guotong1988 / BERT-GPU

multi-gpu pre-training in one machine for BERT from scratch without horovod (Data Parallelism)
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bert multi-gpu nlp tensorflow

BERT MULTI-GPU PRE-TRAIN ON ONE MACHINE WITHOUT HOROVOD (Data Parallelism)

LICENSE 996.icu

BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding

REASONABLE / PRINCIPLE

More gpu means more data in a batch (, batch size is larger). And the gradients of a batch data is averaged for back-propagation.

If the sum learning rate of one batch is fixed, then the learning rate of one data is smaller, when batch size is larger.

If the learning rate of one data is fixed, then the sum learning rate of one batch is larger, when batch size is larger.

Conclusion: More gpu --> Larger sum learning rate of one batch --> Faster training.

WHATS NEW

Using 1-GPU (100 batch size) vs using 4-GPU (400 batch size) for the same learning rate (0.00001) and same pre-training steps (1,000,000) will be no difference of 0.1% in downstream task accuracy.

REQUIREMENT

python 3

tensorflow 1.14 - 1.15

TRAINING

0, edit the input and output file name in create_pretraining_data.py and run_pretraining_gpu.py

1, run create_pretraining_data.py

2, run run_pretraining_gpu_v2.py

PARAMETERS

Edit n_gpus in run_pretraining_gpu_v2.py

DATA

In sample_text.txt, sentence is end by \n, paragraph is splitted by empty line.

EXPERIMENT RESULT ON DOWNSTREAM TASKS

Quora question pairs English dataset,

Official BERT: ACC 91.2, AUC 96.9

This BERT with pretrain loss 2.05: ACC 90.1, AUC 96.3

NOTE

1)

For HierarchicalCopyAllReduce MirroredStrategy, global_step/sec shows the sum of multi gpus' steps.

2)

batch_size is the batch_size per GPU, not the global_batch_size