response-quality-analysis
Response Quality Analysis
Validates that your response actually solves the problem asked, not the problem you're comfortable addressing. Systematically analyzes problem quality, decomposes into components, calculates coverage, and provides actionable improvements.
When to Use
Before posting substantive answers to:
- Forum questions (Slack, internal channels, Stack Overflow)
- Mailing list responses
- Documentation contributions
- Any situation where you want to ensure helpfulness
Quick Start
Ask user for:
original_problem- The question/problem statementdraft_response- Your proposed answerresponse_context- Where posting (optional)work_dir- Artifact location (default: ".sop/response-analysis")
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