chore: initial snapshot for gitea/github upload

This commit is contained in:
Your Name
2026-03-26 16:04:46 +08:00
commit a699a1ac98
3497 changed files with 1586237 additions and 0 deletions

View File

@@ -0,0 +1,323 @@
"""
Background Streaming Task for Polling Via Cache Feature
Handles streaming responses from LLM providers and updates Redis cache
with partial results for polling.
Follows OpenAI Response Streaming format:
https://platform.openai.com/docs/api-reference/responses-streaming
"""
import asyncio
import json
from typing import Any
from fastapi import Request, Response
from litellm._logging import verbose_proxy_logger
from litellm.proxy.auth.user_api_key_auth import UserAPIKeyAuth
from litellm.proxy.common_request_processing import ProxyBaseLLMRequestProcessing
from litellm.proxy.response_polling.polling_handler import ResponsePollingHandler
async def background_streaming_task( # noqa: PLR0915
polling_id: str,
data: dict,
polling_handler: ResponsePollingHandler,
request: Request,
fastapi_response: Response,
user_api_key_dict: UserAPIKeyAuth,
general_settings: dict,
llm_router,
proxy_config,
proxy_logging_obj,
select_data_generator,
user_model,
user_temperature,
user_request_timeout,
user_max_tokens,
user_api_base,
version,
):
"""
Background task to stream response and update cache
Follows OpenAI Response Streaming format:
https://platform.openai.com/docs/api-reference/responses-streaming
Processes streaming events and builds Response object:
https://platform.openai.com/docs/api-reference/responses/object
"""
try:
verbose_proxy_logger.info(f"Starting background streaming for {polling_id}")
# Update status to in_progress (OpenAI format)
await polling_handler.update_state(
polling_id=polling_id,
status="in_progress",
)
# Force streaming mode and remove background flag
data["stream"] = True
data.pop("background", None)
# Create processor
processor = ProxyBaseLLMRequestProcessing(data=data)
# Make streaming request
response = await processor.base_process_llm_request(
request=request,
fastapi_response=fastapi_response,
user_api_key_dict=user_api_key_dict,
route_type="aresponses",
proxy_logging_obj=proxy_logging_obj,
llm_router=llm_router,
general_settings=general_settings,
proxy_config=proxy_config,
select_data_generator=select_data_generator,
model=None,
user_model=user_model,
user_temperature=user_temperature,
user_request_timeout=user_request_timeout,
user_max_tokens=user_max_tokens,
user_api_base=user_api_base,
version=version,
)
# Process streaming response following OpenAI events format
# https://platform.openai.com/docs/api-reference/responses-streaming
output_items: dict[str, dict[str, Any]] = {} # Track output items by ID
accumulated_text = (
{}
) # Track accumulated text deltas by (item_id, content_index)
# ResponsesAPIResponse fields to extract from response.completed
usage_data = None
reasoning_data = None
tool_choice_data = None
tools_data = None
model_data = None
instructions_data = None
temperature_data = None
top_p_data = None
max_output_tokens_data = None
previous_response_id_data = None
text_data = None
truncation_data = None
parallel_tool_calls_data = None
user_data = None
store_data = None
incomplete_details_data = None
state_dirty = False # Track if state needs to be synced
last_update_time = asyncio.get_event_loop().time()
UPDATE_INTERVAL = 0.150 # 150ms batching interval
async def flush_state_if_needed(force: bool = False) -> None:
"""Flush accumulated state to Redis if interval elapsed or forced"""
nonlocal state_dirty, last_update_time
current_time = asyncio.get_event_loop().time()
if state_dirty and (
force or (current_time - last_update_time) >= UPDATE_INTERVAL
):
# Convert output_items dict to list for update
output_list = list(output_items.values())
await polling_handler.update_state(
polling_id=polling_id,
output=output_list,
)
state_dirty = False
last_update_time = current_time
# Handle StreamingResponse
if hasattr(response, "body_iterator"):
async for chunk in response.body_iterator:
# Parse chunk
if isinstance(chunk, bytes):
chunk = chunk.decode("utf-8")
if isinstance(chunk, str) and chunk.startswith("data: "):
chunk_data = chunk[6:].strip()
if chunk_data == "[DONE]":
break
try:
event = json.loads(chunk_data)
event_type = event.get("type", "")
# Process different event types based on OpenAI streaming spec
if event_type == "response.output_item.added":
# New output item added
item = event.get("item", {})
item_id = item.get("id")
if item_id:
output_items[item_id] = item
state_dirty = True
elif event_type == "response.content_part.added":
# Content part added to an output item
item_id = event.get("item_id")
content_part = event.get("part", {})
if item_id and item_id in output_items:
# Update the output item with new content
if "content" not in output_items[item_id]:
output_items[item_id]["content"] = []
output_items[item_id]["content"].append(content_part)
state_dirty = True
elif event_type == "response.output_text.delta":
# Text delta - accumulate text content
# https://platform.openai.com/docs/api-reference/responses-streaming/response-text-delta
item_id = event.get("item_id")
content_index = event.get("content_index", 0)
delta = event.get("delta", "")
if item_id and item_id in output_items:
# Accumulate text delta
key = (item_id, content_index)
if key not in accumulated_text:
accumulated_text[key] = ""
accumulated_text[key] += delta
# Update the content in output_items
if "content" in output_items[item_id]:
content_list = output_items[item_id]["content"]
if content_index < len(content_list):
# Update existing content part with accumulated text
if isinstance(
content_list[content_index], dict
):
content_list[content_index][
"text"
] = accumulated_text[key]
state_dirty = True
elif event_type == "response.content_part.done":
# Content part completed
item_id = event.get("item_id")
content_part = event.get("part", {})
content_index = event.get("content_index", 0)
if item_id and item_id in output_items:
# Update with final content from event
if "content" in output_items[item_id]:
content_list = output_items[item_id]["content"]
if content_index < len(content_list):
content_list[content_index] = content_part
state_dirty = True
elif event_type == "response.output_item.done":
# Output item completed - use final item data
item = event.get("item", {})
item_id = item.get("id")
if item_id:
output_items[item_id] = item
state_dirty = True
elif event_type == "response.in_progress":
# Response is now in progress
# https://platform.openai.com/docs/api-reference/responses-streaming/response-in-progress
await polling_handler.update_state(
polling_id=polling_id,
status="in_progress",
)
elif event_type == "response.completed":
# Response completed - extract all ResponsesAPIResponse fields
# https://platform.openai.com/docs/api-reference/responses-streaming/response-completed
response_data = event.get("response", {})
# Core response fields
usage_data = response_data.get("usage")
reasoning_data = response_data.get("reasoning")
tool_choice_data = response_data.get("tool_choice")
tools_data = response_data.get("tools")
# Additional ResponsesAPIResponse fields
model_data = response_data.get("model")
instructions_data = response_data.get("instructions")
temperature_data = response_data.get("temperature")
top_p_data = response_data.get("top_p")
max_output_tokens_data = response_data.get(
"max_output_tokens"
)
previous_response_id_data = response_data.get(
"previous_response_id"
)
text_data = response_data.get("text")
truncation_data = response_data.get("truncation")
parallel_tool_calls_data = response_data.get(
"parallel_tool_calls"
)
user_data = response_data.get("user")
store_data = response_data.get("store")
incomplete_details_data = response_data.get(
"incomplete_details"
)
# Also update output from final response if available
if "output" in response_data:
final_output = response_data.get("output", [])
for item in final_output:
item_id = item.get("id")
if item_id:
output_items[item_id] = item
state_dirty = True
# Flush state to Redis if interval elapsed
await flush_state_if_needed()
except json.JSONDecodeError as e:
verbose_proxy_logger.warning(
f"Failed to parse streaming chunk: {e}"
)
pass
# Final flush to ensure all accumulated state is saved
await flush_state_if_needed(force=True)
# Mark as completed with all ResponsesAPIResponse fields
await polling_handler.update_state(
polling_id=polling_id,
status="completed",
usage=usage_data,
reasoning=reasoning_data,
tool_choice=tool_choice_data,
tools=tools_data,
model=model_data,
instructions=instructions_data,
temperature=temperature_data,
top_p=top_p_data,
max_output_tokens=max_output_tokens_data,
previous_response_id=previous_response_id_data,
text=text_data,
truncation=truncation_data,
parallel_tool_calls=parallel_tool_calls_data,
user=user_data,
store=store_data,
incomplete_details=incomplete_details_data,
)
verbose_proxy_logger.info(
f"Completed background streaming for {polling_id}, output_items={len(output_items)}"
)
except Exception as e:
verbose_proxy_logger.error(
f"Error in background streaming task for {polling_id}: {str(e)}"
)
import traceback
verbose_proxy_logger.error(traceback.format_exc())
await polling_handler.update_state(
polling_id=polling_id,
status="failed",
error={
"type": "internal_error",
"message": str(e),
"code": "background_streaming_error",
},
)