nano-pdf
关于
nano-pdf is a CLI tool for programmatically editing or creating PDFs using natural-language instructions. It enables developers to modify specific pages, change text, add content, or generate new PDFs from descriptive prompts. This skill is ideal for automating PDF manipulation tasks within workflows when asked to edit, create, or convert documents.
快速安装
Claude Code
推荐npx skills add swarmclawai/swarmclaw -a claude-code/plugin add https://github.com/swarmclawai/swarmclawgit clone https://github.com/swarmclawai/swarmclaw.git ~/.claude/skills/nano-pdf在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
nano-pdf
Use nano-pdf to apply edits to a specific page in a PDF using a natural-language instruction.
Quick Start
nano-pdf edit deck.pdf 1 "Change the title to 'Q3 Results' and fix the typo in the subtitle"
Creating a New PDF
nano-pdf create output.pdf "Create a one-page summary of quarterly results with a header, bullet points, and a footer"
Usage in SwarmClaw
When a user asks to create or edit a PDF:
- Check if
nano-pdfis installed:which nano-pdf - If not installed, install via
uv tool install nano-pdforpip install nano-pdf - Run the appropriate command
- Report the output file path to the user
Notes
- Page numbers are 0-based or 1-based depending on the tool's version; if the result looks off by one, retry with the other.
- Always sanity-check the output PDF before reporting success.
- For multi-page edits, run separate commands per page.
GitHub 仓库
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