keras/docker
Durgesh Mankekar b943176d2a Update docker files to TensorFlow 1, Theano 0.9 (#6116)
- TensorFlow 1
- Theano 0.9 : also use "device=cuda" in theanorc to use new
"gpuarray" backend
- Miniconda 4.2.12 (latest conda installer with python 3.5)
- Simplified pip install for tensorflow and keras test dependencies
2017-04-03 08:33:41 -07:00
..
Dockerfile Update docker files to TensorFlow 1, Theano 0.9 (#6116) 2017-04-03 08:33:41 -07:00
Makefile Docker image for test and experiment Keras (#3035) 2016-07-26 18:29:56 -07:00
README.md Docker image for test and experiment Keras (#3035) 2016-07-26 18:29:56 -07:00
theanorc Update docker files to TensorFlow 1, Theano 0.9 (#6116) 2017-04-03 08:33:41 -07:00

Using Keras via Docker

This directory contains Dockerfile to make it easy to get up and running with Keras via Docker.

Installing Docker

General installation instructions are on the Docker site, but we give some quick links here:

Running the container

We are using Makefile to simplify docker commands within make commands.

Build the container and start a jupyter notebook

$ make notebook

Build the container and start an iPython shell

$ make ipython

Build the container and start a bash

$ make bash

For GPU support install NVidia drivers (ideally latest) and nvidia-docker. Run using

$ make notebook GPU=0 # or [ipython, bash]

Switch between Theano and TensorFlow

$ make notebook BACKEND=theano
$ make notebook BACKEND=tensorflow

Mount a volume for external data sets

$ make DATA=~/mydata

Prints all make tasks

$ make help

You can change Theano parameters by editing /docker/theanorc.

Note: If you would have a problem running nvidia-docker you may try the old way we have used. But it is not recommended. If you find a bug in the nvidia-docker report it there please and try using the nvidia-docker as described above.

$ export CUDA_SO=$(\ls /usr/lib/x86_64-linux-gnu/libcuda.* | xargs -I{} echo '-v {}:{}')
$ export DEVICES=$(\ls /dev/nvidia* | xargs -I{} echo '--device {}:{}')
$ docker run -it -p 8888:8888 $CUDA_SO $DEVICES gcr.io/tensorflow/tensorflow:latest-gpu