Skip to content

a py.test plugin that re-runs failed tests up to -n times to eliminate flakey failures

License

Notifications You must be signed in to change notification settings

datarobot/pytest-rerunfailures

 
 

Repository files navigation

pytest-rerunfailures

pytest-rerunfailures is a plugin for py.test that re-runs tests to eliminate intermittent failures with failed tests related fixture invalidation. Added all scoped fixtures invalidation for current test item in case of test failure before rerun occurs. Plugin able to track all related fixtures: direct injects, autouse, usefixture mark. Fixtures invalidated gracefully with executing finalizer. All reruns schedule to be executed at testrun end

Requirements

You will need the following prerequisites in order to use pytest-rerunfailures:

  • Python 2.7, 3.4, 3.5, 3.6, PyPy, or PyPy3
  • pytest 2.8.7 or newer

Installation

To install pytest-rerunfailures:

$ pip install pytest-rerunfailures

Re-run all failures

To re-run all test failures, use the --reruns command line option with the maximum number of times you'd like the tests to run:

$ pytest --reruns 5

To add a delay time between re-runs use the --reruns-delay command line option with the amount of seconds that you would like wait before the next test re-run is launched:

$ pytest --reruns 5 --reruns-delay 1

Re-run individual failures

To mark individual tests as flaky, and have them automatically re-run when they fail, add the flaky mark with the maximum number of times you'd like the test to run:

@pytest.mark.flaky(reruns=5)
def test_example():
    import random
    assert random.choice([True, False])

Note that when teardown fails, two reports are generated for the case, one for the test case and the other for the teardown error.

You can also specify the re-run delay time in the marker:

@pytest.mark.flaky(reruns=5, reruns_delay=2)
def test_example():
    import random
    assert random.choice([True, False])

Output

Here's an example of the output provided by the plugin when run with --reruns 2 and -r aR:

test_report.py RRF

================================== FAILURES ==================================
__________________________________ test_fail _________________________________

    def test_fail():
>       assert False
E       assert False

test_report.py:9: AssertionError
============================ rerun test summary info =========================
RERUN test_report.py::test_fail
RERUN test_report.py::test_fail
============================ short test summary info =========================
FAIL test_report.py::test_fail
======================= 1 failed, 2 rerun in 0.02 seconds ====================

Note that output will show all re-runs. Tests that fail on all the re-runs will be marked as failed.

Persist rerun stats

Plugin provide ability to store rerun stats to standalone json file:
--reruns-artifact-path {path-to-json}

Stats file fill consist next fields:

total_reruns - total rerun performed
total_failed - total tests failed during run
total_resolved_by_reruns - amount of tests fixed by rerun
rerun_tests - List of each test rerun
  nodeid - pytest test nodeid
  status - test status after rerun: flake or failed
  rerun_trace - Test relevant traces for teardown, setup and test call
  original_trace - Original test failure trace appeared during main run

Skip reruns execution

In case if it is not needed to perform reruns if many tests failed next param could be used: --max-tests-rerun {threshold}

So if during testrun will occur more failed test then threshold value no reruns would be performed.

Compatibility

  • This plugin is not compatible with pytest-xdist's --looponfail flag.
  • This plugin is not compatible with the core --pdb flag.

Releasing

Update [CHANGES.rst](CHANGES.rst) to make sure changelog is updated for the new version.

Update package version in [setup.py](setup.py).

Tag version with a semver like v4.1.10 and jarvis will package and upload it to artifactory

Resources

About

a py.test plugin that re-runs failed tests up to -n times to eliminate flakey failures

Topics

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 100.0%