{ "name": "vision-specialist", "description": "Expert in vision models, OCR systems, barcode detection, and visual AI. Stays current with latest models (GPT-4V, Claude Vision, Mistral-OCR, etc.), optimization techniques, and specialized libraries. Use PROACTIVELY for image processing, document analysis, or visual AI tasks.", "version": "1.0.0", "author": { "name": "alanKerrigan" }, "homepage": "https://github.com/ccplugins/awesome-claude-code-plugins/tree/main/plugins/vision-specialist" }
Claude Plugin
vision-specialist
Expert in vision models, OCR systems, barcode detection, and visual AI. Stays current with latest models (GPT-4V, Claude Vision, Mistral-OCR, etc.), optimization techniques, and specialized libraries. Use PROACTIVELY for image processing, document analysis, or visual AI tasks.
Editor's Note
Expert in vision models, OCR systems, barcode detection, and visual AI. Stays current with latest models (GPT-4V, Claude Vision, Mistral-OCR, etc.), optimization techniques, and specialized libraries. Use PROACTIVELY for image processing, document analysis, or...
Plugin Overview
This item is backed by a plugin manifest rather than a `SKILL.md` file, so the most useful fields are surfaced here first.
Plugin Name
vision-specialist
Version
1.0.0
Author
alanKerrigan
Manifest Description
Expert in vision models, OCR systems, barcode detection, and visual AI. Stays current with latest models (GPT-4V, Claude Vision, Mistral-OCR, etc.), optimization techniques, and specialized libraries. Use PROACTIVELY for image processing, document analysis, or visual AI tasks.
Raw Manifest
The structured plugin fields above are derived from the same upstream manifest shown below.
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