예제 #1
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def Resnet50(hidden_size=64, num_output_classes=1001):
    """ResNet.

  Args:
    hidden_size: the size of the first hidden layer (multiplied later).
    num_output_classes: how many classes to distinguish.

  Returns:
    The ResNet model with the given layer and output sizes.
  """
    return stax.serial(
        stax.Conv(hidden_size, (7, 7), (2, 2),
                  'SAME'), stax.BatchNorm(), stax.Relu,
        stax.MaxPool((3, 3), strides=(2, 2)),
        ConvBlock(3, [hidden_size, hidden_size, 4 * hidden_size], (1, 1)),
        IdentityBlock(3, [hidden_size, hidden_size]),
        IdentityBlock(3, [hidden_size, hidden_size]),
        ConvBlock(3,
                  [2 * hidden_size, 2 * hidden_size, 8 * hidden_size], (2, 2)),
        IdentityBlock(3, [2 * hidden_size, 2 * hidden_size]),
        IdentityBlock(3, [2 * hidden_size, 2 * hidden_size]),
        IdentityBlock(3, [2 * hidden_size, 2 * hidden_size]),
        ConvBlock(3, [4 * hidden_size, 4 * hidden_size, 16 * hidden_size],
                  (2, 2)), IdentityBlock(3,
                                         [4 * hidden_size, 4 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size]),
        ConvBlock(3, [8 * hidden_size, 8 * hidden_size, 32 * hidden_size],
                  (2, 2)), IdentityBlock(3,
                                         [8 * hidden_size, 8 * hidden_size]),
        IdentityBlock(3, [8 * hidden_size, 8 * hidden_size]),
        stax.AvgPool((7, 7)), stax.Flatten(), stax.Dense(num_output_classes),
        stax.LogSoftmax)
예제 #2
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def WideResnet(num_blocks=3, hidden_size=64, num_output_classes=10):
    """WideResnet from https://arxiv.org/pdf/1605.07146.pdf.

  Args:
    num_blocks: int, number of blocks in a group.
    hidden_size: the size of the first hidden layer (multiplied later).
    num_output_classes: int, number of classes to distinguish.

  Returns:
    The WideResnet model with given layer and output sizes.
  """
    return stax.serial(stax.Conv(hidden_size, (3, 3), padding='SAME'),
                       WideResnetGroup(num_blocks, hidden_size),
                       WideResnetGroup(num_blocks, hidden_size * 2, (2, 2)),
                       WideResnetGroup(num_blocks, hidden_size * 4, (2, 2)),
                       stax.BatchNorm(), stax.Relu, stax.AvgPool((8, 8)),
                       stax.Flatten(), stax.Dense(num_output_classes),
                       stax.LogSoftmax)
예제 #3
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def Resnet50(hidden_size=64, num_output_classes=1001, mode='train'):
    """ResNet.

  Args:
    hidden_size: the size of the first hidden layer (multiplied later).
    num_output_classes: how many classes to distinguish.
    mode: whether we are training or evaluating or doing inference.

  Returns:
    The ResNet model with the given layer and output sizes.
  """
    del mode
    return stax.Serial(
        stax.Conv(hidden_size, (7, 7), (2, 2), 'SAME'), stax.BatchNorm(),
        stax.Relu(), stax.MaxPool(pool_size=(3, 3), strides=(2, 2)),
        ConvBlock(3, [hidden_size, hidden_size, 4 * hidden_size], (1, 1)),
        IdentityBlock(3, [hidden_size, hidden_size, 4 * hidden_size]),
        IdentityBlock(3, [hidden_size, hidden_size, 4 * hidden_size]),
        ConvBlock(3, [2 * hidden_size, 2 * hidden_size, 8 * hidden_size],
                  (2, 2)),
        IdentityBlock(3, [2 * hidden_size, 2 * hidden_size, 8 * hidden_size]),
        IdentityBlock(3, [2 * hidden_size, 2 * hidden_size, 8 * hidden_size]),
        IdentityBlock(3, [2 * hidden_size, 2 * hidden_size, 8 * hidden_size]),
        ConvBlock(3, [4 * hidden_size, 4 * hidden_size, 16 * hidden_size],
                  (2, 2)),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size, 16 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size, 16 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size, 16 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size, 16 * hidden_size]),
        IdentityBlock(3, [4 * hidden_size, 4 * hidden_size, 16 * hidden_size]),
        ConvBlock(3, [8 * hidden_size, 8 * hidden_size, 32 * hidden_size],
                  (2, 2)),
        IdentityBlock(3, [8 * hidden_size, 8 * hidden_size, 32 * hidden_size]),
        IdentityBlock(3, [8 * hidden_size, 8 * hidden_size, 32 * hidden_size]),
        stax.AvgPool(pool_size=(7, 7)), stax.Flatten(),
        stax.Dense(num_output_classes), stax.LogSoftmax())