This package provides a JupyterLab extension to manage Dask clusters, as well as embed Dask's dashboard plots directly into JupyterLab panes.
JupyterLab >= 1.0 distributed >= 1.24.1
This extension includes both a client-side JupyterLab extension and a server-side Jupyter notebook extension. Install these using the command line with
pip install dask_labextension
jupyter labextension install dask-labextension
If you are running Notebook 5.2 or earlier, enable the server extension by running
jupyter serverextension enable --py --sys-prefix dask_labextension
This extension has the ability to launch and manage several kinds of Dask clusters,
including local clusters and kubernetes clusters.
Options for how to launch these clusters are set via the
dask configuration system,
typically a .yml
file on disk.
By default the extension launches a LocalCluster
, for which the configuration is:
labextension:
factory:
module: 'dask.distributed'
class: 'LocalCluster'
args: []
kwargs: {}
default:
workers: null
adapt:
null
# minimum: 0
# maximum: 10
initial:
[]
# - name: "My Big Cluster"
# workers: 100
# - name: "Adaptive Cluster"
# adapt:
# minimum: 0
# maximum: 50
In this configuration, factory
gives the module, class name, and arguments needed to create the cluster.
The default
key describes the initial number of workers for the cluster, as well as whether it is adaptive.
The initial
key gives a list of initial clusters to start upon launch of the notebook server.
In addition to LocalCluster
, this extension has been used to launch several other Dask cluster
objects, a few examples of which are:
- A SLURM cluster, using
labextension:
factory:
module: 'dask_jobqueue'
class: 'SLURMCluster'
args: []
kwargs: {}
- A PBS cluster, using
labextension:
factory:
module: 'dask_jobqueue'
class: 'PBSCluster'
args: []
kwargs: {}
- A Kubernetes cluster, using
labextension:
factory:
module: dask_kubernetes
class: KubeCluster
args: []
kwargs: {}
As described in the JupyterLab documentation for a development install of the labextension you can run the following in this directory:
jlpm install # Install npm package dependencies
jlpm run build # Compile the TypeScript sources to Javascript
jupyter labextension install # Install the current directory as an extension
To rebuild the extension:
jlpm run build
If you run JupyterLab in watch mode (jupyter lab --watch
) it will automatically pick
up changes to the built extension and rebundle itself.
To run an editable install of the server extension, run
pip install -e .
jupyter serverextension enable --sys-prefix dask_labextension