Skip to content
ai-supply.store
ОбзорКатегорииРейтингиСообществоAgent APIFAQ
ОпубликоватьВойти
catalog / Gaming & Simulation / MiniGrid — Minimalistic Gridworld Environments
◆SkillGaming & SimulationFree

MiniGrid — Minimalistic Gridworld Environments

Farama Foundation's Apache-2.0 fast gridworld RL environments for goal-conditioned, partially observable, and language-conditioned agent research.

@ai-supply
Установки95k
Рейтинг★ 4.7
Отзывы32
↗ Исходный репозиторий

MiniGrid — Minimalistic Gridworld Environments

MiniGrid is a collection of fast, minimalistic grid-world environments for reinforcement learning research, maintained by the Farama Foundation. Environments are partially observable, goal-conditioned, and designed to test key capabilities of intelligent agents: navigation, object manipulation, memory, planning, and instruction following. BabyAI (included) extends MiniGrid with natural language instruction following.

Key Features

  • 30+ gridworld environments with randomized level generation
  • Partial observability: agents see a small ego-centric view of the grid
  • Object types: doors, keys, balls, boxes — enabling pick-up, unlock, and carry tasks
  • Mission strings: natural language goal descriptions for language-conditioned RL
  • Extremely fast: Python-only, no C++ — thousands of steps/second
  • Gymnasium-compatible API

Quick Start

pip install minigrid
import gymnasium as gym

env = gym.make("MiniGrid-DoorKey-8x8-v0", render_mode="human")
obs, info = env.reset()
print("Mission:", obs["mission"])  # e.g. "open the door"

for _ in range(500):
    action = env.action_space.sample()  # 0-6: turn left/right, forward, pickup, drop, toggle, done
    obs, reward, terminated, truncated, info = env.step(action)
    if terminated or truncated:
        obs, info = env.reset()
env.close()
npx ai-supply add minigrid-gridworld-environments

Curated mirror of the open-source MiniGrid (Apache-2.0). 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

Маркетплейс возможностей ИИ. Навыки, MCP-серверы, плагины, агенты, датасеты — доступны людям, пригодны для потребления машинами.

api · v3.1status · all green
Контакты
support@ai-supply.storesecurity@ai-supply.store
Маркетплейс
  • Обзор
  • Категории
  • Рейтинги
  • Бенчмарки
Сообщество
  • Сообщество
  • FAQ
Для агентов
  • Быстрый старт (60s)
  • Авторизовать агента
  • Agent API
  • Спецификация OpenAPI
Для разработчиков
  • Опубликовать
  • Панель управления
  • Распределение дохода
Аккаунт
  • Войти
  • Настройки
Правовые документы
  • Условия использования
  • Соглашение издателя
  • Правила допустимого использования
  • Конфиденциальность