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108 lines
3.5 KiB
Markdown
108 lines
3.5 KiB
Markdown
# s08: Background Tasks
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`s01 > s02 > s03 > s04 > s05 > s06 | s07 > [ s08 ] s09 > s10 > s11 > s12`
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> *"Fire and forget"* -- non-blocking threads + notification queue.
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## Problem
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Some commands take minutes: `npm install`, `pytest`, `docker build`. With a blocking loop, the model sits idle waiting. If the user asks "install dependencies and while that runs, create the config file," the agent does them sequentially, not in parallel.
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## Solution
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```
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Main thread Background thread
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+-----------------+ +-----------------+
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| agent loop | | subprocess runs |
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| ... | | ... |
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| [LLM call] <---+------- | enqueue(result) |
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| ^drain queue | +-----------------+
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+-----------------+
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Timeline:
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Agent --[spawn A]--[spawn B]--[other work]----
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v v
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[A runs] [B runs] (parallel)
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+-- results injected before next LLM call --+
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```
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## How It Works
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1. BackgroundManager tracks tasks with a thread-safe notification queue.
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```python
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class BackgroundManager:
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def __init__(self):
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self.tasks = {}
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self._notification_queue = []
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self._lock = threading.Lock()
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```
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2. `run()` starts a daemon thread and returns immediately.
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```python
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def run(self, command: str) -> str:
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task_id = str(uuid.uuid4())[:8]
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self.tasks[task_id] = {"status": "running", "command": command}
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thread = threading.Thread(
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target=self._execute, args=(task_id, command), daemon=True)
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thread.start()
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return f"Background task {task_id} started"
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```
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3. When the subprocess finishes, its result goes into the notification queue.
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```python
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def _execute(self, task_id, command):
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try:
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r = subprocess.run(command, shell=True, cwd=WORKDIR,
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capture_output=True, text=True, timeout=300)
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output = (r.stdout + r.stderr).strip()[:50000]
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except subprocess.TimeoutExpired:
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output = "Error: Timeout (300s)"
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with self._lock:
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self._notification_queue.append({
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"task_id": task_id, "result": output[:500]})
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```
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4. The agent loop drains notifications before each LLM call.
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```python
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def agent_loop(messages: list):
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while True:
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notifs = BG.drain_notifications()
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if notifs:
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notif_text = "\n".join(
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f"[bg:{n['task_id']}] {n['result']}" for n in notifs)
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messages.append({"role": "user",
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"content": f"<background-results>\n{notif_text}\n"
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f"</background-results>"})
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messages.append({"role": "assistant",
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"content": "Noted background results."})
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response = client.messages.create(...)
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```
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The loop stays single-threaded. Only subprocess I/O is parallelized.
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## What Changed From s07
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| Component | Before (s07) | After (s08) |
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|----------------|------------------|----------------------------|
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| Tools | 8 | 6 (base + background_run + check)|
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| Execution | Blocking only | Blocking + background threads|
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| Notification | None | Queue drained per loop |
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| Concurrency | None | Daemon threads |
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## Try It
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```sh
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cd learn-claude-code
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python agents/s08_background_tasks.py
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```
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1. `Run "sleep 5 && echo done" in the background, then create a file while it runs`
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2. `Start 3 background tasks: "sleep 2", "sleep 4", "sleep 6". Check their status.`
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3. `Run pytest in the background and keep working on other things`
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