reviewing-plugin-marketplace
Reviewing Plugin Marketplace Configurations
Comprehensive review of Claude Code plugin marketplace and plugin configurations against official best practices and common pitfalls.
Quick Start
Automated Review (Recommended)
Run the verification script:
bash scripts/verify-marketplace.sh [marketplace-directory]
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