llama-stack-mirror/tests/unit/providers/inference/test_litellm_openai_mixin.py
Sumanth Kamenani bd35aa4d78
feat: enable streaming usage metrics for OpenAI-compatible providers (#4326)
Inject `stream_options={"include_usage": True} `when streaming and
OpenTelemetry telemetry is active. Telemetry always overrides any caller
preference to ensure complete and consistent observability metrics.

Changes:
- Add conditional stream_options injection to OpenAIMixin (benefits
OpenAI, Bedrock, Runpod, Together, Fireworks providers)
- Add conditional stream_options injection to LiteLLMOpenAIMixin
(benefits WatsonX and other litellm-based providers)
- Check telemetry status using trace.get_current_span().is_recording()
- Override include_usage=False when telemetry active to prevent metric
gaps
- Unit tests for this functionality

Fixes #3981

Note: this work originated in PR #4200, which I closed after rebasing on
the telemetry changes. This PR rebases those commits, incorporates the
Bedrock feedback, and carries forward the same scope described there.
## Test Plan
#### OpenAIMixin + telemetry injection tests 
PYTHONPATH=src python -m pytest
tests/unit/providers/utils/inference/test_openai_mixin.py

#### LiteLLM OpenAIMixin tests
PYTHONPATH=src python -m pytest
tests/unit/providers/inference/test_litellm_openai_mixin.py -v

#### Broader inference provider
PYTHONPATH=src python -m pytest tests/unit/providers/inference/
--ignore=tests/unit/providers/inference/test_inference_client_caching.py
-v
2025-12-19 15:53:53 -08:00

281 lines
13 KiB
Python

# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
import json
from unittest.mock import AsyncMock, MagicMock, patch
import pytest
from pydantic import BaseModel, Field
from llama_stack.core.request_headers import request_provider_data_context
from llama_stack.providers.utils.inference.litellm_openai_mixin import LiteLLMOpenAIMixin
from llama_stack_api import (
OpenAIChatCompletionRequestWithExtraBody,
OpenAICompletionRequestWithExtraBody,
OpenAIUserMessageParam,
)
# Test fixtures and helper classes
class FakeConfig(BaseModel):
api_key: str | None = Field(default=None)
class FakeProviderDataValidator(BaseModel):
test_api_key: str | None = Field(default=None)
class FakeLiteLLMAdapter(LiteLLMOpenAIMixin):
def __init__(self, config: FakeConfig):
super().__init__(
litellm_provider_name="test",
api_key_from_config=config.api_key,
provider_data_api_key_field="test_api_key",
openai_compat_api_base=None,
)
@pytest.fixture
def adapter_with_config_key():
"""Fixture to create adapter with API key in config"""
config = FakeConfig(api_key="config-api-key")
adapter = FakeLiteLLMAdapter(config)
adapter.__provider_spec__ = MagicMock()
adapter.__provider_spec__.provider_data_validator = (
"tests.unit.providers.inference.test_litellm_openai_mixin.FakeProviderDataValidator"
)
return adapter
@pytest.fixture
def adapter_without_config_key():
"""Fixture to create adapter without API key in config"""
config = FakeConfig(api_key=None)
adapter = FakeLiteLLMAdapter(config)
adapter.__provider_spec__ = MagicMock()
adapter.__provider_spec__.provider_data_validator = (
"tests.unit.providers.inference.test_litellm_openai_mixin.FakeProviderDataValidator"
)
return adapter
def test_api_key_from_config_when_no_provider_data(adapter_with_config_key):
"""Test that adapter uses config API key when no provider data is available"""
api_key = adapter_with_config_key.get_api_key()
assert api_key == "config-api-key"
def test_provider_data_takes_priority_over_config(adapter_with_config_key):
"""Test that provider data API key overrides config API key"""
with request_provider_data_context(
{"x-llamastack-provider-data": json.dumps({"test_api_key": "provider-data-key"})}
):
api_key = adapter_with_config_key.get_api_key()
assert api_key == "provider-data-key"
def test_fallback_to_config_when_provider_data_missing_key(adapter_with_config_key):
"""Test fallback to config when provider data doesn't have the required key"""
with request_provider_data_context({"x-llamastack-provider-data": json.dumps({"wrong_key": "some-value"})}):
api_key = adapter_with_config_key.get_api_key()
assert api_key == "config-api-key"
def test_error_when_no_api_key_available(adapter_without_config_key):
"""Test that ValueError is raised when neither config nor provider data have API key"""
with pytest.raises(ValueError, match="API key is not set"):
adapter_without_config_key.get_api_key()
def test_error_when_provider_data_has_wrong_key(adapter_without_config_key):
"""Test that ValueError is raised when provider data exists but doesn't have required key"""
with request_provider_data_context({"x-llamastack-provider-data": json.dumps({"wrong_key": "some-value"})}):
with pytest.raises(ValueError, match="API key is not set"):
adapter_without_config_key.get_api_key()
def test_provider_data_works_when_config_is_none(adapter_without_config_key):
"""Test that provider data works even when config has no API key"""
with request_provider_data_context(
{"x-llamastack-provider-data": json.dumps({"test_api_key": "provider-only-key"})}
):
api_key = adapter_without_config_key.get_api_key()
assert api_key == "provider-only-key"
def test_error_message_includes_correct_field_names(adapter_without_config_key):
"""Test that error message includes correct field name and header information"""
try:
adapter_without_config_key.get_api_key()
raise AssertionError("Should have raised ValueError")
except ValueError as e:
assert "test_api_key" in str(e) # Should mention the correct field name
assert "x-llamastack-provider-data" in str(e) # Should mention header name
class TestLiteLLMOpenAIMixinStreamOptionsInjection:
"""Test cases for automatic stream_options injection in LiteLLMOpenAIMixin"""
@pytest.fixture
def mixin_with_model_store(self, adapter_with_config_key):
"""Fixture to create adapter with mocked model store"""
mock_model_store = AsyncMock()
mock_model = MagicMock()
mock_model.provider_resource_id = "test-model-id"
mock_model_store.get_model = AsyncMock(return_value=mock_model)
adapter_with_config_key.model_store = mock_model_store
return adapter_with_config_key
async def test_chat_completion_injects_stream_options_when_telemetry_active(self, mixin_with_model_store):
"""Test that stream_options is injected for streaming chat completion when telemetry is active"""
mock_span = MagicMock()
mock_span.is_recording.return_value = True
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.acompletion", new_callable=AsyncMock) as mock_acompletion:
mock_acompletion.return_value = MagicMock()
await mixin_with_model_store.openai_chat_completion(
OpenAIChatCompletionRequestWithExtraBody(
model="test-model", messages=[OpenAIUserMessageParam(role="user", content="Hello")], stream=True
)
)
mock_acompletion.assert_called_once()
call_kwargs = mock_acompletion.call_args[1]
assert call_kwargs["stream_options"] == {"include_usage": True}
async def test_chat_completion_preserves_existing_stream_options(self, mixin_with_model_store):
"""Test that existing stream_options are preserved with include_usage added"""
mock_span = MagicMock()
mock_span.is_recording.return_value = True
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.acompletion", new_callable=AsyncMock) as mock_acompletion:
mock_acompletion.return_value = MagicMock()
await mixin_with_model_store.openai_chat_completion(
OpenAIChatCompletionRequestWithExtraBody(
model="test-model",
messages=[OpenAIUserMessageParam(role="user", content="Hello")],
stream=True,
stream_options={"other_option": True},
)
)
call_kwargs = mock_acompletion.call_args[1]
assert call_kwargs["stream_options"] == {"other_option": True, "include_usage": True}
async def test_chat_completion_no_injection_when_telemetry_inactive(self, mixin_with_model_store):
"""Test that stream_options is NOT injected when telemetry is inactive"""
mock_span = MagicMock()
mock_span.is_recording.return_value = False
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.acompletion", new_callable=AsyncMock) as mock_acompletion:
mock_acompletion.return_value = MagicMock()
await mixin_with_model_store.openai_chat_completion(
OpenAIChatCompletionRequestWithExtraBody(
model="test-model", messages=[OpenAIUserMessageParam(role="user", content="Hello")], stream=True
)
)
call_kwargs = mock_acompletion.call_args[1]
assert "stream_options" not in call_kwargs or call_kwargs["stream_options"] is None
async def test_chat_completion_no_injection_when_not_streaming(self, mixin_with_model_store):
"""Test that stream_options is NOT injected for non-streaming requests"""
mock_span = MagicMock()
mock_span.is_recording.return_value = True
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.acompletion", new_callable=AsyncMock) as mock_acompletion:
mock_acompletion.return_value = MagicMock()
await mixin_with_model_store.openai_chat_completion(
OpenAIChatCompletionRequestWithExtraBody(
model="test-model",
messages=[OpenAIUserMessageParam(role="user", content="Hello")],
stream=False,
)
)
call_kwargs = mock_acompletion.call_args[1]
assert "stream_options" not in call_kwargs or call_kwargs["stream_options"] is None
async def test_completion_injects_stream_options_when_telemetry_active(self, mixin_with_model_store):
"""Test that stream_options is injected for streaming completion when telemetry is active"""
mock_span = MagicMock()
mock_span.is_recording.return_value = True
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.atext_completion", new_callable=AsyncMock) as mock_atext_completion:
mock_atext_completion.return_value = MagicMock()
await mixin_with_model_store.openai_completion(
OpenAICompletionRequestWithExtraBody(model="test-model", prompt="Hello", stream=True)
)
mock_atext_completion.assert_called_once()
call_kwargs = mock_atext_completion.call_args[1]
assert call_kwargs["stream_options"] == {"include_usage": True}
async def test_completion_no_injection_when_telemetry_inactive(self, mixin_with_model_store):
"""Test that stream_options is NOT injected for completion when telemetry is inactive"""
mock_span = MagicMock()
mock_span.is_recording.return_value = False
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.atext_completion", new_callable=AsyncMock) as mock_atext_completion:
mock_atext_completion.return_value = MagicMock()
await mixin_with_model_store.openai_completion(
OpenAICompletionRequestWithExtraBody(model="test-model", prompt="Hello", stream=True)
)
call_kwargs = mock_atext_completion.call_args[1]
assert "stream_options" not in call_kwargs or call_kwargs["stream_options"] is None
async def test_original_params_not_mutated(self, mixin_with_model_store):
"""Test that original params object is not mutated when stream_options is injected"""
mock_span = MagicMock()
mock_span.is_recording.return_value = True
original_params = OpenAIChatCompletionRequestWithExtraBody(
model="test-model", messages=[OpenAIUserMessageParam(role="user", content="Hello")], stream=True
)
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.acompletion", new_callable=AsyncMock) as mock_acompletion:
mock_acompletion.return_value = MagicMock()
await mixin_with_model_store.openai_chat_completion(original_params)
# Original params should not be modified
assert original_params.stream_options is None
async def test_chat_completion_overrides_include_usage_false(self, mixin_with_model_store):
"""Test that include_usage=False is overridden when telemetry is active"""
mock_span = MagicMock()
mock_span.is_recording.return_value = True
with patch("opentelemetry.trace.get_current_span", return_value=mock_span):
with patch("litellm.acompletion", new_callable=AsyncMock) as mock_acompletion:
mock_acompletion.return_value = MagicMock()
await mixin_with_model_store.openai_chat_completion(
OpenAIChatCompletionRequestWithExtraBody(
model="test-model",
messages=[OpenAIUserMessageParam(role="user", content="Hello")],
stream=True,
stream_options={"include_usage": False},
)
)
call_kwargs = mock_acompletion.call_args[1]
# Telemetry must override False to ensure complete metrics
assert call_kwargs["stream_options"]["include_usage"] is True