Fact Checker
Verify factual claims in documents and propose corrections backed by authoritative sources.
When to use
Trigger when users request:
- •"Fact-check this document"
- •"Verify these AI model specifications"
- •"Check if this information is still accurate"
- •"Update outdated data in this file"
- •"Validate the claims in this section"
Workflow
Copy this checklist to track progress:
Fact-checking Progress: - [ ] Step 1: Identify factual claims - [ ] Step 2: Search authoritative sources - [ ] Step 3: Compare claims against sources - [ ] Step 4: Generate correction report - [ ] Step 5: Apply corrections with user approval
Step 1: Identify factual claims
Scan the document for verifiable statements:
Target claim types:
- •Technical specifications (context windows, pricing, features)
- •Version numbers and release dates
- •Statistical data and metrics
- •API capabilities and limitations
- •Benchmark scores and performance data
Skip subjective content:
- •Opinions and recommendations
- •Explanatory prose
- •Tutorial instructions
- •Architectural discussions
Step 2: Search authoritative sources
For each claim, search official sources:
AI models:
- •Official announcement pages (anthropic.com/news, openai.com/index, blog.google)
- •API documentation (platform.claude.com/docs, platform.openai.com/docs)
- •Developer guides and release notes
Technical libraries:
- •Official documentation sites
- •GitHub repositories (releases, README)
- •Package registries (npm, PyPI, crates.io)
General claims:
- •Academic papers and research
- •Government statistics
- •Industry standards bodies
Search strategy:
- •Use model names + specification (e.g., "Claude Opus 4.5 context window")
- •Include current year for recent information
- •Verify from multiple sources when possible
Step 3: Compare claims against sources
Create a comparison table:
| Claim in Document | Source Information | Status | Authoritative Source |
|---|---|---|---|
| Claude 3.5 Sonnet: 200K tokens | Claude Sonnet 4.5: 200K tokens | ❌ Outdated model name | platform.claude.com/docs |
| GPT-4o: 128K tokens | GPT-5.2: 400K tokens | ❌ Incorrect version & spec | openai.com/index/gpt-5-2 |
Status codes:
- •✅ Accurate - claim matches sources
- •❌ Incorrect - claim contradicts sources
- •⚠️ Outdated - claim was true but superseded
- •❓ Unverifiable - no authoritative source found
Step 4: Generate correction report
Present findings in structured format:
## Fact-Check Report ### Summary - Total claims checked: X - Accurate: Y - Issues found: Z ### Issues Requiring Correction #### Issue 1: Outdated AI Model Reference **Location:** Line 77-80 in docs/file.md **Current claim:** "Claude 3.5 Sonnet: 200K tokens" **Correction:** "Claude Sonnet 4.5: 200K tokens" **Source:** https://platform.claude.com/docs/en/build-with-claude/context-windows **Rationale:** Claude 3.5 Sonnet has been superseded by Claude Sonnet 4.5 (released Sept 2025) #### Issue 2: Incorrect Context Window **Location:** Line 79 in docs/file.md **Current claim:** "GPT-4o: 128K tokens" **Correction:** "GPT-5.2: 400K tokens" **Source:** https://openai.com/index/introducing-gpt-5-2/ **Rationale:** 128K was output limit; context window is 400K. Model also updated to GPT-5.2
Step 5: Apply corrections with user approval
Before making changes:
- •Show the correction report to the user
- •Wait for explicit approval: "Should I apply these corrections?"
- •Only proceed after confirmation
When applying corrections:
# Use Edit tool to update document
# Example:
Edit(
file_path="docs/03-写作规范/AI辅助写书方法论.md",
old_string="- Claude 3.5 Sonnet: 200K tokens(约 15 万汉字)",
new_string="- Claude Sonnet 4.5: 200K tokens(约 15 万汉字)"
)
After corrections:
- •Verify all edits were applied successfully
- •Note the correction summary (e.g., "Updated 4 claims in section 2.1")
- •Remind user to commit changes
Search best practices
Query construction
Good queries (specific, current):
- •"Claude Opus 4.5 context window 2026"
- •"GPT-5.2 official release announcement"
- •"Gemini 3 Pro token limit specifications"
Poor queries (vague, generic):
- •"Claude context"
- •"AI models"
- •"Latest version"
Source evaluation
Prefer official sources:
- •Product official pages (highest authority)
- •API documentation
- •Official blog announcements
- •GitHub releases (for open source)
Use with caution:
- •Third-party aggregators (llm-stats.com, etc.) - verify against official sources
- •Blog posts and articles - cross-reference claims
- •Social media - only for announcements, verify elsewhere
Avoid:
- •Outdated documentation
- •Unofficial wikis without citations
- •Speculation and rumors
Handling ambiguity
When sources conflict:
- •Prioritize most recent official documentation
- •Note the discrepancy in the report
- •Present both sources to the user
- •Recommend contacting vendor if critical
When no source found:
- •Mark as ❓ Unverifiable
- •Suggest alternative phrasing: "According to [Source] as of [Date]..."
- •Recommend adding qualification: "approximately", "reported as"
Special considerations
Time-sensitive information
Always include temporal context:
Good corrections:
- •"截至 2026 年 1 月" (As of January 2026)
- •"Claude Sonnet 4.5 (released September 2025)"
Poor corrections:
- •"Latest version" (becomes outdated)
- •"Current model" (ambiguous timeframe)
Numerical precision
Match precision to source:
Source says: "approximately 1 million tokens" Write: "1M tokens (approximately)"
Source says: "200,000 token context window" Write: "200K tokens" (exact)
Citation format
Include citations in corrections:
> **注**:具体上下文窗口以模型官方文档为准,本书写作时使用 Claude Sonnet 4.5 为主要工具。
Link to sources when possible.
Examples
Example 1: Technical specification update
User request: "Fact-check the AI model context windows in section 2.1"
Process:
- •Identify claims: Claude 3.5 Sonnet (200K), GPT-4o (128K), Gemini 1.5 Pro (2M)
- •Search official docs for current models
- •Find: Claude Sonnet 4.5, GPT-5.2, Gemini 3 Pro
- •Generate report showing discrepancies
- •Apply corrections after approval
Example 2: Statistical data verification
User request: "Verify the benchmark scores in chapter 5"
Process:
- •Extract numerical claims
- •Search for official benchmark publications
- •Compare reported vs. source values
- •Flag any discrepancies with source links
- •Update with verified figures
Example 3: Version number validation
User request: "Check if these library versions are still current"
Process:
- •List all version numbers mentioned
- •Check package registries (npm, PyPI, etc.)
- •Identify outdated versions
- •Suggest updates with changelog references
- •Update after user confirms
Quality checklist
Before completing fact-check:
- • All factual claims identified and categorized
- • Each claim verified against official sources
- • Sources are authoritative and current
- • Correction report is clear and actionable
- • Temporal context included where relevant
- • User approval obtained before changes
- • All edits verified successful
- • Summary provided to user
Limitations
This skill cannot:
- •Verify subjective opinions or judgments
- •Access paywalled or restricted sources
- •Determine "truth" in disputed claims
- •Predict future specifications or features
For such cases:
- •Note the limitation in the report
- •Suggest qualification language
- •Recommend user research or expert consultation