huggingface-transformers/examples
Lysandre Debut 0533cf4706
Test XLA examples (#5583)
* Test XLA examples

* Style

* Using `require_torch_tpu`

* Style

* No need for pytest
2020-07-09 09:19:19 -04:00
..
adversarial [tokenizers] Updates data processors, docstring, examples and model cards to the new API (#5308) 2020-06-26 19:48:14 +02:00
benchmarking readme for benchmark (#5363) 2020-07-07 23:21:23 +02:00
bert-loses-patience save_pretrained: mkdir(exist_ok=True) (#5258) 2020-06-28 14:53:47 -04:00
bertology
contrib save_pretrained: mkdir(exist_ok=True) (#5258) 2020-06-28 14:53:47 -04:00
deebert Add DeeBERT (entropy-based early exiting for *BERT) (#5477) 2020-07-08 08:17:59 +08:00
distillation save_pretrained: mkdir(exist_ok=True) (#5258) 2020-06-28 14:53:47 -04:00
language-modeling Added data collator for permutation (XLNet) language modeling and related calls (#5522) 2020-07-07 10:17:37 +02:00
longform-qa Add mbart-large-cc25, support translation finetuning (#5129) 2020-07-07 13:23:01 -04:00
movement-pruning save_pretrained: mkdir(exist_ok=True) (#5258) 2020-06-28 14:53:47 -04:00
multiple-choice Clean up diffs in Trainer/TFTrainer (#5417) 2020-07-01 11:00:20 -04:00
question-answering [examples] Add trainer support for question-answering (#4829) 2020-07-07 08:57:08 -04:00
seq2seq Add mbart-large-cc25, support translation finetuning (#5129) 2020-07-07 13:23:01 -04:00
text-classification Clean up diffs in Trainer/TFTrainer (#5417) 2020-07-01 11:00:20 -04:00
text-generation The `add_space_before_punct_symbol` is only for TransfoXL (#5549) 2020-07-06 12:17:05 -04:00
token-classification [Almost all TF models] TF clean up: add missing CLM / MLM loss; fix T5 naming and keras compile (#5395) 2020-07-07 18:15:53 +02:00
README.md Fix examples titles and optimization doc page (#5408) 2020-07-01 08:11:25 -04:00
lightning_base.py [pl_examples] default warmup steps=0 (#5316) 2020-06-26 15:03:41 -04:00
requirements.txt Upgrade examples to pl=0.8.1(#5146) 2020-06-22 20:40:10 -04:00
test_examples.py
test_xla_examples.py Test XLA examples (#5583) 2020-07-09 09:19:19 -04:00
xla_spawn.py

README.md

Examples

Version 2.9 of 🤗 Transformers introduces a new Trainer class for PyTorch, and its equivalent TFTrainer for TF 2. Running the examples requires PyTorch 1.3.1+ or TensorFlow 2.1+.

Here is the list of all our examples:

  • grouped by task (all official examples work for multiple models)
  • with information on whether they are built on top of Trainer/TFTrainer (if not, they still work, they might just lack some features),
  • whether they also include examples for pytorch-lightning, which is a great fully-featured, general-purpose training library for PyTorch,
  • links to Colab notebooks to walk through the scripts and run them easily,
  • links to Cloud deployments to be able to deploy large-scale trainings in the Cloud with little to no setup.

This is still a work-in-progress – in particular documentation is still sparse – so please contribute improvements/pull requests.

The Big Table of Tasks

Task Example datasets Trainer support TFTrainer support pytorch-lightning Colab
language-modeling Raw text - - Open In Colab
text-classification GLUE, XNLI Open In Colab
token-classification CoNLL NER -
multiple-choice SWAG, RACE, ARC - Open In Colab
question-answering SQuAD - - -
text-generation - n/a n/a n/a Open In Colab
distillation All - - - -
summarization CNN/Daily Mail - - -
translation WMT - - -
bertology - - - - -
adversarial HANS - - -

Important note

Important To make sure you can successfully run the latest versions of the example scripts, you have to install the library from source and install some example-specific requirements. Execute the following steps in a new virtual environment:

git clone https://github.com/huggingface/transformers
cd transformers
pip install .
pip install -r ./examples/requirements.txt

One-click Deploy to Cloud (wip)

Azure

Deploy to Azure

Running on TPUs

When using Tensorflow, TPUs are supported out of the box as a tf.distribute.Strategy.

When using PyTorch, we support TPUs thanks to pytorch/xla. For more context and information on how to setup your TPU environment refer to Google's documentation and to the very detailed pytorch/xla README.

In this repo, we provide a very simple launcher script named xla_spawn.py that lets you run our example scripts on multiple TPU cores without any boilerplate. Just pass a --num_cores flag to this script, then your regular training script with its arguments (this is similar to the torch.distributed.launch helper for torch.distributed).

For example for run_glue:

python examples/xla_spawn.py --num_cores 8 \
	examples/text-classification/run_glue.py
	--model_name_or_path bert-base-cased \
	--task_name mnli \
	--data_dir ./data/glue_data/MNLI \
	--output_dir ./models/tpu \
	--overwrite_output_dir \
	--do_train \
	--do_eval \
	--num_train_epochs 1 \
	--save_steps 20000

Feedback and more use cases and benchmarks involving TPUs are welcome, please share with the community.