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immich/machine-learning/app/main.py

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import asyncio
import gc
import os
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import signal
import threading
import time
from concurrent.futures import ThreadPoolExecutor
from contextlib import asynccontextmanager
feat(server): separate face clustering job (#5598) * separate facial clustering job * update api * fixed some tests * invert clustering * hdbscan * update api * remove commented code * wip dbscan * cleanup removed cluster endpoint remove commented code * fixes updated tests minor fixes and formatting fixed queuing refinements * scale search range based on library size * defer non-core faces * optimizations removed unused query option * assign faces individually for correctness fixed unit tests remove unused method * don't select face embedding update sql linting fixed ml typing * updated job mock * paginate people query * select face embeddings because typeorm * fix setting face detection concurrency * update sql formatting linting * simplify logic remove unused imports * more specific delete signature * more accurate typing for face stubs * add migration formatting * chore: better typing * don't select embedding by default remove unused import * updated sql * use normal try/catch * stricter concurrency typing and enforcement * update api * update job concurrency panel to show disabled queues formatting * check jobId in queueAll fix tests * remove outdated comment * better facial recognition icon * wording wording formatting * fixed tests * fix * formatting & sql * try to fix sql check * more detailed description * update sql * formatting * wording * update `minFaces` description --------- Co-authored-by: Jason Rasmussen <jrasm91@gmail.com> Co-authored-by: Alex Tran <alex.tran1502@gmail.com>
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from typing import Any, AsyncGenerator, Callable, Iterator
from zipfile import BadZipFile
import orjson
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from fastapi import Depends, FastAPI, Form, HTTPException, UploadFile
from fastapi.responses import ORJSONResponse
from onnxruntime.capi.onnxruntime_pybind11_state import InvalidProtobuf, NoSuchFile
from starlette.formparsers import MultiPartParser
from app.models.base import InferenceModel
from .config import PreloadModelData, log, settings
from .models.cache import ModelCache
from .schemas import (
MessageResponse,
ModelType,
TextResponse,
)
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
lock = threading.Lock()
active_requests = 0
last_called: float | None = None
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@asynccontextmanager
async def lifespan(_: FastAPI) -> AsyncGenerator[None, None]:
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global thread_pool
log.info(
(
"Created in-memory cache with unloading "
f"{f'after {settings.model_ttl}s of inactivity' if settings.model_ttl > 0 else 'disabled'}."
)
)
try:
if settings.request_threads > 0:
# asyncio is a huge bottleneck for performance, so we use a thread pool to run blocking code
thread_pool = ThreadPoolExecutor(settings.request_threads) if settings.request_threads > 0 else None
log.info(f"Initialized request thread pool with {settings.request_threads} threads.")
if settings.model_ttl > 0 and settings.model_ttl_poll_s > 0:
asyncio.ensure_future(idle_shutdown_task())
if settings.preload is not None:
await preload_models(settings.preload)
yield
finally:
log.handlers.clear()
for model in model_cache.cache._cache.values():
del model
if thread_pool is not None:
thread_pool.shutdown()
gc.collect()
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async def preload_models(preload_models: PreloadModelData) -> None:
log.info(f"Preloading models: {preload_models}")
if preload_models.clip is not None:
await load(await model_cache.get(preload_models.clip, ModelType.CLIP))
if preload_models.facial_recognition is not None:
await load(await model_cache.get(preload_models.facial_recognition, ModelType.FACIAL_RECOGNITION))
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def update_state() -> Iterator[None]:
global active_requests, last_called
active_requests += 1
last_called = time.time()
try:
yield
finally:
active_requests -= 1
app = FastAPI(lifespan=lifespan)
@app.get("/", response_model=MessageResponse)
async def root() -> dict[str, str]:
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return {"message": "Immich ML"}
@app.get("/ping", response_model=TextResponse)
def ping() -> str:
return "pong"
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@app.post("/predict", dependencies=[Depends(update_state)])
async def predict(
model_name: str = Form(alias="modelName"),
model_type: ModelType = Form(alias="modelType"),
options: str = Form(default="{}"),
text: str | None = Form(default=None),
image: UploadFile | None = None,
) -> Any:
if image is not None:
inputs: str | bytes = await image.read()
elif text is not None:
inputs = text
else:
raise HTTPException(400, "Either image or text must be provided")
try:
kwargs = orjson.loads(options)
except orjson.JSONDecodeError:
raise HTTPException(400, f"Invalid options JSON: {options}")
model = await load(await model_cache.get(model_name, model_type, ttl=settings.model_ttl, **kwargs))
model.configure(**kwargs)
feat(server): separate face clustering job (#5598) * separate facial clustering job * update api * fixed some tests * invert clustering * hdbscan * update api * remove commented code * wip dbscan * cleanup removed cluster endpoint remove commented code * fixes updated tests minor fixes and formatting fixed queuing refinements * scale search range based on library size * defer non-core faces * optimizations removed unused query option * assign faces individually for correctness fixed unit tests remove unused method * don't select face embedding update sql linting fixed ml typing * updated job mock * paginate people query * select face embeddings because typeorm * fix setting face detection concurrency * update sql formatting linting * simplify logic remove unused imports * more specific delete signature * more accurate typing for face stubs * add migration formatting * chore: better typing * don't select embedding by default remove unused import * updated sql * use normal try/catch * stricter concurrency typing and enforcement * update api * update job concurrency panel to show disabled queues formatting * check jobId in queueAll fix tests * remove outdated comment * better facial recognition icon * wording wording formatting * fixed tests * fix * formatting & sql * try to fix sql check * more detailed description * update sql * formatting * wording * update `minFaces` description --------- Co-authored-by: Jason Rasmussen <jrasm91@gmail.com> Co-authored-by: Alex Tran <alex.tran1502@gmail.com>
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outputs = await run(model.predict, inputs)
return ORJSONResponse(outputs)
feat(server): separate face clustering job (#5598) * separate facial clustering job * update api * fixed some tests * invert clustering * hdbscan * update api * remove commented code * wip dbscan * cleanup removed cluster endpoint remove commented code * fixes updated tests minor fixes and formatting fixed queuing refinements * scale search range based on library size * defer non-core faces * optimizations removed unused query option * assign faces individually for correctness fixed unit tests remove unused method * don't select face embedding update sql linting fixed ml typing * updated job mock * paginate people query * select face embeddings because typeorm * fix setting face detection concurrency * update sql formatting linting * simplify logic remove unused imports * more specific delete signature * more accurate typing for face stubs * add migration formatting * chore: better typing * don't select embedding by default remove unused import * updated sql * use normal try/catch * stricter concurrency typing and enforcement * update api * update job concurrency panel to show disabled queues formatting * check jobId in queueAll fix tests * remove outdated comment * better facial recognition icon * wording wording formatting * fixed tests * fix * formatting & sql * try to fix sql check * more detailed description * update sql * formatting * wording * update `minFaces` description --------- Co-authored-by: Jason Rasmussen <jrasm91@gmail.com> Co-authored-by: Alex Tran <alex.tran1502@gmail.com>
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async def run(func: Callable[..., Any], inputs: Any) -> Any:
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if thread_pool is None:
feat(server): separate face clustering job (#5598) * separate facial clustering job * update api * fixed some tests * invert clustering * hdbscan * update api * remove commented code * wip dbscan * cleanup removed cluster endpoint remove commented code * fixes updated tests minor fixes and formatting fixed queuing refinements * scale search range based on library size * defer non-core faces * optimizations removed unused query option * assign faces individually for correctness fixed unit tests remove unused method * don't select face embedding update sql linting fixed ml typing * updated job mock * paginate people query * select face embeddings because typeorm * fix setting face detection concurrency * update sql formatting linting * simplify logic remove unused imports * more specific delete signature * more accurate typing for face stubs * add migration formatting * chore: better typing * don't select embedding by default remove unused import * updated sql * use normal try/catch * stricter concurrency typing and enforcement * update api * update job concurrency panel to show disabled queues formatting * check jobId in queueAll fix tests * remove outdated comment * better facial recognition icon * wording wording formatting * fixed tests * fix * formatting & sql * try to fix sql check * more detailed description * update sql * formatting * wording * update `minFaces` description --------- Co-authored-by: Jason Rasmussen <jrasm91@gmail.com> Co-authored-by: Alex Tran <alex.tran1502@gmail.com>
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return func(inputs)
return await asyncio.get_running_loop().run_in_executor(thread_pool, func, inputs)
async def load(model: InferenceModel) -> InferenceModel:
if model.loaded:
return model
def _load(model: InferenceModel) -> None:
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with lock:
model.load()
try:
await run(_load, model)
return model
except (OSError, InvalidProtobuf, BadZipFile, NoSuchFile):
log.warning(
(
f"Failed to load {model.model_type.replace('_', ' ')} model '{model.model_name}'."
"Clearing cache and retrying."
)
)
model.clear_cache()
await run(_load, model)
return model
async def idle_shutdown_task() -> None:
while True:
log.debug("Checking for inactivity...")
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if (
last_called is not None
and not active_requests
and not lock.locked()
and time.time() - last_called > settings.model_ttl
):
log.info("Shutting down due to inactivity.")
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os.kill(os.getpid(), signal.SIGINT)
break
await asyncio.sleep(settings.model_ttl_poll_s)