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modelscope--ms-swift/tests/general/test_data_preprocess.py
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Python

import unittest
from swift.dataset import EncodePreprocessor, MessagesPreprocessor, PackingDataset, load_dataset
from swift.model import get_processor
from swift.template import get_template
class TestDataPreprocess(unittest.TestCase):
"""Lightweight data preprocessing tests (no model forward/backward).
These are fast tests suitable for CI. They cover:
- SFT dataset encode (input_ids/labels)
- Truncation/max_length
- Data collator padding (attention_mask)
- Multi-turn messages
- Tool message
- Packing dataset
Why these tests are needed:
- Swift's data preprocessing pipeline is complex (template -> encode -> collate -> pack).
NPU training failures often stem from shape/mask/label mismatches before the model
even sees the data, not from operator issues.
- The original tests/general/test_dataset.py and test_template.py use top-level
functions and remote 7B models, so they are never run by unittest discovery
and are too heavy for CI.
"""
MODEL_PATH = 'Qwen/Qwen2-0.5B'
@classmethod
def setUpClass(cls):
cls.processor = get_processor(cls.MODEL_PATH)
cls.template = get_template(cls.processor)
cls.template.mode = 'train'
cls.template.init_processor(cls.processor)
def _encode_dataset(self, dataset):
encode_preprocessor = EncodePreprocessor(self.template)
return encode_preprocessor(dataset, num_proc=1, load_from_cache_file=False, strict=False)
def test_sft_dataset_encode(self):
dataset, _ = load_dataset(['AI-ModelScope/alpaca-gpt4-data-zh#20'], num_proc=1, strict=False)
self.assertGreater(len(dataset), 0)
encoded_dataset = self._encode_dataset(dataset)
first = encoded_dataset[0]
self.assertIn('input_ids', first)
self.assertIn('labels', first)
self.assertEqual(len(first['input_ids']), len(first['labels']))
def test_truncation_max_length(self):
self.template.max_length = 128
dataset, _ = load_dataset(['AI-ModelScope/alpaca-gpt4-data-zh#20'], num_proc=1, strict=False)
encoded_dataset = self._encode_dataset(dataset)
for row in encoded_dataset:
self.assertLessEqual(len(row['input_ids']), self.template.max_length)
self.template.max_length = None
def test_data_collator_padding(self):
dataset, _ = load_dataset(['AI-ModelScope/alpaca-gpt4-data-zh#20'], num_proc=1, strict=False)
encoded_dataset = self._encode_dataset(dataset)
batch = [encoded_dataset[i] for i in range(4)]
collated = self.template.data_collator(batch)
self.assertIn('input_ids', collated)
self.assertIn('labels', collated)
self.assertIn('attention_mask', collated)
self.assertEqual(collated['input_ids'].shape[0], 4)
def test_multi_turn_messages(self):
multi_turn_row = {
'messages': [
{
'role': 'user',
'content': 'What is Python?'
},
{
'role': 'assistant',
'content': 'Python is a programming language.'
},
{
'role': 'user',
'content': 'What are its advantages?'
},
{
'role': 'assistant',
'content': 'Python is easy to learn and use.'
},
]
}
encoded = self.template.encode(multi_turn_row, return_length=True)
self.assertIn('input_ids', encoded)
self.assertIn('labels', encoded)
self.assertGreater(len(encoded['input_ids']), 0)
self.assertEqual(len(encoded['input_ids']), len(encoded['labels']))
def test_tool_message(self):
tool_row = {
'messages': [
{
'role': 'user',
'content': 'What is the weather in Beijing?'
},
{
'role':
'assistant',
'content':
'',
'tool_calls': [{
'type': 'function',
'function': {
'name': 'get_weather',
'arguments': '{"city": "Beijing"}'
}
}]
},
{
'role': 'tool',
'content': '{"temperature": 25, "condition": "sunny"}'
},
{
'role': 'assistant',
'content': 'The weather in Beijing is sunny with a temperature of 25 degrees.'
},
]
}
encoded = self.template.encode(tool_row, return_length=True)
self.assertIn('input_ids', encoded)
self.assertIn('labels', encoded)
self.assertGreater(len(encoded['input_ids']), 0)
def test_packing_dataset(self):
dataset, _ = load_dataset(['AI-ModelScope/alpaca-gpt4-data-zh#20'], num_proc=1, strict=False)
encoded_dataset = self._encode_dataset(dataset)
packing_dataset = PackingDataset(
self.template,
encoded_dataset,
num_proc=1,
strict=False,
load_from_cache_file=False,
packing_length=512,
packing_num_proc=1,
)
self.assertGreater(len(packing_dataset), 0)
packed = packing_dataset[0]
self.assertIsInstance(packed, list)
self.assertGreater(len(packed), 0)
self.assertIn('input_ids', packed[0])
self.assertIn('labels', packed[0])
class TestRejectedMessagesPreprocess(unittest.TestCase):
"""MessagesPreprocessor handling of rejected_messages (no model required)."""
def test_empty_rejected_messages_does_not_crash(self):
"""A DPO row whose rejected_messages repair to empty must not crash.
The recursive preprocess() call returns None when rejected_messages is
empty (the same graceful-skip path used for the main messages list), so
subscripting it with ['messages'] raised TypeError and aborted the whole
dataset map. Downstream already treats rejected_messages is None as
'no rejected', so the row should fall back to None instead.
"""
row = {
'messages': [
{
'role': 'user',
'content': 'Q'
},
{
'role': 'assistant',
'content': 'good'
},
],
'rejected_messages': [],
}
result = MessagesPreprocessor().preprocess(row)
self.assertIsNotNone(result)
self.assertIsNone(result['rejected_messages'])
def test_valid_rejected_messages_preserved(self):
row = {
'messages': [
{
'role': 'user',
'content': 'Q'
},
{
'role': 'assistant',
'content': 'good'
},
],
'rejected_messages': [
{
'role': 'user',
'content': 'Q'
},
{
'role': 'assistant',
'content': 'bad'
},
],
}
result = MessagesPreprocessor().preprocess(row)
self.assertEqual(result['rejected_messages'][-1]['content'], 'bad')
if __name__ == '__main__':
unittest.main()