Skip to content
ai-supply.store
खोजेंश्रेणियाँलीडरबोर्डसमुदायAgent APIFAQ
प्रकाशित करेंसाइन इन
catalog / Gaming & Simulation / PettingZoo — Multi-Agent Reinforcement Learning
◆SkillGaming & SimulationFree

PettingZoo — Multi-Agent Reinforcement Learning

Farama Foundation's MIT-licensed multi-agent RL environment library — 50+ cooperative and competitive games for training and evaluating MARL algorithms.

@ai-supply
इंस्टॉल143k
रेटिंग★ 4.8
समीक्षाएं48
↗ सोर्स रिपॉज़िटरी

PettingZoo — Multi-Agent Reinforcement Learning

PettingZoo is the multi-agent counterpart to Gymnasium, providing a standard API for environments where multiple agents interact simultaneously. It covers cooperative, competitive, and mixed-motive scenarios — from classic board games (Chess, Go, Connect Four) to Atari multiplayer games (Pong, Surround) and particle physics environments — making it the standard benchmark suite for multi-agent RL research and game AI development.

Key Features

  • 50+ multi-agent environments across 5 families: Atari, Classic, MPE, SISL, Butterfly
  • AECEnv (turn-based) and ParallelEnv (simultaneous-action) APIs
  • Compatible with RLlib, Stable-Baselines3 (via SuperSuit wrappers), and CleanRL
  • Parallel environment vectorization for high-throughput training
  • Standardized agent observation and action spaces across all environments

Quick Start

pip install pettingzoo[classic]
from pettingzoo.classic import chess_v6

env = chess_v6.env(render_mode="human")
env.reset(seed=42)
for agent in env.agent_iter():
    observation, reward, termination, truncation, info = env.last()
    if termination or truncation:
        action = None
    else:
        action = env.action_space(agent).sample()
    env.step(action)
env.close()
npx ai-supply add pettingzoo-multiagent-rl

Curated mirror of the open-source PettingZoo (MIT). Get it from the source.

More from @ai-supply

View profile →
◐Model
llama.cpp
Pure C/C++ LLM inference library — run quantized models on CPU, Metal, CUDA and more.
↓ 900k★ 4.9
⇄Connector
vLLM
High-throughput, memory-efficient LLM inference engine with PagedAttention and continuous batching.
↓ 820k★ 4.9
◉Agent
MetaGPT
Multi-agent framework that assigns GPT roles (PM, engineer, QA) to solve complex software tasks end-to-end.
↓ 820k★ 4.8
◆Skill
NLTK
The Natural Language Toolkit — Python's foundational NLP library for tokenization, POS tagging, parsing, and corpora.
↓ 760k★ 4.7
ai-supply.store

AI क्षमताओं का मार्केटप्लेस। स्किल्स, MCP सर्वर, प्लगइन्स, एजेंट, डेटासेट — मानवों द्वारा खोजने योग्य, मशीनों द्वारा उपभोग योग्य।

api · v3.1status · all green
संपर्क करें
support@ai-supply.storesecurity@ai-supply.store
मार्केटप्लेस
  • खोजें
  • श्रेणियाँ
  • लीडरबोर्ड
  • बेंचमार्क
समुदाय
  • समुदाय
  • FAQ
एजेंट के लिए
  • क्विकस्टार्ट (60s)
  • एजेंट अधिकृत करें
  • Agent API
  • OpenAPI स्पेसिफिकेशन
बिल्डर्स के लिए
  • प्रकाशित करें
  • डैशबोर्ड
  • राजस्व हिस्सेदारी
खाता
  • साइन इन
  • सेटिंग्स
कानूनी
  • नियम व शर्तें
  • प्रकाशक अनुबंध
  • स्वीकार्य उपयोग नीति
  • गोपनीयता