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A Pipeline Of Pretraining Bert On Google TPU

A tutorial of pertaining Bert on your own dataset using google TPU

Introduction

Bert, which is also known as the Bidirectional Encoder Representations from Transformers, is a powerful neural network model presented by Google in 2018. There exist a bunch of pre-trained models that can be fine-tuned for the downstream tasks to achieve good performances. Though the pre-trained model is good enough, you may still want to tune the pre-trained model offered by Google on your own domain-specific corpus for several additional epochs. That is, give your Bert model a chance to be familiar with your jargons. Then we can expect better performance in the end.

Nevertheless, as I observed, such a tuning (pretraining) process is time-consuming even on a 1080Ti GPU. The batch size is limited, and the loss decreases slowly. One promising way to solve this problem is to use TPU, which is provided by Google. From my personal experience, a V_3.8 TPU is 35 times faster than a 1080Ti GPU (no joking!). So, in this tutorial, We will go over the pipeline of pretraining the Bert on TPU.

Pre-request

  1. A Google account
  2. A bank card (No worry! Google won't charge you any fees! At least this time :P)
  3. Your data

Data preparation

Prepare your data as you are told at the Bert repo. After this process, you should get a .txt file. This time, let's simply use the sample_text.txt, which can be downloaded from the Bert repo.

Download the pre-trained Bert model at here, make sure you unzip it. Now you get a folder named "multi_cased_L-12_H-768_A-12".

Data upload

First, go to the Google cloud platform and sign in. Create your project, and you should see this interface:

Then, click the storage button on the left bar:

Click Create bucket, then give it a name. For example, the "sample_bucket_test". Make sure that this name is not used by any other people.

Ok! Now it's time to upload the data (sample_text.txt) and the pre-trained model from Google (multi_cased_L-12_H-768_A-12) to the bucket!

Click the Upload folder button, and select the folder "multi_cased_L-12_H-768_A-12" to upload the pre-trained model. Click the Upload files button, and select the file "sample_text.txt" to upload your data. Then you should get something like this:

Create a VM & TPU

Click the button on the right top to activate the cloud shell:

Here is something you should see:

Then, it's time to start the VM (Virtual Machine) & TPU now! Simply run the following code. You can decide your TPU name by yourself. But make sure you remember it -- we are going to use it later:

ctup up --name=test_tpu

However, if you want to use the newest TPU, you should tell Google about this (Google! Give me your best V_3.8 TPU!). But wait, the new GPU is more expensive (8.00$/hour). That's why I added "--preemptible" in the following command. Basically, by adding this, Google can stop your training process whenever it wants. Nevertheless, it's much cheap: 2.40$/hour. This should not be a problem if your program saves your model frequently or if you are super lucky.

ctpu up --name=test-tpu --tpu-size=v3-8 --preemptible  

Press "y" and "Enter" to continue. It may take a while, so just wait. By the way, if you are asked to set a password about ssh, just set it.

Now, you can run the following command to check the status of your VM and TPU:

ctpu status

Here is something I got:

Fetch Bert program

Previously, we have downloaded a pre-trained model. Since we would like to train the model for additional epochs, we need to get the tensorflow code. Simply run:

git clone https://github.com/google-research/bert.git

You should see a folder named Bert under your current directory:

We are almost there! Enter the folder "Bert", and run the following code to process the data. A file named tf_examples.tfrecord can be found under the "tmp" folder after this process:

python create_pretraining_data.py \
  --input_file=gs://sample_bucket_test/sample_text.txt \
  --output_file=gs://sample_bucket_test/tmp/tf_examples.tfrecord \
  --vocab_file=gs://sample_bucket_test/multi_cased_L-12_H-768_A-12/vocab.txt \
  --do_lower_case=True \
  --max_seq_length=128 \
  --max_predictions_per_seq=20 \
  --masked_lm_prob=0.15 \
  --random_seed=12345 \
  --dupe_factor=5

Just like this:

Please, notice the usage of "gs://". It connects the google storage buckets with your virtual machine. I think this is the most valuable part in this tutorial... Anyway, the process should be finished quickly:

Now, it's time to train the model! Run the following code. Notice that the tpu_name is set to the name you gave to the TPU previously:

  python run_pretraining.py \
  --input_file=gs://sample_bucket_test/tmp/tf_examples.tfrecord \
  --output_dir=gs://sample_bucket_test/tmp/pretraining_output \
  --do_train=True \
  --do_eval=True \
  --bert_config_file=gs://sample_bucket_test/multi_cased_L-12_H-768_A-12/bert_config.json \
  --init_checkpoint=gs://sample_bucket_test/multi_cased_L-12_H-768_A-12/bert_model.ckpt \
  --train_batch_size=32 \
  --max_seq_length=128 \
  --max_predictions_per_seq=20 \
  --num_train_steps=20 \
  --num_warmup_steps=10 \
  --learning_rate=2e-5 \
  --use_tpu=True \
  --tpu_name=test-tpu

Like this:

After a while, you can see the following result:

🎉 Bravo! You did it! 🎉

Battlefield Cleanup

Run:

exit

To log out the VM

Run:

ctpu delete --name=test-tpu

To delete your TPU

After that, run

ctpu status

To make sure that you have stopped the VM and the TPU. You should see something like this:

Finally, run:

gsutil rm -r gs://sample_bucket_test

To clean up the google storage bucket. Make sure you replace "sample_bucket_test" with your bucket name.

Done!

Personally speaking, I never use TPU before, and I spent several hours on solving various problems I met. I hope this tutorial can help anyone who wants to pretrain the Bert using TPU.

Thank you for your reading and have a nice day 😄!

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