skills/28-maxwell2732-paper-replicate-agent-demo/dot-claude/skills/proofread/SKILL.md
Run the proofreading protocol on lecture files. Checks grammar, typos, overflow, consistency, and academic writing quality. Produces a report without editing files.
npx skillsauth add brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research proofreadInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Run the mandatory proofreading protocol on lecture files. This produces a report of all issues found WITHOUT editing any source files.
Identify files to review:
$ARGUMENTS is a specific filename: review that file only$ARGUMENTS is "all": review all lecture files in Slides/ and Quarto/For each file, launch the proofreader agent that checks for:
GRAMMAR: Subject-verb agreement, articles (a/an/the), prepositions, tense consistency TYPOS: Misspellings, search-and-replace artifacts, duplicated words OVERFLOW: Overfull hbox (LaTeX), content exceeding slide boundaries (Quarto) CONSISTENCY: Citation format, notation, terminology ACADEMIC QUALITY: Informal language, missing words, awkward constructions
Produce a detailed report for each file listing every finding with:
Save each report to quality_reports/:
.tex files: quality_reports/FILENAME_report.md.qmd files: quality_reports/FILENAME_qmd_report.mdIMPORTANT: Do NOT edit any source files. Only produce the report. Fixes are applied separately after user review.
Present summary to the user:
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