literature-review
Literature Review
Conduct deep literature reviews through multi-perspective dialogue and systematic search.
Input
$0— Research topic or question$1— Optional: specific focus or angle
References
- Multi-perspective dialogue prompts (STORM):
~/.claude/skills/literature-review/references/dialogue-prompts.md - Literature review workflow (AgentLaboratory):
~/.claude/skills/literature-review/references/review-workflow.md
Scripts (from literature-search skill)
# Search Semantic Scholar
python ~/.claude/skills/deep-research/scripts/search_semantic_scholar.py --query "topic" --max-results 20
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