cecf0236fa
Switch MODEL_LOG_FILE from /var/log/portal/comfyui.log to /var/log/portal/api-wrapper.log and MODEL_LOAD_LOG_MSG to "Uvicorn running on". A live test instance showed the previous setup firing benchmark on ComfyUI's "To see the GUI go to:" line, which races api-wrapper.sh: that script runs convert-workflows.sh (which itself waits for ComfyUI ready and then converts workflows for several seconds) before launching uvicorn. The benchmark hit a closed port on :18288 and the SDK's __call_backend has no retry on connection refused, locking the worker into a permanent error state. Watching the api-wrapper log instead means the benchmark only fires after uvicorn is bound and the pyworker_benchmark.json symlink is already in place — no SDK changes required. Trim MODEL_ERROR_LOG_MSGS down to "Application startup failed". The old patterns were ComfyUI-specific (won't appear in api-wrapper.log) and dangerous: ModelError is fatal, so "Value not in list:" matching on an api-wrapper-style log would let one malformed client request kill the worker. CUDA OOM is similarly off-limits (indistinguishable from a too-greedy client request via substring match; the benchmark- failure path already catches model-load OOM at boot). Empty MODEL_INFO_LOG_MSGS — the prior ComfyUI download pattern can never match this log file. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
190 lines
7.3 KiB
Python
190 lines
7.3 KiB
Python
"""ComfyUI worker for the vast.ai PyWorker SDK.
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Each worker runs a benchmark on warm-up. The payload is selected as follows:
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1. If ``misc/benchmark.json`` exists in the cloned worker tree, it is
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used as a custom ComfyUI workflow. Use this if you fork the repo and
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bake in your workflow.
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2. Else, if ``$BENCHMARK_JSON_PATH`` is set and points at a readable
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file, it is used. Use this from a provisioning script — provisioning
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runs before pyworker is cloned, so it cannot write into ``misc/``,
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but it can drop the workflow elsewhere (e.g. ``/workspace/``) and
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export this env var.
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3. Else, if the well-known path
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``/opt/comfyui-api-wrapper/workflows/pyworker_benchmark.json`` exists,
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it is used. The vast.ai ComfyUI base image's ``convert-workflows.sh``
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maintains this as a symlink to the first provisioned workflow, so on
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that image no env var is needed.
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4. Otherwise an SD1.5 Text2Image fallback runs, parameterised by the
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``BENCHMARK_TEST_{WIDTH,HEIGHT,STEPS}`` env vars and a random prompt
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from ``misc/test_prompts.txt``.
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``__RANDOM_INT__`` placeholders in custom workflows are substituted
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server-side by ai-dock/comfyui-api-wrapper, so this worker does not handle
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them itself.
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"""
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import json
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import logging
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import os
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import random
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import sys
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from pathlib import Path
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from vastai import Worker, WorkerConfig, HandlerConfig, LogActionConfig, BenchmarkConfig
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# ComfyUI model configuration. The model server here is the ai-dock
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# comfyui-api-wrapper sitting in front of ComfyUI itself, not ComfyUI's
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# own port (18188). We watch the api-wrapper's log rather than ComfyUI's
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# because the api-wrapper runs convert-workflows.sh before launching
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# uvicorn — by the time uvicorn logs "Uvicorn running on ...", the
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# benchmark workflows are converted, the pyworker_benchmark.json symlink
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# exists, and :18288 is accepting connections. Watching ComfyUI's log
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# fires the benchmark too early (before the api-wrapper is reachable),
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# which the SDK can't recover from since __call_backend doesn't retry
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# connection-refused.
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MODEL_SERVER_URL = 'http://127.0.0.1'
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MODEL_SERVER_PORT = 18288
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MODEL_LOG_FILE = '/var/log/portal/api-wrapper.log'
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MODEL_HEALTHCHECK_ENDPOINT = "/health"
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# api-wrapper log messages
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MODEL_LOAD_LOG_MSG = [
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"Uvicorn running on"
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]
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# LogAction.ModelError is fatal: the SDK calls backend_errored() and the
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# worker is locked into a permanent error state. Patterns must therefore
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# only match conditions where the api-wrapper genuinely cannot serve any
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# request — supervisord restarts on uvicorn exit, so a real failure
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# self-heals rather than dragging the worker down.
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#
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# Notably *not* matched here:
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# - per-request errors (PreprocessWorker failures, ComfyUI workflow
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# validation, "Value not in list:") — one malformed client payload
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# would otherwise kill the worker
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# - "CUDA out of memory" — surfaces both as misconfigured GPU (which
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# the benchmark-failure path already catches via backend_errored)
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# and as a too-greedy client request, which is indistinguishable
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# from a substring match
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# - convert-workflows.sh warnings — that script is not load-bearing
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# for serving (uvicorn starts even if conversion partially failed)
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MODEL_ERROR_LOG_MSGS = [
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"Application startup failed", # uvicorn ASGI lifespan startup failed -> uvicorn exits
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]
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# LogAction.Info is purely informational (echoes log lines into the vast
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# console). Nothing in api-wrapper.log is currently worth surfacing —
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# model downloads are upstream in provisioning, per-request logs are
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# too noisy.
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MODEL_INFO_LOG_MSGS = []
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# Benchmark assets shipped alongside this worker. Resolved relative to this
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# file so the worker keeps working regardless of the launch cwd.
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MISC_DIR = Path(__file__).parent / "misc"
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BENCHMARK_FILE = MISC_DIR / "benchmark.json"
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TEST_PROMPTS = MISC_DIR / "test_prompts.txt"
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# Well-known location maintained by the vast.ai ComfyUI base image.
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# convert-workflows.sh symlinks this to the first provisioned workflow,
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# letting the base image work out-of-the-box without any env var.
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WELLKNOWN_BENCHMARK = Path("/opt/comfyui-api-wrapper/workflows/pyworker_benchmark.json")
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log = logging.getLogger(__name__)
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def _resolve_benchmark_path() -> Path | None:
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"""Return the path to the custom benchmark workflow, or None if absent.
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See module docstring for the precedence rule. A set-but-broken
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``$BENCHMARK_JSON_PATH`` logs a warning then falls through to the
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well-known path, so a typo in the env var doesn't silently mask a
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provisioned benchmark sitting at the standard location.
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"""
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if BENCHMARK_FILE.exists():
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return BENCHMARK_FILE
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env_path = os.getenv("BENCHMARK_JSON_PATH")
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if env_path:
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path = Path(env_path)
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if path.exists():
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return path
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log.warning("BENCHMARK_JSON_PATH=%s does not exist; trying fallbacks", path)
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if WELLKNOWN_BENCHMARK.exists():
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return WELLKNOWN_BENCHMARK
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return None
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def _custom_workflow_payload() -> dict | None:
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"""Build a payload from a custom benchmark workflow JSON, or None if unavailable."""
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path = _resolve_benchmark_path()
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if path is None:
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return None
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try:
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with open(path) as f:
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workflow = json.load(f)
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except (json.JSONDecodeError, OSError) as e:
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log.error("Failed to load %s: %s; falling back to default benchmark", path, e)
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return None
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log.info("Using custom benchmark workflow from %s", path)
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return {
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"input": {
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"request_id": f"test-{random.randint(1000, 99999)}",
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"workflow_json": workflow,
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}
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}
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def _default_payload() -> dict:
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"""Build the SD1.5 Text2Image fallback payload."""
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with open(TEST_PROMPTS) as f:
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prompts = [line.strip() for line in f if line.strip()]
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return {
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"input": {
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"request_id": f"test-{random.randint(1000, 99999)}",
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"modifier": "Text2Image",
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"modifications": {
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"prompt": random.choice(prompts),
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"width": int(os.getenv("BENCHMARK_TEST_WIDTH", 512)),
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"height": int(os.getenv("BENCHMARK_TEST_HEIGHT", 512)),
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"steps": int(os.getenv("BENCHMARK_TEST_STEPS", 20)),
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"seed": random.randint(0, sys.maxsize),
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}
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}
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}
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def make_benchmark_payload() -> dict:
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"""Build one benchmark request payload.
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Called once per benchmark run by the SDK; using a generator (rather
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than a static ``dataset=``) lets each run re-pick a prompt and re-roll
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the seed, and avoids holding multiple copies of a large workflow JSON
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in memory.
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"""
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return _custom_workflow_payload() or _default_payload()
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worker_config = WorkerConfig(
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model_server_url=MODEL_SERVER_URL,
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model_server_port=MODEL_SERVER_PORT,
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model_log_file=MODEL_LOG_FILE,
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model_healthcheck_url=MODEL_HEALTHCHECK_ENDPOINT,
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handlers=[
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HandlerConfig(
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route="/generate/sync",
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allow_parallel_requests=False,
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max_queue_time=10.0,
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benchmark_config=BenchmarkConfig(
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generator=make_benchmark_payload,
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)
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)
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],
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log_action_config=LogActionConfig(
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on_load=MODEL_LOAD_LOG_MSG,
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on_error=MODEL_ERROR_LOG_MSGS,
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on_info=MODEL_INFO_LOG_MSGS
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)
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)
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Worker(worker_config).run()
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