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Autores principales: Liu, Gang, Zhu, Yihan, Chen, Jie, Jiang, Meng
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2510.06056
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author Liu, Gang
Zhu, Yihan
Chen, Jie
Jiang, Meng
author_facet Liu, Gang
Zhu, Yihan
Chen, Jie
Jiang, Meng
contents Large language models hold promise as scientific assistants, yet existing agents either rely solely on algorithm evolution or on deep research in isolation, both of which face critical limitations. Pure algorithm evolution, as in AlphaEvolve, depends only on the internal knowledge of LLMs and quickly plateaus in complex domains, while pure deep research proposes ideas without validation, resulting in unrealistic or unimplementable solutions. We present DeepEvolve, an agent that integrates deep research with algorithm evolution, uniting external knowledge retrieval, cross-file code editing, and systematic debugging under a feedback-driven iterative loop. Each iteration not only proposes new hypotheses but also refines, implements, and tests them, avoiding both shallow improvements and unproductive over-refinements. Across nine benchmarks in chemistry, mathematics, biology, materials, and patents, DeepEvolve consistently improves the initial algorithm, producing executable new algorithms with sustained gains. By bridging the gap between unguided evolution and research without grounding, DeepEvolve provides a reliable framework for advancing scientific algorithm discovery. Our code is available at https://github.com/liugangcode/deepevolve.
format Preprint
id arxiv_https___arxiv_org_abs_2510_06056
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Scientific Algorithm Discovery by Augmenting AlphaEvolve with Deep Research
Liu, Gang
Zhu, Yihan
Chen, Jie
Jiang, Meng
Artificial Intelligence
Large language models hold promise as scientific assistants, yet existing agents either rely solely on algorithm evolution or on deep research in isolation, both of which face critical limitations. Pure algorithm evolution, as in AlphaEvolve, depends only on the internal knowledge of LLMs and quickly plateaus in complex domains, while pure deep research proposes ideas without validation, resulting in unrealistic or unimplementable solutions. We present DeepEvolve, an agent that integrates deep research with algorithm evolution, uniting external knowledge retrieval, cross-file code editing, and systematic debugging under a feedback-driven iterative loop. Each iteration not only proposes new hypotheses but also refines, implements, and tests them, avoiding both shallow improvements and unproductive over-refinements. Across nine benchmarks in chemistry, mathematics, biology, materials, and patents, DeepEvolve consistently improves the initial algorithm, producing executable new algorithms with sustained gains. By bridging the gap between unguided evolution and research without grounding, DeepEvolve provides a reliable framework for advancing scientific algorithm discovery. Our code is available at https://github.com/liugangcode/deepevolve.
title Scientific Algorithm Discovery by Augmenting AlphaEvolve with Deep Research
topic Artificial Intelligence
url https://arxiv.org/abs/2510.06056