import unittest import numpy as np from caffe2.proto import caffe2_pb2 from caffe2.python import core, workspace, test_util @unittest.skipIf(not workspace.C.has_mkldnn, "Skipping as we do not have mkldnn.") class TestMKLBasic(test_util.TestCase): def testReLUSpeed(self): X = np.random.randn(128, 4096).astype(np.float32) mkl_do = core.DeviceOption(caffe2_pb2.MKLDNN) # Makes sure that feed works. workspace.FeedBlob("X", X) workspace.FeedBlob("X_mkl", X, device_option=mkl_do) net = core.Net("test") # Makes sure that we can run relu. net.Relu("X", "Y") net.Relu("X_mkl", "Y_mkl", device_option=mkl_do) workspace.CreateNet(net) workspace.RunNet(net) # makes sure that the results are good. np.testing.assert_allclose( workspace.FetchBlob("Y"), workspace.FetchBlob("Y_mkl"), atol=1e-10, rtol=1e-10) runtime = workspace.BenchmarkNet(net.Proto().name, 1, 100, True) # The returned runtime is the time of # [whole_net, cpu_op, mkl_op] # so we will assume that the MKL one runs faster than the CPU one. # Note(Yangqing): in fact, it seems that in optimized mode, this is # not always guaranteed - MKL runs slower than the Eigen vectorized # version, so I am turning this assertion off. #self.assertTrue(runtime[1] >= runtime[2]) print("Relu CPU runtime {}, MKL runtime {}.".format(runtime[1], runtime[2])) def testConvSpeed(self): # We randomly select a shape to test the speed. Intentionally we # test a batch size of 1 since this may be the most frequent use # case for MKL during deployment time. X = np.random.rand(1, 256, 27, 27).astype(np.float32) - 0.5 W = np.random.rand(192, 256, 3, 3).astype(np.float32) - 0.5 b = np.random.rand(192).astype(np.float32) - 0.5 mkl_do = core.DeviceOption(caffe2_pb2.MKLDNN) # Makes sure that feed works. workspace.FeedBlob("X", X) workspace.FeedBlob("W", W) workspace.FeedBlob("b", b) workspace.FeedBlob("X_mkl", X, device_option=mkl_do) workspace.FeedBlob("W_mkl", W, device_option=mkl_do) workspace.FeedBlob("b_mkl", b, device_option=mkl_do) net = core.Net("test") # Makes sure that we can run relu. net.Conv(["X", "W", "b"], "Y", pad=1, stride=1, kernel=3) net.Conv(["X_mkl", "W_mkl", "b_mkl"], "Y_mkl", pad=1, stride=1, kernel=3, device_option=mkl_do) workspace.CreateNet(net) workspace.RunNet(net) # makes sure that the results are good. np.testing.assert_allclose( workspace.FetchBlob("Y"), workspace.FetchBlob("Y_mkl"), atol=1e-2, rtol=1e-2) runtime = workspace.BenchmarkNet(net.Proto().name, 1, 100, True) print("Conv CPU runtime {}, MKL runtime {}.".format(runtime[1], runtime[2])) if __name__ == '__main__': unittest.main()