scholarly-publishing
Scholarly Publishing (论文投稿全流程)
你会得到什么(输出契约)
当用户说“我要投稿/返修/相机就绪/需要 LaTeX 工程化/写 rebuttal/写 cover letter”时,本 skill 负责把目标拆成可交付的出版资产包:
manuscript/:论文源文件(LaTeX / Word / Markdown 任一作为 source-of-truth)figures/:每张图的源代码/源数据/最终导出要求(PDF/EPS/SVG/TIFF)supplement/:补充材料(方法细节、附录、扩展实验、额外图表)submission/:投稿所需文件(cover letter、graphical abstract、highlights、checklist、打包 zip)revision/:返修资产(rebuttal、diff、逐条回应矩阵)build/:可复现构建产物(PDF、打包 zip、CI 日志)
目标不是“写一段文字/画一张图”,而是产出能提交、能返修、能复用、能审计的一套文件与规范。
何时使用(触发场景)
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