Files
2026-03-26 20:06:14 +08:00

968 lines
36 KiB
Python

######################################################################
# /v1/batches Endpoints
######################################################################
import asyncio
from typing import Dict, Optional, cast
from fastapi import APIRouter, Depends, HTTPException, Path, Request, Response
import litellm
from litellm._logging import verbose_proxy_logger
from litellm.batches.main import CancelBatchRequest, RetrieveBatchRequest
from litellm.proxy._types import *
from litellm.proxy.auth.user_api_key_auth import user_api_key_auth
from litellm.proxy.common_request_processing import ProxyBaseLLMRequestProcessing
from litellm.proxy.common_utils.http_parsing_utils import _read_request_body
from litellm.proxy.common_utils.openai_endpoint_utils import (
get_custom_llm_provider_from_request_headers,
get_custom_llm_provider_from_request_query,
)
from litellm.proxy.openai_files_endpoints.common_utils import (
_is_base64_encoded_unified_file_id,
decode_model_from_file_id,
encode_batch_response_ids,
encode_file_id_with_model,
get_batch_from_database,
get_credentials_for_model,
get_model_id_from_unified_batch_id,
get_models_from_unified_file_id,
get_original_file_id,
prepare_data_with_credentials,
resolve_input_file_id_to_unified,
update_batch_in_database,
)
from litellm.proxy.utils import handle_exception_on_proxy, is_known_model
from litellm.types.llms.openai import LiteLLMBatchCreateRequest
router = APIRouter()
@router.post(
"/{provider}/v1/batches",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.post(
"/v1/batches",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.post(
"/batches",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
async def create_batch( # noqa: PLR0915
request: Request,
fastapi_response: Response,
provider: Optional[str] = None,
user_api_key_dict: UserAPIKeyAuth = Depends(user_api_key_auth),
):
"""
Create large batches of API requests for asynchronous processing.
This is the equivalent of POST https://api.openai.com/v1/batch
Supports Identical Params as: https://platform.openai.com/docs/api-reference/batch
Example Curl
```
curl http://localhost:4000/v1/batches \
-H "Authorization: Bearer sk-1234" \
-H "Content-Type: application/json" \
-d '{
"input_file_id": "file-abc123",
"endpoint": "/v1/chat/completions",
"completion_window": "24h"
}'
```
"""
from litellm.proxy.proxy_server import (
general_settings,
llm_router,
proxy_config,
proxy_logging_obj,
version,
)
data: Dict = {}
try:
data = await _read_request_body(request=request)
verbose_proxy_logger.debug(
"Request received by LiteLLM:\n{}".format(json.dumps(data, indent=4)),
)
base_llm_response_processor = ProxyBaseLLMRequestProcessing(data=data)
(
data,
litellm_logging_obj,
) = await base_llm_response_processor.common_processing_pre_call_logic(
request=request,
general_settings=general_settings,
user_api_key_dict=user_api_key_dict,
version=version,
proxy_logging_obj=proxy_logging_obj,
proxy_config=proxy_config,
route_type="acreate_batch",
)
## check if model is a loadbalanced model
router_model: Optional[str] = None
is_router_model = False
if litellm.enable_loadbalancing_on_batch_endpoints is True:
router_model = data.get("model", None)
is_router_model = is_known_model(model=router_model, llm_router=llm_router)
custom_llm_provider = (
provider
or data.pop("custom_llm_provider", None)
or get_custom_llm_provider_from_request_headers(request=request)
or "openai"
)
_create_batch_data = LiteLLMBatchCreateRequest(**data)
# Apply team-level batch output expiry enforcement
team_metadata = user_api_key_dict.team_metadata or {}
enforced_batch_expiry = team_metadata.get("enforced_batch_output_expires_after")
if enforced_batch_expiry is not None:
if (
"anchor" not in enforced_batch_expiry
or "seconds" not in enforced_batch_expiry
):
raise HTTPException(
status_code=500,
detail={
"error": "Server configuration error: team metadata field 'enforced_batch_output_expires_after' is malformed - must contain 'anchor' and 'seconds' keys. Contact your team or proxy admin to fix this setting.",
},
)
if enforced_batch_expiry["anchor"] != "created_at":
raise HTTPException(
status_code=500,
detail={
"error": f"Server configuration error: team metadata field 'enforced_batch_output_expires_after' has invalid anchor '{enforced_batch_expiry['anchor']}' - must be 'created_at'. Contact your team or proxy admin to fix this setting.",
},
)
_create_batch_data["output_expires_after"] = {
"anchor": "created_at",
"seconds": int(enforced_batch_expiry["seconds"]),
}
input_file_id = _create_batch_data.get("input_file_id", None)
unified_file_id: Union[str, Literal[False]] = False
model_from_file_id = None
if input_file_id:
model_from_file_id = decode_model_from_file_id(input_file_id)
unified_file_id = _is_base64_encoded_unified_file_id(input_file_id)
# SCENARIO 1: File ID is encoded with model info
if model_from_file_id is not None and input_file_id:
credentials = get_credentials_for_model(
llm_router=llm_router,
model_id=model_from_file_id,
operation_context="batch creation (file created with model)",
)
original_file_id = get_original_file_id(input_file_id)
_create_batch_data["input_file_id"] = original_file_id
prepare_data_with_credentials(
data=_create_batch_data, # type: ignore
credentials=credentials,
)
# Create batch using model credentials
response = await litellm.acreate_batch(
custom_llm_provider=credentials["custom_llm_provider"],
**_create_batch_data, # type: ignore
)
# Encode the batch ID and related file IDs with model information
if response and hasattr(response, "id") and response.id:
original_batch_id = response.id
encoded_batch_id = encode_file_id_with_model(
file_id=original_batch_id,
model=model_from_file_id,
id_type="batch",
)
response.id = encoded_batch_id
if hasattr(response, "output_file_id") and response.output_file_id:
response.output_file_id = encode_file_id_with_model(
file_id=response.output_file_id, model=model_from_file_id
)
if hasattr(response, "error_file_id") and response.error_file_id:
response.error_file_id = encode_file_id_with_model(
file_id=response.error_file_id, model=model_from_file_id
)
verbose_proxy_logger.debug(
f"Created batch using model: {model_from_file_id}, "
f"original_batch_id: {original_batch_id}, encoded: {encoded_batch_id}"
)
response.input_file_id = input_file_id
elif (
litellm.enable_loadbalancing_on_batch_endpoints is True
and is_router_model
and router_model is not None
):
if llm_router is None:
raise HTTPException(
status_code=500,
detail={
"error": "LLM Router not initialized. Ensure models added to proxy."
},
)
response = await llm_router.acreate_batch(**_create_batch_data) # type: ignore
elif (
unified_file_id and input_file_id
): # litellm_proxy:application/octet-stream;unified_id,c4843482-b176-4901-8292-7523fd0f2c6e;target_model_names,gpt-4o-mini
target_model_names = get_models_from_unified_file_id(unified_file_id)
## EXPECTS 1 MODEL
if len(target_model_names) != 1:
raise HTTPException(
status_code=400,
detail={
"error": "Expected 1 model, got {}".format(
len(target_model_names)
)
},
)
model = target_model_names[0]
_create_batch_data["model"] = model
if llm_router is None:
raise HTTPException(
status_code=500,
detail={
"error": "LLM Router not initialized. Ensure models added to proxy."
},
)
response = await llm_router.acreate_batch(**_create_batch_data)
response.input_file_id = input_file_id
response._hidden_params["unified_file_id"] = unified_file_id
else:
# Check if model specified via header/query/body param
model_param = (
data.get("model")
or request.query_params.get("model")
or request.headers.get("x-litellm-model")
)
# SCENARIO 2 & 3: Model from header/query OR custom_llm_provider fallback
if model_param:
# SCENARIO 2: Use model-based routing from header/query/body
credentials = get_credentials_for_model(
llm_router=llm_router,
model_id=model_param,
operation_context="batch creation",
)
prepare_data_with_credentials(
data=_create_batch_data, # type: ignore
credentials=credentials,
)
# Create batch using model credentials
response = await litellm.acreate_batch(
custom_llm_provider=credentials["custom_llm_provider"],
**_create_batch_data, # type: ignore
)
encode_batch_response_ids(response, model=model_param)
verbose_proxy_logger.debug(f"Created batch using model: {model_param}")
else:
# SCENARIO 3: Fallback to custom_llm_provider (uses env variables)
response = await litellm.acreate_batch(
custom_llm_provider=custom_llm_provider, **_create_batch_data # type: ignore
)
### CALL HOOKS ### - modify outgoing data
response = await proxy_logging_obj.post_call_success_hook(
data=data, user_api_key_dict=user_api_key_dict, response=response
)
### ALERTING ###
asyncio.create_task(
proxy_logging_obj.update_request_status(
litellm_call_id=data.get("litellm_call_id", ""), status="success"
)
)
### RESPONSE HEADERS ###
hidden_params = getattr(response, "_hidden_params", {}) or {}
model_id = hidden_params.get("model_id", None) or ""
cache_key = hidden_params.get("cache_key", None) or ""
api_base = hidden_params.get("api_base", None) or ""
fastapi_response.headers.update(
ProxyBaseLLMRequestProcessing.get_custom_headers(
user_api_key_dict=user_api_key_dict,
model_id=model_id,
cache_key=cache_key,
api_base=api_base,
version=version,
model_region=getattr(user_api_key_dict, "allowed_model_region", ""),
request_data=data,
)
)
return response
except Exception as e:
await proxy_logging_obj.post_call_failure_hook(
user_api_key_dict=user_api_key_dict, original_exception=e, request_data=data
)
verbose_proxy_logger.exception(
"litellm.proxy.proxy_server.create_batch(): Exception occured - {}".format(
str(e)
)
)
raise handle_exception_on_proxy(e)
@router.get(
"/{provider}/v1/batches/{batch_id:path}",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.get(
"/v1/batches/{batch_id:path}",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.get(
"/batches/{batch_id:path}",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
async def retrieve_batch( # noqa: PLR0915
request: Request,
fastapi_response: Response,
user_api_key_dict: UserAPIKeyAuth = Depends(user_api_key_auth),
provider: Optional[str] = None,
batch_id: str = Path(
title="Batch ID to retrieve", description="The ID of the batch to retrieve"
),
):
"""
Retrieves a batch.
This is the equivalent of GET https://api.openai.com/v1/batches/{batch_id}
Supports Identical Params as: https://platform.openai.com/docs/api-reference/batch/retrieve
Example Curl
```
curl http://localhost:4000/v1/batches/batch_abc123 \
-H "Authorization: Bearer sk-1234" \
-H "Content-Type: application/json" \
```
"""
from litellm.proxy.proxy_server import (
general_settings,
llm_router,
proxy_config,
proxy_logging_obj,
version,
)
data: Dict = {}
try:
model_from_id = decode_model_from_file_id(batch_id)
_retrieve_batch_request = RetrieveBatchRequest(
batch_id=batch_id,
)
data = cast(dict, _retrieve_batch_request)
unified_batch_id = _is_base64_encoded_unified_file_id(batch_id)
base_llm_response_processor = ProxyBaseLLMRequestProcessing(data=data)
(
data,
litellm_logging_obj,
) = await base_llm_response_processor.common_processing_pre_call_logic(
request=request,
general_settings=general_settings,
user_api_key_dict=user_api_key_dict,
version=version,
proxy_logging_obj=proxy_logging_obj,
proxy_config=proxy_config,
route_type="aretrieve_batch",
)
# FIX: First, try to read from ManagedObjectTable for consistent state
managed_files_obj = proxy_logging_obj.get_proxy_hook("managed_files")
from litellm.proxy.proxy_server import prisma_client
db_batch_object, response = await get_batch_from_database(
batch_id=batch_id,
unified_batch_id=unified_batch_id,
managed_files_obj=managed_files_obj,
prisma_client=prisma_client,
verbose_proxy_logger=verbose_proxy_logger,
)
# If batch is in a terminal state, return immediately
if response is not None and response.status in [
"completed",
"failed",
"cancelled",
"expired",
]:
# Call hooks and return
response = await proxy_logging_obj.post_call_success_hook(
data=data, user_api_key_dict=user_api_key_dict, response=response
)
# async_post_call_success_hook replaces batch.id and output_file_id with unified IDs
# but not input_file_id. Resolve raw provider ID to unified ID.
if unified_batch_id:
await resolve_input_file_id_to_unified(response, prisma_client)
asyncio.create_task(
proxy_logging_obj.update_request_status(
litellm_call_id=data.get("litellm_call_id", ""), status="success"
)
)
hidden_params = getattr(response, "_hidden_params", {}) or {}
model_id = hidden_params.get("model_id", None) or ""
cache_key = hidden_params.get("cache_key", None) or ""
api_base = hidden_params.get("api_base", None) or ""
fastapi_response.headers.update(
ProxyBaseLLMRequestProcessing.get_custom_headers(
user_api_key_dict=user_api_key_dict,
model_id=model_id,
cache_key=cache_key,
api_base=api_base,
version=version,
model_region=getattr(user_api_key_dict, "allowed_model_region", ""),
request_data=data,
)
)
return response
# If batch is still processing, sync with provider to get latest state
if response is not None:
verbose_proxy_logger.debug(
f"Batch {batch_id} is in non-terminal state {response.status}, syncing with provider"
)
# Retrieve from provider (for non-terminal states or if DB lookup failed)
# SCENARIO 1: Batch ID is encoded with model info
if model_from_id is not None:
credentials = get_credentials_for_model(
llm_router=llm_router,
model_id=model_from_id,
operation_context="batch retrieval (batch created with model)",
)
original_batch_id = get_original_file_id(batch_id)
prepare_data_with_credentials(
data=data,
credentials=credentials,
file_id=original_batch_id, # Sets data["batch_id"] = original_batch_id
)
# Fix: The helper sets "file_id" but we need "batch_id"
data["batch_id"] = data.pop("file_id", original_batch_id)
# Retrieve batch using model credentials
response = await litellm.aretrieve_batch(
custom_llm_provider=credentials["custom_llm_provider"],
**data, # type: ignore
)
encode_batch_response_ids(response, model=model_from_id)
verbose_proxy_logger.debug(
f"Retrieved batch using model: {model_from_id}, original_id: {original_batch_id}"
)
elif (
litellm.enable_loadbalancing_on_batch_endpoints is True or unified_batch_id
):
if llm_router is None:
raise HTTPException(
status_code=500,
detail={
"error": "LLM Router not initialized. Ensure models added to proxy."
},
)
response = await llm_router.aretrieve_batch(**data) # type: ignore
response._hidden_params["unified_batch_id"] = unified_batch_id
if unified_batch_id:
model_id_from_batch = get_model_id_from_unified_batch_id(
unified_batch_id
)
if model_id_from_batch:
response._hidden_params["model_id"] = model_id_from_batch
# SCENARIO 3: Fallback to custom_llm_provider (uses env variables)
else:
custom_llm_provider = (
provider
or get_custom_llm_provider_from_request_headers(request=request)
or get_custom_llm_provider_from_request_query(request=request)
or "openai"
)
response = await litellm.aretrieve_batch(
custom_llm_provider=custom_llm_provider, **data # type: ignore
)
# FIX: Update the database with the latest state from provider
await update_batch_in_database(
batch_id=batch_id,
unified_batch_id=unified_batch_id,
response=response,
managed_files_obj=managed_files_obj,
prisma_client=prisma_client,
verbose_proxy_logger=verbose_proxy_logger,
db_batch_object=db_batch_object,
operation="retrieve",
)
### CALL HOOKS ### - modify outgoing data
response = await proxy_logging_obj.post_call_success_hook(
data=data, user_api_key_dict=user_api_key_dict, response=response
)
# Fix: bug_feb14_batch_retrieve_returns_raw_input_file_id
# Resolve raw provider input_file_id to unified ID.
if unified_batch_id:
await resolve_input_file_id_to_unified(response, prisma_client)
### ALERTING ###
asyncio.create_task(
proxy_logging_obj.update_request_status(
litellm_call_id=data.get("litellm_call_id", ""), status="success"
)
)
### RESPONSE HEADERS ###
hidden_params = getattr(response, "_hidden_params", {}) or {}
model_id = hidden_params.get("model_id", None) or ""
cache_key = hidden_params.get("cache_key", None) or ""
api_base = hidden_params.get("api_base", None) or ""
fastapi_response.headers.update(
ProxyBaseLLMRequestProcessing.get_custom_headers(
user_api_key_dict=user_api_key_dict,
model_id=model_id,
cache_key=cache_key,
api_base=api_base,
version=version,
model_region=getattr(user_api_key_dict, "allowed_model_region", ""),
request_data=data,
)
)
return response
except Exception as e:
await proxy_logging_obj.post_call_failure_hook(
user_api_key_dict=user_api_key_dict, original_exception=e, request_data=data
)
verbose_proxy_logger.exception(
"litellm.proxy.proxy_server.retrieve_batch(): Exception occured - {}".format(
str(e)
)
)
raise handle_exception_on_proxy(e)
@router.get(
"/{provider}/v1/batches",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.get(
"/v1/batches",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.get(
"/batches",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
async def list_batches(
request: Request,
fastapi_response: Response,
provider: Optional[str] = None,
limit: Optional[int] = None,
after: Optional[str] = None,
user_api_key_dict: UserAPIKeyAuth = Depends(user_api_key_auth),
target_model_names: Optional[str] = None,
):
"""
Lists
This is the equivalent of GET https://api.openai.com/v1/batches/
Supports Identical Params as: https://platform.openai.com/docs/api-reference/batch/list
Example Curl
```
curl http://localhost:4000/v1/batches?limit=2 \
-H "Authorization: Bearer sk-1234" \
-H "Content-Type: application/json" \
```
"""
from litellm.proxy.proxy_server import (
general_settings,
llm_router,
proxy_config,
proxy_logging_obj,
version,
)
verbose_proxy_logger.debug("GET /v1/batches after={} limit={}".format(after, limit))
try:
if llm_router is None:
raise HTTPException(
status_code=500,
detail={"error": CommonProxyErrors.no_llm_router.value},
)
# Include original request and headers in the data
data = await _read_request_body(request=request)
base_llm_response_processor = ProxyBaseLLMRequestProcessing(data=data)
(
data,
litellm_logging_obj,
) = await base_llm_response_processor.common_processing_pre_call_logic(
request=request,
general_settings=general_settings,
user_api_key_dict=user_api_key_dict,
version=version,
proxy_logging_obj=proxy_logging_obj,
proxy_config=proxy_config,
route_type="alist_batches",
)
# Try to use managed objects table for listing batches (returns encoded IDs)
managed_files_obj = proxy_logging_obj.get_proxy_hook("managed_files")
if managed_files_obj is not None and hasattr(
managed_files_obj, "list_user_batches"
):
verbose_proxy_logger.debug("Using managed objects table for batch listing")
response = await managed_files_obj.list_user_batches(
user_api_key_dict=user_api_key_dict,
limit=limit,
after=after,
provider=provider,
target_model_names=target_model_names,
llm_router=llm_router,
)
elif model_param := (
data.get("model")
or request.query_params.get("model")
or request.headers.get("x-litellm-model")
):
# SCENARIO 2: Use model-based routing from header/query/body
credentials = get_credentials_for_model(
llm_router=llm_router,
model_id=model_param,
operation_context="batch listing",
)
data.update(credentials)
response = await litellm.alist_batches(
custom_llm_provider=credentials["custom_llm_provider"],
after=after,
limit=limit,
**data, # type: ignore
)
# Encode batch IDs in the list response so clients can use
# them for retrieve/cancel/file downloads through the proxy.
if response and hasattr(response, "data") and response.data:
for batch in response.data:
encode_batch_response_ids(batch, model=model_param)
verbose_proxy_logger.debug(f"Listed batches using model: {model_param}")
# SCENARIO 2 (alternative): target_model_names based routing
elif target_model_names or data.get("target_model_names", None):
target_model_names = target_model_names or data.get(
"target_model_names", None
)
if target_model_names is None:
raise ValueError(
"target_model_names is required for this routing scenario"
)
model = target_model_names.split(",")[0]
data.pop("model", None)
response = await llm_router.alist_batches(
model=model,
after=after,
limit=limit,
**data,
)
# SCENARIO 3: Fallback to custom_llm_provider (uses env variables)
else:
custom_llm_provider = (
provider
or get_custom_llm_provider_from_request_headers(request=request)
or get_custom_llm_provider_from_request_query(request=request)
or "openai"
)
response = await litellm.alist_batches(
custom_llm_provider=custom_llm_provider, # type: ignore
after=after,
limit=limit,
**data,
)
## POST CALL HOOKS ###
_response = await proxy_logging_obj.post_call_success_hook(
data=data, user_api_key_dict=user_api_key_dict, response=response # type: ignore
)
if _response is not None and type(response) is type(_response):
response = _response
### RESPONSE HEADERS ###
hidden_params = getattr(response, "_hidden_params", {}) or {}
model_id = hidden_params.get("model_id", None) or ""
cache_key = hidden_params.get("cache_key", None) or ""
api_base = hidden_params.get("api_base", None) or ""
fastapi_response.headers.update(
ProxyBaseLLMRequestProcessing.get_custom_headers(
user_api_key_dict=user_api_key_dict,
model_id=model_id,
cache_key=cache_key,
api_base=api_base,
version=version,
model_region=getattr(user_api_key_dict, "allowed_model_region", ""),
)
)
return response
except Exception as e:
await proxy_logging_obj.post_call_failure_hook(
user_api_key_dict=user_api_key_dict,
original_exception=e,
request_data={"after": after, "limit": limit},
)
verbose_proxy_logger.error(
"litellm.proxy.proxy_server.retrieve_batch(): Exception occured - {}".format(
str(e)
)
)
raise handle_exception_on_proxy(e)
@router.post(
"/{provider}/v1/batches/{batch_id:path}/cancel",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.post(
"/v1/batches/{batch_id:path}/cancel",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
@router.post(
"/batches/{batch_id:path}/cancel",
dependencies=[Depends(user_api_key_auth)],
tags=["batch"],
)
async def cancel_batch(
request: Request,
batch_id: str,
fastapi_response: Response,
provider: Optional[str] = None,
user_api_key_dict: UserAPIKeyAuth = Depends(user_api_key_auth),
):
"""
Cancel a batch.
This is the equivalent of POST https://api.openai.com/v1/batches/{batch_id}/cancel
Supports Identical Params as: https://platform.openai.com/docs/api-reference/batch/cancel
Example Curl
```
curl http://localhost:4000/v1/batches/batch_abc123/cancel \
-H "Authorization: Bearer sk-1234" \
-H "Content-Type: application/json" \
-X POST
```
"""
from litellm.proxy.proxy_server import (
add_litellm_data_to_request,
general_settings,
llm_router,
proxy_config,
proxy_logging_obj,
version,
)
data: Dict = {}
try:
# Check for encoded batch ID with model info
model_from_id = decode_model_from_file_id(batch_id)
# Create CancelBatchRequest with batch_id to enable ownership checking
_cancel_batch_request = CancelBatchRequest(
batch_id=batch_id,
)
data = cast(dict, _cancel_batch_request)
unified_batch_id = _is_base64_encoded_unified_file_id(batch_id)
base_llm_response_processor = ProxyBaseLLMRequestProcessing(data=data)
(
data,
litellm_logging_obj,
) = await base_llm_response_processor.common_processing_pre_call_logic(
request=request,
general_settings=general_settings,
user_api_key_dict=user_api_key_dict,
version=version,
proxy_logging_obj=proxy_logging_obj,
proxy_config=proxy_config,
route_type="acancel_batch",
)
# Include original request and headers in the data
data = await add_litellm_data_to_request(
data=data,
request=request,
general_settings=general_settings,
user_api_key_dict=user_api_key_dict,
version=version,
proxy_config=proxy_config,
)
# SCENARIO 1: Batch ID is encoded with model info
if model_from_id is not None:
credentials = get_credentials_for_model(
llm_router=llm_router,
model_id=model_from_id,
operation_context="batch cancellation (batch created with model)",
)
original_batch_id = get_original_file_id(batch_id)
prepare_data_with_credentials(
data=data,
credentials=credentials,
file_id=original_batch_id,
)
# Fix: The helper sets "file_id" but we need "batch_id"
data["batch_id"] = data.pop("file_id", original_batch_id)
# Cancel batch using model credentials
response = await litellm.acancel_batch(
custom_llm_provider=credentials["custom_llm_provider"],
**data, # type: ignore
)
encode_batch_response_ids(response, model=model_from_id)
verbose_proxy_logger.debug(
f"Cancelled batch using model: {model_from_id}, original_id: {original_batch_id}"
)
# SCENARIO 2: target_model_names based routing
elif unified_batch_id:
if llm_router is None:
raise HTTPException(
status_code=500,
detail={
"error": "LLM Router not initialized. Ensure models added to proxy."
},
)
# Hook has already extracted model and unwrapped batch_id into data dict
response = await llm_router.acancel_batch(**data) # type: ignore
response._hidden_params["unified_batch_id"] = unified_batch_id
# Ensure model_id is set for the post_call_success_hook to re-encode IDs
if not response._hidden_params.get("model_id") and data.get("model"):
response._hidden_params["model_id"] = data["model"]
# SCENARIO 3: Fallback to custom_llm_provider (uses env variables)
else:
custom_llm_provider = (
provider or data.pop("custom_llm_provider", None) or "openai"
)
# Extract batch_id from data to avoid "multiple values for keyword argument" error
# data was cast from CancelBatchRequest which already contains batch_id
data.pop("batch_id", None)
_cancel_batch_data = CancelBatchRequest(batch_id=batch_id, **data)
response = await litellm.acancel_batch(
custom_llm_provider=custom_llm_provider, # type: ignore
**_cancel_batch_data,
)
# FIX: Update the database with the new cancelled state
managed_files_obj = proxy_logging_obj.get_proxy_hook("managed_files")
from litellm.proxy.proxy_server import prisma_client
await update_batch_in_database(
batch_id=batch_id,
unified_batch_id=unified_batch_id,
response=response,
managed_files_obj=managed_files_obj,
prisma_client=prisma_client,
verbose_proxy_logger=verbose_proxy_logger,
operation="cancel",
)
### CALL HOOKS ### - modify outgoing data
response = await proxy_logging_obj.post_call_success_hook(
data=data, user_api_key_dict=user_api_key_dict, response=response
)
### ALERTING ###
asyncio.create_task(
proxy_logging_obj.update_request_status(
litellm_call_id=data.get("litellm_call_id", ""), status="success"
)
)
### RESPONSE HEADERS ###
hidden_params = getattr(response, "_hidden_params", {}) or {}
model_id = hidden_params.get("model_id", None) or ""
cache_key = hidden_params.get("cache_key", None) or ""
api_base = hidden_params.get("api_base", None) or ""
fastapi_response.headers.update(
ProxyBaseLLMRequestProcessing.get_custom_headers(
user_api_key_dict=user_api_key_dict,
model_id=model_id,
cache_key=cache_key,
api_base=api_base,
version=version,
model_region=getattr(user_api_key_dict, "allowed_model_region", ""),
request_data=data,
)
)
return response
except Exception as e:
await proxy_logging_obj.post_call_failure_hook(
user_api_key_dict=user_api_key_dict, original_exception=e, request_data=data
)
verbose_proxy_logger.exception(
"litellm.proxy.proxy_server.create_batch(): Exception occured - {}".format(
str(e)
)
)
raise handle_exception_on_proxy(e)
######################################################################
# END OF /v1/batches Endpoints Implementation
######################################################################