Esempio n. 1
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    def test_conv2d_without_bias(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.Conv2D(self.filters, self.kernel,
                                   use_bias=False)(i)

        # Test upstride_type -1
        ef = self.generic_test(i, x, upstride_type=-1)
        # (5 * 3 * 10 * 20 * 96 * 48) * 2
        self.assertEqual(ef, format_flops(27648000))

        # Test upstride_type 0
        ef = self.generic_test(i, x, upstride_type=0)
        self.assertEqual(ef, format_flops(27648000))

        # Test upstride_type 1
        ef = self.generic_test(i, x, upstride_type=1)
        # (2**2 * (5 * 3 * 10 * 20 * 96 * 48)) + (2 * (2-1)* (5 * 3 * 10 * 20 * 96 * 48))
        # 3 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(82944000))

        # Test upstride_type 2
        ef = self.generic_test(i, x, upstride_type=2)
        # (4**2 * (5 * 3 * 10 * 20 * 96 * 48)) + (4 * (4-1)* (5 * 3 * 10 * 20 * 96 * 48))
        # 14 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(387072000))

        # Test upstride_type 3
        ef = self.generic_test(i, x, upstride_type=3)
        # (8**2* (5 * 3 * 10 * 20 * 96 * 48)) + (8 * (8-1)* (5 * 3 * 10 * 20 * 96 * 48))
        # 60 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(1658880000))
Esempio n. 2
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    def test_dense_with_bias(self):
        i = tf.keras.layers.Input(100, batch_size=1)
        x = tf.keras.layers.Dense(5, use_bias=True)(i)

        # Test upstride_type -1
        ef = self.generic_test(i, x, upstride_type=-1)
        # (100 * 5 * 2) + 5
        self.assertEqual(ef, format_flops(1005))

        # Test upstride_type 0
        ef = self.generic_test(i, x, upstride_type=0)
        self.assertEqual(ef, format_flops(1005))

        # Test upstride_type 1
        ef = self.generic_test(i, x, upstride_type=1)
        # 2**2 * (100 * 5) + (2 * (2-1) * 100 * 5) + (5 * 2)
        # 3 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(3010))

        # Test upstride_type 2
        ef = self.generic_test(i, x, upstride_type=2)
        # 4**2 * (100 * 5) + (4 * (4-1) * 100 * 5) + (5 * 4)
        # 14 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(14020))

        # Test upstride_type 3
        ef = self.generic_test(i, x, upstride_type=3)
        # 8**2 * (100 * 5) + (8 * (8-1) * 100 * 5) + (5 * 8)
        # 60 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(60040))
Esempio n. 3
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    def test_depthwise_with_bias(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.DepthwiseConv2D(self.kernel, use_bias=True)(i)

        # Test upstride_type -1
        ef = self.generic_test(i, x, upstride_type=-1)
        # ((5 * 3 * 10 * 96 * 48) * 2) + (96 * 48 * 10)
        self.assertEqual(ef, format_flops(1428480))

        # Test upstride_type 0
        ef = self.generic_test(i, x, upstride_type=0)
        self.assertEqual(ef, format_flops(1428480))

        # Test upstride_type 1
        ef = self.generic_test(i, x, upstride_type=1)
        # (2**2 * (5 * 3 * 10 * 96 * 48)) + (2 * (2-1)* (5 * 3 * 10 * 96 * 48)) + ((96 * 48 * 10) * 2)
        # 3 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(4239360))

        # Test upstride_type 2
        ef = self.generic_test(i, x, upstride_type=2)
        # (4**2 * (5 * 3 * 10 * 96 * 48)) + (4 * (4-1)* (5 * 3 * 10 * 96 * 48)) + ((96 * 48 * 10) * 4))
        # 14 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(19537920))

        # Test upstride_type 3
        ef = self.generic_test(i, x, upstride_type=3)
        # (8**2 * (5 * 3 * 10 * 96 * 48)) + (8 * (8-1)* (5 * 3 * 10 * 96 * 48)) + ((96 * 48 * 10) * 8))
        # 60 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(83312640))
Esempio n. 4
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    def test_conv2d_pad_same(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.Conv2D(self.filters,
                                   self.kernel,
                                   padding="SAME",
                                   use_bias=False)(i)

        # Test upstride_type -1
        ef = self.generic_test(i, x, upstride_type=-1)
        # (5 * 3 * 10 * 20 * 100 * 50) * 2
        self.assertEqual(ef, format_flops(30000000))

        # Test upstride_type 0
        ef = self.generic_test(i, x, upstride_type=0)
        self.assertEqual(ef, format_flops(30000000))

        # Test upstride_type 1
        ef = self.generic_test(i, x, upstride_type=1)
        # (2**2 * (5 * 3 * 10 * 20 * 100 * 50)) + (2 * (2-1)* (5 * 3 * 10 * 20 * 100 * 50))
        # 3 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(90000000))

        # Test upstride_type 2
        ef = self.generic_test(i, x, upstride_type=2)
        # (4**2 * (5 * 3 * 10 * 20 * 100 * 50)) + (4 * (4-1)* (5 * 3 * 10 * 20 * 100 * 50))
        # 14 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(420000000))

        # Test upstride_type 3
        ef = self.generic_test(i, x, upstride_type=3)
        # (8**2 * (5 * 3 * 10 * 20 * 100 * 50)) + (8 * (8-1)* (5 * 3 * 10 * 20 * 100 * 50))
        # 60 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(1800000000))
Esempio n. 5
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    def test_conv2d_with_bias(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.Conv2D(self.filters, self.kernel, use_bias=True)(i)

        # Test upstride_type -1
        ef = self.generic_test(i, x, upstride_type=-1)
        # (5 * 3 * 10 * 20 * 96 * 48) * 2 + (20 * 96 * 48)
        self.assertEqual(ef, format_flops(27740160))
        # Test upstride_type 0
        ef = self.generic_test(i, x, upstride_type=0)
        self.assertEqual(ef, format_flops(27740160))

        # Test upstride_type 1
        ef = self.generic_test(i, x, upstride_type=1)
        # (2**2 * (5 * 3 * 10 * 20 * 96 * 48)) + (2 * (2-1)* (5 * 3 * 10 * 20 * 96 * 48)) + (20 * 96 * 48 * 2)
        # 3 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(83128320))

        # Test upstride_type 2
        ef = self.generic_test(i, x, upstride_type=2)
        # (4**2 * (5 * 3 * 10 * 20 * 96 * 48)) + (4 * (4-1)* (5 * 3 * 10 * 20 * 96 * 48)) + (20 * 96 * 48 * 4)
        # 14 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(387440640))

        # Test upstride_type 3
        ef = self.generic_test(i, x, upstride_type=3)
        # (8**2 * (5 * 3 * 10 * 20 * 96 * 48)) + (8 * (8-1)* (5 * 3 * 10 * 20 * 96 * 48)) + (20 * 96 * 48 * 8)
        # 60 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(
            1659617280))  # (k_h * k_w * c_in * c_out * out_h * out_w) * 2
Esempio n. 6
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 def test_multiply(self):
     i = tf.keras.layers.Input(self.input_shape, batch_size=1)
     x = tf.keras.layers.Multiply()([i, i])
     for upstride_type, num_of_blades in self.map_type.items():
         # (num_of_blades is 1, 1, 2, 4, 8 for upstride_type -1, 0, 1, 2 and 3 respectively)
         ef = self.generic_test(i, x, upstride_type=upstride_type)
         self.assertEqual(ef, format_flops(
             50000 * num_of_blades))  # (100 * 50 * 10) * num_of_blades
Esempio n. 7
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    def test_global_avg_pooling(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.GlobalAveragePooling2D()(i)

        for upstride_type, num_of_blades in self.map_type.items():
            # (num_of_blades is 1, 1, 2, 4, 8 for upstride_type -1, 0, 1, 2 and 3 respectively)
            ef = self.generic_test(i, x, upstride_type=upstride_type)
            self.assertEqual(ef, format_flops(
                50000 * num_of_blades))  # (100 * 50 * 10) * num_of_blades
Esempio n. 8
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    def test_hard_swish(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.Activation(self.hard_swish)(i)

        for upstride_type, num_of_blades in self.map_type.items():
            # For Type -1 and Type 0
            # hard_sigmoid * x
            # For Type 1, 2 and 3
            # eg (hard_sigmoid * x) * num_of_blades
            # (num_of_blades is 1, 1, 2, 4, 8 for upstride_type -1, 0, 1, 2 and 3 respectively)
            ef = self.generic_test(i, x, upstride_type=upstride_type)
            self.assertEqual(ef, format_flops(250000 * num_of_blades))
Esempio n. 9
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    def test_activation_relu(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.Activation(self.relu)(i)

        for upstride_type, num_of_blades in self.map_type.items():
            # For Type -1 and Type 0
            # eg (100 * 50 * 10) * 2
            # For Type 1, 2 and 3
            # eg ((100 * 50 * 10) * 2) * num_of_blades
            # (num_of_blades is 1, 1, 2, 4, 8 for upstride_type -1, 0, 1, 2 and 3 respectively)
            ef = self.generic_test(i, x, upstride_type=upstride_type)
            self.assertEqual(ef, format_flops(100000 * num_of_blades))
Esempio n. 10
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    def test_average_pooling(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.AveragePooling2D((3, 3), strides=(2, 2))(i)

        for upstride_type, num_of_blades in self.map_type.items():
            # For Type -1 and Type 0
            # pool_size * output_shape
            # eg (49 * 24 * 10 * 3 * 3))
            # For Type 1, 2 and 3
            # eg (49 * 24 * 10 * 3 * 3) * num_of_blades
            # (num_of_blades is 1, 1, 2, 4, 8 for upstride_type -1, 0, 1, 2 and 3 respectively)
            ef = self.generic_test(i, x, upstride_type=upstride_type)
            self.assertEqual(ef, format_flops(105840 * num_of_blades))
Esempio n. 11
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    def test_hard_sigmoid(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.Activation(self.hard_sigmoid)(i)

        for upstride_type, num_of_blades in self.map_type.items():
            # For Type -1 and Type 0
            # Relu + one addition + one division
            # eg ((100 * 50 * 10) * 2) + (100 * 50 * 10) *2
            # For Type 1, 2 and 3
            # eg ((100 * 50 * 10) * 2 + (100 * 50 * 10) *2) * num_of_blades
            # (num_of_blades is 1, 1, 2, 4, 8 for upstride_type -1, 0, 1, 2 and 3 respectively)
            ef = self.generic_test(i, x, upstride_type=upstride_type)
            self.assertEqual(ef, format_flops(200000 * num_of_blades))
Esempio n. 12
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    def test_conv2d_stride(self):
        i = tf.keras.layers.Input(self.input_shape, batch_size=1)
        x = tf.keras.layers.Conv2D(self.filters,
                                   self.kernel,
                                   strides=(3, 2),
                                   use_bias=True)(i)

        # Test upstride_type -1
        ef = self.generic_test(i, x, upstride_type=-1)
        # (5 * 3 * 10 * 20 * 96 * 48) * 2 + (20 * 96 * 48)
        self.assertEqual(ef, format_flops(4623360))
        # Test upstride_type 0
        ef = self.generic_test(i, x, upstride_type=0)
        self.assertEqual(ef, format_flops(4623360))

        # Test upstride_type 1
        ef = self.generic_test(i, x, upstride_type=1)
        #   # (2**2 * (5 * 3 * 10 * 20 * 32 * 24)) + (2 * (2-1)* (5 * 3 * 10 * 20 * 32 * 24)) + (20 * 32 * 24 * 2)
        # 3 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(13854720))

        # Test upstride_type 2
        ef = self.generic_test(i, x, upstride_type=2)
        # N = 2**2
        # N**2 * (k_h * k_w * c_in * c_out * out_h * out_w)
        # N*(N-1) * (k_h * k_w * c_in * c_out * out_h * out_w)
        # 14 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(64573440))

        # Test upstride_type 3
        ef = self.generic_test(i, x, upstride_type=3)
        # N = 2**3
        # N**2 * (k_h * k_w * c_in * c_out * out_h * out_w)
        # N*(N-1) * (k_h * k_w * c_in * c_out * out_h * out_w)
        # 60 times more flops upstride type -1 or 0
        self.assertEqual(ef, format_flops(276602880))