TL;DR
CliffSearch introduces an agentic evolutionary framework utilizing LLM agents for scientific algorithm discovery, emphasizing scientific structure, correctness, and novelty over mere throughput.
Contribution
The paper presents a novel LLM-guided evolutionary framework with structured artifacts, reviewer gating, and distinct mutation pathways for scientific algorithm discovery.
Findings
Framework supports explicit metric optimization and reproducibility.
Reviewer judgments serve as key selection gates.
Demonstrated on transformer, optimizer, and ablation studies.
Abstract
Scientific algorithm discovery is iterative: hypotheses are proposed, implemented, stress-tested, and revised. Current LLM-guided search systems accelerate proposal generation, but often under-represent scientific structure by optimizing code-only artifacts with weak correctness/originality gating. We present CliffSearch, an agentic evolutionary framework in which the core evolution operators (pair selection, crossover, mutation, and review) are implemented as LLM agents, and the loop is designed around three principles: (1) each node is a structured scientific artifact, instantiated in either theory+code or code_only mode, (2) reviewer judgments of correctness and originality are first-class selection gates alongside optimization of the benchmark metric of interest, and (3) mutation is split into exploration and correction pathways with distinct objectives. Exploration mutation imports…
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