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# Token classification | |
[[open-in-colab]] | |
<Youtube id="wVHdVlPScxA"/> | |
Token classification assigns a label to individual tokens in a sentence. One of the most common token classification tasks is Named Entity Recognition (NER). NER attempts to find a label for each entity in a sentence, such as a person, location, or organization. | |
This guide will show you how to: | |
1. Finetune [DistilBERT](https://huggingface.co/distilbert-base-uncased) on the [WNUT 17](https://huggingface.co/datasets/wnut_17) dataset to detect new entities. | |
2. Use your finetuned model for inference. | |
<Tip> | |
The task illustrated in this tutorial is supported by the following model architectures: | |
<!--This tip is automatically generated by `make fix-copies`, do not fill manually!--> | |
[ALBERT](../model_doc/albert), [BERT](../model_doc/bert), [BigBird](../model_doc/big_bird), [BioGpt](../model_doc/biogpt), [BLOOM](../model_doc/bloom), [CamemBERT](../model_doc/camembert), [CANINE](../model_doc/canine), [ConvBERT](../model_doc/convbert), [Data2VecText](../model_doc/data2vec-text), [DeBERTa](../model_doc/deberta), [DeBERTa-v2](../model_doc/deberta-v2), [DistilBERT](../model_doc/distilbert), [ELECTRA](../model_doc/electra), [ERNIE](../model_doc/ernie), [ErnieM](../model_doc/ernie_m), [ESM](../model_doc/esm), [FlauBERT](../model_doc/flaubert), [FNet](../model_doc/fnet), [Funnel Transformer](../model_doc/funnel), [GPT-Sw3](../model_doc/gpt-sw3), [OpenAI GPT-2](../model_doc/gpt2), [GPTBigCode](../model_doc/gpt_bigcode), [I-BERT](../model_doc/ibert), [LayoutLM](../model_doc/layoutlm), [LayoutLMv2](../model_doc/layoutlmv2), [LayoutLMv3](../model_doc/layoutlmv3), [LiLT](../model_doc/lilt), [Longformer](../model_doc/longformer), [LUKE](../model_doc/luke), [MarkupLM](../model_doc/markuplm), [MEGA](../model_doc/mega), [Megatron-BERT](../model_doc/megatron-bert), [MobileBERT](../model_doc/mobilebert), [MPNet](../model_doc/mpnet), [Nezha](../model_doc/nezha), [Nyströmformer](../model_doc/nystromformer), [QDQBert](../model_doc/qdqbert), [RemBERT](../model_doc/rembert), [RoBERTa](../model_doc/roberta), [RoBERTa-PreLayerNorm](../model_doc/roberta-prelayernorm), [RoCBert](../model_doc/roc_bert), [RoFormer](../model_doc/roformer), [SqueezeBERT](../model_doc/squeezebert), [XLM](../model_doc/xlm), [XLM-RoBERTa](../model_doc/xlm-roberta), [XLM-RoBERTa-XL](../model_doc/xlm-roberta-xl), [XLNet](../model_doc/xlnet), [X-MOD](../model_doc/xmod), [YOSO](../model_doc/yoso) | |
<!--End of the generated tip--> | |
</Tip> | |
Before you begin, make sure you have all the necessary libraries installed: | |
```bash | |
pip install transformers datasets evaluate seqeval | |
``` | |
We encourage you to login to your Hugging Face account so you can upload and share your model with the community. When prompted, enter your token to login: | |
```py | |
>>> from huggingface_hub import notebook_login | |
>>> notebook_login() | |
``` | |
## Load WNUT 17 dataset | |
Start by loading the WNUT 17 dataset from the 🤗 Datasets library: | |
```py | |
>>> from datasets import load_dataset | |
>>> wnut = load_dataset("wnut_17") | |
``` | |
Then take a look at an example: | |
```py | |
>>> wnut["train"][0] | |
{'id': '0', | |
'ner_tags': [0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 7, 8, 8, 0, 7, 0, 0, 0, 0, 0, 0, 0, 0], | |
'tokens': ['@paulwalk', 'It', "'s", 'the', 'view', 'from', 'where', 'I', "'m", 'living', 'for', 'two', 'weeks', '.', 'Empire', 'State', 'Building', '=', 'ESB', '.', 'Pretty', 'bad', 'storm', 'here', 'last', 'evening', '.'] | |
} | |
``` | |
Each number in `ner_tags` represents an entity. Convert the numbers to their label names to find out what the entities are: | |
```py | |
>>> label_list = wnut["train"].features[f"ner_tags"].feature.names | |
>>> label_list | |
[ | |
"O", | |
"B-corporation", | |
"I-corporation", | |
"B-creative-work", | |
"I-creative-work", | |
"B-group", | |
"I-group", | |
"B-location", | |
"I-location", | |
"B-person", | |
"I-person", | |
"B-product", | |
"I-product", | |
] | |
``` | |
The letter that prefixes each `ner_tag` indicates the token position of the entity: | |
- `B-` indicates the beginning of an entity. | |
- `I-` indicates a token is contained inside the same entity (for example, the `State` token is a part of an entity like | |
`Empire State Building`). | |
- `0` indicates the token doesn't correspond to any entity. | |
## Preprocess | |
<Youtube id="iY2AZYdZAr0"/> | |
The next step is to load a DistilBERT tokenizer to preprocess the `tokens` field: | |
```py | |
>>> from transformers import AutoTokenizer | |
>>> tokenizer = AutoTokenizer.from_pretrained("distilbert-base-uncased") | |
``` | |
As you saw in the example `tokens` field above, it looks like the input has already been tokenized. But the input actually hasn't been tokenized yet and you'll need to set `is_split_into_words=True` to tokenize the words into subwords. For example: | |
```py | |
>>> example = wnut["train"][0] | |
>>> tokenized_input = tokenizer(example["tokens"], is_split_into_words=True) | |
>>> tokens = tokenizer.convert_ids_to_tokens(tokenized_input["input_ids"]) | |
>>> tokens | |
['[CLS]', '@', 'paul', '##walk', 'it', "'", 's', 'the', 'view', 'from', 'where', 'i', "'", 'm', 'living', 'for', 'two', 'weeks', '.', 'empire', 'state', 'building', '=', 'es', '##b', '.', 'pretty', 'bad', 'storm', 'here', 'last', 'evening', '.', '[SEP]'] | |
``` | |
However, this adds some special tokens `[CLS]` and `[SEP]` and the subword tokenization creates a mismatch between the input and labels. A single word corresponding to a single label may now be split into two subwords. You'll need to realign the tokens and labels by: | |
1. Mapping all tokens to their corresponding word with the [`word_ids`](https://huggingface.co/docs/tokenizers/python/latest/api/reference.html#tokenizers.Encoding.word_ids) method. | |
2. Assigning the label `-100` to the special tokens `[CLS]` and `[SEP]` so they're ignored by the PyTorch loss function. | |
3. Only labeling the first token of a given word. Assign `-100` to other subtokens from the same word. | |
Here is how you can create a function to realign the tokens and labels, and truncate sequences to be no longer than DistilBERT's maximum input length: | |
```py | |
>>> def tokenize_and_align_labels(examples): | |
... tokenized_inputs = tokenizer(examples["tokens"], truncation=True, is_split_into_words=True) | |
... labels = [] | |
... for i, label in enumerate(examples[f"ner_tags"]): | |
... word_ids = tokenized_inputs.word_ids(batch_index=i) # Map tokens to their respective word. | |
... previous_word_idx = None | |
... label_ids = [] | |
... for word_idx in word_ids: # Set the special tokens to -100. | |
... if word_idx is None: | |
... label_ids.append(-100) | |
... elif word_idx != previous_word_idx: # Only label the first token of a given word. | |
... label_ids.append(label[word_idx]) | |
... else: | |
... label_ids.append(-100) | |
... previous_word_idx = word_idx | |
... labels.append(label_ids) | |
... tokenized_inputs["labels"] = labels | |
... return tokenized_inputs | |
``` | |
To apply the preprocessing function over the entire dataset, use 🤗 Datasets [`~datasets.Dataset.map`] function. You can speed up the `map` function by setting `batched=True` to process multiple elements of the dataset at once: | |
```py | |
>>> tokenized_wnut = wnut.map(tokenize_and_align_labels, batched=True) | |
``` | |
Now create a batch of examples using [`DataCollatorWithPadding`]. It's more efficient to *dynamically pad* the sentences to the longest length in a batch during collation, instead of padding the whole dataset to the maximum length. | |
<frameworkcontent> | |
<pt> | |
```py | |
>>> from transformers import DataCollatorForTokenClassification | |
>>> data_collator = DataCollatorForTokenClassification(tokenizer=tokenizer) | |
``` | |
</pt> | |
<tf> | |
```py | |
>>> from transformers import DataCollatorForTokenClassification | |
>>> data_collator = DataCollatorForTokenClassification(tokenizer=tokenizer, return_tensors="tf") | |
``` | |
</tf> | |
</frameworkcontent> | |
## Evaluate | |
Including a metric during training is often helpful for evaluating your model's performance. You can quickly load a evaluation method with the 🤗 [Evaluate](https://huggingface.co/docs/evaluate/index) library. For this task, load the [seqeval](https://huggingface.co/spaces/evaluate-metric/seqeval) framework (see the 🤗 Evaluate [quick tour](https://huggingface.co/docs/evaluate/a_quick_tour) to learn more about how to load and compute a metric). Seqeval actually produces several scores: precision, recall, F1, and accuracy. | |
```py | |
>>> import evaluate | |
>>> seqeval = evaluate.load("seqeval") | |
``` | |
Get the NER labels first, and then create a function that passes your true predictions and true labels to [`~evaluate.EvaluationModule.compute`] to calculate the scores: | |
```py | |
>>> import numpy as np | |
>>> labels = [label_list[i] for i in example[f"ner_tags"]] | |
>>> def compute_metrics(p): | |
... predictions, labels = p | |
... predictions = np.argmax(predictions, axis=2) | |
... true_predictions = [ | |
... [label_list[p] for (p, l) in zip(prediction, label) if l != -100] | |
... for prediction, label in zip(predictions, labels) | |
... ] | |
... true_labels = [ | |
... [label_list[l] for (p, l) in zip(prediction, label) if l != -100] | |
... for prediction, label in zip(predictions, labels) | |
... ] | |
... results = seqeval.compute(predictions=true_predictions, references=true_labels) | |
... return { | |
... "precision": results["overall_precision"], | |
... "recall": results["overall_recall"], | |
... "f1": results["overall_f1"], | |
... "accuracy": results["overall_accuracy"], | |
... } | |
``` | |
Your `compute_metrics` function is ready to go now, and you'll return to it when you setup your training. | |
## Train | |
Before you start training your model, create a map of the expected ids to their labels with `id2label` and `label2id`: | |
```py | |
>>> id2label = { | |
... 0: "O", | |
... 1: "B-corporation", | |
... 2: "I-corporation", | |
... 3: "B-creative-work", | |
... 4: "I-creative-work", | |
... 5: "B-group", | |
... 6: "I-group", | |
... 7: "B-location", | |
... 8: "I-location", | |
... 9: "B-person", | |
... 10: "I-person", | |
... 11: "B-product", | |
... 12: "I-product", | |
... } | |
>>> label2id = { | |
... "O": 0, | |
... "B-corporation": 1, | |
... "I-corporation": 2, | |
... "B-creative-work": 3, | |
... "I-creative-work": 4, | |
... "B-group": 5, | |
... "I-group": 6, | |
... "B-location": 7, | |
... "I-location": 8, | |
... "B-person": 9, | |
... "I-person": 10, | |
... "B-product": 11, | |
... "I-product": 12, | |
... } | |
``` | |
<frameworkcontent> | |
<pt> | |
<Tip> | |
If you aren't familiar with finetuning a model with the [`Trainer`], take a look at the basic tutorial [here](../training#train-with-pytorch-trainer)! | |
</Tip> | |
You're ready to start training your model now! Load DistilBERT with [`AutoModelForTokenClassification`] along with the number of expected labels, and the label mappings: | |
```py | |
>>> from transformers import AutoModelForTokenClassification, TrainingArguments, Trainer | |
>>> model = AutoModelForTokenClassification.from_pretrained( | |
... "distilbert-base-uncased", num_labels=13, id2label=id2label, label2id=label2id | |
... ) | |
``` | |
At this point, only three steps remain: | |
1. Define your training hyperparameters in [`TrainingArguments`]. The only required parameter is `output_dir` which specifies where to save your model. You'll push this model to the Hub by setting `push_to_hub=True` (you need to be signed in to Hugging Face to upload your model). At the end of each epoch, the [`Trainer`] will evaluate the seqeval scores and save the training checkpoint. | |
2. Pass the training arguments to [`Trainer`] along with the model, dataset, tokenizer, data collator, and `compute_metrics` function. | |
3. Call [`~Trainer.train`] to finetune your model. | |
```py | |
>>> training_args = TrainingArguments( | |
... output_dir="my_awesome_wnut_model", | |
... learning_rate=2e-5, | |
... per_device_train_batch_size=16, | |
... per_device_eval_batch_size=16, | |
... num_train_epochs=2, | |
... weight_decay=0.01, | |
... evaluation_strategy="epoch", | |
... save_strategy="epoch", | |
... load_best_model_at_end=True, | |
... push_to_hub=True, | |
... ) | |
>>> trainer = Trainer( | |
... model=model, | |
... args=training_args, | |
... train_dataset=tokenized_wnut["train"], | |
... eval_dataset=tokenized_wnut["test"], | |
... tokenizer=tokenizer, | |
... data_collator=data_collator, | |
... compute_metrics=compute_metrics, | |
... ) | |
>>> trainer.train() | |
``` | |
Once training is completed, share your model to the Hub with the [`~transformers.Trainer.push_to_hub`] method so everyone can use your model: | |
```py | |
>>> trainer.push_to_hub() | |
``` | |
</pt> | |
<tf> | |
<Tip> | |
If you aren't familiar with finetuning a model with Keras, take a look at the basic tutorial [here](../training#train-a-tensorflow-model-with-keras)! | |
</Tip> | |
To finetune a model in TensorFlow, start by setting up an optimizer function, learning rate schedule, and some training hyperparameters: | |
```py | |
>>> from transformers import create_optimizer | |
>>> batch_size = 16 | |
>>> num_train_epochs = 3 | |
>>> num_train_steps = (len(tokenized_wnut["train"]) // batch_size) * num_train_epochs | |
>>> optimizer, lr_schedule = create_optimizer( | |
... init_lr=2e-5, | |
... num_train_steps=num_train_steps, | |
... weight_decay_rate=0.01, | |
... num_warmup_steps=0, | |
... ) | |
``` | |
Then you can load DistilBERT with [`TFAutoModelForTokenClassification`] along with the number of expected labels, and the label mappings: | |
```py | |
>>> from transformers import TFAutoModelForTokenClassification | |
>>> model = TFAutoModelForTokenClassification.from_pretrained( | |
... "distilbert-base-uncased", num_labels=13, id2label=id2label, label2id=label2id | |
... ) | |
``` | |
Convert your datasets to the `tf.data.Dataset` format with [`~transformers.TFPreTrainedModel.prepare_tf_dataset`]: | |
```py | |
>>> tf_train_set = model.prepare_tf_dataset( | |
... tokenized_wnut["train"], | |
... shuffle=True, | |
... batch_size=16, | |
... collate_fn=data_collator, | |
... ) | |
>>> tf_validation_set = model.prepare_tf_dataset( | |
... tokenized_wnut["validation"], | |
... shuffle=False, | |
... batch_size=16, | |
... collate_fn=data_collator, | |
... ) | |
``` | |
Configure the model for training with [`compile`](https://keras.io/api/models/model_training_apis/#compile-method): | |
```py | |
>>> import tensorflow as tf | |
>>> model.compile(optimizer=optimizer) | |
``` | |
The last two things to setup before you start training is to compute the seqeval scores from the predictions, and provide a way to push your model to the Hub. Both are done by using [Keras callbacks](../main_classes/keras_callbacks). | |
Pass your `compute_metrics` function to [`~transformers.KerasMetricCallback`]: | |
```py | |
>>> from transformers.keras_callbacks import KerasMetricCallback | |
>>> metric_callback = KerasMetricCallback(metric_fn=compute_metrics, eval_dataset=tf_validation_set) | |
``` | |
Specify where to push your model and tokenizer in the [`~transformers.PushToHubCallback`]: | |
```py | |
>>> from transformers.keras_callbacks import PushToHubCallback | |
>>> push_to_hub_callback = PushToHubCallback( | |
... output_dir="my_awesome_wnut_model", | |
... tokenizer=tokenizer, | |
... ) | |
``` | |
Then bundle your callbacks together: | |
```py | |
>>> callbacks = [metric_callback, push_to_hub_callback] | |
``` | |
Finally, you're ready to start training your model! Call [`fit`](https://keras.io/api/models/model_training_apis/#fit-method) with your training and validation datasets, the number of epochs, and your callbacks to finetune the model: | |
```py | |
>>> model.fit(x=tf_train_set, validation_data=tf_validation_set, epochs=3, callbacks=callbacks) | |
``` | |
Once training is completed, your model is automatically uploaded to the Hub so everyone can use it! | |
</tf> | |
</frameworkcontent> | |
<Tip> | |
For a more in-depth example of how to finetune a model for token classification, take a look at the corresponding | |
[PyTorch notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/token_classification.ipynb) | |
or [TensorFlow notebook](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/token_classification-tf.ipynb). | |
</Tip> | |
## Inference | |
Great, now that you've finetuned a model, you can use it for inference! | |
Grab some text you'd like to run inference on: | |
```py | |
>>> text = "The Golden State Warriors are an American professional basketball team based in San Francisco." | |
``` | |
The simplest way to try out your finetuned model for inference is to use it in a [`pipeline`]. Instantiate a `pipeline` for NER with your model, and pass your text to it: | |
```py | |
>>> from transformers import pipeline | |
>>> classifier = pipeline("ner", model="stevhliu/my_awesome_wnut_model") | |
>>> classifier(text) | |
[{'entity': 'B-location', | |
'score': 0.42658573, | |
'index': 2, | |
'word': 'golden', | |
'start': 4, | |
'end': 10}, | |
{'entity': 'I-location', | |
'score': 0.35856336, | |
'index': 3, | |
'word': 'state', | |
'start': 11, | |
'end': 16}, | |
{'entity': 'B-group', | |
'score': 0.3064001, | |
'index': 4, | |
'word': 'warriors', | |
'start': 17, | |
'end': 25}, | |
{'entity': 'B-location', | |
'score': 0.65523505, | |
'index': 13, | |
'word': 'san', | |
'start': 80, | |
'end': 83}, | |
{'entity': 'B-location', | |
'score': 0.4668663, | |
'index': 14, | |
'word': 'francisco', | |
'start': 84, | |
'end': 93}] | |
``` | |
You can also manually replicate the results of the `pipeline` if you'd like: | |
<frameworkcontent> | |
<pt> | |
Tokenize the text and return PyTorch tensors: | |
```py | |
>>> from transformers import AutoTokenizer | |
>>> tokenizer = AutoTokenizer.from_pretrained("stevhliu/my_awesome_wnut_model") | |
>>> inputs = tokenizer(text, return_tensors="pt") | |
``` | |
Pass your inputs to the model and return the `logits`: | |
```py | |
>>> from transformers import AutoModelForTokenClassification | |
>>> model = AutoModelForTokenClassification.from_pretrained("stevhliu/my_awesome_wnut_model") | |
>>> with torch.no_grad(): | |
... logits = model(**inputs).logits | |
``` | |
Get the class with the highest probability, and use the model's `id2label` mapping to convert it to a text label: | |
```py | |
>>> predictions = torch.argmax(logits, dim=2) | |
>>> predicted_token_class = [model.config.id2label[t.item()] for t in predictions[0]] | |
>>> predicted_token_class | |
['O', | |
'O', | |
'B-location', | |
'I-location', | |
'B-group', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'B-location', | |
'B-location', | |
'O', | |
'O'] | |
``` | |
</pt> | |
<tf> | |
Tokenize the text and return TensorFlow tensors: | |
```py | |
>>> from transformers import AutoTokenizer | |
>>> tokenizer = AutoTokenizer.from_pretrained("stevhliu/my_awesome_wnut_model") | |
>>> inputs = tokenizer(text, return_tensors="tf") | |
``` | |
Pass your inputs to the model and return the `logits`: | |
```py | |
>>> from transformers import TFAutoModelForTokenClassification | |
>>> model = TFAutoModelForTokenClassification.from_pretrained("stevhliu/my_awesome_wnut_model") | |
>>> logits = model(**inputs).logits | |
``` | |
Get the class with the highest probability, and use the model's `id2label` mapping to convert it to a text label: | |
```py | |
>>> predicted_token_class_ids = tf.math.argmax(logits, axis=-1) | |
>>> predicted_token_class = [model.config.id2label[t] for t in predicted_token_class_ids[0].numpy().tolist()] | |
>>> predicted_token_class | |
['O', | |
'O', | |
'B-location', | |
'I-location', | |
'B-group', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'O', | |
'B-location', | |
'B-location', | |
'O', | |
'O'] | |
``` | |
</tf> | |
</frameworkcontent> | |