ArcGIS Notebook Server includes two notebook runtimes (collections of Python modules). These runtimes are available to notebook users through container images, which are applied to each container that runs in your server site.
Both the Standard and Advanced notebook runtimes include ArcGIS API for Python and various Python modules that can be used for data science, spatial analysis, content management, and administration. The Advanced runtime also includes ArcPy.
In some cases, your notebook authors may need modules or specific versions of modules that are not included in these two runtimes. You can access additional Python modules in ArcGIS Notebook Server in the following ways:
- Install a Python module during a notebook session. This makes the module available for use in that notebook.
- Extend an Esri container image to include additional Python libraries in a custom runtime. The container image you create will make the extended runtime available to all notebook authors in your site.
Install modules during a session
Notebook authors can make Python modules, or versions of modules, that are not included in either runtime available for use during a notebook session using the conda or pip package management systems. It is recommended that you use conda, because ArcGIS Notebook Server uses it to manage modules; however, some Python modules are only available in pip.
This approach installs the desired module for the duration of the notebook session. Once the notebook is closed or the container belonging to the user is terminated, the module is no longer available. To install modules using this method, users must have internet connectivity to the conda or pip channel.
Both conda and pip are included in the two notebook runtimes. You do not need to install them.
To install the scrapy package during a session, for example, run a notebook cell with one of the following commands, depending on the package management system you're using:
Using the conda package management system
!conda install --yes scrapy
Using the pip package management system
!pip install scrapy
To use a different version of a Python module in the notebook runtime you're working in, specify the version number in the command.
You must restart the kernel after running a conda or pip command for your new package to be available.
For example, a certain package is available in both notebook runtimes at version 1.5, but you want to use a tool introduced in 1.6. To make version 1.6 of the package available during a notebook session, run a notebook cell with one of the following commands, depending on the package management system you're using:
Using the conda package management system
!conda install --yes <package name>==1.6
Using the pip package management system
!pip install <package name>==1.6
Build a custom container image
To make persistent changes to a notebook runtime, you can build a custom container image in a site. The following workflow, which requires administrative privileges, creates a custom image and configures ArcGIS Notebook Server to use it.
Use either of the two notebook runtimes (Standard or Advanced) as a starting point. Once you have built your custom runtime, you can register it as a new runtime in your site.
- Install and configure ArcGIS Notebook Server.
- Sign in to the ArcGIS Notebook Server Administrator Directory as an administrator.
The URL is formatted as https://notebookserver.domain.com:11443/arcgis/admin/.
- Click notebooks > runtimes and select the notebook runtime you want to extend for your custom image.
On the runtime's resource page, note the imageId value for this runtime. You will include this value in the next step.
- Create a Dockerfile that adds your desired Python modules to the custom image.
A Dockerfile is a simple text file of instructions to build a Docker container image. Follow the Dockerfile documentation for information and best practices.
In this example, you'll add the data visualization Python package graphviz to the Advanced notebook runtime. The following code block in your Dockerfile instructs Docker to access the Advanced runtime using its repository name and tag and to install graphviz in the runtime. You can obtain the repository name and tag using the command docker images on an ArcGIS Notebook Server machine where this runtime is installed. The conda clean command is a best practice to reduce file size.
Use the docker images command to get the image name (repository) and tag for an existing notebook runtime.
docker images REPOSITORY TAG IMAGE ID CREATED SIZE arcgis-notebook-python-advanced 10.8.1.14362 e46a81f69ea0 12 months ago 12.4GB arcgis-notebook-python-standard 10.8.1.14362 106a660a4d0b 12 months ago 7.51GB
Create a custom runtime by adding the data visualization Python package graphviz to the Advanced notebook runtime
# Specify the existing notebook runtime imageId as FROM FROM arcgis-notebook-python-advanced:10.8.1.14362 # Use RUN to issue a command to install, then clean RUN conda install graphviz \ && conda clean -y -a
- Save your Dockerfile on the machine in a new folder that only contains the Dockerfile.
- Build your new custom container image using a Docker command.
This image will contain a new runtime as specified in your Dockerfile. Open the Command Prompt window and run a command with the following syntax:
cd C:\DockerfileDir docker build -t arcgis-notebook-python-advanced-custom:10.8.1.14362 -f Dockerfile .
Be sure to include the period at the end of the command.
When the command executes, Docker builds the new container image. The last line in the command output will be Successfully built <imageId> with the abridged ID value of the new image. You must provide your ArcGIS Notebook Server site with its full imageId value.
- Run the following command in the Command Prompt window to get the image ID value:
docker inspect <imageId>
If you have a single-machine Notebook Server site, you can skip steps 8 through 10. If you have a multimachine Notebook Server site, complete steps 8 through 10.
- Save the custom Docker image as a *.tar file using docker save.
Open a command window on the Notebook Server machine where the custom runtime image is installed and run the following command to save the custom runtime image as a *.tar file.
docker save arcgis-notebook-python-advanced-custom:10.8.1.14362 > arcgis-notebook-python-advanced-custom.tar
- On each machine where Notebook Server is installed, load the custom runtime image using the ArcGIS Notebook Server postinstallation utility.
- Open a command prompt as an administrator.
- Change directories to the ArcGIS Notebook Server postinstallation utility folder.
Default path: C:\Program Files\ArcGIS\NotebookServer\tools\postInstallUtility
- Install your custom Docker image by specifying its file path.
PostInstallUtility.bat -l <path of .tar Custom Docker image>
- Repeat step 9 on each machine participating in your ArcGIS Notebook Server site.
Your custom image is now built and you have its full imageId value, which you will use to register it with the ArcGIS Notebook Server site in the next section.
Register a new runtime in Manager
Starting at 10.8, you can use ArcGIS Notebook Server Manager to register a custom runtime you've created.
- Sign in to your ArcGIS Enterprise portal as an administrator and open ArcGIS Notebook Server Manager.
- Open the Settings page and click Runtimes.
- Click Register Runtime to open the registration dialog box.
- Specify the appropriate values to complete the registration.
Parameter Details name
A string to represent the new runtime, such as "Notebook Custom Runtime Python 3".
The version of the Esri-provided runtime used as the base Docker image.
This parameter has been deprecated as of ArcGIS Notebook Server version 10.9
Full (nontruncated) ID for the new Docker image, when it was built.
The only valid value is docker.
Set this value to true if the runtime requires advanced privileges.
Values: true | false
The maximum number of CPU units to be used for each container.
The maximum amount of memory to be used for each container.
The unit specified by the maxMemory parameter.
The maximum amount of swap memory available for each container if it reaches the maxMemory limit.
The unit specified by the maxSwapMemory parameter.
The amount of shared memory available for each container.
The unit specified by the sharedMemory parameter.
Only applies to GPU runtimes in Linux environments.
The full path to a .json file (in UTF-8 or ANSI encoding) containing the list of Python libraries in the runtime.
The default response format. The default response format is html.
Values: html | json | pjson
If set to true, a manifest .json file is automatically created for the Docker image registered as the notebook runtime. Providing a file for the manifestFile parameter overrides this setting.
To create a manifest.json file, open a PowerShell window on the ArcGIS Notebook Server machine where the custom notebook runtime image is installed and run the following command:
$ID = docker container run -d --rm -it -v /:/host <custom_runtime_image_ID> /bin/bash; docker exec -it $ID /opt/conda/bin/conda list --json >> ~\Desktop\manifest.json; docker kill $ID
- When you're ready, click Save to register the new runtime.
- Open a new notebook to test this update. Verify that the modules or versions of modules you added to your custom image are available in the notebook.
To return the runtimes in your ArcGIS Notebook Server site to the original settings, use the Restore Factory Runtimes operation in the Administrator Directory. This is available at https://notebookserver.domain.com:11443/arcgis/admin/notebooks/runtimes/restore and will only restore the factory runtimes for your site's current version.