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294 lines
12 KiB
Python
294 lines
12 KiB
Python
# ------------------------------------------------------------------------
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# RF-DETR
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# Copyright (c) 2025 Roboflow. All Rights Reserved.
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# Licensed under the Apache License, Version 2.0 [see LICENSE for details]
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# ------------------------------------------------------------------------
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"""Unit tests for :class:`rfdetr.training.callbacks.drop_schedule.DropPathCallback`."""
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from __future__ import annotations
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from unittest.mock import MagicMock
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import numpy as np
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import pytest
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from rfdetr.training.callbacks.drop_schedule import DropPathCallback
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from rfdetr.training.drop_schedule import drop_scheduler
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# ---------------------------------------------------------------------------
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# Helpers
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# ---------------------------------------------------------------------------
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def _make_mock_trainer(global_step: int = 0, estimated_stepping_batches: int = 50) -> MagicMock:
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"""Create a minimal mock Trainer with controllable step metadata."""
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trainer = MagicMock()
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trainer.global_step = global_step
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trainer.estimated_stepping_batches = estimated_stepping_batches
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return trainer
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def _make_mock_pl_module(epochs: int = 5) -> MagicMock:
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"""Create a minimal mock RFDETRModule with ``train_config.epochs``."""
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pl_module = MagicMock()
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pl_module.train_config.epochs = epochs
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return pl_module
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# ---------------------------------------------------------------------------
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# TestDropPathCallbackInit
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# ---------------------------------------------------------------------------
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class TestDropPathCallbackInit:
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"""Verify constructor defaults."""
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def test_default_args(self) -> None:
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"""Default rates are zero and vit_encoder_num_layers is 12."""
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cb = DropPathCallback()
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assert cb._drop_path == 0.0
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assert cb._dropout == 0.0
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assert cb._vit_encoder_num_layers == 12
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assert cb._dp_schedule is None
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assert cb._do_schedule is None
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# ---------------------------------------------------------------------------
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# TestOnTrainStart
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# ---------------------------------------------------------------------------
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class TestOnTrainStart:
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"""Verify schedule arrays built in ``on_train_start``."""
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def test_dp_schedule_matches_drop_scheduler_standard(self) -> None:
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"""drop_path schedule matches ``drop_scheduler`` for standard mode."""
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cb = DropPathCallback(drop_path=0.3)
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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expected = drop_scheduler(0.3, 5, 10)
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assert cb._dp_schedule is not None
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np.testing.assert_array_equal(cb._dp_schedule, expected)
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def test_do_schedule_matches_drop_scheduler_standard(self) -> None:
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"""Dropout schedule matches ``drop_scheduler`` for standard mode."""
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cb = DropPathCallback(dropout=0.1)
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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expected = drop_scheduler(0.1, 5, 10)
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assert cb._do_schedule is not None
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np.testing.assert_array_equal(cb._do_schedule, expected)
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def test_no_dp_schedule_when_rate_zero(self) -> None:
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"""drop_path=0.0 leaves ``_dp_schedule`` as None."""
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cb = DropPathCallback(drop_path=0.0)
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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assert cb._dp_schedule is None
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def test_dp_schedule_early_mode(self) -> None:
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"""Early mode: rates at step 0 and step 30 match ``drop_scheduler``."""
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cb = DropPathCallback(drop_path=0.3, cutoff_epoch=2, mode="early")
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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expected = drop_scheduler(0.3, 5, 10, 2, "early")
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assert cb._dp_schedule is not None
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assert cb._dp_schedule[0] == expected[0]
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assert cb._dp_schedule[30] == expected[30]
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def test_dp_schedule_late_mode(self) -> None:
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"""Late mode: rates at step 0 and step 30 match ``drop_scheduler``."""
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cb = DropPathCallback(drop_path=0.3, cutoff_epoch=2, mode="late")
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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expected = drop_scheduler(0.3, 5, 10, 2, "late")
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assert cb._dp_schedule is not None
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assert cb._dp_schedule[0] == expected[0]
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assert cb._dp_schedule[30] == expected[30]
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# ---------------------------------------------------------------------------
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# TestOnTrainBatchStart
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# ---------------------------------------------------------------------------
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class TestOnTrainBatchStart:
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"""Verify model update calls in ``on_train_batch_start``."""
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def test_update_drop_path_called_with_correct_rate(self) -> None:
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"""``update_drop_path`` is called with the schedule value at step 0."""
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cb = DropPathCallback(drop_path=0.3, vit_encoder_num_layers=6)
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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trainer.global_step = 0
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cb.on_train_batch_start(trainer, pl_module, batch=None, batch_idx=0)
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assert cb._dp_schedule is not None
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pl_module.model.update_drop_path.assert_called_once_with(cb._dp_schedule[0], 6)
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def test_update_dropout_called_with_correct_rate(self) -> None:
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"""``update_dropout`` is called with the schedule value at step 0."""
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cb = DropPathCallback(dropout=0.1)
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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trainer.global_step = 0
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cb.on_train_batch_start(trainer, pl_module, batch=None, batch_idx=0)
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assert cb._do_schedule is not None
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pl_module.model.update_dropout.assert_called_once_with(cb._do_schedule[0])
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def test_no_update_when_step_out_of_bounds(self) -> None:
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"""No model updates when ``global_step`` exceeds schedule length."""
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cb = DropPathCallback(drop_path=0.3, dropout=0.1)
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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trainer.global_step = 9999
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cb.on_train_batch_start(trainer, pl_module, batch=None, batch_idx=0)
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pl_module.model.update_drop_path.assert_not_called()
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pl_module.model.update_dropout.assert_not_called()
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@pytest.mark.parametrize(
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"step",
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[
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pytest.param(0, id="first_step"),
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pytest.param(5, id="mid_step"),
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pytest.param(9, id="last_of_first_epoch"),
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],
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)
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def test_drop_rates_at_multiple_steps_match_schedule(self, step: int) -> None:
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"""Each step uses the correct value from the pre-computed schedule."""
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cb = DropPathCallback(drop_path=0.3, vit_encoder_num_layers=6)
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trainer = _make_mock_trainer(estimated_stepping_batches=50)
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pl_module = _make_mock_pl_module(epochs=5)
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cb.on_train_start(trainer, pl_module)
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trainer.global_step = step
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cb.on_train_batch_start(trainer, pl_module, batch=None, batch_idx=0)
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assert cb._dp_schedule is not None
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pl_module.model.update_drop_path.assert_called_once_with(cb._dp_schedule[step], 6)
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# ---------------------------------------------------------------------------
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# TestDropSchedulerValidation
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# ---------------------------------------------------------------------------
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class TestDropSchedulerValidation:
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"""Verify drop_scheduler raises for invalid inputs."""
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@pytest.mark.parametrize(
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"cutoff_epoch",
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[
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pytest.param(6, id="above_epochs"),
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pytest.param(-1, id="negative"),
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],
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)
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def test_raises_for_invalid_cutoff_epoch(self, cutoff_epoch: int) -> None:
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"""drop_scheduler raises ValueError when cutoff_epoch is outside [0, epochs]."""
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with pytest.raises(ValueError, match="cutoff_epoch must be in"):
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drop_scheduler(0.3, 5, 10, cutoff_epoch=cutoff_epoch, mode="early")
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@pytest.mark.parametrize(
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("epochs", "niter_per_ep", "match"),
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[
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pytest.param(0, 10, "epochs must be >= 1", id="epochs_zero"),
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pytest.param(5, 0, "niter_per_ep must be >= 1", id="niter_per_ep_zero"),
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],
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)
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def test_raises_for_invalid_epoch_counts(self, epochs: int, niter_per_ep: int, match: str) -> None:
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"""drop_scheduler raises ValueError when epochs or niter_per_ep is less than 1."""
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with pytest.raises(ValueError, match=match):
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drop_scheduler(0.3, epochs, niter_per_ep)
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# ---------------------------------------------------------------------------
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# TestDropSchedulerBoundary
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# ---------------------------------------------------------------------------
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class TestDropSchedulerBoundary:
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"""Verify drop_scheduler with cutoff_epoch at the inclusive boundaries 0 and epochs."""
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@pytest.mark.parametrize(
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("cutoff_epoch", "mode", "expected_first", "expected_last"),
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[
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pytest.param(0, "early", 0.0, 0.0, id="early_cutoff_zero_all_zeros"),
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pytest.param(5, "early", 0.3, 0.3, id="early_cutoff_full_all_rate"),
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pytest.param(0, "late", 0.3, 0.3, id="late_cutoff_zero_all_rate"),
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pytest.param(5, "late", 0.0, 0.0, id="late_cutoff_full_all_zeros"),
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],
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)
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def test_boundary_cutoff_epoch(
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self,
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cutoff_epoch: int,
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mode: str,
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expected_first: float,
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expected_last: float,
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) -> None:
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"""Boundary cutoff_epoch values (0 and epochs) produce correct first and last rates."""
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schedule = drop_scheduler(0.3, 5, 10, cutoff_epoch=cutoff_epoch, mode=mode)
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assert schedule[0] == expected_first
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assert schedule[-1] == expected_last
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# ---------------------------------------------------------------------------
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# TestDropSchedulerLinear
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# ---------------------------------------------------------------------------
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class TestDropSchedulerLinear:
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"""Verify drop_scheduler with schedule='linear' in early mode."""
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def test_linear_early_starts_at_drop_rate(self) -> None:
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"""Linear early schedule first value equals drop_rate."""
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schedule = drop_scheduler(0.3, 5, 10, cutoff_epoch=2, mode="early", schedule="linear")
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assert schedule[0] == pytest.approx(0.3, abs=1e-9)
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def test_linear_early_ends_early_phase_at_zero(self) -> None:
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"""Linear early schedule last value of the early phase equals 0."""
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schedule = drop_scheduler(0.3, 5, 10, cutoff_epoch=2, mode="early", schedule="linear")
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assert schedule[19] == pytest.approx(0.0, abs=1e-9)
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def test_linear_early_late_phase_is_zero(self) -> None:
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"""Linear early schedule: all values after cutoff_epoch are zero."""
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schedule = drop_scheduler(0.3, 5, 10, cutoff_epoch=2, mode="early", schedule="linear")
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np.testing.assert_array_equal(schedule[20:], 0.0)
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def test_linear_early_decreases_monotonically(self) -> None:
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"""Linear early schedule values decrease monotonically during the early phase."""
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schedule = drop_scheduler(0.3, 5, 10, cutoff_epoch=2, mode="early", schedule="linear")
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assert np.all(np.diff(schedule[:20]) <= 0)
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def test_linear_same_shape_as_constant(self) -> None:
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"""Schedule='linear' output has the same length as schedule='constant'."""
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linear = drop_scheduler(0.3, 5, 10, cutoff_epoch=2, mode="early", schedule="linear")
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constant = drop_scheduler(0.3, 5, 10, cutoff_epoch=2, mode="early", schedule="constant")
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assert linear.shape == constant.shape
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