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chore: import upstream snapshot with attribution
2026-07-13 13:37:14 +08:00

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Python

# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
#
# 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.
import os
import unittest
from paddlenlp.data import SamplerHelper
from paddlenlp.datasets import load_dataset
from tests.common_test import CpuCommonTest
from tests.testing_utils import assert_raises, get_tests_dir
def cmp(x, y):
return -1 if x < y else 1 if x > y else 0
class TestSampler(CpuCommonTest):
@classmethod
def setUpClass(cls):
fixture_path = get_tests_dir(os.path.join("fixtures", "dummy"))
cls.train_ds = load_dataset("clue", "tnews", data_files=[os.path.join(fixture_path, "tnews", "train.json")])
def test_length(self):
train_batch_sampler = SamplerHelper(self.train_ds)
self.check_output_equal(len(train_batch_sampler), 10)
self.check_output_equal(len(train_batch_sampler), train_batch_sampler.length)
train_batch_sampler.length = 5
self.check_output_equal(len(train_batch_sampler), 5)
def test_iter1(self):
train_ds_len = len(self.train_ds)
ds_iter = iter(range(train_ds_len - 1, -1, -1))
train_batch_sampler = SamplerHelper(self.train_ds, ds_iter)
for i, sample in enumerate(train_batch_sampler):
self.check_output_equal(i, train_ds_len - 1 - sample)
def test_iter2(self):
train_batch_sampler = SamplerHelper(self.train_ds)
for i, sample in enumerate(train_batch_sampler):
self.check_output_equal(i, sample)
def test_list(self):
train_batch_sampler = SamplerHelper(self.train_ds)
list_sampler = train_batch_sampler.list()
self.check_output_equal(type(iter(list_sampler)).__name__, "list_iterator")
for i, sample in enumerate(list_sampler):
self.check_output_equal(i, sample)
def test_shuffle_no_buffer_size(self):
train_batch_sampler = SamplerHelper(self.train_ds)
shuffle_sampler = train_batch_sampler.shuffle(seed=102)
expected_result = {0: 4, 1: 9}
for i, sample in enumerate(shuffle_sampler):
if i in expected_result.keys():
self.check_output_equal(sample, expected_result[i])
def test_shuffle_buffer_size(self):
train_batch_sampler = SamplerHelper(self.train_ds)
shuffle_sampler = train_batch_sampler.shuffle(buffer_size=10, seed=102)
expected_result = {0: 4, 1: 9}
for i, sample in enumerate(shuffle_sampler):
if i in expected_result.keys():
self.check_output_equal(sample, expected_result[i])
def test_sort_buffer_size(self):
train_ds_len = len(self.train_ds)
ds_iter = iter(range(train_ds_len - 1, -1, -1))
train_batch_sampler = SamplerHelper(self.train_ds, ds_iter)
sort_sampler = train_batch_sampler.sort(cmp=lambda x, y, dataset: cmp(x, y), buffer_size=5)
for i, sample in enumerate(sort_sampler):
if i < 5:
self.check_output_equal(i + 5, sample)
else:
self.check_output_equal(i - 5, sample)
def test_sort_no_buffer_size(self):
train_ds_len = len(self.train_ds)
ds_iter = iter(range(train_ds_len - 1, -1, -1))
train_batch_sampler = SamplerHelper(self.train_ds, ds_iter)
sort_sampler = train_batch_sampler.sort(cmp=lambda x, y, dataset: cmp(x, y))
for i, sample in enumerate(sort_sampler):
self.check_output_equal(i, sample)
def test_batch(self):
train_batch_sampler = SamplerHelper(self.train_ds)
batch_size = 3
batch_sampler = train_batch_sampler.batch(batch_size)
for i, sample in enumerate(batch_sampler):
for j, minibatch in enumerate(sample):
self.check_output_equal(i * batch_size + j, minibatch)
@assert_raises(ValueError)
def test_batch_oversize(self):
train_batch_sampler = SamplerHelper(self.train_ds)
batch_size = 3
batch_sampler = train_batch_sampler.batch(
batch_size,
key=lambda size_so_far, minibatch_len: max(size_so_far, minibatch_len),
batch_size_fn=lambda new, count, sofar, data_source: len(data_source),
)
for i, sample in enumerate(batch_sampler):
for j, minibatch in enumerate(sample):
self.check_output_equal(i * batch_size + j, minibatch)
def test_shard(self):
train_batch_sampler = SamplerHelper(self.train_ds)
shard_sampler1 = train_batch_sampler.shard(2, 0)
shard_sampler2 = train_batch_sampler.shard(2, 1)
for i, sample in enumerate(shard_sampler1):
self.check_output_equal(i * 2, sample)
for i, sample in enumerate(shard_sampler2):
self.check_output_equal(i * 2 + 1, sample)
def test_shard_default(self):
train_batch_sampler = SamplerHelper(self.train_ds)
shard_sampler1 = train_batch_sampler.shard()
for i, sample in enumerate(shard_sampler1):
self.check_output_equal(i, sample)
def test_apply(self):
train_ds_len = len(self.train_ds)
ds_iter = iter(range(train_ds_len - 1, -1, -1))
train_batch_sampler = SamplerHelper(self.train_ds, ds_iter)
apply_sampler = train_batch_sampler.apply(
lambda sampler: SamplerHelper.sort(sampler, cmp=lambda x, y, dataset: cmp(x, y))
)
for i, sample in enumerate(apply_sampler):
self.check_output_equal(i, sample)
if __name__ == "__main__":
unittest.main()