LLM-SR
Scientific equation discovery and symbolic regression using LLMs, combining code generation with evolutionary search (ICLR 2025 Oral)
README
LLM-SR: Scientific Equation Discovery and Symbolic Regression via Programming with LLMs Official Implementation of paper LLM-SR: Scientific Equation Discovery via Programming with Large Language Models (ICLR 2025 Oral). Updates Our recent more comprehensive benchmark LLM-SRBench: A New Benchmark for Scientific Equation Discovery with Large Language Models (to appear at ICML 2025 as Oral) is released following this work to effectively test LLM-based scientific equation discovery methods beyond…
Source attribution
- Awesome AI for Science — github.com/deep-symbolic-mathematics/llm-sr
- GitHub — github.com/deep-symbolic-mathematics/llm-sr
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