3.6 KiB
Claude Code — Donkeycar RL Project Instructions
Session Startup — Do This First
At the start of every session:
- Read
agent/SESSION_HANDOFF.md - Check if an experiment is running:
ss -tnp | grep 9091 - If running, immediately arm a background monitor on the experiment log before anything else
- Report current status to the user
Do not wait for the user to ask. Arming the monitor is the first action.
Autonomy Instruction
Continue the Donkeycar RL/sim work autonomously. Rebuild, sync, relaunch, run diagnostics, patch code, and restart experiments as needed. Keep going until you either have a verified fix and a running experiment, or a concrete blocker that truly requires the user. Only pause for: risk of data loss, destructive actions, missing credentials, or major strategy tradeoffs.
If the user says only continue, use the instruction above.
Long-Running Task Workflow
A common failure mode: model starts a long-running task, returns to the prompt, and waits — defeating the purpose. Claude Code has two mechanisms to avoid this.
1. Condition-based wakeup (background Bash task)
Use when you want to be woken when something happens (log line appears, file changes, process exits).
# Pattern: until <condition>; do sleep N; done && <show results>
Bash(
command="until grep -q 'Checkpoint saved' /path/to/run.log; do sleep 15; done "
"&& tail -20 /path/to/run.log",
run_in_background=True
)
When the shell command exits, the runtime delivers a <task-notification> into
the conversation. This wakes Claude up automatically — no polling needed on the
model side. The model then reads the output and continues work.
Key rules:
- Use
until <check>; do sleep N; done— neversleep 120 && check(blocked) - The notification arrives as a message in the conversation context
- Multiple background tasks can run in parallel and each fires independently
2. Time-based wakeup (ScheduleWakeup tool)
Use when you want to be woken after a fixed delay (e.g. "check back in 20 min").
ScheduleWakeup(
delaySeconds=1200, # 20 minutes
reason="checking 100k checkpoint results",
prompt="<<autonomous-loop-dynamic>>" # or the original /loop prompt
)
The runtime fires the wakeup after the delay, re-entering the conversation so the model can continue. Use this for idle waits (waiting for a build, a slow process, etc.) when there's no clear log-file signal to watch.
Cache timing guidance:
- Under 270s: prompt cache stays warm (cheap)
- Over 300s: cache miss on wakeup (more expensive but fine for long waits)
- Default idle: 1200–1800s (20–30 min)
3. Combining both
For long experiments, use condition-based tasks for each checkpoint, and ScheduleWakeup as a fallback heartbeat:
# Fire when checkpoint N arrives
Bash(command="until [ $(grep -c 'Checkpoint' log) -ge 5 ]; do sleep 15; done && tail log",
run_in_background=True)
# Also wake in 30 min regardless, to check for errors
ScheduleWakeup(delaySeconds=1800, reason="exp27 progress check", prompt="continue")
Experiment Monitoring Commands
# Watch live training log
tail -f agent/models/exp27-random-roads/run_*.log
# Check all checkpoints and evals
grep "Checkpoint\|Eval\|NEW BEST" agent/models/exp27-random-roads/run_*.log
# Verify sim is up
python3 -c "import socket; s=socket.socket(); s.settimeout(3); s.connect(('127.0.0.1',9091)); print('OK'); s.close()"
# Check what's connected to sim
ss -tnp | grep 9091
Session Handoff
Full experiment history, current state, and important paths:
agent/SESSION_HANDOFF.md