Files
litellm/tests/logging_callback_tests/test_bedrock_knowledgebase_hook.py
T
Mateo Wang 2c733c00f5 chore(ci): modernize model references in tests and configs (#27856)
* test: modernize models used in CircleCI e2e test suites

Replaces obsolete models (gpt-4o, gpt-4o-mini, gpt-3.5-turbo,
claude-3-5-sonnet-20240620, claude-sonnet-4-20250514) with current
equivalents across the e2e_openai_endpoints and
proxy_e2e_anthropic_messages_tests CircleCI jobs.

- gpt-4o -> gpt-5.5 (responses API e2e tests)
- gpt-4o-mini -> gpt-5-mini (websocket responses, oai_misc_config)
- gpt-4o-mini-2024-07-18 -> gpt-4.1-mini-2025-04-14 (fine-tuning,
  still actively fine-tunable)
- gpt-4 / gpt-3.5-turbo target_model_names example -> gpt-5.5 /
  gpt-5-mini
- bedrock claude-3-5-sonnet-20240620 batch entry -> haiku-4-5-20251001
  (also aligning oai_misc_config model_name with what
  test_bedrock_batches_api.py actually requests)
- bedrock claude-sonnet-4-20250514 (deprecated, retires 2026-06-15)
  -> claude-sonnet-4-5-20250929

* test: point bedrock-claude-sonnet-4 alias at Sonnet 4.6, not 4.5

Greptile/Cursor flagged that after the previous commit, the
bedrock-claude-sonnet-4 alias collided with bedrock-claude-sonnet-4.5
(both pointed to claude-sonnet-4-5-20250929). Rename to
bedrock-claude-sonnet-4.6 and point it at the Sonnet 4.6 Bedrock ID
(us.anthropic.claude-sonnet-4-6, already in the litellm model
registry) so the alias name matches the underlying model version.

* test: modernize models across remaining CI-mounted configs & tests

Expands the modernization sweep to all CircleCI-mounted proxy configs
and to test directories where the model literal is a fixture/route key
(not the test's subject).

Config changes:
- proxy_server_config.yaml: bump gpt-3.5-turbo / gpt-3.5-turbo-1106 /
  gpt-4o / gemini-1.5-flash / dall-e-3 underlying models; rename
  gpt-3.5-turbo-end-user-test alias to gpt-5-mini-end-user-test; bump
  text-embedding-ada-002 underlying to text-embedding-3-small. User-
  facing aliases (gpt-3.5-turbo, gpt-4, text-embedding-ada-002, etc.)
  preserved for backward compatibility with tests.
- simple_config.yaml, otel_test_config.yaml, spend_tracking_config.yaml:
  bump gpt-3.5-turbo underlying to gpt-5-mini.
- pass_through_config.yaml: claude-3-5-sonnet / claude-3-7-sonnet /
  claude-3-haiku entries replaced with claude-sonnet-4-5 / claude-
  haiku-4-5 / claude-opus-4-7.
- oai_misc_config.yaml: align alias name with the gpt-5-mini rename.

Test changes (proactive: claude-sonnet-4-20250514 / claude-opus-4-
20250514 retire 2026-06-15):
- tests/llm_translation/test_anthropic_completion.py: bump 3 references
  + paired Vertex AI ID to claude-sonnet-4-5.
- tests/llm_translation/test_optional_params.py: bump 2 references.
- tests/pass_through_unit_tests/test_anthropic_messages_passthrough.py
  and test_bedrock_anthropic_messages_test.py: bump router fixtures
  using the deprecated model IDs.
- tests/pass_through_unit_tests/base_anthropic_messages_tool_search_test.py:
  modernize docstring examples.
- tests/test_end_users.py: update references to renamed alias.

* test: modernize placeholder model literals in router_unit_tests

Mass replace_all on fixture/placeholder model literals across the
router_unit_tests/ suite (model name is a routing key / label, not the
test subject). Sub-agent sweep so far — additional commits will follow
for logging_callback_tests/, enterprise/, top-level tests/test_*.py,
and other CI-mounted dirs.

Mappings applied:
- gpt-3.5-turbo -> gpt-5-mini
- gpt-4 (bare) -> gpt-5.5
- gpt-4o (bare) -> gpt-5
- text-embedding-ada-002 -> text-embedding-3-small
- claude-3-sonnet-20240229 / claude-3-opus-20240229 /
  claude-3-haiku-20240307 / claude-3-5-sonnet-20240620 ->
  claude-sonnet-4-5-20250929 / claude-opus-4-7 /
  claude-haiku-4-5-20251001 as appropriate

Explicitly preserved:
- gpt-4o-mini-* variants (transcribe, tts, etc.) where they're current
- gpt-4-turbo / gpt-4-vision-preview / gpt-4-0613 (subject literals)
- JSONL batch body literals
- Mock LLM response model fields (must match upstream)
- Fake/mock identifiers

* test: modernize placeholder model literals across remaining CI suites

Sub-agent sweep across logging_callback_tests/, guardrails_tests/,
enterprise/, pass_through_unit_tests/, otel_tests/,
llm_responses_api_testing/, batches_tests/, spend_tracking_tests/,
litellm_utils_tests/, unified_google_tests/, and a few top-level
tests/test_*.py files where the model literal is a fixture or
placeholder (router model_list, mock standard logging payload, mock
callback data) rather than the test's subject.

Mappings applied (see scope notes below):
- gpt-3.5-turbo -> gpt-5-mini
- gpt-4 (bare) -> gpt-5.5
- gpt-4o (bare) -> gpt-5.5 (corrected from initial gpt-5 — bare gpt-5
  is not a valid OpenAI alias; only gpt-5.5 / gpt-5.4 / gpt-5.2-codex
  / gpt-5-mini exist)
- gpt-4o-mini (bare) -> gpt-5-mini
- text-embedding-ada-002 -> text-embedding-3-small
- claude-3-sonnet-20240229 -> claude-sonnet-4-5-20250929
- claude-3-opus-20240229 -> claude-opus-4-7
- claude-3-haiku-20240307 -> claude-haiku-4-5-20251001
- claude-3-5-sonnet-20240620/20241022 -> claude-sonnet-4-5-20250929
- claude-3-7-sonnet-20250219 -> claude-sonnet-4-6
- gemini-1.5-flash -> gemini-2.5-flash
- gemini-1.5-pro -> gemini-2.5-pro

Explicitly preserved (not modernized):
- llm_translation/ tests where model is the SUBJECT (provider-specific
  translation/transformation logic). Only the deprecated 20250514
  references were already bumped in a prior commit.
- Cost-calc / tokenizer subject tests in test_utils.py (skip-ranges
  documented by the sub-agent).
- Bedrock model IDs in test_health_check.py path-stripping tests.
- JSONL batch request bodies and mock LLM response bodies (must match
  upstream literal).
- Langfuse expected-request-body JSON fixtures (cost values are exact-
  match-asserted; changing the model would shift response_cost).
- gpt-3.5-turbo-instruct (text-completion endpoint; no modern OpenAI
  equivalent).
- Top-level tests calling the proxy through user-facing aliases
  (gpt-3.5-turbo, gpt-4, text-embedding-ada-002, dall-e-3) — aliases
  in proxy_server_config.yaml stay; only the underlying model was
  bumped.
- tests/test_gpt5_azure_temperature_support.py (the test's whole point
  is model-name handling).
- Fake / mock / openai/fake identifiers.

Notable side fixes:
- test_spend_accuracy_tests.py: UPSTREAM_MODEL now matches what
  spend_tracking_config.yaml's proxy actually routes to (gpt-5-mini),
  resolving a latent inconsistency.
- proxy_server_config.yaml: bare `gpt-5` alias renamed to `gpt-5.5`
  (bare gpt-5 is not a valid OpenAI alias).
- test_batches_logging_unit_tests.py: explicit_models list entries
  kept distinct (gpt-5-mini + gpt-5.5) after bulk rename.

* test: fix CI failures from model modernization sweep

CI surfaced 4 categories of regression from the bulk modernization:

1. Azure deployment names are customer-specific. Reverted:
   - tests/litellm_utils_tests/test_health_check.py: azure/text-
     embedding-3-small -> azure/text-embedding-ada-002 (the CI Azure
     account does not have a text-embedding-3-small deployment).
   - tests/logging_callback_tests/test_custom_callback_router.py:
     same revert for two router fixtures driving aembedding.

2. gpt-5 family does not accept temperature != 1. Tests that pass a
   custom temperature swapped from gpt-5-mini to gpt-4.1-mini (modern
   non-reasoning OpenAI mini that still accepts temperature/logprobs):
   - tests/logging_callback_tests/test_datadog.py
   - tests/logging_callback_tests/test_langsmith_unit_test.py
   - tests/logging_callback_tests/test_otel_logging.py

3. proxy_server_config.yaml's gpt-3.5-turbo-large alias was routing to
   gpt-5.5 (a reasoning model that rejects logprobs). The proxy test
   tests/test_openai_endpoints.py::test_chat_completion_streaming
   exercises logprobs/top_logprobs through that alias. Bumped the
   underlying model to gpt-4.1 (non-reasoning, still modern).

4. tests/logging_callback_tests/test_gcs_pub_sub.py asserts against a
   pinned JSON fixture (gcs_pub_sub_body/spend_logs_payload.json) with
   hardcoded model="gpt-4o" and a model-specific spend value. Reverted
   the litellm.acompletion calls in the test to model="gpt-4o" so the
   fixture's exact-match assertions still hold.

5. tests/pass_through_unit_tests/test_anthropic_messages_passthrough.py:
   anthropic.messages.create routing to openai/gpt-5-mini returned an
   empty content[0] with max_tokens=100 (reasoning-token consumption).
   Swapped to openai/gpt-4.1-mini.

* test: fix Assistants API model + 2 cursor[bot] review nits

1. pass_through_unit_tests/test_custom_logger_passthrough.py: gpt-5.5
   isn't accepted by the /v1/assistants endpoint
   ("unsupported_model"). Switch to gpt-4.1-mini (modern, Assistants-
   API-supported, non-reasoning).

2. example_config_yaml/pass_through_config.yaml: the previous sweep
   bumped the claude-3-7-sonnet alias to claude-opus-4-7, which is a
   tier change (Sonnet -> Opus). Map to claude-sonnet-4-6 to keep the
   Sonnet tier intact. (Cursor bugbot review.)

3. example_config_yaml/simple_config.yaml: model_name was left as
   gpt-3.5-turbo while the underlying was bumped to gpt-5-mini, which
   muddles the "simple" example. Make both sides gpt-5-mini so the
   most basic example is a straight 1:1 mapping again. (Cursor bugbot
   review.)

* fix: revert gpt-4/gpt-3.5-turbo alias underlying to non-reasoning models

tests/test_openai_endpoints.py::test_completion calls the proxy alias
"gpt-4" with temperature=0, and other tests call gpt-3.5-turbo with
custom temperature / logprobs / the legacy /v1/completions endpoint.
The earlier modernization mapped both aliases to gpt-5.5 / gpt-5-mini,
which are reasoning models that reject temperature != 1 and don't
expose /v1/completions. Map the aliases to gpt-4.1 / gpt-4.1-mini
(modern non-reasoning OpenAI models) instead — keeps user-facing
aliases preserved while picking a current underlying that still
supports the parameters/endpoints the tests exercise.
2026-05-15 15:44:28 -07:00

936 lines
34 KiB
Python

import io
import os
import sys
sys.path.insert(0, os.path.abspath("../.."))
import asyncio
import litellm
import litellm.vector_stores.main
import gzip
import json
import logging
import time
from typing import Optional, List
from unittest.mock import AsyncMock, patch, Mock
import pytest
import litellm
from litellm import completion
from litellm._logging import verbose_logger
from litellm.integrations.vector_store_integrations.vector_store_pre_call_hook import (
VectorStorePreCallHook,
)
from litellm.llms.custom_httpx.http_handler import HTTPHandler, AsyncHTTPHandler
from litellm.integrations.custom_logger import CustomLogger
from litellm.types.utils import (
StandardLoggingPayload,
StandardLoggingVectorStoreRequest,
)
from litellm.types.vector_stores import (
VectorStoreSearchResponse,
VectorStoreResultContent,
VectorStoreSearchResult,
)
class MockCustomLogger(CustomLogger):
def __init__(self):
self.standard_logging_payload: Optional[StandardLoggingPayload] = None
self.completion_logging_payload: Optional[StandardLoggingPayload] = None
super().__init__()
async def async_log_success_event(self, kwargs, response_obj, start_time, end_time):
payload = kwargs.get("standard_logging_object")
# Store the payload - completion calls have call_type='acompletion'
if payload and payload.get("call_type") == "acompletion":
self.completion_logging_payload = payload
self.standard_logging_payload = payload
pass
@pytest.fixture(autouse=True)
def add_aws_region_to_env(monkeypatch):
monkeypatch.setenv("AWS_REGION", "us-west-2")
@pytest.fixture
def setup_vector_store_registry():
from litellm.vector_stores.vector_store_registry import (
VectorStoreRegistry,
LiteLLM_ManagedVectorStore,
)
# Init vector store registry
litellm.vector_store_registry = VectorStoreRegistry(
vector_stores=[
LiteLLM_ManagedVectorStore(
vector_store_id="T37J8R4WTM", custom_llm_provider="bedrock"
)
]
)
@pytest.mark.asyncio
async def test_e2e_bedrock_knowledgebase_retrieval_with_completion(
setup_vector_store_registry,
):
litellm._turn_on_debug()
client = AsyncHTTPHandler()
print("value of litellm.vector_store_registry:", litellm.vector_store_registry)
with patch.object(client, "post") as mock_post:
# Mock the response for the LLM call
mock_response = Mock()
mock_response.status_code = 200
mock_response.headers = {"Content-Type": "application/json"}
# Provide proper JSON response content
mock_response.text = json.dumps(
{
"id": "msg_01ABC123",
"type": "message",
"role": "assistant",
"content": [
{
"type": "text",
"text": "LiteLLM is a library that simplifies LLM API access.",
}
],
"model": "claude-3.5-sonnet",
"stop_reason": "end_turn",
"stop_sequence": None,
"usage": {"input_tokens": 100, "output_tokens": 50},
}
)
mock_response.json = lambda: json.loads(mock_response.text)
mock_post.return_value = mock_response
try:
response = await litellm.acompletion(
model="anthropic/claude-3.5-sonnet",
messages=[{"role": "user", "content": "what is litellm?"}],
vector_store_ids=["T37J8R4WTM"],
client=client,
)
except Exception as e:
print(f"Error: {e}")
# Verify the LLM request was made
mock_post.assert_called_once()
# Verify the request body
print("call args:", mock_post.call_args)
request_body = mock_post.call_args.kwargs["json"]
print("Request body:", json.dumps(request_body, indent=4, default=str))
# Assert content from the knowedge base was applied to the request
# 1. we should have 2 content blocks, the first is the context from the knowledge base, the second is the user message
content = request_body["messages"][0]["content"]
assert len(content) == 2
assert content[0]["type"] == "text"
assert content[1]["type"] == "text"
# 2. the first content block should have the bedrock knowledge base prefix string
# this helps confirm that the context from the knowledge base was applied to the request
assert VectorStorePreCallHook.CONTENT_PREFIX_STRING in content[0]["text"]
@pytest.mark.asyncio
async def test_e2e_bedrock_knowledgebase_retrieval_with_llm_api_call(
setup_vector_store_registry,
):
"""
Test that the Bedrock Knowledge Base Hook works when making a real llm api call and returns citations.
"""
# Init client
litellm._turn_on_debug()
async_client = AsyncHTTPHandler()
response = await litellm.acompletion(
model="bedrock/us.anthropic.claude-haiku-4-5-20251001-v1:0",
messages=[{"role": "user", "content": "what is litellm?"}],
vector_store_ids=["T37J8R4WTM"],
client=async_client,
)
print("OPENAI RESPONSE:", json.dumps(dict(response), indent=4, default=str))
assert response is not None
# Check that search_results are present in provider_specific_fields
assert hasattr(response.choices[0].message, "provider_specific_fields")
provider_fields = response.choices[0].message.provider_specific_fields
assert provider_fields is not None
assert "search_results" in provider_fields
search_results = provider_fields["search_results"]
assert search_results is not None
assert len(search_results) > 0
# Check search result structure (OpenAI-compatible format)
first_search_result = search_results[0]
assert "object" in first_search_result
assert first_search_result["object"] == "vector_store.search_results.page"
assert "data" in first_search_result
assert len(first_search_result["data"]) > 0
# Check individual result structure
first_result = first_search_result["data"][0]
assert "score" in first_result
assert "content" in first_result
print(f"Search results returned: {len(search_results)}")
print(f"First search result has {len(first_search_result['data'])} items")
@pytest.mark.asyncio
async def test_e2e_bedrock_knowledgebase_retrieval_with_llm_api_call_streaming(
setup_vector_store_registry,
):
"""
Test that the Bedrock Knowledge Base Hook works with streaming and returns search_results in chunks.
"""
# Init client
# litellm._turn_on_debug()
async_client = AsyncHTTPHandler()
response = await litellm.acompletion(
model=f"anthropic/{os.environ.get('CI_CD_DEFAULT_ANTHROPIC_MODEL', 'claude-haiku-4-5-20251001')}",
messages=[{"role": "user", "content": "what is litellm?"}],
vector_store_ids=["T37J8R4WTM"],
stream=True,
client=async_client,
)
# Collect chunks
chunks = []
search_results_found = False
async for chunk in response:
chunks.append(chunk)
print(f"Chunk: {chunk}")
# Check if this chunk has search_results in provider_specific_fields
if hasattr(chunk, "choices") and chunk.choices:
for choice in chunk.choices:
if hasattr(choice, "delta") and choice.delta:
provider_fields = getattr(
choice.delta, "provider_specific_fields", None
)
if provider_fields and "search_results" in provider_fields:
search_results = provider_fields["search_results"]
print(
f"Found search_results in streaming chunk: {len(search_results)} results"
)
# Verify structure
assert search_results is not None
assert len(search_results) > 0
first_search_result = search_results[0]
assert "object" in first_search_result
assert (
first_search_result["object"]
== "vector_store.search_results.page"
)
assert "data" in first_search_result
assert len(first_search_result["data"]) > 0
search_results_found = True
print(f"Total chunks received: {len(chunks)}")
assert len(chunks) > 0
assert search_results_found, "search_results should be present in streaming chunks"
@pytest.mark.asyncio
async def test_e2e_bedrock_knowledgebase_retrieval_with_llm_api_call_with_tools(
setup_vector_store_registry,
):
"""
Test that the Bedrock Knowledge Base Hook works when making a real llm api call
"""
# Init client
litellm._turn_on_debug()
response = await litellm.acompletion(
model=f"anthropic/{os.environ.get('CI_CD_DEFAULT_ANTHROPIC_MODEL', 'claude-haiku-4-5-20251001')}",
messages=[{"role": "user", "content": "what is litellm?"}],
max_tokens=10,
tools=[{"type": "file_search", "vector_store_ids": ["T37J8R4WTM"]}],
)
assert response is not None
@pytest.mark.asyncio
async def test_e2e_bedrock_knowledgebase_retrieval_with_llm_api_call_with_tools_and_filters(
setup_vector_store_registry,
):
"""
Test that filters from file_search tools are properly passed through to vector store search.
This test verifies the entire flow: tool parsing -> filter extraction -> vector store API call.
In this case we filter for a non-existent user_id, which should return no results.
"""
litellm._turn_on_debug()
response = await litellm.acompletion(
model=f"anthropic/{os.environ.get('CI_CD_DEFAULT_ANTHROPIC_MODEL', 'claude-haiku-4-5-20251001')}",
messages=[{"role": "user", "content": "what is litellm?"}],
max_tokens=10,
tools=[
{
"type": "file_search",
"vector_store_ids": ["T37J8R4WTM"],
"filters": {
"key": "user_id",
"value": "fake-user-id",
"operator": "eq",
},
}
],
)
# Verify response is not None
assert response is not None
# Verify search results were added to the response (this proves the search was called)
assert hasattr(response.choices[0].message, "provider_specific_fields")
provider_fields = response.choices[0].message.provider_specific_fields
assert provider_fields is not None
assert (
"search_results" in provider_fields
), "search_results not in provider_specific_fields"
search_results = provider_fields["search_results"]
assert (
search_results is not None and len(search_results) > 0
), "No search results found"
# The search was performed - this confirms filters were passed through
# The logs above show: litellm.asearch(... filters={'key': 'user_id', 'value': 'fake-user-id', 'operator': 'eq'})
# And the Bedrock API request contains: {'filter': {'equals': {'key': 'user_id', 'value': 'fake-user-id'}}}
print("✅ Filters were successfully passed through to vector store search")
print(f" Search was performed and {len(search_results)} result(s) returned")
@pytest.mark.asyncio
async def test_bedrock_kb_request_body_has_transformed_filters(
setup_vector_store_registry,
):
"""
Validate that the Bedrock Knowledge Base request body contains the transformed filters.
"""
captured_request_body: dict = {}
async def fake_async_vector_store_search_handler(
vector_store_id,
query,
vector_store_search_optional_params,
vector_store_provider_config,
custom_llm_provider,
litellm_params,
logging_obj,
extra_headers=None,
extra_body=None,
timeout=None,
client=None,
_is_async=False,
):
litellm_params_dict = (
litellm_params.model_dump(exclude_none=False)
if hasattr(litellm_params, "model_dump")
else dict(litellm_params)
)
api_base = vector_store_provider_config.get_complete_url(
api_base=litellm_params_dict.get("api_base"),
litellm_params=litellm_params_dict,
)
url, request_body = (
vector_store_provider_config.transform_search_vector_store_request(
vector_store_id=vector_store_id,
query=query,
vector_store_search_optional_params=vector_store_search_optional_params,
api_base=api_base,
litellm_logging_obj=logging_obj,
litellm_params=litellm_params_dict,
extra_body=None,
)
)
captured_request_body["url"] = url
captured_request_body["body"] = request_body
return VectorStoreSearchResponse(
object="vector_store.search_results.page",
search_query=query if isinstance(query, str) else " ".join(query),
data=[
VectorStoreSearchResult(
score=0.9,
content=[
VectorStoreResultContent(
text="LiteLLM is a library", type="text"
)
],
)
],
)
with patch.object(
litellm.vector_stores.main.base_llm_http_handler,
"async_vector_store_search_handler",
new=AsyncMock(side_effect=fake_async_vector_store_search_handler),
):
response = await litellm.acompletion(
model=f"anthropic/{os.environ.get('CI_CD_DEFAULT_ANTHROPIC_MODEL', 'claude-haiku-4-5-20251001')}",
messages=[{"role": "user", "content": "what is litellm?"}],
max_tokens=10,
tools=[
{
"type": "file_search",
"vector_store_ids": ["T37J8R4WTM"],
"filters": {
"key": "user_id",
"value": "fake-user-id",
"operator": "eq",
},
}
],
)
assert response is not None
print(
"captured_request_body:",
json.dumps(captured_request_body, indent=4, default=str),
)
assert "body" in captured_request_body, "Bedrock KB request body was not captured"
vector_search = captured_request_body["body"]["retrievalConfiguration"][
"vectorSearchConfiguration"
]
aws_filter = vector_search["filter"]
assert "equals" in aws_filter, f"Expected 'equals' in AWS format, got: {aws_filter}"
assert aws_filter["equals"]["key"] == "user_id"
assert aws_filter["equals"]["value"] == "fake-user-id"
print("✅ Filters transformed correctly: OpenAI format -> AWS Bedrock format")
@pytest.mark.asyncio
async def test_openai_with_knowledge_base_mock_openai(setup_vector_store_registry):
"""
Tests that knowledge base content is correctly passed to the OpenAI API call
"""
litellm.set_verbose = True
from openai import AsyncOpenAI
client = AsyncOpenAI(api_key="fake-api-key")
# Variable to capture the request
captured_request = {}
with patch.object(
client.chat.completions.with_raw_response, "create"
) as mock_client:
# Create async mock that returns proper structure
async def mock_create(**kwargs):
mock_response = Mock()
mock_response.choices = [
Mock(
message=Mock(content="Mock response from OpenAI", role="assistant")
)
]
mock_response.usage = Mock(
prompt_tokens=100, completion_tokens=50, total_tokens=150
)
mock_response.id = "chatcmpl-123"
mock_response.object = "chat.completion"
mock_response.created = 1234567890
mock_response.model = "gpt-5.5"
# Store the request for verification
captured_request.update(kwargs)
# Return wrapper with parse method
wrapper = Mock()
wrapper.parse.return_value = mock_response
return wrapper
mock_client.side_effect = mock_create
try:
await litellm.acompletion(
model="gpt-5.5",
messages=[{"role": "user", "content": "what is litellm?"}],
vector_store_ids=["T37J8R4WTM"],
client=client,
)
except Exception as e:
print(f"Error: {e}")
# Verify the API was called
mock_client.assert_called_once()
request_body = captured_request
# Verify the request contains messages with knowledge base context
assert "messages" in request_body
messages = request_body["messages"]
# We expect at least 2 messages:
# 1. User message with the knowledge base context
# 2. User message with the question
assert len(messages) >= 2
print("request messages:", json.dumps(messages, indent=4, default=str))
# assert message[0] is the user message with the knowledge base context
assert messages[0]["role"] == "user"
assert VectorStorePreCallHook.CONTENT_PREFIX_STRING in messages[0]["content"]
@pytest.mark.asyncio
async def test_openai_with_vector_store_ids_in_tool_call_mock_openai(
setup_vector_store_registry,
):
"""
Tests that vector store ids can be passed as tools
This is the OpenAI format
"""
litellm.set_verbose = True
from openai import AsyncOpenAI
client = AsyncOpenAI(api_key="fake-api-key")
# Variable to capture the request
captured_request = {}
with patch.object(
client.chat.completions.with_raw_response, "create"
) as mock_client:
# Create async mock that returns proper structure
async def mock_create(**kwargs):
mock_response = Mock()
mock_response.choices = [
Mock(
message=Mock(content="Mock response from OpenAI", role="assistant")
)
]
mock_response.usage = Mock(
prompt_tokens=100, completion_tokens=50, total_tokens=150
)
mock_response.id = "chatcmpl-123"
mock_response.object = "chat.completion"
mock_response.created = 1234567890
mock_response.model = "gpt-5.5"
# Store the request for verification
captured_request.update(kwargs)
# Return wrapper with parse method
wrapper = Mock()
wrapper.parse.return_value = mock_response
return wrapper
mock_client.side_effect = mock_create
try:
await litellm.acompletion(
model="gpt-5.5",
messages=[{"role": "user", "content": "what is litellm?"}],
tools=[{"type": "file_search", "vector_store_ids": ["T37J8R4WTM"]}],
client=client,
)
except Exception as e:
print(f"Error: {e}")
# Verify the API was called
mock_client.assert_called_once()
request_body = captured_request
print("request body:", json.dumps(request_body, indent=4, default=str))
# Verify the request contains messages with knowledge base context
assert "messages" in request_body
messages = request_body["messages"]
# We expect at least 2 messages:
# 1. User message with the knowledge base context
# 2. User message with the question
assert len(messages) >= 2
print("request messages:", json.dumps(messages, indent=4, default=str))
# assert message[0] is the user message with the knowledge base context
assert messages[0]["role"] == "user"
assert VectorStorePreCallHook.CONTENT_PREFIX_STRING in messages[0]["content"]
# assert that the tool call was not sent to the upstream llm API if it's a litellm vector store
assert "tools" not in request_body
@pytest.mark.asyncio
async def test_openai_with_mixed_tool_call_mock_openai(setup_vector_store_registry):
"""Ensure unrecognized vector store tools are forwarded to the provider"""
from openai import AsyncOpenAI
client = AsyncOpenAI(api_key="fake-api-key")
# Variable to capture the request
captured_request = {}
with patch.object(
client.chat.completions.with_raw_response, "create"
) as mock_client:
# Create async mock that returns proper structure
async def mock_create(**kwargs):
mock_response = Mock()
mock_response.choices = [
Mock(
message=Mock(content="Mock response from OpenAI", role="assistant")
)
]
mock_response.usage = Mock(
prompt_tokens=100, completion_tokens=50, total_tokens=150
)
mock_response.id = "chatcmpl-123"
mock_response.object = "chat.completion"
mock_response.created = 1234567890
mock_response.model = "gpt-5.5"
# Store the request for verification
captured_request.update(kwargs)
# Return wrapper with parse method
wrapper = Mock()
wrapper.parse.return_value = mock_response
return wrapper
mock_client.side_effect = mock_create
try:
await litellm.acompletion(
model="gpt-5.5",
messages=[{"role": "user", "content": "what is litellm?"}],
tools=[
{"type": "file_search", "vector_store_ids": ["T37J8R4WTM"]},
{"type": "file_search", "vector_store_ids": ["unknownVS"]},
],
client=client,
)
except Exception as e:
print(f"Error: {e}")
mock_client.assert_called_once()
request_body = captured_request
assert "messages" in request_body
messages = request_body["messages"]
assert len(messages) >= 2
assert messages[0]["role"] == "user"
assert VectorStorePreCallHook.CONTENT_PREFIX_STRING in messages[0]["content"]
assert "tools" in request_body
tools = request_body["tools"]
assert len(tools) == 1
assert tools[0]["vector_store_ids"] == ["unknownVS"]
# @pytest.mark.asyncio
# async def test_logging_with_knowledge_base_hook(setup_vector_store_registry):
# """
# Test that the knowledge base request was logged in standard logging payload
# """
# test_custom_logger = MockCustomLogger()
# litellm.set_verbose = True
# await litellm.acompletion(
# model="gpt-5.5",
# messages=[{"role": "user", "content": "what is litellm?"}],
# vector_store_ids = [
# "T37J8R4WTM"
# ],
# )
# # sleep for 1 second to allow the logging callback to run
# await asyncio.sleep(1)
# # assert that the knowledge base request was logged in the standard logging payload
# standard_logging_payload: Optional[StandardLoggingPayload] = test_custom_logger.standard_logging_payload
# assert standard_logging_payload is not None
# metadata = standard_logging_payload["metadata"]
# standard_logging_vector_store_request_metadata: Optional[List[StandardLoggingVectorStoreRequest]] = metadata["vector_store_request_metadata"]
# print("standard_logging_vector_store_request_metadata:", json.dumps(standard_logging_vector_store_request_metadata, indent=4, default=str))
# # 1 vector store request was made, expect 1 vector store request metadata object
# assert len(standard_logging_vector_store_request_metadata) == 1
# # expect the vector store request metadata object to have the correct values
# vector_store_request_metadata = standard_logging_vector_store_request_metadata[0]
# assert vector_store_request_metadata.get("vector_store_id") == "T37J8R4WTM"
# assert vector_store_request_metadata.get("query") == "what is litellm?"
# assert vector_store_request_metadata.get("custom_llm_provider") == "bedrock"
# vector_store_search_response: VectorStoreSearchResponse = vector_store_request_metadata.get("vector_store_search_response")
# assert vector_store_search_response is not None
# assert vector_store_search_response.get("search_query") == "what is litellm?"
# assert len(vector_store_search_response.get("data", [])) >=0
# for item in vector_store_search_response.get("data", []):
# assert item.get("score") is not None
# assert item.get("content") is not None
# assert len(item.get("content", [])) >= 0
# for content_item in item.get("content", []):
# text_content = content_item.get("text")
# assert text_content is not None
# assert len(text_content) > 0
@pytest.mark.asyncio
async def test_e2e_bedrock_knowledgebase_retrieval_without_vector_store_registry(
setup_vector_store_registry,
):
litellm._turn_on_debug()
client = AsyncHTTPHandler()
litellm.vector_store_registry = None
with patch.object(client, "post") as mock_post:
# Mock the response for the LLM call
mock_response = Mock()
mock_response.status_code = 200
mock_response.headers = {"Content-Type": "application/json"}
# Provide proper JSON response content
mock_response.text = json.dumps(
{
"id": "msg_01ABC123",
"type": "message",
"role": "assistant",
"content": [
{
"type": "text",
"text": "LiteLLM is a library that simplifies LLM API access.",
}
],
"model": "claude-3.5-sonnet",
"stop_reason": "end_turn",
"stop_sequence": None,
"usage": {"input_tokens": 100, "output_tokens": 50},
}
)
mock_response.json = lambda: json.loads(mock_response.text)
mock_post.return_value = mock_response
try:
response = await litellm.acompletion(
model="anthropic/claude-3.5-sonnet",
messages=[{"role": "user", "content": "what is litellm?"}],
vector_store_ids=["T37J8R4WTM"],
client=client,
)
except Exception as e:
print(f"Error: {e}")
# Verify the LLM request was made
mock_post.assert_called_once()
# Verify the request body
print("call args:", mock_post.call_args)
request_body = mock_post.call_args.kwargs["json"]
print("Request body:", json.dumps(request_body, indent=4, default=str))
# Assert content from the knowedge base was applied to the request
# 1. we should have 1 content block, the first is the user message
# There should only be one since there is no initialized vector store registry
content = request_body["messages"][0]["content"]
assert len(content) == 1
assert content[0]["type"] == "text"
@pytest.mark.asyncio
async def test_e2e_bedrock_knowledgebase_retrieval_with_vector_store_not_in_registry(
setup_vector_store_registry,
):
"""
No vector store request is made for vector store ids that are not in the registry
In this test newUnknownVectorStoreId is not in the registry, so no vector store request is made
"""
litellm._turn_on_debug()
client = AsyncHTTPHandler()
if litellm.vector_store_registry is not None:
print("Registry iniitalized:", litellm.vector_store_registry.vector_stores)
else:
print("Registry is None")
with patch.object(client, "post") as mock_post:
# Mock the response for the LLM call
mock_response = Mock()
mock_response.status_code = 200
mock_response.headers = {"Content-Type": "application/json"}
# Provide proper JSON response content
mock_response.text = json.dumps(
{
"id": "msg_01ABC123",
"type": "message",
"role": "assistant",
"content": [
{
"type": "text",
"text": "LiteLLM is a library that simplifies LLM API access.",
}
],
"model": "claude-3.5-sonnet",
"stop_reason": "end_turn",
"stop_sequence": None,
"usage": {"input_tokens": 100, "output_tokens": 50},
}
)
mock_response.json = lambda: json.loads(mock_response.text)
mock_post.return_value = mock_response
try:
response = await litellm.acompletion(
model="anthropic/claude-3.5-sonnet",
messages=[{"role": "user", "content": "what is litellm?"}],
vector_store_ids=["newUnknownVectorStoreId"],
client=client,
)
except Exception as e:
print(f"Error: {e}")
# Verify the LLM request was made
mock_post.assert_called_once()
# Verify the request body
print("call args:", mock_post.call_args)
request_body = mock_post.call_args.kwargs["json"]
print("Request body:", json.dumps(request_body, indent=4, default=str))
# Assert content from the knowedge base was applied to the request
# 1. we should have 1 content block, the first is the user message
# There should only be one since there is no initialized vector store registry
content = request_body["messages"][0]["content"]
assert len(content) == 1
assert content[0]["type"] == "text"
@pytest.mark.asyncio
async def test_provider_specific_fields_in_proxy_http_response(
setup_vector_store_registry,
):
"""
Test that provider_specific_fields (like search_results) are included
in the proxy HTTP JSON response, not just in Python SDK objects.
This test catches serialization bugs where exclude=True would strip
provider_specific_fields from the HTTP response.
"""
from fastapi.testclient import TestClient
from litellm.proxy.proxy_server import app, initialize
from litellm.proxy.utils import ProxyLogging
import litellm.proxy.proxy_server as proxy_server
from unittest.mock import patch as mock_patch
# Initialize proxy
await initialize(
model="gpt-5-mini",
alias=None,
api_base=None,
debug=False,
temperature=None,
max_tokens=None,
request_timeout=600,
max_budget=None,
telemetry=False,
drop_params=True,
add_function_to_prompt=False,
headers=None,
save=False,
use_queue=False,
config=None,
)
# Create test client
client = TestClient(app)
# Create mock response with provider_specific_fields
mock_response = litellm.ModelResponse(
id="test-123",
model="gpt-5-mini",
created=1234567890,
object="chat.completion",
)
# Create message with provider_specific_fields
mock_message = litellm.Message(
content="LiteLLM is a tool that simplifies working with multiple LLMs.",
role="assistant",
provider_specific_fields={
"search_results": [
{
"object": "vector_store.search_results.page",
"search_query": "what is litellm?",
"data": [
{
"score": 0.95,
"content": [{"text": "Test content", "type": "text"}],
"file_id": "test-file",
"filename": "test.txt",
}
],
}
]
},
)
mock_choice = litellm.Choices(finish_reason="stop", index=0, message=mock_message)
mock_response.choices = [mock_choice]
mock_response.usage = litellm.Usage(
prompt_tokens=10, completion_tokens=20, total_tokens=30
)
# Patch the completion call at the proxy level
with mock_patch("litellm.acompletion", new=AsyncMock(return_value=mock_response)):
# Make HTTP request to proxy
response = client.post(
"/v1/chat/completions",
json={
"model": "gpt-5-mini",
"messages": [{"role": "user", "content": "What is litellm?"}],
},
)
# Check HTTP response
assert response.status_code == 200
result = response.json()
print("HTTP Response JSON:", json.dumps(result, indent=2))
# THE KEY ASSERTIONS - These would FAIL with exclude=True!
assert "choices" in result
assert len(result["choices"]) > 0
choice = result["choices"][0]
assert "message" in choice
message = choice["message"]
# Verify provider_specific_fields is in the JSON response
assert (
"provider_specific_fields" in message
), "provider_specific_fields missing from HTTP JSON response! This means exclude=True is preventing serialization."
assert "search_results" in message["provider_specific_fields"]
search_results = message["provider_specific_fields"]["search_results"]
assert len(search_results) > 0
# Verify search result structure
first_result = search_results[0]
assert first_result["object"] == "vector_store.search_results.page"
assert "data" in first_result
assert len(first_result["data"]) > 0
print("✅ provider_specific_fields successfully serialized in HTTP response")