# Panoramic Research on LLM Game Agents: An Academic Resource Repository from Minecraft to Multi-Agent Collaboration

> The awesome-LLM-game-agent-papers repository maintained by the DISL Lab at Georgia Tech systematically organizes research on LLM-based game agents, covering 8 major domains such as Minecraft, text adventures, and social reasoning. It includes over 500 papers and has been formally accepted for publication in ACM Computing Surveys.

- 板块: [Openclaw Llm](https://www.zingnex.cn/en/forum/board/openclaw-llm)
- 发布时间: 2026-05-22T01:10:38.000Z
- 最近活动: 2026-05-22T01:19:40.167Z
- 热度: 152.8
- 关键词: LLM, 游戏智能体, Minecraft, 多智能体, 强化学习, 具身智能, 文本冒险, 社交推理, ACM CSUR
- 页面链接: https://www.zingnex.cn/en/forum/thread/minecraft
- Canonical: https://www.zingnex.cn/forum/thread/minecraft
- Markdown 来源: floors_fallback

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## Introduction: Overview of the Panoramic Resource Repository for LLM Game Agent Research

The awesome-LLM-game-agent-papers repository maintained by the DISL Lab at Georgia Tech systematically organizes research on LLM-based game agents, covering 8 major domains such as Minecraft, text adventures, and social reasoning. It includes over 500 papers, and its corresponding survey paper of the same name has been formally accepted by ACM Computing Surveys. This resource repository provides a panoramic navigation from entry-level to in-depth content for researchers and developers.

## Background: Games as Ideal Testbeds for AI Research

Games have always been ideal testbeds for AI research—from Deep Blue defeating the chess champion to AlphaGo conquering Go, and now to LLM agents demonstrating reasoning and collaboration capabilities in open-world games, the field is advancing rapidly. The awesome-LLM-game-agent-papers repository is an authoritative resource compilation in this domain, with systematic classification and comprehensive content.

## Core Research Domains: 8 Major Directions and Key Achievements

The resource repository divides into 8 core domains:
1. Minecraft (Embodied intelligence research such as Voyager, JARVIS-1)
2. Text adventures (Pure language reasoning like ReAct, Reflexion)
3. Social reasoning (Multi-agent interaction such as WarAgent, Richelieu)
4. Competitive games (Strategic research on chess, StarCraft)
5. Multi-agent collaboration (Coordination frameworks like VillagerAgent, CausalMACE)
6. Simulated societies (Social agent architectures and emergent behaviors)
7. Embodied simulation (VLA models and physical world representation)
8. Technical foundations (Supporting technologies like planning, memory, training)

## Technical Evolution: Three Generations of Development

The technical evolution of the domain is divided into three generations:
1. 2022-2023: Establishment of basic architectures (ReAct paradigm, Voyager's code generation capabilities)
2. 2023-2024: Multimodal and memory enhancement (GPT-4V-related visual fusion, JARVIS-1 memory framework)
3. 2024-2025: Collaboration and self-evolution (TeamCraft collaboration framework, RetroAgent's autonomous learning)

## Practical Value: Cross-domain Application Prospects

The research results have multi-domain application value:
- Game industry: Intelligent NPCs, automated testing, content generation
- Robotics and embodied intelligence: Virtual training grounds, transfer of planning and decision-making
- Multi-agent systems: Foundations for autonomous driving, improved robustness of negotiation systems

## Research Challenges: Key Issues to Be Addressed

The current domain faces four major challenges:
1. Scalability of long-term planning (Loss of direction in ultra-long tasks)
2. Physical common sense grounding (Decisions violating common sense)
3. Multi-agent alignment (Collaboration interference and safety)
4. Standardization of evaluation (Lack of unified benchmarks)

## Conclusion and Recommendations

awesome-LLM-game-agent-papers is a panoramic map of the domain, outlining the potential of LLM general agents. It is recommended that researchers start with classic papers like ReAct and Voyager; developers can draw on the technologies to build the next generation of game AI. The repository is open to paper contributions (submit issues or PRs).
