By sk8metalme
Interactive quiz generation for learning reinforcement. Uses subagent research and AskUserQuestion for 4-question quiz sets with statistics and review.
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npx claudepluginhub sk8metalme/ai-agent-setup --plugin quizknockE2E-first development planning and Walking Skeleton design. Guides end-to-end implementation strategy and minimal viable architecture.
Automatically extract and sync knowledge from daily Claude Code conversations to a GitHub repository.
UI/UX design review and accessibility checking. Evaluates user interfaces for usability, accessibility standards, and design consistency.
OSS license compliance checking and auditing. Identifies license conflicts, tracks dependencies, and ensures legal compliance.
再帰的な深堀りで要件を明確化。「深堀り」「検討して」「ultrathink」「よく考えて」「他にはないか」等のキーワードで起動。推測を排除し品質向上。
Interactive learning companion — creates personalized learning plans, quizzes with adaptive difficulty, and tracks progress across sessions
In-context coding tutor for Claude Code. Learn from your real project with explanations, quizzes, diagnostics, and belt-based progression — locally and privately.
Personalized coding tutorials that use your actual codebase for examples with spaced repetition quizzes
AI-powered Socratic learning mode - Transform Claude into a patient coding mentor that guides you through problem-solving without giving direct answers
Agent skills that package evidence-backed pedagogical methodologies (explain-and-check, quiz-me, connect-to-what-you-know, ask-me-questions, learn-by-doing, linked-notes, flashcards) as workflows applied to code. The anti-cognitive-surrender layer: closes the comprehension gap that opens when an LLM has done the work on the human's behalf.
Adaptive technical tutoring skill that builds a persistent knowledge graph and learner profile across sessions