One command. Your entire AI skill stack. Installed. Scans your project, detects your tech stack, and installs curated AI agent skills automatically. 1. Run npx autoskills in your project root 2. Your package.json, Gradle files, and config files are scanned to detect technologies 3. The best matching AI agent skills are selected from the audited autoskills registry 4. Only the selected skill files are downloaded from the registry and verified before writing them locally
One command. Your entire AI skill stack. Installed.
</div>Scans your project, detects your tech stack, and installs curated AI agent skills automatically.
npx autoskills
npx autoskills in your project rootpackage.json, Gradle files, and config files are scanned to detect technologiesThat's it. No config needed.
autoskills does not install directly from random upstream repositories at runtime.
Skills are synced by maintainers into the repository-local autoskills registry, scanned for prompt-injection and supply-chain risks, and recorded with SHA-256 hashes in a manifest. When you run autoskills, the CLI downloads only the skills your project needs from that curated registry, verifies every file against the manifest, and writes a skills-lock.json entry with the installed source and bundle hash.
This keeps the package small while avoiding live downloads from third-party skill sources during installation.
-y, --yes Skip confirmation prompt
--dry-run Show what would be installed without installing
-h, --help Show help message
Built to work across modern frontend, backend, mobile, cloud, and media stacks.
Node.js >= 22
Automatic SKILLS - Master Autoskills in your AI Projects
Omar Pumariega · 0K views
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