import copy import datetime from typing import AsyncGenerator from unittest.mock import AsyncMock, MagicMock, patch import pytest from fastapi import Request, status from fastapi.responses import JSONResponse, StreamingResponse import litellm from litellm._uuid import uuid from litellm.integrations.opentelemetry import UserAPIKeyAuth from litellm.proxy.common_request_processing import ( ProxyBaseLLMRequestProcessing, ProxyConfig, _extract_error_from_sse_chunk, _get_cost_breakdown_from_logging_obj, _has_attribute_error_in_chain, _is_azure_model_router_request, _override_openai_response_model, _parse_event_data_for_error, create_response, ) from litellm.proxy.dd_span_tagger import DDSpanTagger from litellm.proxy.utils import ProxyLogging class TestProxyBaseLLMRequestProcessing: @pytest.mark.asyncio async def test_common_processing_pre_call_logic_pre_call_hook_receives_litellm_call_id( self, monkeypatch ): processing_obj = ProxyBaseLLMRequestProcessing(data={}) mock_request = MagicMock(spec=Request) mock_request.headers = {} async def mock_add_litellm_data_to_request(*args, **kwargs): return {} async def mock_common_processing_pre_call_logic( user_api_key_dict, data, call_type ): data_copy = copy.deepcopy(data) return data_copy mock_proxy_logging_obj = MagicMock(spec=ProxyLogging) mock_proxy_logging_obj.pre_call_hook = AsyncMock( side_effect=mock_common_processing_pre_call_logic ) monkeypatch.setattr( litellm.proxy.common_request_processing, "add_litellm_data_to_request", mock_add_litellm_data_to_request, ) mock_general_settings = {} mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_proxy_config = MagicMock(spec=ProxyConfig) route_type = "acompletion" # Call the actual method. ( returned_data, logging_obj, ) = await processing_obj.common_processing_pre_call_logic( request=mock_request, general_settings=mock_general_settings, user_api_key_dict=mock_user_api_key_dict, proxy_logging_obj=mock_proxy_logging_obj, proxy_config=mock_proxy_config, route_type=route_type, ) mock_proxy_logging_obj.pre_call_hook.assert_called_once() _, call_kwargs = mock_proxy_logging_obj.pre_call_hook.call_args data_passed = call_kwargs.get("data", {}) assert "litellm_call_id" in data_passed try: uuid.UUID(data_passed["litellm_call_id"]) except ValueError: pytest.fail("litellm_call_id is not a valid UUID") assert data_passed["litellm_call_id"] == returned_data["litellm_call_id"] def test_add_dd_apm_tags_for_litellm_call_id_uses_dd_tracing_helper(self, monkeypatch): mock_set_active_span_tag = MagicMock(return_value=True) import litellm.proxy.dd_span_tagger monkeypatch.setattr( litellm.proxy.dd_span_tagger, "set_active_span_tag", mock_set_active_span_tag, ) DDSpanTagger.tag_call_id("test-call-id") mock_set_active_span_tag.assert_called_once_with( "litellm.call_id", "test-call-id" ) @pytest.mark.asyncio async def test_should_apply_hierarchical_router_settings_as_override( self, monkeypatch ): """ Test that hierarchical router settings are stored as router_settings_override instead of creating a full user_config with model_list. This approach avoids expensive per-request Router instantiation by passing settings as kwargs overrides to the main router. """ processing_obj = ProxyBaseLLMRequestProcessing(data={}) mock_request = MagicMock(spec=Request) mock_request.headers = {} async def mock_add_litellm_data_to_request(*args, **kwargs): return {} async def mock_common_processing_pre_call_logic( user_api_key_dict, data, call_type ): data_copy = copy.deepcopy(data) return data_copy mock_proxy_logging_obj = MagicMock(spec=ProxyLogging) mock_proxy_logging_obj.pre_call_hook = AsyncMock( side_effect=mock_common_processing_pre_call_logic ) monkeypatch.setattr( litellm.proxy.common_request_processing, "add_litellm_data_to_request", mock_add_litellm_data_to_request, ) mock_general_settings = {} mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_proxy_config = MagicMock(spec=ProxyConfig) mock_router_settings = { "routing_strategy": "least-busy", "timeout": 30.0, "num_retries": 3, } mock_proxy_config._get_hierarchical_router_settings = AsyncMock( return_value=mock_router_settings ) mock_llm_router = MagicMock() mock_prisma_client = MagicMock() monkeypatch.setattr( "litellm.proxy.proxy_server.prisma_client", mock_prisma_client, ) route_type = "acompletion" ( returned_data, logging_obj, ) = await processing_obj.common_processing_pre_call_logic( request=mock_request, general_settings=mock_general_settings, user_api_key_dict=mock_user_api_key_dict, proxy_logging_obj=mock_proxy_logging_obj, proxy_config=mock_proxy_config, route_type=route_type, llm_router=mock_llm_router, ) mock_proxy_config._get_hierarchical_router_settings.assert_called_once_with( user_api_key_dict=mock_user_api_key_dict, prisma_client=mock_prisma_client, proxy_logging_obj=mock_proxy_logging_obj, ) # get_model_list should NOT be called - we no longer copy model list for per-request routers mock_llm_router.get_model_list.assert_not_called() # Settings should be stored as router_settings_override (not user_config) # This allows passing them as kwargs to the main router instead of creating a new one assert "router_settings_override" in returned_data assert "user_config" not in returned_data router_settings_override = returned_data["router_settings_override"] assert router_settings_override["routing_strategy"] == "least-busy" assert router_settings_override["timeout"] == 30.0 assert router_settings_override["num_retries"] == 3 # model_list should NOT be in the override settings assert "model_list" not in router_settings_override @pytest.mark.asyncio async def test_stream_timeout_header_processing(self): """ Test that x-litellm-stream-timeout header gets processed and added to request data as stream_timeout. """ from litellm.proxy.litellm_pre_call_utils import LiteLLMProxyRequestSetup # Test with stream timeout header headers_with_timeout = {"x-litellm-stream-timeout": "30.5"} result = LiteLLMProxyRequestSetup._get_stream_timeout_from_request( headers_with_timeout ) assert result == 30.5 # Test without stream timeout header headers_without_timeout = {} result = LiteLLMProxyRequestSetup._get_stream_timeout_from_request( headers_without_timeout ) assert result is None # Test with invalid header value (should raise ValueError when converting to float) headers_with_invalid = {"x-litellm-stream-timeout": "invalid"} with pytest.raises(ValueError): LiteLLMProxyRequestSetup._get_stream_timeout_from_request( headers_with_invalid ) @pytest.mark.asyncio async def test_add_litellm_data_to_request_with_stream_timeout_header(self): """ Test that x-litellm-stream-timeout header gets processed and added to request data when calling add_litellm_data_to_request. """ from litellm.proxy.litellm_pre_call_utils import add_litellm_data_to_request # Create test data with a basic completion request test_data = { "model": "gpt-3.5-turbo", "messages": [{"role": "user", "content": "Hello"}], } # Mock request with stream timeout header mock_request = MagicMock(spec=Request) mock_request.headers = {"x-litellm-stream-timeout": "45.0"} mock_request.url.path = "/v1/chat/completions" mock_request.method = "POST" mock_request.query_params = {} mock_request.client = None # Create a minimal mock with just the required attributes mock_user_api_key_dict = MagicMock() mock_user_api_key_dict.api_key = "test_api_key_hash" mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0 mock_user_api_key_dict.allowed_model_region = None mock_user_api_key_dict.key_alias = None mock_user_api_key_dict.user_id = None mock_user_api_key_dict.team_id = None mock_user_api_key_dict.metadata = {} # Prevent enterprise feature check mock_user_api_key_dict.team_metadata = None mock_user_api_key_dict.org_id = None mock_user_api_key_dict.team_alias = None mock_user_api_key_dict.end_user_id = None mock_user_api_key_dict.user_email = None mock_user_api_key_dict.request_route = None mock_user_api_key_dict.team_max_budget = None mock_user_api_key_dict.team_spend = None mock_user_api_key_dict.model_max_budget = None mock_user_api_key_dict.parent_otel_span = None mock_user_api_key_dict.team_model_aliases = None general_settings = {} mock_proxy_config = MagicMock() # Call the actual function that processes headers and adds data result_data = await add_litellm_data_to_request( data=test_data, request=mock_request, general_settings=general_settings, user_api_key_dict=mock_user_api_key_dict, version=None, proxy_config=mock_proxy_config, ) # Verify that stream_timeout was extracted from header and added to request data assert "stream_timeout" in result_data assert result_data["stream_timeout"] == 45.0 # Verify that the original test data is preserved assert result_data["model"] == "gpt-3.5-turbo" assert result_data["messages"] == [{"role": "user", "content": "Hello"}] def test_get_custom_headers_with_discount_info(self): """ Test that discount information is correctly extracted from logging object and included in response headers. """ from litellm.litellm_core_utils.litellm_logging import ( Logging as LiteLLMLoggingObj, ) # Create mock user API key dict mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0 # Create logging object with cost breakdown including discount logging_obj = LiteLLMLoggingObj( model="vertex_ai/gemini-pro", messages=[{"role": "user", "content": "test"}], stream=False, call_type="completion", start_time=None, litellm_call_id="test-call-id", function_id="test-function-id", ) # Set cost breakdown with discount information logging_obj.set_cost_breakdown( input_cost=0.00005, output_cost=0.00005, total_cost=0.000095, # After 5% discount cost_for_built_in_tools_cost_usd_dollar=0.0, original_cost=0.0001, discount_percent=0.05, discount_amount=0.000005, ) # Call get_custom_headers with discount info headers = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id", response_cost=0.000095, litellm_logging_obj=logging_obj, ) # Verify discount headers are present assert "x-litellm-response-cost" in headers assert float(headers["x-litellm-response-cost"]) == 0.000095 assert "x-litellm-response-cost-original" in headers assert float(headers["x-litellm-response-cost-original"]) == 0.0001 assert "x-litellm-response-cost-discount-amount" in headers assert float(headers["x-litellm-response-cost-discount-amount"]) == 0.000005 def test_get_custom_headers_without_discount_info(self): """ Test that when no discount is applied, discount headers are not included. """ from litellm.litellm_core_utils.litellm_logging import ( Logging as LiteLLMLoggingObj, ) # Create mock user API key dict mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0 # Create logging object without discount logging_obj = LiteLLMLoggingObj( model="gpt-3.5-turbo", messages=[{"role": "user", "content": "test"}], stream=False, call_type="completion", start_time=None, litellm_call_id="test-call-id", function_id="test-function-id", ) # Set cost breakdown without discount information logging_obj.set_cost_breakdown( input_cost=0.00005, output_cost=0.00005, total_cost=0.0001, cost_for_built_in_tools_cost_usd_dollar=0.0, ) # Call get_custom_headers headers = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id", response_cost=0.0001, litellm_logging_obj=logging_obj, ) # Verify discount headers are NOT present assert "x-litellm-response-cost" in headers assert float(headers["x-litellm-response-cost"]) == 0.0001 # Discount headers should not be in the final dict assert "x-litellm-response-cost-original" not in headers assert "x-litellm-response-cost-discount-amount" not in headers def test_get_custom_headers_with_margin_info(self): """ Test that margin headers are included when margin is applied. """ from litellm.litellm_core_utils.litellm_logging import ( Logging as LiteLLMLoggingObj, ) # Create mock user API key dict mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0 # Create logging object with margin logging_obj = LiteLLMLoggingObj( model="gpt-4", messages=[], stream=False, call_type="completion", start_time=None, litellm_call_id="test-call-id-margin", function_id="test-function", ) logging_obj.set_cost_breakdown( input_cost=0.00005, output_cost=0.00005, total_cost=0.00011, cost_for_built_in_tools_cost_usd_dollar=0.0, original_cost=0.0001, margin_percent=0.10, margin_total_amount=0.00001, ) headers = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, response_cost=0.00011, litellm_logging_obj=logging_obj, ) # Verify margin headers are present assert "x-litellm-response-cost" in headers assert float(headers["x-litellm-response-cost"]) == 0.00011 assert "x-litellm-response-cost-margin-amount" in headers assert float(headers["x-litellm-response-cost-margin-amount"]) == 0.00001 assert "x-litellm-response-cost-margin-percent" in headers assert float(headers["x-litellm-response-cost-margin-percent"]) == 0.10 def test_get_custom_headers_without_margin_info(self): """ Test that when no margin is applied, margin headers are not included. """ from litellm.litellm_core_utils.litellm_logging import ( Logging as LiteLLMLoggingObj, ) # Create mock user API key dict mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0 # Create logging object without margin logging_obj = LiteLLMLoggingObj( model="gpt-4", messages=[], stream=False, call_type="completion", start_time=None, litellm_call_id="test-call-id-no-margin", function_id="test-function", ) logging_obj.set_cost_breakdown( input_cost=0.00005, output_cost=0.00005, total_cost=0.0001, cost_for_built_in_tools_cost_usd_dollar=0.0, ) headers = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, response_cost=0.0001, litellm_logging_obj=logging_obj, ) # Verify margin headers are not present assert "x-litellm-response-cost-margin-amount" not in headers assert "x-litellm-response-cost-margin-percent" not in headers def test_get_cost_breakdown_from_logging_obj_helper(self): """ Test the helper function that extracts cost breakdown information. """ from litellm.litellm_core_utils.litellm_logging import ( Logging as LiteLLMLoggingObj, ) # Test with discount info logging_obj = LiteLLMLoggingObj( model="vertex_ai/gemini-pro", messages=[{"role": "user", "content": "test"}], stream=False, call_type="completion", start_time=None, litellm_call_id="test-call-id", function_id="test-function-id", ) logging_obj.set_cost_breakdown( input_cost=0.00005, output_cost=0.00005, total_cost=0.000095, cost_for_built_in_tools_cost_usd_dollar=0.0, original_cost=0.0001, discount_percent=0.05, discount_amount=0.000005, ) ( original_cost, discount_amount, margin_total_amount, margin_percent, ) = _get_cost_breakdown_from_logging_obj(logging_obj) assert original_cost == 0.0001 assert discount_amount == 0.000005 assert margin_total_amount is None assert margin_percent is None # Test with margin info logging_obj_with_margin = LiteLLMLoggingObj( model="gpt-4", messages=[{"role": "user", "content": "test"}], stream=False, call_type="completion", start_time=None, litellm_call_id="test-call-id-margin", function_id="test-function-id-margin", ) logging_obj_with_margin.set_cost_breakdown( input_cost=0.00005, output_cost=0.00005, total_cost=0.00011, cost_for_built_in_tools_cost_usd_dollar=0.0, original_cost=0.0001, margin_percent=0.10, margin_total_amount=0.00001, ) ( original_cost, discount_amount, margin_total_amount, margin_percent, ) = _get_cost_breakdown_from_logging_obj(logging_obj_with_margin) assert original_cost == 0.0001 assert discount_amount is None assert margin_total_amount == 0.00001 assert margin_percent == 0.10 # Test with no discount or margin info logging_obj_no_discount = LiteLLMLoggingObj( model="gpt-3.5-turbo", messages=[{"role": "user", "content": "test"}], stream=False, call_type="completion", start_time=None, litellm_call_id="test-call-id-2", function_id="test-function-id-2", ) logging_obj_no_discount.set_cost_breakdown( input_cost=0.00005, output_cost=0.00005, total_cost=0.0001, cost_for_built_in_tools_cost_usd_dollar=0.0, ) ( original_cost, discount_amount, margin_total_amount, margin_percent, ) = _get_cost_breakdown_from_logging_obj(logging_obj_no_discount) assert original_cost is None assert discount_amount is None assert margin_total_amount is None assert margin_percent is None # Test with None logging object ( original_cost, discount_amount, margin_total_amount, margin_percent, ) = _get_cost_breakdown_from_logging_obj(None) assert original_cost is None assert discount_amount is None assert margin_total_amount is None assert margin_percent is None def test_get_custom_headers_key_spend_includes_response_cost(self): """ Test that x-litellm-key-spend header includes the current request's response_cost. This ensures that the spend header reflects the updated spend including the current request, even though spend tracking updates happen asynchronously after the response. """ # Create mock user API key dict with initial spend mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0.001 # Initial spend: $0.001 # Test case 1: response_cost is provided as float response_cost_1 = 0.0005 # Current request cost: $0.0005 headers_1 = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id-1", response_cost=response_cost_1, ) assert "x-litellm-key-spend" in headers_1 expected_spend_1 = 0.001 + 0.0005 # Initial spend + current request cost assert float(headers_1["x-litellm-key-spend"]) == pytest.approx( expected_spend_1, abs=1e-10 ) assert float(headers_1["x-litellm-response-cost"]) == response_cost_1 # Test case 2: response_cost is provided as string response_cost_2 = "0.0003" # Current request cost as string headers_2 = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id-2", response_cost=response_cost_2, ) assert "x-litellm-key-spend" in headers_2 expected_spend_2 = 0.001 + 0.0003 # Initial spend + current request cost assert float(headers_2["x-litellm-key-spend"]) == pytest.approx( expected_spend_2, abs=1e-10 ) # Test case 3: response_cost is None (should use original spend) headers_3 = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id-3", response_cost=None, ) assert "x-litellm-key-spend" in headers_3 assert ( float(headers_3["x-litellm-key-spend"]) == 0.001 ) # Should use original spend # Test case 4: response_cost is 0 (should not change spend) headers_4 = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id-4", response_cost=0.0, ) assert "x-litellm-key-spend" in headers_4 assert ( float(headers_4["x-litellm-key-spend"]) == 0.001 ) # Should remain unchanged for 0 cost # Test case 5: user_api_key_dict.spend is None (should default to 0.0) mock_user_api_key_dict.spend = None headers_5 = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id-5", response_cost=0.0002, ) assert "x-litellm-key-spend" in headers_5 assert float(headers_5["x-litellm-key-spend"]) == 0.0002 # 0.0 + 0.0002 # Test case 6: response_cost is negative (should not be added, use original spend) mock_user_api_key_dict.spend = 0.001 headers_6 = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id-6", response_cost=-0.0001, # Negative cost (should not be added) ) assert "x-litellm-key-spend" in headers_6 assert ( float(headers_6["x-litellm-key-spend"]) == 0.001 ) # Should use original spend # Test case 7: response_cost is invalid string (should fallback to original spend) headers_7 = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id-7", response_cost="invalid", # Invalid string ) assert "x-litellm-key-spend" in headers_7 assert ( float(headers_7["x-litellm-key-spend"]) == 0.001 ) # Should use original spend on error @pytest.mark.asyncio async def test_queue_time_seconds_is_set_in_metadata(self, monkeypatch): """ Test that queue_time_seconds is correctly calculated and stored in metadata after add_litellm_data_to_request populates arrival_time. This verifies the fix for the bug where queue_time_seconds was always None because arrival_time was read BEFORE add_litellm_data_to_request set it. """ processing_obj = ProxyBaseLLMRequestProcessing(data={}) mock_request = MagicMock(spec=Request) mock_request.headers = {} mock_request.url = MagicMock() mock_request.url.path = "/v1/chat/completions" async def mock_add_litellm_data_to_request(*args, **kwargs): data = kwargs.get("data", args[0] if args else {}) # Simulate what add_litellm_data_to_request does: set arrival_time import time data["proxy_server_request"] = { "url": "/v1/chat/completions", "method": "POST", "headers": {}, "body": {}, "arrival_time": time.time() - 0.5, # Simulate request arrived 0.5s ago } data["metadata"] = data.get("metadata", {}) return data async def mock_pre_call_hook(user_api_key_dict, data, call_type): return copy.deepcopy(data) mock_proxy_logging_obj = MagicMock(spec=ProxyLogging) mock_proxy_logging_obj.pre_call_hook = AsyncMock(side_effect=mock_pre_call_hook) monkeypatch.setattr( litellm.proxy.common_request_processing, "add_litellm_data_to_request", mock_add_litellm_data_to_request, ) mock_general_settings = {} mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_proxy_config = MagicMock(spec=ProxyConfig) route_type = "acompletion" ( returned_data, logging_obj, ) = await processing_obj.common_processing_pre_call_logic( request=mock_request, general_settings=mock_general_settings, user_api_key_dict=mock_user_api_key_dict, proxy_logging_obj=mock_proxy_logging_obj, proxy_config=mock_proxy_config, route_type=route_type, ) # Verify queue_time_seconds is set and non-negative metadata = returned_data.get("metadata", {}) assert ( "queue_time_seconds" in metadata ), "queue_time_seconds should be set in metadata" assert ( metadata["queue_time_seconds"] >= 0.5 ), f"queue_time_seconds should be at least 0.5, got {metadata['queue_time_seconds']}" @pytest.mark.asyncio class TestCommonRequestProcessingHelpers: async def consume_stream(self, streaming_response: StreamingResponse) -> list: content = [] async for chunk_bytes in streaming_response.body_iterator: content.append(chunk_bytes) return content @pytest.mark.parametrize( "event_line, expected_code", [ ( 'data: {"error": {"code": 400, "message": "bad request"}}', 400, ), # Valid integer code ( 'data: {"error": {"code": "401", "message": "unauthorized"}}', 401, ), # Valid string-integer code ( 'data: {"error": {"code": "invalid_code", "message": "error"}}', None, ), # Invalid string code ( 'data: {"error": {"code": 99, "message": "too low"}}', None, ), # Integer code too low ( 'data: {"error": {"code": 600, "message": "too high"}}', None, ), # Integer code too high ( 'data: {"id": "123", "content": "hello"}', None, ), # Non-error SSE event ("data: [DONE]", None), # SSE [DONE] event ("data: ", None), # SSE empty data event ( 'data: {"error": {"code": 400', None, ), # Malformed JSON ("id: 123", None), # Non-SSE event line ( 'data: {"error": {"message": "some error"}}', None, ), # Error event without 'code' field ( 'data: {"error": {"code": null, "message": "code is null"}}', None, ), # Error with null code ], ) async def test_parse_event_data_for_error(self, event_line, expected_code): assert await _parse_event_data_for_error(event_line) == expected_code async def test_create_streaming_response_first_chunk_is_error(self): """ Test that when the first chunk is an error, a JSON error response is returned instead of an SSE streaming response """ async def mock_generator(): yield 'data: {"error": {"code": 403, "message": "forbidden"}}\n\n' yield 'data: {"content": "more data"}\n\n' yield "data: [DONE]\n\n" response = await create_response(mock_generator(), "text/event-stream", {}) # Should return JSONResponse instead of StreamingResponse assert isinstance(response, JSONResponse) assert response.status_code == status.HTTP_403_FORBIDDEN # Verify the response is in standard JSON error format import json body = json.loads(response.body.decode()) assert "error" in body assert body["error"]["code"] == 403 assert body["error"]["message"] == "forbidden" async def test_create_streaming_response_first_chunk_not_error(self): async def mock_generator(): yield 'data: {"content": "first part"}\n\n' yield 'data: {"content": "second part"}\n\n' yield "data: [DONE]\n\n" response = await create_response(mock_generator(), "text/event-stream", {}) assert response.status_code == status.HTTP_200_OK content = await self.consume_stream(response) assert content == [ 'data: {"content": "first part"}\n\n', 'data: {"content": "second part"}\n\n', "data: [DONE]\n\n", ] async def test_create_streaming_response_empty_generator(self): async def mock_generator(): if False: # Never yields yield # Implicitly raises StopAsyncIteration response = await create_response(mock_generator(), "text/event-stream", {}) assert response.status_code == status.HTTP_200_OK content = await self.consume_stream(response) assert content == [] async def test_create_streaming_response_generator_raises_stop_async_iteration_immediately( self, ): mock_gen = AsyncMock() mock_gen.__anext__.side_effect = StopAsyncIteration response = await create_response(mock_gen, "text/event-stream", {}) assert response.status_code == status.HTTP_200_OK content = await self.consume_stream(response) assert content == [] async def test_create_streaming_response_generator_raises_unexpected_exception( self, ): mock_gen = AsyncMock() mock_gen.__anext__.side_effect = ValueError("Test error from generator") response = await create_response(mock_gen, "text/event-stream", {}) assert response.status_code == status.HTTP_500_INTERNAL_SERVER_ERROR content = await self.consume_stream(response) expected_error_data = { "error": { "message": "Error processing stream start", "code": status.HTTP_500_INTERNAL_SERVER_ERROR, } } assert len(content) == 2 # Use json.dumps to match the formatting in create_streaming_response's exception handler import json assert content[0] == f"data: {json.dumps(expected_error_data)}\n\n" assert content[1] == "data: [DONE]\n\n" async def test_create_streaming_response_first_chunk_error_string_code(self): """ Test that when the first chunk contains a string error code, a JSON error response is returned """ async def mock_generator(): yield 'data: {"error": {"code": "429", "message": "too many requests"}}\n\n' yield "data: [DONE]\n\n" response = await create_response(mock_generator(), "text/event-stream", {}) assert isinstance(response, JSONResponse) assert response.status_code == status.HTTP_429_TOO_MANY_REQUESTS # Verify the response is in standard JSON error format import json body = json.loads(response.body.decode()) assert "error" in body assert body["error"]["code"] == "429" assert body["error"]["message"] == "too many requests" async def test_create_streaming_response_custom_headers(self): async def mock_generator(): yield 'data: {"content": "data"}\n\n' yield "data: [DONE]\n\n" custom_headers = {"X-Custom-Header": "TestValue"} response = await create_response( mock_generator(), "text/event-stream", custom_headers ) assert response.headers["x-custom-header"] == "TestValue" async def test_create_streaming_response_non_default_status_code(self): async def mock_generator(): yield 'data: {"content": "data"}\n\n' yield "data: [DONE]\n\n" response = await create_response( mock_generator(), "text/event-stream", {}, default_status_code=status.HTTP_201_CREATED, ) assert response.status_code == status.HTTP_201_CREATED content = await self.consume_stream(response) assert content == [ 'data: {"content": "data"}\n\n', "data: [DONE]\n\n", ] async def test_create_streaming_response_first_chunk_is_done(self): async def mock_generator(): yield "data: [DONE]\n\n" response = await create_response(mock_generator(), "text/event-stream", {}) assert response.status_code == status.HTTP_200_OK # Default status content = await self.consume_stream(response) assert content == ["data: [DONE]\n\n"] async def test_create_streaming_response_first_chunk_is_empty_data(self): async def mock_generator(): yield "data: \n\n" yield 'data: {"content": "actual data"}\n\n' yield "data: [DONE]\n\n" response = await create_response(mock_generator(), "text/event-stream", {}) assert response.status_code == status.HTTP_200_OK # Default status content = await self.consume_stream(response) assert content == [ "data: \n\n", 'data: {"content": "actual data"}\n\n', "data: [DONE]\n\n", ] async def test_create_streaming_response_all_chunks_have_dd_trace(self): """Test that all stream chunks are wrapped with dd trace at the streaming generator level""" from unittest.mock import patch # Create a mock tracer mock_tracer = MagicMock() mock_span = MagicMock() mock_tracer.trace.return_value.__enter__.return_value = mock_span mock_tracer.trace.return_value.__exit__.return_value = None # Mock generator with multiple chunks async def mock_generator(): yield 'data: {"content": "chunk 1"}\n\n' yield 'data: {"content": "chunk 2"}\n\n' yield 'data: {"content": "chunk 3"}\n\n' yield "data: [DONE]\n\n" # Patch the tracer in the common_request_processing module with patch("litellm.proxy.common_request_processing.tracer", mock_tracer): response = await create_response(mock_generator(), "text/event-stream", {}) assert response.status_code == 200 # Consume the stream to trigger the tracer calls content = await self.consume_stream(response) # Verify all chunks are present assert len(content) == 4 assert content[0] == 'data: {"content": "chunk 1"}\n\n' assert content[1] == 'data: {"content": "chunk 2"}\n\n' assert content[2] == 'data: {"content": "chunk 3"}\n\n' assert content[3] == "data: [DONE]\n\n" # Verify that tracer.trace was called for each chunk (4 chunks total) assert mock_tracer.trace.call_count == 4 # Verify that each call was made with the correct operation name expected_calls = [ (("streaming.chunk.yield",), {}), (("streaming.chunk.yield",), {}), (("streaming.chunk.yield",), {}), (("streaming.chunk.yield",), {}), ] actual_calls = mock_tracer.trace.call_args_list assert len(actual_calls) == 4 for i, call in enumerate(actual_calls): args, kwargs = call assert ( args[0] == "streaming.chunk.yield" ), f"Call {i} should have operation name 'streaming.chunk.yield', got {args[0]}" async def test_create_streaming_response_dd_trace_with_error_chunk(self): """ Test that when the first chunk contains an error, JSONResponse is returned and tracing is not triggered (since it's not a streaming response) """ from unittest.mock import patch # Create a mock tracer mock_tracer = MagicMock() mock_span = MagicMock() mock_tracer.trace.return_value.__enter__.return_value = mock_span mock_tracer.trace.return_value.__exit__.return_value = None # Mock generator with error in first chunk async def mock_generator(): yield 'data: {"error": {"code": 400, "message": "bad request"}}\n\n' yield 'data: {"content": "chunk after error"}\n\n' yield "data: [DONE]\n\n" # Patch the tracer in the common_request_processing module with patch("litellm.proxy.common_request_processing.tracer", mock_tracer): response = await create_response(mock_generator(), "text/event-stream", {}) # Should return JSONResponse instead of StreamingResponse assert isinstance(response, JSONResponse) assert response.status_code == 400 # Verify the response is in standard JSON error format import json body = json.loads(response.body.decode()) assert "error" in body assert body["error"]["code"] == 400 assert body["error"]["message"] == "bad request" # Since JSONResponse is returned instead of StreamingResponse, streaming tracing should not be triggered # tracer.trace should not be called assert mock_tracer.trace.call_count == 0 class TestExtractErrorFromSSEChunk: """Tests for _extract_error_from_sse_chunk function""" def test_extract_error_from_sse_chunk_with_valid_error(self): """Test extracting error information from a standard SSE chunk""" chunk = 'data: {"error": {"code": 403, "message": "forbidden", "type": "auth_error", "param": "api_key"}}\n\n' error = _extract_error_from_sse_chunk(chunk) assert error["code"] == 403 assert error["message"] == "forbidden" assert error["type"] == "auth_error" assert error["param"] == "api_key" def test_extract_error_from_sse_chunk_with_string_code(self): """Test error code as string type""" chunk = 'data: {"error": {"code": "429", "message": "too many requests"}}\n\n' error = _extract_error_from_sse_chunk(chunk) assert error["code"] == "429" assert error["message"] == "too many requests" def test_extract_error_from_sse_chunk_with_bytes(self): """Test input as bytes type""" chunk = b'data: {"error": {"code": 500, "message": "internal error"}}\n\n' error = _extract_error_from_sse_chunk(chunk) assert error["code"] == 500 assert error["message"] == "internal error" def test_extract_error_from_sse_chunk_with_done(self): """Test [DONE] marker should return default error""" chunk = "data: [DONE]\n\n" error = _extract_error_from_sse_chunk(chunk) assert error["message"] == "Unknown error" assert error["type"] == "internal_server_error" assert error["code"] == "500" assert error["param"] is None def test_extract_error_from_sse_chunk_without_error_field(self): """Test missing error field should return default error""" chunk = 'data: {"content": "some content"}\n\n' error = _extract_error_from_sse_chunk(chunk) assert error["message"] == "Unknown error" assert error["type"] == "internal_server_error" assert error["code"] == "500" def test_extract_error_from_sse_chunk_with_invalid_json(self): """Test invalid JSON should return default error""" chunk = "data: {invalid json}\n\n" error = _extract_error_from_sse_chunk(chunk) assert error["message"] == "Unknown error" assert error["type"] == "internal_server_error" assert error["code"] == "500" def test_extract_error_from_sse_chunk_without_data_prefix(self): """Test missing 'data:' prefix should return default error""" chunk = '{"error": {"code": 400, "message": "bad request"}}\n\n' error = _extract_error_from_sse_chunk(chunk) assert error["message"] == "Unknown error" assert error["type"] == "internal_server_error" assert error["code"] == "500" def test_extract_error_from_sse_chunk_with_empty_string(self): """Test empty string should return default error""" chunk = "" error = _extract_error_from_sse_chunk(chunk) assert error["message"] == "Unknown error" assert error["type"] == "internal_server_error" assert error["code"] == "500" def test_extract_error_from_sse_chunk_with_minimal_error(self): """Test minimal error object""" chunk = 'data: {"error": {"message": "error occurred"}}\n\n' error = _extract_error_from_sse_chunk(chunk) assert error["message"] == "error occurred" # Other fields should be obtained from the original error object (if exists) class TestOverrideOpenAIResponseModel: """Tests for _override_openai_response_model function""" def test_override_model_preserves_fallback_model_when_fallback_occurred_object( self, ): """ Test that when a fallback occurred (x-litellm-attempted-fallbacks > 0), the actual model used (fallback model) is preserved instead of being overridden with the requested model. This is the regression test to ensure the model being called is properly displayed when a fallback happens. """ requested_model = "gpt-4" fallback_model = "gpt-3.5-turbo" # Create a mock object response with fallback model # _hidden_params is an attribute (not a dict key) accessed via getattr response_obj = MagicMock() response_obj.model = fallback_model response_obj._hidden_params = { "additional_headers": {"x-litellm-attempted-fallbacks": 1} } # Call the function - should preserve fallback model _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) # Verify the model was NOT overridden - should still be the fallback model assert response_obj.model == fallback_model assert response_obj.model != requested_model def test_override_model_preserves_fallback_model_multiple_fallbacks(self): """ Test that when multiple fallbacks occurred, the actual model used (fallback model) is preserved. """ requested_model = "gpt-4" fallback_model = "claude-haiku-4-5-20251001" # Create a mock object response with fallback model response_obj = MagicMock() response_obj.model = fallback_model response_obj._hidden_params = { "additional_headers": { "x-litellm-attempted-fallbacks": 2 # Multiple fallbacks } } # Call the function - should preserve fallback model _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) # Verify the model was NOT overridden - should still be the fallback model assert response_obj.model == fallback_model assert response_obj.model != requested_model def test_override_model_overrides_when_no_fallback_dict(self): """ Test that when no fallback occurred, the model is overridden to match the requested model (dict response). """ requested_model = "gpt-4" downstream_model = "gpt-3.5-turbo" # Create a dict response without fallback # For dict responses, _hidden_params won't be found via getattr, # so the fallback check won't trigger and model will be overridden response_obj = {"model": downstream_model} # Call the function - should override to requested model _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) # Verify the model WAS overridden to requested model assert response_obj["model"] == requested_model def test_override_model_overrides_when_no_fallback_object(self): """ Test that when no fallback occurred (object response), the model is overridden to match the requested model. """ requested_model = "gpt-4" downstream_model = "gpt-3.5-turbo" # Create a mock object response without fallback response_obj = MagicMock() response_obj.model = downstream_model response_obj._hidden_params = { "additional_headers": {} # No attempted_fallbacks header } # Call the function - should override to requested model _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) # Verify the model WAS overridden to requested model assert response_obj.model == requested_model def test_override_model_overrides_when_attempted_fallbacks_is_zero(self): """ Test that when attempted_fallbacks is 0 (no fallback occurred), the model is overridden to match the requested model. """ requested_model = "gpt-4" downstream_model = "gpt-3.5-turbo" # Create a mock object response response_obj = MagicMock() response_obj.model = downstream_model response_obj._hidden_params = { "additional_headers": { "x-litellm-attempted-fallbacks": 0 # Zero means no fallback occurred } } # Call the function - should override to requested model _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) # Verify the model WAS overridden to requested model assert response_obj.model == requested_model def test_override_model_overrides_when_attempted_fallbacks_is_none(self): """ Test that when attempted_fallbacks is None (not set), the model is overridden to match the requested model. """ requested_model = "gpt-4" downstream_model = "gpt-3.5-turbo" # Create a mock object response response_obj = MagicMock() response_obj.model = downstream_model response_obj._hidden_params = { "additional_headers": {"x-litellm-attempted-fallbacks": None} } # Call the function - should override to requested model _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) # Verify the model WAS overridden to requested model assert response_obj.model == requested_model def test_override_model_no_hidden_params(self): """ Test that when _hidden_params is not present, the model is overridden to match the requested model. """ requested_model = "gpt-4" downstream_model = "gpt-3.5-turbo" # Create a mock object response without _hidden_params response_obj = MagicMock() response_obj.model = downstream_model # Don't set _hidden_params - getattr will return {} # Call the function - should override to requested model _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) # Verify the model WAS overridden to requested model assert response_obj.model == requested_model def test_override_model_no_requested_model(self): """ Test that when requested_model is None or empty, the function returns early without modifying the response. """ fallback_model = "gpt-3.5-turbo" # Create a mock object response response_obj = MagicMock() response_obj.model = fallback_model response_obj._hidden_params = { "additional_headers": {"x-litellm-attempted-fallbacks": 1} } # Call the function with None requested_model _override_openai_response_model( response_obj=response_obj, requested_model=None, log_context="test_context", ) # Verify the model was not changed assert response_obj.model == fallback_model # Call with empty string _override_openai_response_model( response_obj=response_obj, requested_model="", log_context="test_context", ) # Verify the model was not changed assert response_obj.model == fallback_model def test_override_model_preserves_azure_model_router_actual_model(self): """ Test that when the requested model is an Azure Model Router, the actual model used (returned in the response) is preserved instead of being overridden. """ requested_model = "azure_ai/model_router" actual_model_used = "azure_ai/gpt-5-nano-2025-08-07" response_obj = MagicMock() response_obj.model = actual_model_used response_obj._hidden_params = {"additional_headers": {}} _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) assert response_obj.model == actual_model_used assert response_obj.model != requested_model def test_override_model_preserves_azure_model_router_with_deployment_name(self): """ Test that Azure Model Router with deployment name pattern also preserves the actual model used. """ requested_model = "azure_ai/model_router/my-deployment" actual_model_used = "azure_ai/gpt-4.1-nano-2025-04-14" response_obj = MagicMock() response_obj.model = actual_model_used response_obj._hidden_params = {"additional_headers": {}} _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) assert response_obj.model == actual_model_used assert response_obj.model != requested_model def test_override_model_preserves_azure_model_router_with_hyphen(self): """ Test that Azure Model Router with hyphen pattern (model-router) also preserves the actual model used. """ requested_model = "azure_ai/model-router" actual_model_used = "azure_ai/gpt-5-nano-2025-08-07" response_obj = MagicMock() response_obj.model = actual_model_used response_obj._hidden_params = {"additional_headers": {}} _override_openai_response_model( response_obj=response_obj, requested_model=requested_model, log_context="test_context", ) assert response_obj.model == actual_model_used assert response_obj.model != requested_model class TestIsAzureModelRouterRequest: """Tests for _is_azure_model_router_request helper""" def test_detects_model_router_with_underscore(self): assert _is_azure_model_router_request("azure_ai/model_router") is True assert _is_azure_model_router_request("azure_ai/model_router/my-deployment") is True def test_detects_model_router_with_hyphen(self): assert _is_azure_model_router_request("azure_ai/model-router") is True assert _is_azure_model_router_request("model-router") is True def test_rejects_regular_models(self): assert _is_azure_model_router_request("azure_ai/gpt-4") is False assert _is_azure_model_router_request("gpt-4") is False assert _is_azure_model_router_request("openai/gpt-3.5-turbo") is False class TestStreamingOverheadHeader: """ Tests that x-litellm-overhead-duration-ms is emitted in streaming responses. Regression tests for: streaming requests not including overhead header. """ def test_get_custom_headers_includes_overhead_when_set(self): """ get_custom_headers() returns x-litellm-overhead-duration-ms when litellm_overhead_time_ms is in hidden_params. """ mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0.0 mock_user_api_key_dict.allowed_model_region = None hidden_params = { "litellm_overhead_time_ms": 42.5, "_response_ms": 500.0, "model_id": "test-model-id", "api_base": "https://api.openai.com", } headers = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id", model_id="test-model-id", cache_key="", api_base="https://api.openai.com", version="1.0.0", response_cost=0.001, model_region="", hidden_params=hidden_params, ) assert "x-litellm-overhead-duration-ms" in headers assert headers["x-litellm-overhead-duration-ms"] == "42.5" def test_get_custom_headers_omits_overhead_when_none(self): """ get_custom_headers() omits x-litellm-overhead-duration-ms when litellm_overhead_time_ms is not in hidden_params. """ mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0.0 mock_user_api_key_dict.allowed_model_region = None hidden_params = { "_response_ms": 500.0, "model_id": "test-model-id", } headers = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id", model_id="test-model-id", cache_key="", api_base="https://api.openai.com", version="1.0.0", response_cost=0.001, model_region="", hidden_params=hidden_params, ) # Should be absent (None gets filtered by exclude_values) assert "x-litellm-overhead-duration-ms" not in headers def test_update_response_metadata_sets_overhead_on_stream_wrapper(self): """ update_response_metadata() sets litellm_overhead_time_ms on a streaming response's _hidden_params when llm_api_duration_ms is available. """ from litellm.litellm_core_utils.llm_response_utils.response_metadata import ( update_response_metadata, ) # Mock the logging object with llm_api_duration_ms set mock_logging_obj = MagicMock() mock_logging_obj.model_call_details = { "llm_api_duration_ms": 200.0, "litellm_params": {}, } mock_logging_obj.caching_details = None mock_logging_obj.callback_duration_ms = None mock_logging_obj.litellm_call_id = "test-call-id" mock_logging_obj._response_cost_calculator = MagicMock(return_value=0.001) # Simulate a streaming result object with _hidden_params (like CustomStreamWrapper) stream_result = MagicMock() stream_result._hidden_params = { "model_id": "test-model-id", "api_base": "https://api.openai.com", "additional_headers": {}, } start_time = datetime.datetime.now() - datetime.timedelta(milliseconds=300) end_time = datetime.datetime.now() update_response_metadata( result=stream_result, logging_obj=mock_logging_obj, model="gpt-4o", kwargs={}, start_time=start_time, end_time=end_time, ) assert "litellm_overhead_time_ms" in stream_result._hidden_params overhead = stream_result._hidden_params["litellm_overhead_time_ms"] assert overhead is not None assert isinstance(overhead, float) # overhead = total_response_ms (~300ms) - llm_api_duration_ms (200ms) = ~100ms assert overhead > 0 @pytest.mark.asyncio async def test_streaming_response_includes_overhead_header(self): """ StreamingResponse returned by create_response() includes x-litellm-overhead-duration-ms in its headers. """ async def mock_generator() -> AsyncGenerator[str, None]: yield 'data: {"id":"chatcmpl-test","choices":[{"delta":{"content":"hi"}}]}\n\n' yield "data: [DONE]\n\n" headers = { "x-litellm-overhead-duration-ms": "42.5", "x-litellm-call-id": "test-call-id", "x-litellm-model-id": "test-model-id", } response = await create_response( generator=mock_generator(), media_type="text/event-stream", headers=headers, ) assert isinstance(response, StreamingResponse) assert response.headers.get("x-litellm-overhead-duration-ms") == "42.5" def test_streaming_overhead_header_in_custom_headers_from_stream_hidden_params( self, ): """ Verifies that when get_custom_headers() is called with a streaming response's hidden_params (containing litellm_overhead_time_ms), the x-litellm-overhead-duration-ms header is correctly populated. This tests the critical path: update_response_metadata sets the value → get_custom_headers reads it → StreamingResponse header is set. """ mock_user_api_key_dict = MagicMock(spec=UserAPIKeyAuth) mock_user_api_key_dict.tpm_limit = None mock_user_api_key_dict.rpm_limit = None mock_user_api_key_dict.max_budget = None mock_user_api_key_dict.spend = 0.0 mock_user_api_key_dict.allowed_model_region = None # This is what CustomStreamWrapper._hidden_params looks like after # update_response_metadata() has been called on it hidden_params = { "model_id": "openai-gpt4o-deployment", "api_base": "https://api.openai.com", "additional_headers": {}, "litellm_overhead_time_ms": 55.3, # set by update_response_metadata "_response_ms": 280.0, "litellm_call_id": "test-call-id", "response_cost": 0.002, "cache_key": None, "fastest_response_batch_completion": None, "callback_duration_ms": None, } custom_headers = ProxyBaseLLMRequestProcessing.get_custom_headers( user_api_key_dict=mock_user_api_key_dict, call_id="test-call-id", model_id=hidden_params.get("model_id"), cache_key=hidden_params.get("cache_key") or "", api_base=hidden_params.get("api_base") or "", version="1.0.0", response_cost=hidden_params.get("response_cost"), model_region="", hidden_params=hidden_params, ) # The overhead header must be present and correct assert "x-litellm-overhead-duration-ms" in custom_headers, ( "x-litellm-overhead-duration-ms header must be emitted during streaming. " "It was missing — this is the streaming overhead header regression." ) assert custom_headers["x-litellm-overhead-duration-ms"] == "55.3" class TestDDSpanTaggerTagRequest: """Tests for DDSpanTagger.tag_request - key/model DD span tagging.""" def _make_user_api_key_dict(self, key_alias=None, token=None): from litellm.proxy._types import UserAPIKeyAuth d = UserAPIKeyAuth() d.key_alias = key_alias d.token = token return d def test_tags_key_alias_and_model(self): """key_alias and requested_model are set on the span when present.""" user_key = self._make_user_api_key_dict(key_alias="my-prod-key", token="hashed123") with patch( "litellm.proxy.dd_span_tagger.set_active_span_tag" ) as mock_set_tag: DDSpanTagger.tag_request( user_api_key_dict=user_key, requested_model="gpt-4o", ) mock_set_tag.assert_any_call("litellm.key_alias", "my-prod-key") mock_set_tag.assert_any_call("litellm.key_hash", "hashed123") mock_set_tag.assert_any_call("litellm.requested_model", "gpt-4o") def test_no_tags_when_key_absent(self): """No key tags are set when key_alias and token are None (e.g. 401 path).""" user_key = self._make_user_api_key_dict(key_alias=None, token=None) with patch( "litellm.proxy.dd_span_tagger.set_active_span_tag" ) as mock_set_tag: DDSpanTagger.tag_request( user_api_key_dict=user_key, requested_model=None, ) mock_set_tag.assert_not_called() def test_only_model_tagged_when_no_key_info(self): """requested_model is tagged even when there's no key info.""" user_key = self._make_user_api_key_dict(key_alias=None, token=None) with patch( "litellm.proxy.dd_span_tagger.set_active_span_tag" ) as mock_set_tag: DDSpanTagger.tag_request( user_api_key_dict=user_key, requested_model="claude-3-5-sonnet", ) mock_set_tag.assert_called_once_with("litellm.requested_model", "claude-3-5-sonnet") class TestHasAttributeErrorInChain: """Tests for _has_attribute_error_in_chain helper.""" def test_direct_attribute_error(self): exc = AttributeError("'str' object has no attribute 'get'") assert _has_attribute_error_in_chain(exc) is True def test_no_attribute_error(self): exc = ValueError("some other error") assert _has_attribute_error_in_chain(exc) is False def test_attribute_error_in_cause(self): inner = AttributeError("bad attribute") outer = RuntimeError("wrapper") outer.__cause__ = inner assert _has_attribute_error_in_chain(outer) is True def test_attribute_error_in_context(self): inner = AttributeError("bad attribute") outer = RuntimeError("wrapper") outer.__context__ = inner assert _has_attribute_error_in_chain(outer) is True def test_attribute_error_in_original_exception(self): inner = AttributeError("bad attribute") outer = RuntimeError("wrapper") outer.original_exception = inner # type: ignore assert _has_attribute_error_in_chain(outer) is True def test_attribute_error_nested_two_levels(self): """Simulates the real failure: AttributeError -> OpenAIException -> APIConnectionError.""" attr_err = AttributeError("'str' object has no attribute 'get'") mid = Exception("OpenAIException wrapper") mid.__context__ = attr_err outer = Exception("APIConnectionError wrapper") outer.__context__ = mid assert _has_attribute_error_in_chain(outer) is True def test_depth_limit_prevents_infinite_loop(self): """Ensure circular references don't cause infinite recursion.""" exc_a = RuntimeError("a") exc_b = RuntimeError("b") exc_a.__context__ = exc_b exc_b.__context__ = exc_a # circular assert _has_attribute_error_in_chain(exc_a) is False