literature-search
Literature Search
Search multiple academic databases to find relevant papers.
Input
$ARGUMENTS— The search query (natural language)
Scripts
Semantic Scholar (primary — best for ML/AI, has BibTeX)
python ~/.claude/skills/deep-research/scripts/search_semantic_scholar.py \
--query "QUERY" --max-results 20 --year-range 2022-2026 \
--api-key "$(grep S2_API_Key /Users/lingzhi/Code/keys.md 2>/dev/null | cut -d: -f2 | tr -d ' ')" \
-o results_s2.jsonl
Key flags: --peer-reviewed-only, --top-conferences, --min-citations N, --venue NeurIPS ICML
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