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Add
optimize_acqf_mixed_alternating
to `mock_botorch_optimize_conte…
…xt_manager` & reduce duplication with `mock_optimize_context_manager` (#2973) Summary: Pull Request resolved: #2973 A previous diff added mixed optimizer to MBM. This diff adds it to optimizer mocks. `mock_botorch_optimize_context_manager` had a good bit of overlap with BoTorch's `mock_optimize_context_manager`, which is also cleaned up in this diff. It now uses `mock_optimize_context_manager` and adds additional mocks on top of that. Reviewed By: paschai Differential Revision: D65067691 fbshipit-source-id: 47185e63e6e462c843d55f29d031be35583d8b05
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Original file line number | Diff line number | Diff line change |
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#!/usr/bin/env python3 | ||
# Copyright (c) Meta Platforms, Inc. and affiliates. | ||
# | ||
# This source code is licensed under the MIT license found in the | ||
# LICENSE file in the root directory of this source tree. | ||
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# pyre-strict | ||
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from unittest.mock import patch | ||
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import torch | ||
from ax.modelbridge.registry import Models | ||
from ax.modelbridge.transforms.choice_encode import OrderedChoiceToIntegerRange | ||
from ax.utils.common.testutils import TestCase | ||
from ax.utils.testing.core_stubs import get_branin_experiment | ||
from ax.utils.testing.mock import mock_botorch_optimize_context_manager | ||
from botorch.generation.gen import gen_candidates_scipy | ||
from botorch.optim.optimize_mixed import generate_starting_points | ||
from botorch.utils.testing import MockAcquisitionFunction | ||
from pyro.infer import MCMC | ||
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class TestMock(TestCase): | ||
def test_no_mocks_called(self) -> None: | ||
# Should raise by default if no mocks are called. | ||
with self.assertRaisesRegex(AssertionError, "No mocks were called"): | ||
with mock_botorch_optimize_context_manager(): | ||
pass | ||
# Doesn't raise when force=True. | ||
with mock_botorch_optimize_context_manager(force=True): | ||
pass | ||
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def test_botorch_mocks(self) -> None: | ||
# Should not raise when BoTorch mocks are called. | ||
with mock_botorch_optimize_context_manager(): | ||
gen_candidates_scipy( | ||
initial_conditions=torch.tensor([[0.0]]), | ||
acquisition_function=MockAcquisitionFunction(), # pyre-ignore [6] | ||
) | ||
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def test_fully_bayesian_mocks(self) -> None: | ||
experiment = get_branin_experiment(with_completed_batch=True) | ||
with patch("botorch.fit.MCMC", wraps=MCMC) as mock_mcmc: | ||
with mock_botorch_optimize_context_manager(): | ||
Models.SAASBO(experiment=experiment, data=experiment.lookup_data()) | ||
mock_mcmc.assert_called_once() | ||
kwargs = mock_mcmc.call_args.kwargs | ||
self.assertEqual(kwargs["num_samples"], 16) | ||
self.assertEqual(kwargs["warmup_steps"], 0) | ||
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def test_mixed_optimizer_mocks(self) -> None: | ||
experiment = get_branin_experiment( | ||
with_completed_batch=True, with_choice_parameter=True | ||
) | ||
with patch( | ||
"botorch.optim.optimize_mixed.generate_starting_points", | ||
wraps=generate_starting_points, | ||
) as mock_gen: | ||
with mock_botorch_optimize_context_manager(): | ||
Models.BOTORCH_MODULAR( | ||
experiment=experiment, | ||
data=experiment.lookup_data(), | ||
transforms=[OrderedChoiceToIntegerRange], | ||
).gen(n=1) | ||
mock_gen.assert_called_once() | ||
opt_inputs = mock_gen.call_args.kwargs["opt_inputs"] | ||
self.assertEqual(opt_inputs.raw_samples, 2) | ||
self.assertEqual(opt_inputs.num_restarts, 1) | ||
self.assertEqual( | ||
opt_inputs.options, | ||
{ | ||
"init_batch_limit": 32, | ||
"batch_limit": 5, | ||
"maxiter_alternating": 1, | ||
"maxiter_continuous": 1, | ||
"maxiter_init": 1, | ||
"maxiter_discrete": 1, | ||
}, | ||
) |