Multi Agent Deep Reinforcement Learning Applications To Capture The Flag Style Scenarios


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Multi-Agent Deep Reinforcement Learning Applications to Capture the Flag-Style Scenarios


Multi-Agent Deep Reinforcement Learning Applications to Capture the Flag-Style Scenarios

Author: Kyle Perkinson

language: en

Publisher:

Release Date: 2024


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This thesis explores the application of multi agent deep reinforcement learning (MADRL) to a swarm of unmanned vehicles working cooperatively to reach the flag in a capture-the-flag-style scenario. Deep reinforcement learning can provide high-level guidance in these kinds of scenarios where the agents observe and react to their environment as the simulation evolves. In this scenario, the defending units follow a predefined guidance algorithm to attempt to defend the flag from the MADRL agents. Many works focus on pursuit evasion problems where both pursuer and evader are reinforcement learning (RL) agents. In contrast, the MADRL agents in this scenario must pursue and reach the flag while simultaneously evading the defenders. This thesis explores reward shaping and some of the unique challenges associated with MADRL with the goal of training a swarm of agents that can work cooperatively to solve challenging scenarios. Simulations are conducted with the MADRL agents in order to demonstrate the strengths and weaknesses of reinforcement learning in these scenarios.

Deep Reinforcement Learning Hands-On


Deep Reinforcement Learning Hands-On

Author: Maxim Lapan

language: en

Publisher: Packt Publishing Ltd

Release Date: 2024-11-12


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Maxim Lapan delivers intuitive explanations and insights into complex reinforcement learning (RL) concepts, starting from the basics of RL on simple environments and tasks to modern, state-of-the-art methods Purchase of the print or Kindle book includes a free PDF eBook Key Features Learn with concise explanations, modern libraries, and diverse applications from games to stock trading and web navigation Develop deep RL models, improve their stability, and efficiently solve complex environments New content on RL from human feedback (RLHF), MuZero, and transformers Book Description Start your journey into reinforcement learning (RL) and reward yourself with the third edition of Deep Reinforcement Learning Hands-On. This book takes you through the basics of RL to more advanced concepts with the help of various applications, including game playing, discrete optimization, stock trading, and web browser navigation. By walking you through landmark research papers in the fi eld, this deep RL book will equip you with practical knowledge of RL and the theoretical foundation to understand and implement most modern RL papers. The book retains its approach of providing concise and easy-to-follow explanations from the previous editions. You'll work through practical and diverse examples, from grid environments and games to stock trading and RL agents in web environments, to give you a well-rounded understanding of RL, its capabilities, and its use cases. You'll learn about key topics, such as deep Q-networks (DQNs), policy gradient methods, continuous control problems, and highly scalable, non-gradient methods. If you want to learn about RL through a practical approach using OpenAI Gym and PyTorch, concise explanations, and the incremental development of topics, then Deep Reinforcement Learning Hands-On, Third Edition, is your ideal companion What you will learn Stay on the cutting edge with new content on MuZero, RL with human feedback, and LLMs Evaluate RL methods, including cross-entropy, DQN, actor-critic, TRPO, PPO, DDPG, and D4PG Implement RL algorithms using PyTorch and modern RL libraries Build and train deep Q-networks to solve complex tasks in Atari environments Speed up RL models using algorithmic and engineering approaches Leverage advanced techniques like proximal policy optimization (PPO) for more stable training Who this book is for This book is ideal for machine learning engineers, software engineers, and data scientists looking to learn and apply deep reinforcement learning in practice. It assumes familiarity with Python, calculus, and machine learning concepts. With practical examples and high-level overviews, it’s also suitable for experienced professionals looking to deepen their understanding of advanced deep RL methods and apply them across industries, such as gaming and finance

Markov Decision Processes


Markov Decision Processes

Author: Martin L. Puterman

language: en

Publisher: John Wiley & Sons

Release Date: 2014-08-28


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The Wiley-Interscience Paperback Series consists of selected books that have been made more accessible to consumers in an effort to increase global appeal and general circulation. With these new unabridged softcover volumes, Wiley hopes to extend the lives of these works by making them available to future generations of statisticians, mathematicians, and scientists. "This text is unique in bringing together so many results hitherto found only in part in other texts and papers. . . . The text is fairly self-contained, inclusive of some basic mathematical results needed, and provides a rich diet of examples, applications, and exercises. The bibliographical material at the end of each chapter is excellent, not only from a historical perspective, but because it is valuable for researchers in acquiring a good perspective of the MDP research potential." —Zentralblatt fur Mathematik ". . . it is of great value to advanced-level students, researchers, and professional practitioners of this field to have now a complete volume (with more than 600 pages) devoted to this topic. . . . Markov Decision Processes: Discrete Stochastic Dynamic Programming represents an up-to-date, unified, and rigorous treatment of theoretical and computational aspects of discrete-time Markov decision processes." —Journal of the American Statistical Association