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Author Palmas, Alessandro.

Title The Reinforcement Learning Workshop [electronic resource] : Learn How to Apply Cutting-Edge Reinforcement Learning Algorithms to a Wide Range of Control Problems. [O'Reilly electronic resource]

Imprint Birmingham : Packt Publishing, Limited, 2020.
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Description 1 online resource (821 p.)
Note Description based upon print version of record.
Contents Cover -- FM -- Copyright -- Table of Contents -- Preface -- Chapter 1: Introduction to Reinforcement Learning -- Introduction -- Learning Paradigms -- Introduction to Learning Paradigms -- Supervised versus Unsupervised versus RL -- Classifying Common Problems into Learning Scenarios -- Predicting Whether an Image Contains a Dog or a Cat -- Detecting and Classifying All Dogs and Cats in an Image -- Playing Chess -- Fundamentals of Reinforcement Learning -- Elements of RL -- Agent -- Actions -- Environment -- Policy -- An Example of an Autonomous Driving Environment
Exercise 1.01: Implementing a Toy Environment Using Python -- The Agent-Environment Interface -- What's the Agent? What's in the Environment? -- Environment Types -- Finite versus Continuous -- Deterministic versus Stochastic -- Fully Observable versus Partially Observable -- POMDP versus MDP -- Single Agents versus Multiple Agents -- An Action and Its Types -- Policy -- Stochastic Policies -- Policy Parameterizations -- Exercise 1.02: Implementing a Linear Policy -- Goals and Rewards -- Why Discount? -- Reinforcement Learning Frameworks -- OpenAI Gym -- Getting Started with Gym -- CartPole
Gym Spaces -- Exercise 1.03: Creating a Space for Image Observations -- Rendering an Environment -- Rendering CartPole -- A Reinforcement Learning Loop with Gym -- Exercise 1.04: Implementing the Reinforcement Learning Loop with Gym -- Activity 1.01: Measuring the Performance of a Random Agent -- OpenAI Baselines -- Getting Started with Baselines -- DQN on CartPole -- Applications of Reinforcement Learning -- Games -- Go -- Dota 2 -- StarCraft -- Robot Control -- Autonomous Driving -- Summary -- Chapter 2: Markov Decision Processes and Bellman Equations -- Introduction -- Markov Processes
The Markov Property -- Markov Chains -- Markov Reward Processes -- Value Functions and Bellman Equations for MRPs -- Solving Linear Systems of an Equation Using SciPy -- Exercise 2.01: Finding the Value Function in an MRP -- Markov Decision Processes -- The State-Value Function and the Action-Value Function -- Bellman Optimality Equation -- Solving the Bellman Optimality Equation -- Solving MDPs -- Algorithm Categorization -- Value-Based Algorithms -- Policy Search Algorithms -- Linear Programming -- Exercise 2.02: Determining the Best Policy for an MDP Using Linear Programming -- Gridworld
Activity 2.01: Solving Gridworld -- Summary -- Chapter 3: Deep Learning in Practice with TensorFlow 2 -- Introduction -- An Introduction to TensorFlow and Keras -- TensorFlow -- Keras -- Exercise 3.01: Building a Sequential Model with the Keras High-Level API -- How to Implement a Neural Network Using TensorFlow -- Model Creation -- Model Training -- Loss Function Definition -- Optimizer Choice -- Learning Rate Scheduling -- Feature Normalization -- Model Validation -- Performance Metrics -- Model Improvement -- Overfitting -- Regularization -- Early Stopping -- Dropout -- Data Augmentation
Note Batch Normalization.
Summary With the help of practical examples and engaging activities, The Reinforcement Learning Workshop takes you through reinforcement learning's core techniques and frameworks. Following a hands-on approach, it allows you to learn reinforcement learning at your own pace to develop your own intelligent applications with ease.
Subject Reinforcement learning.
Algorithms.
Algorithms
Apprentissage par renforcement (Intelligence artificielle)
Algorithmes.
algorithms.
Programming & scripting languages: general.
Artificial intelligence.
Neural networks & fuzzy systems.
Algorithms
Reinforcement learning
Added Author Ghelfi, Emanuele.
Petre, Alexandra Galina.
Kulkarni, Mayur.
N.S., Anand.
Nguyen, Quan.
Sen, Aritra.
So, Anthony (Data scientist)
Basak, Saikat.
Other Form: Print version: Palmas, Alessandro The Reinforcement Learning Workshop : Learn How to Apply Cutting-Edge Reinforcement Learning Algorithms to a Wide Range of Control Problems Birmingham : Packt Publishing, Limited,c2020 9781800200456
ISBN 9781800209961
1800209967
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