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Deep Reinforcement Learning in Unity Abhilash Majumder

Deep Reinforcement Learning in Unity By Abhilash Majumder

Deep Reinforcement Learning in Unity by Abhilash Majumder


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Summary

Intermediate-Advanced user level

Deep Reinforcement Learning in Unity Summary

Deep Reinforcement Learning in Unity: With Unity ML Toolkit by Abhilash Majumder

Gain an in-depth overview of reinforcement learning for autonomous agents in game development with Unity.

This book starts with an introduction to state-based reinforcement learning algorithms involving Markov models, Bellman equations, and writing custom C# code with the aim of contrasting value and policy-based functions in reinforcement learning. Then, you will move on to path finding and navigation meshes in Unity, setting up the ML Agents Toolkit (including how to install and set up ML agents from the GitHub repository), and installing fundamental machine learning libraries and frameworks (such as Tensorflow). You will learn about: deep learning and work through an introduction to Tensorflow for writing neural networks (including perceptron, convolution, and LSTM networks), Q learning with Unity ML agents, and porting trained neural network models in Unity through the Python-C# API. You will also explore the OpenAI Gym Environment used throughout the book.

Deep Reinforcement Learning in Unity provides a walk-through of the core fundamentals of deep reinforcement learning algorithms, especially variants of the value estimation, advantage, and policy gradient algorithms (including the differences between on and off policy algorithms in reinforcement learning). These core algorithms include actor critic, proximal policy, and deep deterministic policy gradients and its variants. And you will be able to write custom neural networks using the Tensorflow and Keras frameworks.

Deep learning in games makes the agents learn how they can perform better and collect their rewards in adverse environments without user interference. The book provides a thorough overview of integrating ML Agents with Unity for deep reinforcement learning.


What You Will Learn

  • Understand how deep reinforcement learning works in games
  • Grasp the fundamentals of deep reinforcement learning
  • Integrate these fundamentals with the Unity ML Toolkit SDK
  • Gain insights into practical neural networks for training Agent Brain in the context of Unity ML Agents
  • Create different models and perform hyper-parameter tuning
  • Understand the Brain-Academy architecture in Unity ML Agents
  • Understand the Python-C# API interface during real-time training of neural networks
  • Grasp the fundamentals of generic neural networks and their variants using Tensorflow
  • Create simulations and visualize agents playing games in Unity


    Who This Book Is For

    Readers with preliminary programming and game development experience in Unity, and those with experience in Python and a general idea of machine learning

    About Abhilash Majumder

    Abhilash Majumder is a natural language processing research engineer for HSBC (UK/India) and technical mentor for Udactiy (ML). He also has been associated with Unity Technologies and was a speaker at Unite India-18, and has educated close to 1,000 students from EMEA and SEPAC (India) on Unity. He is an ML contributor and curator for Open Source Google Research and Tensorflow, and creator of ML libraries under Python Package Index (Pypi). He is an online educationalist for Udemy and a deep learning mentor for Upgrad.

    Abhilash was an apprentice/student ambassador for Unity Technologies where he educated corporate employees and students on using general Unity for game development. He was a technical mentor (AI programming) for the Unity Ambassadors Community and Content Production. He has been associated with Unity Technologies for general education, with an emphasis on graphics and machine learning. He is one of the first content creators for Unity Technologies India since 2017.


    Table of Contents

    Chapter 1: Introduction to Reinforcement Learning

    Sub -Topics

    1. Markov Models and State Based Learning

    2. Bellman Equations

    3. Creating a Multi Armed Bandit RL simulation.

    4. Value and Policy iteration.


    Chapter 2: Pathfinding and Navigation

    Sub - Topics

    1. Pathfinding in Unity

    2. Navigation Meshes

    3. Creating Enemy AI


    Chapter 3: Setting Up ML Agents Toolkit SDK

    Sub - Topics:

    1. Installing ML Agents

    2. Configuring Brain Academy

    3. Linking ML Agents with Tensorflow with Jupyter Notebooks

    4. Playing with ML agents samples


    Chapter 4: Understanding Brain Agents and Academy

    Sub - Topics:

    1. Understanding the architecture of Brain

    2. Training different Agents with Single Brain

    3. Generic Hyperparameters


    Chapter 5: Deep Reinforcement Learning

    Sub - Topics:

    1. Fundamentals of Mathematical Machine Learning with Python

    2. Deep Learning with Keras and Tensorflow

    3. Deep Reinforcement Learning Algorithms

    4. Writing neural network for Deep Q learning for Brain

    5. Hyperparameter Tuning for Optimization

    6. Memory-based LSTM Network Design with Keras for Brain

    7. Building an AI Agent for Kart Game Using Trained Network


    Chapter 6: Competitive Networks for AI Agents

    Sub - Topics:

    1. Cooperative Network and Adversarial Network

    2. Extended Reinforcement Learning-Deep Policy Gradients

    3. Simulations Made with Unity ML Agents

    4. Simulating AI Autonomous Agent for Self-driving


    Chapter 7: Case Study - Obstacle Tower Challenge

    Sub - Topics:

    1. Obstacle Tower Challenge

    2. Unity ML Agents Challenge

    3. Research Developments from Unity AI

    4. Playing with the Open AI Gym Wrapper

    Additional information

    NLS9781484265024
    9781484265024
    1484265025
    Deep Reinforcement Learning in Unity: With Unity ML Toolkit by Abhilash Majumder
    New
    Paperback
    APress
    2020-12-27
    564
    N/A
    Book picture is for illustrative purposes only, actual binding, cover or edition may vary.
    This is a new book - be the first to read this copy. With untouched pages and a perfect binding, your brand new copy is ready to be opened for the first time

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