harness:status
About
This skill displays evolution progress by showing a chart of scores and analyzing performance trends. It detects stagnation or regression and provides warnings with actionable suggestions. Developers should use it when checking evolution status, iteration counts, or whether the optimization loop is stuck.
Quick Install
Claude Code
Recommendednpx skills add raphaelchristi/harness-evolver -a claude-code/plugin add https://github.com/raphaelchristi/harness-evolvergit clone https://github.com/raphaelchristi/harness-evolver.git ~/.claude/skills/harness:statusCopy and paste this command in Claude Code to install this skill
Documentation
/harness:status
Show current evolution progress.
What To Do
Resolve Tool Path
TOOLS="${EVOLVER_TOOLS:-$([ -d ".evolver/tools" ] && echo ".evolver/tools" || echo "$HOME/.evolver/tools")}"
EVOLVER_PY="${EVOLVER_PY:-$([ -f "$HOME/.evolver/venv/bin/python" ] && echo "$HOME/.evolver/venv/bin/python" || echo "python3")}"
Display Chart
$EVOLVER_PY $TOOLS/evolution_chart.py --config .evolver.json
Additional Analysis
After displaying the chart:
- Detect stagnation: if last 3 scores within 1% of each other, warn and suggest
/harness:evolvewith architect trigger. - Detect regression: if current best is lower than a previous best, warn.
- Print LangSmith experiment URL for the best experiment if available.
GitHub Repository
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