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This repository was archived by the owner on Dec 11, 2023. It is now read-only.
This repository was archived by the owner on Dec 11, 2023. It is now read-only.

GPU not fully utilized #476

@nashid

Description

@nashid

I have running the training with the following command:

python -m nmt.nmt \ 
--src=vi --tgt=en \ 
--vocab_prefix=/tmp/nmt_data/vocab \ 
--train_prefix=/tmp/nmt_data/train \ 
--dev_prefix=/tmp/nmt_data/tst2012 \ 
--test_prefix=/tmp/nmt_data/tst2013 \ 
--out_dir=/tmp/nmt_model \ 
--num_train_steps=12000 \ 
--steps_per_stats=100 \ 
--num_layers=2 \
 --num_units=128 \ 
--dropout=0.2 \ 
--metrics=bleu \
--nums_gpu=1

I have one GPU (GPU Radeon RX 580). Upon running the experimentation, I see the CPUs are fully utilized and the GPU usage remains insignificant(<5%).

I saw this in the log:

Devices visible to TensorFlow: [_DeviceAttributes(/job:localhost/replica:0/task:0/device:CPU:0, CPU, 268435456)]

Can anyone provide any pointer why GPU usage remains low?

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