jcftang / dask-drmaa

Deploy Dask on DRMAA clusters

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Dask on DRMAA

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Deploy a Dask.distributed cluster on top of a cluster running a DRMAA-compliant job scheduler.

Example

Launch from Python

from dask_drmaa import DRMAACluster
cluster = DRMAACluster()

from dask.distributed import Client
client = Client(cluster)
cluster.start_workers(2)

>>> future = client.submit(lambda x: x + 1, 10)
>>> future.result()
11

Or launch from the command line:

$ dask-drmaa 10  # starts local scheduler and ten remote workers

Install

Currently this is only available through GitHub and source installation:

pip install git+https://github.com/dask/dask-drmaa.git --upgrade

or:

git clone git@github.com:dask/dask-drmaa.git
cd dask-drmaa
python setup.py install

You must have the DRMAA system library installed and be able to submit jobs from your local machine.

Testing

This repository contains a Docker-compose testing harness for a Son of Grid Engine cluster with a master and two slaves. You can initialize this system as follows

docker-compose build
./start-sge.sh

And run tests with py.test in the master docker container

docker exec -it sge_master /bin/bash -c "cd /dask-drmaa; python setup.py develop"
docker exec -it sge_master py.test dask-drmaa/dask_drmaa --verbose

Adaptive Load

Dask-drmaa can adapt to scheduler load, deploying more workers on the grid when it has more work, and cleaning up these workers when they are no longer necessary. This can simplify setup (you can just leave a cluster running) and it can reduce load on the cluster, making IT happy.

To enable this, call the Adaptive class on a DRMAACluster. You can submit computations to the cluster without ever explicitly creating workers.

from dask_drmaa import DRMAACluster, Adaptive
from dask.distributed import Client

cluster = DRMAACluster()
adapt = Adaptive(cluster)
client = Client(cluster)

futures = client.map(func, seq)  # workers will be created as necessary

Extensible

The DRMAA interface is the lowest common denominator among many different job schedulers like SGE, SLURM, LSF, Torque, and others. However, sometimes users need to specify parameters particular to their cluster, such as resource queues, wall times, memory constraints, etc..

DRMAA allows users to pass native specifications either when constructing the cluster or when starting new workers:

cluster = DRMAACluster(template={'nativeSpecification': '-l h_rt=01:00:00'})
# or
cluster.start_workers(10, nativeSpecification='-l h_rt=01:00:00')

Related Work

  • DRMAA: The Distributed Resource Management Application API, a high level API for general use on traditional job schedulers
  • drmaa-python: The Python bindings for DRMAA
  • DaskSGE: An earlier dask-drmaa implementation
  • Son of Grid Engine: The default implementation used in testing
  • Dask.distributed: The actual distributed computing library this launches

About

Deploy Dask on DRMAA clusters

License:BSD 3-Clause "New" or "Revised" License


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