Filesystem based task queue
Project description
Filesystem Task Queue
A task queue using the filesystem as the message queue. This project was motivated by the use case where it is hard or near impossible to run a persistent service like redis, rabbitmq, or database. If you are able to run a persistent service you should prefer that approach. The initial motivation for this package was a way to submit tasks to an HPC cluster and process the tasks in HPC worker nodes without a running service on the login node.
This project uses filelock. With this library it is safe to say that if the underlying filesystem obeys flock calls then each task is guaranteed to be executed once. If any of the workers are on a non-conforming filesystems at least once execution is guaranteed.
Keep in mind that NFS v2 and v3 have an external file lock system via
rpc.lockd
which is not enabled everywhere since it is an external
service. The current NFS v4 has built in support for file locks but
the problem is that many HPC centers still use v3. Otherwise it is
safe these days to assume your filesystem supports locks.
Keep in mind that task state is managed on the filesystem. So do not
use this if you have an enormous amount of tasks. Think of possibly
chunking them or using plugins like
file_queue.plugins.dask.DaskWorker
to send tasks to dask (then
breaking it into many small tasks). Each task state modifications
results in 2-4 IOPS on the filesystem.
Install
pip install fs-task-queue
API
Creating a queue is as simple as supplying a directory where the queue will reside.
from fs_task_queue import Queue
queue = Queue("path/to/queue")
Submitting jobs and monitoring over SSH is also supported via the same interface. Workers currently cannot connect over SSH.
from fs_task_queue.plugins import SSHQueue
queue = SSHQueue("ssh://<username>:<password>@<hostname>:<port>/<path>")
Next we can submit/enqueue jobs to the queue.
import operator
job = queue.enqueue(operator.add, 1, 2)
You can immediately try and fetch the result of the job or get its status.
print(job.get_status())
print(job.result)
You can wait on the job to finish
result = job.wait()
Worker
Starting a worker is as simple as giving a filesystem directory where the queue will reside.
fs-task-queue-worker --path ./path/to/queue
A dask
worker is supported via fs_task_queue.plugin.dask.DaskWorker
for sending jobs to the dask cluster instead of executing locally.
A worker runs a continuous loop gathering tasks in the task queue. The
worker creates a file path/to/queue/workers/<worker-id>
where it
will:
- continuously touch the file every 30 seconds
- check that the file exists and if not stop the worker
License
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