training.md 18.3 KB
Newer Older
Steven Liu's avatar
Steven Liu committed
1
<!--Copyright 2022 The HuggingFace Team. All rights reserved.
Sylvain Gugger's avatar
Sylvain Gugger committed
2
3
4
5
6
7
8
9
10

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.
11
12
13
14

⚠️ Note that this file is in Markdown but contain specific syntax for our doc-builder (similar to MDX) that may not be
rendered properly in your Markdown viewer.

Sylvain Gugger's avatar
Sylvain Gugger committed
15
16
-->

Steven Liu's avatar
Steven Liu committed
17
# Fine-tune a pretrained model
Sylvain Gugger's avatar
Sylvain Gugger committed
18

19
20
[[open-in-colab]]

Steven Liu's avatar
Steven Liu committed
21
There are significant benefits to using a pretrained model. It reduces computation costs, your carbon footprint, and allows you to use state-of-the-art models without having to train one from scratch. 🤗 Transformers provides access to thousands of pretrained models for a wide range of tasks. When you use a pretrained model, you train it on a dataset specific to your task. This is known as fine-tuning, an incredibly powerful training technique. In this tutorial, you will fine-tune a pretrained model with a deep learning framework of your choice:
Sylvain Gugger's avatar
Sylvain Gugger committed
22

Steven Liu's avatar
Steven Liu committed
23
24
25
* Fine-tune a pretrained model with 🤗 Transformers [`Trainer`].
* Fine-tune a pretrained model in TensorFlow with Keras.
* Fine-tune a pretrained model in native PyTorch.
Sylvain Gugger's avatar
Sylvain Gugger committed
26
27
28

<a id='data-processing'></a>

Steven Liu's avatar
Steven Liu committed
29
## Prepare a dataset
Sylvain Gugger's avatar
Sylvain Gugger committed
30
31
32

<Youtube id="_BZearw7f0w"/>

Steven Liu's avatar
Steven Liu committed
33
Before you can fine-tune a pretrained model, download a dataset and prepare it for training. The previous tutorial showed you how to process data for training, and now you get an opportunity to put those skills to the test!
Sylvain Gugger's avatar
Sylvain Gugger committed
34

Steven Liu's avatar
Steven Liu committed
35
Begin by loading the [Yelp Reviews](https://huggingface.co/datasets/yelp_review_full) dataset:
Sylvain Gugger's avatar
Sylvain Gugger committed
36

Steven Liu's avatar
Steven Liu committed
37
38
```py
>>> from datasets import load_dataset
Sylvain Gugger's avatar
Sylvain Gugger committed
39

Steven Liu's avatar
Steven Liu committed
40
>>> dataset = load_dataset("yelp_review_full")
41
>>> dataset["train"][100]
Steven Liu's avatar
Steven Liu committed
42
43
{'label': 0,
 'text': 'My expectations for McDonalds are t rarely high. But for one to still fail so spectacularly...that takes something special!\\nThe cashier took my friends\'s order, then promptly ignored me. I had to force myself in front of a cashier who opened his register to wait on the person BEHIND me. I waited over five minutes for a gigantic order that included precisely one kid\'s meal. After watching two people who ordered after me be handed their food, I asked where mine was. The manager started yelling at the cashiers for \\"serving off their orders\\" when they didn\'t have their food. But neither cashier was anywhere near those controls, and the manager was the one serving food to customers and clearing the boards.\\nThe manager was rude when giving me my order. She didn\'t make sure that I had everything ON MY RECEIPT, and never even had the decency to apologize that I felt I was getting poor service.\\nI\'ve eaten at various McDonalds restaurants for over 30 years. I\'ve worked at more than one location. I expect bad days, bad moods, and the occasional mistake. But I have yet to have a decent experience at this store. It will remain a place I avoid unless someone in my party needs to avoid illness from low blood sugar. Perhaps I should go back to the racially biased service of Steak n Shake instead!'}
Sylvain Gugger's avatar
Sylvain Gugger committed
44
45
```

46
As you now know, you need a tokenizer to process the text and include a padding and truncation strategy to handle any variable sequence lengths. To process your dataset in one step, use 🤗 Datasets [`map`](https://huggingface.co/docs/datasets/process#map) method to apply a preprocessing function over the entire dataset:
Sylvain Gugger's avatar
Sylvain Gugger committed
47

Steven Liu's avatar
Steven Liu committed
48
49
```py
>>> from transformers import AutoTokenizer
Sylvain Gugger's avatar
Sylvain Gugger committed
50

51
>>> tokenizer = AutoTokenizer.from_pretrained("google-bert/bert-base-cased")
Sylvain Gugger's avatar
Sylvain Gugger committed
52
53


Steven Liu's avatar
Steven Liu committed
54
55
>>> def tokenize_function(examples):
...     return tokenizer(examples["text"], padding="max_length", truncation=True)
Sylvain Gugger's avatar
Sylvain Gugger committed
56
57


Steven Liu's avatar
Steven Liu committed
58
>>> tokenized_datasets = dataset.map(tokenize_function, batched=True)
Sylvain Gugger's avatar
Sylvain Gugger committed
59
60
```

Steven Liu's avatar
Steven Liu committed
61
If you like, you can create a smaller subset of the full dataset to fine-tune on to reduce the time it takes:
Sylvain Gugger's avatar
Sylvain Gugger committed
62

Steven Liu's avatar
Steven Liu committed
63
64
65
```py
>>> small_train_dataset = tokenized_datasets["train"].shuffle(seed=42).select(range(1000))
>>> small_eval_dataset = tokenized_datasets["test"].shuffle(seed=42).select(range(1000))
Sylvain Gugger's avatar
Sylvain Gugger committed
66
67
68
69
```

<a id='trainer'></a>

70
## Train
Sylvain Gugger's avatar
Sylvain Gugger committed
71

Matt's avatar
Matt committed
72
73
74
75
At this point, you should follow the section corresponding to the framework you want to use. You can use the links
in the right sidebar to jump to the one you want - and if you want to hide all of the content for a given framework,
just use the button at the top-right of that framework's block!

76
77
<frameworkcontent>
<pt>
Sylvain Gugger's avatar
Sylvain Gugger committed
78
79
<Youtube id="nvBXf7s7vTI"/>

Matt's avatar
Matt committed
80
81
## Train with PyTorch Trainer

Steven Liu's avatar
Steven Liu committed
82
🤗 Transformers provides a [`Trainer`] class optimized for training 🤗 Transformers models, making it easier to start training without manually writing your own training loop. The [`Trainer`] API supports a wide range of training options and features such as logging, gradient accumulation, and mixed precision.
Sylvain Gugger's avatar
Sylvain Gugger committed
83

Steven Liu's avatar
Steven Liu committed
84
Start by loading your model and specify the number of expected labels. From the Yelp Review [dataset card](https://huggingface.co/datasets/yelp_review_full#data-fields), you know there are five labels:
Sylvain Gugger's avatar
Sylvain Gugger committed
85

Steven Liu's avatar
Steven Liu committed
86
87
```py
>>> from transformers import AutoModelForSequenceClassification
Sylvain Gugger's avatar
Sylvain Gugger committed
88

89
>>> model = AutoModelForSequenceClassification.from_pretrained("google-bert/bert-base-cased", num_labels=5)
Sylvain Gugger's avatar
Sylvain Gugger committed
90
91
```

Steven Liu's avatar
Steven Liu committed
92
<Tip>
Sylvain Gugger's avatar
Sylvain Gugger committed
93

Steven Liu's avatar
Steven Liu committed
94
95
You will see a warning about some of the pretrained weights not being used and some weights being randomly
initialized. Don't worry, this is completely normal! The pretrained head of the BERT model is discarded, and replaced with a randomly initialized classification head. You will fine-tune this new model head on your sequence classification task, transferring the knowledge of the pretrained model to it.
Sylvain Gugger's avatar
Sylvain Gugger committed
96

Steven Liu's avatar
Steven Liu committed
97
</Tip>
Sylvain Gugger's avatar
Sylvain Gugger committed
98

Steven Liu's avatar
Steven Liu committed
99
### Training hyperparameters
Sylvain Gugger's avatar
Sylvain Gugger committed
100

Steven Liu's avatar
Steven Liu committed
101
Next, create a [`TrainingArguments`] class which contains all the hyperparameters you can tune as well as flags for activating different training options. For this tutorial you can start with the default training [hyperparameters](https://huggingface.co/docs/transformers/main_classes/trainer#transformers.TrainingArguments), but feel free to experiment with these to find your optimal settings.
Sylvain Gugger's avatar
Sylvain Gugger committed
102

Steven Liu's avatar
Steven Liu committed
103
Specify where to save the checkpoints from your training:
Sylvain Gugger's avatar
Sylvain Gugger committed
104

Steven Liu's avatar
Steven Liu committed
105
106
```py
>>> from transformers import TrainingArguments
Sylvain Gugger's avatar
Sylvain Gugger committed
107

Steven Liu's avatar
Steven Liu committed
108
>>> training_args = TrainingArguments(output_dir="test_trainer")
Sylvain Gugger's avatar
Sylvain Gugger committed
109
110
```

111
### Evaluate
Sylvain Gugger's avatar
Sylvain Gugger committed
112

113
[`Trainer`] does not automatically evaluate model performance during training. You'll need to pass [`Trainer`] a function to compute and report metrics. The [🤗 Evaluate](https://huggingface.co/docs/evaluate/index) library provides a simple [`accuracy`](https://huggingface.co/spaces/evaluate-metric/accuracy) function you can load with the [`evaluate.load`] (see this [quicktour](https://huggingface.co/docs/evaluate/a_quick_tour) for more information) function:
Sylvain Gugger's avatar
Sylvain Gugger committed
114

Steven Liu's avatar
Steven Liu committed
115
116
```py
>>> import numpy as np
117
>>> import evaluate
Sylvain Gugger's avatar
Sylvain Gugger committed
118

119
>>> metric = evaluate.load("accuracy")
Steven Liu's avatar
Steven Liu committed
120
```
Sylvain Gugger's avatar
Sylvain Gugger committed
121

122
Call [`~evaluate.compute`] on `metric` to calculate the accuracy of your predictions. Before passing your predictions to `compute`, you need to convert the logits to predictions (remember all 🤗 Transformers models return logits):
Sylvain Gugger's avatar
Sylvain Gugger committed
123

Steven Liu's avatar
Steven Liu committed
124
125
126
127
128
```py
>>> def compute_metrics(eval_pred):
...     logits, labels = eval_pred
...     predictions = np.argmax(logits, axis=-1)
...     return metric.compute(predictions=predictions, references=labels)
Sylvain Gugger's avatar
Sylvain Gugger committed
129
130
```

131
If you'd like to monitor your evaluation metrics during fine-tuning, specify the `eval_strategy` parameter in your training arguments to report the evaluation metric at the end of each epoch:
Steven Liu's avatar
Steven Liu committed
132
133

```py
134
>>> from transformers import TrainingArguments, Trainer
Sylvain Gugger's avatar
Sylvain Gugger committed
135

136
>>> training_args = TrainingArguments(output_dir="test_trainer", eval_strategy="epoch")
Steven Liu's avatar
Steven Liu committed
137
```
Sylvain Gugger's avatar
Sylvain Gugger committed
138

Steven Liu's avatar
Steven Liu committed
139
### Trainer
Sylvain Gugger's avatar
Sylvain Gugger committed
140

Steven Liu's avatar
Steven Liu committed
141
Create a [`Trainer`] object with your model, training arguments, training and test datasets, and evaluation function:
Sylvain Gugger's avatar
Sylvain Gugger committed
142

Steven Liu's avatar
Steven Liu committed
143
144
145
146
147
148
149
150
```py
>>> trainer = Trainer(
...     model=model,
...     args=training_args,
...     train_dataset=small_train_dataset,
...     eval_dataset=small_eval_dataset,
...     compute_metrics=compute_metrics,
... )
Sylvain Gugger's avatar
Sylvain Gugger committed
151
152
```

Steven Liu's avatar
Steven Liu committed
153
Then fine-tune your model by calling [`~transformers.Trainer.train`]:
Sylvain Gugger's avatar
Sylvain Gugger committed
154

Steven Liu's avatar
Steven Liu committed
155
156
157
```py
>>> trainer.train()
```
158
159
</pt>
<tf>
Sylvain Gugger's avatar
Sylvain Gugger committed
160
161
162
163
<a id='keras'></a>

<Youtube id="rnTGBy2ax1c"/>

Matt's avatar
Matt committed
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
## Train a TensorFlow model with Keras

You can also train 🤗 Transformers models in TensorFlow with the Keras API!

### Loading data for Keras

When you want to train a 🤗 Transformers model with the Keras API, you need to convert your dataset to a format that
Keras understands. If your dataset is small, you can just convert the whole thing to NumPy arrays and pass it to Keras.
Let's try that first before we do anything more complicated.

First, load a dataset. We'll use the CoLA dataset from the [GLUE benchmark](https://huggingface.co/datasets/glue),
since it's a simple binary text classification task, and just take the training split for now.

```py
from datasets import load_dataset
Sylvain Gugger's avatar
Sylvain Gugger committed
179

Matt's avatar
Matt committed
180
181
182
dataset = load_dataset("glue", "cola")
dataset = dataset["train"]  # Just take the training split for now
```
Sylvain Gugger's avatar
Sylvain Gugger committed
183

Matt's avatar
Matt committed
184
185
Next, load a tokenizer and tokenize the data as NumPy arrays. Note that the labels are already a list of 0 and 1s,
so we can just convert that directly to a NumPy array without tokenization!
Sylvain Gugger's avatar
Sylvain Gugger committed
186

Steven Liu's avatar
Steven Liu committed
187
```py
Matt's avatar
Matt committed
188
from transformers import AutoTokenizer
189
import numpy as np
Sylvain Gugger's avatar
Sylvain Gugger committed
190

191
tokenizer = AutoTokenizer.from_pretrained("google-bert/bert-base-cased")
192
tokenized_data = tokenizer(dataset["sentence"], return_tensors="np", padding=True)
193
194
# Tokenizer returns a BatchEncoding, but we convert that to a dict for Keras
tokenized_data = dict(tokenized_data)
Matt's avatar
Matt committed
195
196
197
198

labels = np.array(dataset["label"])  # Label is already an array of 0 and 1
```

199
Finally, load, [`compile`](https://keras.io/api/models/model_training_apis/#compile-method), and [`fit`](https://keras.io/api/models/model_training_apis/#fit-method) the model. Note that Transformers models all have a default task-relevant loss function, so you don't need to specify one unless you want to:
Matt's avatar
Matt committed
200
201
202
203
204
205

```py
from transformers import TFAutoModelForSequenceClassification
from tensorflow.keras.optimizers import Adam

# Load and compile our model
206
model = TFAutoModelForSequenceClassification.from_pretrained("google-bert/bert-base-cased")
Matt's avatar
Matt committed
207
# Lower learning rates are often better for fine-tuning transformers
208
model.compile(optimizer=Adam(3e-5))  # No loss argument!
Matt's avatar
Matt committed
209
210

model.fit(tokenized_data, labels)
Sylvain Gugger's avatar
Sylvain Gugger committed
211
212
```

Steven Liu's avatar
Steven Liu committed
213
214
<Tip>

Matt's avatar
Matt committed
215
216
217
You don't have to pass a loss argument to your models when you `compile()` them! Hugging Face models automatically
choose a loss that is appropriate for their task and model architecture if this argument is left blank. You can always
override this by specifying a loss yourself if you want to!
Steven Liu's avatar
Steven Liu committed
218
219

</Tip>
Sylvain Gugger's avatar
Sylvain Gugger committed
220

Matt's avatar
Matt committed
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
This approach works great for smaller datasets, but for larger datasets, you might find it starts to become a problem. Why?
Because the tokenized array and labels would have to be fully loaded into memory, and because NumPy doesn’t handle
“jagged” arrays, so every tokenized sample would have to be padded to the length of the longest sample in the whole
dataset. That’s going to make your array even bigger, and all those padding tokens will slow down training too!

### Loading data as a tf.data.Dataset

If you want to avoid slowing down training, you can load your data as a `tf.data.Dataset` instead. Although you can write your own
`tf.data` pipeline if you want, we have two convenience methods for doing this:

- [`~TFPreTrainedModel.prepare_tf_dataset`]: This is the method we recommend in most cases. Because it is a method
on your model, it can inspect the model to automatically figure out which columns are usable as model inputs, and
discard the others to make a simpler, more performant dataset.
- [`~datasets.Dataset.to_tf_dataset`]: This method is more low-level, and is useful when you want to exactly control how
your dataset is created, by specifying exactly which `columns` and `label_cols` to include.

Before you can use [`~TFPreTrainedModel.prepare_tf_dataset`], you will need to add the tokenizer outputs to your dataset as columns, as shown in
the following code sample:
Sylvain Gugger's avatar
Sylvain Gugger committed
239

Steven Liu's avatar
Steven Liu committed
240
```py
Matt's avatar
Matt committed
241
242
243
def tokenize_dataset(data):
    # Keys of the returned dictionary will be added to the dataset as columns
    return tokenizer(data["text"])
Steven Liu's avatar
Steven Liu committed
244

Matt's avatar
Matt committed
245
246

dataset = dataset.map(tokenize_dataset)
Sylvain Gugger's avatar
Sylvain Gugger committed
247
248
```

Matt's avatar
Matt committed
249
250
251
Remember that Hugging Face datasets are stored on disk by default, so this will not inflate your memory usage! Once the
columns have been added, you can stream batches from the dataset and add padding to each batch, which greatly
reduces the number of padding tokens compared to padding the entire dataset.
Steven Liu's avatar
Steven Liu committed
252

Sylvain Gugger's avatar
Sylvain Gugger committed
253

Steven Liu's avatar
Steven Liu committed
254
```py
Matt's avatar
Matt committed
255
>>> tf_dataset = model.prepare_tf_dataset(dataset["train"], batch_size=16, shuffle=True, tokenizer=tokenizer)
Sylvain Gugger's avatar
Sylvain Gugger committed
256
257
```

Matt's avatar
Matt committed
258
259
260
261
262
263
264
265
266
Note that in the code sample above, you need to pass the tokenizer to `prepare_tf_dataset` so it can correctly pad batches as they're loaded.
If all the samples in your dataset are the same length and no padding is necessary, you can skip this argument.
If you need to do something more complex than just padding samples (e.g. corrupting tokens for masked language
modelling), you can use the `collate_fn` argument instead to pass a function that will be called to transform the
list of samples into a batch and apply any preprocessing you want. See our
[examples](https://github.com/huggingface/transformers/tree/main/examples) or
[notebooks](https://huggingface.co/docs/transformers/notebooks) to see this approach in action.

Once you've created a `tf.data.Dataset`, you can compile and fit the model as before:
Sylvain Gugger's avatar
Sylvain Gugger committed
267

Steven Liu's avatar
Steven Liu committed
268
```py
269
model.compile(optimizer=Adam(3e-5))  # No loss argument!
Sylvain Gugger's avatar
Sylvain Gugger committed
270

Matt's avatar
Matt committed
271
model.fit(tf_dataset)
Sylvain Gugger's avatar
Sylvain Gugger committed
272
```
Matt's avatar
Matt committed
273

274
275
</tf>
</frameworkcontent>
Sylvain Gugger's avatar
Sylvain Gugger committed
276
277
278

<a id='pytorch_native'></a>

279
## Train in native PyTorch
Sylvain Gugger's avatar
Sylvain Gugger committed
280

281
282
<frameworkcontent>
<pt>
Sylvain Gugger's avatar
Sylvain Gugger committed
283
284
<Youtube id="Dh9CL8fyG80"/>

Steven Liu's avatar
Steven Liu committed
285
[`Trainer`] takes care of the training loop and allows you to fine-tune a model in a single line of code. For users who prefer to write their own training loop, you can also fine-tune a 🤗 Transformers model in native PyTorch.
Sylvain Gugger's avatar
Sylvain Gugger committed
286

Steven Liu's avatar
Steven Liu committed
287
288
289
At this point, you may need to restart your notebook or execute the following code to free some memory:

```py
Sylvain Gugger's avatar
Sylvain Gugger committed
290
291
292
293
294
del model
del trainer
torch.cuda.empty_cache()
```

Steven Liu's avatar
Steven Liu committed
295
296
297
298
299
300
301
302
303
Next, manually postprocess `tokenized_dataset` to prepare it for training.

1. Remove the `text` column because the model does not accept raw text as an input:

    ```py
    >>> tokenized_datasets = tokenized_datasets.remove_columns(["text"])
    ```

2. Rename the `label` column to `labels` because the model expects the argument to be named `labels`:
Sylvain Gugger's avatar
Sylvain Gugger committed
304

Steven Liu's avatar
Steven Liu committed
305
306
307
    ```py
    >>> tokenized_datasets = tokenized_datasets.rename_column("label", "labels")
    ```
Sylvain Gugger's avatar
Sylvain Gugger committed
308

Steven Liu's avatar
Steven Liu committed
309
3. Set the format of the dataset to return PyTorch tensors instead of lists:
Sylvain Gugger's avatar
Sylvain Gugger committed
310

Steven Liu's avatar
Steven Liu committed
311
312
313
    ```py
    >>> tokenized_datasets.set_format("torch")
    ```
Sylvain Gugger's avatar
Sylvain Gugger committed
314

Steven Liu's avatar
Steven Liu committed
315
316
317
318
319
Then create a smaller subset of the dataset as previously shown to speed up the fine-tuning:

```py
>>> small_train_dataset = tokenized_datasets["train"].shuffle(seed=42).select(range(1000))
>>> small_eval_dataset = tokenized_datasets["test"].shuffle(seed=42).select(range(1000))
Sylvain Gugger's avatar
Sylvain Gugger committed
320
321
```

Steven Liu's avatar
Steven Liu committed
322
323
324
### DataLoader

Create a `DataLoader` for your training and test datasets so you can iterate over batches of data:
Sylvain Gugger's avatar
Sylvain Gugger committed
325

Steven Liu's avatar
Steven Liu committed
326
327
```py
>>> from torch.utils.data import DataLoader
Sylvain Gugger's avatar
Sylvain Gugger committed
328

Steven Liu's avatar
Steven Liu committed
329
330
>>> train_dataloader = DataLoader(small_train_dataset, shuffle=True, batch_size=8)
>>> eval_dataloader = DataLoader(small_eval_dataset, batch_size=8)
Sylvain Gugger's avatar
Sylvain Gugger committed
331
332
```

Steven Liu's avatar
Steven Liu committed
333
Load your model with the number of expected labels:
Sylvain Gugger's avatar
Sylvain Gugger committed
334

Steven Liu's avatar
Steven Liu committed
335
336
```py
>>> from transformers import AutoModelForSequenceClassification
Sylvain Gugger's avatar
Sylvain Gugger committed
337

338
>>> model = AutoModelForSequenceClassification.from_pretrained("google-bert/bert-base-cased", num_labels=5)
Sylvain Gugger's avatar
Sylvain Gugger committed
339
340
```

Steven Liu's avatar
Steven Liu committed
341
### Optimizer and learning rate scheduler
Sylvain Gugger's avatar
Sylvain Gugger committed
342

Steven Liu's avatar
Steven Liu committed
343
Create an optimizer and learning rate scheduler to fine-tune the model. Let's use the [`AdamW`](https://pytorch.org/docs/stable/generated/torch.optim.AdamW.html) optimizer from PyTorch:
Sylvain Gugger's avatar
Sylvain Gugger committed
344

Steven Liu's avatar
Steven Liu committed
345
346
347
348
```py
>>> from torch.optim import AdamW

>>> optimizer = AdamW(model.parameters(), lr=5e-5)
Sylvain Gugger's avatar
Sylvain Gugger committed
349
350
```

Steven Liu's avatar
Steven Liu committed
351
Create the default learning rate scheduler from [`Trainer`]:
Sylvain Gugger's avatar
Sylvain Gugger committed
352

Steven Liu's avatar
Steven Liu committed
353
354
```py
>>> from transformers import get_scheduler
Sylvain Gugger's avatar
Sylvain Gugger committed
355

Steven Liu's avatar
Steven Liu committed
356
357
358
359
360
>>> num_epochs = 3
>>> num_training_steps = num_epochs * len(train_dataloader)
>>> lr_scheduler = get_scheduler(
...     name="linear", optimizer=optimizer, num_warmup_steps=0, num_training_steps=num_training_steps
... )
Sylvain Gugger's avatar
Sylvain Gugger committed
361
362
```

Steven Liu's avatar
Steven Liu committed
363
Lastly, specify `device` to use a GPU if you have access to one. Otherwise, training on a CPU may take several hours instead of a couple of minutes.
Sylvain Gugger's avatar
Sylvain Gugger committed
364

Steven Liu's avatar
Steven Liu committed
365
366
```py
>>> import torch
Sylvain Gugger's avatar
Sylvain Gugger committed
367

Steven Liu's avatar
Steven Liu committed
368
369
>>> device = torch.device("cuda") if torch.cuda.is_available() else torch.device("cpu")
>>> model.to(device)
Sylvain Gugger's avatar
Sylvain Gugger committed
370
371
```

Steven Liu's avatar
Steven Liu committed
372
373
374
375
376
377
378
379
380
381
382
<Tip>

Get free access to a cloud GPU if you don't have one with a hosted notebook like [Colaboratory](https://colab.research.google.com/) or [SageMaker StudioLab](https://studiolab.sagemaker.aws/).

</Tip>

Great, now you are ready to train! 🥳 

### Training loop

To keep track of your training progress, use the [tqdm](https://tqdm.github.io/) library to add a progress bar over the number of training steps:
Sylvain Gugger's avatar
Sylvain Gugger committed
383

Steven Liu's avatar
Steven Liu committed
384
385
```py
>>> from tqdm.auto import tqdm
Sylvain Gugger's avatar
Sylvain Gugger committed
386

Steven Liu's avatar
Steven Liu committed
387
>>> progress_bar = tqdm(range(num_training_steps))
Sylvain Gugger's avatar
Sylvain Gugger committed
388

Steven Liu's avatar
Steven Liu committed
389
390
391
392
393
394
395
>>> model.train()
>>> for epoch in range(num_epochs):
...     for batch in train_dataloader:
...         batch = {k: v.to(device) for k, v in batch.items()}
...         outputs = model(**batch)
...         loss = outputs.loss
...         loss.backward()
Sylvain Gugger's avatar
Sylvain Gugger committed
396

Steven Liu's avatar
Steven Liu committed
397
398
399
400
...         optimizer.step()
...         lr_scheduler.step()
...         optimizer.zero_grad()
...         progress_bar.update(1)
Sylvain Gugger's avatar
Sylvain Gugger committed
401
402
```

403
### Evaluate
Sylvain Gugger's avatar
Sylvain Gugger committed
404

405
Just like how you added an evaluation function to [`Trainer`], you need to do the same when you write your own training loop. But instead of calculating and reporting the metric at the end of each epoch, this time you'll accumulate all the batches with [`~evaluate.add_batch`] and calculate the metric at the very end.
Sylvain Gugger's avatar
Sylvain Gugger committed
406

Steven Liu's avatar
Steven Liu committed
407
```py
408
409
410
>>> import evaluate

>>> metric = evaluate.load("accuracy")
Steven Liu's avatar
Steven Liu committed
411
412
413
414
415
>>> model.eval()
>>> for batch in eval_dataloader:
...     batch = {k: v.to(device) for k, v in batch.items()}
...     with torch.no_grad():
...         outputs = model(**batch)
Sylvain Gugger's avatar
Sylvain Gugger committed
416

Steven Liu's avatar
Steven Liu committed
417
418
419
...     logits = outputs.logits
...     predictions = torch.argmax(logits, dim=-1)
...     metric.add_batch(predictions=predictions, references=batch["labels"])
Sylvain Gugger's avatar
Sylvain Gugger committed
420

Steven Liu's avatar
Steven Liu committed
421
>>> metric.compute()
Sylvain Gugger's avatar
Sylvain Gugger committed
422
```
423
424
</pt>
</frameworkcontent>
Sylvain Gugger's avatar
Sylvain Gugger committed
425
426
427
428
429

<a id='additional-resources'></a>

## Additional resources

Steven Liu's avatar
Steven Liu committed
430
For more fine-tuning examples, refer to:
Sylvain Gugger's avatar
Sylvain Gugger committed
431

432
- [🤗 Transformers Examples](https://github.com/huggingface/transformers/tree/main/examples) includes scripts
Steven Liu's avatar
Steven Liu committed
433
  to train common NLP tasks in PyTorch and TensorFlow.
Sylvain Gugger's avatar
Sylvain Gugger committed
434

Steven Liu's avatar
Steven Liu committed
435
- [🤗 Transformers Notebooks](notebooks) contains various notebooks on how to fine-tune a model for specific tasks in PyTorch and TensorFlow.