handle numpy inputs in whole word mask data collator (#22032)

This commit is contained in:
Dean Wyatte
2023-03-10 08:50:29 -07:00
committed by GitHub
parent a70da86b84
commit 2f4cdd97f5
2 changed files with 27 additions and 10 deletions

View File

@@ -883,6 +883,8 @@ class DataCollatorForWholeWordMask(DataCollatorForLanguageModeling):
return {"input_ids": inputs, "labels": labels} return {"input_ids": inputs, "labels": labels}
def tf_call(self, examples: List[Union[List[int], Any, Dict[str, Any]]]) -> Dict[str, Any]: def tf_call(self, examples: List[Union[List[int], Any, Dict[str, Any]]]) -> Dict[str, Any]:
import tensorflow as tf
if isinstance(examples[0], Mapping): if isinstance(examples[0], Mapping):
input_ids = [e["input_ids"] for e in examples] input_ids = [e["input_ids"] for e in examples]
else: else:
@@ -907,7 +909,7 @@ class DataCollatorForWholeWordMask(DataCollatorForLanguageModeling):
ref_tokens[i] = "##" + ref_tokens[i] ref_tokens[i] = "##" + ref_tokens[i]
mask_labels.append(self._whole_word_mask(ref_tokens)) mask_labels.append(self._whole_word_mask(ref_tokens))
batch_mask = _tf_collate_batch(mask_labels, self.tokenizer, pad_to_multiple_of=self.pad_to_multiple_of) batch_mask = _tf_collate_batch(mask_labels, self.tokenizer, pad_to_multiple_of=self.pad_to_multiple_of)
inputs, labels = self.tf_mask_tokens(batch_input, batch_mask) inputs, labels = self.tf_mask_tokens(tf.cast(batch_input, tf.int64), batch_mask)
return {"input_ids": inputs, "labels": labels} return {"input_ids": inputs, "labels": labels}
def numpy_call(self, examples: List[Union[List[int], Any, Dict[str, Any]]]) -> Dict[str, Any]: def numpy_call(self, examples: List[Union[List[int], Any, Dict[str, Any]]]) -> Dict[str, Any]:

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@@ -271,12 +271,17 @@ class DataCollatorIntegrationTest(unittest.TestCase):
self._test_no_pad_and_pad(no_pad_features, pad_features) self._test_no_pad_and_pad(no_pad_features, pad_features)
def test_data_collator_for_whole_word_mask(self): def test_data_collator_for_whole_word_mask(self):
features = [{"input_ids": list(range(10))}, {"input_ids": list(range(10))}]
tokenizer = BertTokenizer(self.vocab_file) tokenizer = BertTokenizer(self.vocab_file)
data_collator = DataCollatorForWholeWordMask(tokenizer, return_tensors="pt") data_collator = DataCollatorForWholeWordMask(tokenizer, return_tensors="pt")
batch = data_collator(features)
features = [{"input_ids": list(range(10))}, {"input_ids": list(range(10))}]
batch = data_collator(features)
self.assertEqual(batch["input_ids"].shape, torch.Size((2, 10)))
self.assertEqual(batch["labels"].shape, torch.Size((2, 10)))
# Features can already be tensors
features = [{"input_ids": np.arange(10)}, {"input_ids": np.arange(10)}]
batch = data_collator(features)
self.assertEqual(batch["input_ids"].shape, torch.Size((2, 10))) self.assertEqual(batch["input_ids"].shape, torch.Size((2, 10)))
self.assertEqual(batch["labels"].shape, torch.Size((2, 10))) self.assertEqual(batch["labels"].shape, torch.Size((2, 10)))
@@ -553,12 +558,17 @@ class TFDataCollatorIntegrationTest(unittest.TestCase):
self._test_no_pad_and_pad(no_pad_features, pad_features) self._test_no_pad_and_pad(no_pad_features, pad_features)
def test_data_collator_for_whole_word_mask(self): def test_data_collator_for_whole_word_mask(self):
features = [{"input_ids": list(range(10))}, {"input_ids": list(range(10))}]
tokenizer = BertTokenizer(self.vocab_file) tokenizer = BertTokenizer(self.vocab_file)
data_collator = DataCollatorForWholeWordMask(tokenizer, return_tensors="tf") data_collator = DataCollatorForWholeWordMask(tokenizer, return_tensors="tf")
batch = data_collator(features)
features = [{"input_ids": list(range(10))}, {"input_ids": list(range(10))}]
batch = data_collator(features)
self.assertEqual(batch["input_ids"].shape.as_list(), [2, 10])
self.assertEqual(batch["labels"].shape.as_list(), [2, 10])
# Features can already be tensors
features = [{"input_ids": np.arange(10)}, {"input_ids": np.arange(10)}]
batch = data_collator(features)
self.assertEqual(batch["input_ids"].shape.as_list(), [2, 10]) self.assertEqual(batch["input_ids"].shape.as_list(), [2, 10])
self.assertEqual(batch["labels"].shape.as_list(), [2, 10]) self.assertEqual(batch["labels"].shape.as_list(), [2, 10])
@@ -825,12 +835,17 @@ class NumpyDataCollatorIntegrationTest(unittest.TestCase):
self._test_no_pad_and_pad(no_pad_features, pad_features) self._test_no_pad_and_pad(no_pad_features, pad_features)
def test_data_collator_for_whole_word_mask(self): def test_data_collator_for_whole_word_mask(self):
features = [{"input_ids": list(range(10))}, {"input_ids": list(range(10))}]
tokenizer = BertTokenizer(self.vocab_file) tokenizer = BertTokenizer(self.vocab_file)
data_collator = DataCollatorForWholeWordMask(tokenizer, return_tensors="np") data_collator = DataCollatorForWholeWordMask(tokenizer, return_tensors="np")
batch = data_collator(features)
features = [{"input_ids": list(range(10))}, {"input_ids": list(range(10))}]
batch = data_collator(features)
self.assertEqual(batch["input_ids"].shape, (2, 10))
self.assertEqual(batch["labels"].shape, (2, 10))
# Features can already be tensors
features = [{"input_ids": np.arange(10)}, {"input_ids": np.arange(10)}]
batch = data_collator(features)
self.assertEqual(batch["input_ids"].shape, (2, 10)) self.assertEqual(batch["input_ids"].shape, (2, 10))
self.assertEqual(batch["labels"].shape, (2, 10)) self.assertEqual(batch["labels"].shape, (2, 10))