Master advanced machine learning concepts with expert-level content and cutting-edge techniques.
Strong foundation in linear algebra, calculus, and optimization
Expert Python skills; experience with ML frameworks
Machine Learning A-Z: AI, Python & R
BeginnerNLP - Natural Language Processing with Python
IntermediateComplete Machine Learning & Data Science Bootcamp 2025
BeginnerAlgorithmic Trading A-Z with Python, Machine Learning & AWS
AdvancedDecision Trees, Random Forests, AdaBoost & XGBoost in Python
IntermediateMachine Learning on Google Cloud (Vertex AI) - Hands on!
BeginnerLinear Algebra: Theory and Implementation
IntermediateArtificial Intelligence & Machine Learning for Business
IntermediateBuilding Machine Learning Web Apps with Python
IntermediateGoogle Cloud Machine Learning Engineer Certification
IntermediateAutomated Machine Learning - AutoML, TPOT, H2O, AutoKeras
IntermediateSupport Vector Machines in Python: SVM Concepts & Code
AdvancedMachine Learning and AI: Support Vector Machines in Python
IntermediateSVM for Beginners: Support Vector Machines in R Studio
AdvancedSynthetic Data in Machine Learning
IntermediateThe Ultimate R Programming & Machine Learning Course
IntermediateHands-On Keras for Machine Learning Engineers
AdvancedXGBoost Machine Learning for Data Science and Kaggle
AdvancedGenerative AI with LLMs, Prompting, Automation & Agents
AdvancedTensorflow Deep Learning - Data Science in Python
advancedDeep Learning Image Classification in PyTorch 2.0
advancedPython pour le Deep Learning & le Machine Learning: A à Z
advancedMachine Learning y Data Science con PySpark: cero a experto
advancedData Science and Machine Learning Masterclass with R
advancedData Science et Machine Learning | MasterClass Python
advancedThe Deep Learning Masterclass - Convert Sketch to Photo
advancedNeural Networks with TensorFlow and PyTorch
advancedApprendre la Data Science et Machine Learning en Python
advancedData Science & Machine Learning Proficiency Exam march 2025
advancedPractical Deep Learning & Artificial Neural Nets with Python
advancedPython and TensorFlow Data Science and Iris Speciation
advancedData Science Case Study: Real-World Machine Learning Project
advancedMachine Learning Projects with TensorFlow 2.0
advancedManual de referencia Data Science: Machine Learning (Python)
advancedR. Curso completo de R para Data Science y Machine Learning
advancedDeep Learning with PyTorch
advancedCurso completo de Machine Learning: Data Science en Python
advancedMáster Especialista de Deep Learning en Python con PyTorch
advancedMathematics for Data Science and Machine Learning using R
advancedDeep Learning with TensorFlow 2.0
advancedPython pour la Data Science et le Machine Learning: A à Z
advancedMachine Learning A-Z: AI, Python & R
BeginnerNLP - Natural Language Processing with Python
IntermediateComplete Machine Learning & Data Science Bootcamp 2025
BeginnerAlgorithmic Trading A-Z with Python, Machine Learning & AWS
AdvancedDecision Trees, Random Forests, AdaBoost & XGBoost in Python
IntermediateMachine Learning on Google Cloud (Vertex AI) - Hands on!
BeginnerLinear Algebra: Theory and Implementation
IntermediateArtificial Intelligence & Machine Learning for Business
IntermediateBuilding Machine Learning Web Apps with Python
IntermediateGoogle Cloud Machine Learning Engineer Certification
IntermediateAutomated Machine Learning - AutoML, TPOT, H2O, AutoKeras
IntermediateSupport Vector Machines in Python: SVM Concepts & Code
AdvancedMachine Learning and AI: Support Vector Machines in Python
IntermediateSVM for Beginners: Support Vector Machines in R Studio
AdvancedSynthetic Data in Machine Learning
IntermediateThe Ultimate R Programming & Machine Learning Course
IntermediateHands-On Keras for Machine Learning Engineers
AdvancedXGBoost Machine Learning for Data Science and Kaggle
AdvancedGenerative AI with LLMs, Prompting, Automation & Agents
AdvancedTensorflow Deep Learning - Data Science in Python
advancedDeep Learning Image Classification in PyTorch 2.0
advancedPython pour le Deep Learning & le Machine Learning: A à Z
advancedMachine Learning y Data Science con PySpark: cero a experto
advancedData Science and Machine Learning Masterclass with R
advancedData Science et Machine Learning | MasterClass Python
advancedThe Deep Learning Masterclass - Convert Sketch to Photo
advancedNeural Networks with TensorFlow and PyTorch
advancedApprendre la Data Science et Machine Learning en Python
advancedData Science & Machine Learning Proficiency Exam march 2025
advancedPractical Deep Learning & Artificial Neural Nets with Python
advancedPython and TensorFlow Data Science and Iris Speciation
advancedData Science Case Study: Real-World Machine Learning Project
advancedMachine Learning Projects with TensorFlow 2.0
advancedManual de referencia Data Science: Machine Learning (Python)
advancedR. Curso completo de R para Data Science y Machine Learning
advancedDeep Learning with PyTorch
advancedCurso completo de Machine Learning: Data Science en Python
advancedMáster Especialista de Deep Learning en Python con PyTorch
advancedMathematics for Data Science and Machine Learning using R
advancedDeep Learning with TensorFlow 2.0
advancedPython pour la Data Science et le Machine Learning: A à Z
advancedFollow these courses in order to complete the learning path. Click on any course to enroll.
Comprehensive ML course covering regression, classification, clustering, deep learning, NLP, reinforcement learning.
Text classification, sentiment analysis, topic modeling, text generation with spa Cy, NLTK.
Complete Machine Learning & Data Science Bootcamp 2025
Algorithmic Trading with Machine Learning
A comprehensive guide to understanding and implementing tree-based models and ensemble techniques in Python. The course covers Decision Trees, Random Forests, Bagging, Ada Boost, and XG Boost.
This course provides a comprehensive, hands-on introduction to machine learning on the Google Cloud Platform, with a specific focus on Vertex AI. Students will learn about various GCP services, including compute, storage, and databases, before diving into machine learning workflows. The curriculum covers building and deploying models using GCP's AutoML for tabular, image, and text data, as well as custom model training and deployment on the AI Platform and Vertex AI. The course is designed to equip learners with the practical skills needed to create and manage machine learning pipelines on Google Cloud.
Linear Algebra for Machine Learning
Machine Learning for Business Analytics
Machine Learning and AI with Python Web Apps
Google Cloud Machine Learning Complete Course
AutoML: Automated Machine Learning
This course covers Support Vector Machines (SVM) from basic to advanced kernel-based models. It is designed for those who want to apply machine learning to real-world business problems and includes topics like hyperparameter tuning and model performance evaluation.
This course provides a comprehensive understanding of the theory behind Support Vector Machines, including the derivation of Linear SVM, the Kernel SVM using Lagrangian Duality, and the application of Quadratic Programming. It covers practical applications like image recognition and spam detection.
Learn Support Vector Machines in R Studio, from basic SVM models to advanced kernel-based SVM models. This course is for those who want to apply machine learning to real-world business problems using the R programming language.
A concise, hands-on course on the fundamentals of synthetic data, its applications, and key generation techniques including statistical methods and generative AI approaches like GANs and VAEs.
This course covers a wide range of machine learning algorithms in R, including a dedicated section on tree-based methods.
Mike's courses are popular with many of our clients." Josh Gordon, Developer Advocate, Google "This is well developed with an appropriate level of animation and illustration." - Bruce"Very good course for somebody who already has pretty good foundation in machine learning." - Il-Hyung Cho Welcome to Hands-On Keras for Machine Learning Engineers. This course is your guide to deep learning in Python with Keras. You will discover the Keras Python library for deep learning and how to use it to develop and evaluate deep learning models.There are two top numerical platforms for developing deep learning models, they are Theano developed by the University of Montreal and TensorFlow developed at Google. Both were developed for use in Python and both can be leveraged by the super simple to use Keras library. Keras wraps the numerical computing complexity of Theano and TensorFlow providing a concise API that we will use to develop our own neural network and deep learning models. Keras has become the gold standard in the applied space for rapid prototyping deep learning models. My name is Mike West and I'm a machine learning engineer in the applied space. I've worked or consulted with over 50 companies and just finished a project with Microsoft. I've published over 50 courses and this is 55 on Udemy. If you're interested in learning what the real-world is really like then you're in good hands.Who is this course for? This course is for developers, machine learning engineers and data scientists that want to learn how to get the most out of Keras. You do not need to be a machine learning expert, but it would be helpful if you knew how to navigate a small machine learning problem using Scikit-Learn. Basic concepts like cross-validation and one hot encoding used in lessons and projects are des
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 XG Boost.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 XG Boost model.This course is really practical but not lacking in theory; w
A warm welcome to the Generative AI with LL Ms, Prompting, Automation & Agents course by Uplatz.Generative AI (Generative Artificial Intelligence) refers to a type of artificial intelligence that is capable of creating new content—such as text, images, audio, code, and more—rather than simply analyzing existing data. It mimics human creativity by learning from large datasets and generating outputs that resemble original, human-made content.What It Does Traditional AI systems are good at recognizing patterns or making predictions based on existing data. Generative AI goes a step further by actually producing new data that didn't exist before. For example:Writing articles or stories Creating images or artwork Composing music Writing code Designing products or layouts How It Works Generative AI typically relies on advanced machine learning techniques, especially deep learning models such as:Transformers – used in models like GPT (text) or T5Diffusion models – used in image generation (like DALL·E or Stable Diffusion)GANs (Generative Adversarial Networks) – used for creating realistic mediaA simplified breakdown of the process:Training The model is trained on massive datasets (e.g., books, websites, images, code).It learns statistical patterns, styles, and relationships in the data.Learning Probabilities Instead of memorizing, the model learns the probability of what should come next in a sequence (next word, next pixel, etc.).Generation (Inference)<
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 this Deep Learning Image Classification course with Py Torch2.0 in Python3. Do you want to learn how to create powerful image classification recognition systems that can identify objects with immense accuracy? if so, then this course is for you what you need! In this course, you will embark on an exciting journey into the world of deep learning and image classification. This hands-on course is designed to equip you with the knowledge and skills necessary to build and train deep neural networks for the purpose of classifying images using the PyTorch framework.We have divided this course into Chapters. In each chapter, you will be learning a new concept for training an image classification model. These are some of the topics that we will be covering in this course:Training all the models with torch.compile which was introduced recently in Pytroch2.0 as a new feature.Install Cuda and Cudnn libraires for Py Torch2.0 to use GPU. How to use Google Colab Notebook to write Python codes and execute code cell by cell.Connecting Google Colab with Google Drive to access the drive data.Master the art of data preparation as per industry standards. Data processing with torchvision library. data augmentation to generate new image classification data by using:- Resize, Cropping, Random Horizontal Flip, Random Vertical Flip, Random Rotation, and Color Jitter.Implementing data pipeline with data loader to efficiently handle large datasets.Deep dive into various model architectures such as Le Net, VGG16, Inception v3, and Res Net50.Each model is explained through a nice block diagram through layer by layer for deeper understanding.Implementing the training and Inferencing pipeline.Understanding transfer learning to train models on less data.Display the model inferencing result
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 d'apprentissage automatique, d'apprentissage en profondeur et d'intelligence artificielle.Bien que Python facilite l'utilisation du Machine Learning et du Deep Learning, il sera toujours assez frustrant pour quelqu'un qui n'a aucune connaissance du fonctionnement de l'apprentissage automatique.Si vous connaissez les bases de Python et que vous avez envie d'apprendre le Deep Learning, 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'apprentissage en profondeur 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.
Si estás buscando un curso práctico, completo y avanzado para aprender Machine Learning y Data Science con Big Data utilizando Py Spark, 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 Py Spark 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 ML Flow, 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 Py Spark (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 Py Spark, partiendo desde las bases hasta las funcionalidades más avanzadas. Para ello utilizaremos presentaciones visu
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 Decision Apple: Apple Use Data Science in different places like: Siri, Face Detection etc Facebook: 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 Purpose Microsoft: Amplifying human ingenuity with Data Science So From the List of the Companies you can Understand all Big Giant to Very Small
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 Master Class 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 Mc Kinsey, 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
Deep learning is not like any other technology, but it is in many cases the only technology that can solve certain problems. We need to ensure that all people involved in the project have a common understanding of what is required, how the process works, and that we have a realistic view of what is possible with the tools at hand. To boil down all this to its core components we could consider a few important rules:create a common ground of understanding, this will ensure the right mindsetstate early how progress should be measuredcommunicate clearly how different machine learning concepts worksacknowledge and consider the inherited uncertainty, it is part of the process In order to define AI, we must first define the concept of intelligence in general. A paraphrased definition based on Wikipedia is:Intelligence can be generally described as the ability to perceive information and retain it as knowledge to be applied towards adaptive behaviors within an environment or context.While there are many different definitions of intelligence, they all essentially involve learning, understanding, and the application of the knowledge learned to achieve one or more goals.Is this course for me?By taking this course, you will gain the tools you need to continue improving yourself in the field of app development. You will be able to apply what you learned to further experience in making your own apps able to perform more.No experience necessary. Even if you’ve never coded before, you can take this course. One of the best features is that you can watch the tutorials at any speed you want. This means you can speed up or slow down the video if you want to!When your learning to code, you often find yourself following along with a tutor without really knowing why you're doing certain things. In this course, I will demonstrate correct coding as well as mistakes I often see an
TensorFlow is quickly becoming the technology of choice for deep learning and machine learning, because of its ease to develop powerful neural networks and intelligent machine learning applications. Like TensorFlow, PyTorch has a clean and simple API, which makes building neural networks faster and easier. It's also modular, and that makes debugging your code a breeze. If you’re someone who wants to get hands-on with Deep Learning by building and training Neural Networks, then go for this course.This course takes a step-by-step approach where every topic is explicated with the help of a real-world examples. You will begin with learning some of the Deep Learning algorithms with TensorFlow such as Convolutional Neural Networks and Deep Reinforcement Learning algorithms such as Deep Q Networks and Asynchronous Advantage Actor-Critic. You will then explore Deep Reinforcement Learning algorithms in-depth with real-world datasets to get a hands-on understanding of neural network programming and Autoencoder applications. You will also predict business decisions with NLP wherein you will learn how to program a machine to identify a human face, predict stock market prices, and process text as part of Natural Language Processing (NLP). Next, you will explore the imperative side of PyTorch for dynamic neural network programming. Finally, you will build two mini-projects, first focusing on applying dynamic neural networks to image recognition and second NLP-oriented problems (grammar parsing).By the end of this course, you will have a complete understanding of the essential ML libraries TensorFlow and PyTorch for developing and training neural networks of varying complexities, without any hassle.Meet Your Expert(s):We have the best work of the following esteemed author(s) to ensure that your learning journey is smooth:Roland Meertens is currently developing computer vision algorithms for self-driving ca
Formation Complète Data Science et Machine Learning avec Python Devenez 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 progressif Avec 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 données Programmation avec Python orienté Data Science Manipulation des tableaux numériques avec Num PyGestion et analyse de données tabulaires avec Pandas Lecture et traitement des fichiers CSV et Excel Visualisation de données Création de graphiques professionnels avec Matplotlib Analyse exploratoire et visualisations avancées avec Seaborn Machine Learning supervisé et non supervisé avec Scikit-Lear
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
Video Learning Path OverviewA Learning Path is a specially tailored course that brings together two or more different topics that lead you to achieve an end goal. Much thought goes into the selection of the assets for a Learning Path, and this is done through a complete understanding of the requirements to achieve a goal.Deep learning is the next step to a more advanced implementation of Machine Learning. Deep Learning allows you to solve problems where traditional Machine Learning methods might perform poorly: detecting and extracting objects from images, extracting meaning from text, and predicting outcomes based on complex dependencies, to name a few.In this practical Learning Path, you will build Deep Learning applications with real-world datasets and Python. Beginning with a step by step approach, right from building your neural nets to reinforcement learning and working with different Deep Learning applications such as computer Vision and voice and image recognition, this course will be your guide in getting started with Deep Learning concepts.Moving further with simple and practical solutions provided, we will cover a whole range of practical, real-world projects that will help customers learn how to implement their skills to solve everyday problems.By the end of the course, you’ll apply Deep Learning concepts and use Python to solve challenging tasks with real-world datasets.Key Features Get started with Deep Learning and build complex models layer by layer, with increasing complexity, in no time.A hands-on guide covering common as well as not-so-common problems in deep learning using Python.Explore the practical essence of Deep Learning in a relatively short amount of time by working on practical, real-world use cases.Author Bios Radhika Datar has more than 6 years' experience in Software Development and Content Writi
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 learning Problems that machine learning solves Types of machine learning Common machine learning structures Steps to building a machine learning model Build a linear regression machine learning model with TensorFlow Test and train the model Python variables and operators Collection types Conditionals and loops Functions Classes and objects Install and import Num PyBuild Num Py arrays Multidimensional Num Py arrays Array indexes and properties Num Py functions Num Py operations And much more!Add new skills to your resume in this project based course: Graph data with Py Plot Customize graphs Build 3D graphs with Py Plot Use TensorFlow to build a program to categorize irises into different species.Build a classification model Track data Implement logic Implement responsiveness Build data structures Replace Python lists with Num Py arrays Build and use Num Py arrays Use common array
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.
TensorFlow is the world’s most widely adopted framework for Machine Learning and Deep Learning. TensorFlow 2.0 is a major milestone due to its inclusion of some major changes making TensorFlow easier to learn and use such as “Eager Execution”. It will support more platforms and languages, improved compatibility and remove deprecated AP Is.This course will guide you to upgrade your skills in Machine Learning by practically applying them by building real-world Machine Learning projects.Each section should cover a specific project on a Machine Learning task and you will learn how to implement it into your system using TensorFlow 2. You will implement various Machine Learning techniques and algorithms using the TensorFlow 2 library. Each project will put your skills to test, help you understand and overcome the challenges you can face in a real-world scenario and provide some tips and tricks to help you become more efficient. Throughout the course, you will cover the new features of TensorFlow 2 such as Eager Execution. You will cover at least 3-4 projects. You will also cover some tasks such as Reinforcement Learning and Transfer Learning.By the end of the course, you will be confident to build your own Machine Learning Systems with TensorFlow 2 and will be able to add this valuable skill to your CV.About the Author Vlad Ionescu is a lecturer at Babes-Bolyai University. He has a PhD in machine learning, a field he is continuously researching and exploring every day with technologies such as Python, Keras, and TensorFlow.His philosophy is “If I can't explain something well enough for most people to understand it, I need to go back and understand it better myself before trying again”. This philosophy helps him to give of his best in his lectures and tutorials.He started as a high school computer science teacher while he was doing his Masters over 5 years ago. Right now, he teaches various university-level courses and tutorials, coverin
¿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.
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 aprendizaje Estos son los temas tratados en este curso sobre RConfiguración del entorno Instalación de R y RStudio Introducción a R Operaciones aritméticas, variables, tipos de datos, vectores, operadores de comparación, ayuda y documentación Matrices en R Operaciones aritméticas con matrices, selección de elementos, selección por filas y columnas, función factor Data Frames en R Creación de Data Frames, dataset, selección y ordenación, exportar e importar datos y tratamiento de valores nulos Listas en R Creación y manejo de listas Entrada y salida de datos en R Ficheros CSV, ficheros EXCEL y bases de datos Programación básica de R Operadores lógicos, condicionales if else, bucle while, bucle for y funciones Programación avanzada de R Funciones predefinidas, funciones sobre vectores, funciones anónimas, funciones matemáticas, expresiones regulares, fecha/hora Manipulación de datos con R Manipulación de datos con dplyr, operador pipe y limpieza de datos con tidyr Visualización de datos con R Histogramas, scatterplots, barplots, boxplots, gráficos de distribución, límites y dimensiones Gráficos interactivos con Plotly Introducción a Machine Learning Machine Learning Algoritmo de regresión lineal Algoritmo de regresión logística Algoritmo de los K vecinos más cercanos Algoritmo de árboles de decisión Algo
This video course will get you up-and-running with one of the most cutting-edge deep learning libraries: PyTorch. Written in Python, PyTorch is grabbing the attention of all data science professionals due to its ease of use over other libraries and its use of dynamic computation graphs.In this course, you will learn how to accomplish useful tasks using Convolutional Neural Networks to process spatial data such as images and using Recurrent Neural Networks to process sequential data such as texts. You will explore how you can make use of unlabeled data using Auto Encoders. You will also be training a neural network to learn how to balance a pole all by itself, using Reinforcement Learning. Throughout this journey, you will implement various mechanisms of the PyTorch framework to do these tasks.By the end of the video course, you will have developed a good understanding of, and feeling for, the algorithms and techniques used. You'll have a good knowledge of how PyTorch works and how you can use it in to solve your daily machine learning problems.This course uses Python 3.6, and PyTorch 0.3, while not the latest version available, it provides relevant and informative content for legacy users of Python, and PyTorch.About the Author Anand Saha is a software professional with 15 years' experience in developing enterprise products and services. Back in 2007, he worked with machine learning to predict call patterns at TATA Communications. At Symantec and Veritas, he worked on various features of an enterprise backup product used by Fortune 500 companies. Along the way he nurtured his interests in Deep Learning by attending Coursera and Udacity MOO Cs.He is passionate about Deep Learning and its applications; so much so that he quit Veritas at the beginning of 2017 to focus full time on Deep Learning practices. Anand built pipelines to detect and count endangered species from aerial images, trained a robotic arm to pick and place objects, and imp
¿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 Git Hub 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.
Máster Especialista de Deep Learning en Python con PyTorch.Redes Neuronales Profundas con PyTorch: Diseño, Implementación y Evaluación de Modelos Neuronales desde 0 a experto.Instructor: PhD. Manuel Castillo-Cara Requisitos previos: Se recomienda tener conocimientos sobre Machine Learning. Se recomienda realizar previamente siguiente curso de Udemy:Machine Learning con Python. Aprendizaje Automático Avanzado - Aprendizaje Automático Scikit-Learn en Python. Modelos Predictivos. Data Science. De básico a Experto.Descripción del Curso:Bienvenido al curso de Deep Learning con Python y PyTorch. En este curso exploraremos a fondo la librería PyTorch de Python para Deep Learning, aprendiendo cómo utilizarla para desarrollar y evaluar modelos de Deep Learning avanzados. Nuestro objetivo es proporcionarte las técnicas, el código y las habilidades necesarias para que puedas aplicar el Deep Learning en tus propios proyectos innovadores.PyTorch se ha convertido en una de las herramientas más potentes y flexibles en el campo del aprendizaje profundo. A diferencia de otras librerías, PyTorch ofrece un enfoque dinámico y intuitivo para la construcción de redes neuronales, permitiéndote definir y modificar tus modelos con gran facilidad.En este curso, nos centraremos en el desarrollo práctico de modelos de Deep Learning utilizando PyTorch. Comenzaremos con los fundamentos y avanzaremos hacia técnicas más sofisticadas, permitiéndote construir una base sólida que podrás expandir en el futuro según tus necesidades y proyectos específicos.Hemos elegido PyTorch como nuestra plataforma principal debido a su capacidad para desarrollar rápidamente modelos de Deep Learning potentes y eficientes. PyTorch combina la potencia de la computación GPU con una API intuitiva, lo que nos permitir
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 language Linear Algebra- Scalars
Data scientists, machine learning engineers, and AI researchers all have their own skillsets. But what is that one special thing they have in common?They are all masters of deep learning. We often hear about AI, or self-driving cars, or the ‘algorithmic magic’ at Google, Facebook, and Amazon. But it is not magic - it is deep learning. And more specifically, it is usually deep neural networks – the one algorithm to rule them all.Cool, that sounds like a really important skill; how do I become a Master of Deep Learning?There are two routes you can take: The unguided route – This route will get you where you want to go, eventually, but expect to get lost a few times. If you are looking at this course you’ve maybe been there. The 365 route – Consider our route as the guided tour. We will take you to all the places you need, using the paths only the most experienced tour guides know about. We have extra knowledge you won’t get from reading those information boards and we give you this knowledge in fun and easy-to-digest methods to make sure it really sticks.Clearly, you can talk the talk, but can you walk the walk? – What exactly will I get out of this course that I can’t get anywhere else?Good question! We know how interesting Deep Learning is and we love it! However, we know that the goal here is career progression, that’s why our course is business focused and gives you real world practice on how to use Deep Learning to optimize business performance.We don’t just scratch the surface either – It’s not called ‘Skin-Deep’ Learning after all. We fully explain the theory from the mathematics behind the algorithms to the state-of-the-art initialization methods, plus so much more.Theory is no good without putting it into practice, is it? That’s why we give you plenty of opportunities to put this theory to use. Implement cutting edge
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.
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