import unittest import hypothesis.strategies as st from hypothesis import given import numpy as np from caffe2.python import core, workspace import caffe2.python.hypothesis_test_util as hu import caffe2.python.mkl_test_util as mu @unittest.skipIf(not workspace.C.has_mkldnn, "Skipping as we do not have mkldnn.") class MKLConvTest(hu.HypothesisTestCase): @given(stride=st.integers(1, 3), pad=st.integers(0, 3), kernel=st.integers(3, 5), size=st.integers(8, 20), input_channels=st.integers(1, 16), output_channels=st.integers(1, 16), batch_size=st.integers(1, 3), use_bias=st.booleans(), group=st.integers(1, 8), **mu.gcs) def test_mkl_convolution(self, stride, pad, kernel, size, input_channels, output_channels, batch_size, use_bias, group, gc, dc): op = core.CreateOperator( "Conv", ["X", "w", "b"] if use_bias else ["X", "w"], ["Y"], stride=stride, pad=pad, kernel=kernel, group=group ) X = np.random.rand( batch_size, input_channels * group, size, size).astype(np.float32) - 0.5 w = np.random.rand( output_channels * group, input_channels, kernel, kernel) \ .astype(np.float32) - 0.5 b = np.random.rand(output_channels * group).astype(np.float32) - 0.5 inputs = [X, w, b] if use_bias else [X, w] self.assertDeviceChecks(dc, op, inputs, [0]) if __name__ == "__main__": import unittest unittest.main()