"""Test data for this module was generated using real LLM provider API responses, with responses simplified and formatted to make them readable and maintainable. To update or modify test parameters: 1. Make actual API calls to the target providers 2. Use the raw API responses as a base for updating test data 3. Simplify only where necessary for readability while preserving core structure The closer test data remains to real API responses, the more reliable and accurate the tests will be. Always prefer real API data over manually constructed examples. """ from __future__ import annotations import httpx import pytest import respx from tests.backend.data import Chunk, JsonResponse, ResultData, Url from tests.backend.data.fireworks import ( SIMPLE_CONVERSATION_PARAMS as FIREWORKS_SIMPLE_CONVERSATION_PARAMS, STREAMED_SIMPLE_CONVERSATION_PARAMS as FIREWORKS_STREAMED_SIMPLE_CONVERSATION_PARAMS, STREAMED_TOOL_CONVERSATION_PARAMS as FIREWORKS_STREAMED_TOOL_CONVERSATION_PARAMS, TOOL_CONVERSATION_PARAMS as FIREWORKS_TOOL_CONVERSATION_PARAMS, ) from tests.backend.data.mistral import ( SIMPLE_CONVERSATION_PARAMS as MISTRAL_SIMPLE_CONVERSATION_PARAMS, STREAMED_SIMPLE_CONVERSATION_PARAMS as MISTRAL_STREAMED_SIMPLE_CONVERSATION_PARAMS, STREAMED_TOOL_CONVERSATION_PARAMS as MISTRAL_STREAMED_TOOL_CONVERSATION_PARAMS, TOOL_CONVERSATION_PARAMS as MISTRAL_TOOL_CONVERSATION_PARAMS, ) from vibe.core.config import Backend, ModelConfig, ProviderConfig from vibe.core.llm.backend.factory import BACKEND_FACTORY from vibe.core.llm.backend.generic import GenericBackend from vibe.core.llm.backend.mistral import MistralBackend from vibe.core.llm.exceptions import BackendError from vibe.core.llm.types import BackendLike from vibe.core.types import LLMChunk, LLMMessage, Role, ToolCall from vibe.core.utils import get_user_agent class TestBackend: @pytest.mark.asyncio @pytest.mark.parametrize( "base_url,json_response,result_data", [ *FIREWORKS_SIMPLE_CONVERSATION_PARAMS, *FIREWORKS_TOOL_CONVERSATION_PARAMS, *MISTRAL_SIMPLE_CONVERSATION_PARAMS, *MISTRAL_TOOL_CONVERSATION_PARAMS, ], ) async def test_backend_complete( self, base_url: Url, json_response: JsonResponse, result_data: ResultData ): with respx.mock(base_url=base_url) as mock_api: mock_api.post("/v1/chat/completions").mock( return_value=httpx.Response(status_code=200, json=json_response) ) provider = ProviderConfig( name="provider_name", api_base=f"{base_url}/v1", api_key_env_var="API_KEY", ) BackendClasses = [ GenericBackend, *([MistralBackend] if base_url == "https://api.mistral.ai" else []), ] for BackendClass in BackendClasses: backend: BackendLike = BackendClass(provider=provider) model = ModelConfig( name="model_name", provider="provider_name", alias="model_alias" ) messages = [LLMMessage(role=Role.user, content="Just say hi")] result = await backend.complete( model=model, messages=messages, temperature=0.2, tools=None, max_tokens=None, tool_choice=None, extra_headers=None, ) assert result.message.content == result_data["message"] assert result.finish_reason == result_data["finish_reason"] assert result.usage is not None assert ( result.usage.prompt_tokens == result_data["usage"]["prompt_tokens"] ) assert ( result.usage.completion_tokens == result_data["usage"]["completion_tokens"] ) if result.message.tool_calls is None: return assert len(result.message.tool_calls) == len(result_data["tool_calls"]) for i, tool_call in enumerate[ToolCall](result.message.tool_calls): assert ( tool_call.function.name == result_data["tool_calls"][i]["name"] ) assert ( tool_call.function.arguments == result_data["tool_calls"][i]["arguments"] ) assert tool_call.index == result_data["tool_calls"][i]["index"] @pytest.mark.asyncio @pytest.mark.parametrize( "base_url,chunks,result_data", [ *FIREWORKS_STREAMED_SIMPLE_CONVERSATION_PARAMS, *FIREWORKS_STREAMED_TOOL_CONVERSATION_PARAMS, *MISTRAL_STREAMED_SIMPLE_CONVERSATION_PARAMS, *MISTRAL_STREAMED_TOOL_CONVERSATION_PARAMS, ], ) async def test_backend_complete_streaming( self, base_url: Url, chunks: list[Chunk], result_data: list[ResultData] ): with respx.mock(base_url=base_url) as mock_api: mock_api.post("/v1/chat/completions").mock( return_value=httpx.Response( status_code=200, stream=httpx.ByteStream(stream=b"\n\n".join(chunks)), headers={"Content-Type": "text/event-stream"}, ) ) provider = ProviderConfig( name="provider_name", api_base=f"{base_url}/v1", api_key_env_var="API_KEY", ) BackendClasses = [ GenericBackend, *([MistralBackend] if base_url == "https://api.mistral.ai" else []), ] for BackendClass in BackendClasses: backend: BackendLike = BackendClass(provider=provider) model = ModelConfig( name="model_name", provider="provider_name", alias="model_alias" ) messages = [ LLMMessage(role=Role.user, content="List files in current dir") ] results: list[LLMChunk] = [] async for result in backend.complete_streaming( model=model, messages=messages, temperature=0.2, tools=None, max_tokens=None, tool_choice=None, extra_headers=None, ): results.append(result) for result, expected_result in zip(results, result_data, strict=True): assert result.message.content == expected_result["message"] assert result.finish_reason == expected_result["finish_reason"] assert result.usage is not None assert ( result.usage.prompt_tokens == expected_result["usage"]["prompt_tokens"] ) assert ( result.usage.completion_tokens == expected_result["usage"]["completion_tokens"] ) if result.message.tool_calls is None: continue for i, tool_call in enumerate(result.message.tool_calls): assert ( tool_call.function.name == expected_result["tool_calls"][i]["name"] ) assert ( tool_call.function.arguments == expected_result["tool_calls"][i]["arguments"] ) assert ( tool_call.index == expected_result["tool_calls"][i]["index"] ) @pytest.mark.asyncio @pytest.mark.parametrize( "base_url,backend_class,response", [ ( "https://api.fireworks.ai", GenericBackend, httpx.Response(status_code=500, text="Internal Server Error"), ), ( "https://api.fireworks.ai", GenericBackend, httpx.Response(status_code=429, text="Rate Limit Exceeded"), ), ( "https://api.mistral.ai", MistralBackend, httpx.Response(status_code=500, text="Internal Server Error"), ), ( "https://api.mistral.ai", MistralBackend, httpx.Response(status_code=429, text="Rate Limit Exceeded"), ), ], ) async def test_backend_complete_streaming_error( self, base_url: Url, backend_class: type[MistralBackend | GenericBackend], response: httpx.Response, ): with respx.mock(base_url=base_url) as mock_api: mock_api.post("/v1/chat/completions").mock(return_value=response) provider = ProviderConfig( name="provider_name", api_base=f"{base_url}/v1", api_key_env_var="API_KEY", ) backend = backend_class(provider=provider) model = ModelConfig( name="model_name", provider="provider_name", alias="model_alias" ) messages = [LLMMessage(role=Role.user, content="Just say hi")] with pytest.raises(BackendError) as e: async for _ in backend.complete_streaming( model=model, messages=messages, temperature=0.2, tools=None, max_tokens=None, tool_choice=None, extra_headers=None, ): pass assert e.value.status == response.status_code assert e.value.reason == response.reason_phrase assert e.value.parsed_error is None @pytest.mark.asyncio @pytest.mark.parametrize("backend_type", [Backend.MISTRAL, Backend.GENERIC]) async def test_backend_user_agent(self, backend_type: Backend): user_agent = get_user_agent(backend_type) base_url = "https://api.example.com" json_response = { "id": "fake_id_1234", "created": 1234567890, "model": "devstral-latest", "usage": { "prompt_tokens": 100, "total_tokens": 300, "completion_tokens": 200, }, "object": "chat.completion", "choices": [ { "index": 0, "finish_reason": "stop", "message": { "role": "assistant", "tool_calls": None, "content": "Hey", }, } ], } with respx.mock(base_url=base_url) as mock_api: mock_api.post("/v1/chat/completions").mock( return_value=httpx.Response(status_code=200, json=json_response) ) provider = ProviderConfig( name="provider_name", api_base=f"{base_url}/v1", api_key_env_var="API_KEY", ) backend = BACKEND_FACTORY[backend_type](provider=provider) model = ModelConfig( name="model_name", provider="provider_name", alias="model_alias" ) messages = [LLMMessage(role=Role.user, content="Just say hi")] await backend.complete( model=model, messages=messages, temperature=0.2, tools=None, max_tokens=None, tool_choice=None, extra_headers={"user-agent": user_agent}, ) assert mock_api.calls.last.request.headers["user-agent"] == user_agent @pytest.mark.asyncio @pytest.mark.parametrize("backend_type", [Backend.MISTRAL, Backend.GENERIC]) async def test_backend_user_agent_when_streaming(self, backend_type: Backend): user_agent = get_user_agent(backend_type) base_url = "https://api.example.com" with respx.mock(base_url=base_url) as mock_api: chunks = [ rb'data: {"id":"fake_id_1234","object":"chat.completion.chunk","created":1234567890,"model":"devstral-latest","choices":[{"index":0,"delta":{"role":"assistant","content":"Hey"},"finish_reason":"stop"}]}' ] mock_response = httpx.Response( status_code=200, stream=httpx.ByteStream(stream=b"\n\n".join(chunks)), headers={"Content-Type": "text/event-stream"}, ) mock_api.post("/v1/chat/completions").mock(return_value=mock_response) provider = ProviderConfig( name="provider_name", api_base=f"{base_url}/v1", api_key_env_var="API_KEY", ) backend = BACKEND_FACTORY[backend_type](provider=provider) model = ModelConfig( name="model_name", provider="provider_name", alias="model_alias" ) messages = [LLMMessage(role=Role.user, content="Just say hi")] async for _ in backend.complete_streaming( model=model, messages=messages, temperature=0.2, tools=None, max_tokens=None, tool_choice=None, extra_headers={"user-agent": user_agent}, ): pass assert mock_api.calls.last.request.headers["user-agent"] == user_agent