AI RESEARCH

LEVI: Stronger Search Architectures Can Substitute for Larger LLMs in Evolutionary Search

arXiv CS.AI

ArXi:2605.09764v1 Announce Type: cross LLM-guided evolutionary methods such as AlphaEvolve have proven effective in domains like math, systems research, and algorithmic discovery, but their reliance on frontier models makes each run expensive. We argue this is largely an artifact of how existing frameworks allocate search: archives that fail to preserve solution diversity force compensation through stronger mutation models; blind model use spends frontier dollars on local edits a smaller model could handle; and full-set evaluation wastes rollouts on redundant examples. We.