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"""
Embedding service (FastAPI).
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tidy
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API (simple list-in, list-out; aligned by index):
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- POST /embed/text body: ["text1", "text2", ...] -> [[...], ...] (TEI/BGE,语义检索 title_embedding)
- POST /embed/image body: ["url_or_path1", ...] -> [[...], ...] (CN-CLIP 图向量)
- POST /embed/clip_text body: ["短语1", "短语2", ...] -> [[...], ...] (CN-CLIP 文本塔,与 /embed/image 同空间)
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"""
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import logging
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import os
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import pathlib
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import threading
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import time
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import uuid
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from collections import deque
from dataclasses import dataclass
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from typing import Any, Dict, List, Optional
import numpy as np
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from fastapi import FastAPI, HTTPException, Request, Response
from fastapi.concurrency import run_in_threadpool
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from config.env_config import REDIS_CONFIG
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from config.services_config import get_embedding_backend_config
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from embeddings.cache_keys import (
build_clip_text_cache_key as _mm_clip_text_cache_key,
build_image_cache_key as _mm_image_cache_key,
build_text_cache_key,
)
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from embeddings.config import CONFIG
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from embeddings.protocols import ImageEncoderProtocol
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from embeddings.redis_embedding_cache import RedisEmbeddingCache
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from request_log_context import (
LOG_LINE_FORMAT,
RequestLogContextFilter,
bind_request_log_context,
build_request_log_extra,
reset_request_log_context,
)
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app = FastAPI(title="saas-search Embedding Service", version="1.0.0")
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def configure_embedding_logging() -> None:
root_logger = logging.getLogger()
if getattr(root_logger, "_embedding_logging_configured", False):
return
log_dir = pathlib.Path("logs")
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log_dir.mkdir(exist_ok=True)
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log_level = os.getenv("LOG_LEVEL", "INFO").upper()
numeric_level = getattr(logging, log_level, logging.INFO)
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formatter = logging.Formatter(LOG_LINE_FORMAT)
context_filter = RequestLogContextFilter()
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root_logger.setLevel(numeric_level)
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embedding logs
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root_logger.handlers.clear()
stream_handler = logging.StreamHandler()
stream_handler.setLevel(numeric_level)
stream_handler.setFormatter(formatter)
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stream_handler.addFilter(context_filter)
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root_logger.addHandler(stream_handler)
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verbose_logger = logging.getLogger("embedding.verbose")
verbose_logger.setLevel(numeric_level)
verbose_logger.handlers.clear()
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# Consolidate verbose logs into the main embedding log stream.
verbose_logger.propagate = True
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root_logger._embedding_logging_configured = True # type: ignore[attr-defined]
configure_embedding_logging()
logger = logging.getLogger(__name__)
verbose_logger = logging.getLogger("embedding.verbose")
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# Models are loaded at startup, not lazily
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embeddings
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_text_model: Optional[Any] = None
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_image_model: Optional[ImageEncoderProtocol] = None
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_text_backend_name: str = ""
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_SERVICE_KIND = (os.getenv("EMBEDDING_SERVICE_KIND", "all") or "all").strip().lower()
if _SERVICE_KIND not in {"all", "text", "image"}:
raise RuntimeError(
f"Invalid EMBEDDING_SERVICE_KIND={_SERVICE_KIND!r}; expected all, text, or image"
)
_TEXT_ENABLED_BY_ENV = os.getenv("EMBEDDING_ENABLE_TEXT_MODEL", "true").lower() in ("1", "true", "yes")
_IMAGE_ENABLED_BY_ENV = os.getenv("EMBEDDING_ENABLE_IMAGE_MODEL", "true").lower() in ("1", "true", "yes")
open_text_model = _TEXT_ENABLED_BY_ENV and _SERVICE_KIND in {"all", "text"}
open_image_model = _IMAGE_ENABLED_BY_ENV and _SERVICE_KIND in {"all", "image"}
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_text_encode_lock = threading.Lock()
_image_encode_lock = threading.Lock()
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_TEXT_MICROBATCH_WINDOW_SEC = max(
0.0, float(os.getenv("TEXT_MICROBATCH_WINDOW_MS", "4")) / 1000.0
)
_TEXT_REQUEST_TIMEOUT_SEC = max(
1.0, float(os.getenv("TEXT_REQUEST_TIMEOUT_SEC", "30"))
)
_TEXT_MAX_INFLIGHT = max(1, int(os.getenv("TEXT_MAX_INFLIGHT", "32")))
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_IMAGE_MAX_INFLIGHT = max(1, int(os.getenv("IMAGE_MAX_INFLIGHT", "20")))
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_OVERLOAD_STATUS_CODE = int(os.getenv("EMBEDDING_OVERLOAD_STATUS_CODE", "503"))
_LOG_PREVIEW_COUNT = max(1, int(os.getenv("EMBEDDING_LOG_PREVIEW_COUNT", "3")))
_LOG_TEXT_PREVIEW_CHARS = max(32, int(os.getenv("EMBEDDING_LOG_TEXT_PREVIEW_CHARS", "120")))
_LOG_IMAGE_PREVIEW_CHARS = max(32, int(os.getenv("EMBEDDING_LOG_IMAGE_PREVIEW_CHARS", "180")))
_VECTOR_PREVIEW_DIMS = max(1, int(os.getenv("EMBEDDING_VECTOR_PREVIEW_DIMS", "6")))
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_CACHE_PREFIX = str(REDIS_CONFIG.get("embedding_cache_prefix", "embedding")).strip() or "embedding"
@dataclass
class _EmbedResult:
vectors: List[Optional[List[float]]]
cache_hits: int
cache_misses: int
backend_elapsed_ms: float
mode: str
class _EndpointStats:
def __init__(self, name: str):
self.name = name
self._lock = threading.Lock()
self.request_total = 0
self.success_total = 0
self.failure_total = 0
self.rejected_total = 0
self.cache_hits = 0
self.cache_misses = 0
self.total_latency_ms = 0.0
self.total_backend_latency_ms = 0.0
def record_rejected(self) -> None:
with self._lock:
self.request_total += 1
self.rejected_total += 1
def record_completed(
self,
*,
success: bool,
latency_ms: float,
backend_latency_ms: float,
cache_hits: int,
cache_misses: int,
) -> None:
with self._lock:
self.request_total += 1
if success:
self.success_total += 1
else:
self.failure_total += 1
self.cache_hits += max(0, int(cache_hits))
self.cache_misses += max(0, int(cache_misses))
self.total_latency_ms += max(0.0, float(latency_ms))
self.total_backend_latency_ms += max(0.0, float(backend_latency_ms))
def snapshot(self) -> Dict[str, Any]:
with self._lock:
completed = self.success_total + self.failure_total
return {
"request_total": self.request_total,
"success_total": self.success_total,
"failure_total": self.failure_total,
"rejected_total": self.rejected_total,
"cache_hits": self.cache_hits,
"cache_misses": self.cache_misses,
"avg_latency_ms": round(self.total_latency_ms / completed, 3) if completed else 0.0,
"avg_backend_latency_ms": round(self.total_backend_latency_ms / completed, 3)
if completed
else 0.0,
}
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class _InflightLimiter:
def __init__(self, name: str, limit: int):
self.name = name
self.limit = max(1, int(limit))
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self._lock = threading.Lock()
self._active = 0
self._rejected = 0
self._completed = 0
self._failed = 0
self._max_active = 0
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self._priority_bypass_total = 0
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def try_acquire(self, *, bypass_limit: bool = False) -> tuple[bool, int]:
with self._lock:
if not bypass_limit and self._active >= self.limit:
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self._rejected += 1
active = self._active
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return False, active
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self._active += 1
self._max_active = max(self._max_active, self._active)
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if bypass_limit:
self._priority_bypass_total += 1
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active = self._active
return True, active
def release(self, *, success: bool) -> int:
with self._lock:
self._active = max(0, self._active - 1)
if success:
self._completed += 1
else:
self._failed += 1
active = self._active
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return active
def snapshot(self) -> Dict[str, int]:
with self._lock:
return {
"limit": self.limit,
"active": self._active,
"rejected_total": self._rejected,
"completed_total": self._completed,
"failed_total": self._failed,
"max_active": self._max_active,
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"priority_bypass_total": self._priority_bypass_total,
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}
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def _effective_priority(priority: int) -> int:
return 1 if int(priority) > 0 else 0
def _priority_label(priority: int) -> str:
return "high" if _effective_priority(priority) > 0 else "normal"
@dataclass
class _TextDispatchTask:
normalized: List[str]
effective_normalize: bool
request_id: str
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user_id: str
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priority: int
created_at: float
done: threading.Event
result: Optional[_EmbedResult] = None
error: Optional[Exception] = None
_text_dispatch_high_queue: "deque[_TextDispatchTask]" = deque()
_text_dispatch_normal_queue: "deque[_TextDispatchTask]" = deque()
_text_dispatch_cv = threading.Condition()
_text_dispatch_workers: List[threading.Thread] = []
_text_dispatch_worker_stop = False
_text_dispatch_worker_count = 0
def _text_dispatch_queue_depth() -> Dict[str, int]:
with _text_dispatch_cv:
return {
"high": len(_text_dispatch_high_queue),
"normal": len(_text_dispatch_normal_queue),
"total": len(_text_dispatch_high_queue) + len(_text_dispatch_normal_queue),
}
def _pop_text_dispatch_task_locked() -> Optional["_TextDispatchTask"]:
if _text_dispatch_high_queue:
return _text_dispatch_high_queue.popleft()
if _text_dispatch_normal_queue:
return _text_dispatch_normal_queue.popleft()
return None
def _start_text_dispatch_workers() -> None:
global _text_dispatch_workers, _text_dispatch_worker_stop, _text_dispatch_worker_count
if _text_model is None:
return
target_worker_count = 1 if _text_backend_name == "local_st" else _TEXT_MAX_INFLIGHT
alive_workers = [worker for worker in _text_dispatch_workers if worker.is_alive()]
if len(alive_workers) == target_worker_count:
_text_dispatch_workers = alive_workers
_text_dispatch_worker_count = target_worker_count
return
_text_dispatch_worker_stop = False
_text_dispatch_worker_count = target_worker_count
_text_dispatch_workers = []
for idx in range(target_worker_count):
worker = threading.Thread(
target=_text_dispatch_worker_loop,
args=(idx,),
name=f"embed-text-dispatch-{idx}",
daemon=True,
)
worker.start()
_text_dispatch_workers.append(worker)
logger.info(
"Started text dispatch workers | backend=%s workers=%d",
_text_backend_name,
target_worker_count,
)
def _stop_text_dispatch_workers() -> None:
global _text_dispatch_worker_stop
with _text_dispatch_cv:
_text_dispatch_worker_stop = True
_text_dispatch_cv.notify_all()
def _text_dispatch_worker_loop(worker_idx: int) -> None:
while True:
with _text_dispatch_cv:
while (
not _text_dispatch_high_queue
and not _text_dispatch_normal_queue
and not _text_dispatch_worker_stop
):
_text_dispatch_cv.wait()
if _text_dispatch_worker_stop:
return
task = _pop_text_dispatch_task_locked()
if task is None:
continue
try:
queue_wait_ms = (time.perf_counter() - task.created_at) * 1000.0
logger.info(
"text dispatch start | worker=%d priority=%s inputs=%d queue_wait_ms=%.2f",
worker_idx,
_priority_label(task.priority),
len(task.normalized),
queue_wait_ms,
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extra=build_request_log_extra(task.request_id, task.user_id),
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)
task.result = _embed_text_impl(
task.normalized,
task.effective_normalize,
task.request_id,
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task.user_id,
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task.priority,
)
except Exception as exc:
task.error = exc
finally:
task.done.set()
def _submit_text_dispatch_and_wait(
normalized: List[str],
effective_normalize: bool,
request_id: str,
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user_id: str,
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priority: int,
) -> _EmbedResult:
if not any(worker.is_alive() for worker in _text_dispatch_workers):
_start_text_dispatch_workers()
task = _TextDispatchTask(
normalized=normalized,
effective_normalize=effective_normalize,
request_id=request_id,
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user_id=user_id,
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priority=_effective_priority(priority),
created_at=time.perf_counter(),
done=threading.Event(),
)
with _text_dispatch_cv:
if task.priority > 0:
_text_dispatch_high_queue.append(task)
else:
_text_dispatch_normal_queue.append(task)
_text_dispatch_cv.notify()
task.done.wait()
if task.error is not None:
raise task.error
if task.result is None:
raise RuntimeError("Text dispatch worker returned empty result")
return task.result
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_text_request_limiter = _InflightLimiter(name="text", limit=_TEXT_MAX_INFLIGHT)
_image_request_limiter = _InflightLimiter(name="image", limit=_IMAGE_MAX_INFLIGHT)
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_text_stats = _EndpointStats(name="text")
_image_stats = _EndpointStats(name="image")
_text_cache = RedisEmbeddingCache(key_prefix=_CACHE_PREFIX, namespace="")
_image_cache = RedisEmbeddingCache(key_prefix=_CACHE_PREFIX, namespace="image")
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_clip_text_cache = RedisEmbeddingCache(key_prefix=_CACHE_PREFIX, namespace="clip_text")
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@dataclass
class _SingleTextTask:
text: str
normalize: bool
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priority: int
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created_at: float
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request_id: str
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user_id: str
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done: threading.Event
result: Optional[List[float]] = None
error: Optional[Exception] = None
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_text_single_high_queue: "deque[_SingleTextTask]" = deque()
_text_single_normal_queue: "deque[_SingleTextTask]" = deque()
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401
|
_text_single_queue_cv = threading.Condition()
_text_batch_worker: Optional[threading.Thread] = None
_text_batch_worker_stop = False
|
28e57bb1
tangwang
日志体系优化
|
402
403
|
|
b754fd41
tangwang
图片向量化支持优先级参数
|
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
|
def _text_microbatch_queue_depth() -> Dict[str, int]:
with _text_single_queue_cv:
return {
"high": len(_text_single_high_queue),
"normal": len(_text_single_normal_queue),
"total": len(_text_single_high_queue) + len(_text_single_normal_queue),
}
def _pop_single_text_task_locked() -> Optional["_SingleTextTask"]:
if _text_single_high_queue:
return _text_single_high_queue.popleft()
if _text_single_normal_queue:
return _text_single_normal_queue.popleft()
return None
|
28e57bb1
tangwang
日志体系优化
|
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
|
def _compact_preview(text: str, max_chars: int) -> str:
compact = " ".join((text or "").split())
if len(compact) <= max_chars:
return compact
return compact[:max_chars] + "..."
def _preview_inputs(items: List[str], max_items: int, max_chars: int) -> List[Dict[str, Any]]:
previews: List[Dict[str, Any]] = []
for idx, item in enumerate(items[:max_items]):
previews.append(
{
"idx": idx,
"len": len(item),
"preview": _compact_preview(item, max_chars),
}
)
return previews
|
efd435cf
tangwang
tei性能调优:
|
439
440
|
|
4747e2f4
tangwang
embedding perform...
|
441
442
443
444
445
446
|
def _preview_vector(vec: Optional[List[float]], max_dims: int = _VECTOR_PREVIEW_DIMS) -> List[float]:
if not vec:
return []
return [round(float(v), 6) for v in vec[:max_dims]]
|
4747e2f4
tangwang
embedding perform...
|
447
448
449
450
451
452
453
|
def _resolve_request_id(http_request: Request) -> str:
header_value = http_request.headers.get("X-Request-ID")
if header_value and header_value.strip():
return header_value.strip()[:32]
return str(uuid.uuid4())[:8]
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
454
455
456
457
458
459
460
|
def _resolve_user_id(http_request: Request) -> str:
header_value = http_request.headers.get("X-User-ID") or http_request.headers.get("User-ID")
if header_value and header_value.strip():
return header_value.strip()[:64]
return "-1"
|
4747e2f4
tangwang
embedding perform...
|
461
462
463
464
465
466
|
def _request_client(http_request: Request) -> str:
client = getattr(http_request, "client", None)
host = getattr(client, "host", None)
return str(host or "-")
|
efd435cf
tangwang
tei性能调优:
|
467
468
|
def _encode_local_st(texts: List[str], normalize_embeddings: bool) -> Any:
with _text_encode_lock:
|
77516841
tangwang
tidy embeddings
|
469
|
return _text_model.encode(
|
efd435cf
tangwang
tei性能调优:
|
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
|
texts,
batch_size=int(CONFIG.TEXT_BATCH_SIZE),
device=CONFIG.TEXT_DEVICE,
normalize_embeddings=normalize_embeddings,
)
def _start_text_batch_worker() -> None:
global _text_batch_worker, _text_batch_worker_stop
if _text_batch_worker is not None and _text_batch_worker.is_alive():
return
_text_batch_worker_stop = False
_text_batch_worker = threading.Thread(
target=_text_batch_worker_loop,
name="embed-text-microbatch-worker",
daemon=True,
)
_text_batch_worker.start()
logger.info(
"Started local_st text micro-batch worker | window_ms=%.1f max_batch=%d",
_TEXT_MICROBATCH_WINDOW_SEC * 1000.0,
int(CONFIG.TEXT_BATCH_SIZE),
)
def _stop_text_batch_worker() -> None:
global _text_batch_worker_stop
with _text_single_queue_cv:
_text_batch_worker_stop = True
_text_single_queue_cv.notify_all()
def _text_batch_worker_loop() -> None:
max_batch = max(1, int(CONFIG.TEXT_BATCH_SIZE))
while True:
with _text_single_queue_cv:
|
b754fd41
tangwang
图片向量化支持优先级参数
|
506
507
508
509
510
|
while (
not _text_single_high_queue
and not _text_single_normal_queue
and not _text_batch_worker_stop
):
|
efd435cf
tangwang
tei性能调优:
|
511
512
513
514
|
_text_single_queue_cv.wait()
if _text_batch_worker_stop:
return
|
b754fd41
tangwang
图片向量化支持优先级参数
|
515
516
517
518
|
first_task = _pop_single_text_task_locked()
if first_task is None:
continue
batch: List[_SingleTextTask] = [first_task]
|
efd435cf
tangwang
tei性能调优:
|
519
520
521
522
523
524
|
deadline = time.perf_counter() + _TEXT_MICROBATCH_WINDOW_SEC
while len(batch) < max_batch:
remaining = deadline - time.perf_counter()
if remaining <= 0:
break
|
b754fd41
tangwang
图片向量化支持优先级参数
|
525
|
if not _text_single_high_queue and not _text_single_normal_queue:
|
efd435cf
tangwang
tei性能调优:
|
526
527
|
_text_single_queue_cv.wait(timeout=remaining)
continue
|
b754fd41
tangwang
图片向量化支持优先级参数
|
528
529
530
531
532
|
while len(batch) < max_batch:
next_task = _pop_single_text_task_locked()
if next_task is None:
break
batch.append(next_task)
|
efd435cf
tangwang
tei性能调优:
|
533
534
|
try:
|
4747e2f4
tangwang
embedding perform...
|
535
536
|
queue_wait_ms = [(time.perf_counter() - task.created_at) * 1000.0 for task in batch]
reqids = [task.request_id for task in batch]
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
537
|
uids = [task.user_id for task in batch]
|
4747e2f4
tangwang
embedding perform...
|
538
|
logger.info(
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
539
|
"text microbatch dispatch | size=%d priority=%s queue_wait_ms_min=%.2f queue_wait_ms_max=%.2f reqids=%s uids=%s preview=%s",
|
4747e2f4
tangwang
embedding perform...
|
540
|
len(batch),
|
b754fd41
tangwang
图片向量化支持优先级参数
|
541
|
_priority_label(max(task.priority for task in batch)),
|
4747e2f4
tangwang
embedding perform...
|
542
543
544
|
min(queue_wait_ms) if queue_wait_ms else 0.0,
max(queue_wait_ms) if queue_wait_ms else 0.0,
reqids,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
545
|
uids,
|
4747e2f4
tangwang
embedding perform...
|
546
547
548
549
550
|
_preview_inputs(
[task.text for task in batch],
_LOG_PREVIEW_COUNT,
_LOG_TEXT_PREVIEW_CHARS,
),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
551
|
extra=build_request_log_extra(),
|
4747e2f4
tangwang
embedding perform...
|
552
553
|
)
batch_t0 = time.perf_counter()
|
efd435cf
tangwang
tei性能调优:
|
554
555
556
557
558
559
560
561
562
563
564
|
embs = _encode_local_st([task.text for task in batch], normalize_embeddings=False)
if embs is None or len(embs) != len(batch):
raise RuntimeError(
f"Text model response length mismatch in micro-batch: "
f"expected {len(batch)}, got {0 if embs is None else len(embs)}"
)
for task, emb in zip(batch, embs):
vec = _as_list(emb, normalize=task.normalize)
if vec is None:
raise RuntimeError("Text model returned empty embedding in micro-batch")
task.result = vec
|
4747e2f4
tangwang
embedding perform...
|
565
|
logger.info(
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
566
|
"text microbatch done | size=%d reqids=%s uids=%s dim=%d backend_elapsed_ms=%.2f",
|
4747e2f4
tangwang
embedding perform...
|
567
568
|
len(batch),
reqids,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
569
|
uids,
|
4747e2f4
tangwang
embedding perform...
|
570
571
|
len(batch[0].result) if batch and batch[0].result is not None else 0,
(time.perf_counter() - batch_t0) * 1000.0,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
572
|
extra=build_request_log_extra(),
|
4747e2f4
tangwang
embedding perform...
|
573
|
)
|
efd435cf
tangwang
tei性能调优:
|
574
|
except Exception as exc:
|
4747e2f4
tangwang
embedding perform...
|
575
|
logger.error(
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
576
|
"text microbatch failed | size=%d reqids=%s uids=%s error=%s",
|
4747e2f4
tangwang
embedding perform...
|
577
578
|
len(batch),
[task.request_id for task in batch],
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
579
|
[task.user_id for task in batch],
|
4747e2f4
tangwang
embedding perform...
|
580
581
|
exc,
exc_info=True,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
582
|
extra=build_request_log_extra(),
|
4747e2f4
tangwang
embedding perform...
|
583
|
)
|
efd435cf
tangwang
tei性能调优:
|
584
585
586
587
588
589
590
|
for task in batch:
task.error = exc
finally:
for task in batch:
task.done.set()
|
b754fd41
tangwang
图片向量化支持优先级参数
|
591
592
593
594
|
def _encode_single_text_with_microbatch(
text: str,
normalize: bool,
request_id: str,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
595
|
user_id: str,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
596
597
|
priority: int,
) -> List[float]:
|
efd435cf
tangwang
tei性能调优:
|
598
599
600
|
task = _SingleTextTask(
text=text,
normalize=normalize,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
601
|
priority=_effective_priority(priority),
|
efd435cf
tangwang
tei性能调优:
|
602
|
created_at=time.perf_counter(),
|
4747e2f4
tangwang
embedding perform...
|
603
|
request_id=request_id,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
604
|
user_id=user_id,
|
efd435cf
tangwang
tei性能调优:
|
605
606
607
|
done=threading.Event(),
)
with _text_single_queue_cv:
|
b754fd41
tangwang
图片向量化支持优先级参数
|
608
609
610
611
|
if task.priority > 0:
_text_single_high_queue.append(task)
else:
_text_single_normal_queue.append(task)
|
efd435cf
tangwang
tei性能调优:
|
612
613
614
615
|
_text_single_queue_cv.notify()
if not task.done.wait(timeout=_TEXT_REQUEST_TIMEOUT_SEC):
with _text_single_queue_cv:
|
b754fd41
tangwang
图片向量化支持优先级参数
|
616
|
queue = _text_single_high_queue if task.priority > 0 else _text_single_normal_queue
|
efd435cf
tangwang
tei性能调优:
|
617
|
try:
|
b754fd41
tangwang
图片向量化支持优先级参数
|
618
|
queue.remove(task)
|
efd435cf
tangwang
tei性能调优:
|
619
620
621
622
623
624
625
626
627
628
629
630
|
except ValueError:
pass
raise RuntimeError(
f"Timed out waiting for text micro-batch worker ({_TEXT_REQUEST_TIMEOUT_SEC:.1f}s)"
)
if task.error is not None:
raise task.error
if task.result is None:
raise RuntimeError("Text micro-batch worker returned empty result")
return task.result
|
0a3764c4
tangwang
优化embedding模型加载
|
631
632
633
|
@app.on_event("startup")
def load_models():
"""Load models at service startup to avoid first-request latency."""
|
07cf5a93
tangwang
START_EMBEDDING=...
|
634
|
global _text_model, _image_model, _text_backend_name
|
7bfb9946
tangwang
向量化模块
|
635
|
|
7214c2e7
tangwang
mplemented**
|
636
637
638
639
640
641
|
logger.info(
"Loading embedding models at startup | service_kind=%s text_enabled=%s image_enabled=%s",
_SERVICE_KIND,
open_text_model,
open_image_model,
)
|
7bfb9946
tangwang
向量化模块
|
642
|
|
40f1e391
tangwang
cnclip
|
643
644
|
if open_text_model:
try:
|
07cf5a93
tangwang
START_EMBEDDING=...
|
645
646
647
|
backend_name, backend_cfg = get_embedding_backend_config()
_text_backend_name = backend_name
if backend_name == "tei":
|
77516841
tangwang
tidy embeddings
|
648
|
from embeddings.text_embedding_tei import TEITextModel
|
07cf5a93
tangwang
START_EMBEDDING=...
|
649
|
|
86d8358b
tangwang
config optimize
|
650
651
|
base_url = backend_cfg.get("base_url") or CONFIG.TEI_BASE_URL
timeout_sec = int(backend_cfg.get("timeout_sec") or CONFIG.TEI_TIMEOUT_SEC)
|
07cf5a93
tangwang
START_EMBEDDING=...
|
652
653
654
655
|
logger.info("Loading text backend: tei (base_url=%s)", base_url)
_text_model = TEITextModel(
base_url=str(base_url),
timeout_sec=timeout_sec,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
656
657
658
|
max_client_batch_size=int(
backend_cfg.get("max_client_batch_size") or CONFIG.TEI_MAX_CLIENT_BATCH_SIZE
),
|
07cf5a93
tangwang
START_EMBEDDING=...
|
659
660
|
)
elif backend_name == "local_st":
|
77516841
tangwang
tidy embeddings
|
661
|
from embeddings.text_embedding_sentence_transformers import Qwen3TextModel
|
950a640e
tangwang
embeddings
|
662
|
|
86d8358b
tangwang
config optimize
|
663
|
model_id = backend_cfg.get("model_id") or CONFIG.TEXT_MODEL_ID
|
07cf5a93
tangwang
START_EMBEDDING=...
|
664
665
|
logger.info("Loading text backend: local_st (model=%s)", model_id)
_text_model = Qwen3TextModel(model_id=str(model_id))
|
efd435cf
tangwang
tei性能调优:
|
666
|
_start_text_batch_worker()
|
07cf5a93
tangwang
START_EMBEDDING=...
|
667
668
669
670
671
|
else:
raise ValueError(
f"Unsupported embedding backend: {backend_name}. "
"Supported: tei, local_st"
)
|
b754fd41
tangwang
图片向量化支持优先级参数
|
672
|
_start_text_dispatch_workers()
|
07cf5a93
tangwang
START_EMBEDDING=...
|
673
|
logger.info("Text backend loaded successfully: %s", _text_backend_name)
|
40f1e391
tangwang
cnclip
|
674
|
except Exception as e:
|
4747e2f4
tangwang
embedding perform...
|
675
|
logger.error("Failed to load text model: %s", e, exc_info=True)
|
40f1e391
tangwang
cnclip
|
676
|
raise
|
0a3764c4
tangwang
优化embedding模型加载
|
677
|
|
40f1e391
tangwang
cnclip
|
678
679
|
if open_image_model:
try:
|
c10f90fe
tangwang
cnclip
|
680
|
if CONFIG.USE_CLIP_AS_SERVICE:
|
950a640e
tangwang
embeddings
|
681
682
|
from embeddings.clip_as_service_encoder import ClipAsServiceImageEncoder
|
4747e2f4
tangwang
embedding perform...
|
683
684
685
686
687
|
logger.info(
"Loading image encoder via clip-as-service: %s (configured model: %s)",
CONFIG.CLIP_AS_SERVICE_SERVER,
CONFIG.CLIP_AS_SERVICE_MODEL_NAME,
)
|
c10f90fe
tangwang
cnclip
|
688
689
690
691
692
693
|
_image_model = ClipAsServiceImageEncoder(
server=CONFIG.CLIP_AS_SERVICE_SERVER,
batch_size=CONFIG.IMAGE_BATCH_SIZE,
)
logger.info("Image model (clip-as-service) loaded successfully")
else:
|
950a640e
tangwang
embeddings
|
694
695
|
from embeddings.clip_model import ClipImageModel
|
4747e2f4
tangwang
embedding perform...
|
696
697
698
699
700
|
logger.info(
"Loading local image model: %s (device: %s)",
CONFIG.IMAGE_MODEL_NAME,
CONFIG.IMAGE_DEVICE,
)
|
c10f90fe
tangwang
cnclip
|
701
702
703
704
705
|
_image_model = ClipImageModel(
model_name=CONFIG.IMAGE_MODEL_NAME,
device=CONFIG.IMAGE_DEVICE,
)
logger.info("Image model (local CN-CLIP) loaded successfully")
|
40f1e391
tangwang
cnclip
|
706
|
except Exception as e:
|
ed948666
tangwang
tidy
|
707
708
|
logger.error("Failed to load image model: %s", e, exc_info=True)
raise
|
0a3764c4
tangwang
优化embedding模型加载
|
709
710
|
logger.info("All embedding models loaded successfully, service ready")
|
7bfb9946
tangwang
向量化模块
|
711
712
|
|
efd435cf
tangwang
tei性能调优:
|
713
714
715
|
@app.on_event("shutdown")
def stop_workers() -> None:
_stop_text_batch_worker()
|
b754fd41
tangwang
图片向量化支持优先级参数
|
716
|
_stop_text_dispatch_workers()
|
efd435cf
tangwang
tei性能调优:
|
717
718
|
|
200fdddf
tangwang
embed norm
|
719
720
721
722
723
724
725
726
|
def _normalize_vector(vec: np.ndarray) -> np.ndarray:
norm = float(np.linalg.norm(vec))
if not np.isfinite(norm) or norm <= 0.0:
raise RuntimeError("Embedding vector has invalid norm (must be > 0)")
return vec / norm
def _as_list(embedding: Optional[np.ndarray], normalize: bool = False) -> Optional[List[float]]:
|
7bfb9946
tangwang
向量化模块
|
727
728
729
730
731
732
|
if embedding is None:
return None
if not isinstance(embedding, np.ndarray):
embedding = np.array(embedding, dtype=np.float32)
if embedding.ndim != 1:
embedding = embedding.reshape(-1)
|
200fdddf
tangwang
embed norm
|
733
734
735
736
|
embedding = embedding.astype(np.float32, copy=False)
if normalize:
embedding = _normalize_vector(embedding).astype(np.float32, copy=False)
return embedding.tolist()
|
7bfb9946
tangwang
向量化模块
|
737
738
|
|
7214c2e7
tangwang
mplemented**
|
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
|
def _try_full_text_cache_hit(
normalized: List[str],
effective_normalize: bool,
) -> Optional[_EmbedResult]:
out: List[Optional[List[float]]] = []
for text in normalized:
cached = _text_cache.get(build_text_cache_key(text, normalize=effective_normalize))
if cached is None:
return None
vec = _as_list(cached, normalize=False)
if vec is None:
return None
out.append(vec)
return _EmbedResult(
vectors=out,
cache_hits=len(out),
cache_misses=0,
backend_elapsed_ms=0.0,
mode="cache-only",
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
761
762
|
def _try_full_image_lane_cache_hit(
items: List[str],
|
7214c2e7
tangwang
mplemented**
|
763
|
effective_normalize: bool,
|
7a013ca7
tangwang
多模态文本向量服务ok
|
764
765
|
*,
lane: str,
|
7214c2e7
tangwang
mplemented**
|
766
767
|
) -> Optional[_EmbedResult]:
out: List[Optional[List[float]]] = []
|
7a013ca7
tangwang
多模态文本向量服务ok
|
768
769
|
for item in items:
if lane == "image":
|
5a01af3c
tangwang
多模态hashkey调整:1. 加...
|
770
771
772
|
ck = _mm_image_cache_key(
item, normalize=effective_normalize, model_name=CONFIG.MULTIMODAL_MODEL_NAME
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
773
774
|
cached = _image_cache.get(ck)
else:
|
5a01af3c
tangwang
多模态hashkey调整:1. 加...
|
775
776
777
|
ck = _mm_clip_text_cache_key(
item, normalize=effective_normalize, model_name=CONFIG.MULTIMODAL_MODEL_NAME
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
778
|
cached = _clip_text_cache.get(ck)
|
7214c2e7
tangwang
mplemented**
|
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
|
if cached is None:
return None
vec = _as_list(cached, normalize=False)
if vec is None:
return None
out.append(vec)
return _EmbedResult(
vectors=out,
cache_hits=len(out),
cache_misses=0,
backend_elapsed_ms=0.0,
mode="cache-only",
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
|
def _embed_image_lane_impl(
items: List[str],
effective_normalize: bool,
request_id: str,
user_id: str,
*,
lane: str,
) -> _EmbedResult:
if _image_model is None:
raise RuntimeError("Image model not loaded")
out: List[Optional[List[float]]] = [None] * len(items)
missing_indices: List[int] = []
missing_items: List[str] = []
missing_keys: List[str] = []
cache_hits = 0
for idx, item in enumerate(items):
if lane == "image":
|
5a01af3c
tangwang
多模态hashkey调整:1. 加...
|
812
813
814
|
ck = _mm_image_cache_key(
item, normalize=effective_normalize, model_name=CONFIG.MULTIMODAL_MODEL_NAME
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
815
816
|
cached = _image_cache.get(ck)
else:
|
5a01af3c
tangwang
多模态hashkey调整:1. 加...
|
817
818
819
|
ck = _mm_clip_text_cache_key(
item, normalize=effective_normalize, model_name=CONFIG.MULTIMODAL_MODEL_NAME
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
|
cached = _clip_text_cache.get(ck)
if cached is not None:
vec = _as_list(cached, normalize=False)
if vec is not None:
out[idx] = vec
cache_hits += 1
continue
missing_indices.append(idx)
missing_items.append(item)
missing_keys.append(ck)
if not missing_items:
logger.info(
"%s lane cache-only | inputs=%d normalize=%s dim=%d cache_hits=%d",
lane,
len(items),
effective_normalize,
len(out[0]) if out and out[0] is not None else 0,
cache_hits,
extra=build_request_log_extra(request_id=request_id, user_id=user_id),
)
return _EmbedResult(
vectors=out,
cache_hits=cache_hits,
cache_misses=0,
backend_elapsed_ms=0.0,
mode="cache-only",
)
backend_t0 = time.perf_counter()
with _image_encode_lock:
if lane == "image":
vectors = _image_model.encode_image_urls(
missing_items,
batch_size=CONFIG.IMAGE_BATCH_SIZE,
normalize_embeddings=effective_normalize,
)
else:
vectors = _image_model.encode_clip_texts(
missing_items,
batch_size=CONFIG.IMAGE_BATCH_SIZE,
normalize_embeddings=effective_normalize,
)
if vectors is None or len(vectors) != len(missing_items):
raise RuntimeError(
f"{lane} lane length mismatch: expected {len(missing_items)}, "
f"got {0 if vectors is None else len(vectors)}"
)
for pos, ck, vec in zip(missing_indices, missing_keys, vectors):
out_vec = _as_list(vec, normalize=effective_normalize)
if out_vec is None:
raise RuntimeError(f"{lane} lane empty embedding at position {pos}")
out[pos] = out_vec
if lane == "image":
_image_cache.set(ck, np.asarray(out_vec, dtype=np.float32))
else:
_clip_text_cache.set(ck, np.asarray(out_vec, dtype=np.float32))
backend_elapsed_ms = (time.perf_counter() - backend_t0) * 1000.0
logger.info(
"%s lane backend-batch | inputs=%d normalize=%s dim=%d cache_hits=%d cache_misses=%d backend_elapsed_ms=%.2f",
lane,
len(items),
effective_normalize,
len(out[0]) if out and out[0] is not None else 0,
cache_hits,
len(missing_items),
backend_elapsed_ms,
extra=build_request_log_extra(request_id=request_id, user_id=user_id),
)
return _EmbedResult(
vectors=out,
cache_hits=cache_hits,
cache_misses=len(missing_items),
backend_elapsed_ms=backend_elapsed_ms,
mode="backend-batch",
)
|
7bfb9946
tangwang
向量化模块
|
900
901
|
@app.get("/health")
def health() -> Dict[str, Any]:
|
4747e2f4
tangwang
embedding perform...
|
902
|
"""Health check endpoint. Returns status and current throttling stats."""
|
7214c2e7
tangwang
mplemented**
|
903
|
ready = (not open_text_model or _text_model is not None) and (not open_image_model or _image_model is not None)
|
b754fd41
tangwang
图片向量化支持优先级参数
|
904
905
|
text_dispatch_depth = _text_dispatch_queue_depth()
text_microbatch_depth = _text_microbatch_queue_depth()
|
0a3764c4
tangwang
优化embedding模型加载
|
906
|
return {
|
7214c2e7
tangwang
mplemented**
|
907
908
|
"status": "ok" if ready else "degraded",
"service_kind": _SERVICE_KIND,
|
0a3764c4
tangwang
优化embedding模型加载
|
909
|
"text_model_loaded": _text_model is not None,
|
07cf5a93
tangwang
START_EMBEDDING=...
|
910
|
"text_backend": _text_backend_name,
|
0a3764c4
tangwang
优化embedding模型加载
|
911
|
"image_model_loaded": _image_model is not None,
|
7214c2e7
tangwang
mplemented**
|
912
913
914
|
"cache_enabled": {
"text": _text_cache.redis_client is not None,
"image": _image_cache.redis_client is not None,
|
7a013ca7
tangwang
多模态文本向量服务ok
|
915
|
"clip_text": _clip_text_cache.redis_client is not None,
|
7214c2e7
tangwang
mplemented**
|
916
|
},
|
4747e2f4
tangwang
embedding perform...
|
917
918
919
920
|
"limits": {
"text": _text_request_limiter.snapshot(),
"image": _image_request_limiter.snapshot(),
},
|
7214c2e7
tangwang
mplemented**
|
921
922
923
924
|
"stats": {
"text": _text_stats.snapshot(),
"image": _image_stats.snapshot(),
},
|
b754fd41
tangwang
图片向量化支持优先级参数
|
925
926
927
928
929
930
931
|
"text_dispatch": {
"workers": _text_dispatch_worker_count,
"workers_alive": sum(1 for worker in _text_dispatch_workers if worker.is_alive()),
"queue_depth": text_dispatch_depth["total"],
"queue_depth_high": text_dispatch_depth["high"],
"queue_depth_normal": text_dispatch_depth["normal"],
},
|
4747e2f4
tangwang
embedding perform...
|
932
933
|
"text_microbatch": {
"window_ms": round(_TEXT_MICROBATCH_WINDOW_SEC * 1000.0, 3),
|
b754fd41
tangwang
图片向量化支持优先级参数
|
934
935
936
|
"queue_depth": text_microbatch_depth["total"],
"queue_depth_high": text_microbatch_depth["high"],
"queue_depth_normal": text_microbatch_depth["normal"],
|
4747e2f4
tangwang
embedding perform...
|
937
938
939
|
"worker_alive": bool(_text_batch_worker is not None and _text_batch_worker.is_alive()),
"request_timeout_sec": _TEXT_REQUEST_TIMEOUT_SEC,
},
|
0a3764c4
tangwang
优化embedding模型加载
|
940
|
}
|
7bfb9946
tangwang
向量化模块
|
941
942
|
|
7214c2e7
tangwang
mplemented**
|
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
962
963
|
@app.get("/ready")
def ready() -> Dict[str, Any]:
text_ready = (not open_text_model) or (_text_model is not None)
image_ready = (not open_image_model) or (_image_model is not None)
if not (text_ready and image_ready):
raise HTTPException(
status_code=503,
detail={
"service_kind": _SERVICE_KIND,
"text_ready": text_ready,
"image_ready": image_ready,
},
)
return {
"status": "ready",
"service_kind": _SERVICE_KIND,
"text_ready": text_ready,
"image_ready": image_ready,
}
|
4747e2f4
tangwang
embedding perform...
|
964
965
966
967
|
def _embed_text_impl(
normalized: List[str],
effective_normalize: bool,
request_id: str,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
968
|
user_id: str,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
969
|
priority: int = 0,
|
7214c2e7
tangwang
mplemented**
|
970
|
) -> _EmbedResult:
|
0a3764c4
tangwang
优化embedding模型加载
|
971
972
|
if _text_model is None:
raise RuntimeError("Text model not loaded")
|
28e57bb1
tangwang
日志体系优化
|
973
|
|
7214c2e7
tangwang
mplemented**
|
974
975
976
977
978
979
980
981
982
983
984
985
986
987
988
989
990
991
992
993
994
995
996
997
998
999
|
out: List[Optional[List[float]]] = [None] * len(normalized)
missing_indices: List[int] = []
missing_texts: List[str] = []
missing_cache_keys: List[str] = []
cache_hits = 0
for idx, text in enumerate(normalized):
cache_key = build_text_cache_key(text, normalize=effective_normalize)
cached = _text_cache.get(cache_key)
if cached is not None:
vec = _as_list(cached, normalize=False)
if vec is not None:
out[idx] = vec
cache_hits += 1
continue
missing_indices.append(idx)
missing_texts.append(text)
missing_cache_keys.append(cache_key)
if not missing_texts:
logger.info(
"text backend done | backend=%s mode=cache-only inputs=%d normalize=%s dim=%d cache_hits=%d cache_misses=0 backend_elapsed_ms=0.00",
_text_backend_name,
len(normalized),
effective_normalize,
len(out[0]) if out and out[0] is not None else 0,
cache_hits,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1000
|
extra=build_request_log_extra(request_id, user_id),
|
7214c2e7
tangwang
mplemented**
|
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
|
)
return _EmbedResult(
vectors=out,
cache_hits=cache_hits,
cache_misses=0,
backend_elapsed_ms=0.0,
mode="cache-only",
)
backend_t0 = time.perf_counter()
|
54ccf28c
tangwang
tei
|
1011
|
try:
|
efd435cf
tangwang
tei性能调优:
|
1012
|
if _text_backend_name == "local_st":
|
7214c2e7
tangwang
mplemented**
|
1013
1014
|
if len(missing_texts) == 1 and _text_batch_worker is not None:
computed = [
|
4747e2f4
tangwang
embedding perform...
|
1015
|
_encode_single_text_with_microbatch(
|
7214c2e7
tangwang
mplemented**
|
1016
|
missing_texts[0],
|
4747e2f4
tangwang
embedding perform...
|
1017
1018
|
normalize=effective_normalize,
request_id=request_id,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1019
|
user_id=user_id,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1020
|
priority=priority,
|
4747e2f4
tangwang
embedding perform...
|
1021
1022
|
)
]
|
7214c2e7
tangwang
mplemented**
|
1023
1024
1025
1026
1027
1028
1029
1030
1031
1032
|
mode = "microbatch-single"
else:
embs = _encode_local_st(missing_texts, normalize_embeddings=False)
computed = []
for i, emb in enumerate(embs):
vec = _as_list(emb, normalize=effective_normalize)
if vec is None:
raise RuntimeError(f"Text model returned empty embedding for missing index {i}")
computed.append(vec)
mode = "direct-batch"
|
efd435cf
tangwang
tei性能调优:
|
1033
|
else:
|
77516841
tangwang
tidy embeddings
|
1034
|
embs = _text_model.encode(
|
7214c2e7
tangwang
mplemented**
|
1035
|
missing_texts,
|
54ccf28c
tangwang
tei
|
1036
1037
|
batch_size=int(CONFIG.TEXT_BATCH_SIZE),
device=CONFIG.TEXT_DEVICE,
|
200fdddf
tangwang
embed norm
|
1038
|
normalize_embeddings=effective_normalize,
|
54ccf28c
tangwang
tei
|
1039
|
)
|
7214c2e7
tangwang
mplemented**
|
1040
1041
1042
1043
1044
1045
|
computed = []
for i, emb in enumerate(embs):
vec = _as_list(emb, normalize=False)
if vec is None:
raise RuntimeError(f"Text model returned empty embedding for missing index {i}")
computed.append(vec)
|
4747e2f4
tangwang
embedding perform...
|
1046
|
mode = "backend-batch"
|
54ccf28c
tangwang
tei
|
1047
|
except Exception as e:
|
4747e2f4
tangwang
embedding perform...
|
1048
1049
1050
1051
|
logger.error(
"Text embedding backend failure: %s",
e,
exc_info=True,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1052
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1053
1054
1055
|
)
raise RuntimeError(f"Text embedding backend failure: {e}") from e
|
7214c2e7
tangwang
mplemented**
|
1056
|
if len(computed) != len(missing_texts):
|
ed948666
tangwang
tidy
|
1057
|
raise RuntimeError(
|
7214c2e7
tangwang
mplemented**
|
1058
1059
|
f"Text model response length mismatch: expected {len(missing_texts)}, "
f"got {len(computed)}"
|
ed948666
tangwang
tidy
|
1060
|
)
|
4747e2f4
tangwang
embedding perform...
|
1061
|
|
7214c2e7
tangwang
mplemented**
|
1062
1063
1064
1065
1066
|
for pos, cache_key, vec in zip(missing_indices, missing_cache_keys, computed):
out[pos] = vec
_text_cache.set(cache_key, np.asarray(vec, dtype=np.float32))
backend_elapsed_ms = (time.perf_counter() - backend_t0) * 1000.0
|
4747e2f4
tangwang
embedding perform...
|
1067
|
|
efd435cf
tangwang
tei性能调优:
|
1068
|
logger.info(
|
7214c2e7
tangwang
mplemented**
|
1069
|
"text backend done | backend=%s mode=%s inputs=%d normalize=%s dim=%d cache_hits=%d cache_misses=%d backend_elapsed_ms=%.2f",
|
efd435cf
tangwang
tei性能调优:
|
1070
|
_text_backend_name,
|
4747e2f4
tangwang
embedding perform...
|
1071
|
mode,
|
efd435cf
tangwang
tei性能调优:
|
1072
1073
|
len(normalized),
effective_normalize,
|
28e57bb1
tangwang
日志体系优化
|
1074
|
len(out[0]) if out and out[0] is not None else 0,
|
7214c2e7
tangwang
mplemented**
|
1075
1076
1077
|
cache_hits,
len(missing_texts),
backend_elapsed_ms,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1078
|
extra=build_request_log_extra(request_id, user_id),
|
efd435cf
tangwang
tei性能调优:
|
1079
|
)
|
7214c2e7
tangwang
mplemented**
|
1080
1081
1082
1083
1084
1085
1086
|
return _EmbedResult(
vectors=out,
cache_hits=cache_hits,
cache_misses=len(missing_texts),
backend_elapsed_ms=backend_elapsed_ms,
mode=mode,
)
|
7bfb9946
tangwang
向量化模块
|
1087
1088
|
|
4747e2f4
tangwang
embedding perform...
|
1089
1090
1091
1092
1093
1094
|
@app.post("/embed/text")
async def embed_text(
texts: List[str],
http_request: Request,
response: Response,
normalize: Optional[bool] = None,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1095
|
priority: int = 0,
|
4747e2f4
tangwang
embedding perform...
|
1096
|
) -> List[Optional[List[float]]]:
|
7214c2e7
tangwang
mplemented**
|
1097
1098
1099
|
if _text_model is None:
raise HTTPException(status_code=503, detail="Text embedding model not loaded in this service")
|
4747e2f4
tangwang
embedding perform...
|
1100
|
request_id = _resolve_request_id(http_request)
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1101
1102
|
user_id = _resolve_user_id(http_request)
_, _, log_tokens = bind_request_log_context(request_id, user_id)
|
4747e2f4
tangwang
embedding perform...
|
1103
|
response.headers["X-Request-ID"] = request_id
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1104
|
response.headers["X-User-ID"] = user_id
|
4747e2f4
tangwang
embedding perform...
|
1105
1106
|
request_started = time.perf_counter()
success = False
|
7214c2e7
tangwang
mplemented**
|
1107
1108
1109
|
backend_elapsed_ms = 0.0
cache_hits = 0
cache_misses = 0
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1110
1111
|
limiter_acquired = False
|
4747e2f4
tangwang
embedding perform...
|
1112
|
try:
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1113
1114
1115
1116
1117
1118
1119
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
1160
1161
1162
1163
1164
1165
1166
1167
1168
1169
1170
1171
1172
1173
|
if priority < 0:
raise HTTPException(status_code=400, detail="priority must be >= 0")
effective_priority = _effective_priority(priority)
effective_normalize = bool(CONFIG.TEXT_NORMALIZE_EMBEDDINGS) if normalize is None else bool(normalize)
normalized: List[str] = []
for i, t in enumerate(texts):
if not isinstance(t, str):
raise HTTPException(status_code=400, detail=f"Invalid text at index {i}: must be string")
s = t.strip()
if not s:
raise HTTPException(status_code=400, detail=f"Invalid text at index {i}: empty string")
normalized.append(s)
cache_check_started = time.perf_counter()
cache_only = _try_full_text_cache_hit(normalized, effective_normalize)
if cache_only is not None:
latency_ms = (time.perf_counter() - cache_check_started) * 1000.0
_text_stats.record_completed(
success=True,
latency_ms=latency_ms,
backend_latency_ms=0.0,
cache_hits=cache_only.cache_hits,
cache_misses=0,
)
logger.info(
"embed_text response | backend=%s mode=cache-only priority=%s inputs=%d normalize=%s dim=%d cache_hits=%d cache_misses=0 first_vector=%s latency_ms=%.2f",
_text_backend_name,
_priority_label(effective_priority),
len(normalized),
effective_normalize,
len(cache_only.vectors[0]) if cache_only.vectors and cache_only.vectors[0] is not None else 0,
cache_only.cache_hits,
_preview_vector(cache_only.vectors[0] if cache_only.vectors else None),
latency_ms,
extra=build_request_log_extra(request_id, user_id),
)
return cache_only.vectors
accepted, active = _text_request_limiter.try_acquire(bypass_limit=effective_priority > 0)
if not accepted:
_text_stats.record_rejected()
logger.warning(
"embed_text rejected | client=%s backend=%s priority=%s inputs=%d normalize=%s active=%d limit=%d preview=%s",
_request_client(http_request),
_text_backend_name,
_priority_label(effective_priority),
len(normalized),
effective_normalize,
active,
_TEXT_MAX_INFLIGHT,
_preview_inputs(normalized, _LOG_PREVIEW_COUNT, _LOG_TEXT_PREVIEW_CHARS),
extra=build_request_log_extra(request_id, user_id),
)
raise HTTPException(
status_code=_OVERLOAD_STATUS_CODE,
detail=(
"Text embedding service busy for priority=0 requests: "
f"active={active}, limit={_TEXT_MAX_INFLIGHT}"
),
)
limiter_acquired = True
|
4747e2f4
tangwang
embedding perform...
|
1174
|
logger.info(
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1175
|
"embed_text request | client=%s backend=%s priority=%s inputs=%d normalize=%s active=%d limit=%d preview=%s",
|
4747e2f4
tangwang
embedding perform...
|
1176
1177
|
_request_client(http_request),
_text_backend_name,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1178
|
_priority_label(effective_priority),
|
4747e2f4
tangwang
embedding perform...
|
1179
1180
1181
1182
1183
|
len(normalized),
effective_normalize,
active,
_TEXT_MAX_INFLIGHT,
_preview_inputs(normalized, _LOG_PREVIEW_COUNT, _LOG_TEXT_PREVIEW_CHARS),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1184
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1185
1186
|
)
verbose_logger.info(
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1187
|
"embed_text detail | payload=%s normalize=%s backend=%s priority=%s",
|
4747e2f4
tangwang
embedding perform...
|
1188
1189
1190
|
normalized,
effective_normalize,
_text_backend_name,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1191
|
_priority_label(effective_priority),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1192
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1193
|
)
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1194
1195
1196
1197
1198
|
result = await run_in_threadpool(
_submit_text_dispatch_and_wait,
normalized,
effective_normalize,
request_id,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1199
|
user_id,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1200
1201
|
effective_priority,
)
|
4747e2f4
tangwang
embedding perform...
|
1202
|
success = True
|
7214c2e7
tangwang
mplemented**
|
1203
1204
1205
|
backend_elapsed_ms = result.backend_elapsed_ms
cache_hits = result.cache_hits
cache_misses = result.cache_misses
|
4747e2f4
tangwang
embedding perform...
|
1206
|
latency_ms = (time.perf_counter() - request_started) * 1000.0
|
7214c2e7
tangwang
mplemented**
|
1207
1208
1209
1210
1211
1212
1213
|
_text_stats.record_completed(
success=True,
latency_ms=latency_ms,
backend_latency_ms=backend_elapsed_ms,
cache_hits=cache_hits,
cache_misses=cache_misses,
)
|
4747e2f4
tangwang
embedding perform...
|
1214
|
logger.info(
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1215
|
"embed_text response | backend=%s mode=%s priority=%s inputs=%d normalize=%s dim=%d cache_hits=%d cache_misses=%d first_vector=%s latency_ms=%.2f",
|
4747e2f4
tangwang
embedding perform...
|
1216
|
_text_backend_name,
|
7214c2e7
tangwang
mplemented**
|
1217
|
result.mode,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1218
|
_priority_label(effective_priority),
|
4747e2f4
tangwang
embedding perform...
|
1219
1220
|
len(normalized),
effective_normalize,
|
7214c2e7
tangwang
mplemented**
|
1221
1222
1223
1224
|
len(result.vectors[0]) if result.vectors and result.vectors[0] is not None else 0,
cache_hits,
cache_misses,
_preview_vector(result.vectors[0] if result.vectors else None),
|
4747e2f4
tangwang
embedding perform...
|
1225
|
latency_ms,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1226
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1227
1228
|
)
verbose_logger.info(
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1229
|
"embed_text result detail | count=%d priority=%s first_vector=%s latency_ms=%.2f",
|
7214c2e7
tangwang
mplemented**
|
1230
|
len(result.vectors),
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1231
|
_priority_label(effective_priority),
|
7214c2e7
tangwang
mplemented**
|
1232
1233
1234
|
result.vectors[0][: _VECTOR_PREVIEW_DIMS]
if result.vectors and result.vectors[0] is not None
else [],
|
4747e2f4
tangwang
embedding perform...
|
1235
|
latency_ms,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1236
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1237
|
)
|
7214c2e7
tangwang
mplemented**
|
1238
|
return result.vectors
|
4747e2f4
tangwang
embedding perform...
|
1239
1240
1241
1242
|
except HTTPException:
raise
except Exception as e:
latency_ms = (time.perf_counter() - request_started) * 1000.0
|
7214c2e7
tangwang
mplemented**
|
1243
1244
1245
1246
1247
1248
1249
|
_text_stats.record_completed(
success=False,
latency_ms=latency_ms,
backend_latency_ms=backend_elapsed_ms,
cache_hits=cache_hits,
cache_misses=cache_misses,
)
|
4747e2f4
tangwang
embedding perform...
|
1250
|
logger.error(
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1251
|
"embed_text failed | backend=%s priority=%s inputs=%d normalize=%s latency_ms=%.2f error=%s",
|
4747e2f4
tangwang
embedding perform...
|
1252
|
_text_backend_name,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1253
|
_priority_label(effective_priority),
|
4747e2f4
tangwang
embedding perform...
|
1254
1255
1256
1257
1258
|
len(normalized),
effective_normalize,
latency_ms,
e,
exc_info=True,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1259
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1260
1261
1262
|
)
raise HTTPException(status_code=502, detail=str(e)) from e
finally:
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1263
1264
1265
1266
1267
1268
1269
1270
1271
1272
|
if limiter_acquired:
remaining = _text_request_limiter.release(success=success)
logger.info(
"embed_text finalize | success=%s priority=%s active_after=%d",
success,
_priority_label(effective_priority),
remaining,
extra=build_request_log_extra(request_id, user_id),
)
reset_request_log_context(log_tokens)
|
4747e2f4
tangwang
embedding perform...
|
1273
1274
|
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1275
1276
1277
1278
1279
1280
1281
1282
1283
1284
|
def _parse_string_inputs(raw: List[Any], *, kind: str, empty_detail: str) -> List[str]:
out: List[str] = []
for i, x in enumerate(raw):
if not isinstance(x, str):
raise HTTPException(status_code=400, detail=f"Invalid {kind} at index {i}: must be string")
s = x.strip()
if not s:
raise HTTPException(status_code=400, detail=f"Invalid {kind} at index {i}: {empty_detail}")
out.append(s)
return out
|
4747e2f4
tangwang
embedding perform...
|
1285
|
|
4747e2f4
tangwang
embedding perform...
|
1286
|
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1287
1288
1289
1290
1291
|
async def _run_image_lane_embed(
*,
route: str,
lane: str,
items: List[str],
|
4747e2f4
tangwang
embedding perform...
|
1292
1293
|
http_request: Request,
response: Response,
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1294
1295
1296
|
normalize: Optional[bool],
priority: int,
preview_chars: int,
|
4747e2f4
tangwang
embedding perform...
|
1297
|
) -> List[Optional[List[float]]]:
|
4747e2f4
tangwang
embedding perform...
|
1298
|
request_id = _resolve_request_id(http_request)
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1299
1300
|
user_id = _resolve_user_id(http_request)
_, _, log_tokens = bind_request_log_context(request_id, user_id)
|
4747e2f4
tangwang
embedding perform...
|
1301
|
response.headers["X-Request-ID"] = request_id
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1302
|
response.headers["X-User-ID"] = user_id
|
4747e2f4
tangwang
embedding perform...
|
1303
1304
|
request_started = time.perf_counter()
success = False
|
7214c2e7
tangwang
mplemented**
|
1305
1306
1307
|
backend_elapsed_ms = 0.0
cache_hits = 0
cache_misses = 0
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1308
|
limiter_acquired = False
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1309
|
items_in: List[str] = list(items)
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1310
|
|
4747e2f4
tangwang
embedding perform...
|
1311
|
try:
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1312
1313
1314
|
if priority < 0:
raise HTTPException(status_code=400, detail="priority must be >= 0")
effective_priority = _effective_priority(priority)
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1315
|
effective_normalize = bool(CONFIG.IMAGE_NORMALIZE_EMBEDDINGS) if normalize is None else bool(normalize)
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1316
1317
|
cache_check_started = time.perf_counter()
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1318
|
cache_only = _try_full_image_lane_cache_hit(items, effective_normalize, lane=lane)
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1319
1320
1321
1322
1323
1324
1325
1326
1327
1328
|
if cache_only is not None:
latency_ms = (time.perf_counter() - cache_check_started) * 1000.0
_image_stats.record_completed(
success=True,
latency_ms=latency_ms,
backend_latency_ms=0.0,
cache_hits=cache_only.cache_hits,
cache_misses=0,
)
logger.info(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1329
1330
|
"%s response | mode=cache-only priority=%s inputs=%d normalize=%s dim=%d cache_hits=%d first_vector=%s latency_ms=%.2f",
route,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1331
|
_priority_label(effective_priority),
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1332
|
len(items),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1333
1334
1335
1336
1337
1338
1339
1340
1341
1342
1343
1344
1345
|
effective_normalize,
len(cache_only.vectors[0]) if cache_only.vectors and cache_only.vectors[0] is not None else 0,
cache_only.cache_hits,
_preview_vector(cache_only.vectors[0] if cache_only.vectors else None),
latency_ms,
extra=build_request_log_extra(request_id, user_id),
)
return cache_only.vectors
accepted, active = _image_request_limiter.try_acquire(bypass_limit=effective_priority > 0)
if not accepted:
_image_stats.record_rejected()
logger.warning(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1346
1347
|
"%s rejected | client=%s priority=%s inputs=%d normalize=%s active=%d limit=%d preview=%s",
route,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1348
1349
|
_request_client(http_request),
_priority_label(effective_priority),
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1350
|
len(items),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1351
1352
1353
|
effective_normalize,
active,
_IMAGE_MAX_INFLIGHT,
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1354
|
_preview_inputs(items, _LOG_PREVIEW_COUNT, preview_chars),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1355
1356
1357
1358
1359
1360
1361
1362
1363
1364
|
extra=build_request_log_extra(request_id, user_id),
)
raise HTTPException(
status_code=_OVERLOAD_STATUS_CODE,
detail=(
"Image embedding service busy for priority=0 requests: "
f"active={active}, limit={_IMAGE_MAX_INFLIGHT}"
),
)
limiter_acquired = True
|
4747e2f4
tangwang
embedding perform...
|
1365
|
logger.info(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1366
1367
|
"%s request | client=%s priority=%s inputs=%d normalize=%s active=%d limit=%d preview=%s",
route,
|
4747e2f4
tangwang
embedding perform...
|
1368
|
_request_client(http_request),
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1369
|
_priority_label(effective_priority),
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1370
|
len(items),
|
4747e2f4
tangwang
embedding perform...
|
1371
1372
1373
|
effective_normalize,
active,
_IMAGE_MAX_INFLIGHT,
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1374
|
_preview_inputs(items, _LOG_PREVIEW_COUNT, preview_chars),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1375
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1376
1377
|
)
verbose_logger.info(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1378
1379
1380
|
"%s detail | payload=%s normalize=%s priority=%s",
route,
items,
|
4747e2f4
tangwang
embedding perform...
|
1381
|
effective_normalize,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1382
|
_priority_label(effective_priority),
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1383
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1384
|
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1385
1386
1387
1388
1389
1390
1391
1392
|
result = await run_in_threadpool(
_embed_image_lane_impl,
items,
effective_normalize,
request_id,
user_id,
lane=lane,
)
|
4747e2f4
tangwang
embedding perform...
|
1393
|
success = True
|
7214c2e7
tangwang
mplemented**
|
1394
1395
1396
|
backend_elapsed_ms = result.backend_elapsed_ms
cache_hits = result.cache_hits
cache_misses = result.cache_misses
|
4747e2f4
tangwang
embedding perform...
|
1397
|
latency_ms = (time.perf_counter() - request_started) * 1000.0
|
7214c2e7
tangwang
mplemented**
|
1398
1399
1400
1401
1402
1403
1404
|
_image_stats.record_completed(
success=True,
latency_ms=latency_ms,
backend_latency_ms=backend_elapsed_ms,
cache_hits=cache_hits,
cache_misses=cache_misses,
)
|
4747e2f4
tangwang
embedding perform...
|
1405
|
logger.info(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1406
1407
|
"%s response | mode=%s priority=%s inputs=%d normalize=%s dim=%d cache_hits=%d cache_misses=%d first_vector=%s latency_ms=%.2f",
route,
|
7214c2e7
tangwang
mplemented**
|
1408
|
result.mode,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1409
|
_priority_label(effective_priority),
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1410
|
len(items),
|
4747e2f4
tangwang
embedding perform...
|
1411
|
effective_normalize,
|
7214c2e7
tangwang
mplemented**
|
1412
1413
1414
1415
|
len(result.vectors[0]) if result.vectors and result.vectors[0] is not None else 0,
cache_hits,
cache_misses,
_preview_vector(result.vectors[0] if result.vectors else None),
|
4747e2f4
tangwang
embedding perform...
|
1416
|
latency_ms,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1417
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1418
1419
|
)
verbose_logger.info(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1420
1421
|
"%s result detail | count=%d first_vector=%s latency_ms=%.2f",
route,
|
7214c2e7
tangwang
mplemented**
|
1422
1423
1424
1425
|
len(result.vectors),
result.vectors[0][: _VECTOR_PREVIEW_DIMS]
if result.vectors and result.vectors[0] is not None
else [],
|
4747e2f4
tangwang
embedding perform...
|
1426
|
latency_ms,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1427
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1428
|
)
|
7214c2e7
tangwang
mplemented**
|
1429
|
return result.vectors
|
4747e2f4
tangwang
embedding perform...
|
1430
1431
1432
1433
|
except HTTPException:
raise
except Exception as e:
latency_ms = (time.perf_counter() - request_started) * 1000.0
|
7214c2e7
tangwang
mplemented**
|
1434
1435
1436
1437
1438
1439
1440
|
_image_stats.record_completed(
success=False,
latency_ms=latency_ms,
backend_latency_ms=backend_elapsed_ms,
cache_hits=cache_hits,
cache_misses=cache_misses,
)
|
4747e2f4
tangwang
embedding perform...
|
1441
|
logger.error(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1442
1443
|
"%s failed | priority=%s inputs=%d normalize=%s latency_ms=%.2f error=%s",
route,
|
b754fd41
tangwang
图片向量化支持优先级参数
|
1444
|
_priority_label(effective_priority),
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1445
|
len(items_in),
|
4747e2f4
tangwang
embedding perform...
|
1446
1447
1448
1449
|
effective_normalize,
latency_ms,
e,
exc_info=True,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1450
|
extra=build_request_log_extra(request_id, user_id),
|
4747e2f4
tangwang
embedding perform...
|
1451
|
)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1452
|
raise HTTPException(status_code=502, detail=f"{route} backend failure: {e}") from e
|
4747e2f4
tangwang
embedding perform...
|
1453
|
finally:
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1454
1455
1456
|
if limiter_acquired:
remaining = _image_request_limiter.release(success=success)
logger.info(
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1457
1458
|
"%s finalize | success=%s priority=%s active_after=%d",
route,
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
|
1459
1460
1461
1462
1463
1464
|
success,
_priority_label(effective_priority),
remaining,
extra=build_request_log_extra(request_id, user_id),
)
reset_request_log_context(log_tokens)
|
7a013ca7
tangwang
多模态文本向量服务ok
|
1465
1466
1467
1468
1469
1470
1471
1472
1473
1474
1475
1476
1477
1478
1479
1480
1481
1482
1483
1484
1485
1486
1487
1488
1489
1490
1491
1492
1493
1494
1495
1496
1497
1498
1499
1500
1501
1502
1503
1504
1505
1506
1507
1508
1509
1510
1511
|
@app.post("/embed/image")
async def embed_image(
images: List[str],
http_request: Request,
response: Response,
normalize: Optional[bool] = None,
priority: int = 0,
) -> List[Optional[List[float]]]:
if _image_model is None:
raise HTTPException(status_code=503, detail="Image embedding model not loaded in this service")
items = _parse_string_inputs(images, kind="image", empty_detail="empty URL/path")
return await _run_image_lane_embed(
route="embed_image",
lane="image",
items=items,
http_request=http_request,
response=response,
normalize=normalize,
priority=priority,
preview_chars=_LOG_IMAGE_PREVIEW_CHARS,
)
@app.post("/embed/clip_text")
async def embed_clip_text(
texts: List[str],
http_request: Request,
response: Response,
normalize: Optional[bool] = None,
priority: int = 0,
) -> List[Optional[List[float]]]:
"""CN-CLIP 文本塔,与 ``POST /embed/image`` 同向量空间。"""
if _image_model is None:
raise HTTPException(status_code=503, detail="Image embedding model not loaded in this service")
items = _parse_string_inputs(texts, kind="text", empty_detail="empty string")
return await _run_image_lane_embed(
route="embed_clip_text",
lane="clip_text",
items=items,
http_request=http_request,
response=response,
normalize=normalize,
priority=priority,
preview_chars=_LOG_TEXT_PREVIEW_CHARS,
)
|
5a01af3c
tangwang
多模态hashkey调整:1. 加...
|
1512
1513
1514
1515
1516
1517
1518
1519
1520
1521
1522
1523
1524
1525
|
def build_image_cache_key(url: str, *, normalize: bool, model_name: Optional[str] = None) -> str:
"""Tests/tools: same key as ``/embed/image`` lane; defaults to ``CONFIG.MULTIMODAL_MODEL_NAME``."""
return _mm_image_cache_key(
url, normalize=normalize, model_name=model_name or CONFIG.MULTIMODAL_MODEL_NAME
)
def build_clip_text_cache_key(text: str, *, normalize: bool, model_name: Optional[str] = None) -> str:
"""Tests/tools: same key as ``/embed/clip_text`` lane; defaults to ``CONFIG.MULTIMODAL_MODEL_NAME``."""
return _mm_clip_text_cache_key(
text, normalize=normalize, model_name=model_name or CONFIG.MULTIMODAL_MODEL_NAME
)
|