idea-generation
Idea Generation
Generate and refine novel research ideas with literature-backed novelty assessment.
Input
$0— Research area, task description, or existing codebase context$1— Optional: additional context (e.g., "for NeurIPS", constraints)
Scripts
Novelty check against Semantic Scholar
python ~/.claude/skills/idea-generation/scripts/novelty_check.py \
--idea "Adaptive attention head pruning via gradient-guided importance" \
--max-rounds 5
Performs iterative literature search to assess if an idea is novel.
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