name: extract description: 'Build a codebase knowledge base of business logic, architecture, data flow, and patterns. Use as foundation for gauntlet challenges.' model_hint: standard
Extract Codebase Knowledge
Build or rebuild the .gauntlet/knowledge.json knowledge base.
Steps
-
Identify target directory: use the current working directory or a user-specified path
-
Run AST extraction: invoke the extractor script
python3 ${CLAUDE_PLUGIN_ROOT}/scripts/extractor.py <target-dir> -
AI enrichment: for each extracted entry, enhance the
detailfield with natural language explanation of business logic, data flow, architectural role, and rationale -
Cross-reference: link related entries across modules by matching imports, shared types, and data flow paths
-
Merge with annotations: preserve existing curated entries in
.gauntlet/annotations/ -
Save: write to
.gauntlet/knowledge.json -
Report: show summary by category, coverage gaps, difficulty distribution
Category Priority
- business_logic (weight 7)
- architecture (weight 6)
- data_flow (weight 5)
- api_contract (weight 4)
- pattern (weight 3)
- dependency (weight 2)
- error_handling (weight 1)