pytorch/test/cpp/api
Peter Goldsborough 2249751422 Add OptimizerBase::add_parameters (#9472)
Summary:
ebetica asked for a way to add parameters to `Optimizer`s after they are created.

ebetica ezyang
Pull Request resolved: https://github.com/pytorch/pytorch/pull/9472

Differential Revision: D8872176

Pulled By: goldsborough

fbshipit-source-id: 39a4032c519a6d3b458dd3596361b04afea10365
2018-07-17 14:10:22 -07:00
..
any.cpp Make Sequential ref-counted (#9151) 2018-07-11 17:24:59 -07:00
cursor.cpp Add OptimizerBase::add_parameters (#9472) 2018-07-17 14:10:22 -07:00
integration.cpp Fix Sequential::clone() (#9372) 2018-07-16 21:53:42 -07:00
main.cpp
misc.cpp Initialization functions (#9295) 2018-07-12 18:53:57 -07:00
module.cpp Fix Sequential::clone() (#9372) 2018-07-16 21:53:42 -07:00
modules.cpp Fix Sequential::clone() (#9372) 2018-07-16 21:53:42 -07:00
optim.cpp Add OptimizerBase::add_parameters (#9472) 2018-07-17 14:10:22 -07:00
optim_baseline.h Use torch:: instead of at:: (#8911) 2018-06-27 14:42:01 -07:00
optim_baseline.py Use torch:: instead of at:: (#8911) 2018-06-27 14:42:01 -07:00
README.md
rnn.cpp Fix Sequential::clone() (#9372) 2018-07-16 21:53:42 -07:00
sequential.cpp Fix Sequential::clone() (#9372) 2018-07-16 21:53:42 -07:00
serialization.cpp Make Sequential ref-counted (#9151) 2018-07-11 17:24:59 -07:00
static.cpp Make Sequential ref-counted (#9151) 2018-07-11 17:24:59 -07:00
tensor.cpp [C++ API] Bag of fixes (#8843) 2018-06-25 21:11:49 -07:00
tensor_cuda.cpp Make at::tensor faster (#8709) 2018-06-20 14:46:58 -07:00
tensor_options.cpp Created DefaultTensorOptions in ATen (#8647) 2018-06-24 21:15:09 -07:00
tensor_options_cuda.cpp Created DefaultTensorOptions in ATen (#8647) 2018-06-24 21:15:09 -07:00
util.h Fix Sequential::clone() (#9372) 2018-07-16 21:53:42 -07:00

C++ API Tests

In this folder live the tests for PyTorch's C++ API (formerly known as autogradpp). They use the Catch2 test framework.

CUDA Tests

The way we handle CUDA tests is by separating them into a separate TEST_CASE (e.g. we have optim and optim_cuda test cases in optim.cpp), and giving them the [cuda] tag. Then, inside main.cpp we detect at runtime whether CUDA is available. If not, we disable these CUDA tests by appending ~[cuda] to the test specifications. The ~ disables the tag.

One annoying aspect is that Catch only allows filtering on test cases and not sections. Ideally, one could have a section like LSTM inside the RNN test case, and give this section a [cuda] tag to only run it when CUDA is available. Instead, we have to create a whole separate RNN_cuda test case and put all these CUDA sections in there.

Integration Tests

Integration tests use the MNIST dataset. You must download it by running the following command from the PyTorch root folder:

$ python tools/download_mnist.py -d test/cpp/api/mnist