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Reinforcement Learning & Deep RL Python(Theory & Projects) - Panter - 17.05.2022 Reinforcement Learning & Deep RL Python(Theory & Projects) MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English + srt | Duration: 164 lectures (14h 13m) | Size: 5.1 GB Reinforcement Learning: Deep Q-Learning, SARSA, Deep RL, with Car Racing and Trading Project and Project and Interview What you'll learn Reinforcement & Deep Reinforcement Learning ● Practical explanation and live coding with Python ● Deep Reinforcement Learning applications ● Q-Learning using Python ● SARSA using Python ● Random Solutions using Python ● Hyper-parameters of Deep RL ● MDP ● Mini Project (Frozen Lake) using Python ● Open AI GYM ● Intro to Deep Learning ● Deep Learning Fundamentals ● Mini Project (CIFAR) using Pytorch ● Fundamentals of DQN ● Cart-Pole from Scratch Project using Python ● Stable Baseline 3 ● Cart-Pole from Scratch Project using Stable Baseline 3 ● Car Racing Game Project using Stable Baseline 3 ● Trading Bot Project using Stable Baseline 3 ● Interview Preparations Requirements ● Prior knowledge of Python. ● An elementary understanding of programming. ● A willingness to learn and practice. Description Comprehensive Course Description Reinforcement Learning (RL) is a subset of machine learning. In the RL training method, desired actions are rewarded, and undesired actions are punished. In general, an RL agent can understand and interpret its environment, take actions, and also learn through trial and error. Deep Reinforcement Learning (Deep RL) is also a subfield of machine learning. In Deep RL, intelligent machines and software are trained to learn from their actions in the same way that humans learn from experience. That is, Deep RL blends RL techniques with Deep Learning (DL) strategies. Deep RL has the capability to solve complex problems that were unmanageable by machines in the past. Therefore, the potential applications of Deep RL in various sectors such as robotics, medicine, finance, gaming, smart grids, and more are enormous. The phenomenal ability of Artificial Neural Networks (ANNs) to process unstructured information fast and learn like a human brain is starting to be exploited only now. We are only in the initial stages of seeing the full impact of the technology that combines the power of RL and ANNs. This latest technology has the potential to revolutionize every sphere of commerce and science. How Is This Course Different? In this detailed Learning by Doing course, each new theoretical explanation is followed by practical implementation. This course offers you the right balance between theory and practice. Six projects have been included in the course curriculum to simplify your learning. The focus is to teach RL and Deep RL to a beginner. Hence, we have tried our best to simplify things. The course 'A Complete Guide to Reinforcement & Deep Reinforcement Learning' reflects the most in-demand workplace skills. The explanations of all the theoretical concepts are clear and concise. The instructors lay special emphasis on complex theoretical concepts, making it easier for you to understand them. The pace of the video presentation is neither fast nor slow. It's perfect for learning. You will understand all the essential RL and Deep RL concepts and methodologies. The course is • Simple and easy to learn. • Self-explanatory. • Highly detailed. • Practical with live coding. • Up-to-date covering the latest knowledge of this field. As this course is an exhaustive compilation of all the fundamental concepts, you will be motivated to learn RL and Deep RL. Your learning progress will be quick. You are certain to experience much more than what you learn. At the end of each new concept, a revision task such as Homework/activity/quiz is assigned. The solutions for these tasks are also provided. This is to assess and promote your learning. The whole process is closely linked to the concepts and methods you have already learned. A majority of these activities are coding-based, as the goal is to prepare you for real-world implementations. In addition to high-quality video content, you will also get access to easy-to-understand course material, assessment questions, in-depth subtopic notes, and informative handouts in this course. You are welcome to contact our friendly team in case of any queries related to the course, and we assure you of a prompt response. The course tutorials are subdivided into 145+ short HD videos. In every video, you'll learn something new and fascinating. In addition, you'll learn the key concepts and methodologies of RL and Deep RL, along with several practical implementations. The total runtime of the course videos is 14+ hours. Why Should You Learn RL & Deep RL? RL and Deep RL are the hottest research topics in the Artificial Intelligence universe. Reinforcement learning (RL) is a subset of machine learning concerned with the actions that intelligent agents need to take in an environment in order to maximize the reward. RL is one of three essential machine learning paradigms, besides supervised learning and unsupervised learning. Let's look at the next hot research topic. Deep Reinforcement Learning (Deep RL) is a subset of machine learning that blends Reinforcement Learning (RL) and Deep Learning (DL). Deep RL integrates deep learning into the solution, permitting agents to make decisions from unstructured input data without human intervention. Deep RL algorithms can take in large inputs (e.g., every pixel rendered to the user's screen in a video game) and determine the best actions to perform to optimize an objective (e.g., attain the maximum game score). Deep RL has been used for an assortment of applications, including but not limited to video games, oil & gas, natural language processing, computer vision, retail, education, transportation, and healthcare. Course Content The comprehensive course consists of the following topics 1. Introduction a. Motivation i. What is Reinforcement Learning? ii. How is it different from other Machine Learning Frameworks? iii. History of Reinforcement Learning iv. Why Reinforcement Learning? v. Real-world examples vi. Scope of Reinforcement Learning vii. Limitations of Reinforcement Learning viii. Exercises and Thoughts b. Terminologies of RL with Case Studies and Real-World Examples i. Agent ii. Environment iii. Action iv. State v. Transition vi. Reward vii. Quiz/Solution viii. Policy ix. Planning x. Exercises and Thoughts 2. Hands-on to Basic Concepts a. Naïve/Random Solution i. Intro to game ii. Rules of the game iii. Setups iv. Implementation using Python b. RL-based Solution i. Intro to Q Table ii. Dry Run of states iii. How RL works iv. Implementing RL-based solution using Python v. Comparison of solutions vi. Conclusion 3. Different types of RL Solutions a. Hyper Parameters and Concepts I. Intro to Epsilon II. How to update epsilon III. Quiz/Solution IV. Gamma, Discount Factor V. Quiz/Solution VI. Alpha, Learning Rate VII. Quiz/Solution VIII. Do's and Don'ts of Alpha IX. Q Learning Equation X. Optimal Value for number of Episodes XI. When to Stop Training b. Markov Decision Process i. Agent-environment interaction ii. Goals iii. Returns iv. Episodes v. Value functions vi. Optimization of policy vii. Optimization of the value function viii. Approximations ix. Exercises and Thoughts c. Q-Learning i. Intro to QL ii. Equation Explanation iii. Implementation using Python iv. Off-Policy Learning d. SARSA i. Intro to SARSA ii. State, Action, Reward, State, Action iii. Equation Explanation iv. Implementation using Python v. On-Policy Learning e. Q-Learning vs. SARSA i. Difference in Equation ii. Difference in Implementation iii. Pros and Cons iv. When to use SARSA v. When to use Q Learning vi. Quiz/Solution 4. Mini Project Using the Above Concepts (Frozen Lake) a. Intro to GYM b. Gym Environment c. Intro to Frozen Lake Game d. Rules e. Implementation using Python f. Agent Evaluation g. Conclusion 5. Deep Learning/Neural Networks a. Deep Learning Framework i. Intro to Pytorch ii. Why Pytorch? iii. Installation iv. Tensors v. Auto Differentiation vi. Pytorch Practice b. Architecture of DNN i. Why DNN? ii. Intro to DNN iii. Perceptron iv. Architecture v. Feed Forward vi. Quiz/Solution vii. Activation Function viii. Loss Function ix. Gradient Descent x. Weight Initialization xi. Quiz/Solution xii. Learning Rate xiii. Batch Normalization xiv. Optimizations xv. Dropout xvi. Early Stopping c. Implementing DNN for CIFAR Using Python 6. Deep RL / Deep Q Network (DQN) a. Getting to DQN i. Intro to Deep Q Network ii. Need of DQN iii. Basic Concepts iv. How DQN is related to DNN v. Replay Memory vi. Epsilon Greedy Strategy vii. Quiz/Solution viii. Policy Network ix. Target Network x. Weights Sharing/Target update xi. Hyper-parameters b. Implementing DQN i. DQN Project - Cart and Pole using Pytorch ii. Moving Averages iii. Visualizing the agent iv. Performance Evaluation 7. Car Racing Project a. Intro to game b. Implementation using DQN 8. Trading Project a. Stable Baseline b. Trading Bot using DQN 9. Interview Preparation Successful completion of this course will enable you to ● Relate the concepts and practical applications of Reinforcement and Deep Reinforcement Learning with real-world problems. ● Apply for the jobs related to Reinforcement and Deep Reinforcement Learning. ● Work as a freelancer for jobs related to Reinforcement and Deep Reinforcement Learning. ● Implement any project that requires Reinforcement and Deep Reinforcement Learning knowledge from scratch. ● Extend or improve the implementation of any other project for performance improvement. ● Know the theory and practical aspects of Reinforcement and Deep Reinforcement Learning. Who this course is for ● Beginners who know absolutely nothing about Reinforcement and Deep Reinforcement Learning. ● People who want to develop intelligent solutions. ● People who love to learn the theoretical concepts first before implementing them using Python. ● People who want to learn PySpark along with its implementation in realistic projects. ● Machine Learning or Deep Learning Lovers. ● Anyone interested in Artificial Intelligence. Who this course is for ● Beginners who know absolutely nothing about Reinforcement and Deep Reinforcement Learning. ● People who want to develop intelligent solutions. ● People who love to learn the theoretical concepts first before implementing them using Python. Download from RapidGator Download from Rapidgator: Download from Keep2Share |