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chore: import upstream snapshot with attribution
2026-07-13 13:25:13 +08:00

262 lines
9.1 KiB
Python

# Copyright 2026 Google LLC
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# pylint: disable=protected-access
from unittest import mock
from google.adk.telemetry import _metrics
from google.genai import types
from opentelemetry import metrics
import pytest
@pytest.fixture(name="mock_meter_setup")
def _mock_meter_setup(monkeypatch):
"""Sets up mock meter and histograms for testing."""
mock_meter = mock.MagicMock()
agent_duration_hist = mock.MagicMock(spec=metrics.Histogram)
workflow_duration_hist = mock.MagicMock(spec=metrics.Histogram)
tool_duration_hist = mock.MagicMock(spec=metrics.Histogram)
client_duration_hist = mock.MagicMock(spec=metrics.Histogram)
client_token_usage_hist = mock.MagicMock(spec=metrics.Histogram)
agent_duration_hist.name = "agent_invocation_duration"
workflow_duration_hist.name = "workflow_invocation_duration"
tool_duration_hist.name = "tool_execution_duration"
client_duration_hist.name = "client_operation_duration"
client_token_usage_hist.name = "client_token_usage"
def create_histogram_side_effect(name, **_kwargs):
if name == "gen_ai.invoke_agent.duration":
return agent_duration_hist
elif name == "gen_ai.invoke_workflow.duration":
return workflow_duration_hist
elif name == "gen_ai.execute_tool.duration":
return tool_duration_hist
elif name == "gen_ai.client.operation.duration":
return client_duration_hist
elif name == "gen_ai.client.token.usage":
return client_token_usage_hist
raise ValueError(f"Unknown metric name: {name}")
mock_meter.create_histogram.side_effect = create_histogram_side_effect
# Re-initialize the module-level variables in _metrics with mocked histograms
monkeypatch.setattr(_metrics, "meter", mock_meter)
monkeypatch.setattr(
_metrics, "_agent_invocation_duration", agent_duration_hist
)
monkeypatch.setattr(
_metrics, "_workflow_invocation_duration", workflow_duration_hist
)
monkeypatch.setattr(_metrics, "_tool_execution_duration", tool_duration_hist)
monkeypatch.setattr(
_metrics, "_client_operation_duration", client_duration_hist
)
monkeypatch.setattr(_metrics, "_client_token_usage", client_token_usage_hist)
return {
"meter": mock_meter,
"agent_duration": agent_duration_hist,
"workflow_duration": workflow_duration_hist,
"tool_duration": tool_duration_hist,
"client_duration": client_duration_hist,
"client_token_usage": client_token_usage_hist,
}
def test_record_agent_invocation_duration(mock_meter_setup):
"""Tests record_agent_invocation_duration records correctly."""
_metrics.record_agent_invocation_duration(
"test_agent",
1.0,
)
agent_duration_hist = mock_meter_setup["agent_duration"]
agent_duration_hist.record.assert_called_once()
args, kwargs = agent_duration_hist.record.call_args
assert args[0] == 1.0
want_attributes = {"gen_ai.agent.name": "test_agent"}
assert kwargs["attributes"] == want_attributes
def test_record_agent_invocation_duration_with_error(mock_meter_setup):
"""Tests record_agent_invocation_duration records error correctly."""
test_error = ValueError("agent failed")
_metrics.record_agent_invocation_duration(
"test_agent",
1.0,
error=test_error,
)
agent_duration_hist = mock_meter_setup["agent_duration"]
agent_duration_hist.record.assert_called_once()
_, kwargs = agent_duration_hist.record.call_args
assert kwargs["attributes"]["error.type"] == "ValueError"
def test_record_workflow_invocation_duration_root(mock_meter_setup):
"""Tests record_workflow_invocation_duration omits nested for the root."""
_metrics.record_workflow_invocation_duration(
workflow_name="my_workflow",
elapsed_s=1.0,
nested=False,
)
hist = mock_meter_setup["workflow_duration"]
hist.record.assert_called_once()
args, kwargs = hist.record.call_args
assert args[0] == 1.0
assert kwargs["attributes"] == {
"gen_ai.operation.name": "invoke_workflow",
"gen_ai.workflow.name": "my_workflow",
}
def test_record_workflow_invocation_duration_nested_with_error(
mock_meter_setup,
):
"""Tests record_workflow_invocation_duration records nested + error."""
_metrics.record_workflow_invocation_duration(
workflow_name="nested_workflow",
elapsed_s=2.0,
nested=True,
error=ValueError("boom"),
)
hist = mock_meter_setup["workflow_duration"]
hist.record.assert_called_once()
_, kwargs = hist.record.call_args
assert kwargs["attributes"]["gen_ai.workflow.nested"] is True
assert kwargs["attributes"]["error.type"] == "ValueError"
def test_record_tool_execution_duration(mock_meter_setup):
"""Tests record_tool_execution_duration records correctly."""
_metrics.record_tool_execution_duration(
"test_tool",
"test_tool_type",
"test_agent",
0.5,
)
tool_duration_hist = mock_meter_setup["tool_duration"]
tool_duration_hist.record.assert_called_once()
args, kwargs = tool_duration_hist.record.call_args
assert args[0] == 0.5
want_attributes = {
"gen_ai.agent.name": "test_agent",
"gen_ai.tool.name": "test_tool",
"gen_ai.tool.type": "test_tool_type",
}
assert kwargs["attributes"] == want_attributes
def test_record_tool_execution_duration_with_error(mock_meter_setup):
"""Tests record_tool_execution_duration records error correctly."""
test_error = ValueError("tool failed")
_metrics.record_tool_execution_duration(
"test_tool",
"test_tool_type",
"test_agent",
0.5,
error=test_error,
)
tool_duration_hist = mock_meter_setup["tool_duration"]
tool_duration_hist.record.assert_called_once()
_, kwargs = tool_duration_hist.record.call_args
assert kwargs["attributes"]["error.type"] == "ValueError"
def test_record_client_operation_duration(mock_meter_setup):
"""Tests record_client_operation_duration records correctly."""
llm_request = mock.MagicMock(
contents=[types.Content(parts=[types.Part(text="hello")])]
)
response = mock.MagicMock(
content=types.Content(parts=[types.Part(text="hello response")])
)
_metrics.record_client_operation_duration(
agent_name="test_agent",
elapsed_s=0.1,
llm_request=llm_request,
responses=[response],
)
client_duration_hist = mock_meter_setup["client_duration"]
client_duration_hist.record.assert_called_once()
args, kwargs = client_duration_hist.record.call_args
assert args[0] == 0.1
want_attributes = {
"gen_ai.agent.name": "test_agent",
"gen_ai.operation.name": "generate_content",
"gen_ai.provider.name": "gemini",
"gen_ai.request.model": llm_request.model,
"gen_ai.response.model": response.model_version,
}
assert kwargs["attributes"] == want_attributes
def test_record_client_token_usage(mock_meter_setup):
"""Tests record_client_token_usage records correctly under different usage conditions."""
llm_request = mock.MagicMock(
contents=[types.Content(parts=[types.Part(text="hello")])],
model="test-model",
)
response = mock.MagicMock(
content=types.Content(parts=[types.Part(text="hello response")]),
model_version="test-model-v1",
usage_metadata=types.GenerateContentResponseUsageMetadata(
prompt_token_count=20,
candidates_token_count=30,
tool_use_prompt_token_count=5,
thoughts_token_count=10,
),
)
_metrics.record_client_token_usage(
agent_name="test_agent",
llm_request=llm_request,
responses=[response],
)
client_token_usage_hist = mock_meter_setup["client_token_usage"]
assert client_token_usage_hist.record.call_count == 2
base_attributes = {
"gen_ai.agent.name": "test_agent",
"gen_ai.operation.name": "generate_content",
"gen_ai.provider.name": "gemini",
"gen_ai.request.model": "test-model",
"gen_ai.response.model": "test-model-v1",
}
input_call = None
output_call = None
for args, kwargs in client_token_usage_hist.record.call_args_list:
token_type = kwargs.get("attributes", {}).get("gen_ai.token.type")
if token_type == "input":
input_call = (args, kwargs)
elif token_type == "output":
output_call = (args, kwargs)
assert input_call is not None, "Missing 'input' token usage record"
assert output_call is not None, "Missing 'output' token usage record"
# Verify input tokens (prompt_token_count + tool_use_prompt_token_count)
assert input_call[0][0] == 25
assert input_call[1]["attributes"] == base_attributes | {
"gen_ai.token.type": "input"
}
# Verify output tokens (candidates_token_count + thoughts_token_count)
assert output_call[0][0] == 40
assert output_call[1]["attributes"] == base_attributes | {
"gen_ai.token.type": "output"
}