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Worker-Specific Task Queues

Use a unique Task Queue for each Worker in order to have certain Activities run on a specific Worker. In the Go SDK, this is explicitly supported via the Session option, but in other SDKs a different approach is required.

Typical use cases include tasks where interaction with a filesystem is required, such as data processing or interacting with legacy access structures. This example will write text files to folders corresponding to each worker, located in the demo_fs folder. In production, these folders would typically be independent machines in a worker cluster.

This strategy is:

  • Each Worker process runs two Workers:
    • One Worker listens on the worker_specific_task_queue-distribution-queue Task Queue.
    • Another Worker listens on a uniquely generated Task Queue.
  • The Workflow and the first Activity are run on worker_specific_task_queue-distribution-queue.
  • The first Activity returns one of the uniquely generated Task Queues (that only one Worker is listening on—i.e. the Worker-specific Task Queue).
  • The rest of the Activities do the file processing and are run on the Worker-specific Task Queue.

Check the Temporal Web UI to confirm tasks were staying with their respective worker.

It doesn't matter where the get_available_task_queue activity is run, so it can be executed on the shared Task Queue. In this demo, unique_worker_task_queue is simply a uuid initialized in the Worker, but you can inject smart logic here to uniquely identify the Worker, as Netflix did.

Activities have been artificially slowed with time.sleep(3) to simulate doing more work.

Running This Sample

To run, first see README.md for prerequisites. Then, run the following from this directory to start the worker:

poetry run python worker.py

This will start the worker. Then, in another terminal, run the following to execute the workflow:

poetry run python starter.py

Example output:

(temporalio-samples-py3.10) user@machine:~/samples-python/activities_sticky_queues$ poetry run python starter.py
Output checksums:
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
49d7419e6cba3575b3158f62d053f922aa08b23c64f05411cda3213b56c84ba4
Checking the history to see where activities are run All activities for the one workflow are running against the same task queue, which corresponds to unique workers:

image