| # Training a masked language model end-to-end from scratch on TPUs | |
| In this example, we're going to demonstrate how to train a TensorFlow model from π€ Transformers from scratch. If you're interested in some background theory on training Hugging Face models with TensorFlow on TPU, please check out our | |
| [tutorial doc](https://huggingface.co/docs/transformers/main/perf_train_tpu_tf) on this topic! | |
| If you're interested in smaller-scale TPU training from a pre-trained checkpoint, you can also check out the [TPU fine-tuning example](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/tpu_training-tf.ipynb). | |
| This example will demonstrate pre-training language models at the 100M-1B parameter scale, similar to BERT or GPT-2. More concretely, we will show how to train a [RoBERTa](https://huggingface.co/docs/transformers/model_doc/roberta) (base model) from scratch on the [WikiText dataset (v1)](https://huggingface.co/datasets/wikitext). | |
| We've tried to ensure that all the practices we show you here are scalable, though - with relatively few changes, the code could be scaled up to much larger models. | |
| Google's gargantuan [PaLM model](https://arxiv.org/abs/2204.02311), with | |
| over 500B parameters, is a good example of how far you can go with pure TPU training, though gathering the dataset and the budget to train at that scale is not an easy task! | |
| ### Table of contents | |
| - [Setting up a TPU-VM](#setting-up-a-tpu-vm) | |
| - [Training a tokenizer](#training-a-tokenizer) | |
| - [Preparing the dataset](#preparing-the-dataset) | |
| - [Training the model](#training-the-model) | |
| - [Inference](#inference) | |
| ## Setting up a TPU-VM | |
| Since this example focuses on using TPUs, the first step is to set up access to TPU hardware. For this example, we chose to use a TPU v3-8 VM. Follow [this guide](https://cloud.google.com/tpu/docs/run-calculation-tensorflow) to quickly create a TPU VM with TensorFlow pre-installed. | |
| > π‘ **Note**: You don't need a TPU-enabled hardware for tokenizer training and TFRecord shard preparation. | |
| ## Training a tokenizer | |
| To train a language model from scratch, the first step is to tokenize text. In most Hugging Face examples, we begin from a pre-trained model and use its tokenizer. However, in this example, we're going to train a tokenizer from scratch as well. The script for this is `train_unigram.py`. An example command is: | |
| ```bash | |
| python train_unigram.py --batch_size 1000 --vocab_size 25000 --export_to_hub | |
| ``` | |
| The script will automatically load the `train` split of the WikiText dataset and train a [Unigram tokenizer](https://huggingface.co/course/chapter6/7?fw=pt) on it. | |
| > π‘ **Note**: In order for `export_to_hub` to work, you must authenticate yourself with the `huggingface-cli`. Run `huggingface-cli login` and follow the on-screen instructions. | |
| ## Preparing the dataset | |
| The next step is to prepare the dataset. This consists of loading a text dataset from the Hugging Face Hub, tokenizing it and grouping it into chunks of a fixed length ready for training. The script for this is `prepare_tfrecord_shards.py`. | |
| The reason we create TFRecord output files from this step is that these files work well with [`tf.data` pipelines](https://www.tensorflow.org/guide/data_performance). This makes them very suitable for scalable TPU training - the dataset can easily be sharded and read in parallel just by tweaking a few parameters in the pipeline. An example command is: | |
| ```bash | |
| python prepare_tfrecord_shards.py \ | |
| --tokenizer_name_or_path tf-tpu/unigram-tokenizer-wikitext \ | |
| --shard_size 5000 \ | |
| --split test | |
| --max_length 128 \ | |
| --output_dir gs://tf-tpu-training-resources | |
| ``` | |
| **Notes**: | |
| * While running the above script, you need to specify the `split` accordingly. The example command above will only filter the `test` split of the dataset. | |
| * If you append `gs://` in your `output_dir` the TFRecord shards will be directly serialized to a Google Cloud Storage (GCS) bucket. Ensure that you have already [created the GCS bucket](https://cloud.google.com/storage/docs). | |
| * If you're using a TPU node, you must stream data from a GCS bucket. Otherwise, if you're using a TPU VM,you can store the data locally. You may need to [attach](https://cloud.google.com/tpu/docs/setup-persistent-disk) a persistent storage to the VM. | |
| * Additional CLI arguments are also supported. We encourage you to run `python prepare_tfrecord_shards.py -h` to know more about them. | |
| ## Training the model | |
| Once that's done, the model is ready for training. By default, training takes place on TPU, but you can use the `--no_tpu` flag to train on CPU for testing purposes. An example command is: | |
| ```bash | |
| python3 run_mlm.py \ | |
| --train_dataset gs://tf-tpu-training-resources/train/ \ | |
| --eval_dataset gs://tf-tpu-training-resources/validation/ \ | |
| --tokenizer tf-tpu/unigram-tokenizer-wikitext \ | |
| --output_dir trained_model | |
| ``` | |
| If you had specified a `hub_model_id` while launching training, then your model will be pushed to a model repository on the Hugging Face Hub. You can find such an example repository here: | |
| [tf-tpu/roberta-base-epochs-500-no-wd](https://huggingface.co/tf-tpu/roberta-base-epochs-500-no-wd). | |
| ## Inference | |
| Once the model is trained, you can use π€ Pipelines to perform inference: | |
| ```python | |
| from transformers import pipeline | |
| model_id = "tf-tpu/roberta-base-epochs-500-no-wd" | |
| unmasker = pipeline("fill-mask", model=model_id, framework="tf") | |
| unmasker("Goal of my life is to [MASK].") | |
| [{'score': 0.1003185287117958, | |
| 'token': 52, | |
| 'token_str': 'be', | |
| 'sequence': 'Goal of my life is to be.'}, | |
| {'score': 0.032648514956235886, | |
| 'token': 5, | |
| 'token_str': '', | |
| 'sequence': 'Goal of my life is to .'}, | |
| {'score': 0.02152673341333866, | |
| 'token': 138, | |
| 'token_str': 'work', | |
| 'sequence': 'Goal of my life is to work.'}, | |
| {'score': 0.019547373056411743, | |
| 'token': 984, | |
| 'token_str': 'act', | |
| 'sequence': 'Goal of my life is to act.'}, | |
| {'score': 0.01939118467271328, | |
| 'token': 73, | |
| 'token_str': 'have', | |
| 'sequence': 'Goal of my life is to have.'}] | |
| ``` | |
| You can also try out inference using the [Inference Widget](https://huggingface.co/tf-tpu/roberta-base-epochs-500-no-wd?text=Goal+of+my+life+is+to+%5BMASK%5D.) from the model page. |