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Run test ops tests from outside of pytorch root folder #1676

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Jan 12, 2024
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5 changes: 4 additions & 1 deletion .github/scripts/validate_test_ops.sh
Original file line number Diff line number Diff line change
Expand Up @@ -20,7 +20,7 @@ pushd pytorch

pip install expecttest numpy pyyaml jinja2 packaging hypothesis unittest-xml-reporting scipy

# Run pytorch cuda wheels validation
# Run pytorch cuda wheels validation
# Detect ReduceLogicKernel (ReduceOp and kernel) IMA
python test/test_ops.py -k test_dtypes_all_cuda
# Detect BinaryMulKernel (elementwise binary functor internal mul) IMA
Expand All @@ -29,7 +29,10 @@ python test/test_torch.py -k test_index_reduce_reduce_prod_cuda_int32
python test/test_binary_ufuncs.py -k test_contig_vs_every_other___rand___cuda_int32
# Detect MaxMinElementwiseKernel (maximum) IMA
python test/test_schema_check.py -k test_schema_correctness_clamp_cuda_int8

pushd /tmp
# Detect StepKernel (nextafter) IMA
python -c "import torch; print(torch.nextafter(torch.tensor([-4.5149, -5.9053, -0.9516, -2.3615, 1.5591], device='cuda:0'), torch.tensor(3.8075, device='cuda:0')))"
# Detect BinaryGeometricKernels (atan2) IMA
python -c "import torch; x = (torch.randn((2,1,1), dtype=torch.float, device='cuda')*5).to(torch.float32); y=(torch.randn((), dtype=torch.float, device='cuda')*5).to(torch.float32); print(torch.atan2(x,y))"
popd