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Twitter Discord Awesome Multi-Agent Papers Swarms Website Swarms Framework

This is an awesome list of the best multi-agent research papers, compiled by the Swarms Team. Our mission at Swarms is to research multi-agent systems. Join our Discord Now!


Format

  • [Paper Name] [Description] [Link]

Multi-Agent Collaboration & System Design

Multi-Agent Frameworks & Benchmarks

Application-Specific Multi-Agent Systems

Software Engineering

Healthcare & Medical

Data & ML

Security

Multimodal

Other Domains

Evaluation & Model Improvement

Social Simulation & Agent Societies

Workflow, Architecture & Agent Design

Science

Alignment

Reinforcement Learning

Surveys

Others

Finance

Agents for Research

Training


Citations

In the arxiv_bibtex.bib file, you can find the bibtex citations for all the papers in this repository.

Cite This List

If you find this resource useful in your research, please cite it as follows:

BibTeX:

@misc{gomez2024awesome,
  author       = {Gomez, Kye},
  title        = {Awesome Multi-Agent Papers: A Compilation of the Best Multi-Agent Research},
  year         = {2024},
  publisher    = {GitHub},
  journal      = {GitHub Repository},
  howpublished = {\url{https://github.com/kyegomez/awesome-multi-agent-papers}},
  note         = {Maintained by the Swarms Team. Contact: kye@swarms.world}
}

APA:

Gomez, K. (2024). Awesome Multi-Agent Papers: A Compilation of the Best Multi-Agent Research. GitHub. https://github.com/kyegomez/awesome-multi-agent-papers

MLA:

Gomez, Kye. "Awesome Multi-Agent Papers: A Compilation of the Best Multi-Agent Research." GitHub, 2024, https://github.com/kyegomez/awesome-multi-agent-papers.

For questions or collaborations, contact: [email protected]

Contributing

Have a multi-agent paper that isn’t on the list? We welcome your contributions! Please open a Pull Request (PR) to add new papers and help us maintain this comprehensive and up-to-date resource for the multi-agent research community. By contributing, you enable others—especially newcomers—to access the latest research in a single, centralized repository. Thank you for helping the community grow!

License

This project is licensed under the Apache License 2.0.

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