LLMAgentPapers

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Basic Information

A curated and regularly maintained reading list of important academic and technical papers on large language model agents. The repository collects must-read works covering the design, capabilities, evaluation and application of LLM-based agents and multi-agent systems. Content is organized into focused topics such as agent personality, memory, planning, tool use, reinforcement learning training, multiple-agent communication, applications and frameworks. The README enumerates individual papers with authors and publication dates, highlights surveys and benchmarks, and notes code or dataset pointers when available. The project also publishes news items and welcomes community contributions to keep the list current. It is intended as a central literature resource for researchers, students and practitioners exploring LLM agents and related evaluation resources.

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Features
Structured taxonomy of papers organized by topic including agent traits, memory mechanisms, planning methods, tool usage, RL training, multi-agent communication, applications and frameworks. Extensive enumerated paper entries with authors and dates and occasional notes about available code or benchmarks. Resource sections that compile benchmarks, types of tools and a practical tool list of open-source frameworks and agent projects. A framework and applications overview that highlights prominent agent frameworks and platforms. Contribution guidance and a contributors graph to encourage community updates. News and recent-paper highlights surface new developments. The README functions as both an index and a annotated bibliography to navigate the fast-moving literature on LLM agents.
Use Cases
Helps researchers, students and engineers quickly find and compare key publications across subtopics of LLM agents, saving time when doing literature reviews or planning research. Provides pointers to surveys, benchmarks and frameworks that support evaluation and reproduction. The curated tool list and framework section point to existing open-source projects useful for building or testing agents. Notes about papers that include code or datasets make it easier to locate implementations. The taxonomy and news updates assist in tracking recent advances and emerging trends, while the contribution instructions enable community-driven upkeep and expansion of the bibliographic resource.

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