Build deep learning models quickly with Keras, the high-level neural network API. Design sequential and functional models, tune hyperparameters, and deploy predictions.
THIS IS A COMPLETE NEURAL NETWORKS & DEEP LEARNING TRAINING WITH TENSORFLOW & KERAS IN PYTHON!It is a full 7-Hour Python Tensorflow & Keras Neural Network & Deep Learning Boot Camp that will help you learn basic machine learning, neural networks and deep learning using two of the most important Deep Learning frameworks- Tensorflow and Keras. HERE IS WHY YOU SHOULD ENROLL IN THIS COURSE:This course is your complete guide to practical machine & deep learning using the Tensorflow & Keras framework in Python.. This means, this course covers the important aspects of Keras and 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 and Keras 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 and Keras is revolutionizing Deep Learning... By gaining proficiency in Keras and 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 KERAS & 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 journals. Over the course of my research I realized almost all the Python data science courses and books out there do not account for the multidimensional nature of the topic and use data science interchangeably wit
A project-based course where you will build and train a bidirectional LSTM neural network model to recognize named entities in text data using Keras with a TensorFlow backend. This is a key tool for information extraction and a preprocessing step for other NLP applications.
Learn AutoML: Automated Machine Learning
Learn What is YOLO algorithm? | Deep Learning Tutorial 31 (Tensorflow, Keras & Python)
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 ML practitioners who want to enhance their skills and move up the ladder with Deep Learning!This course is made to give you all the required knowledge at the beginning of your journey so that you don’t have to go back and look at the topics again at any other place. This course is the ultimate destination with all the knowledge, tips, and tricks you would require to work in the Deep Learning space.It gives a detailed guide on Tensorflow and Keras along with in-depth knowledge of Deep Learning algorithms. All the algorithms are covered in detail so that the learner gains a good understanding of the concepts. One needs to have a clear understanding of what goes behind the scenes to convert a good model to a great model. This course will enable you to develop complex deep-learning architectures with ease and improve your model performance with several tips and tricks.Deep Learning Algorithms Covered:1. Feed Forward Networks (FFN)2. Convolutional Neural Networks (CNN)3. Recurring Neural Networks (RNN)4. Long Short-Term Memory Networks (LSTMs)5. Gated Recurrent Unit (GRU)6. Autoencoders7. Transfer Learning8. Generative Adversarial Networks (GANs)Our exotic journey will include the concepts of:1. The most important concepts of Tensorflow and Keras from very basic.2. The two ways of model building i.e. Sequential and Functional API.3. All the building blocks of Deep Learning models are explained in detail to enable students to make decisions while training their model and improving model performance.4. Hands-on learning of Deep Learning algorithms from the beginner
Master TensorFlow 2 and Keras. ANNs, CNNs, RNNs, GANs, deployment.
Hi this is Abhilash Nelson and I am thrilled to introduce you to my new course Deep Learning and Neural Networks using Python: For DummiesThe world has been revolving much around the terms "Machine Learning" and "Deep Learning" recently. With or without our knowledge every day we are using these technologies. Ranging from google suggestions, translations, ads, movie recommendations, friend suggestions, sales and customer experience so on and so forth. There are tons of other applications too. No wonder why "Deep Learning" and "Machine Learning along with Data Science" are the most sought after talent in the technology world now a days.But the problem is that, when you think about learning these technologies, a misconception that lots of maths, statistics, complex algorithms and formulas needs to be studied prior to that. Its just like someone tries to make you believe that, you should learn the working of an Internal Combustion engine before you learn how to drive a car. The fact is that, to drive a car, we just only need to know how to use the user friendly control pedals extending from engine like clutch, brake, accelerator, steering wheel etc. And with a bit of experience, you can easily drive a car. The basic know how about the internal working of the engine is of course an added advantage while driving a car, but its not mandatory. Just like that, in our deep learning course, we have a perfect balance between learning the basic concepts along the implementation of the built in Deep Learning Classes and functions from the Keras Library using the Python Programming Language. These classes, functions and APIs are just like the control pedals from the car engine, which we can use easily to build an efficient deep learning model.Lets now see how this course is organized and an overview about the list of topics included.We will be starting with few theory sessions in which we will see an overview about the Deep Learning an
Das sagen Teilnehmer über diesen Kurs:"Sehr aktiver Dozent der sich um die Kursteilnehmer und den Kurs kümmert. Der Tensorflow Kurs hat viele beispiele was mir geholfen hat Tensorflow und Keras besser zu verstehen. Ebenfalls sehr gut waren auch die Begriff erklärungen die einem sehr helfen ML als beginner zu lernen." - Ibrahim Akkulak"Ich würde den Kurs auf jeden Fall weiter empfehlen. Mehr Content als gedacht und sehr viele Erklärungen. Top!" - Erik Andrè Thürsam"Der Kurs gefällt mir ganz gut und bringt viele Beispiele ein. Der Saif beantwortet Fragen super schnell und ist sehr hilfsbereit. Empfehle den Kurs sehr für alle die Deep Learning mit vielen Praxisbeispielen lernen möchten." - Simon BehrensDeep Learning ist eines der angesagtesten Themen weit und breit. Insbesondere wird Deep Learning und Künstliche Neuronale Netze in vielen Technologien in deinem Umfeld eingesetzt, um dir ein noch angenehmeres Leben zu ermöglichen. Mithilfe diesen Praxis-Kurs bringe ich dir bei wie man Deep Learning mithilfe von Keras, Tensorflow und Python einsetzt. Du wirst eine gute Mischung von Theorie und Praxis in diesen Kurs erhalten. Viele der Techniken werden anhand von echten Praxis Projekte dir vermittelt. Warum solltest du Keras lernen? Keras wird von den "Big Five" Unternehmen wie Apple, Google, Facebook, Amazon und Microsoft in vielen ihrer Produkte eingesetzt, um Machine Learning noch effizienter zu nutzen! Ebenfalls werde ich ihn auch immer auf dem neusten Stand der Technik und Wissenschaft halten. Lerne wie du Keras meisterst und schreibe dich JETZT ein!
This course focuses on image processing and computer vision using Keras. It covers techniques for image manipulation, feature extraction, and building image classification models.
This course will guide you through how to use Google's TensorFlow framework to create artificial neural networks for deep learning and also the basics of Machine learning! This course aims to give you an easy to understand guide to the complexities of Google's TensorFlow framework in a way that is easy to understand and its application . Data Scientists enjoy one of the top-paying jobs, with an average salary of $120,000 according to Glassdoor and Indeed. That's just the average! And it's not just about money - it's interesting work too! If you've got some programming or scripting experience, this course will teach you the techniques used by real data scientists and machine learning practitioners in the tech industry - and prepare you for a move into this hot career path. This is a comprehensive course with very crisp and straight forward intent. This course covers a variety of topics, including Neural Network BasicsTensorFlow detailed,Keras,Sonnet etcArtificial Neural NetworksTypes of Neural networkFeed forward networkRadial basis networkKohonen Self organizing mapsRecurrent neural NetworkModular Neural networksDensely Connected NetworksConvolutional Neural NetworksRecurrent Neural NetworksMachine Learning Deep Learning Framework comparisons There are many Deep Learning Frameworks out there, so why use TensorFlow? TensorFlow is an open source software library for numerical computation using data flow graphs. Nodes in the graph represent mathematical operations, while the grap
** 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 ChoWelcome 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
Dans ce cours, vous allez découvrir et approfondir les différents aspects liés à l'apprentissage automatique avec Python. Nous utiliserons les librairies telles que Tensorflow, Keras, Pandas, Numpy, Scikit learn, ...Les travaux sont accessibles et exploitables en ligne grâce à l'utilisation des carnets Jupyter avec Google Colab. Aucune installation de logiciel spécifique sur son ordinateur n'est requise car tout le travail se fait en ligne.A chaque étape d'apprentissage de ce cours, de nouveaux modèles sont introduits. Des explications claires permettent de bien les comprendre à travers 6 thèmes d'étude :Structure de base d'un réseau de neuronesReconnaissance d'image avec un réseau de neurones à convolution 2DTraitement d'image avec un réseau de neurones profond à convolution 2DSystèmes de recommandations et d'analyse des ressentisDétection d'anomalies dans les donnéesAnalyse et prédiction sur les séries temporellesLes activités en Python expliquent clairement comment les exploiter. Des exercices sont régulièrement proposés pour consolider votre apprentissage.D'une durée totale de 19,5 heures, ce cours vous permettra d'être à l'aise avec les outils actuels du Deep Learning. Vous serez alors capable d'utiliser ces ressources pour créer vos propres projets et d'approfondir avec sérénité et en autonomie vos connaissances dans ce domaine.=== Prérequis ===Vous n'avez pas besoin d'être un spécialiste du langage Python. En effet, au fur et à mesure de votre progression, vous manierez ce langage et découvrirez les subtilités liées à son utilisation.Si vous êtes complètement débutant en Deep Learning, alors ce cours est fait pour vous. Ce cours est structuré de manière progressive pour acquérir petit à petit les bases du de
Intro to deep learning using Keras. Build neural networks for image classification and regression.
Welcome to a game-changing learning experience with "ChatGPT for Deep Learning using Python Keras and TensorFlow". This unique course combines the power of ChatGPT with the technical depth of Python, Keras, and TensorFlow to offer you an innovative approach to tackling complex Deep Learning projects. Whether you're a beginner or a seasoned Data Scientist, this course will significantly enhance your skill set, making you more proficient and efficient in your work.Why This Course?Deep learning and Artificial Intelligence are revolutionizing industries across the globe, but mastering these technologies often requires a significant time investment (for theory and coding). This course cuts through the complexity, leveraging ChatGPT to simplify the learning curve and expedite your project execution. You'll learn how to harness the capabilities of AI to streamline tasks from data processing to complex model training, all without needing exhaustive prior knowledge of the underlying mathematics and Python code.Comprehensive Learning ObjectivesBy the end of this course, you will be able to apply the most promising ChatGPT prompting strategies and techniques in real-world scenarios:ChatGPT Integration: Utilize ChatGPT effectively to automate and enhance various stages of your Data Science projects, including coding, model development, and result analysis.Data Management: Master techniques for loading, cleaning, and visualizing data using Python libraries like Pandas, Matplotlib, and Seaborn.Deep Learning Modeling: Gain hands-on experience in constructing and fine-tuning Neural Networks for tasks such as Image Recognition with CNNs, Time Series prediction with RNNs and LSTMs, and classification and regression with Feedforward Neural Networks (FNN), using ChatGPT as your assistant.<strong
Ce cours vous guidera dans l'utilisation du dernier Framework TensorFlow 2 de Google pour créer des Réseaux de Neurones Artificiels pour le Deep Learning ! Ce cours a pour but de vous donner un guide facile à comprendre sur les complexités du Framework TensorFlow version 2.x de Google (dernière version à jour).Nous nous attacherons à comprendre les dernières mises à jour de TensorFlow et à exploiter l'API de Keras (l'API officielle de TensorFlow 2) pour construire rapidement et facilement des modèles. Dans ce cours, nous construirons des modèles pour prédire des prix futurs de maisons, classer des images médicales, prédire les données de ventes futures, générer artificiellement un nouveau texte complet et bien plus encore... !Ce cours est conçu pour équilibrer la théorie et la mise en œuvre pratique, avec des guides de code complets de type "Notebook Google Colab" et des slides et notes faciles à consulter. Il y a également de nombreux exercices pour tester vos nouvelles compétences au cours de la formation !Ce cours couvre une grande variété de sujets, notamment :Cours accéléré sur la bibliothèque NumPyCours intensif et accéléré sur l'analyse des données avec la bibliothèque PandasCours accéléré sur la visualisation de donnéesPrincipes de base des réseaux de neuronesPrincipes de base de TensorFlowNotions de syntaxe de KerasRéseaux de Neurones Artificiels (ANNs)Réseaux à forte densité de connexionRéseaux de Neurones Convolutifs (CNNs)Réseaux de Neurones Récurrents (RNNs)AutoEncodersRéseaux Adversatifs Générateurs (GANs)Déploiement de TensorFlow en production avec Flasket bien plus encore !Keras, une API standard conviviale pour le Deep Learning, elle sera l'API centrale de haut niveau u
Welcome to Modern Computer Vision Tensorflow, Keras & PyTorch! 2025AI and Deep Learning are transforming industries and one of the most intriguing parts of this AI revolution is in Computer Vision!Update for 2025: Modern Computer Vision CourseWe're excited to bring you the latest updates for our 2024 modern computer vision course. Dive into an enriched curriculum covering the most advanced and relevant topics in the field:YOLOv8: Cutting-edge Object RecognitionDINO-GPT4V: Next-Gen Vision ModelsMeta CLIP for Enhanced Image AnalysisDetectron2 for Object DetectionSegment AnythingFace Recognition TechnologiesGenerative AI Networks for Creative ImagingTransformers in Computer VisionDeploying & Productionizing Vision ModelsDiffusion Models for Image ProcessingImage Generation and Its ApplicationsAnnotation Strategy for Efficient LearningRetrieval Augmented Generation (RAG)Zero-Shot Classifiers for Versatile ApplicationsUsing Roboflow: Streamlining Vision WorkflowsWhat is Computer Vision?But what exactly is Computer Vision and why is it so exciting? Well, what if Computers could understand what they’re seeing through cameras or in images? The applications for such technology are endless from medical imaging, military, self-driving cars, security monitoring, analysis, safety, farming, industry, and manufacturing! The list is endless. Job demand for Computer Vision workers are skyrocketing
For those who want to go beyond the basics, this course covers advanced deep learning topics using Keras. You'll learn about functional APIs, custom loss functions, and how to build more complex models.
Learn TensorFlow Developer Professional Certificate
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