related-work-writing
Related Work Writing
Generate publication-quality Related Work sections with proper citations and thematic organization.
Input
$0— Current paper draft or method description$1— Collected literature (BibTeX entries, paper summaries, or literature review notes)
References
- Related work writing prompts and strategies:
~/.claude/skills/related-work-writing/references/related-work-prompts.md
Workflow
Step 1: Analyze the Paper's Contributions
- Read the current paper draft (especially Methods and Introduction)
- Identify the key contributions and novelty claims
- List the technical components that need literature context
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