Statistical Reporting Formatter
by a5c-ai
Skill for formatting statistical results according to reporting standards
Skill Details
Repository Files
1 file in this skill directory
name: statistical-reporting-formatter description: Skill for formatting statistical results according to reporting standards allowed-tools:
- Bash
- Read
- Write metadata: specialization: scientific-discovery domain: science category: Communication skill-id: SK-SCIDISC-029
Statistical Reporting Formatter Skill
Purpose
Format statistical results according to APA, journal, and discipline-specific reporting standards for publication.
Capabilities
- Format test results
- Apply APA style
- Generate tables
- Report effect sizes
- Include confidence intervals
- Check completeness
Usage Guidelines
- Input statistical output
- Select reporting standard
- Format results
- Generate tables
- Review completeness
- Export formatted text
Process Integration
Works within scientific discovery workflows for:
- Results reporting
- Manuscript preparation
- Table generation
- Compliance checking
Configuration
- Reporting standards
- Decimal precision
- Table formats
- Output styles
Output Artifacts
- Formatted statistics
- Publication tables
- In-text citations
- Compliance reports
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