139 lines
5.0 KiB
Python
139 lines
5.0 KiB
Python
import numpy as np
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import sys
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import gc
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import pytest
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import xgboost as xgb
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from hypothesis import given, strategies, assume, settings, note
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sys.path.append("tests/python")
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import testing as tm
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import test_updaters as test_up
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parameter_strategy = strategies.fixed_dictionaries({
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'max_depth': strategies.integers(0, 11),
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'max_leaves': strategies.integers(0, 256),
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'max_bin': strategies.integers(2, 1024),
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'grow_policy': strategies.sampled_from(['lossguide', 'depthwise']),
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'single_precision_histogram': strategies.booleans(),
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'min_child_weight': strategies.floats(0.5, 2.0),
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'seed': strategies.integers(0, 10),
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# We cannot enable subsampling as the training loss can increase
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# 'subsample': strategies.floats(0.5, 1.0),
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'colsample_bytree': strategies.floats(0.5, 1.0),
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'colsample_bylevel': strategies.floats(0.5, 1.0),
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}).filter(lambda x: (x['max_depth'] > 0 or x['max_leaves'] > 0) and (
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x['max_depth'] > 0 or x['grow_policy'] == 'lossguide'))
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def train_result(param, dmat: xgb.DMatrix, num_rounds: int) -> dict:
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result: xgb.callback.TrainingCallback.EvalsLog = {}
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booster = xgb.train(
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param,
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dmat,
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num_rounds,
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[(dmat, "train")],
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verbose_eval=False,
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evals_result=result,
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)
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assert booster.num_features() == dmat.num_col()
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assert booster.num_boosted_rounds() == num_rounds
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return result
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class TestGPUUpdaters:
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cputest = test_up.TestTreeMethod()
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@given(parameter_strategy, strategies.integers(1, 20), tm.dataset_strategy)
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@settings(deadline=None, print_blob=True)
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def test_gpu_hist(self, param, num_rounds, dataset):
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param["tree_method"] = "gpu_hist"
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param = dataset.set_params(param)
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result = train_result(param, dataset.get_dmat(), num_rounds)
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note(result)
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assert tm.non_increasing(result["train"][dataset.metric])
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@given(strategies.integers(10, 400), strategies.integers(3, 8),
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strategies.integers(1, 2), strategies.integers(4, 7))
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@settings(deadline=None, print_blob=True)
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@pytest.mark.skipif(**tm.no_pandas())
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def test_categorical(self, rows, cols, rounds, cats):
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self.cputest.run_categorical_basic(rows, cols, rounds, cats, "gpu_hist")
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def test_max_cat(self) -> None:
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self.cputest.run_max_cat("gpu_hist")
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def test_categorical_32_cat(self):
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'''32 hits the bound of integer bitset, so special test'''
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rows = 1000
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cols = 10
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cats = 32
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rounds = 4
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self.cputest.run_categorical_basic(rows, cols, rounds, cats, "gpu_hist")
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@pytest.mark.skipif(**tm.no_cupy())
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def test_invalid_category(self):
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self.cputest.run_invalid_category("gpu_hist")
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@pytest.mark.skipif(**tm.no_cupy())
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@given(parameter_strategy, strategies.integers(1, 20),
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tm.dataset_strategy)
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@settings(deadline=None, print_blob=True)
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def test_gpu_hist_device_dmatrix(self, param, num_rounds, dataset):
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# We cannot handle empty dataset yet
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assume(len(dataset.y) > 0)
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param['tree_method'] = 'gpu_hist'
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param = dataset.set_params(param)
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result = train_result(param, dataset.get_device_dmat(), num_rounds)
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note(result)
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assert tm.non_increasing(result['train'][dataset.metric])
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@given(parameter_strategy, strategies.integers(1, 20),
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tm.dataset_strategy)
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@settings(deadline=None, print_blob=True)
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def test_external_memory(self, param, num_rounds, dataset):
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# We cannot handle empty dataset yet
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assume(len(dataset.y) > 0)
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param['tree_method'] = 'gpu_hist'
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param = dataset.set_params(param)
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m = dataset.get_external_dmat()
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external_result = train_result(param, m, num_rounds)
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del m
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gc.collect()
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assert tm.non_increasing(external_result['train'][dataset.metric])
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def test_empty_dmatrix_prediction(self):
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# FIXME(trivialfis): This should be done with all updaters
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kRows = 0
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kCols = 100
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X = np.empty((kRows, kCols))
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y = np.empty((kRows))
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dtrain = xgb.DMatrix(X, y)
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bst = xgb.train({'verbosity': 2,
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'tree_method': 'gpu_hist',
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'gpu_id': 0},
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dtrain,
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verbose_eval=True,
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num_boost_round=6,
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evals=[(dtrain, 'Train')])
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kRows = 100
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X = np.random.randn(kRows, kCols)
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dtest = xgb.DMatrix(X)
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predictions = bst.predict(dtest)
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np.testing.assert_allclose(predictions, 0.5, 1e-6)
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@pytest.mark.mgpu
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@given(tm.dataset_strategy, strategies.integers(0, 10))
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@settings(deadline=None, max_examples=10, print_blob=True)
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def test_specified_gpu_id_gpu_update(self, dataset, gpu_id):
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param = {'tree_method': 'gpu_hist', 'gpu_id': gpu_id}
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param = dataset.set_params(param)
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result = train_result(param, dataset.get_dmat(), 10)
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assert tm.non_increasing(result['train'][dataset.metric])
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