Marketplace learn
Extract and persist insights from the current conversation to the knowledge base
install
source · Clone the upstream repo
git clone https://github.com/aiskillstore/marketplace
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/aiskillstore/marketplace "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/0xrdan/learn" ~/.claude/skills/aiskillstore-marketplace-learn && rm -rf "$T"
manifest:
skills/0xrdan/learn/SKILL.mdsource content
Learn
Extract insights from the current conversation and persist them to the project's knowledge base.
What This Does
Analyzes the conversation context to identify:
- Patterns: Approaches that worked well in this project
- Quirks: Project-specific oddities or non-standard behaviors discovered
- Decisions: Architectural or implementation choices made with their rationale
These insights survive session boundaries and context compaction, building a persistent understanding of the project over time.
Instructions
-
Analyze the conversation looking for:
- Successful problem-solving approaches that could apply again
- Unusual behaviors or gotchas discovered about the codebase
- Decisions made and why (architectural choices, library selections, patterns chosen)
-
Categorize each insight as pattern, quirk, or decision
-
Format and append to the appropriate file in
:knowledge/learnings/
- What works wellpatterns.md
- Unexpected behaviorsquirks.md
- Choices with rationaledecisions.md
-
Update metadata in each file's frontmatter (entry_count, last_updated)
-
Update state in
:knowledge/state.json- Set
to current timestamplast_extraction - Increment
extraction_count - Reset
to 0queries_since_extraction
- Set
-
Report what was learned to the user
Entry Format
Pattern Entry
## Pattern: [Short descriptive title] - **Discovered:** [ISO date] - **Context:** [What task/problem led to this discovery] - **Insight:** [What approach works well and why] - **Confidence:** high|medium|low
Quirk Entry
## Quirk: [Short descriptive title] - **Discovered:** [ISO date] - **Location:** [File/module/area where this applies] - **Behavior:** [What's unusual or unexpected] - **Workaround:** [How to handle it] - **Confidence:** high|medium|low
Decision Entry
## Decision: [Short descriptive title] - **Made:** [ISO date] - **Context:** [What prompted this decision] - **Choice:** [What was decided] - **Rationale:** [Why this choice over alternatives] - **Confidence:** high|medium|low
Confidence Levels
- high: Clear, verified insight with strong evidence
- medium: Reasonable inference, likely correct
- low: Tentative observation, needs validation
Only high and medium confidence insights influence routing decisions.
Steps
- Review the conversation for extractable insights
- For each insight found:
- Read the target file (patterns.md, quirks.md, or decisions.md)
- Check for duplicates (skip if similar insight exists)
- Append new entry in the format above
- Update frontmatter (increment entry_count, set last_updated)
- Read and update
knowledge/state.json - Report summary to user:
Knowledge Extraction Complete ───────────────────────────── Extracted: [Pattern] "Title of pattern learned" [Quirk] "Title of quirk discovered" [Decision] "Title of decision recorded" Knowledge base now contains: - X patterns - Y quirks - Z decisions
Example Extraction
From a conversation where we debugged an auth issue:
Quirk extracted:
## Quirk: Auth tokens require base64 padding - **Discovered:** 2026-01-08 - **Location:** src/auth/tokenService.ts - **Behavior:** JWT tokens in this codebase use non-standard base64 without padding, causing standard decoders to fail - **Workaround:** Use the custom `decodeToken()` helper instead of atob() - **Confidence:** high
Notes
- This command extracts insights from the CURRENT conversation
- For continuous extraction, use
instead/learn-on - Insights should be project-specific, not generic programming knowledge
- Avoid extracting obvious or trivial information
- When in doubt about confidence, use "medium"