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paddlepaddle--paddle/test/ai_edited_test/test_ai_dataloader.py
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2026-07-13 12:40:42 +08:00

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# Copyright (c) 2024 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.
# [AUTO-GENERATED] Unit test for paddle.io (Dataset, DataLoader, Sampler)
# 自动生成的单测,覆盖 paddle.io 模块中未覆盖的代码路径
# Target: cover uncovered lines in paddle/python/paddle/io/
# 目标:覆盖 DataLoader、Dataset、Sampler 的初始化和基本功能
"""
This test covers the following modules and code paths:
这个测试覆盖以下模块和代码路径:
1. TensorDataset - 单张量数据集初始化和索引 (returns tuple of scalars per index)
2. ComposeDataset - 组合数据集
3. SequenceSampler - 顺序采样器
4. RandomSampler - 随机采样器 (有/无放回)
5. BatchSampler - 批量采样器 (drop_last)
"""
import unittest
import paddle
from paddle.io import (
BatchSampler,
ComposeDataset,
DataLoader,
Dataset,
RandomSampler,
SequenceSampler,
Subset,
TensorDataset,
)
class SimpleDataset(Dataset):
"""Simple dataset for testing."""
def __init__(self, data):
self.data = data
def __getitem__(self, idx):
return self.data[idx]
def __len__(self):
return len(self.data)
class TestTensorDataset(unittest.TestCase):
"""Test TensorDataset.
TensorDataset in Paddle takes a list of tensors.
__getitem__ returns a tuple of indexed rows (one per input tensor).
"""
def setUp(self):
paddle.disable_static()
def test_tensor_dataset_basic(self):
"""Basic TensorDataset usage - returns tuple of indexed rows."""
data1 = paddle.randn([10, 5])
data2 = paddle.randn([10, 3])
dataset = TensorDataset([data1, data2])
self.assertEqual(len(dataset), 10)
item = dataset[0]
self.assertIsInstance(item, tuple)
self.assertEqual(len(item), 2)
# Each element is the 0th row of the corresponding input tensor
self.assertEqual(item[0].shape, [5])
self.assertEqual(item[1].shape, [3])
def test_tensor_dataset_1d(self):
"""TensorDataset with 1D tensors."""
data1 = paddle.randn([10])
data2 = paddle.randn([10])
dataset = TensorDataset([data1, data2])
self.assertEqual(len(dataset), 10)
item = dataset[0]
self.assertIsInstance(item, tuple)
self.assertEqual(len(item), 2)
def test_tensor_dataset_iter(self):
"""Iterate over TensorDataset."""
data = paddle.randn([5, 3])
data2 = paddle.randn([5, 2])
dataset = TensorDataset([data, data2])
items = [dataset[i] for i in range(5)]
self.assertEqual(len(items), 5)
def test_tensor_dataset_varargs(self):
"""TensorDataset with multiple tensors in list."""
data1 = paddle.randn([10, 5])
data2 = paddle.randn([10, 3])
data3 = paddle.randn([10, 2])
dataset = TensorDataset([data1, data2, data3])
self.assertEqual(len(dataset), 10)
item = dataset[0]
self.assertIsInstance(item, tuple)
self.assertEqual(len(item), 3)
self.assertEqual(item[0].shape, [5])
self.assertEqual(item[1].shape, [3])
self.assertEqual(item[2].shape, [2])
def test_tensor_dataset_varargs_single(self):
"""TensorDataset with single tensor in list."""
data = paddle.randn([8, 4])
dataset = TensorDataset([data])
self.assertEqual(len(dataset), 8)
item = dataset[0]
self.assertIsInstance(item, tuple)
self.assertEqual(len(item), 1)
self.assertEqual(item[0].shape, [4])
class TestComposeDataset(unittest.TestCase):
"""Test ComposeDataset."""
def setUp(self):
paddle.disable_static()
def test_compose_dataset_basic(self):
"""ComposeDataset combines multiple datasets."""
ds1 = SimpleDataset(paddle.randn([10, 5]))
ds2 = SimpleDataset(paddle.randn([10, 3]))
composed = ComposeDataset([ds1, ds2])
self.assertEqual(len(composed), 10)
item = composed[0]
self.assertEqual(len(item), 2)
def test_compose_dataset_single(self):
"""ComposeDataset with single dataset."""
ds = SimpleDataset(paddle.randn([5, 2]))
composed = ComposeDataset([ds])
self.assertEqual(len(composed), 5)
class TestSamplers(unittest.TestCase):
"""Test various samplers."""
def setUp(self):
paddle.disable_static()
def test_sequence_sampler(self):
"""SequenceSampler yields indices in order."""
sampler = SequenceSampler(data_source=list(range(10)))
indices = list(sampler)
self.assertEqual(indices, list(range(10)))
def test_random_sampler_no_replacement(self):
"""RandomSampler without replacement."""
sampler = RandomSampler(data_source=list(range(10)))
indices = list(sampler)
self.assertEqual(len(indices), 10)
self.assertEqual(sorted(indices), list(range(10)))
def test_random_sampler_with_replacement(self):
"""RandomSampler with replacement."""
sampler = RandomSampler(
data_source=list(range(5)), replacement=True, num_samples=20
)
indices = list(sampler)
self.assertEqual(len(indices), 20)
def test_batch_sampler_no_drop_last(self):
"""BatchSampler without drop_last."""
sampler = SequenceSampler(data_source=list(range(10)))
bs = BatchSampler(sampler=sampler, batch_size=3, drop_last=False)
batches = list(bs)
self.assertEqual(len(batches), 4)
self.assertEqual(batches[0], [0, 1, 2])
def test_batch_sampler_drop_last(self):
"""BatchSampler with drop_last."""
sampler = SequenceSampler(data_source=list(range(10)))
bs = BatchSampler(sampler=sampler, batch_size=3, drop_last=True)
batches = list(bs)
self.assertEqual(len(batches), 3)
class TestSubset(unittest.TestCase):
"""Test Subset."""
def setUp(self):
paddle.disable_static()
def test_subset_basic(self):
"""Subset selects a subset of a dataset."""
ds = SimpleDataset(paddle.randn([20, 5]))
subset = Subset(ds, indices=[0, 2, 5, 10])
self.assertEqual(len(subset), 4)
item = subset[0]
self.assertEqual(item.shape, [5])
class TestDataLoader(unittest.TestCase):
"""Test DataLoader with SimpleDataset."""
def setUp(self):
paddle.disable_static()
def test_dataloader_basic(self):
"""DataLoader with SimpleDataset."""
ds = SimpleDataset(paddle.randn([20, 5]))
loader = DataLoader(ds, batch_size=4)
batches = list(loader)
self.assertEqual(len(batches), 5)
# Each batch is a single stacked tensor
self.assertIsInstance(batches[0], paddle.Tensor)
self.assertEqual(batches[0].shape, [4, 5])
def test_dataloader_batch_size_one(self):
"""DataLoader with batch_size=1."""
ds = SimpleDataset(paddle.randn([5, 3]))
loader = DataLoader(ds, batch_size=1)
batches = list(loader)
self.assertEqual(len(batches), 5)
def test_dataloader_drop_last(self):
"""DataLoader with drop_last."""
ds = SimpleDataset(paddle.randn([10, 3]))
loader = DataLoader(ds, batch_size=4, drop_last=True)
batches = list(loader)
self.assertEqual(len(batches), 2)
def test_dataloader_num_workers_zero(self):
"""DataLoader with num_workers=0."""
ds = SimpleDataset(paddle.randn([8, 3]))
loader = DataLoader(ds, batch_size=4, num_workers=0)
batches = list(loader)
self.assertEqual(len(batches), 2)
def test_dataloader_return_list(self):
"""DataLoader with return_list=False returns numpy arrays."""
ds = SimpleDataset(paddle.randn([8, 3]))
loader = DataLoader(ds, batch_size=4, return_list=False)
batches = list(loader)
# With return_list=False, each batch is a list of numpy arrays
self.assertEqual(len(batches), 2)
if __name__ == '__main__':
unittest.main()