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| import unittest |
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| import numpy as np |
| from caffe2.proto import caffe2_pb2 |
| from caffe2.python import core, workspace, test_util |
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| @unittest.skipIf(not workspace.C.has_mkldnn, "Skipping as we do not have mkldnn.") |
| class TestMKLBasic(test_util.TestCase): |
| def testSpatialBNTestingSpeed(self): |
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| input_channel = 10 |
| X = np.random.rand(1, input_channel, 100, 100).astype(np.float32) - 0.5 |
| scale = np.random.rand(input_channel).astype(np.float32) + 0.5 |
| bias = np.random.rand(input_channel).astype(np.float32) - 0.5 |
| mean = np.random.randn(input_channel).astype(np.float32) |
| var = np.random.rand(input_channel).astype(np.float32) + 0.5 |
|
|
| mkl_do = core.DeviceOption(caffe2_pb2.MKLDNN) |
| |
| workspace.FeedBlob("X", X) |
| workspace.FeedBlob("scale", scale) |
| workspace.FeedBlob("bias", bias) |
| workspace.FeedBlob("mean", mean) |
| workspace.FeedBlob("var", var) |
| workspace.FeedBlob("X_mkl", X, device_option=mkl_do) |
| workspace.FeedBlob("scale_mkl", scale, device_option=mkl_do) |
| workspace.FeedBlob("bias_mkl", bias, device_option=mkl_do) |
| workspace.FeedBlob("mean_mkl", mean, device_option=mkl_do) |
| workspace.FeedBlob("var_mkl", var, device_option=mkl_do) |
| net = core.Net("test") |
| |
| net.SpatialBN(["X", "scale", "bias","mean","var"], "Y", order="NCHW", |
| is_test=True, |
| epsilon=1e-5) |
| net.SpatialBN(["X_mkl", "scale_mkl", "bias_mkl","mean_mkl","var_mkl"], "Y_mkl", order="NCHW", |
| is_test=True, |
| epsilon=1e-5, device_option=mkl_do) |
|
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| workspace.CreateNet(net) |
| workspace.RunNet(net) |
| |
| 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) |
|
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| print("FC CPU runtime {}, MKL runtime {}.".format(runtime[1], runtime[2])) |
|
|
| def testSpatialBNTrainingSpeed(self): |
| input_channel = 10 |
| X = np.random.rand(1, input_channel, 100, 100).astype(np.float32) - 0.5 |
| scale = np.random.rand(input_channel).astype(np.float32) + 0.5 |
| bias = np.random.rand(input_channel).astype(np.float32) - 0.5 |
| mean = np.random.randn(input_channel).astype(np.float32) |
| var = np.random.rand(input_channel).astype(np.float32) + 0.5 |
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| |
| |
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| mkl_do = core.DeviceOption(caffe2_pb2.MKLDNN) |
| |
| workspace.FeedBlob("X", X) |
| workspace.FeedBlob("scale", scale) |
| workspace.FeedBlob("bias", bias) |
| workspace.FeedBlob("mean", mean) |
| workspace.FeedBlob("var", var) |
| workspace.FeedBlob("X_mkl", X, device_option=mkl_do) |
| workspace.FeedBlob("scale_mkl", scale, device_option=mkl_do) |
| workspace.FeedBlob("bias_mkl", bias, device_option=mkl_do) |
| workspace.FeedBlob("mean_mkl", mean, device_option=mkl_do) |
| workspace.FeedBlob("var_mkl", var, device_option=mkl_do) |
| net = core.Net("test") |
| |
| net.SpatialBN(["X", "scale", "bias","mean", "var"], |
| ["Y", "mean", "var", "saved_mean", "saved_var"], |
| order="NCHW", |
| is_test=False, |
| epsilon=1e-5) |
| net.SpatialBN(["X_mkl", "scale_mkl", "bias_mkl","mean_mkl","var_mkl"], |
| ["Y_mkl", "mean_mkl", "var_mkl", "saved_mean_mkl", "saved_var_mkl"], |
| order="NCHW", |
| is_test=False, |
| epsilon=1e-5, |
| device_option=mkl_do) |
|
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| workspace.CreateNet(net) |
| workspace.RunNet(net) |
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| |
| np.testing.assert_allclose( |
| workspace.FetchBlob("Y"), |
| workspace.FetchBlob("Y_mkl"), |
| atol=1e-2, |
| rtol=1e-2) |
| np.testing.assert_allclose( |
| workspace.FetchBlob("mean"), |
| workspace.FetchBlob("mean_mkl"), |
| atol=1e-2, |
| rtol=1e-2) |
| np.testing.assert_allclose( |
| workspace.FetchBlob("var"), |
| workspace.FetchBlob("var_mkl"), |
| atol=1e-2, |
| rtol=1e-2) |
|
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| runtime = workspace.BenchmarkNet(net.Proto().name, 1, 100, True) |
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| print("FC CPU runtime {}, MKL runtime {}.".format(runtime[1], runtime[2])) |
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| if __name__ == '__main__': |
| unittest.main() |
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