--- name: data-fidelity description: Fact-checking and source verification workflow for research documents. Launches parallel fact-checkers, aggregates findings, applies corrections systematically. version: 1.0.0 type: skill category: research status: stable origin: tibsfox modified: false first_seen: 2026-03-31 first_path: .claude/skills/data-fidelity/SKILL.md superseded_by: null --- # Data Fidelity Activates when research documents need verification, fact-checking, or data updates. ## When to Use - After initial research documents are written (quality gate before publish) - When refreshing documents with current data (market prices, company stats) - When a user says "check for errors", "verify claims", "fact check", "add fidelity" ## Workflow ### Phase 1: Fact-Check Fleet Launch 2-3 parallel fact-checker agents, each covering a different document range: - Agent A: docs 01-12 - Agent B: docs 13-24 - Agent C: forward-looking/speculative docs (if any) ### Phase 2: Aggregate Findings Collect reports. Categorize by severity: - **ERROR** — factually wrong, must fix - **QUESTIONABLE** — might be wrong, needs verification - **INCONSISTENCY** — contradicts another document ### Phase 3: Data Refresh Launch market-researcher agents for current pricing, company data, and industry stats. ### Phase 4: Apply Corrections Systematic edit pass: 1. Fix all ERRORs first 2. Resolve INCONSISTENCYs (pick the correct value, update all occurrences) 3. Update data with fresh market research 4. Flag QUESTIONABLE items that couldn't be resolved ### Phase 5: Rebuild If documents have HTML/PDF output, rebuild after corrections: ```bash bash build.sh ``` ## Quality Standards - Every numerical claim should have a source or explicit reasoning - Cross-document consistency: same number must be the same everywhere - Dates should be specific (not "recently" — say "March 2026") - Company names should be current (post-merger names, current HQ) - Legal citations should include statute number (USC, CFR, RCW)