pytorch/caffe2/python/serialized_test
Ansha Yu e3e6ca1102 operator serialized test coverage summary document (#13703)
Summary:
Add a markdown document summarizing the coverage of serialized operator tests. This currently only takes into account what has been covered by the tests with respect to the entire registry of c2 operators.

Next, we will break down the coverage by which operators have unit tests associated with them, which have hypothesis tests, and which have tests more specifically calling assertReferenceChecks.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/13703

Reviewed By: dzhulgakov

Differential Revision: D12970810

Pulled By: ajyu

fbshipit-source-id: 4f0cd057b1cf734371333e24d26cbab630a170e1
2018-11-09 15:04:08 -08:00
..
data/operator_test
__init__.py
coverage.py operator serialized test coverage summary document (#13703) 2018-11-09 15:04:08 -08:00
README.md operator serialized test coverage summary document (#13703) 2018-11-09 15:04:08 -08:00
serialized_test_util.py operator serialized test coverage summary document (#13703) 2018-11-09 15:04:08 -08:00
SerializedTestCoverage.md operator serialized test coverage summary document (#13703) 2018-11-09 15:04:08 -08:00

Serialized operator test framework

Major functionality lives in serialized_test_util.py

How to use

  1. Extend the test case class from SerializedTestCase
  2. Change the @given decorator to @serialized_test_util.given. This runs a seeded hypothesis test instance which will generate outputs if desired in addition to the unseeded hypothesis tests normally run.
  3. [Optional] Add (or change a call of unittest.main() to) testWithArgs in __main__. This allows you to generate outputs using python caffe2/python/operator_test/my_test.py -G.
  4. Run your test python -m pytest caffe2/python/operator_test/my_test.py -G to generate serialized outputs. They will live in caffe2/python/serialized_test/data/operator_test, one zip file per test function. The zip file contains an inout.npz file of the inputs, outputs, and meta data (like device type), a op.pb file of the operator, and grad_#.pb files of the gradients if there are any. Use -O to change the output directory. This also generates a markdown document summarizing the coverage of serialized tests. We can disable generating this coverage document using the -C flag.
  5. Thereafter, runs of the test without the flag will load serialized outputs and gradient operators for comparison against the seeded run. The comparison is done as long as you have a call to assertReferenceChecks. If for any reason the seeded run's inputs are different (this can happen with different hypothesis versions or different setups), then we'll run the serialized inputs through the serialized operator to get a runtime output for comparison.

Coverage report

SerializedTestCoverage.md contains some statistics about the coverage of serialized tests. It is regenerated every time someone regenerates a serialized test (i.e. running an operator test with the -G option). If you run into merge conflicts for the file, please rebase and regenerate. If you'd like to disable generating this file when generating the serialized test, you can run with -G -C. The logic for generating this file lives in coverage.py.

##Additional Notes

If we'd like to extend the test framework beyond that for operator tests, we can create a new subfolder for them inside caffe2/python/serialized_test/data.

Note, we currently don't support using other hypothesis decorators on top of given_and_seeded. Hypothis has some handling to explicitly check that @given is on the bottom of the decorator stack.

If there are multiple calls to assertReferenceChecks in a test function, we'll serialize and write the last one. The actual input checked may then differ if we refactor a test function that calls this multiple times, though the serialized test should still pass since we then use the serialized input to generate a dynamic output.