linked medium article, fixed typo
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README.md
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README.md
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# gpu-jupyter
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# GPU-Jupyter
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#### Leverage Jupyter Notebooks with the power of your NVIDIA GPU and perform GPU calculations using Tensorflow and Pytorch in collaborative notebooks.
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![Jupyterlab Overview](/extra/jupyterlab-overview.png)
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@ -17,8 +17,8 @@ First of all, thanks to [hub.docker.com/u/jupyter](https://hub.docker.com/u/jupy
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1. Install [Docker](https://www.docker.com/community-edition#/download) version **1.10.0+**
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2. Install [Docker Compose](https://docs.docker.com/compose/install/) version **1.6.0+**
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3. Get access to use your GPU via the CUDA drivers, see this [blog-post](https://medium.com/@christoph.schranz)
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3. A NVIDIA GPU
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3. Get access to use your GPU via the CUDA drivers, check out this [medium](https://medium.com/@christoph.schranz/set-up-your-own-gpu-based-jupyterlab-e0d45fcacf43) article.
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4. Clone this repository
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```bash
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git clone https://github.com/iot-salzburg/gpu-jupyter.git
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@ -32,9 +32,9 @@ As soon as you have access to your GPU locally (it can be tested via a Tensorflo
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./start-local.sh
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```
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This will run *gpu-jupyter* on the default port [localhost:8888](http://localhost:8888) with the default password `asdf`. The general usage is:
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This will run *GPU-Jupyter* by default on [localhost:8888](http://localhost:8888) with the default password `asdf`. The general usage is:
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```bash
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./start-local.sh -p [port] # port must be an integer with 4 or more digits.
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./start-local.sh -p [port:8888] # port must be an integer with 4 or more digits.
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```
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With these commands we can see if everything worked well:
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@ -54,7 +54,7 @@ In order to stop the local deployment, run:
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A Jupyter instance often requires data from other services.
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If that data-source is containerized in Docker and sharing a port for communication shouldn't be allowed, e.g., for security reasons,
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then connecting the data-source with *gpu-jupyter* within a Docker Swarm is a great option! \
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then connecting the data-source with *GPU-Jupyter* within a Docker Swarm is a great option! \
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### Set up a Docker Swarm
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@ -74,7 +74,7 @@ Afterwards, check if the registry service is available using `docker service ls`
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### Configure the shared Docker network
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Additionally, *gpu-jupyter* is connected to the data-source via the same *docker-network*. Therefore, This network must be set to **attachable** in the source's `docker-compose.yml`:
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Additionally, *GPU-Jupyter* is connected to the data-source via the same *docker-network*. Therefore, This network must be set to **attachable** in the source's `docker-compose.yml`:
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```yml
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services:
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@ -104,7 +104,7 @@ networks:
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### Start GPU-Jupyter in Docker Swarm
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Finally, *gpu-jupyter* can be deployed in the Docker Swarm with the shared network, using:
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Finally, *GPU-Jupyter* can be deployed in the Docker Swarm with the shared network, using:
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```bash
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./add-to-swarm.sh -p [port] -n [docker-network]
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@ -113,7 +113,7 @@ where:
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* port specifies the port on which the service will be available.
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* and docker-network is the name of the attachable network from the previous step, e.g., here it is **elk_datastack**.
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Now, *gpu-jupyter* will be accessable on [localhost:port](http://localhost:8888) with the default password `asdf` and shares the network with the other data-source. I.e, all ports of the data-source will be accessable within *gpu-jupyter*, even if they aren't routed it the source's `docker-compose` file.
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Now, *gpu-jupyter* will be accessable on [localhost:port](http://localhost:8888) with the default password `asdf` and shares the network with the other data-source. I.e, all ports of the data-source will be accessable within *GPU-Jupyter*, even if they aren't routed it the source's `docker-compose` file.
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Check if everything works well using:
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```bash
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@ -128,10 +128,10 @@ In order to remove the service from the swarm, use:
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## Configuration
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The password can be set in `src/jupyter_notebook_config.json`. Therefore, hash your
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password in the form (password)(salt) using a sha1 hash generator,
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e.g. the sha1 generator of [sha1-online.com](http://www.sha1-online.com/).
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The input with the default password `asdf` and salt `asdfe49e73b0eb0e` should yield the hash string as shown in the config file below. **Never give away your own unhashed password!**
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Please set a new password using `src/jupyter_notebook_config.json`.
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Therefore, hash your password in the form (password)(salt) using a sha1 hash generator, e.g., the sha1 generator of [sha1-online.com](http://www.sha1-online.com/).
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The input with the default password `asdf` is appended by a arbitrary salt `e49e73b0eb0e` to `asdfe49e73b0eb0e` and should yield the hash string as shown in the config below.
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**Never give away your own unhashed password!**
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Then update the config file as shown below and restart the service.
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