anaconda3 



Anaconda3, Jupyter Notebook, OpenCV3, TensorFlow and Keras2 for Deep Learning
Available tags
Anaconda3, Jupyter, OpenCV3
Tensorflow
Keras (Tensorflow Backend)
Pytorch
Mxnet
How to Use
CPU
- Run with docker (image:
okwrtdsh/anaconda3:keras-cpu)
$ docker run -v $(pwd):/src/notebooks -p 8888:8888 -td okwrtdsh/anaconda3:keras-cpu- Open
http://localhost:8888in web browser
GPU
- Run with nvidia-docker (image:
okwrtdsh/anaconda3:keras-10.0-cudnn7)
$ nvidia-docker run -v $(pwd):/src/notebooks -p 8888:8888 -td okwrtdsh/anaconda3:keras-10.0-cudnn7- Open
http://localhost:8888in web browser
CPU (docker-compose)
- docker-compose.yml (image:
okwrtdsh/anaconda3:keras-cpu)
version: '3'
services:
jupyter:
image: okwrtdsh/anaconda3:keras-cpu
ports:
- '8888:8888'
volumes:
- ./notebooks:/src/notebooks- Run with docker-compose
$ docker-compose up -d- Open
http://localhost:8888in web browser
GPU (docker-compose)
- docker-compose.yml (image:
okwrtdsh/anaconda3:keras-10.0-cudnn7)
version: '3'
services:
jupyter:
image: okwrtdsh/anaconda3:keras-10.0-cudnn7
ports:
- '8888:8888'
volumes:
- ./notebooks:/src/notebooks- Run with nvidia-docker
# Run with nvidia-docker-compose (nvidia-docker v1)
$ nvidia-docker-compose up -d
# Run with docker-compose (nvidia-docker v2)
$ docker-compose up -d- Open
http://localhost:8888in web browser
PyTorch
Please note that PyTorch uses shared memory to share data between processes, so if torch multiprocessing is used (e.g. for multithreaded data loaders) the default shared memory segment size that container runs with is not enough, and you should increase shared memory size either with
--ipc=hostor--shm-sizecommand line options to nvidia-docker run.
nvidia-docker
$ nvidia-docker run --ipc=host -v $(pwd):/src/notebooks -p 8888:8888 -td okwrtdsh/anaconda3:pytorch-10.0-cudnn7docker-compose
version: '3'
services:
jupyter:
image: okwrtdsh/anaconda3:pytorch-10.0-cudnn7
ipc: host
ports:
- '8888:8888'
volumes:
- ./notebooks:/src/notebooks# Run with nvidia-docker-compose (nvidia-docker v1)
$ nvidia-docker-compose up -d
# Run with docker-compose (nvidia-docker v2)
$ docker-compose up -d