Review

by j-d0g

skill

Review evaluation results and summarize performance across a test run.

Skill Details

Repository Files

1 file in this skill directory


name: review description: Review evaluation results and summarize performance across a test run.

Review Evaluation Results

Analyze evaluation outputs and produce a summary report.

Usage

/review [run_id]

Process

  1. Load Results: Read evaluation results from evals/results/<run_id>/
  2. Compute Metrics:
    • Total queries: N
    • Correct: X (Y%)
    • Incorrect: Z
    • By difficulty: Easy/Medium/Hard breakdown
  3. Identify Patterns: Group failures by error type
  4. Generate Report: Write summary to evals/results/<run_id>/summary.md

Output Format

# Evaluation Summary: [run_id]

## Overall Performance
- **Score:** X/N (Y%)
- **Model:** [model used]
- **Timestamp:** [when run]

## Results by Difficulty
| Difficulty | Correct | Total | Rate |
|------------|---------|-------|------|
| Easy       | X       | Y     | Z%   |
| Medium     | X       | Y     | Z%   |
| Hard       | X       | Y     | Z%   |

## Failures

### [Query ID]: [Short description]
- **Expected:** [ground truth]
- **Got:** [agent answer]
- **Error type:** [classification]

## Recommendations
- [Suggested improvements based on failure patterns]

Files Read

  • evals/results/<run_id>/*.json - Individual evaluation results
  • evals/train.json or evals/test.json - Query metadata

Files Written

  • evals/results/<run_id>/summary.md - Human-readable summary

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Skill Information

Category:Skill
Last Updated:1/20/2026