Eval Tracking
by vanman2024
Supabase-backed evaluation tracking with runs, cases, and scores tables. Use when storing eval results, building dashboards, or tracking regression over time.
Skill Details
Repository Files
4 files in this skill directory
name: eval-tracking description: Supabase-backed evaluation tracking with runs, cases, and scores tables. Use when storing eval results, building dashboards, or tracking regression over time. allowed-tools: Bash, Read, Write, Edit, Grep, Glob, WebFetch
Eval Tracking
Skill for Supabase-backed evaluation result tracking.
Overview
Track evaluations with:
eval_runs- Evaluation run metadataeval_cases- Individual test caseseval_scores- Metric scores per case
Use When
This skill is automatically invoked when:
- Storing evaluation results
- Building eval dashboards
- Tracking regression over time
- Comparing run results
Available Scripts
| Script | Description |
|---|---|
scripts/setup-tracking.sh |
Run Supabase migration |
Available Templates
| Template | Description |
|---|---|
templates/schema.sql |
Supabase tables and RLS |
templates/queries.sql |
Dashboard queries |
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