| name | monitor-experiment | |
|---|---|---|
| description | Monitor running experiments, check progress, collect results. Use when user says "check results", "is it done", "monitor", or wants experiment output. | |
| argument-hint |
|
|
| allowed-tools | Bash(ssh *), Bash(echo *), Read, Write, Edit |
Monitor: $ARGUMENTS
SSH server:
ssh <server> "screen -ls"Vast.ai instance (read ssh_host, ssh_port from vast-instances.json):
ssh -p <PORT> root@<HOST> "screen -ls"Also check vast.ai instance status:
vastai show instancesModal (when gpu: modal in CLAUDE.md):
modal app list # List running/recent apps
modal app logs <app> # Stream logs from a running appModal apps auto-terminate when done — if it's not in the list, it already finished. Check results via modal volume ls <volume> or local output.
For each screen session, capture the last N lines:
ssh <server> "screen -S <name> -X hardcopy /tmp/screen_<name>.txt && tail -50 /tmp/screen_<name>.txt"If hardcopy fails, check for log files or tee output.
ssh <server> "ls -lt <results_dir>/*.json 2>/dev/null | head -20"If JSON results exist, fetch and parse them:
ssh <server> "cat <results_dir>/<latest>.json"Skip this step entirely if wandb is not set or is false in CLAUDE.md.
Pull training curves and metrics from Weights & Biases via Python API:
# List recent runs in the project
ssh <server> "python3 -c \"
import wandb
api = wandb.Api()
runs = api.runs('<entity>/<project>', per_page=10)
for r in runs:
print(f'{r.id} {r.state} {r.name} {r.summary.get(\"eval/loss\", \"N/A\")}')
\""
# Pull specific metrics from a run (last 50 steps)
ssh <server> "python3 -c \"
import wandb, json
api = wandb.Api()
run = api.run('<entity>/<project>/<run_id>')
history = list(run.scan_history(keys=['train/loss', 'eval/loss', 'eval/ppl', 'train/lr'], page_size=50))
print(json.dumps(history[-10:], indent=2))
\""
# Pull run summary (final metrics)
ssh <server> "python3 -c \"
import wandb, json
api = wandb.Api()
run = api.run('<entity>/<project>/<run_id>')
print(json.dumps(dict(run.summary), indent=2, default=str))
\""What to extract:
- Training loss curve — is it converging? diverging? plateauing?
- Eval metrics — loss, PPL, accuracy at latest checkpoint
- Learning rate — is the schedule behaving as expected?
- GPU memory — any OOM risk?
- Run status — running / finished / crashed?
W&B dashboard link (include in summary for user):
https://wandb.ai/<entity>/<project>/runs/<run_id>
This gives the auto-review-loop richer signal than just screen output — training dynamics, loss curves, and metric trends over time.
Present results in a comparison table:
| Experiment | Metric | Delta vs Baseline | Status |
|-----------|--------|-------------------|--------|
| Baseline | X.XX | — | done |
| Method A | X.XX | +Y.Y | done |
- Compare against known baselines
- Flag unexpected results (negative delta, NaN, divergence)
- Suggest next steps based on findings
After results are collected, check ~/.claude/feishu.json:
- Send
experiment_donenotification: results summary table, delta vs baseline - If config absent or mode
"off": skip entirely (no-op)
- Always show raw numbers before interpretation
- Compare against the correct baseline (same config)
- Note if experiments are still running (check progress bars, iteration counts)
- If results look wrong, check training logs for errors before concluding
- Vast.ai cost awareness: When monitoring vast.ai instances, report the running cost (hours * $/hr from
vast-instances.json). If all experiments on an instance are done, remind the user to run/vast-gpu destroy <instance_id>to stop billing - Modal cost awareness: Modal auto-scales to zero — no idle billing. When reporting results from Modal runs, note the actual execution time and estimated cost (time * $/hr from the GPU tier used). No cleanup action needed