We are looking for a parallel computing solution at my company and we settled on DASK. I have to get it into a virtual private cloud but its open source, and I have no experience doing that. Can anyone advise on how to set it up on a VPC?
1 Answer
I would start with the simplest deployment - which is to get a big box on Amazon or Azure, install the Anaconda python distribution, and launch dask (and jupyter). If you've got a data scientist using Jupyter on that box, they can just execute
from dask.distributed import Client
client = Client()
Which will spin up a LocalCluster
on that machine.
If you want to access the dask cluster from a different machine instead, you just need to execute a few processes
To start the scheduler:
$ dask-scheduler
Scheduler started at 127.0.0.1:8786
And then start a few workers (ideally, one per core)
$ dask-worker 127.0.0.1:8786
$ dask-worker 127.0.0.1:8786
$ dask-worker 127.0.0.1:8786
You can then expose 8786 to the outside world via ssh tunnels
There are many more complex setups - running on k8s, or on the elastic container service, but whether you need that, really depends on your use case.
Saturn Cloud has an enterprise Dask product on the AWS marketplace that will do a more sophisticated k8s deployment for you. (disclaimer: I'm one of the founders)