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266 lines
8.4 KiB
Python
266 lines
8.4 KiB
Python
# Copyright 2026 Google LLC
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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from __future__ import annotations
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import asyncio
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import sys
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from google.adk.agents.llm_agent import Agent
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from google.adk.optimization.data_types import UnstructuredSamplingResult
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from google.adk.optimization.gepa_root_agent_prompt_optimizer import _create_agent_gepa_adapter_class
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from google.adk.optimization.gepa_root_agent_prompt_optimizer import GEPARootAgentPromptOptimizer
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from google.adk.optimization.gepa_root_agent_prompt_optimizer import GEPARootAgentPromptOptimizerConfig
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from google.adk.optimization.sampler import Sampler
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import pytest
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class MockEvaluationBatch:
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def __init__(self, outputs, scores, trajectories):
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self.outputs = outputs
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self.scores = scores
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self.trajectories = trajectories
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class MockGEPAAdapter:
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"""Mock that supports generic type hints."""
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def __class_getitem__(cls, item):
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return cls
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@pytest.fixture(name="mock_gepa")
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def fixture_mock_gepa(mocker):
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# mock gepa before it gets imported by the optimizer module
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mock_gepa_module = mocker.MagicMock()
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mock_gepa_adapter = mocker.MagicMock()
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mock_gepa_adapter.EvaluationBatch = MockEvaluationBatch
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mock_gepa_adapter.GEPAAdapter = MockGEPAAdapter
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mock_gepa_module.core = mocker.MagicMock()
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mock_gepa_module.core.adapter = mock_gepa_adapter
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mocker.patch.dict(
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sys.modules,
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{
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"gepa": mock_gepa_module,
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"gepa.core": mock_gepa_module.core,
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"gepa.core.adapter": mock_gepa_adapter,
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},
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)
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return mock_gepa_module
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@pytest.fixture
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def mock_sampler(mocker):
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sampler = mocker.MagicMock(spec=Sampler)
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sampler.get_train_example_ids.return_value = ["train1", "train2"]
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sampler.get_validation_example_ids.return_value = ["val1", "val2"]
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return sampler
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@pytest.fixture
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def mock_agent(mocker):
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agent = mocker.MagicMock(spec=Agent)
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agent.instruction = "Initial instruction"
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agent.sub_agents = {}
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agent.mode = None
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agent.clone.return_value = agent
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return agent
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def test_adapter_init(mock_gepa, mock_sampler, mock_agent):
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del mock_gepa # only needed to mock gepa in background
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loop = asyncio.new_event_loop()
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_AdapterClass = _create_agent_gepa_adapter_class()
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adapter = _AdapterClass(mock_agent, mock_sampler, loop)
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assert adapter._initial_agent == mock_agent
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assert adapter._sampler == mock_sampler
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assert adapter._main_loop == loop
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assert adapter._train_example_ids == {"train1", "train2"}
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assert adapter._validation_example_ids == {"val1", "val2"}
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loop.close()
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def test_adapter_evaluate_train(mocker, mock_gepa, mock_sampler, mock_agent):
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del mock_gepa # only needed to mock gepa in background
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loop = mocker.MagicMock(spec=asyncio.AbstractEventLoop)
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_AdapterClass = _create_agent_gepa_adapter_class()
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adapter = _AdapterClass(mock_agent, mock_sampler, loop)
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candidate = {"agent_prompt": "New prompt"}
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batch = ["train1"]
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# mock the future returned by run_coroutine_threadsafe
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mock_future = mocker.MagicMock()
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expected_result = UnstructuredSamplingResult(
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scores={"train1": 0.8},
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data={"train1": {"output": "result"}},
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)
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mock_future.result.return_value = expected_result
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mock_rct = mocker.patch(
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"asyncio.run_coroutine_threadsafe", return_value=mock_future
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)
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eval_batch = adapter.evaluate(batch, candidate, capture_traces=True)
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mock_rct.assert_called_once()
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mock_sampler.sample_and_score.assert_called_once_with(
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mocker.ANY,
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example_set="train",
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batch=batch,
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capture_full_eval_data=True,
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)
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mock_agent.clone.assert_called_once_with(update={"instruction": "New prompt"})
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assert isinstance(eval_batch, MockEvaluationBatch)
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assert eval_batch.scores == [0.8]
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assert eval_batch.outputs == [{"output": "result"}]
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assert eval_batch.trajectories == [{"output": "result"}]
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def test_adapter_evaluate_validation(
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mocker, mock_gepa, mock_sampler, mock_agent
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):
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del mock_gepa # only needed to mock gepa in background
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loop = mocker.MagicMock(spec=asyncio.AbstractEventLoop)
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_AdapterClass = _create_agent_gepa_adapter_class()
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adapter = _AdapterClass(mock_agent, mock_sampler, loop)
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candidate = {"agent_prompt": "New prompt"}
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batch = ["val1"]
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mock_future = mocker.MagicMock()
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expected_result = UnstructuredSamplingResult(scores={"val1": 0.5}, data={})
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mock_future.result.return_value = expected_result
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mocker.patch("asyncio.run_coroutine_threadsafe", return_value=mock_future)
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adapter.evaluate(batch, candidate)
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mock_sampler.sample_and_score.assert_called_once_with(
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mocker.ANY,
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example_set="validation",
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batch=batch,
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capture_full_eval_data=False,
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)
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def test_adapter_make_reflective_dataset(
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mocker, mock_gepa, mock_sampler, mock_agent
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):
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del mock_gepa # only needed to mock gepa in background
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loop = mocker.MagicMock(spec=asyncio.AbstractEventLoop)
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_AdapterClass = _create_agent_gepa_adapter_class()
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adapter = _AdapterClass(mock_agent, mock_sampler, loop)
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candidate = {"agent_prompt": "Prompt"}
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eval_batch = MockEvaluationBatch(
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outputs=[{"o": 1}, {"o": 2}],
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scores=[0.9, 0.1],
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trajectories=[{"t": 1}, {"t": 2}],
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)
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components = ["component1"]
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dataset = adapter.make_reflective_dataset(candidate, eval_batch, components)
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assert "component1" in dataset
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assert len(dataset["component1"]) == 2
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assert dataset["component1"][0] == {
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"agent_prompt": "Prompt",
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"score": 0.9,
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"eval_data": {"t": 1},
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}
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assert dataset["component1"][1] == {
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"agent_prompt": "Prompt",
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"score": 0.1,
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"eval_data": {"t": 2},
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}
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@pytest.mark.asyncio
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async def test_optimize(mocker, mock_gepa, mock_sampler, mock_agent):
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config = GEPARootAgentPromptOptimizerConfig()
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optimizer = GEPARootAgentPromptOptimizer(config)
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# mock LLM
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mock_llm_class = mocker.MagicMock()
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mock_llm = mocker.MagicMock()
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mock_llm_class.return_value = mock_llm
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optimizer._llm_class = mock_llm_class
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# mock gepa.optimize return value
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mock_gepa_result = mocker.MagicMock()
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mock_gepa_result.candidates = [{"agent_prompt": "Optimized instruction"}]
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mock_gepa_result.val_aggregate_scores = [0.95]
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mock_gepa_result.to_dict.return_value = {"full": "result"}
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mock_gepa.optimize.return_value = mock_gepa_result
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result = await optimizer.optimize(mock_agent, mock_sampler)
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mock_gepa.optimize.assert_called_once()
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call_kwargs = mock_gepa.optimize.call_args[1]
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assert call_kwargs["seed_candidate"] == {
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"agent_prompt": "Initial instruction"
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}
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assert call_kwargs["trainset"] == ["train1", "train2"]
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assert call_kwargs["valset"] == ["val1", "val2"]
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assert len(result.optimized_agents) == 1
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assert result.optimized_agents[0].overall_score == 0.95
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mock_agent.clone.assert_called_with(
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update={"instruction": "Optimized instruction"}
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)
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assert result.gepa_result == {"full": "result"}
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@pytest.mark.asyncio
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async def test_optimize_logs_warning_on_overlapping_ids(
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mocker, mock_gepa, mock_sampler, mock_agent
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):
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# Setup overlapping IDs
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mock_sampler.get_train_example_ids.return_value = ["id1", "id2"]
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mock_sampler.get_validation_example_ids.return_value = ["id2", "id3"]
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config = GEPARootAgentPromptOptimizerConfig()
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optimizer = GEPARootAgentPromptOptimizer(config)
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# Mock LLM class
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mock_llm_class = mocker.MagicMock()
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optimizer._llm_class = mock_llm_class
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# Mock gepa.optimize return value
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mock_gepa_result = mocker.MagicMock()
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mock_gepa_result.candidates = []
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mock_gepa_result.val_aggregate_scores = []
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mock_gepa_result.to_dict.return_value = {}
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mock_gepa.optimize.return_value = mock_gepa_result
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mock_logger = mocker.patch(
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"google.adk.optimization.gepa_root_agent_prompt_optimizer._logger"
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)
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# Run optimization
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await optimizer.optimize(mock_agent, mock_sampler)
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# Verify warning
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mock_logger.warning.assert_called_with(
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"The training and validation example UIDs overlap. This WILL cause"
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" aliasing issues unless each common UID refers to the same example"
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" in both sets."
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)
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