CoEvo: Continual Evolution of Symbolic Solutions Using Large Language Models
Ping Guo, Qingfu Zhang, Xi Lin

TL;DR
CoEvo introduces a framework combining large language models with evolutionary algorithms to continually generate and refine symbolic solutions, enhancing search efficiency and supporting open-ended scientific discovery.
Contribution
It presents the first framework that integrates LLMs with evolutionary search for lifelong symbolic solution discovery and knowledge expansion.
Findings
Improved efficiency in discovering symbolic solutions.
Supports ongoing, open-ended solution refinement.
Demonstrates potential for scientific and engineering breakthroughs.
Abstract
The discovery of symbolic solutions -- mathematical expressions, logical rules, and algorithmic structures -- is fundamental to advancing scientific and engineering progress. However, traditional methods often struggle with search efficiency and fail to integrate knowledge effectively. While recent large language model-based (LLM-based) approaches have demonstrated improvements in search efficiency, they lack the ability to continually refine and expand upon discovered solutions and their underlying knowledge, limiting their potential for open-ended innovation. To address these limitations, we introduce CoEvo, a novel framework that leverages large language models within an evolutionary search methodology to continually generate and refine symbolic solutions. CoEvo integrates a dynamic knowledge library, enabling open-ended innovation of solutions through effective knowledge…
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Code & Models
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques
MethodsLib
