This directory contains the long-running workloads which are intended to run forever until they fail. To set up the project you need to run
$ pip install anyscale
$ anyscale init
Note that all the long running test is running inside virtual environment, tensorflow_p36
The easiest approach to running these workloads is to use the
Releaser tool to run them with the command
python cli.py suite:run long_running_tests
. By default, this
will start a session to run each workload in the Anyscale product
and kick them off.
To run the tests manually, you can also use the Anyscale UI <https://www.anyscale.dev/>. First run anyscale snapshot create
from the command line to create a project snapshot. Then from the UI, you can launch an individual session and execute the run command for each test.
You can also start the workloads using the CLI with:
$ anyscale start
$ anyscale run test_workload --workload=<WORKLOAD_NAME> --wheel=<RAY_WHEEL_LINK>
Doing this for each workload will start one EC2 instance per workload and will start the workloads running (one per instance). A list of available workload options is available in the ray_projects/project.yaml file.
The primary method to debug the test while it is running is to view the logs and the dashboard from the UI. After the test has failed, you can still view the stdout logs in the UI and also inspect
the logs under /tmp/ray/session*/logs/
and
/tmp/ray/session*/debug_state.txt
.
The instances running the workloads can all be killed by running
anyscale stop <SESSION_NAME>
.
To create a new workload, simply add a new Python file under workloads/
and
add the workload in the run command in ray-project/project.yaml.