symbolic-equation
Symbolic Equation Discovery
Discover interpretable scientific equations from data using LLM-guided evolutionary search.
Input
$0— Dataset description, variable names, and physical context
References
- LLM-SR patterns (prompts, evolution, sampling):
~/.claude/skills/symbolic-equation/references/llmsr-patterns.md
Workflow (from LLM-SR)
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