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研究ライフサイクル全体を網羅する記憶中心の科学研究エージェントシステム「AutoSci」
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ポイント
- 研究ライフサイクル全体を自動化する記憶中心のエージェントシステム「AutoSci」を提案した。
- 既存システムが満たせない、長期的な記憶管理と自己改善能力を持つ統合的な自動化システムとして重要である。
- AutoSciは、知識とプロジェクト成果物を管理する記憶モジュール、5段階のライフサイクルを実行するフローモジュール、スキルを拡張するDAGオペレーター、フィードバックから進化する自己改善機構を備える。
Abstract
Scientific research has traditionally been human-intensive, requiring researchers to coordinate literature, ideas, experiments, manuscripts, and review responses across long project cycles. The rise of LLM-based scientific agents creates an opportunity to automate this process. Such a system must support the full research lifecycle, maintain structured persistent memory across projects, and improve its own research procedures over time. However, existing systems either partially satisfy or fail to satisfy these requirements, leaving a gap for a unified automated scientific research system. As a result, we present AutoSci, a memory-centric agentic system for the full scientific research lifecycle. AutoSci is organized around four modules. SciMem provides schema-governed research memory, separating Long-Term Knowledge Memory for reusable scientific knowledge from Active Research Memory for project-level artifacts such as ideas, experiments, manuscripts, and reviews. SciFlow executes a five-stage lifecycle from literature understanding to rebuttal through a harness that controls state, context, verification, feedback, and orchestration. SciDAG augments difficult skills with DAG-shaped multi-agent operators and reusable stage-specific templates. SciEvolve converts feedback signals from users, experiments, reviews, and external environments into versioned updates to SciMem organization, SciFlow skills, and SciDAG templates. Together, these modules make AutoSci a persistent research environment that can execute, remember, and evolve across research projects. The code repository is available at https://github.com/skyllwt/AutoSci.
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