The AI Arena: A Framework For Distributed Multi-agent Reinforcement Learning
2021 Β· Edward W. Staley, Corban G. Rivera, Ashley J. Llorens
Abstract
Advances in reinforcement learning (RL) have resulted in recent breakthroughs in the application of artificial intelligence (AI) across many different domains. An emerging landscape of development environments is making powerful RL techniques more accessible for a growing community of researchers. However, most existing frameworks do not directly address the problem of learning in complex operating environments, such as dense urban settings or defense-related scenarios, that incorporate distributed, heterogeneous teams of agents. To help enable AI research for this important class of applications, we introduce the AI Arena: a scalable framework with flexible abstractions for distributed multi-agent reinforcement learning. The AI Arena extends the OpenAI Gym interface to allow greater flexibility in learning control policies across multiple agents with heterogeneous learning strategies and localized views of the environment. To illustrate the utility of our framework, we present experim
Authors
(none)
Tags
Stats
Related papers
- DIAMBRA Arena: A New Reinforcement Learning Platform For Research And Experimentation (2022)0.00
- Deep Multiagent Reinforcement Learning: Challenges And Directions (2021)0.00
- Multi-agent Reinforcement Learning: A Report On Challenges And Approaches (2018)0.00
- Genai-based Multi-agent Reinforcement Learning Towards Distributed Agent Intelligence: A Generative-rl Agent Perspective (2025)0.00
- Distributed Deep Reinforcement Learning: A Survey And A Multi-player Multi-agent Learning Toolbox (2022)11.39
- Hierarchical Multi-agent Reinforcement Learning For Air Combat Maneuvering (2023)8.82
- Efficient Distributed Framework For Collaborative Multi-agent Reinforcement Learning (2022)0.00
- A New Framework For Multi-agent Reinforcement Learning -- Centralized Training And Exploration With Decentralized Execution Via Policy Distillation (2019)0.00