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B your journey to build next-generation AI models from scratch with TensorFlow and create your own machine learning What you'll learn Build custom reusable components for your mobile app and develop native apps for both iOS and Android Perform animations in your applications using the animation APIs Test and deploy your application for a production-ready environment Grasp the concepts of Redux state management to build scalable apps Add navigation to your App to build UX components for your React Native App Integrate with Firebase as a data store and learn how to authenticate a user Requirements Knowledge of Data Science Description Google’s TensorFlow framework is the current leading software for implementing and expenting with the algorithms that power AI and machine learning. Google deploys TensorFlow for many of its products, such as Translate and Maps. TensorFlow is one of the most used frameworks for Deep Learning and AI. This course will be your guide to understand and learn the concepts of Artificial intelligence by applying them in a real-world project with TensorFlow. This comprehensive 3-in-1 course is a practical approach to deep learning and deep reinforcement learning for building real-world applications using TensorFlow. Learn how models are made in production settings, and how to best structure your TensorFlow programs. Build models to solve problems in Computer vision, Natural Language Processing, Reinforcement Learning, Finance, and more! Contents and Overview This training program includes 3 complete courses, carefully chosen to give you the most comprehensive training possible. The first course, Learn Artificial Intelligence with TensorFlow, covers creating your own machine learning solutions. You’ll embark on this journey by quickly wrapping up some important fundamental concepts, followed by a focus on TensorFlow to complete tasks in computer vision and natural language processing. You will be introduced to some important tips and tricks necessary for enhancing the efficiency of our models. We will highlight how TensorFlow is used in an advanced environment and brush through some of the unique concepts at the cutting edge of practical AI. The second course, Hands-on Artificial Intelligence with TensorFlow, covers a practical approach to deep learning and deep reinforcement learning for building real-world applications using TensorFlow. This course will take you through all the relevant AI domains, tools, and algorithms required to build optimal solutions and will show you how to implement them hands-on. You’ll then be taken through techniques such as reinforcement learning, heuristic searches, neural networks, Computer Vision, OpenAI Gym, and more in different stages of your application. You’ll learn how TensorFlow can be used to analyze a variety of data sets and will learn to optimize various AI algorithms. By the end of the course, you will have learned to build intelligent apps by leveraging the full potential of Artificial Intelligence with TensorFlow.. The third course, TensorFlow 1.x Deep Learning Recipes for Artificial Intelligence Applications, covers recipes for Computer vision, Natural Language Processing, Reinforcement Learning, Finance, and more! Build models to solve problems in different domains such as Computer vision, Natural Language Processing, Reinforcement Learning, Finance, and more. Taking a Cookbook approach, this course presents you with easy-to-follow recipes to show the use of advanced Deep Learning techniques and their implementation in TensorFlow. After taking this tutorial you will be able to start building advanced Deep Learning models with TensorFlow for applications with a wide range of fields. By the end of the course, you’ll b your journey to build next-generation AI models from scratch with TensorFlow and create your own machine learning solutions. About the Authors Brandon McKinzie is an NLP eeer/researcher and lover of all things associated with machine learning, with a particular interest in deep learning for natural language processing. The author is extremely passionate about contributing to research and learning in general, and in his free he’s either working through textbooks, personal projects, or browsing blogs related to ML/AI. Saikat Basak is currently working as a machine learning eeer at Kepler Lab, the research & development wing of SapientRazorfish, India. His work at Kepler involves problem-solving using machine learning, researching and building deep learning models. Saikat is extremely passionate about Artificial intelligence becoming a reality and hopes to be one of the architects of the future of AI. Alvaro Fuentes is a Data Scientist with an M.S. in Quantitative Economics and a M.S. in Applied Mathematics with more than 10 years' experience in analytical roles. He worked in the Central Bank of Guatemala as an Economic Analyst, building models for economic and financial data. He founded Quant Company to provide consulting and training services in Data Science topics and has been a consultant for many projects in fields such as: Business, Education, Psychology and Mass Media. He also has taught many (online and on-site) courses to students from around the World in topics such as Data Science, Mathematics, Statistics, R programming, and Python. Alvaro Fuentes is a big Python fan; he has been working with Python for about 4 years and uses it routinely to analyze data and make predictions. He also has used it in a couple of software projects. He is also a big R fan, and doesn't like the controversy between what is the “best” R or Python; he uses them both. He is also very interested in the Spark approach to big data, and likes the way it simplifies complicated topics. He is not a software eeer or a developer but is generally interested in web technologies. He also has technical skills in R programming, Spark, SQL (PostgreSQL), MS Excel, machine learning, statistical analysis, econometrics, and mathematical modeling. Predictive Analytics is a topic in which he has both professional and teaching experience. He has solved practical problems in his consulting practice using Python tools for predictive analytics and the topics of predictive analytics are part of a more general course on Data Science with Python that he teaches online. Overview Section 1: Learn Artificial Intelligence with TensorFlow Lecture 1 The Course Overview Lecture 2 Machine Learning Basics Lecture 3 TensorFlow Basics Part 1: Tensors and Variables Lecture 4 TensorFlow Basics Part 2: Graphs and Sessions Lecture 5 TensorFlow Basics Part 3: Training, Saving, and Loading Lecture 6 Convolutional Neural Networks Lecture 7 Preprocessing, Pooling, and Batch Normalization Lecture 8 Training a CNN on CIFAR-10 – Part 1 Lecture 9 Training a CNN on CIFAR-10 – Part 2 Lecture 10 Embeddings Lecture 11 Recurrent Neural Networks Lecture 12 Bidirectionality and Stacking RNNs Lecture 13 Models for Text Classification – Part 1 Lecture 14 Models for Text Classification – Part 2 Lecture 15 TensorBoard Lecture 16 Working with Estimators Lecture 17 Training Tips Lecture 18 Debugging Strats Lecture 19 Requirements for ML at Scale Lecture 20 TensorFlow with C Lecture 21 TensorFlow Serving Lecture 22 TensorFlow Lite Lecture 23 TPUs Lecture 24 AutoML Lecture 25 TensorFlow Eager Lecture 26 Course Summary and Next Steps Section 2: Hands-on Artificial Intelligence with TensorFlow Lecture 27 The Course Overview Lecture 28 The Current State of Artificial Intelligence Lecture 29 Setting Up the Environment for Deep Learning Lecture 30 Deep Learning in Fashion Lecture 31 An Intro to Transfer Learning: Skin Cancer Classification Lecture 32 Fundamentals of Object Localization and Detection Lecture 33 YOLO(You Only Look Once): Single Shot Object Detection Lecture 34 Unravelling Adversarial Learning and Generative Adversarial Nets Lecture 35 Generating Handwritten Digits Using GANs Lecture 36 Generating New Pokemons Using a DCGAN Lecture 37 Super-Resolution Generative Adversarial Networks Lecture 38 Setting Up OpenAI Gym Lecture 39 Introduction to Reinforcement Learning Lecture 40 Simple Q-Learning: Building Our First Video Game Bot Lecture 41 Deep Q-Learning: Building a Game Bot That Plays the Classic Atari Games Lecture 42 Deep Reinforcement Learning with Policy Gradient - AI that Plays Pong Section 3: TensorFlow 1.x Deep Learning Recipes for Artificial Intelligence Applications Lecture 43 The Course Overview Lecture 44 Installation and Setup Lecture 45 Defining Layers for Image Recognition Lecture 46 Building an Image Classifier with CNNs Lecture 47 Building Better CNNs with Regularization Lecture 48 Transfer Learning Lecture 49 The Intuition Behind RNNs Lecture 50 Series Forecasting with RNN Lecture 51 Producing Word Embeddings for NLP Tasks Lecture 52 Processing Text Sequences with LSTM Networks Lecture 53 Guessing Correlations from Scatter Plots Lecture 54 Introduction to Generative Adversarial Networks Lecture 55 Creating Images with GANs Lecture 56 Sequence to Sequence Models Lecture 57 Building a Language Translator Lecture 58 Key Concepts in Reinforcement Learning Lecture 59 A Simple Environment and Basic Policies Lecture 60 Training a Neural Network Policy Lecture 61 Using an Intelligent Agent Data science enthusiast looking to achieve the power of Artificial Intelligence for developing machine learning solutions using TensorFlow, then this course is what you need.,Developers and aspiring Data Science professionals who would like to develop their AI techniques to create smart and robust applications.,Data Analysts, Data Scientists, Data Eeers, Software Eeers, and anyone working with Python and data who wants to perform Machine Learning on a regular basis and use TensorFlow to build Deep Learning models. 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