02456-deep-learning-with-PyTorch
This repository contains exercises for the DTU course 02456 Deep Learning. The exercises are written in Python programming language and formatted into Jupyter Notebooks.
This repository borrows heavily from previous works, in particular:
2015 DTU Summerschool in Deep Learning. A PhD summerschool that was held at DTU in 2015. Exercises both in numpy and Theano.
02456-deep-learning. Previous version of the course material for this course, but using TensorFlow for the exercises.
Pytorch Tutorial. A remix popular deep learning materials, including material from 02456, collected in one coherent package using PyTorch, with a focus on natural language processing (NLP)
pytorch/tutorials. Official tutorials from the PyTorch repo.
We will use Docker to manage the software needed for the exercises.
NB: If you have a NVIDIA GPU you should follow the GPU instructions below, as a GPU enables you to run the exercises considerably faster.
NB: If you are using Windows things are a bit more difficult. We will help you the best we can, but be prepared to do some resaerch on your own.
First you need to install Docker.
Setup Docker by typing this in the command line in the exercise folder (this one)
docker build -t munkai/pytorch:cpu -f Dockerfile.cpu .
Start Docker container
docker run -it -p 8888:8888 -v `pwd`:/work munkai/pytorch:cpu ./jupyter_run.sh
Go to your browser, and type in http://localhost:8888
. It will ask for a password (token) that you can copy from your terminal.
Setting up your GPU may take a while, and you might need to consult your favorite search engine. You need Nvidia and nvidia-docker installed for this.
Make sure you have Nvidia's drivers installed for your system. The folowing instructions will install CUDA and NVIDA drivers on ubuntu 16.04. Adjust as appropriate.
DISTRO=ubuntu VERSION=1604 ARCH=x86_64 sudo apt-key adv --fetch-keys http://developer.download.nvidia.com/compute/cuda/repos/${DISTRO}${VERSION}/${ARCH}/7fa2af80.pub sudo sh -c 'echo "deb http://developer.download.nvidia.com/compute/cuda/repos/${DISTRO}${VERSION}/${ARCH}/" > /etc/apt/sources.list.d/cuda.list' sudo apt-get update && sudo apt-get install -y --no-install-recommends cuda-drivers
Install nvidia-docker: See https://github.com/NVIDIA/nvidia-docker on how to install nvidia-docker
.
Setup Docker with GPU by typing this in the command line in the exercise folder (this one)
docker build -t munkai/pytorch:gpu -f Dockerfile.gpu .
Running docker with a CUDA-enabled machine
nvidia-docker run -it -p 8888:8888 -v `pwd`:/work munkai/pytorch:gpu ./jupyter_run.sh
Go to your browser, and type in http://localhost:8888
. It will ask for a password (token) that you can copy from your terminal.
The following instructions will help you setup Docker on Windows.
Install install Docker
Make drive shareable - complete steps 1-3 in this guide
Setup Docker by typing this in the command line in the exercise folder (this one)
docker build -t munkai/pytorch:cpu -f Dockerfile.cpu .
Make sure that jupyter_run.sh
has Unix style line
endings (git has probaly made it Windos style when you downloaded. Text
editors like Sublime can change that).
Run Docker (change command to match your setup)
docker run -v
c:/PATH/TO/EXERCISES/02456-deep-learning-with-PyTorch:/work -it --rm -p
8888:8888 munkai/pytorch:cpu ./jupyter_run.sh
Go to your browser, and type in http://localhost:8888
. It will ask for a password (token) that you can copy from your terminal.
And you are done! Once setup is complete you only need to perform the last 2 steps to get up and running.
Debugging
If you are having issues we have made a list of problems and solutions to help you. Plase help us extend this list and help people in the future by letting us know about you issues and the solutions you found.
Jupyter starts, but you don't see the exercises.
The drive isn't shared properly. Take a look at this guide again, or this Stack Overflow question.
standard_init_linux.go:190: exec user process caused "no such file or directory"
We haven't tested this, but it should be easy to combine the GPU (Linux & mac) and CPU (Windows) guides above. Let us know if this works/doesn't work for you.
If you're interested in some PyTorch codebases check out the following links (reinforcement learning, GANTs, ResNet, etc).
Train a face generator using Generative Adversarial Networks
Train a word-level language model using Recurrent LSTM networks
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