| Tutorial: Classifying Names with a Character-Level RNN |
| ====================================================== |
|
|
| In this tutorial we will extend fairseq to support *classification* tasks. In |
| particular we will re-implement the PyTorch tutorial for `Classifying Names with |
| a Character-Level RNN <https://pytorch.org/tutorials/intermediate/char_rnn_classification_tutorial.html>`_ |
| in fairseq. It is recommended to quickly skim that tutorial before beginning |
| this one. |
|
|
| This tutorial covers: |
|
|
| 1. **Preprocessing the data** to create dictionaries. |
| 2. **Registering a new Model** that encodes an input sentence with a simple RNN |
| and predicts the output label. |
| 3. **Registering a new Task** that loads our dictionaries and dataset. |
| 4. **Training the Model** using the existing command-line tools. |
| 5. **Writing an evaluation script** that imports fairseq and allows us to |
| interactively evaluate our model on new inputs. |
|
|
|
|
| 1. Preprocessing the data |
| |
|
|
| The original tutorial provides raw data, but we'll work with a modified version |
| of the data that is already tokenized into characters and split into separate |
| train, valid and test sets. |
|
|
| Download and extract the data from here: |
| `tutorial_names.tar.gz <https://dl.fbaipublicfiles.com/fairseq/data/tutorial_names.tar.gz>`_ |
|
|
| Once extracted, let's preprocess the data using the :ref:`fairseq-preprocess` |
| command-line tool to create the dictionaries. While this tool is primarily |
| intended for sequence-to-sequence problems, we're able to reuse it here by |
| treating the label as a "target" sequence of length 1. We'll also output the |
| preprocessed files in "raw" format using the `` |
| enhance readability: |
|
|
| .. code-block:: console |
|
|
| > fairseq-preprocess \ |
| |
| |
| |
|
|
| After running the above command you should see a new directory, |
| :file:`names-bin/`, containing the dictionaries for *inputs* and *labels*. |
|
|
|
|
| 2. Registering a new Model |
| |
|
|
| Next we'll register a new model in fairseq that will encode an input sentence |
| with a simple RNN and predict the output label. Compared to the original PyTorch |
| tutorial, our version will also work with batches of data and GPU Tensors. |
|
|
| First let's copy the simple RNN module implemented in the `PyTorch tutorial |
| <https://pytorch.org/tutorials/intermediate/char_rnn_classification_tutorial.html#creating-the-network>`_. |
| Create a new file named :file:`fairseq/models/rnn_classifier.py` with the |
| following contents:: |
|
|
| import torch |
| import torch.nn as nn |
|
|
| class RNN(nn.Module): |
|
|
| def __init__(self, input_size, hidden_size, output_size): |
| super(RNN, self).__init__() |
|
|
| self.hidden_size = hidden_size |
|
|
| self.i2h = nn.Linear(input_size + hidden_size, hidden_size) |
| self.i2o = nn.Linear(input_size + hidden_size, output_size) |
| self.softmax = nn.LogSoftmax(dim=1) |
|
|
| def forward(self, input, hidden): |
| combined = torch.cat((input, hidden), 1) |
| hidden = self.i2h(combined) |
| output = self.i2o(combined) |
| output = self.softmax(output) |
| return output, hidden |
|
|
| def initHidden(self): |
| return torch.zeros(1, self.hidden_size) |
|
|
| We must also *register* this model with fairseq using the |
| :func:`~fairseq.models.register_model` function decorator. Once the model is |
| registered we'll be able to use it with the existing :ref:`Command-line Tools`. |
|
|
| All registered models must implement the :class:`~fairseq.models.BaseFairseqModel` |
| interface, so we'll create a small wrapper class in the same file and register |
| it in fairseq with the name ``'rnn_classifier'``:: |
|
|
| from fairseq.models import BaseFairseqModel, register_model |
|
|
| # Note: the register_model "decorator" should immediately precede the |
| # definition of the Model class. |
|
|
| @register_model('rnn_classifier') |
| class FairseqRNNClassifier(BaseFairseqModel): |
|
|
| @staticmethod |
| def add_args(parser): |
| # Models can override this method to add new command-line arguments. |
| # Here we'll add a new command-line argument to configure the |
| # dimensionality of the hidden state. |
| parser.add_argument( |
| ' |
| help='dimensionality of the hidden state', |
| ) |
|
|
| @classmethod |
| def build_model(cls, args, task): |
| # Fairseq initializes models by calling the ``build_model()`` |
| # function. This provides more flexibility, since the returned model |
| # instance can be of a different type than the one that was called. |
| # In this case we'll just return a FairseqRNNClassifier instance. |
|
|
| # Initialize our RNN module |
| rnn = RNN( |
| # We'll define the Task in the next section, but for now just |
| # notice that the task holds the dictionaries for the "source" |
| # (i.e., the input sentence) and "target" (i.e., the label). |
| input_size=len(task.source_dictionary), |
| hidden_size=args.hidden_dim, |
| output_size=len(task.target_dictionary), |
| ) |
|
|
| # Return the wrapped version of the module |
| return FairseqRNNClassifier( |
| rnn=rnn, |
| input_vocab=task.source_dictionary, |
| ) |
|
|
| def __init__(self, rnn, input_vocab): |
| super(FairseqRNNClassifier, self).__init__() |
|
|
| self.rnn = rnn |
| self.input_vocab = input_vocab |
|
|
| # The RNN module in the tutorial expects one-hot inputs, so we can |
| # precompute the identity matrix to help convert from indices to |
| # one-hot vectors. We register it as a buffer so that it is moved to |
| # the GPU when ``cuda()`` is called. |
| self.register_buffer('one_hot_inputs', torch.eye(len(input_vocab))) |
|
|
| def forward(self, src_tokens, src_lengths): |
| # The inputs to the ``forward()`` function are determined by the |
| # Task, and in particular the ``'net_input'`` key in each |
| # mini-batch. We'll define the Task in the next section, but for |
| # now just know that *src_tokens* has shape `(batch, src_len)` and |
| # *src_lengths* has shape `(batch)`. |
| bsz, max_src_len = src_tokens.size() |
|
|
| # Initialize the RNN hidden state. Compared to the original PyTorch |
| # tutorial we'll also handle batched inputs and work on the GPU. |
| hidden = self.rnn.initHidden() |
| hidden = hidden.repeat(bsz, 1) # expand for batched inputs |
| hidden = hidden.to(src_tokens.device) # move to GPU |
|
|
| for i in range(max_src_len): |
| # WARNING: The inputs have padding, so we should mask those |
| # elements here so that padding doesn't affect the results. |
| # This is left as an exercise for the reader. The padding symbol |
| # is given by ``self.input_vocab.pad()`` and the unpadded length |
| # of each input is given by *src_lengths*. |
|
|
| # One-hot encode a batch of input characters. |
| input = self.one_hot_inputs[src_tokens[:, i].long()] |
|
|
| # Feed the input to our RNN. |
| output, hidden = self.rnn(input, hidden) |
|
|
| # Return the final output state for making a prediction |
| return output |
|
|
| Finally let's define a *named architecture* with the configuration for our |
| model. This is done with the :func:`~fairseq.models.register_model_architecture` |
| function decorator. Thereafter this named architecture can be used with the |
| `` |
|
|
| from fairseq.models import register_model_architecture |
|
|
| # The first argument to ``register_model_architecture()`` should be the name |
| # of the model we registered above (i.e., 'rnn_classifier'). The function we |
| # register here should take a single argument *args* and modify it in-place |
| # to match the desired architecture. |
|
|
| @register_model_architecture('rnn_classifier', 'pytorch_tutorial_rnn') |
| def pytorch_tutorial_rnn(args): |
| # We use ``getattr()`` to prioritize arguments that are explicitly given |
| # on the command-line, so that the defaults defined below are only used |
| # when no other value has been specified. |
| args.hidden_dim = getattr(args, 'hidden_dim', 128) |
|
|
|
|
| 3. Registering a new Task |
| |
|
|
| Now we'll register a new :class:`~fairseq.tasks.FairseqTask` that will load our |
| dictionaries and dataset. Tasks can also control how the data is batched into |
| mini-batches, but in this tutorial we'll reuse the batching provided by |
| :class:`fairseq.data.LanguagePairDataset`. |
|
|
| Create a new file named :file:`fairseq/tasks/simple_classification.py` with the |
| following contents:: |
|
|
| import os |
| import torch |
|
|
| from fairseq.data import Dictionary, LanguagePairDataset |
| from fairseq.tasks import LegacyFairseqTask, register_task |
|
|
|
|
| @register_task('simple_classification') |
| class SimpleClassificationTask(LegacyFairseqTask): |
|
|
| @staticmethod |
| def add_args(parser): |
| # Add some command-line arguments for specifying where the data is |
| # located and the maximum supported input length. |
| parser.add_argument('data', metavar='FILE', |
| help='file prefix for data') |
| parser.add_argument(' |
| help='max input length') |
|
|
| @classmethod |
| def setup_task(cls, args, **kwargs): |
| # Here we can perform any setup required for the task. This may include |
| # loading Dictionaries, initializing shared Embedding layers, etc. |
| # In this case we'll just load the Dictionaries. |
| input_vocab = Dictionary.load(os.path.join(args.data, 'dict.input.txt')) |
| label_vocab = Dictionary.load(os.path.join(args.data, 'dict.label.txt')) |
| print('| [input] dictionary: {} types'.format(len(input_vocab))) |
| print('| [label] dictionary: {} types'.format(len(label_vocab))) |
|
|
| return SimpleClassificationTask(args, input_vocab, label_vocab) |
|
|
| def __init__(self, args, input_vocab, label_vocab): |
| super().__init__(args) |
| self.input_vocab = input_vocab |
| self.label_vocab = label_vocab |
|
|
| def load_dataset(self, split, **kwargs): |
| """Load a given dataset split (e.g., train, valid, test).""" |
|
|
| prefix = os.path.join(self.args.data, '{}.input-label'.format(split)) |
|
|
| # Read input sentences. |
| sentences, lengths = [], [] |
| with open(prefix + '.input', encoding='utf-8') as file: |
| for line in file: |
| sentence = line.strip() |
|
|
| # Tokenize the sentence, splitting on spaces |
| tokens = self.input_vocab.encode_line( |
| sentence, add_if_not_exist=False, |
| ) |
|
|
| sentences.append(tokens) |
| lengths.append(tokens.numel()) |
|
|
| # Read labels. |
| labels = [] |
| with open(prefix + '.label', encoding='utf-8') as file: |
| for line in file: |
| label = line.strip() |
| labels.append( |
| # Convert label to a numeric ID. |
| torch.LongTensor([self.label_vocab.add_symbol(label)]) |
| ) |
|
|
| assert len(sentences) == len(labels) |
| print('| {} {} {} examples'.format(self.args.data, split, len(sentences))) |
|
|
| # We reuse LanguagePairDataset since classification can be modeled as a |
| # sequence-to-sequence task where the target sequence has length 1. |
| self.datasets[split] = LanguagePairDataset( |
| src=sentences, |
| src_sizes=lengths, |
| src_dict=self.input_vocab, |
| tgt=labels, |
| tgt_sizes=torch.ones(len(labels)), # targets have length 1 |
| tgt_dict=self.label_vocab, |
| left_pad_source=False, |
| # Since our target is a single class label, there's no need for |
| # teacher forcing. If we set this to ``True`` then our Model's |
| # ``forward()`` method would receive an additional argument called |
| # *prev_output_tokens* that would contain a shifted version of the |
| # target sequence. |
| input_feeding=False, |
| ) |
|
|
| def max_positions(self): |
| """Return the max input length allowed by the task.""" |
| # The source should be less than *args.max_positions* and the "target" |
| # has max length 1. |
| return (self.args.max_positions, 1) |
|
|
| @property |
| def source_dictionary(self): |
| """Return the source :class:`~fairseq.data.Dictionary`.""" |
| return self.input_vocab |
|
|
| @property |
| def target_dictionary(self): |
| """Return the target :class:`~fairseq.data.Dictionary`.""" |
| return self.label_vocab |
|
|
| # We could override this method if we wanted more control over how batches |
| # are constructed, but it's not necessary for this tutorial since we can |
| # reuse the batching provided by LanguagePairDataset. |
| # |
| # def get_batch_iterator( |
| # self, dataset, max_tokens=None, max_sentences=None, max_positions=None, |
| # ignore_invalid_inputs=False, required_batch_size_multiple=1, |
| # seed=1, num_shards=1, shard_id=0, num_workers=0, epoch=1, |
| # data_buffer_size=0, disable_iterator_cache=False, |
| # ): |
| # (...) |
|
|
|
|
| 4. Training the Model |
| |
|
|
| Now we're ready to train the model. We can use the existing :ref:`fairseq-train` |
| command-line tool for this, making sure to specify our new Task (`` |
| simple_classification``) and Model architecture (`` |
| pytorch_tutorial_rnn``): |
|
|
| .. note:: |
|
|
| You can also configure the dimensionality of the hidden state by passing the |
| `` |
|
|
| .. code-block:: console |
|
|
| > fairseq-train names-bin \ |
| |
| |
| |
| |
| (...) |
| | epoch 027 | loss 1.200 | ppl 2.30 | wps 15728 | ups 119.4 | wpb 116 | bsz 116 | num_updates 3726 | lr 1.5625e-05 | gnorm 1.290 | clip 0% | oom 0 | wall 32 | train_wall 21 |
| | epoch 027 | valid on 'valid' subset | valid_loss 1.41304 | valid_ppl 2.66 | num_updates 3726 | best 1.41208 |
| | done training in 31.6 seconds |
|
|
| The model files should appear in the :file:`checkpoints/` directory. |
|
|
|
|
| 5. Writing an evaluation script |
| |
|
|
| Finally we can write a short script to evaluate our model on new inputs. Create |
| a new file named :file:`eval_classifier.py` with the following contents:: |
|
|
| from fairseq import checkpoint_utils, data, options, tasks |
|
|
| # Parse command-line arguments for generation |
| parser = options.get_generation_parser(default_task='simple_classification') |
| args = options.parse_args_and_arch(parser) |
|
|
| # Setup task |
| task = tasks.setup_task(args) |
|
|
| # Load model |
| print('| loading model from {}'.format(args.path)) |
| models, _model_args = checkpoint_utils.load_model_ensemble([args.path], task=task) |
| model = models[0] |
|
|
| while True: |
| sentence = input('\nInput: ') |
|
|
| # Tokenize into characters |
| chars = ' '.join(list(sentence.strip())) |
| tokens = task.source_dictionary.encode_line( |
| chars, add_if_not_exist=False, |
| ) |
|
|
| # Build mini-batch to feed to the model |
| batch = data.language_pair_dataset.collate( |
| samples=[{'id': -1, 'source': tokens}], # bsz = 1 |
| pad_idx=task.source_dictionary.pad(), |
| eos_idx=task.source_dictionary.eos(), |
| left_pad_source=False, |
| input_feeding=False, |
| ) |
|
|
| # Feed batch to the model and get predictions |
| preds = model(**batch['net_input']) |
|
|
| # Print top 3 predictions and their log-probabilities |
| top_scores, top_labels = preds[0].topk(k=3) |
| for score, label_idx in zip(top_scores, top_labels): |
| label_name = task.target_dictionary.string([label_idx]) |
| print('({:.2f})\t{}'.format(score, label_name)) |
|
|
| Now we can evaluate our model interactively. Note that we have included the |
| original data path (:file:`names-bin/`) so that the dictionaries can be loaded: |
|
|
| .. code-block:: console |
|
|
| > python eval_classifier.py names-bin |
| | [input] dictionary: 64 types |
| | [label] dictionary: 24 types |
| | loading model from checkpoints/checkpoint_best.pt |
|
|
| Input: Satoshi |
| (-0.61) Japanese |
| (-1.20) Arabic |
| (-2.86) Italian |
|
|
| Input: Sinbad |
| (-0.30) Arabic |
| (-1.76) English |
| (-4.08) Russian |
|
|