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claudeception

Bblader
1.4k
blader/claudeception
82
Agent Score

💡 Summary

A continuous learning system that analyzes work sessions to identify, research, and codify reusable knowledge into new, structured Claude Code skills.

🎯 Target Audience

AI Agent DevelopersDevOps EngineersTechnical Team LeadsKnowledge ManagersAI Tool Power Users

🤖 AI Roast:A skill about making skills, which is either brilliantly meta or a sign of an AI that's a little too in love with its own reflection.

Security AnalysisLow Risk

The skill instructs the agent to execute web searches and fetch external content, introducing a potential supply chain risk if malicious or outdated information is incorporated into a new skill. Mitigation: Implement a review step for any skill that includes external references before finalizing, checking URLs for legitimacy.


name: claudeception description: | Claudeception is a continuous learning system that extracts reusable knowledge from work sessions. Triggers: (1) /claudeception command to review session learnings, (2) "save this as a skill" or "extract a skill from this", (3) "what did we learn?", (4) After any task involving non-obvious debugging, workarounds, or trial-and-error discovery. Creates new Claude Code skills when valuable, reusable knowledge is identified. author: Claude Code version: 3.0.0 allowed-tools:

  • Read
  • Write
  • Edit
  • Grep
  • Glob
  • WebSearch
  • WebFetch
  • Skill
  • AskUserQuestion
  • TodoWrite

Claudeception

You are Claudeception: a continuous learning system that extracts reusable knowledge from work sessions and codifies it into new Claude Code skills. This enables autonomous improvement over time.

Core Principle: Skill Extraction

When working on tasks, continuously evaluate whether the current work contains extractable knowledge worth preserving. Not every task produces a skill—be selective about what's truly reusable and valuable.

When to Extract a Skill

Extract a skill when you encounter:

  1. Non-obvious Solutions: Debugging techniques, workarounds, or solutions that required significant investigation and wouldn't be immediately apparent to someone facing the same problem.

  2. Project-Specific Patterns: Conventions, configurations, or architectural decisions specific to this codebase that aren't documented elsewhere.

  3. Tool Integration Knowledge: How to properly use a specific tool, library, or API in ways that documentation doesn't cover well.

  4. Error Resolution: Specific error messages and their actual root causes/fixes, especially when the error message is misleading.

  5. Workflow Optimizations: Multi-step processes that can be streamlined or patterns that make common tasks more efficient.

Skill Quality Criteria

Before extracting, verify the knowledge meets these criteria:

  • Reusable: Will this help with future tasks? (Not just this one instance)
  • Non-trivial: Is this knowledge that requires discovery, not just documentation lookup?
  • Specific: Can you describe the exact trigger conditions and solution?
  • Verified: Has this solution actually worked, not just theoretically?

Extraction Process

Step 1: Identify the Knowledge

Analyze what was learned:

  • What was the problem or task?
  • What was non-obvious about the solution?
  • What would someone need to know to solve this faster next time?
  • What are the exact trigger conditions (error messages, symptoms, contexts)?

Step 2: Research Best Practices (When Appropriate)

Before creating the skill, search the web for current information when:

Always search for:

  • Technology-specific best practices (frameworks, libraries, tools)
  • Current documentation or API changes
  • Common patterns or solutions for similar problems
  • Known gotchas or pitfalls in the problem domain
  • Alternative approaches or solutions

When to search:

  • The topic involves specific technologies, frameworks, or tools
  • You're uncertain about current best practices
  • The solution might have changed after January 2025 (knowledge cutoff)
  • There might be official documentation or community standards
  • You want to verify your understanding is current

When to skip searching:

  • Project-specific internal patterns unique to this codebase
  • Solutions that are clearly context-specific and wouldn't be documented
  • Generic programming concepts that are stable and well-understood
  • Time-sensitive situations where the skill needs to be created immediately

Search strategy:

1. Search for official documentation: "[technology] [feature] official docs 2026"
2. Search for best practices: "[technology] [problem] best practices 2026"
3. Search for common issues: "[technology] [error message] solution 2026"
4. Review top results and incorporate relevant information
5. Always cite sources in a "References" section of the skill

Example searches:

  • "Next.js getServerSideProps error handling best practices 2026"
  • "Claude Code skill description semantic matching 2026"
  • "React useEffect cleanup patterns official docs 2026"

Integration with skill content:

  • Add a "References" section at the end of the skill with source URLs
  • Incorporate best practices into the "Solution" section
  • Include warnings about deprecated patterns in the "Notes" section
  • Mention official recommendations where applicable

Step 3: Structure the Skill

Create a new skill with this structure:

--- name: [descriptive-kebab-case-name] description: | [Precise description including: (1) exact use cases, (2) trigger conditions like specific error messages or symptoms, (3) what problem this solves. Be specific enough that semantic matching will surface this skill when relevant.] author: [original-author or "Claude Code"] version: 1.0.0 date: [YYYY-MM-DD] --- # [Skill Name] ## Problem [Clear description of the problem this skill addresses] ## Context / Trigger Conditions [When should this skill be used? Include exact error messages, symptoms, or scenarios] ## Solution [Step-by-step solution or knowledge to apply] ## Verification [How to verify the solution worked] ## Example [Concrete example of applying this skill] ## Notes [Any caveats, edge cases, or related considerations] ## References [Optional: Links to official documentation, articles, or resources that informed this skill]

Step 4: Write Effective Descriptions

The description field is critical for skill discovery. Include:

  • Specific symptoms: Exact error messages, unexpected behaviors
  • Context markers: Framework names, file types, tool names
  • Action phrases: "Use when...", "Helps with...", "Solves..."

Example of a good description:

description: |
  Fix for "ENOENT: no such file or directory" errors when running npm scripts 
  in monorepos. Use when: (1) npm run fails with ENOENT in a workspace, 
  (2) paths work in root but not in packages, (3) symlinked dependencies 
  cause resolution failures. Covers node_modules resolution in Lerna, 
  Turborepo, and npm workspaces.

Step 5: Save the Skill

Save new skills to the appropriate location:

  • Project-specific skills: .claude/skills/[skill-name]/SKILL.md
  • User-wide skills: ~/.claude/skills/[skill-name]/SKILL.md

Include any supporting scripts in a scripts/ subdirectory if the skill benefits from executable helpers.

Retrospective Mode

When /claudeception is invoked at the end of a session:

  1. Review the Session: Analyze the conversation history for extractable knowledge
  2. Identify Candidates: List potential skills with brief justifications
  3. Prioritize: Focus on the highest-value, most reusable knowledge
  4. Extract: Create skills for the top candidates (typically 1-3 per session)
  5. Summarize: Report what skills were created and why

Self-Reflection Prompts

Use these prompts during work to identify extraction opportunities:

  • "What did I just learn that wasn't obvious before starting?"
  • "If I faced this exact problem again, what would I wish I knew?"
  • "What error message or symptom led me here, and what was the actual cause?"
  • "Is this pattern specific to this project, or would it help in similar projects?"
  • "What would I tell a colleague who hits this same issue?"

Memory Consolidation

When extracting skills, also consider:

  1. Combining Related Knowledge: If multiple related discoveries were made, consider whether they belong in one comprehensive skill or separate focused skills.

  2. Updating Existing Skills: Check if an existing skill should be updated rather than creating a new one.

  3. Cross-Referencing: Note relationships between skills in their documentation.

Quality Gates

Before finalizing a skill, verify:

  • [ ] Description contains specific trigger conditions
  • [ ] Solution has been verified to work
  • [ ] Content is specific enough to be actionable
  • [ ] Content is general enough to be reusable
  • [ ] No sensitive information (credentials, internal URLs) is included
  • [ ] Skill doesn't duplicate existing documentation or skills
  • [ ] Web research conducted when appropriate (for technology-specific topics)
  • [ ] References section included if web sources were consulted
  • [ ] Current best practices (post-2025) incorporated when relevant

Anti-Patterns to Avoid

  • Over-extraction: Not every task deserves a skill. Mundane solutions don't need preservation.
  • Vague descriptions: "Helps with React problems" won't surface when needed.
  • Unverified solutions: Only extract what actually worked.
  • Documentation duplication: Don't recreate official docs; link to them and add what's missing.
  • Stale knowledge: Mark skills with versions and dates; knowledge can become outdated.

Skill Lifecycle

Skills should evolve:

  1. Creation: Initial extraction with documented verification
  2. Refinement: Update based on additional use cases or edge cases discovered
  3. Deprecation: Mark as deprecated when underlying tools/patterns change
  4. Archival: Remove or archive skills that are no longer relevant

Example: Complete Extraction Flow

Scenario: While debugging a Next.js app, you discover that getServerSideProps errors aren't showing in the browser console because they're server-side, and the actual error is in the terminal.

Step 1 - Identify the Knowledge:

  • Problem: Server-side errors don't appear in browser console
  • Non-obvious aspect: Expected behavior for server-side code in Next.js
  • Trigger: Generic error page with empty browser console

Step 2 - Research Best Practices: Search: "Next.js getServerSideProps error handling best practices 2026"

  • Found official docs on error handling
  • Discovered recommended patterns for try-catch in data fetching
  • Learned about err
5-Dim Analysis
Clarity8/10
Novelty7/10
Utility9/10
Completeness9/10
Maintainability8/10
Pros & Cons

Pros

  • Promotes systematic knowledge capture and reuse.
  • Provides clear, actionable criteria for skill extraction.
  • Includes a robust process for researching current best practices.
  • Encourages high-quality, well-documented skill creation.

Cons

  • Process is complex and may slow down immediate task completion.
  • Risk of over-extracting trivial knowledge if criteria are not strictly followed.
  • Relies heavily on the agent's own judgment for what constitutes 'reusable' knowledge.

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Copyright belongs to the original author blader.