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Evaluating Pre-trained Models | |
============================= | |
First, download a pre-trained model along with its vocabularies: | |
.. code-block:: console | |
> curl https://dl.fbaipublicfiles.com/fairseq/models/wmt14.v2.en-fr.fconv-py.tar.bz2 | tar xvjf - | |
This model uses a `Byte Pair Encoding (BPE) | |
vocabulary <https://arxiv.org/abs/1508.07909>`__, so we'll have to apply | |
the encoding to the source text before it can be translated. This can be | |
done with the | |
`apply\_bpe.py <https://github.com/rsennrich/subword-nmt/blob/master/subword_nmt/apply_bpe.py>`__ | |
script using the ``wmt14.en-fr.fconv-cuda/bpecodes`` file. ``@@`` is | |
used as a continuation marker and the original text can be easily | |
recovered with e.g. ``sed s/@@ //g`` or by passing the ``--remove-bpe`` | |
flag to :ref:`fairseq-generate`. Prior to BPE, input text needs to be tokenized | |
using ``tokenizer.perl`` from | |
`mosesdecoder <https://github.com/moses-smt/mosesdecoder>`__. | |
Let's use :ref:`fairseq-interactive` to generate translations interactively. | |
Here, we use a beam size of 5 and preprocess the input with the Moses | |
tokenizer and the given Byte-Pair Encoding vocabulary. It will automatically | |
remove the BPE continuation markers and detokenize the output. | |
.. code-block:: console | |
> MODEL_DIR=wmt14.en-fr.fconv-py | |
> fairseq-interactive \ | |
--path $MODEL_DIR/model.pt $MODEL_DIR \ | |
--beam 5 --source-lang en --target-lang fr \ | |
--tokenizer moses \ | |
--bpe subword_nmt --bpe-codes $MODEL_DIR/bpecodes | |
| loading model(s) from wmt14.en-fr.fconv-py/model.pt | |
| [en] dictionary: 44206 types | |
| [fr] dictionary: 44463 types | |
| Type the input sentence and press return: | |
Why is it rare to discover new marine mammal species? | |
S-0 Why is it rare to discover new marine mam@@ mal species ? | |
H-0 -0.0643349438905716 Pourquoi est-il rare de découvrir de nouvelles espèces de mammifères marins? | |
P-0 -0.0763 -0.1849 -0.0956 -0.0946 -0.0735 -0.1150 -0.1301 -0.0042 -0.0321 -0.0171 -0.0052 -0.0062 -0.0015 | |
This generation script produces three types of outputs: a line prefixed | |
with *O* is a copy of the original source sentence; *H* is the | |
hypothesis along with an average log-likelihood; and *P* is the | |
positional score per token position, including the | |
end-of-sentence marker which is omitted from the text. | |
Other types of output lines you might see are *D*, the detokenized hypothesis, | |
*T*, the reference target, *A*, alignment info, *E* the history of generation steps. | |
See the `README <https://github.com/pytorch/fairseq#pre-trained-models>`__ for a | |
full list of pre-trained models available. | |
Training a New Model | |
==================== | |
The following tutorial is for machine translation. For an example of how | |
to use Fairseq for other tasks, such as :ref:`language modeling`, please see the | |
``examples/`` directory. | |
Data Pre-processing | |
------------------- | |
Fairseq contains example pre-processing scripts for several translation | |
datasets: IWSLT 2014 (German-English), WMT 2014 (English-French) and WMT | |
2014 (English-German). To pre-process and binarize the IWSLT dataset: | |
.. code-block:: console | |
> cd examples/translation/ | |
> bash prepare-iwslt14.sh | |
> cd ../.. | |
> TEXT=examples/translation/iwslt14.tokenized.de-en | |
> fairseq-preprocess --source-lang de --target-lang en \ | |
--trainpref $TEXT/train --validpref $TEXT/valid --testpref $TEXT/test \ | |
--destdir data-bin/iwslt14.tokenized.de-en | |
This will write binarized data that can be used for model training to | |
``data-bin/iwslt14.tokenized.de-en``. | |
Training | |
-------- | |
Use :ref:`fairseq-train` to train a new model. Here a few example settings that work | |
well for the IWSLT 2014 dataset: | |
.. code-block:: console | |
> mkdir -p checkpoints/fconv | |
> CUDA_VISIBLE_DEVICES=0 fairseq-train data-bin/iwslt14.tokenized.de-en \ | |
--optimizer nag --lr 0.25 --clip-norm 0.1 --dropout 0.2 --max-tokens 4000 \ | |
--arch fconv_iwslt_de_en --save-dir checkpoints/fconv | |
By default, :ref:`fairseq-train` will use all available GPUs on your machine. Use the | |
``CUDA_VISIBLE_DEVICES`` environment variable to select specific GPUs and/or to | |
change the number of GPU devices that will be used. | |
Also note that the batch size is specified in terms of the maximum | |
number of tokens per batch (``--max-tokens``). You may need to use a | |
smaller value depending on the available GPU memory on your system. | |
Generation | |
---------- | |
Once your model is trained, you can generate translations using | |
:ref:`fairseq-generate` **(for binarized data)** or | |
:ref:`fairseq-interactive` **(for raw text)**: | |
.. code-block:: console | |
> fairseq-generate data-bin/iwslt14.tokenized.de-en \ | |
--path checkpoints/fconv/checkpoint_best.pt \ | |
--batch-size 128 --beam 5 | |
| [de] dictionary: 35475 types | |
| [en] dictionary: 24739 types | |
| data-bin/iwslt14.tokenized.de-en test 6750 examples | |
| model fconv | |
| loaded checkpoint trainings/fconv/checkpoint_best.pt | |
S-721 danke . | |
T-721 thank you . | |
... | |
To generate translations with only a CPU, use the ``--cpu`` flag. BPE | |
continuation markers can be removed with the ``--remove-bpe`` flag. | |
Advanced Training Options | |
========================= | |
Large mini-batch training with delayed updates | |
---------------------------------------------- | |
The ``--update-freq`` option can be used to accumulate gradients from | |
multiple mini-batches and delay updating, creating a larger effective | |
batch size. Delayed updates can also improve training speed by reducing | |
inter-GPU communication costs and by saving idle time caused by variance | |
in workload across GPUs. See `Ott et al. | |
(2018) <https://arxiv.org/abs/1806.00187>`__ for more details. | |
To train on a single GPU with an effective batch size that is equivalent | |
to training on 8 GPUs: | |
.. code-block:: console | |
> CUDA_VISIBLE_DEVICES=0 fairseq-train --update-freq 8 (...) | |
Training with half precision floating point (FP16) | |
-------------------------------------------------- | |
.. note:: | |
FP16 training requires a Volta GPU and CUDA 9.1 or greater | |
Recent GPUs enable efficient half precision floating point computation, | |
e.g., using `Nvidia Tensor Cores | |
<https://docs.nvidia.com/deeplearning/sdk/mixed-precision-training/index.html>`__. | |
Fairseq supports FP16 training with the ``--fp16`` flag: | |
.. code-block:: console | |
> fairseq-train --fp16 (...) | |
Distributed training | |
-------------------- | |
Distributed training in fairseq is implemented on top of ``torch.distributed``. | |
The easiest way to launch jobs is with the `torch.distributed.launch | |
<https://pytorch.org/docs/stable/distributed.html#launch-utility>`__ tool. | |
For example, to train a large English-German Transformer model on 2 nodes each | |
with 8 GPUs (in total 16 GPUs), run the following command on each node, | |
replacing ``node_rank=0`` with ``node_rank=1`` on the second node and making | |
sure to update ``--master_addr`` to the IP address of the first node: | |
.. code-block:: console | |
> python -m torch.distributed.launch --nproc_per_node=8 \ | |
--nnodes=2 --node_rank=0 --master_addr="192.168.1.1" \ | |
--master_port=12345 \ | |
$(which fairseq-train) data-bin/wmt16_en_de_bpe32k \ | |
--arch transformer_vaswani_wmt_en_de_big --share-all-embeddings \ | |
--optimizer adam --adam-betas '(0.9, 0.98)' --clip-norm 0.0 \ | |
--lr-scheduler inverse_sqrt --warmup-init-lr 1e-07 --warmup-updates 4000 \ | |
--lr 0.0005 \ | |
--dropout 0.3 --weight-decay 0.0 --criterion label_smoothed_cross_entropy --label-smoothing 0.1 \ | |
--max-tokens 3584 \ | |
--max-epoch 70 \ | |
--fp16 | |
On SLURM clusters, fairseq will automatically detect the number of nodes and | |
GPUs, but a port number must be provided: | |
.. code-block:: console | |
> salloc --gpus=16 --nodes 2 (...) | |
> srun fairseq-train --distributed-port 12345 (...). | |
Sharding very large datasets | |
---------------------------- | |
It can be challenging to train over very large datasets, particularly if your | |
machine does not have much system RAM. Most tasks in fairseq support training | |
over "sharded" datasets, in which the original dataset has been preprocessed | |
into non-overlapping chunks (or "shards"). | |
For example, instead of preprocessing all your data into a single "data-bin" | |
directory, you can split the data and create "data-bin1", "data-bin2", etc. | |
Then you can adapt your training command like so: | |
.. code-block:: console | |
> fairseq-train data-bin1:data-bin2:data-bin3 (...) | |
Training will now iterate over each shard, one by one, with each shard | |
corresponding to an "epoch", thus reducing system memory usage. | |