skills/bdistill-knowledge-extraction/SKILL.md
Extract structured domain knowledge from AI models in-session or from local open-source models via Ollama. No API key needed.
npx skillsauth add globallayer/claude-code-skills bdistill-knowledge-extractionInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Extract structured, quality-scored domain knowledge from any AI model — in-session from closed models (no API key) or locally from open-source models via Ollama.
bdistill turns your AI subscription sessions into a compounding knowledge base. The agent answers targeted domain questions, bdistill structures and quality-scores the responses, and the output accumulates into a searchable, exportable reference dataset.
Adversarial mode challenges the agent's claims — forcing evidence, corrections, and acknowledged limitations — producing validated knowledge entries.
pip install bdistill
claude mcp add bdistill -- bdistill-mcp # Claude Code
/distill medical cardiology # Preset domain
/distill --custom kubernetes docker helm # Custom terms
/distill --adversarial medical # With adversarial validation
bdistill kb list # Show all domains
bdistill kb search "atrial fibrillation" # Keyword search
bdistill kb export -d medical -f csv # Export as spreadsheet
bdistill kb export -d medical -f markdown # Readable knowledge document
Structured reference JSONL — not training data:
{
"question": "What causes myocardial infarction?",
"answer": "Myocardial infarction results from acute coronary artery occlusion...",
"domain": "medical",
"category": "cardiology",
"tags": ["mechanistic", "evidence-based"],
"quality_score": 0.73,
"confidence": 1.08,
"validated": true,
"source_model": "Claude Sonnet 4"
}
Generate structured training data for traditional ML models:
/schema sepsis | hr:float, bp:float, temp:float, wbc:float | risk:category[low,moderate,high,critical]
Exports as CSV ready for pandas/sklearn. Each row tracks source_model for cross-model analysis.
For open-source models running locally:
# Install Ollama from https://ollama.com
ollama serve
ollama pull qwen3:4b
bdistill extract --domain medical --model qwen3:4b
@bdistill-behavioral-xray - X-ray a model's behavioral patternsdevelopment
Analyze cryptographic code to detect operations that leak secret data through execution timing variations.
tools
Automate Confluence page creation, content search, space management, labels, and hierarchy navigation via Rube MCP (Composio). Always search tools first for current schemas.
development
Interactive installer for Everything Claude Code — guides users through selecting and installing skills and rules to user-level or project-level directories, verifies paths, and optionally optimizes installed files.
testing
Validates Conductor project artifacts for completeness, consistency, and correctness. Use after setup, when diagnosing issues, or before implementation to verify project context.