inkscape
Inkscape CLI Vector Graphics
Manipulate vector graphics via the CLI-Anything Inkscape harness. Supports one-shot commands, REPL session workflows, and Inkscape CLI backend for exports and path operations.
Configuration
Harness paths assume the author's macOS Anaconda install layout. Adjust the listed paths to match your local install of
cli-anything-inkscapeif needed.
| Setting | Value |
|---|---|
| CLI tool | ~/anaconda3/bin/cli-anything-inkscape |
| Inkscape backend | /opt/homebrew/bin/inkscape (v1.4.2) |
| Harness source | ~/bin/inkscape/agent-harness/ |
| Architecture | Hybrid: lxml for DOM ops + Inkscape CLI for export/path-ops/queries |
| Supported input | SVG |
| Supported output | SVG, PNG, PDF, PS, EPS |
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