una variable para estudiar el comportamiento de una variable de interés.Regresión
"Python TOTAL", el curso Best-Seller que ha enseñado Python desde cero a miles y miles, necesitaba un complemento perfecto: "Python TOTAL para Data Science y Machine Learning".¿Por qué hacía falta?Porque con este curso, además de aprender Python desde cero, podrás llevarlo hacia la ciencia del momento: Data Science (o Ciencias de la Información), para poder programar herramientas capaces de procesar cantidades monumentales de información, y de generar no solo visualizaciones relevantes, informativas y atractivas, sino también predicciones a partir de los datos que disponemos.Con "Python Total para Data science & Machine Learning" podrás ayudar a quienes toman decisiones a entender mejor el contexto y la realidad sobre la cual están operando, para poder ser eficaces, eficientes y acertivos en sus decisiones.¿Que encontrarás en este curso?18 días de aprendizaje intenso y prácticoCientos de ejercicios de código en la plataforma (3 por cada lección)Vientos de archivos de código descargableProyectos díarios del mundo real para aplicar lo aprendidoDecenas de bases de datos para prácticasCuestionariosLecciones teóricas y prácticas hechas con amor por la simplicidad¿Qué temas cubre este curso?Python básicoPandasNumPyMatplotlibSeabornScikit LearnTensorflowMachine LearningExcel y Power BI para Data ScienceAlgoritmos de Aprendizaje Supervisado, No Supervisado y por ReforzamientoBases de DatosAPIsDeep LearningEtica y Provacidad en Data Sciencey muchísimo más<
Fai un passo verso il futuro: AI, Machine Learning e Data Science.Sai cosa accomuna il successo dei più grandi colossi del web come Google, Amazon e Facebook ? L'utilizzo che hanno fatto del machine learning.Il machine learning è la branca dell'intelligenza artificiale che ha lo scopo di insegnare ai computer ad apprendere autonomamente, senza essere esplicitamente programmati.Il machine learning non è una novità, ma è finito sotto la luce dei riflettori solo con il nuovo millennio, per due motivi:L'enorme quantità di dati oggi disponibile sul web.Il progresso della tecnologia e il crescente aumento della potenza di calcolo.Questi due fattori, uniti alle sue innumerevoli applicazioni commerciali, stanno contribuendo alla crescita vertiginosa del machine learning che sta trascinando con se l'intero campo dell'intelligenza artificiale.In questo corso pratico imparerai come funziona il machine learning e come utilizzarlo in maniera pratica, utilizzando il linguaggio Python e librerie popolari come Scikit-learn, Pandas e PyPlot.Vuoi dare una svolta alla tua carriera ?L'esperto di machine learning è la professione del futuro e Linkedin lo conferma; secondo una loro recente ricerca il Machine Learning Engineer è la nuova figura più ricercata dalle aziende con un tasso di crescita di quasi il 1000% negli ultimi 5 anni ed è subito seguito dal Data Scientist.Al termine di questo corso avrai acquisito l'esperienza pratica e le intuizioni teoriche necessarie per lanciare la tua carriera in entrambe queste due nuove professioni.Vuoi fondare la tua startup nel campo dell'AI ?Il valore totale del mercato dell'intelligenza artificiale nel 2016 era di 1.3 miliardi di dollari; secondo una ricerca di un'importante società di analisi americana il suo valore per il 2025 potrebbe superare il 60 miliard
Hello there,Welcome to Python Numpy: Machine Learning & Data Science CoursePython numpy, Numpy python, python numpy: machine learning & data science, python numpy, machine learning data science course, machine learning python, data science, python, oak academy, machine learning, python machine learning, python data science, numpy course, data science courseLearn Numpy and get comfortable with Python Numpy in order to start into Data Science and Machine Learning OAK Academy offers highly-rated data science courses that will help you learn how to visualize and respond to new data, as well as develop innovative new technologies Whether you’re interested in machine learning, data mining, or data analysis, Udemy has a course for you Data science is everywhere Better data science practices are allowing corporations to cut unnecessary costs, automate computing, and analyze markets Essentially, data science is the key to getting ahead in a competitive global climate Python Numpy, Python instructors on OAK Academy specialize in everything from software development to data analysis, and are known for their effective, friendly instruction for students of all levels Whether you work in machine learning or finance, or are pursuing a career in web development or data science, Python is one of the most important skills you can learn Python's simple syntax is especially suited for desktop, web, and business applications Python's design philosophy emphasizes readability and usability Python was developed upon the premise that there should be only one way (and preferably one obvious way) to do things, a philosophy that has resulted in a strict level of code standardization The core programming language is quite small and the standard library is also large In fact, Python's large library is one of its greatest benefits, providing a variety of different tools for programmers suited for many different tasksAre you re
Selamat datang di program Pelatihan Data Science dan Machine Learning Dengan R!Pelatihan ini diperuntukan untuk rekan - rekan ingin belajar data science dan machine learning dari sudut terapan dengan memanfaatkan R.Bagi rekan - rekan yang belum menguasai pemrograman R, pelatihan juga memberikan konten pemrograman dasar untuk Rsehingga rekan - rekan dapat mengikuti pelatihan ini dengan baik. Bagi yang sudah bisa pemrograman R, rekan - rekan dapat melanjutkan di topik berikutnya.Seluruh konten didalam pelatihan ini dilaksanakan secara step - by - step (langkah demi langkah) dan berurutan sehingga ini diharapkan semua peserta dapat dengan mudah mengikuti semua praktikum yang diberikan didalam pelatihan ini. Diharapkan semua peserta dapat mengikuti konten pelatihan ini secara berurutan ;).Berikut ini konten yang akan diberikan pada pelatihan ini.Persiapan pelatihanPemrograman RPengenalan tool dan editor seperti RStudio, Jupyter Notebook / JupyterLab, Jupyter / Notebook Dengan Anaconda, dan Google ColabVisualisasi DataVisualisasi Data dengan ggplot2Dataset, Pra-Proses dan Pengurangan Dimensi FeatureManipulasi dan Analisa dataEksplorasi data science dan machine learningPermasalahan dan Penyelesaian Kasus Linear RegressionPermasalahan dan Penyelesaian Kasus Klasifikasi (Classification)Permasalahan dan Penyelesaian Kasus Kekelompokkan (Clustering)Ensemble MethodsHyperparameter Tuning Untuk Model Machine LearningKumpulan Studi KasusJika ada hal - hal yang ingin ditanyakan mengenai topik diatas, rekan - rekan dapat langsung ditulisnya di ruang diskusi pada web ini sehingga rekan-rekan lainnya dapat mengetahui dan ikut terlibat diskusinya.
Python est reconnu comme l'un des meilleurs langages de programmation pour sa flexibilité. Il fonctionne dans presque tous les domaines, du développement Web au développement d'applications financières. Cependant, ce n'est un secret pour personne que la meilleure application de Python est dans les tâches de data science, d'analyse de données et de Machine Learning.Bien que Python facilite l'utilisation du Machine Learning et de l'analyse de données, il sera toujours assez frustrant pour quelqu'un qui n'a aucune connaissance du fonctionnement de l'apprentissage automatique.Si vous avez envie d'apprendre l'analyse de données et le Machine Learning avec Python, ce cours est fait pour vous. Ce cours vous aidera à apprendre à créer des programmes qui acceptent la saisie de données et automatisent l'extraction de fonctionnalités, simplifiant ainsi les tâches du monde réel pour les humains.Il existe des centaines de ressources d'apprentissage automatique disponibles sur Internet. Cependant, vous risquez d'apprendre des leçons inutiles si vous ne filtrez pas ce que vous apprenez. Lors de la création de ce cours, nous avons tout filtré pour isoler les bases essentielles dont vous aurez besoin dans votre parcours d'apprentissage en profondeur.C'est un cours de base qui convient aussi bien aux débutants qu'aux experts. Si vous êtes à la recherche d'un cours qui commence par les bases et passe aux sujets avancés, c'est le meilleur cours pour vous.Il enseigne uniquement ce dont vous avez besoin pour vous lancer dans l'apprentissage automatique et l'analyse de données sans fioritures. Bien que cela aide à garder le cours assez concis, il s'agit de tout ce dont vous avez besoin pour commencer avec le sujet.
Cette formation est conçue pour donner une compréhension complète de la data science, avec un focus particulier sur l’utilisation du langage R, un des outils les plus performants pour l’analyse statistique et la visualisation de données. Voici ce que vous apprendrez au cours de cette formation :Les bases de R et de la data science : Nous commencerons par les bases du langage R, afin que vous puissiez maîtriser les outils essentiels de manipulation et d’analyse de données.Visualisation des données : L’une des compétences les plus recherchées aujourd’hui est la capacité à visualiser des données de manière claire et percutante. Nous apprendrons ensemble à utiliser des bibliothèques comme ggplot2 pour créer des graphiques informatifs.Nettoyage et préparation des données : Une partie essentielle de l’analyse de données consiste à préparer les jeux de données. Vous apprendrez à manipuler, transformer et nettoyer des données brutes pour les rendre exploitables.Algorithmes de machine learning : algorithmes d'apprentissage supervisé et non supervisé en montrant comment créer des modèles prédictifs pour résoudre des problèmes réels.Applications concrètes et projets : Tout au long de la formation, vous aurez l’occasion de travailler sur des exemples et des études de cas, afin de renforcer vos compétences et de vous préparer à intégrer le monde professionnel de la data science.
Fundamentos da linguagem de programação Python , que é a principal base de linguagem para a aplicação da ciência de dadosEstudo das principais funcionalidades da biblioteca Pandas , que é a principal biblioteca de manipulação de dados da Data ScienceEstudo das principais funcionalidades da biblioteca Numpy , que é a principal biblioteca de manipulação de operações matemáticasEstudo das principais bibliotecas de Visualização de Dados : Matplotlib e SeabornManipulando TimeSeries, que são os tipos usados em datas e horasRedução de Dimensões com PCA e TSNEEstatística para Data Science.Machine Learning , com teoria e aplicação prática de estratégias básicas e avançadasIntuição e aplicação dos seguintes modelos preditivos:Linear_Regression (Regressão Linear) Logistic_Regression (Regressão Lógica)Decision_Tree (Árvore de Decisão)Random_Forest (Floresta Aleatória)Stochastic_Gradient_Descent (SGD)Support_Vector_Machine (SVM) AdaBoostGradient_Boost (Impulsionamento Gradiente)K-Means_Clustering - (K-Médias de Grupos)K-Nearest_Neighbors (KNN) PROJETO: Predição da Idade dos Passageiros do Titanic (Regressão Linear)PROJETO: Classificação de sobrevivência dos passageiros do Titanic (Classificação)PROJETO: Análise de Sentimentos de Frases do Twitter (Processamento de Linguagem Natural - PLN)PROJETO: Funcionamento e uso do modelo de detecção e classificação de objetos em imagens e vídeos YOLO (Visão Computacional)PROJETO: Segregando Clientes por Padrões de
Why study data science?Companies have a problem: they collect and store huge amounts of data on a daily basis. The problem is that they don't have the tools and capabilities to extract knowledge and make decisions from that data. But that is changing. For some years now, the demand for data scientists has grown exponentially. So much so, that the number of people with these skills is not enough to fill all the job openings. A basic search on Glassdoor or Indeed will reveal to you why data scientist salaries have grown so much in recent years.Why this course?Almost every course out there is either too theoretical or too practical. University courses don't usually develop the skills needed to tackle data science problems from scratch, nor do they teach you how to use the necessary software fluently. On the other hand, many online courses and bootcamps teach you how to use these techniques without getting a deep understanding of them, going through the theory superficially.Our course combines the best of each method. On the one hand, we will look at where these methods come from and why they are used, understanding why they work the way they do. On the other, we will program these methods from scratch, using the most popular data science and machine learning libraries in Python. Only when you have understood exactly how each algorithm works, we will learn how to use them with advanced Python libraries.Course contentIntroduction to machine learning and data science.Simple linear regression. We will learn how to study the relationship between different phenomena.Multiple linear regression. We will create models with more than one variable to study the behavior of a variable of interest.Lasso regression. Advanced version of multiple linear regression with the ability to filter the most useful variables.Ridge regression. A
¡Hola a todos y bienvenidos a este curso sobre los fundamentos del Machine Learning y su aplicación en la solución de problemas reales mediante el uso de Python 3! Mi nombre es Santiago Hernández y voy a ser vuestro instructor a lo largo de este programa formativo, tenéis más información sobre mí en la biografía o en el vídeo “Presentación del instructor”.A lo largo de este curso sobre Machine Learning y Data Science presentaré, desde un nivel muy básico y al alcance de todo tipo de perfiles, los fundamentos teóricos y matemáticos que se necesitan para comprender en detalle el funcionamiento de los algoritmos de aprendizaje automático y las técnicas de ciencia de datos más importantes en la actualidad. Para ello, utilizaré el enfoque que mejores resultados me ha proporcionado al impartir este tipo de clases en diferentes universidades, un enfoque práctico, en el que veréis como se desarrollan las diferentes funciones y ecuaciones matemáticas de mi puño y letra. Representaré gráficamente todas las intuiciones matemáticas en las que se fundamenta el Machine Learning, de manera que, cualquier persona pueda comprenderlas y avanzar con las siguientes secciones. Este no es un curso para matemáticos, es un curso para todos aquellos que quieren adentrarse en el dominio del aprendizaje automático aprendiendo unas bases sólidas que le permitan solucionar problemas reales mediante la implementación en Python 3 de las principales técnicas existentes y comprender aquellos algoritmos que surjan en el futuro.A medida que vayamos construyendo y comprendiendo estos fundamentos teóricos, iremos aplicándolos a casos de uso prácticos en los que utilizaremos conjuntos de datos reales. Yo soy un firme creyente de que aquellas cosas que se aprenden de manera teórica deben saberse aplicar a casos de uso prácticos para sacarles todo el rendimiento posible, y
Datascience; machine learning, data science, python, statistics, statistics, r, machine learning python, deep learning, python programming, djangoHello there,Welcome to “ Kaggle - Get Best Profile in Data Science & Machine Learning ” course.Kaggle is Machine Learning & Data Science community. Boost your CV in Data Science, Machine Learning, Python with KaggleKaggle, a subsidiary of Google LLC, is an online community of data scientists and machine learning practitioners. Kaggle allows users to find and publish data sets, explore and build models in a web-based data-science environment, work with other data scientists and machine learning engineers, and enter competitions to solve data science challenges.Machine learning isn’t just useful for predictive texting or smartphone voice recognition. Machine learning is constantly being applied to new industries and new problems. Whether you’re a marketer, video game designer, or programmer, Oak Academy has a course to help you apply machine learning to your work. It’s hard to imagine our lives without machine learning. Predictive texting, email filtering, and virtual personal assistants like Amazon’s Alexa and the iPhone’s Siri, are all technologies that function based on machine learning algorithms and mathematical models.Data science application is an in-demand skill in many industries worldwide — including finance, transportation, education, manufacturing, human resources, and banking. Explore data science courses with Python, statistics, machine learning, and more to grow your knowledge. Get data science training if you’re into research, statistics, and analytics.Kaggle offers a no-setup, customizable, Jupyter Notebooks environment. Access free GPUs and a huge repository of community-published data & code.Kaggle is
Werde zum gefragten Data-Science-Spezialisten mit R!Data-Science-Experten sind nicht nur gefragt wie nie, sie bekommen auch ein überdurchschnittliches Gehalt (laut Indeed Jobbörse). Diesen Kurs habe ich entwickelt, um dir den bestmöglichen Einstieg zu bieten.R ist eine unglaublich mächtige und effiziente Sprache, sowohl ob für Data Science als auch Machine Learning. Leider ist der Einstieg allerdings oft sehr trocken - nicht aber in diesem Kurs, alle Themen lernst du Schritt für Schritt und am Beispiel.=> "Wie auch bei Jannis' anderen Kursen ist alles top! Gute step by step Introduction." (★★★★★, Markus Dunkel)Besonders viele Übungen + Beispiele:In diesem Kurs werden alle Themen anschaulich erklärt - du analysierst Geburtsstatistiken & echte Gehälter aus San Francisco, erstellst ein Modell für Diabetes, extrahierst Raketenstarts aus einer Webseite (Web-Crawling) oder visualisierst in einer Grafik die Ausbreitung von Ebola bzw. dem Coronavirus. Schritt für Schritt lernst du also alles was du zum Thema R wissen musst - und zwar nicht nur die Sprache selbst, sondern auch alle wichtigen Tools drumherum, und wie R angewandt wird. Dadurch kannst du das Wissen aus dem Kurs sofort anwenden. Mit über 200+ HD-Videos und mehr als 23 Stunden Videomaterial ist dies der umfangreichste Data-Science Kurs mit R auf Udemy.Was lernst du alles?R Grundlagen:RStudio (unsere Entwicklungsumgebung)FunktionenVariablen,...Data Science:Lese Daten einErstelle anschauliche VisualisierungenÜberzeuge deine Kollegen durch überzeugende PDF-ReportsDiverse Beispiele!Machine Learning mit caret:Regre
This program is designed for business leaders who want to understand the fundamentals of data science and how to apply it in their organizations. It covers key concepts, including machine learning and regression.
This is an ambitious course. The goal here is simple: Only teach what you need to know for day 1 of your first data science job. No fluff, nothing out of context, no topics that are not relevant to real world applications. We will cover EVERY core topic and tool required for those new to data science: Python, R, SQL, Useful Math/Stats/Algorithms, Tableau, and Excel in depth. The course will cover skills that align with three different job types:- Data Analyst- General Data Scientist- Machine Learning EngineerYou can expect to learn from first principles the foundational topics and tools used in practice today. We will avoid topics that are not useful or are simply too advanced when starting out. Your journey will be guided by the Data Science Road Map, a collection of the best resources gathered through years of experience by the instructor.In addition, we will survey every important technology required on the job including GitHub, Kaggle, the basics of cloud, web development and docker. With over 200 videos, readings, and assignments, you can be sure you will be well prepared to join the data community.If you are just getting started or want to fill in some of your knowledge gaps this course is for you!
Linear Algebra is one of the essential foundations for anyone who wants to work in Data Science and Artificial Intelligence. Whether manipulating large datasets, building predictive models, or implementing Machine Learning algorithms, a solid understanding of this mathematical field is indispensable. This course is designed to provide an intuitive and practical approach to the most important concepts, combining theory and Python implementations to ensure you learn by applying. The course is divided into six sections, each covering a fundamental aspect of Linear Algebra. We begin with an introduction to core concepts, explaining the importance of this discipline and how it connects to Data Science and Machine Learning. Here, we cover elements like scalars, vectors, matrices, and tensors, along with setting up the necessary Python libraries. We also explore data representation and how linear systems are used to solve mathematical problems. In the second section, we dive deeper into vectors—their properties and applications. Vectors are fundamental components in data manipulation, feature scaling, and even defining the multidimensional spaces used in predictive models. You’ll learn about norms, unit vectors, orthogonal and orthonormal vectors, and visualize these structures intuitively through graphs. Next, we explore matrices, which are widely used to represent data and process large volumes of information. We’ll cover key matrix properties, norms, transposition, inversion, and essential decompositions for diverse applications. These concepts are critical for neural networks, linear regressions, and dimensionality reduction techniques. The fourth section focuses on operations involving vectors and matrices. We’ll study matrix multiplication, dot and cross products, reduction operations, and the cosine rule—essential tools for calculating data similarity and efficiently manipulating mathematical structures. Then, we tackle linear tr
Disclaimer:The second of this course demonstrates techniques using Jupyter Notebooks from Anaconda. You are welcome to follow along (however), it is not required to do these exercises to complete this course. If you are a Udemy Business user, please check with your employer before downloading software.Welcome!: Thank you all for the huge response to this emerging course! We are delighted to have over 20,000 students in over 160 different countries. I'm genuinely touched by the overwhelmingly positive and thoughtful reviews. It's such a privilege to share and introduce this important topic with everyday people in a clear and understandable way. I'm also excited to announce that I have created real closed captions for all course material, so weather you need them due to a hearing impairment, or find it easier to follow long (great for ESL students!)... I've got you covered. Most importantly: To make this course "real", we've expanded. In November of 2018, the course went from 41 lectures and 8 sections, to 62 lectures and 15 sections! We hope you enjoy the new content! Unlock the secrets of understanding Machine Learning for Data Science!In this introductory course, the “Backyard Data Scientist” will guide you through wilderness of Machine Learning for Data Science. Accessible to everyone, this introductory course not only explains Machine Learning, but where it fits in the “techno sphere around us”, why it’s important now, and how it will dramatically change our world today and for days to come. Our exotic journey will include the core concepts of:The train wreck definition of computer science and one that will actually instead make sense. An explanation of data that will have you seeing data everywhere t
A Álgebra Linear é um dos fundamentos essenciais para quem deseja atuar com Ciência de Dados e Inteligência Artificial. Seja na manipulação de grandes conjuntos de dados, na construção de modelos preditivos ou na implementação de algoritmos de Machine Learning, a compreensão dessa área matemática é indispensável. Este curso foi estruturado para oferecer uma abordagem intuitiva e prática dos conceitos mais importantes, combinando teoria e implementações em Python para garantir que você aprenda aplicando.O curso é dividido em seis seções, cada uma abordando um aspecto fundamental da Álgebra Linear. Começamos com uma introdução aos conceitos básicos, onde explicamos a importância dessa disciplina e como ela se conecta com Data Science e Machine Learning. Aqui, são apresentados elementos como escalares, vetores, matrizes e tensores, além da instalação das bibliotecas necessárias para a programação em Python. Também exploramos a representação de dados e como os sistemas lineares são utilizados para resolver problemas matemáticos.Na segunda seção, aprofundamos o estudo dos vetores, suas propriedades e aplicações. Vetores são componentes fundamentais na manipulação de dados, na normalização de variáveis e até mesmo na definição de espaços multidimensionais usados em modelos preditivos. Você aprenderá sobre normas, vetores unitários, vetores ortogonais e ortonormais, além de visualizar essas estruturas de maneira intuitiva através de gráficos.Em seguida, exploramos as matrizes, que são amplamente utilizadas na representação de dados e no processamento de grandes volumes de informações. Conheceremos as principais propriedades das matrizes, suas normas, transposição, inversão e decomposições fundamentais para diversas aplicações. Esses conceitos são indispensáveis para o funcionamento de redes neurais, regressões lineares e técnicas de redução de dimensionalidade.A quarta seção é dedicada às operações envolvendo vetores e matrizes</st
This course from the University of London provides an in-depth look at the role of data science and AI in human resources. It covers how machine learning algorithms can be applied to workforce analytics, including behavioral and performance assessments. The curriculum explores the ethical implications of using AI in hiring and employee management.
Comprehensive preparation for data science interviews covering statistics, ML, SQL, and case studies.
Learn how to use R to implement linear regression, one of the most common statistical modeling approaches in data science. The course covers the basics of linear regression and its application in real-world scenarios.
Part of the Data Science Professional Certificate, this course covers popular machine learning algorithms, principal component analysis, and regularization. You will build a movie recommendation system.
This course from Columbia University introduces the fundamental concepts of statistical thinking for data science. It covers topics such as probability, sampling, estimation, and hypothesis testing. The course emphasizes the practical application of these concepts to real-world data problems.
A MicroMasters program that includes a course on machine learning fundamentals, covering tree-based models and ensemble methods.
This program from UC Berkeley provides a comprehensive introduction to data science, including data wrangling and cleaning, using Python.
This program teaches how to use Python for data analysis in a business context, including data wrangling and visualization for EDA.
This course covers the process of exploring and analyzing data, from understanding a dataset to incorporating findings into a data science workflow. You will use Python to summarize, validate, and clean data.
This course teaches how to use graphical and numerical techniques in R to uncover the structure of your data and identify interesting relationships and unusual observations.
A project-based course where you'll apply EDA techniques to a real-world dataset of UN voting records, using R packages like dplyr and ggplot2.
A hands-on course that covers various aspects of feature engineering for both categorical and continuous variables, as well as text data.
Hello there,Machine learning python, python, machine learning, Django, ethical hacking, python bootcamp, data analysis, machine learning python, python for beginners, data science, machine learning, django:Welcome to the “Python: Machine Learning, Deep Learning, Pandas, Matplotlib” course. Python, Machine Learning, Deep Learning, Pandas, Seaborn, Matplotlib, Geoplotlib, NumPy, Data Analysis, TensorflowPython instructors on Udemy specialize in everything from software development to data analysis and are known for their effective, friendly instruction for students of all levels.Machine learning isn’t just useful for predictive texting or smartphone voice recognition. Machine learning is constantly being applied to new industries and new problems. Whether you’re a marketer, video game designer, or programmer, this course is here to help you apply machine learning to your work.In this course, we will learn what is Deep Learning and how does it work.This course has suitable for everybody who is interested in Machine Learning and Deep Learning concepts in Data Science.First of all, in this course, we will learn some fundamental stuff of Python and the Numpy library. These are our first steps in our Deep Learning journey. After then we take a little trip to Machine Learning Python history. Then we will arrive at our next stop. Machine Learning in Python Programming. Here we learn the machine learning concepts, machine learning a-z workflow, models and algorithms, and what is neural network concept. After then we arrive at our next stop. Artificial Neural network. And now our journey becomes an adventure. In this adventure we'll enter the Keras world then we exit the Tensorflow world. Then we'll try to under
Learn to extract useful information from text and format it for machine learning models. The course covers POS tagging, named entity recognition, readability scores, and implementing tf-idf models using scikit-learn and spaCy.
Learn various feature engineering techniques in R to develop meaningful features. The course covers changing categorical features to numerical, manipulating numeric features, and transformation techniques like Box-Cox.
This course focuses on data wrangling and feature engineering with large datasets using PySpark. It covers preparing and cleaning data, creating new features, and building and evaluating a machine learning model.
Learn the fundamentals of optimization and how to apply them to data science problems using Python.
This course focuses on the pandas library, a powerful tool for data manipulation and analysis in Python. It is a great precursor to learning about regression and other machine learning techniques.
This course teaches the fundamentals of statistical thinking using Python. You will learn to perform exploratory data analysis, think probabilistically, and understand the core concepts of statistical inference.
This tutorial explains the process of gathering, collecting, and transforming raw data into another format for better understanding and analysis using the Pandas framework in Python. It covers data exploration, handling missing values, reshaping data, and filtering.
A career track focused on using R for data analysis, covering data manipulation, visualization, and case studies to build practical EDA skills.
This training focuses on managing features for machine learning models to save time and improve consistency. It teaches best practices for feature engineering and how to reuse features across projects using a feature store.
This course provides a step-by-step guide to using Python for data analysis, including data cleaning, manipulation, and visualization for EDA.
This is the first in a series of courses on statistics foundations from LinkedIn Learning. This course covers the basics of descriptive statistics, including measures of central tendency and variability. The course is designed for beginners.
A collection of courses on LinkedIn Learning focused on optimization techniques for machine learning and data science.
This course introduces the tools and techniques used in applied data science, including methods for data cleaning and preparation.
This course covers key mathematical concepts for machine learning and AI, with a focus on implementation using R.
An interactive course that teaches the fundamentals of EDA in Python, covering summary statistics, data visualization, and preparing data for machine learning models.
Khan Academy offers a comprehensive set of free online lessons on statistics and probability. The topics range from basic descriptive statistics to more advanced concepts like hypothesis testing and regression. The platform's interactive exercises and quizzes are excellent for reinforcing learning.
An introductory course that covers the principles of data analysis and data visualization. You'll learn how to use statistical analysis to guide business decisions.
This course from the University of Leeds provides an introduction to statistical thinking and data analysis using the R programming language. You will learn about data visualization, summary statistics, and hypothesis testing.
Machine learning is a field of computer science that gives computers the ability to learn without being explicitly programmed. Machine Learning is the most in-demand and Highest Paying job of 2017 and the same trend will follow for the coming years. With an average salary of $120,000 (Glassdoor and Indeed), Machine Learning will help you to get one of the top-paying jobs. This course is designed for both complete beginners with no programming experience or experienced developers looking to make the jump to Data Science! At the end of the course you will be able to Master Machine Learning using PythonDemystifying Artificial Intelligence, Machine Learning, Data ScienceExplore & Define a ML use caseML Business Solution BlueprintExplore Spyder, Pandas and NumPyImplement Data EngineeringExploratory Data Analysis Introduction to Statistics and Probability DistributionsLearn Machine Learning MethodologyUnderstand Supervised Learning Supervised LearningImplement Simple & Multiple Linear RegressionDecision TreesRegression & Classification Model EvaluationCross Validation, Hyperparameter Ensemble ModelingRandom Forest & XGBoost Learning Machine Learning is a definite way to advance your career and will open doors to new Job opportunities. 100% MONEY-BACK GUARANTEE This course comes with a 30-day money back guarantee. If you're not happy, ask for a refund, all your money back, no questions asked. Feel forward to have a look at course description and demo videos and we look forward to see you inside.
A hybrid program for energy engineers to apply data science and AI techniques. It combines theoretical knowledge with practical use cases, focusing on analyzing, forecasting, and optimizing energy use with Python.
The "Machine Learning and Data Science Diploma using Python" is a unique program that enriches Arabic content in the field of artificial intelligence. It's a comprehensive training course centered on interaction, practical application, thorough explanation, and detailed algorithms starting from scratch. The course ensures a robust understanding of algorithms leading to practical implementation, aiding in building strong models applicable to real-life scenarios. It caters to beginners and anyone intrigued by data science, its analysis, and the study of machine learning and artificial intelligence, including Data Analysts, Data Scientists, Machine Learning Engineers, and AI EngineersThis diploma not only equips you with the proficiency to learn machine learning and data science through coding but also ensures a solid grasp of the mathematics behind the algorithms. This understanding is essential for fine-tuning algorithmic parameters effectively.Topics covered in this diploma include:Definition of DiplomaLinear Algebra for Machine LearningData Exploration and PreparationProbability and Statistics for Data ScienceNumPy LibraryPandas LibraryVisualization Libraries (matplotlib, seaborn)Introduction to Machine Learning ConceptsNumerical OptimizationRegression with Different MethodsEnd-to-End Machine Learning ProjectsRegularizationKaggle PlatformClassification (Binary, Multiclass, different metrics)K-Nearest NeighborsNaive BayesLogistic RegressionSupport Vector MachinesDecision TreesEnsemble Learning (Voting, Bagging, Boosting)Hyperparameters TuningPractical ProjectsWhat C
If you want to learn the process to detect whether a person is wearing a face mask using AI and Machine Learning algorithms then this course is for you.In this course I will cover, how to build a Face Mask Detection model to detect and predict whether a person is wearing a face mask or not in both static images and live video streams with very high accuracy using Deep Learning Models. This is a hands on project where I will teach you the step by step process in creating and evaluating a machine learning model using CNN and OpenCV.This course will walk you through the initial data exploration and understanding, Data Augumentation, Data Generators, customizing pretrained Models like MobileNetV2, model building and evaluation. Then using the trained model to detect the presence of face mask in images and video streams.I have splitted and segregated the entire course in Tasks below, for ease of understanding of what will be covered.Task 1 : Project Overview.Task 2 : Introduction to Google Colab.Task 3 : Understanding the project folder structure.Task 4 : Understanding the dataset and the folder structure.Task 5 : Loading the data from Google Drive.Task 6 : Importing the Libraries.Task 7 : About Config and Resize File.Task 8 : Some common Methods and UtilitiesTask 9 : About Data Augmentation.Task 10 : Implementing Data Augmentation techniques.Task 11 : About Data Generators.Task 12 : Implementing Data Generators.Task 13 : About Convolutional Neural Network (CNN).Task 14 : About OpenCV.Task 15 : Understanding pre-trained models.Task 1
A comprehensive and free resource for learning foundational math topics at your own pace. Khan Academy offers extensive video libraries and practice exercises for linear algebra, differential and integral calculus, and probability and statistics.
For those with a basic understanding of SQL, this course delves into more advanced querying techniques that can be used for in-depth data exploration.
Data is at the heart of our digital economy and data science has been ranked as the hottest profession of the 21st century. Whether you are new to the job market or already in the workforce and looking to upskill yourself, this five course Data Science with Python Professional Certificate program is aimed at preparing you for a career in data science and machine learning. No prior computer programming experience required!You will start by learning Python, the most popular language for data science. You will then develop skills for data analysis and data visualization and also get a practical introduction in machine learning. Finally, you will apply and demonstrate your knowledge of data science and machine learning with a capstone project involving a real life business problem.This program is taught by experts and focused on hands-on learning and job readiness. As such you will work with real datasets and will be given no-charge access to tools like Jupyter notebooks in the IBM Cloud. You will utilize popular Python toolkits and libraries such as pandas, numpy, matplotlib, seaborn, folium, scipy, scikitlearn, and more.Start developing data and analytical skills today and launch your career in data science!This course is highly practical but it won't neglect the theory. we'll start with python basics, and then understand the complete concept of environment , variables , loops , conditions and more advance concept of python programming and machine learning and we install the needed software (on Windows, Linux and Mac OS X), then we'll dive and start python programming straight away. From here onward you'll learn everything by example, by analyzing and practicing different concepts such as operator, operand, conditional statements, looping ,data management .etc, so we'll never have any boring dry theoretical lectures.The course is divided into a number of sections, each section covers a complete python programming field and complete machine lear
Learn Data Science and Machine Learning with R
This course focuses on cleaning, normalizing, and creating features to improve the performance of machine learning models.
Welcome to the Data Science Projects - Data Analysis & Machine Learning course. Data science projects course series is made from the projects that i built for my website and courses. This is not a beginner level course. This course is built for the students who learned python for data science and wants to apply what they learned but don't know where to start or for the ones who wants to practice and test their knowledge. In this course we will be building 4 data science projects which are going to be Regression, Classification, Time-Series and NLP projects. We will be covering Linear Regression, Logistic Regression, K Nearest Neighbors, Support Vector Machines, Decision Tree, Random Forests, ARIMA, Text Classification and Sentiment Analysis as machine learning algorithms in our course. All projects are going to be end to end so it will be easy to follow what we are doing step by step and I will be giving short explanations for the codes that i write. Main motivation of this course is teaching students how to do projects by theirselves. By taking this course you will be experienced in data science projects and you can apply the codes by yourself in order to build yor own project. Building projects is one of the most important ways to get into and learn Data Science. Thanks for reading, if you are interested in Data Science lets meet in the first lesson.
Embark on a Journey into the World of Data Science and Machine Learning!Welcome to the Mastering Data Science & Machine Learning Fundamentals for Beginners course, a comprehensive and illuminating exploration of the captivating realms of Data Science and Machine Learning!In today's rapidly evolving landscape, Data Science and Machine Learning are not mere buzzwords; they are the driving forces behind innovation in diverse domains, including IT, security, marketing, automation, and healthcare. These technologies underpin the very foundations of modern conveniences, from email spam filters and efficient Google searches to personalized advertisements, precise weather forecasts, and uncanny sports predictions. This course is your gateway to understanding the magic behind these advancements. Designed with students and learners in mind, this course aims to demystify complex machine learning algorithms, statistics, and mathematics. It caters to those curious minds eager to solve real-world problems using the power of machine learning. Starting with the fundamentals, the course progressively deepens your understanding of a vast array of machine learning and data science concepts. No prior knowledge or experience is required to embark on this enriching learning journey. This course not only simplifies intricate machine learning concepts but also provides hands-on guidance on implementing them successfully. Our esteemed instructors, experts in data science and AI, are your trusted guides throughout this course. They are committed to making each concept crystal clear, steering away from confusing mathematical notations and jargon, and ensuring that everything is explained in plain English. Here's a glimpse of what you'll delve into:Mastering Machine Learning FundamentalsDistinguishing between Supervised and Unsupervised L
You’ve just stumbled upon the most complete, in-depth Neural Networks for Regression course online.Whether you want to:- build the skills you need to get your first data science job- move to a more senior software developer position- become a computer scientist mastering in data science- or just learn Neural Networks to be able to create your own projects quickly....this complete Neural Networks for Regression Masterclass is the course you need to do all of this, and more.This course is designed to give you the Neural Network skills you need to become a data science expert. By the end of the course, you will understand the Multilayer Perceptron Neural Networks for Regression method extremely well and be able to apply them in your own data science projects and be productive as a computer scientist and developer.What makes this course a bestseller?Like you, thousands of others were frustrated and fed up with fragmented Youtube tutorials or incomplete or outdated courses which assume you already know a bunch of stuff, as well as thick, college-like textbooks able to send even the most caffeine-fuelled coder to sleep.Like you, they were tired of low-quality lessons, poorly explained topics, and confusing info presented in the wrong way. That’s why so many find success in this complete Neural Networks for Regression course. It’s designed with simplicity and seamless progression in mind through its content.This course assumes no previous data science experience and takes you from absolute beginner core concepts. You will learn the core dimensionality reduction skills and master the Multilayer Perceptron (MLP) technique. It's a one-stop shop to learn Multilayer Networks. If you want to go beyond the core content you can do so at any time.What if I have questions?As if this course wasn’t complete enough, I
Are you preparing for a career in Data Science or Machine Learning? Mastering the technical skills is crucial, but excelling in interviews requires more than just technical knowledge. Our course, "Data Science and Machine Learning: Top Interview Questions," equips you with the essential insights and strategies to ace your interviews with confidence.In this comprehensive course, we delve into the core concepts and practical techniques that are frequently tested in interviews for data science and machine learning roles. From feature engineering and model evaluation to unsupervised learning and ensemble methods, we cover a wide range of topics essential for success in interviews.Through a series of curated hands-on exercises, you will gain proficiency in:Crafting effective feature engineering and selection strategies to optimize model performance.Understanding various performance metrics and validation techniques to assess model accuracy and generalization.Exploring unsupervised learning algorithms and ensemble methods for tackling complex data problems.Leveraging cross-validation strategies to ensure robustness and reliability of your machine learning models.Moreover, our course goes beyond technical skills to offer invaluable interview insights, tips, and best practices. You'll learn how to articulate your thought process, communicate your solutions effectively, and tackle interview questions with clarity and confidence.Whether you're a seasoned professional or a beginner in the field, "Data Science and Machine Learning: Top Interview Questions" provides you with the knowledge and skills needed to excel in your next interview and kickstart your career in data science and machine learning. Enroll now and take the next step towards your dream job!
This LinkedIn Learning course provides a practical introduction to hypothesis testing for data science. You will learn about the different types of hypothesis tests and how to apply them to real-world data. The course includes hands-on exercises using Python.
This course provides a foundational understanding of what data analytics is and the role of a data analyst. It covers topics like thinking like an analyst and gathering useful data.
This Course Cover Topics such as Python Basic Concepts, Python Advance Concepts, Numpy Library , Scipy Library , Pandas Library, Matplotlib Library, Seaborn Library, Plotlypy Library, Introduction to Data Science and steps to start Project in Data Science, Case Studies of Data Science and Machine Learning Algorithms such as Linear, Logistic, SVM, NLPThis is best course for any one who wants to start career in data science. with machine Learning.Data science continues to evolve as one of the most promising and in-demand career paths for skilled professionals. Today, successful data professionals understand that they must advance past the traditional skills of analyzing large amounts of data, data mining, and programming skills. In order to uncover useful intelligence for their organizations, data scientists must master the full spectrum of the data science life cycle and possess a level of flexibility and understanding to maximize returns at each phase of the process.The course provides path to start career in Data Analysis. Importance of Data, Collection of Data with Case Study is covered. Machine Learning Types such as Supervise Learning, Unsupervised Learning, are also covered. Machine Learning concept such as Train Test Split, Machine Learning Models, Model Evaluation are also covered. This Course will design to understand Machine Learning Algorithms with case Studies using Scikit Learn Library. The Machine Learning Algorithms such as Linear Regression, Logistic Regression, SVM, K Mean, KNN, Naïve Bayes, Decision Tree and Random Forest are covered with case studies
85% of data science problems are solved using exploratory data analysis (EDA), visualization, regression (linear & logistic). So naturally, 85% of the interview questions come from these topics as well.This concise course, created by UNP, focuses on what matter most. This course will help you create a solid foundation of the essential topics of data science. With this solid foundation, you will go a long way, understand any method easily, and create your own predictive analytics models.At the end of this course, you will be able to:independently build machine learning and predictive analytics modelsconfidently appear for exploratory data analysis, foundational data science, python interviews demonstrate mastery in exploratory data science and pythondemonstrate mastery in logistic and linear regression, the workhorses of data scienceThis course is designed to get students on board with data science and make them ready to solve industry problems. This course is a perfect blend of foundations of data science, industry standards, broader understanding of machine learning and practical applications. Special emphasis is given to regression analysis. Linear and logistic regression is still the workhorse of data science. These two topics are the most basic machine learning techniques that everyone should understand very well. In addition, concepts of overfitting, regularization etc., are discussed in detail. These fundamental understandings are crucial as these can be applied to almost every machine learning method. This course also provides an understanding of the industry standards, best practices for formulating, applying and maintaining data-driven solutions. It starts with a basic explanation of Machine Learning concepts and how to set up your environment. Next, data wrangling and EDA with Pandas are discussed with hands-on
The demand for Data Scientists is immense. In this course, you'll learn how you can play a part in fulfilling this demand and build a long, successful career for yourself.The #1 goal of this course is clear: give you all the skills you need to be a Data Scientist who could start the job tomorrow... within 6 weeks.With so much ground to cover, we've stripped out the fluff and geared the lessons to focus 100% on preparing you as a Data Scientist. You’ll discover:The structured path for rapidly acquiring Data Science expertiseHow to build your ability in statistics to help interpret and analyse data more effectivelyHow to perform visualizations using one of the industry's most popular toolsHow to apply machine learning algorithms with Python to solve real world problemsWhy the cloud is important for Data Scientists and how to use itAlong with much more. You'll pick up all the core concepts that veteran Data Scientists understand intimately. Use common industry-wide tools like SQL, Tableau and Python to tackle problems. And get guidance on how to launch your own Data Science projects.In fact, it might seem like too much at first. And there is a lot of content, exercises, study and challenges to get through. But with the right attitude, becoming a Data Scientist this quickly IS possible!Once you've finished Introduction to Data Science, you’ll be ready for an incredible career in a field that's expanding faster than almost anything else in the world.Complete this course, master the principles, and join the ranks of Data Scientists all around the world.
This course is the best for mastering the Data Science and Machine Learning from basics. If you are new to Data Science and Machine Learning, This course will help you to learn everything from Basics. This course is designed as a comprehensive and accessible introduction to two of the most transformative fields in the modern digital era. Tailored specifically for those with little to no prior experience, this course aims to demystify the core concepts of data science and machine learning while building a strong foundation for future exploration. Whether you're a student, professional, or enthusiast looking to transition into the tech industry, this course provides the essential knowledge and practical skills to get started.The course begins with a clear overview of what data science is, covering the data lifecycle—from collection and cleaning to analysis and visualization. You are introduced to key tools used in the industry, including Python programming, Jupyter notebooks, and essential libraries like Pandas, NumPy, and Matplotlib. With a hands-on approach, students engage in real-world data manipulation exercises that emphasize clarity and intuition over complexity.By the end of the course, You will have a solid understanding of how data science and machine learning work together to extract insights and drive innovation. They will be equipped with the confidence and skills to explore more advanced topics or pursue further studies in data analysis, machine learning, or artificial intelligence. This beginner-friendly course lays the groundwork for a successful journey into the exciting world of data science, empowering learners to unlock the value hidden in data and make informed, intelligent decisions.
Ready to master machine learning in Python and launch your career in data science? This hands-on, comprehensive course is the definitive guide to becoming a skilled practitioner, taking you from the fundamentals of Scikit-learn to building powerful, real-world AI models.You'll gain a deep understanding of Scikit-learn, Python's most essential and widely used machine learning library. By focusing on practical application, you will not only learn the algorithms but also how to implement the full data science workflow—a critical skill for employers.Master the Complete Data Science and Machine Learning WorkflowThis masterclass will teach you to:Prepare and Preprocess complex, real-world datasets using Python (Pandas & NumPy) and the integrated tools within Scikit-learn.Build Powerful Models using core Machine Learning algorithms: Linear Regression, Logistic Regression, Decision Trees, Random Forests, and Support Vector Machines (SVMs).Optimize Performance with advanced techniques like Regularization, Cross-Validation, and Principal Component Analysis (PCA) for Dimensionality Reduction.Apply both Supervised and Unsupervised Learning to solve diverse business problems in data science.Understand the AI Landscape by covering the basics of Neural Networks and their role in Deep Learning.Work through short coding exercises and large, project-style assignments, mirroring the daily work of a professional data scientist.Why Learn Machine Learning with Us?We're
This course provides a comprehensive introduction to data wrangling with the Pandas library in Python, covering essential data cleaning and transformation techniques.
DescriptionTake the next step in your cloud-powered AI and machine learning journey! Whether you're an aspiring data scientist, ML engineer, developer, or business leader, this course will equip you with the skills to harness AWS for scalable, real-world data science and machine learning solutions. Learn how services like SageMaker, Glue, Redshift, and QuickSight are transforming industries through data-driven intelligence, automation, and predictive analytics.Guided by hands-on projects and real-world use cases, you will:• Master foundational data science workflows and machine learning principles using AWS cloud services.• Gain hands-on experience managing data with S3, Redshift, Glue, and building models with AWS SageMaker.• Learn to train, optimize, and deploy ML models at scale using advanced tools like AutoML, hyperparameter tuning, and deep learning frameworks.• Explore industry applications in e-commerce, finance, healthcare, and manufacturing using AWS AI/ML solutions.• Understand best practices for cost management, security, and automation in cloud-based data science projects.• Position yourself for a competitive advantage by building in-demand skills at the intersection of cloud computing, AI, and machine learning.The Frameworks of the Course· Engaging video lectures, case studies, projects, downloadable resources, and interactive exercises— designed to help you deeply understand how to leverage AWS for data science and machine learning applications.· The course includes industry-specific case studies, cloud-native tools, reference guides, quizzes, self-paced assessments, and hands-on labs to strengthen your ability to build, manage, and deploy ML models using AWS services.· In the first part of the course, you’ll learn the basics of data science, machine learning, and how AWS enables scalable cloud-based solutions.· In
This course covers various feature engineering techniques to get the best results from a machine learning model, including feature selection (filter, wrapper, and embedded methods) and feature extraction from image and text data.
Welcome to the exciting world of Matrix Calculus, a fundamental tool for understanding and solving problems in machine learning and data science. In this course, we will dive into the powerful mathematics that underpin many of the algorithms and techniques used in these fields. By the end of this course, you'll have the knowledge and skills to navigate the complex landscape of derivatives, gradients, and optimizations involving matrices.Course Objectives:Understand the basics of matrix calculus, linear and quadratic forms, and their derivatives.Learn how to utilize the famous Matrix Cookbook for a wide range of matrix calculus operations.Gain proficiency in optimization techniques like gradient descent and Newton's method in one and multiple dimensions.Apply the concepts learned to real-world problems in machine learning and data science, with hands-on exercises and Python code examples.Why Matrix Calculus? Matrix calculus is the language of machine learning and data science. In these fields, we often work with high-dimensional data, making matrices and their derivatives a natural representation for our problems. Understanding matrix calculus is crucial for developing and analyzing algorithms, building predictive models, and making sense of the vast amounts of data at our disposal.Section 1: Linear and Quadratic Forms In the first part of the course, we'll explore the basics of linear and quadratic forms, and their derivatives. The linear form appears in all of the most fundamental and popular machine learning models, including linear regression, logistic regression, support vector machine (SVM), and deep neural networks. We will also dive into quadratic forms, which are fundamental to understanding optimization problems, which appear in regression, portfolio optimization in finance, signal processing, and control theory.The Mat
In today's data-driven world, the ability to harness and interpret data is not just a valuable skill but a crucial advantage. Whether you're an aspiring data scientist, a seasoned professional looking to expand your skill set, or an entrepreneur aiming to leverage data for strategic decisions, our comprehensive course on data science offers a transformative learning experience.Course OverviewOur course begins with a foundational exploration of data science, introducing you to its principles and importance in various industries. You'll delve into the distinctions between data science, data engineering, and data analysis, gaining a clear understanding of their respective roles and applications. Through real-world case studies and examples, you'll discover how data science drives innovation and impacts decision-making processes across different sectors.Essential Tools and TechnologiesTo equip you with the tools needed for effective data analysis, the course covers essential programming languages such as Python . Whether you're manipulating data with Pandas, performing numerical operations with NumPy, or creating insightful visualizations with Matplotlib and Seaborn, you'll develop a versatile skill set that forms the backbone of data science projects.Practical Skills DevelopmentA significant focus of the course is hands-on learning. You'll gain practical experience in gathering, cleaning, and analyzing data from diverse sources. Through interactive exercises and projects, you'll hone your ability to transform raw data into actionable insights that drive business decisions.Environment Setup and Best PracticesNavigating the data science environment can be daunting, especially for beginners. That's why we guide you through the setup of Python and Jupyter Notebook on both Windows and macOS, ensuring you're equipped with the right tools from the start. You'll learn to create and manage virtual environments, enhancing your ability to work efficiently and mai
Unlock the Power of Data Science SkillsIn today's data-driven world, the ability to harness and interpret data is not just a valuable skill but a crucial advantage. Whether you're an aspiring data scientist, a seasoned professional looking to expand your skill set, or an entrepreneur aiming to leverage data for strategic decisions, our comprehensive course on data science offers a transformative learning experience.Course OverviewOur course begins with a foundational exploration of data science, introducing you to its principles and importance in various industries. You'll delve into the distinctions between data science, data engineering, and data analysis, gaining a clear understanding of their respective roles and applications. Through real-world case studies and examples, you'll discover how data science drives innovation and impacts decision-making processes across different sectors.Essential Tools and TechnologiesTo equip you with the tools needed for effective data analysis, the course covers essential programming languages such as Python and R. Whether you're manipulating data with Pandas, performing numerical operations with NumPy, or creating insightful visualizations with Matplotlib and Seaborn, you'll develop a versatile skill set that forms the backbone of data science projects.Practical Skills DevelopmentA significant focus of the course is hands-on learning. You'll gain practical experience in gathering, cleaning, and analyzing data from diverse sources. You'll hone your ability to transform raw data into actionable insights that drive business decisions.Environment Setup and Best PracticesNavigating the data science environment can be daunting, especially for beginners. That's why we guide you through the setup of Python and Jupyter Notebook on both Windows and macOS, ensuring you're equipped with the right tools from the start. You'll learn to create and manage virtual environments, enhancing your abili
Welcome to our Machine Learning Projects course! This course is designed for individuals who want to gain hands-on experience in developing and implementing machine learning models. Throughout the course, you will learn the concepts and techniques necessary to build and evaluate machine-learning models using real-world datasets.We cover basics of machine learning, including supervised and unsupervised learning, and the types of problems that can be solved using these techniques. You will also learn about common machine learning algorithms, such as linear regression, k-nearest neighbors, and decision trees.ML Prerequisites LecturesPython Crash Course: It is an introductory level course that is designed to help learners quickly learn the basics of Python programming language.Numpy: It is a library in Python that provides support for large multi-dimensional arrays of homogeneous data types, and a large collection of high-level mathematical functions to operate on these arrays.Pandas: It is a library in Python that provides easy-to-use data structures and data analysis tools. It is built on top of Numpy and is widely used for data cleaning, transformation, and manipulation.Matplotlib: It is a plotting library in Python that provides a wide range of visualization tools and support for different types of plots. It is widely used for data exploration and visualization.Seaborn: It is a library built on top of Matplotlib that provides higher-level APIs for easier and more attractive plotting. It is widely used for statistical data visualization.Plotly: It is an open-source library in Python that provides interactive and web-based visualizations. It supports a wide range of plots and is widely used for creating interactive dashboards and data visualization for the web.
Master Machine Learning & AI Engineering — From Data Analytics to Agentic AI SolutionsLaunch your career in AI with a comprehensive, hands-on course that takes you from beginner to advanced. Learn Python, data science, classical machine learning, and the latest in AI engineering—including generative AI, transformers, and LLM agents / agentic AI.Why This Course?Learn by DoingWith over 145 lectures and 21+ hours of video content, this course is built around practical Python projects and real-world use cases—not just theory.Built for the Real WorldLearn how companies like Google, Amazon, and OpenAI use AI to drive innovation. Our curriculum is based on skills in demand from leading tech employers.No Experience? No ProblemStart from scratch with beginner-friendly lessons in Python and statistics. By the end, you’ll be building intelligent systems with cutting-edge AI tools.A Structured Path from Beginner to AI Engineer1. Programming FoundationsStart with a crash course in Python, designed for beginners. You’ll learn the language fundamentals needed for data science and AI work.2. Data Science and StatisticsBuild a solid foundation in data analysis, visualization, descriptive and inferential statistics, and feature engineering—essential skills for working with real-world datasets.3. Classical Machine LearningExplore supervised and unsupervised learning, including linear regression, decision trees, SVMs, clustering, ensemble models, and reinforcement learning.4. Deep Learning with TensorFlow and KerasUnderstand neural networks, convolutional neural networks (CNNs), and recurrent neural networks (RNNs), using real code examples and exercises.5. Advanced AI Engineering and Generative AIGo beyond traditional ML to learn the latest AI tools and techniques:Transform
This 200+ day globally recognized, industry-focused bootcamp is your all-in-one training for mastering Artificial Intelligence, Data Science, Machine Learning (ML), Deep Learning (DL), and Generative AI (GenAI) from beginner to expert level with simplicity and depth. Designed for aspiring data scientists, software engineers, AI professionals, and innovation leaders, this course offers a blend of foundational theory, programming practice, machine learning applications, and real-world project. The curriculum aligns with current global AI trends and industry hiring standards.Whether you're targeting top roles in global tech firms, launching an AI-powered startup, or aiming to build a strong data science portfolio this bootcamp ensures you stay ahead in the global AI race.Core Modules (SEO Keywords: Data Science, Python, AI, Machine Learning, Generative AI)Data Science FundamentalsData Science Sessions Part 1 & 2 – Foundation of modern data science methodologies and approaches.Data Science vs Traditional Analysis – Comparing data science techniques with conventional statistical methods.Data Scientist Journey Parts 1 & 2 – Skills, roles, and global career pathways.Data Science Process Overview – End-to-end project lifecycle and workflows.Programming Essentials (Python & R for Data Science)Introduction to Python for Data Science – Syntax, structures, and data analysis workflows.Python Libraries: Numpy, Pandas, Matplotlib, Seaborn – Building blocks for data processing and visualization.Introduction to R – Fundamentals of R programming for statistics and machine learning.Data Structures and Functions – Hands-on practice in Python & R for real-world data operations.Data Collection & PreprocessingMethods of Data Collection – Surveys, A
Du möchtest Machine Learning verstehen und dich zum Data Scientist ausbilden lassen? Dann ist dieser Kurs genau das Richtige für Dich!Komplettpaket Machine Learning: Alle Grundlagen in Python und Machine Learning Algorithmen mitsamt Evaluation und Feature Engineering. Dabei werden Modelle aus dem Supervised Learning und Clustering betrachtet, sowie das Deep Learning und der KI. Der Fokus liegt auf den aktuellen Themen Reinforcement Learning und Natural Language Processing.Hast du dich schonmal gefragt wie es wäre den aktuell relevantesten Skill zu lernen und...von KI Trends zu profitieren?Möglichkeit auf richtig gut bezahlte Jobs zu haben?mit Python komplexe Probleme spielerisch zu lösen?in der Welt der Künstlichen Intelligenz und Deep Learning mitzuwirken?All das ist möglich im Leben eines Data Scientist. Und mit diesem Kurs bekommst du die vollständige Ausbildung dazu.Abschnitt 1: IntroductionIm ersten Abschnitt des Kurses "Machine Learning Campus: Data Science mit Python" erhältst du eine Einführung in den Kurs. Die erste Lektion bietet einen Überblick über den gesamten Kurs, damit du die Struktur und die wichtigsten Themenbereiche kennenlernen kannst. In der zweiten Lektion stellt sich der Dozent vor und teilt seine Motivation sowie seine Ziele für den Kurs mit, um dir einen persönlichen Einblick zu geben.Abschnitt 2: VorarbeitIn diesem Abschnitt legst du das Fundament für die Arbeit mit Python und den notwendigen Tools. Zunächst lernst du, wie du Python und PyCharm einrichtest. Die darauf folgenden Lektionen vertiefen deine grundlegenden Kenntnisse in Python und führen dich schrittweise in die Welt der Datenwissenschaft ein. Der Abschnitt schließt mit der Einführung in wichtige Bibliotheken wie Numpy, Pandas, Mat
HERE IS WHY YOU SHOULD TAKE THIS COURSEThis course is complete guide to both Supervised and Unsupervised learning using Python.This means,this course covers all the main aspects of practical Data Science and if you take this course you can do away withtaking other course or buying books on python based Data science .In this age of Big data companies across the globe use python to sift through the Avalache of information at their disposal..By becoming proficient in unsupervised and supervised learning in python,you can give your company a competitive edge and boost your careeer to the next level.LEARN FROM AN EXPERT DATA SCIENCE WITH 3+ YEARS OF EXPERIENCE:My Name is Aakash Singh and I had also recently published my Research Paper in INTERNATIONAL JOURNAL IJSR on Machine Learning Dataset.This course will give you robust grounding in the main aspects of Machine Learning-Clustering and Classification.NO PRIOR PYTHON OR STATISTICS OR MACHINE LEARNING KNOWLEDGE IS REQUIRED:you will start by absorbing the most valuable python Data science basics and techniques.I use easy to understand hands on methods to simplify and address even the most difficult conceptsin python.My course will help you to implement the methods using real data obtained from different sources.After using this course you will easily use package like numpy,pandas,and mathplotlib to work with real data in python..We will go through lab section on jupyter notebook terminal .we will go through lots of real life examples for icreasing practical side knowledge of the programming and we should not neglect theory section als,which is essential for this course,by the end of this course you will be able to code in python language and feel confident with machine learning and you will also be able to create your own program amd implement were you want.Most
Embark on a transformative journey into the world of Data Analytics, Data Science, and Machine Learning, where you’ll learn the essential skills, tools, and mindsets to become a successful data professional. This comprehensive program is designed to take you from beginner to advanced, equipping you with the knowledge and practical experience needed to excel in the field.Whether you’re looking to kickstart a career in data analytics or enhance your existing skills, this course will empower you to succeed in the dynamic world of data. Join us on this exciting path and unlock your potential in just 60–100 days of disciplined learning.Why This Course MattersMost learners struggle with fragmented resources, inconsistent guidance, or theory-heavy content that doesn’t build real competence. This course solves that problem. It’s structured to provide step-by-step, cumulative, and daily progress — helping you turn knowledge into capability, and capability into career readiness.We are in the AI revolution, and every industry is transforming with tools like ChatGPT, Stable Diffusion, and AI copilots for writing, coding, design, analytics, and more. This course ensures you don’t just learn theory — you’ll build real-world solutions that make you job-ready.1. Foundations of Data Analytics, Data Science & PythonLearn how to think like a data scientist, not just how to write code.Python fundamentals: variables, loops, conditionals, functions, data structures.Clean, modular, reusable coding practices for data workflows.Importing and handling real-world datasets with Pandas and NumPy.Data types, memory optimization, and performance tuning.A-Z data cleaning and manipulation techniques: sorting, filtering, pivot tables, and charts.2. Excel, SQL, Python & Power BI Profi
In recent years, we've seen a resurgence in AI, or artificial intelligence, and machine learning. Machine learning has led to some amazing results, like being able to analyze medical images and predict diseases on-par with human experts. Google's AlphaGo program was able to beat a world champion in the strategy game go using deep reinforcement learning. Machine learning is even being used to program self driving cars, which is going to change the automotive industry forever. Imagine a world with drastically reduced car accidents, simply by removing the element of human error. Google famously announced that they are now "machine learning first", and companies like NVIDIA and Amazon have followed suit, and this is what's going to drive innovation in the coming years. Machine learning is embedded into all sorts of different products, and it's used in many industries, like finance, online advertising, medicine, and robotics. It is a widely applicable tool that will benefit you no matter what industry you're in, and it will also open up a ton of career opportunities once you get good. Machine learning also raises some philosophical questions. Are we building a machine that can think? What does it mean to be conscious? Will computers one day take over the world? This course will go from basics to advance. Step by step approach will make its easy to understand Machine Learning. TIPS (for getting through the course): Watch it at 2x.Take handwritten notes. This will drastically increase your ability to retain the information.Write down the equations. If you don't, I guarantee it will just look like gibberish.Ask lots of questions on the discussion board. The more the better!Realize that most exercises will take you days or weeks to complete.Write code yourself, don't jus
This course provides a thorough introduction to the intersection of data science and machine learning, balancing theory, numerical methods (coding), and real-world applications. It is designed for students and beginners who want to build a strong foundation in the concepts, statistics, and mathematics that support modern data science and machine learning algorithms.No prior experience is required; this course starts with the fundamentals, making it an excellent choice for beginners ready to embark on their learning journey.The course covers essential topics, including:- The basics of data science- Data visualisation and storytelling- Linear and non-linear regression methods- Explore the world of classification techniques with powerful tools like decision trees, random forests, and neural networks to unlock insights from your data. - Dive into unsupervised learning, where you can discover hidden patterns and groupings in your data using innovative clustering methods like spectral clustering. By the end of this course, students will be able to:- Apply quantitative modelling and data analysis techniques to solve real-world problems.- Effectively communicate findings through data visualisation.- Demonstrate proficiency in statistical data analysis techniques used in applied engineering.- Utilise data science principles to tackle engineering challenges.- Employ modern programming languages and computational tools to analyse big data.- Understand key concepts and gain in-depth knowledge of classical machine learning algorithms.- Implement classic machine learning algorithms to create intelligent systems.
Data science is the study of data. It involves developing methods of recording, storing, and analyzing data to effectively extract useful information . Data is a fundamental part of our everyday work, whether it be in the form of valuable insights about our customers, or information to guide product,policy or systems development. Big business, social media, finance and the public sector all rely on data scientists to analyse their data and draw out business-boosting insights.Python is a dynamic modern object -oriented programming language that is easy to learn and can be used to do a lot of things both big and small. Python is what is referred to as a high level language. That means it is a language that is closer to humans than computer.It is also known as a general purpose programming language due to it's flexibility. Python is used a lot in data science. Machine learning relates to many different ideas, programming languages, frameworks. Machine learning is difficult to define in just a sentence or two. But essentially, machine learning is giving a computer the ability to write its own rules or algorithms and learn about new things, on its own. In this course, we'll explore some basic machine learning concepts and load data to make predictions.We will also be using SQL to interact with data inside a PostgreSQL Database.What you'll learnUnderstand Data Science Life CycleUse Kaggle Data SetsPerform Probability SamplingExplore and use Tabular DataExplore Pandas DataFrameManipulate Pandas DataFramePerform Data CleaningPerform Data VisualizationVisualize Qualitative DataExplore Machine Learning FrameworksUnderstand Supervised Machine LearningUse machine learning to predict value of a houseUse Scikit-LearnLoad datasets</p
Get instant access to a workbook on Data Science, follow along, and keep for referenceIntroduce yourself to our community of students in this course and tell us your goals with data scienceEncouragement and celebration of your progress every step of the way: 25% > 50% > 75% & 100%30 hours of clear and concise step-by-step instructions, lessons, and engagementThis data science course provides participants with the knowledge, skills, and experience associated with Data Science. Students will explore a range of data science tools, algorithms, Machine Learning, and statistical techniques, with the aim of discovering hidden insights and patterns from raw data in order to inform scientific business decision-making.What you will learn:Data Science and Its TypesTop 10 Jobs in Data ScienceTools of Data ScienceVariables and Data in PythonIntroduction to PythonProbability and StatisticsFunctions in PythonOperator in PythonDataFrame with ExcelDictionaries in PythonTuples and loopsConditional Statement in PythonSequences in PythonIterations in PythonMultiple Regression in PythonLinear RegressionLibraries in PythonNumpy and SK LearnPandas in PythonK-Means ClusteringClustering of DataData Visualization with MatplotlibData Preprocessing in PythonMathematics in PythonData Visualization with PlotlyWhat is Deep Learning?Deep LearningNeural NetworkTensor FlowPostgreSQLMachine Learning and Data Science<
A warm welcome to the Data Science, Artificial Intelligence, and Machine Learning with Python course by Uplatz.Python is a high-level, interpreted programming language that is widely used for various applications, ranging from web development to data analysis, artificial intelligence, automation, and more. It was created by Guido van Rossum and first released in 1991. Python emphasizes readability and simplicity, making it an excellent choice for both beginners and experienced developers.Data ScienceData Science is an interdisciplinary field focused on extracting knowledge and insights from structured and unstructured data. It involves various techniques from statistics, computer science, and information theory to analyze and interpret complex data.Key Components:Data Collection: Gathering data from various sources.Data Cleaning: Preparing data for analysis by handling missing values, outliers, etc.Data Exploration: Analyzing data to understand its structure and characteristics.Data Analysis: Applying statistical and machine learning techniques to extract insights.Data Visualization: Presenting data in a visual context to make the analysis results understandable.Python in Data SciencePython is widely used in Data Science because of its simplicity and the availability of powerful libraries:Pandas: For data manipulation and analysis.NumPy: For numerical computations.Matplotlib and Seaborn: For data visualization.SciPy: For advanced statistical operations.Jupyter Notebooks: For interactive data analysis and sharing code and re
This course features 600+ Real and Most Asked Interview Questions for Machine Learning and Data Science that leading tech companies have asked. Are you ready to master machine learning and data science? This comprehensive course, Master Machine Learning and Data Science: 600+ Real Interview Questions is designed to equip you with the knowledge and confidence needed to excel in your data science career. With over 600 real interview questions and detailed explanations, you'll gain a deep understanding of core concepts, practical skills, and advanced techniques.What You’ll Learn:The essential maths behind machine learning, including algebra, calculus, statistics, and probability.Data collection, wrangling, and preprocessing techniques using powerful tools like Pandas and NumPy.Key machine learning algorithms such as regression, classification, decision trees, and model evaluation.Deep learning fundamentals, including neural networks, computer vision, and natural language processing.Whether you’re a beginner or a professional looking to sharpen your skills, this course offers practical knowledge, real-world examples, and interview preparation strategies to help you stand out in the competitive field of data science. Join us and take the next step toward mastering machine learning and data science!Sample Questions:Question 1:You are building a predictive model for customer churn using a dataset that is highly imbalanced, with a much larger number of non-churning customers than churning ones. What technique would you apply to improve model evaluation and ensure that the model is not biased by the imbalanced classes?A) Use k-fold cross-validation to assess model performance across all data splits. B) Use stratified sampling in your cross-validation to maintain the class distribution in each fold.
Hello there,Welcome to the " Machine Learning & Data Science with Python, Kaggle & Pandas " CourseMachine Learning A-Z course from zero with Python, Kaggle, Pandas and Numpy for data analysis with hands-on examplesMachine learning is a branch of artificial intelligence (AI) and computer science which focuses on the use of data and algorithms to imitate the way that humans learn, gradually improving its accuracy.You can develop the foundational skills you need to advance to building neural networks and creating more complex functions through the Python and R programming languages. Machine learning helps you stay ahead of new trends, technologies, and applications in this field.Machine learning is being applied to virtually every field today. That includes medical diagnoses, facial recognition, weather forecasts, image processing, and more. In any situation in which pattern recognition, prediction, and analysis are critical, machine learning can be of use. Machine learning is often a disruptive technology when applied to new industries and niches. Machine learning engineers can find new ways to apply machine learning technology to optimize and automate existing processes. With the right data, you can use machine learning technology to identify extremely complex patterns and yield highly accurate predictions.It’s hard to imagine our lives without machine learning. Predictive texting, email filtering, and virtual personal assistants like Amazon’s Alexa and the iPhone’s Siri, are all technologies that function based on machine learning algorithms and mathematical models. Python, machine learning, django, python programming, machine learning python, python for beginners, data science. Kaggle, statistics, r, python data science, deep learning, python programming, django, machine learning a-z, data scientist, python for data sciencePandas is an open source Python package that is most widely used for d
Welcome to "Machine Learning and Data Science with LangChain and LLMs"! This comprehensive course is designed to equip you with the skills and knowledge needed to harness the power of LangChain and Large Language Models (LLMs) for advanced data science and machine learning tasks.In today’s data-driven world, the ability to process, analyze, and extract insights from large volumes of data is crucial. Language models like GPT have transformed how we interact with and utilize data, allowing for more sophisticated natural language processing (NLP) and machine learning applications. LangChain is an innovative framework that enables you to build applications around these powerful LLMs. This course dives deep into the integration of LLMs within the data science workflow, offering hands-on experience with real-world projects.What You Will Learn?Throughout this course, you will gain a thorough understanding of how LangChain can be utilized in various data science applications, along with the practical knowledge of how to apply LLMs in different scenarios. Starting with the basics of machine learning and data science, we gradually explore the core concepts of LLMs and how LangChain can enhance data-driven solutions.Key Learning Areas:1. Introduction to Machine Learning and Data Science: Begin your journey by understanding the core principles of machine learning and data science, including the types of data, preprocessing techniques, and model-building strategies.2. Exploring Large Language Models (LLMs): Learn what LLMs are, how they function, and their applications in various domains. This section covers the latest advancements in language models, including their architecture and capabilities in text generation, classification, and more.3. LangChain Fundamentals: Discover the potential of LangChain as a tool for
Are you looking to master Data Science,Machine Learning (ML), Deep Learning(DL) and Natural Language Processing (NLP) from the ground up? This comprehensive course is designed to take you on a journey from understanding the basics to mastering advanced concepts, all while providing practical insights and hands-on experience.What You'll Learn:Foundational Concepts: Start with the basics of ML and NLP, including algorithms, models, and techniques used in these fields. Understand the core principles that drive machine learning and natural language processing.Advanced Topics: Dive deeper into advanced topics such as deep learning, reinforcement learning, and transformer models. Learn how to apply these concepts to build more complex and powerful models.Practical Applications: Gain practical experience by working on real-world projects and case studies. Apply your knowledge to solve problems in various domains, including healthcare, finance, and e-commerce.Mathematical Foundations: Develop a strong mathematical foundation by learning the math behind ML and NLP algorithms. Understand concepts such as linear algebra, calculus, and probability theory.Industry-standard Tools: Familiarize yourself with industry-standard tools and libraries used in ML and NLP, including TensorFlow, PyTorch, and scikit-learn. Learn how to use these tools to build and deploy models.Optimization Techniques: Learn how to optimize ML and NLP models for better performance and efficiency. Understand techniques such as hyperparameter tuning, model selection, and model evaluation.Who Is This Course For:This course is suitable for anyone interested in learning machine learning and natural language processing, from beginners to advanced learners. Whether you're a student, a professional look
A comprehensive, free video course on YouTube that covers the essential Python libraries for data analysis and visualization, perfect for learning EDA.
Welcome to the Complete Data Science and Machine Learning Bootcamp, the only course you need to learn Python and get into data science.At over 40+ hours, this Python course is without a doubt the most comprehensive data science and machine learning course available online. Even if you have zero programming experience, this course will take you from beginner to mastery. Here's why:The course is taught by the lead instructor at the App Brewery, London's leading in-person programming bootcamp.In the course, you'll be learning the latest tools and technologies that are used by data scientists at Google, Amazon, or Netflix.This course doesn't cut any corners, there are beautiful animated explanation videos and real-world projects to build.The curriculum was developed over a period of three years together with industry professionals, researchers and student testing and feedback.To date, we’ve taught over 200,000 students how to code and many have gone on to change their lives by getting jobs in the industry or starting their own tech startup.You'll save yourself over $12,000 by enrolling, but get access to the same teaching materials and learn from the same instructor and curriculum as our in-person programming bootcamp.We'll take you step-by-step through video tutorials and teach you everything you need to know to succeed as a data scientist and machine learning professional.The course includes over 40+ hours of HD video tutorials and builds your programming knowledge while solving real-world problems.In the curriculum, we cover a large number of important data science and machine learning topics, such as:Data
Learn Deep Learning from scratch. It is the extension of a Machine Learning, this course is for beginner who wants to learn the fundamental of deep learning and artificial intelligence. The course includes video explanation with introductions (basics), detailed theory and graphical explanations. Some daily life projects have been solved by using Python programming. Downloadable files of ebooks and Python codes have been attached to all the sections. The lectures are appealing, fancy and fast. They take less time to walk you through the whole content. Each and every topic has been taught extensively in depth to cover all the possible areas to understand the concept in most possible easy way. It's highly recommended for the students who don’t know the fundamental of machine learning studying at college and university level.The main goal of publishing this course is to explain the deep learning and artificial intelligence in a very simple and easy way. All the codes have been conducted through colab which is an online editor. Python remains a popular choice among numerous companies and organization. Python has a reputation as a beginner-friendly language, replacing Java as the most widely used introductory language because it handles much of the complexity for the user, allowing beginners to focus on fully grasping programming concepts rather than minute details. Below is the list of different topics covered in Deep Learning:Introduction to Deep LearningArtificial Neural Network vs Biological Neural NetworkActivation FunctionsTypes of Activation functionsArtificial Neural Network (ANN) modelComplex ANN model Forward ANN modelBackward ANN modelPython project of ANN model<strong
Welcome to the SGLearn Series targeted at Singapore-based learners picking up new skillsets and competencies. This course is an adaptation of the same course by Jose Marcial Portilla and is specially produced in collaboration with Jose for Singaporean learners. If you are a Singaporean, you are eligible for the CITREP+ funding scheme, terms and conditions apply. --------------- Note from Jose .... Are you ready to start your path to becoming a Data Scientist! This comprehensive course will be your guide to learning how to use the power of Python to analyze data, create beautiful visualizations, and use powerful machine learning algorithms!Data Scientist has been ranked the number one job on Glassdoor and the average salary of a data scientist is over $120,000 in the United States according to Indeed! Data Science is a rewarding career that allows you to solve some of the world's most interesting problems!This course is designed for both beginners with some programming experience or experienced developers looking to make the jump to Data Science!This comprehensive course is comparable to other Data Science bootcamps that usually cost thousands of dollars, but now you can learn all that information at a fraction of the cost! With over 100 HD video lectures and detailed code notebooks for every lecture this is one of the most comprehensive course for data science and machine learning on Udemy!We'll teach you how to program with Python, how to create amazing data visualizations, and how to use Machine Learning with Python! Here a just a few of the topics we will be learning:Programming with PythonNumPy with PythonUsing pandas Data Frames to solve complex tasksUse pandas to handle Excel FilesWeb scraping with pythonConnect Python to SQLUse matplotlib and seaborn for data visual
Extremely Hands-On... Incredibly Practical... Unbelievably Real!This is not one of those fluffy classes where everything works out just the way it should and your training is smooth sailing. This course throws you into the deep end.In this course you WILL experience firsthand all of the PAIN a Data Scientist goes through on a daily basis. Corrupt data, anomalies, irregularities - you name it!This course will give you a full overview of the Data Science journey. Upon completing this course you will know:How to clean and prepare your data for analysisHow to perform basic visualisation of your dataHow to model your dataHow to curve-fit your dataAnd finally, how to present your findings and wow the audienceThis course will give you so much practical exercises that real world will seem like a piece of cake when you graduate this class. This course has homework exercises that are so thought provoking and challenging that you will want to cry... But you won't give up! You will crush it. In this course you will develop a good understanding of the following tools:SQLSSISTableauGretlThis course has pre-planned pathways. Using these pathways you can navigate the course and combine sections into YOUR OWN journey that will get you the skills that YOU need.Or you can do the whole course and set yourself up for an incredible career in Data Science.The choice is yours. Join the class and start learning today!See you inside,Sincerely,Kirill Eremenko
In This Course, Solve Business Problems Using Data Science Practically. Learn To Build & Deploy Machine Learning, Data Science, Artificial Intelligence, Auto Ml, Deep Learning, Natural Language Processing (Nlp) Web Applications Projects With Python (Flask, Django, Heroku, AWS, Azure, GCP, IBM Watson, Streamlit Cloud).Data science can be defined as a blend of mathematics, business acumen, tools, algorithms, and machine learning techniques, all of which help us in finding out the hidden insights or patterns from raw data which can be of major use in the formation of big business decisions.In data science, one deals with both structured and unstructured data. The algorithms also involve predictive analytics. Thus, data science is all about the present and future. That is, finding out the trends based on historical data which can be useful for present decisions, and finding patterns that can be modeled and can be used for predictions to see what things may look like in the future.Data Science is an amalgamation of Statistics, Tools, and Business knowledge. So, it becomes imperative for a Data Scientist to have good knowledge and understanding of these.With the amount of data that is being generated and the evolution in the field of Analytics, Data Science has turned out to be a necessity for companies. To make the most out of their data, companies from all domains, be it Finance, Marketing, Retail, IT or Bank. All are looking for Data Scientists. This has led to a huge demand for Data Scientists all over the globe. With the kind of salary that a company has to offer and IBM is declaring it as the trending job of the 21st century, it is a lucrative job for many. This field is such that anyone from any background can make a career as a Data Scientist.In This Course, We Are Going To Work On 50 Real World Projects Listed Below:Project-1: Pan Card Tempering Detector App -Deploy On Heroku
Questo corso sul Data Science con Python nasce per essere un percorso completo su come si è evoluta l'analisi dati negli ultimi anni a partire dall'algebra e dalla statistica classiche. L'obiettivo è accompagnare uno studente che ha qualche base di Python in un percorso attraverso le varie anime del Data Science. Cominceremo con un ripasso delle basi di Python, a partire dallo scaricamento e installazione, all'impostazione dell'ambiente di lavoro, passando per le strutture, la creazione di funzioni, l'uso degli operatori e di alcune funzioni importanti. Passeremo poi a vedere come manipolare e gestire un dataset, estrarne dei casi oppure delle variabili, generare dei dataset casuali, calcolare delle misure statistiche di base, creare grafici con i pacchetti Matplotlib e Seaborn.Nelle sezioni successive cominciamo a entrare nel cuore del Data Science con Python, a cominciare dal preprocessing: vediamo infatti come ripulire e normalizzare un dataset, e come gestire i dati mancanti. La sezione successiva ci permette di cominciare a impostare dei modelli di machine learning con Python: vedremo tutti gli algoritmi più comuni, sia supervisionati che non supervisionati, come la regressione, semplice, multipla e logistica, il k-nearest neighbors, il Support Vector Machines, il Naive Bayes, gli alberi di decisione e il clustering. Passeremo poi ai più comuni metodi ensemble, come il Random Forest, il Bagging e il Boosting, e all'analisi del linguaggio naturale e al suo utilizzo nel machine learning per la catalogazione dei testi.
Common scenario: You try to get into machine learning and data science, but there's SO MUCH MATH.Either you never studied this math, or you studied it so long ago you've forgotten it all.What do you do?Well my friends, that is why I created this course.Linear Algebra is one of the most important math prerequisites for machine learning. It's required to understand probability and statistics, which form the foundation of data science.The "data" in data science is represented using matrices and vectors, which are the central objects of study in this course.If you want to do machine learning beyond just copying library code from blogs and tutorials, you must know linear algebra.In a normal STEM college program, linear algebra is split into multiple semester-long courses.Luckily, I've refined these teachings into just the essentials, so that you can learn everything you need to know on the scale of hours instead of semesters.This course will cover systems of linear equations, matrix operations (dot product, inverse, transpose, determinant, trace), low-rank approximations, positive-definiteness and negative-definiteness, and eigenvalues and eigenvectors. It will even include machine learning-focused material you wouldn't normally see in a regular college course, such as how these concepts apply to GPT-4, and fine-tuning modern neural networks like diffusion models (for generative AI art) and LLMs (Large Language Models) using LoRA. We will even demonstrate many of the concepts in this course using the Python programming language (don't worry, you don't need to know Python for this course). In other words, instead of the dry old college version of linear algebra, this course takes just the most practical and impactful topics, and provides you with skills directly applicable to machine learning and data science, so you can s
Hello!Welcome, and thanks for choosing How to Start & Grow Your Career in Machine Learning/Data Science!With companies in almost every industry finding ways to adopt machine learning, the demand for machine learning engineers and developers is higher than ever. Now is the best time to start considering a career in machine learning, and this course is here to guide you.This course is designed to provide you with resources and tips for getting that job and growing the career you desire.We provide tips from personal interview experiences and advice on how to pass different types of interviews with some of the hottest tech companies, such as Google, Qualcomm, Facebook, Etsy, Tesla, Apple, Samsung, Intel, and more.We hope you will come away from this course with the knowledge and confidence to navigate the job hunt, interviews, and industry jobs.***NOTE This course reflects the instructor's personal experiences with US-based companies. However, she has also worked overseas, and if there is a high interest in international opportunities, we will consider adding additional FREE updates to this course about international experiences.We will cover the following topics:Examples of Machine Learning positionsRelevant skills to have and courses to takeHow to gain the experience you needHow to apply for jobsHow to navigate the interview processHow to approach internships and full-time positionsHelpful resourcesPersonal adviceWhy Learn From Class Creatives?Janice Pan is a full-time Senior Engineer in Artificial Intelligence at Shield AI. She has published papers in the fields of computer vision and video processing and has interned at some
In this hands-on bootcamp, you will master Microsoft CoPilot, GPT-5, and intelligent AI agents for data science. You’ll master the full data science workflow, including data wrangling and feature engineering, data cleaning and merging with CoPilot. We will then cover data visualization and storytelling, turning raw data into dashboards and narratives that drive business decisions. You’ll also cover model development and validation, building and evaluating classifiers while tracking performance using metrics such as accuracy, precision, recall and ROC curves. Finally, you’ll cover anomaly detection, applying methods such as Z-Score and Isolation Forest to spot unusual patterns before they cost money.. What You’ll Learn:Clean and prepare real-world datasets using CoPilot’s advanced prompt engineering.Build predictive models for forecasting, classification, and anomaly detection.Automate feature engineering and data wrangling tasks with custom AI agents.Visualize trends and correlations using Matplotlib, Seaborn, and Plotly inside CoPilot.Detect anomalies using Z-Score and Isolation Forest techniques.Create executive-level insights and recommendations from raw data.Compare and evaluate multiple machine learning models with proper validation.Design custom GPTs for advanced analysis, reporting, and business strategy.Bootcamp Modules:CoPilot Overview & AI Agents Demo – From messy data cleanup to CEO-level storytelling.Data Wrangling & Feature Engineering in CoPilot – Practical workflows for handling missing values, merging datasets, and creating features.Data Visualization in CoPilot – Scatter plots, heatmaps, pairplots, and executive-ready dashboards.Model Development & Validation – Build, eva
Interested in the field of AI, Data Science, GenAI and Machine Learning? Then this course is for you! This course has been designed by an AI, Data Scientist, and a Machine Learning expert so that i can share my knowledge and help you learn complex theory, algorithms, and coding libraries in a simple way.I will walk you step-by-step into the World of AI, Data Scientist, Machine Learning and GenAI. With every tutorial, you will develop new skills and improve your understanding of this challenging yet lucrative sub-field of Data Science.This course is fun and exciting, and at the same time, we dive deep into AI, Machine Learning and GenAI. It is structured the following way:Part 1 - Intro Part 2 - AIPart 3 – PythonPart 4 - EDAPart 5 - GenAI ChatbotsPart 6 - GenAI applicationsPart 7 - AI ChatbotsPart 8 - Machine LearningPart 9 - Deep LearningPart 10 - ETL and SQLPart 11 - Anomaly Detection (Predictive Maintenance)Part 12- Web Crawling & ScrapingPart 13 - Image generationPart 14 - Interfaces REST APIPart 15 - AI AgentsPart 16 - Video generationPart 17 - ChatGPT-Data AnalysisPart 18 - ChatGPT-DevelopingPart 19- Pinecone Vector DatabasePart 20 - Web-AppsPart 21 - PDF analysisEach section insid
This course contains over 200 lessons, quizzes, practical examples, ... - the easiest way if you want to learn Machine Learning. Step by step I teach you machine learning. In each section you will learn a new topic - first the idea / intuition behind it, and then the code in both Python and R.Machine Learning is only really fun when you evaluate real data. That's why you analyze a lot of practical examples in this course:Estimate the value of used carsWrite a spam filterDiagnose breast cancerAll code examples are shown in both programming languages - so you can choose whether you want to see the course in Python, R, or in both languages!After the course you can apply Machine Learning to your own data and make informed decisions:You know when which models might come into question and how to compare them. You can analyze which columns are needed, whether additional data is needed, and know which data needs to be prepared in advance. This course covers the important topics:RegressionClassificationOn all these topics you will learn about different algorithms. The ideas behind them are simply explained - not dry mathematical formulas, but vivid graphical explanations.We use common tools (Sklearn, NLTK, caret, data.table, ...), which are also used for real machine learning projects. What do you learn?Regression:Linear RegressionPolynomial RegressionClassification:Logistic RegressionNaive BayesDecision treesRandom ForestYou will also learn how to use Machine Lear
This professional certificate from Google builds on foundational data analytics skills, focusing on advanced topics like statistical analysis, machine learning, and predictive modeling using Python and Tableau. It includes hands-on projects to prepare learners for senior data analyst and junior data scientist roles.
Are you interested in leveraging the power of AI to streamline your Data Science projects?Do you want to learn how to use ChatGPT and GenAI technologies to design efficient data science workflows and create stunning data visualizations?Are you a data scientist, project manager, or entrepreneur keen on leveraging AI tools to kick-start and execute data science projects efficiently?If the answer is yes to any of these questions, this course is tailor-made for you!ChatGPT, developed by OpenAI, is an advanced language model that can be applied to various data science tasks, including data preparation, feature engineering, data analysis, and report generation. This course, "ChatGPT for Data Science and Data Analysis in Python", will help you significantly use ChatGPT to speed up your data science projects.Data Science continues to be one of the most in-demand fields, offering numerous career opportunities across sectors. With the advent of AI technologies like ChatGPT, it's now possible to execute data science projects more efficiently, reducing time and effort significantly. And we will teach you how. Here's what sets this course apart:A focus on practical application: From prompt engineering to text classification, you will learn to apply ChatGPT in real-world data science contexts.Step-by-step guide: Each module is designed to build on the previous one, ensuring a comprehensive understanding of how to use ChatGPT for various stages of a data science project.Collaborative learning: Learn how to use ChatGPT to improve team communication, a critical skill in any data science project.What will you learn?How to design efficient prompts in ChatGPT for optimal results.Techniques to initiate data science projects using ChatGPT, potentially reducing start-up time by
Caution before taking this course:This course does not make you expert in R programming rather it will teach you concepts which will be more than enough to be used in machine learning and natural language processing models.About the course:In this practical, hands-on course you’ll learn how to program in R and how to use R for effective data analysis, visualization and how to make use of that data in a practical manner. You will learn how to install and configure software necessary for a statistical programming environment and describe generic programming language concepts as they are implemented in a high-level statistical language.Our main objective is to give you the education not just to understand the ins and outs of the R programming language, but also to learn exactly how to become a professional Data Scientist with R and land your first job.This course covers following topics:1. R programming concepts: variables, data structures: vector, matrix, list, data frames/ loops/ functions/ dplyr package/ apply() functions2. Web scraping: How to scrape titles, link and store to the data structures3. NLP technologies: Bag of Word model, Term Frequency model, Inverse Document Frequency model4. Sentimental Analysis: Bing and NRC lexicon5. Text miningBy the end of the course you’ll be in a journey to become Data Scientist with R and confidently apply for jobs and feel good knowing that you have the skills and knowledge to back it up.
Welcome to this course on Machine Learning and Data Science with AWS. Amazon Web services or AWS is one of the biggest cloud computing platform where everything gets deployed to scale and action. Understanding the concepts and methods are vital, but being able to develop and deploy those concepts in forms of real life applications is something that is most weighted by the industry. Thus, here in this course, we are focused on ways you can use various cloud services on AWS to actually build and deploy you ideas into actions on multiple domains on Machine Learning and Data Science. You could be an IT professional looking for job change or upgrading your skillset or you could be a passionate learner or cloud certification aspirant, this course is for wider audience that if formed by the people who would like to learn any of these or a combination of these things-Create and Analyze dataset to find insights and spot outliers or trendsBuild Data visualization reports and dashboards by combining various visualization charts to represent data insightsDevelop machine learning models for Natural Language Processing for various applications on AWSAnd much more.Course StructureThis course consists of multiple topics that are arranged in multiple sections. In the first few sections you would learn cloud services related to Data Science and Analysis on AWS with hands on practical examples. There you would be learning about creating a crawler in Glue, Analyzing dataset using SQL in Amazon Athena. After that you would learn to prepare a dataset for creating Data Visualization charts and reports that can be used for finding critical insights from the dataset that can be used in decision making process. You will learn to create calculated fields, excluded lists and filters on AWS Quicksight, followed by some advanced charts such as Word cloud and Funnel chart.After that in Machine Learning section, you will learn
ChatGPT Smart Tips For Prompts"I couldn't be more impressed with the content and the instructor. The course provided a comprehensive overview of the capabilities and applications of the ChatGPT model, as well as hands-on experience working with the model to generate responses.” Muhammad"The course was clear and concise with great examples to follow." - Paula N."Very insightful" - Sakyiwaa, "Great insight" - AbdurrahmanAre you tired of spending hours on menial tasks that could be automated with the help of a powerful language model? Are you ready to harness the power of ChatGPT, the world's most advanced language model, and take your productivity to the next level? Look no further, because our ChatGPT Smart Tips course is here to help you do just that.PLUS you can download our ChatGPT Cheat Sheets for reference and follow along in the course as you put your ChatGPT smart tips skills to use to grow and boost your career.We make AI work and we have a passion for staying ahead of the curve when it comes to technology. We have been following the development of ChatGPT for some time now and we are excited to share our knowledge and experience with others. In this course we will teach you the ins and outs of using ChatGPT's capabilities to automate tedious tasks, generate creative ideas, and streamline your workflow.ChatGPT is a game changer in the field of language processing, with its ability to understand and respond to natural language it can be used for a wide range of tasks from automating mundane tasks to generating creative ideas. With this course, you'll learn how to harness the power of ChatGPT and streamline your workflow, making you more efficient and productive than ever before.Our Ch
This course is designed to get an in-depth knowledge of Statistics and Probability for Data Science and Machine Learning point of view. Here we are talking about each and every concept of Descriptive and Inferential statistics and Probability. We are covering the following topics in detail with many examples so that the concepts will be crystal clear and you can apply them in the day to day work. Extensive coverage of statistics in detail: The measure of Central Tendency (Mean Median and Mode) The Measure of Spread (Range, IQR, Variance, Standard Deviation and Mean Absolute deviation) Regression and Advanced regression in details with Hypothesis understanding (P-value) Covariance Matrix, Karl Pearson Correlation Coefficient, and Spearman Rank Correlation Coefficient with examplesDetailed understanding of Normal Distribution and its propertiesSymmetric Distribution, Skewness, Kurtosis, and KDE. Probability and its in-depth knowledge Permutations and Combinations Combinatorics and Probability Understanding of Random Variables Various distributions like Binomial, Bernoulli, Geometric, and Poisson Sampling distributions and Central Limit Theorem Confidence IntervalMargin of ErrorT-statistic and F-statisticSignificance tests in detail with various examples Type 1 and Type 2 ErrorsChi-Square Test ANOVA and F-statisticBy completing this course we are sure you will be very much proficient in Statistics and able to talk to anyone about stats with confidence apply the knowledge in your day to day work.
Ever wondered how AI technologies like OpenAI ChatGPT, GPT-4, DALL-E, Midjourney, and Stable Diffusion really work? In this course, you will learn the foundations of these groundbreaking applications.This course will get you started in building your FIRST artificial neural network using deep learning techniques. Following my previous course on logistic regression, we take this basic building block, and build full-on non-linear neural networks right out of the gate using Python and Numpy. All the materials for this course are FREE.We extend the previous binary classification model to multiple classes using the softmax function, and we derive the very important training method called "backpropagation" using first principles. I show you how to code backpropagation in Numpy, first "the slow way", and then "the fast way" using Numpy features.Next, we implement a neural network using Google's new TensorFlow library.You should take this course if you are interested in starting your journey toward becoming a master at deep learning, or if you are interested in machine learning and data science in general. We go beyond basic models like logistic regression and linear regression and I show you something that automatically learns features.This course provides you with many practical examples so that you can really see how deep learning can be used on anything. Throughout the course, we'll do a course project, which will show you how to predict user actions on a website given user data like whether or not that user is on a mobile device, the number of products they viewed, how long they stayed on your site, whether or not they are a returning visitor, and what time of day they visited.Another project at the end of the course shows you how you can use deep learning for facial
Offered by the University of Amsterdam, this course covers the fundamentals of statistics, including descriptive statistics, probability, and inferential statistics.
Offered by the University of California, Santa Cruz, this course introduces the Bayesian approach to statistics, covering probability, data analysis, and the key differences from the Frequentist approach.
Offered by Duke University, this beginner-level course covers the foundational math skills needed for data science.
This course introduces the importance of quality data in machine learning. It covers techniques to retrieve, clean, and apply feature engineering to data, preparing it for preliminary analysis and hypothesis testing.
This course teaches the fundamentals of data wrangling and cleaning using Python and the Pandas library, essential skills for any data scientist.
A hybrid course that teaches how to analyze, forecast, and optimize energy demand using AI and data science with Python. It is designed for InnoEnergy masters students and PhD researchers, focusing on practical lab sessions and real-world energy use cases.
An advanced course focusing on the practical application of data science and machine learning to solve real-world cybersecurity problems. It includes over 30 hands-on labs.
This book provides a practical guide to the key concepts in statistics for data scientists. It covers topics such as exploratory data analysis, sampling, and hypothesis testing. The book is very hands-on and includes many examples using R and Python.
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