mirror of
https://github.com/immich-app/immich.git
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e7397f35c9
* update pydantic * fix typing * remove unused import * remove unused schema
230 lines
7.8 KiB
Python
230 lines
7.8 KiB
Python
import asyncio
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import gc
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import os
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import signal
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import threading
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import time
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from concurrent.futures import ThreadPoolExecutor
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from contextlib import asynccontextmanager
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from functools import partial
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from typing import Any, AsyncGenerator, Callable, Iterator
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from zipfile import BadZipFile
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import orjson
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from fastapi import Depends, FastAPI, File, Form, HTTPException
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from fastapi.responses import ORJSONResponse, PlainTextResponse
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from onnxruntime.capi.onnxruntime_pybind11_state import InvalidProtobuf, NoSuchFile
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from PIL.Image import Image
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from pydantic import ValidationError
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from starlette.formparsers import MultiPartParser
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from app.models import get_model_deps
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from app.models.base import InferenceModel
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from app.models.transforms import decode_pil
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from .config import PreloadModelData, log, settings
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from .models.cache import ModelCache
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from .schemas import (
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InferenceEntries,
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InferenceEntry,
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InferenceResponse,
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ModelFormat,
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ModelIdentity,
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ModelTask,
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ModelType,
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PipelineRequest,
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T,
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)
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MultiPartParser.max_file_size = 2**26 # spools to disk if payload is 64 MiB or larger
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model_cache = ModelCache(revalidate=settings.model_ttl > 0)
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thread_pool: ThreadPoolExecutor | None = None
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lock = threading.Lock()
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active_requests = 0
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last_called: float | None = None
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@asynccontextmanager
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async def lifespan(_: FastAPI) -> AsyncGenerator[None, None]:
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global thread_pool
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log.info(
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(
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"Created in-memory cache with unloading "
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f"{f'after {settings.model_ttl}s of inactivity' if settings.model_ttl > 0 else 'disabled'}."
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)
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)
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try:
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if settings.request_threads > 0:
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# asyncio is a huge bottleneck for performance, so we use a thread pool to run blocking code
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thread_pool = ThreadPoolExecutor(settings.request_threads) if settings.request_threads > 0 else None
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log.info(f"Initialized request thread pool with {settings.request_threads} threads.")
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if settings.model_ttl > 0 and settings.model_ttl_poll_s > 0:
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asyncio.ensure_future(idle_shutdown_task())
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if settings.preload is not None:
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await preload_models(settings.preload)
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yield
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finally:
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log.handlers.clear()
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for model in model_cache.cache._cache.values():
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del model
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if thread_pool is not None:
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thread_pool.shutdown()
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gc.collect()
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async def preload_models(preload: PreloadModelData) -> None:
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log.info(f"Preloading models: {preload}")
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if preload.clip is not None:
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model = await model_cache.get(preload.clip, ModelType.TEXTUAL, ModelTask.SEARCH)
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await load(model)
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model = await model_cache.get(preload.clip, ModelType.VISUAL, ModelTask.SEARCH)
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await load(model)
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if preload.facial_recognition is not None:
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model = await model_cache.get(preload.facial_recognition, ModelType.DETECTION, ModelTask.FACIAL_RECOGNITION)
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await load(model)
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model = await model_cache.get(preload.facial_recognition, ModelType.RECOGNITION, ModelTask.FACIAL_RECOGNITION)
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await load(model)
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def update_state() -> Iterator[None]:
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global active_requests, last_called
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active_requests += 1
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last_called = time.time()
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try:
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yield
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finally:
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active_requests -= 1
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def get_entries(entries: str = Form()) -> InferenceEntries:
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try:
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request: PipelineRequest = orjson.loads(entries)
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without_deps: list[InferenceEntry] = []
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with_deps: list[InferenceEntry] = []
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for task, types in request.items():
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for type, entry in types.items():
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parsed: InferenceEntry = {
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"name": entry["modelName"],
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"task": task,
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"type": type,
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"options": entry.get("options", {}),
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}
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dep = get_model_deps(parsed["name"], type, task)
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(with_deps if dep else without_deps).append(parsed)
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return without_deps, with_deps
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except (orjson.JSONDecodeError, ValidationError, KeyError, AttributeError) as e:
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log.error(f"Invalid request format: {e}")
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raise HTTPException(422, "Invalid request format.")
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app = FastAPI(lifespan=lifespan)
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@app.get("/")
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async def root() -> ORJSONResponse:
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return ORJSONResponse({"message": "Immich ML"})
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@app.get("/ping")
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def ping() -> PlainTextResponse:
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return PlainTextResponse("pong")
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@app.post("/predict", dependencies=[Depends(update_state)])
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async def predict(
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entries: InferenceEntries = Depends(get_entries),
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image: bytes | None = File(default=None),
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text: str | None = Form(default=None),
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) -> Any:
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if image is not None:
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inputs: Image | str = await run(lambda: decode_pil(image))
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elif text is not None:
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inputs = text
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else:
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raise HTTPException(400, "Either image or text must be provided")
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response = await run_inference(inputs, entries)
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return ORJSONResponse(response)
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async def run_inference(payload: Image | str, entries: InferenceEntries) -> InferenceResponse:
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outputs: dict[ModelIdentity, Any] = {}
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response: InferenceResponse = {}
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async def _run_inference(entry: InferenceEntry) -> None:
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model = await model_cache.get(entry["name"], entry["type"], entry["task"], ttl=settings.model_ttl)
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inputs = [payload]
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for dep in model.depends:
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try:
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inputs.append(outputs[dep])
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except KeyError:
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message = f"Task {entry['task']} of type {entry['type']} depends on output of {dep}"
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raise HTTPException(400, message)
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model = await load(model)
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output = await run(model.predict, *inputs, **entry["options"])
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outputs[model.identity] = output
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response[entry["task"]] = output
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without_deps, with_deps = entries
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await asyncio.gather(*[_run_inference(entry) for entry in without_deps])
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if with_deps:
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await asyncio.gather(*[_run_inference(entry) for entry in with_deps])
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if isinstance(payload, Image):
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response["imageHeight"], response["imageWidth"] = payload.height, payload.width
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return response
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async def run(func: Callable[..., T], *args: Any, **kwargs: Any) -> T:
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if thread_pool is None:
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return func(*args, **kwargs)
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partial_func = partial(func, *args, **kwargs)
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return await asyncio.get_running_loop().run_in_executor(thread_pool, partial_func)
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async def load(model: InferenceModel) -> InferenceModel:
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if model.loaded:
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return model
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def _load(model: InferenceModel) -> InferenceModel:
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if model.load_attempts > 1:
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raise HTTPException(500, f"Failed to load model '{model.model_name}'")
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with lock:
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try:
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model.load()
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except FileNotFoundError as e:
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if model.model_format == ModelFormat.ONNX:
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raise e
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log.exception(e)
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log.warning(
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f"{model.model_format.upper()} is available, but model '{model.model_name}' does not support it."
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)
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model.model_format = ModelFormat.ONNX
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model.load()
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return model
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try:
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return await run(_load, model)
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except (OSError, InvalidProtobuf, BadZipFile, NoSuchFile):
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log.warning(f"Failed to load {model.model_type.replace('_', ' ')} model '{model.model_name}'. Clearing cache.")
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model.clear_cache()
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return await run(_load, model)
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async def idle_shutdown_task() -> None:
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while True:
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log.debug("Checking for inactivity...")
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if (
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last_called is not None
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and not active_requests
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and not lock.locked()
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and time.time() - last_called > settings.model_ttl
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):
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log.info("Shutting down due to inactivity.")
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os.kill(os.getpid(), signal.SIGINT)
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break
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await asyncio.sleep(settings.model_ttl_poll_s)
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