Change to the README file to add SWAG results.

This commit is contained in:
Grégory Châtel
2018-12-10 15:34:19 +01:00
parent 150f3cd9fa
commit 0876b77f7f

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@@ -441,13 +441,25 @@ python run_swag.py \
--do_train \
--do_eval \
--data_dir $SWAG_DIR/data
--train_batch_size 10 \
--train_batch_size 4 \
--learning_rate 2e-5 \
--num_train_epochs 3.0 \
--max_seq_length 80 \
--output_dir /tmp/swag_output/
```
Training with the previous hyper-parameters gave us the following results:
```
eval_accuracy = 0.7776167149855043
eval_loss = 1.006812262735175
global_step = 55161
loss = 0.282251750624779
```
The difference with the `81.6%` accuracy announced in the Bert article
is probably due to the different `training_batch_size` (here 4 and 16
in the article).
## Fine-tuning BERT-large on GPUs
The options we list above allow to fine-tune BERT-large rather easily on GPU(s) instead of the TPU used by the original implementation.