bundled/skills/scientific-reporting/SKILL.md
Write research/technical reports with strong structure + figure standards. Supports Markdown/HTML/PDF outputs (Quarto optional), executive summary, methods, results, discussion, and reproducibility appendix.
npx skillsauth add foryourhealth111-pixel/vco-skills-codex scientific-reportingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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很多“报告写作失败”不是写不出来,而是:
docs-media(被 PDF/Word 关键词抢走)这个 skill 的职责是:把报告当成可交付工程,并把图表与叙事纳入同一规范。
科研报告、技术报告、项目报告、实验报告、分析报告、HTML 报告、PDF 报告technical report、research report、HTML report、Quarto、RMarkdown不适用:
docs-media/pdf/docx/markitdownMarkdown / HTML / PDF(可多选)推荐输出为(可按项目名建子目录):
reports/<topic>/report.md(source-of-truth)reports/<topic>/report.html(可选)reports/<topic>/report.pdf(可选)reports/<topic>/figures/(报告引用的图,来源于 figures/**/out)reports/<topic>/appendix/(方法、参数、环境、额外图表)模板:templates/report-skeleton.md
报告必须包含(即使简写):
scientific-visualization(publication-quality)scientific-schematics(流程/机制/系统图)scientific-writing(段落化、避免 bullet 作为最终稿)如果要 HTML:
如果要 PDF:
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