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sgl-project--sglang/python/sglang/srt/entrypoints/openai/serving_embedding.py
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chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

284 lines
11 KiB
Python

from __future__ import annotations
from typing import TYPE_CHECKING, Any, Dict, List, Optional, Union
import jinja2
from fastapi import Request
from fastapi.responses import ORJSONResponse
from sglang.srt.entrypoints.openai.protocol import (
EmbeddingObject,
EmbeddingRequest,
EmbeddingResponse,
ErrorResponse,
MultimodalEmbeddingInput,
UsageInfo,
)
from sglang.srt.entrypoints.openai.serving_base import OpenAIServingBase
from sglang.srt.entrypoints.openai.utils import convert_embeds_to_tensors
from sglang.srt.managers.io_struct import EmbeddingReqInput
from sglang.srt.parser.conversation import generate_embedding_convs
from sglang.srt.parser.jinja_template_utils import process_content_for_template_format
if TYPE_CHECKING:
from sglang.srt.managers.tokenizer_manager import TokenizerManager
from sglang.srt.parser.template_manager import TemplateManager
class OpenAIServingEmbedding(OpenAIServingBase):
"""Handler for v1/embeddings requests"""
def __init__(
self,
tokenizer_manager: TokenizerManager,
template_manager: TemplateManager,
):
super().__init__(tokenizer_manager)
self.template_manager = template_manager
def _request_id_prefix(self) -> str:
return "embd-"
def _validate_request(self, request: EmbeddingRequest) -> Optional[str]:
"""Validate that the input is not empty or whitespace only."""
if not (input := request.input):
return "Input cannot be empty"
# Handle single string
if isinstance(input, str):
if not input.strip():
return "Input cannot be empty or whitespace only"
return None
# Handle list inputs
if isinstance(input, list):
if len(input) == 0:
return "Input cannot be empty"
# Check first element to determine type
first_item = input[0]
if isinstance(first_item, str):
# List of strings
for i, item in enumerate(input):
if not isinstance(item, str):
return "All items in input list must be strings"
if not item.strip():
return f"Input at index {i} cannot be empty or whitespace only"
elif isinstance(first_item, int):
# List of integers (token IDs)
for i, item in enumerate(input):
if not isinstance(item, int):
return "All items in input list must be integers"
if item < 0:
return f"Token ID at index {i} must be non-negative"
return None
def _convert_to_internal_request(
self,
request: EmbeddingRequest,
raw_request: Request = None,
) -> tuple[EmbeddingReqInput, EmbeddingRequest]:
"""Convert OpenAI embedding request to internal format"""
prompt = request.input
if isinstance(prompt, str):
# Single string input
prompt_kwargs = {"text": prompt}
elif isinstance(prompt, list):
if len(prompt) > 0 and isinstance(prompt[0], str):
prompt_kwargs = {"text": prompt}
elif len(prompt) > 0 and isinstance(prompt[0], MultimodalEmbeddingInput):
# Handle multimodal embedding inputs
texts = []
images = []
videos = []
for item in prompt:
texts.append(item.text)
images.append(item.image if item.image is not None else None)
videos.append(item.video if item.video is not None else None)
# Precedence: a SGLang-registered conversation template wins
# over the tokenizer's own HF Jinja template when both exist.
generate_prompts = []
if self.template_manager.chat_template_name is not None:
convs = generate_embedding_convs(
texts, images, videos, self.template_manager.chat_template_name
)
for conv in convs:
generate_prompts.append(conv.get_prompt())
elif (
self.tokenizer_manager.tokenizer is not None
and getattr(self.tokenizer_manager.tokenizer, "chat_template", None)
is not None
):
generate_prompts = self._apply_jinja_template_to_embedding_inputs(
texts, images, videos
)
else:
generate_prompts = [
text if text is not None else "padding" for text in texts
]
if len(generate_prompts) == 1:
prompt_kwargs = {
"text": generate_prompts[0],
"image_data": images[0],
"video_data": videos[0],
}
else:
prompt_kwargs = {
"text": generate_prompts,
"image_data": images,
"video_data": videos,
}
else:
# List of integers (token IDs) or empty list
prompt_kwargs = {"input_ids": prompt}
else:
# Other types (should not happen but handle gracefully)
prompt_kwargs = {"input_ids": prompt}
# Resolve LoRA adapter from model parameter or explicit lora_path
lora_path = self._resolve_lora_path(request.model, request.lora_path)
# Validate pairing: both or neither must be provided
if (
request.embed_overrides is not None
and request.embed_override_token_id is None
):
raise ValueError(
"embed_override_token_id is required when embed_overrides is provided"
)
if (
request.embed_override_token_id is not None
and request.embed_overrides is None
):
raise ValueError(
"embed_override_token_id requires embed_overrides to be provided"
)
# Convert float lists to tensors; position resolution is deferred
# to the tokenizer manager (after tokenization for text inputs).
embed_overrides = convert_embeds_to_tensors(request.embed_overrides)
adapted_request = EmbeddingReqInput(
**prompt_kwargs,
rid=request.rid,
priority=request.priority,
routing_key=self.extract_routing_key(raw_request),
dimensions=request.dimensions,
lora_path=lora_path,
embed_override_token_id=request.embed_override_token_id,
embed_overrides=embed_overrides,
)
return adapted_request, request
def _apply_jinja_template_to_embedding_inputs(
self,
texts: List[Optional[str]],
images: List[Optional[str]],
videos: List[Optional[str]],
) -> List[str]:
"""Render each multimodal embedding input through the tokenizer's Jinja chat template.
Image/video bytes are threaded to the engine separately via
``EmbeddingReqInput.image_data``/``video_data``; this method only produces
the prompt string. ``text=None`` emits no text chunk (no ``"padding"``
literal). Jinja failures are re-raised as ``ValueError`` so the caller
returns HTTP 400 instead of 500.
"""
prompts: List[str] = []
template_content_format = self.template_manager.jinja_template_content_format
for text, image, video in zip(texts, images, videos):
content_parts = []
if image is not None:
content_parts.append({"type": "image_url", "image_url": {"url": image}})
if video is not None:
content_parts.append({"type": "video_url", "video_url": {"url": video}})
if text is not None:
content_parts.append({"type": "text", "text": text})
msg_dict = {
"role": "user",
"content": content_parts if content_parts else "",
}
# Empty list args: this helper is only used to normalize the content
# shape (e.g. image_url -> image); real payloads ride on the outer
# images/videos lists, not EmbeddingReqInput fields derived here.
processed_msg = process_content_for_template_format(
msg_dict,
template_content_format,
image_data=[],
video_data=[],
audio_data=[],
modalities=[],
)
try:
prompt = self.tokenizer_manager.tokenizer.apply_chat_template(
[processed_msg],
tokenize=False,
add_generation_prompt=True,
)
except jinja2.TemplateError as template_error:
location = getattr(template_error, "lineno", None)
name = getattr(template_error, "name", None)
suffix = ""
if name or location:
suffix = f" (template={name or '<unknown>'}, line={location})"
raise ValueError(f"{template_error}{suffix}") from template_error
except (TypeError, KeyError, AttributeError) as template_error:
raise ValueError(
f"Failed to render chat template for embedding input: {template_error}"
) from template_error
prompts.append(prompt)
return prompts
async def _handle_non_streaming_request(
self,
adapted_request: EmbeddingReqInput,
request: EmbeddingRequest,
raw_request: Request,
) -> Union[EmbeddingResponse, ErrorResponse, ORJSONResponse]:
"""Handle the embedding request"""
try:
ret = await self.tokenizer_manager.generate_request(
adapted_request, raw_request
).__anext__()
except ValueError as e:
return self.create_error_response(str(e))
if not isinstance(ret, list):
ret = [ret]
response = self._build_embedding_response(ret)
return response
def _build_embedding_response(self, ret: List[Dict[str, Any]]) -> EmbeddingResponse:
"""Build the embedding response"""
embedding_objects = []
prompt_tokens = 0
for idx, ret_item in enumerate(ret):
embedding_objects.append(
EmbeddingObject(
embedding=ret_item["embedding"],
index=idx,
)
)
# Handle missing prompt_tokens gracefully
meta_info = ret_item.get("meta_info", {})
prompt_tokens += meta_info.get("prompt_tokens", 0)
return EmbeddingResponse(
data=embedding_objects,
model=self.tokenizer_manager.model_path,
usage=UsageInfo(
prompt_tokens=prompt_tokens,
total_tokens=prompt_tokens,
),
)