- 📁 agents/
- 📁 assets/
- 📁 eval-viewer/
- 📄 LICENSE.txt
- 📄 SKILL.md
Create new skills, modify and improve existing skills, and measure skill performance. Use when users want to create a skill from scratch, edit, or optimize an existing skill, run evals to test a skill, benchmark skill performance with variance analysis, or optimize a skill's description for better triggering accuracy.
- 📁 lib/
- 📄 ab_test_planner.py
- 📄 AGENT-INTEGRATION.md
- 📄 aso_scorer.py
Complete App Store Optimization (ASO) toolkit for researching, optimizing, and tracking mobile app performance on Apple App Store and Google Play Store
- 📄 CONTRIBUTING.md
- 📄 LICENSE
- 📄 README.md
Optimize any GitHub repo for maximum stars, traffic, followers, and discoverability. Rewrites README as a high-converting landing page with SEO-optimized headers, shields.io badges, star/follow CTAs, keyword-rich description and topics, humanized copywriting, and author attribution. Includes a star growth knowledge base with launch strategies, channel playbooks, and ROI rankings. Use when user says 'optimize GitHub', 'improve my repo', 'GitHub SEO', 'optimize README', 'get more stars', 'improve my GitHub', 'make repo better', 'polish GitHub', 'github-optimization', '/github-optimization', 'how to get stars', 'launch strategy', 'promote my repo'.
- 📄 autoresearch_helper.py
- 📄 SKILL.md
Autonomous experiment loop for optimization research. Use when the user wants to: - Optimize a metric through systematic experimentation (ML training loss, test speed, bundle size, build time, etc.) - Run an automated research loop: try an idea, measure it, keep improvements, revert regressions, repeat - Set up autoresearch for any codebase with a measurable optimization target Implements the autoresearch pattern with MAD-based confidence scoring, git branch isolation, and structured experiment logging. --- # Autoresearch
Analyze project dependencies for security, updates, and optimization. Keywords: dependency, npm, pip, maven, gradle, 依赖分析, 包管理
Analyze project dependencies for security, updates, and optimization. Keywords: dependency, npm, pip, maven, gradle, 依赖分析, 包管理
Set up and run an autonomous experiment loop for any optimization target. Gathers what to optimize, then starts the loop immediately. Use when asked to "run autoresearch", "optimize X in a loop", "set up autoresearch for X", or "start experiments".
Autonomously optimize any Claude Code skill by running it repeatedly, scoring outputs against binary evals, mutating the prompt, and keeping improvements. Based on Karpathy's autoresearch methodology. Use when: optimize this skill, improve this skill, run autoresearch on, make this skill better, self-improve skill, benchmark skill, eval my skill, run evals on. Outputs: an improved SKILL.md, a results log, and a changelog of every mutation tried.
Propose improvements to how the user currently uses their tools. Analyzes existing configurations, dotfiles, and workflows to suggest better patterns, unused features, integrations, or optimizations.
- 📁 .claude-plugin/
- 📁 agents/
- 📁 hooks/
- 📄 .directives.sha
- 📄 SKILL.md
Create, audit, optimize Claude Code skills. Commands: skills, list, new, optimize, agents, hooks, verify, inline, ledger, cascade, checksums, convert
Set up and run an autonomous experiment loop for any optimization target. Gathers what to optimize, then starts the loop immediately. Use when asked to "run autoresearch", "optimize X in a loop", "set up autoresearch for X", or "start experiments".
- 📁 evals/
- 📁 references/
- 📄 SKILL.md
When the user wants to optimize content for AI search engines, get cited by LLMs, or appear in AI-generated answers. Also use when the user mentions 'AI SEO,' 'AEO,' 'GEO,' 'LLMO,' 'answer engine optimization,' 'generative engine optimization,' 'LLM optimization,' 'AI Overviews,' 'optimize for ChatGPT,' 'optimize for Perplexity,' 'AI citations,' 'AI visibility,' 'zero-click search,' 'how do I show up in AI answers,' 'LLM mentions,' or 'optimize for Claude/Gemini.' Use this whenever someone wants their content to be cited or surfaced by AI assistants and AI search engines. For traditional technical and on-page SEO audits, see seo-audit. For structured data implementation, see schema-markup.