我正在使用这个Notebook,其中部分Apply DocumentClassifier被修改如下。
Jupyter实验室,内核:conda_mxnet_latest_p37
.
错误似乎是ML的标准实践响应。然而,我传递/创建了与原始代码相同的参数和变量名。因此,这与我代码中它们的值有关。
我的代码:
with open('filt_gri.txt', 'r') as filehandle:
tags = [current_place.rstrip() for current_place in filehandle.readlines()]
doc_classifier = TransformersDocumentClassifier(model_name_or_path="cross-encoder/nli-distilroberta-base",
task="zero-shot-classification",
labels=tags,
batch_size=16)
# convert to Document using a fieldmap for custom content fields the classification should run on
docs_to_classify = [Document.from_dict(d) for d in docs_sliding_window]
# classify using gpu, batch_size makes sure we do not run out of memory
classified_docs = doc_classifier.predict(docs_to_classify)
# let's see how it looks: there should be a classification result in the meta entry containing labels and scores.
print(classified_docs[0].to_dict())
all_docs = convert_files_to_dicts(dir_path=doc_dir)
preprocessor_sliding_window = PreProcessor(split_overlap=3,
split_length=10,
split_respect_sentence_boundary=False,
split_by='passage')
输出:
INFO - haystack.modeling.utils - Using devices: CUDA
INFO - haystack.modeling.utils - Number of GPUs: 1
---------------------------------------------------------------------------
ValueError Traceback (most recent call last)
<ipython-input-11-77eb98038283> in <module>
14
15 # classify using gpu, batch_size makes sure we do not run out of memory
---> 16 classified_docs = doc_classifier.predict(docs_to_classify)
17
18 # let's see how it looks: there should be a classification result in the meta entry containing labels and scores.
~/anaconda3/envs/mxnet_latest_p37/lib/python3.7/site-packages/haystack/nodes/document_classifier/transformers.py in predict(self, documents)
137 batches = self.get_batches(texts, batch_size=self.batch_size)
138 if self.task == 'zero-shot-classification':
--> 139 batched_predictions = [self.model(batch, candidate_labels=self.labels, truncation=True) for batch in batches]
140 elif self.task == 'text-classification':
141 batched_predictions = [self.model(batch, return_all_scores=self.return_all_scores, truncation=True) for batch in batches]
~/anaconda3/envs/mxnet_latest_p37/lib/python3.7/site-packages/haystack/nodes/document_classifier/transformers.py in <listcomp>(.0)
137 batches = self.get_batches(texts, batch_size=self.batch_size)
138 if self.task == 'zero-shot-classification':
--> 139 batched_predictions = [self.model(batch, candidate_labels=self.labels, truncation=True) for batch in batches]
140 elif self.task == 'text-classification':
141 batched_predictions = [self.model(batch, return_all_scores=self.return_all_scores, truncation=True) for batch in batches]
~/anaconda3/envs/mxnet_latest_p37/lib/python3.7/site-packages/transformers/pipelines/zero_shot_classification.py in __call__(self, sequences, candidate_labels, hypothesis_template, multi_label,**kwargs)
151 sequences = [sequences]
152
--> 153 outputs = super().__call__(sequences, candidate_labels, hypothesis_template)
154 num_sequences = len(sequences)
155 candidate_labels = self._args_parser._parse_labels(candidate_labels)
~/anaconda3/envs/mxnet_latest_p37/lib/python3.7/site-packages/transformers/pipelines/base.py in __call__(self, *args,**kwargs)
758
759 def __call__(self, *args,**kwargs):
--> 760 inputs = self._parse_and_tokenize(*args,**kwargs)
761 return self._forward(inputs)
762
~/anaconda3/envs/mxnet_latest_p37/lib/python3.7/site-packages/transformers/pipelines/zero_shot_classification.py in _parse_and_tokenize(self, sequences, candidate_labels, hypothesis_template, padding, add_special_tokens, truncation,**kwargs)
92 Parse arguments and tokenize only_first so that hypothesis (label) is not truncated
93 """
---> 94 sequence_pairs = self._args_parser(sequences, candidate_labels, hypothesis_template)
95 inputs = self.tokenizer(
96 sequence_pairs,
~/anaconda3/envs/mxnet_latest_p37/lib/python3.7/site-packages/transformers/pipelines/zero_shot_classification.py in __call__(self, sequences, labels, hypothesis_template)
25 def __call__(self, sequences, labels, hypothesis_template):
26 if len(labels) == 0 or len(sequences) == 0:
---> 27 raise ValueError("You must include at least one label and at least one sequence.")
28 if hypothesis_template.format(labels[0]) == hypothesis_template:
29 raise ValueError(
ValueError: You must include at least one label and at least one sequence.
原始代码:
doc_classifier = TransformersDocumentClassifier(model_name_or_path="cross-encoder/nli-distilroberta-base",
task="zero-shot-classification",
labels=["music", "natural language processing", "history"],
batch_size=16
)
# ----------
# convert to Document using a fieldmap for custom content fields the classification should run on
docs_to_classify = [Document.from_dict(d) for d in docs_sliding_window]
# ----------
# classify using gpu, batch_size makes sure we do not run out of memory
classified_docs = doc_classifier.predict(docs_to_classify)
# ----------
# let's see how it looks: there should be a classification result in the meta entry containing labels and scores.
print(classified_docs[0].to_dict())
请让我知道,如果有任何其他我应该添加到后/澄清。
2条答案
按热度按时间ee7vknir1#
阅读正式的docs并分析该错误是在调用
.predict(docs_to_classify)
时生成的,我可以建议您尝试进行基本测试,例如使用参数labels = ["negative", "positive"]
,如果它是由外部文件的字符串*值 * 引起的,则进行更正,并且您还可以选择检查它指示使用管道的位置。mm5n2pyu2#
我也有同样的问题。在我的例子中,是针对NAN和len()= 0的项目。
我建议你在使用数据之前先清理一下。
在docs中这样说:
enter image description here