lightning/tests
Jirka Borovec 043ae697c2
Tests: refactor callbacks (#1688)
* refactor default model

* drop redundant seeds

* path

* refactor callback tests

* update

* fix sch

* wip

* fix return

* review
2020-05-04 16:52:22 -04:00
..
base Tests: refactor trainer (#1728) 2020-05-04 16:51:39 -04:00
callbacks Tests: refactor callbacks (#1688) 2020-05-04 16:52:22 -04:00
loggers Tests: refactor loggers (#1689) 2020-05-04 07:13:52 -04:00
models Tests: refactor models (#1691) 2020-05-04 11:38:08 -04:00
trainer Tests: refactor callbacks (#1688) 2020-05-04 16:52:22 -04:00
Dockerfile Tests/docker (#1573) 2020-04-23 12:52:59 -04:00
README.md Tests/docker (#1573) 2020-04-23 12:52:59 -04:00
__init__.py default test logger (#1478) 2020-04-21 20:33:10 -04:00
collect_env_details.py fix changelog (#1452) 2020-04-20 17:36:26 -04:00
conftest.py test deprecation warnings (#1470) 2020-04-23 17:34:47 -04:00
install_AMP.sh CI: split tests-examples (#990) 2020-03-25 07:46:27 -04:00
requirements-devel.txt Tests/docker (#1573) 2020-04-23 12:52:59 -04:00
requirements.txt Tests/docker (#1573) 2020-04-23 12:52:59 -04:00
test_deprecated.py test deprecation warnings (#1470) 2020-04-23 17:34:47 -04:00
test_profiler.py default test logger (#1478) 2020-04-21 20:33:10 -04:00

README.md

PyTorch-Lightning Tests

Most PL tests train a full MNIST model under various trainer conditions (ddp, ddp2+amp, etc...). This provides testing for most combinations of important settings. The tests expect the model to perform to a reasonable degree of testing accuracy to pass.

Running tests

The automatic travis tests ONLY run CPU-based tests. Although these cover most of the use cases, run on a 2-GPU machine to validate the full test-suite.

To run all tests do the following:

git clone https://github.com/PyTorchLightning/pytorch-lightning
cd pytorch-lightning

# install AMP support
bash tests/install_AMP.sh

# install dev deps
pip install -r tests/requirements-devel.txt

# run tests
py.test -v

To test models that require GPU make sure to run the above command on a GPU machine. The GPU machine must have:

  1. At least 2 GPUs.
  2. NVIDIA-apex installed.
  3. Horovod with NCCL support: HOROVOD_GPU_ALLREDUCE=NCCL HOROVOD_GPU_BROADCAST=NCCL pip install horovod

Running Coverage

Make sure to run coverage on a GPU machine with at least 2 GPUs and NVIDIA apex installed.

cd pytorch-lightning

# generate coverage (coverage is also installed as part of dev dependencies under tests/requirements-devel.txt)
coverage run --source pytorch_lightning -m py.test pytorch_lightning tests examples -v --doctest-modules

# print coverage stats
coverage report -m

# exporting results
coverage xml

Building test image

You can build it on your own, note it takes lots of time, be prepared.

git clone <git-repository>
docker image build -t pytorch_lightning:devel-pt_1_4 -f tests/Dockerfile --build-arg TORCH_VERSION=1.4 .

To build other versions, select different Dockerfile.

docker image list
docker run --rm -it pytorch_lightning:devel-pt_1_4 bash
docker image rm pytorch_lightning:devel-pt_1_4