Benchmarks:AI
Training
TensorFlow
Building the docker image
TensorFlow provides scripts to run training benchmarks with different models. The scripts are hosted on GitHub here.
It is recommended to run the scripts using nvidia-docker2 and the TensorFlow docker image obtained from NGC.
To simplify the setup I have created a Dockerfile to pull the image and download the scripts. To use this first create a directory to hold your Dockerfiles.
mkdir ~/DockerfilesThen create a file in this directory and add the following
FROM nvcr.io/nvidia/tensorflow:18.10-py3
RUN apt-get update && apt-get install git && git clone -b cnn_tf_v1.10_compatible https://github.com/tensorflow/benchmarks
ENTRYPOINT bashTo build the image run
docker build -f ~/Dockerfiles/tf_bench -t tf_bench .The best way to run the container is in interactive mode as this allows multiple runs to be performed in quick succession. To start the container run
docker run --runtime=nvidia -it tf_benchThe benchmark scripts are located in /workspace/scripts/tf_cnn_benchmarks.
Benchmarking using synthetic data
To run the benchmark using synthetic data execute
python tf_cnn_benchmarks.py --num_gpus=1 --batch_size=32 --model=resnet50 --variable_update=parameter_serverThe benchmark can be run with different models. Current supported models are resnet50, resnet152, inception3 and vgg16.
The trained model can be saved by providing a checkpoint directory using the --train_dir flag. For example to train a model using ResNet-152 and 10 epochs with 8 GPUs, and save the trained model use
python tf_cnn_benchmarks.py --num_gpus=8 --batch_size=256 --model=resnet152 --variable_update=parameter_server --train_dir=/workspace/ckpt_dir --num_epochs=10The saved model can then be used to perform other benchmarks for inferencing.