nn.py 128.9 KB
Newer Older
M
minqiyang 已提交
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19
# Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

from __future__ import print_function

from six.moves import reduce
from .. import core
from ..layers import utils
20
from ..layers import nn as F
21
from .. import dygraph_utils
M
minqiyang 已提交
22
from . import layers
23
from ..framework import Variable, in_dygraph_mode, OpProtoHolder, Parameter, _dygraph_tracer, _varbase_creator, default_main_program
24
from ..data_feeder import convert_dtype, check_variable_and_dtype, check_type, check_dtype
M
minqiyang 已提交
25
from ..param_attr import ParamAttr
26
from ..initializer import Normal, Constant, NumpyArrayInitializer
H
hong 已提交
27 28
from .. import unique_name
from .layer_object_helper import LayerObjectHelper
29
from ..data_feeder import check_variable_and_dtype, check_type
L
lujun 已提交
30
import numpy as np
31
import numbers
32
import logging
33

34
__all__ = [
35
    'Conv2D', 'Conv3D', 'Pool2D', 'Linear', 'BatchNorm', 'Dropout', 'Embedding',
36 37 38
    'GRUUnit', 'InstanceNorm', 'LayerNorm', 'NCE', 'PRelu',
    'BilinearTensorProduct', 'Conv2DTranspose', 'Conv3DTranspose', 'GroupNorm',
    'SpectralNorm', 'TreeConv'
39
]
M
minqiyang 已提交
40 41


X
Xin Pan 已提交
42
class Conv2D(layers.Layer):
43
    """
44 45
    This interface is used to construct a callable object of the ``Conv2D`` class.
    For more details, refer to code examples.
46 47 48
    The convolution2D layer calculates the output based on the input, filter
    and strides, paddings, dilations, groups parameters. Input and
    Output are in NCHW format, where N is batch size, C is the number of
49 50 51
    the feature map, H is the height of the feature map, and W is the width of the feature map.
    Filter's shape is [MCHW] , where M is the number of output feature map,
    C is the number of input feature map, H is the height of the filter,
52
    and W is the width of the filter. If the groups is greater than 1,
53
    C will equal the number of input feature map divided by the groups.
54
    Please refer to UFLDL's `convolution
55
    <http://ufldl.stanford.edu/tutorial/supervised/FeatureExtractionUsingConvolution/>`_
T
tianshuo78520a 已提交
56
    for more details.
57 58 59 60 61 62 63 64
    If bias attribution and activation type are provided, bias is added to the
    output of the convolution, and the corresponding activation function is
    applied to the final result.

    For each input :math:`X`, the equation is:

    .. math::

65
        Out = \\sigma (W \\ast X + b)
66 67 68

    Where:

69 70
    * :math:`X`: Input value, a ``Tensor`` with NCHW format.
    * :math:`W`: Filter value, a ``Tensor`` with shape [MCHW] .
71
    * :math:`\\ast`: Convolution operation.
72
    * :math:`b`: Bias value, a 2-D ``Tensor`` with shape [M, 1].
73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94
    * :math:`\\sigma`: Activation function.
    * :math:`Out`: Output value, the shape of :math:`Out` and :math:`X` may be different.

    Example:

        - Input:

          Input shape: :math:`(N, C_{in}, H_{in}, W_{in})`

          Filter shape: :math:`(C_{out}, C_{in}, H_f, W_f)`

        - Output:

          Output shape: :math:`(N, C_{out}, H_{out}, W_{out})`

        Where

        .. math::

            H_{out}&= \\frac{(H_{in} + 2 * paddings[0] - (dilations[0] * (H_f - 1) + 1))}{strides[0]} + 1 \\\\
            W_{out}&= \\frac{(W_{in} + 2 * paddings[1] - (dilations[1] * (W_f - 1) + 1))}{strides[1]} + 1

95
    Parameters:
96
        num_channels(int): The number of channels in the input image.
97
        num_filters(int): The number of filter. It is as same as the output
98 99
            feature map.
        filter_size (int or tuple): The filter size. If filter_size is a tuple,
100 101
            it must contain two integers, (filter_size_H, filter_size_W).
            Otherwise, the filter will be a square.
102
        stride (int or tuple, optional): The stride size. If stride is a tuple, it must
103
            contain two integers, (stride_H, stride_W). Otherwise, the
104 105
            stride_H = stride_W = stride. Default: 1.
        padding (int or tuple, optional): The padding size. If padding is a tuple, it must
106
            contain two integers, (padding_H, padding_W). Otherwise, the
107 108
            padding_H = padding_W = padding. Default: 0.
        dilation (int or tuple, optional): The dilation size. If dilation is a tuple, it must
109
            contain two integers, (dilation_H, dilation_W). Otherwise, the
110 111
            dilation_H = dilation_W = dilation. Default: 1.
        groups (int, optional): The groups number of the Conv2d Layer. According to grouped
112 113 114
            convolution in Alex Krizhevsky's Deep CNN paper: when group=2,
            the first half of the filters is only connected to the first half
            of the input channels, while the second half of the filters is only
115 116
            connected to the second half of the input channels. Default: 1.
        param_attr (ParamAttr, optional): The parameter attribute for learnable weights(Parameter)
117 118 119 120
            of conv2d. If it is set to None or one attribute of ParamAttr, conv2d
            will create ParamAttr as param_attr. If the Initializer of the param_attr
            is not set, the parameter is initialized with :math:`Normal(0.0, std)`,
            and the :math:`std` is :math:`(\\frac{2.0 }{filter\_elem\_num})^{0.5}`. Default: None.
121
        bias_attr (ParamAttr or bool, optional): The attribute for the bias of conv2d.
122 123 124 125
            If it is set to False, no bias will be added to the output units.
            If it is set to None or one attribute of ParamAttr, conv2d
            will create ParamAttr as bias_attr. If the Initializer of the bias_attr
            is not set, the bias is initialized zero. Default: None.
126 127 128 129 130
        use_cudnn (bool, optional): Use cudnn kernel or not, it is valid only when the cudnn
            library is installed. Default: True.
        act (str, optional): Activation type, if it is set to None, activation is not appended.
            Default: None.
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
131

132 133 134 135
    Attribute:
        **weight** (Parameter): the learnable weights of filter of this layer.

        **bias** (Parameter or None): the learnable bias of this layer.
136

137 138 139
    Returns:
        None
    
140
    Raises:
141
        ValueError: if ``use_cudnn`` is not a bool value.
142 143 144

    Examples:
        .. code-block:: python
L
lujun 已提交
145

146 147 148 149 150
          from paddle.fluid.dygraph.base import to_variable
          import paddle.fluid as fluid
          from paddle.fluid.dygraph import Conv2D
          import numpy as np

151
          data = np.random.uniform(-1, 1, [10, 3, 32, 32]).astype('float32')
152
          with fluid.dygraph.guard():
153
              conv2d = Conv2D(3, 2, 3)
154 155
              data = to_variable(data)
              conv = conv2d(data)
156 157 158

    """

M
minqiyang 已提交
159
    def __init__(self,
160
                 num_channels,
M
minqiyang 已提交
161 162 163 164 165 166 167 168
                 num_filters,
                 filter_size,
                 stride=1,
                 padding=0,
                 dilation=1,
                 groups=None,
                 param_attr=None,
                 bias_attr=None,
169 170 171
                 use_cudnn=True,
                 act=None,
                 dtype='float32'):
M
minqiyang 已提交
172
        assert param_attr is not False, "param_attr should not be False here."
173 174
        super(Conv2D, self).__init__()
        self._num_channels = num_channels
M
minqiyang 已提交
175 176 177 178
        self._groups = groups
        self._stride = utils.convert_to_list(stride, 2, 'stride')
        self._padding = utils.convert_to_list(padding, 2, 'padding')
        self._dilation = utils.convert_to_list(dilation, 2, 'dilation')
179
        self._act = act
M
minqiyang 已提交
180 181 182
        if not isinstance(use_cudnn, bool):
            raise ValueError("use_cudnn should be True or False")
        self._use_cudnn = use_cudnn
183 184 185 186 187
        self._filter_size = filter_size
        self._num_filters = num_filters
        self._param_attr = param_attr
        self._bias_attr = bias_attr
        self._dtype = dtype
188

189 190 191 192 193
        if (self._num_channels == self._groups and
                num_filters % self._num_channels == 0 and not self._use_cudnn):
            self._l_type = 'depthwise_conv2d'
        else:
            self._l_type = 'conv2d'
M
minqiyang 已提交
194

195
        self._num_channels = num_channels
196 197
        if self._groups is None:
            num_filter_channels = self._num_channels
M
minqiyang 已提交
198
        else:
199
            if self._num_channels % self._groups != 0:
M
minqiyang 已提交
200
                raise ValueError("num_channels must be divisible by groups.")
201 202
            num_filter_channels = self._num_channels // self._groups
        filter_size = utils.convert_to_list(self._filter_size, 2, 'filter_size')
203
        filter_shape = [self._num_filters, num_filter_channels] + filter_size
M
minqiyang 已提交
204 205

        def _get_default_param_initializer():
206 207
            filter_elem_num = filter_size[0] * filter_size[
                1] * self._num_channels
M
minqiyang 已提交
208 209 210
            std = (2.0 / filter_elem_num)**0.5
            return Normal(0.0, std, 0)

211
        self.weight = self.create_parameter(
212
            attr=self._param_attr,
M
minqiyang 已提交
213 214 215 216
            shape=filter_shape,
            dtype=self._dtype,
            default_initializer=_get_default_param_initializer())

217
        self.bias = self.create_parameter(
218 219
            attr=self._bias_attr,
            shape=[self._num_filters],
M
minqiyang 已提交
220 221
            dtype=self._dtype,
            is_bias=True)
M
minqiyang 已提交
222 223

    def forward(self, input):
224 225 226 227 228 229 230 231 232 233 234
        if in_dygraph_mode() and self._l_type == 'conv2d':
            attrs = ('strides', self._stride, 'paddings', self._padding,
                     'dilations', self._dilation, 'groups', self._groups
                     if self._groups else 1, 'use_cudnn', self._use_cudnn)
            out = core.ops.conv2d(input, self.weight, *attrs)
            pre_bias = out

            pre_act = dygraph_utils._append_bias_in_dygraph(pre_bias, self.bias,
                                                            1)
            return dygraph_utils._append_activation_in_dygraph(pre_act,
                                                               self._act)
235 236
        inputs = {
            'Input': [input],
237
            'Filter': [self.weight],
238 239 240 241 242 243 244 245 246
        }
        attrs = {
            'strides': self._stride,
            'paddings': self._padding,
            'dilations': self._dilation,
            'groups': self._groups if self._groups else 1,
            'use_cudnn': self._use_cudnn,
            'use_mkldnn': False,
        }
247 248 249

        check_variable_and_dtype(input, 'input',
                                 ['float16', 'float32', 'float64'], 'Conv2D')
M
minqiyang 已提交
250 251 252
        pre_bias = self._helper.create_variable_for_type_inference(
            dtype=self._dtype)

M
minqiyang 已提交
253 254 255 256
        self._helper.append_op(
            type=self._l_type,
            inputs={
                'Input': input,
257
                'Filter': self.weight,
M
minqiyang 已提交
258
            },
M
minqiyang 已提交
259
            outputs={"Output": pre_bias},
260
            attrs=attrs)
M
minqiyang 已提交
261

262
        if self.bias is not None:
263 264 265 266 267
            pre_act = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
            self._helper.append_op(
                type='elementwise_add',
                inputs={'X': [pre_bias],
268
                        'Y': [self.bias]},
269 270 271 272
                outputs={'Out': [pre_act]},
                attrs={'axis': 1})
        else:
            pre_act = pre_bias
M
minqiyang 已提交
273

L
lujun 已提交
274
        # Currently, we don't support inplace in dygraph mode
275
        return self._helper.append_activation(pre_act, act=self._act)
M
minqiyang 已提交
276 277


L
lujun 已提交
278
class Conv3D(layers.Layer):
279 280 281 282 283
    """
    **Convlution3D Layer**

    The convolution3D layer calculates the output based on the input, filter
    and strides, paddings, dilations, groups parameters. Input(Input) and
D
DuYao 已提交
284 285
    Output(Output) are multidimensional tensors with a shape of 
    :math:`[N, C, D, H, W]` . Where N is batch size, C is the number of
286 287 288 289 290 291 292 293 294 295 296 297 298 299
    channels, D is the depth of the feature, H is the height of the feature,
    and W is the width of the feature. Convlution3D is similar with Convlution2D
    but adds one dimension(depth). If bias attribution and activation type are
    provided, bias is added to the output of the convolution, and the
    corresponding activation function is applied to the final result.

    For each input :math:`X`, the equation is:

    .. math::

        Out = \sigma (W \\ast X + b)

    In the above equation:

D
DuYao 已提交
300
    * :math:`X`: Input value, a tensor with NCDHW or NDHWC format.
301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325
    * :math:`W`: Filter value, a tensor with MCDHW format.
    * :math:`\\ast`: Convolution operation.
    * :math:`b`: Bias value, a 2-D tensor with shape [M, 1].
    * :math:`\\sigma`: Activation function.
    * :math:`Out`: Output value, the shape of :math:`Out` and :math:`X` may be different.

    Example:

        - Input:

          Input shape: :math:`(N, C_{in}, D_{in}, H_{in}, W_{in})`

          Filter shape: :math:`(C_{out}, C_{in}, D_f, H_f, W_f)`

        - Output:
          Output shape: :math:`(N, C_{out}, D_{out}, H_{out}, W_{out})`

        Where

        .. math::

            D_{out}&= \\frac{(D_{in} + 2 * paddings[0] - (dilations[0] * (D_f - 1) + 1))}{strides[0]} + 1 \\\\
            H_{out}&= \\frac{(H_{in} + 2 * paddings[1] - (dilations[1] * (H_f - 1) + 1))}{strides[1]} + 1 \\\\
            W_{out}&= \\frac{(W_{in} + 2 * paddings[2] - (dilations[2] * (W_f - 1) + 1))}{strides[2]} + 1

326
    Parameters:
327
        num_channels(int): The number of channels in the input image.
L
lujun 已提交
328
        num_filters(int): The number of filter. It is as same as the output image channel.
D
DuYao 已提交
329
        filter_size (int|tuple, optional): The filter size. If filter_size is a tuple,
330
            it must contain three integers, (filter_size_D, filter_size_H, filter_size_W).
D
DuYao 已提交
331 332 333
            Otherwise, the filter will be a square, filter_size_depth = filter_size_height
            = filter_size_width = filter_size.
        stride (int|tuple, optional): The stride size. If stride is a tuple, it must
334
            contain three integers, (stride_D, stride_H, stride_W). Otherwise, the
D
DuYao 已提交
335 336
            stride_D = stride_H = stride_W = stride. The default value is 1.
        padding (int|tuple, optional): The padding size. If padding is a tuple, it must
337
            contain three integers, (padding_D, padding_H, padding_W). Otherwise, the
D
DuYao 已提交
338 339
            padding_D = padding_H = padding_W = padding. The default value is 0.
        dilation (int|tuple, optional): The dilation size. If dilation is a tuple, it must
340
            contain three integers, (dilation_D, dilation_H, dilation_W). Otherwise, the
D
DuYao 已提交
341 342
            dilation_D = dilation_H = dilation_W = dilation. The default value is 1.
        groups (int, optional): The groups number of the Conv3d Layer. According to grouped
343 344 345
            convolution in Alex Krizhevsky's Deep CNN paper: when group=2,
            the first half of the filters is only connected to the first half
            of the input channels, while the second half of the filters is only
D
DuYao 已提交
346 347
            connected to the second half of the input channels. The default value is 1.
        param_attr (ParamAttr, optional): The parameter attribute for learnable parameters/weights
348 349 350
            of conv3d. If it is set to None or one attribute of ParamAttr, conv3d
            will create ParamAttr as param_attr. If it is set to None, the parameter
            is initialized with :math:`Normal(0.0, std)`, and the :math:`std` is
D
DuYao 已提交
351 352
            :math:`(\\frac{2.0 }{filter\_elem\_num})^{0.5}`. The default value is None.
        bias_attr (ParamAttr|bool, optional): The parameter attribute for the bias of conv3d.
353 354 355
            If it is set to False, no bias will be added to the output units.
            If it is set to None or one attribute of ParamAttr, conv3d
            will create ParamAttr as bias_attr. If the Initializer of the bias_attr
D
DuYao 已提交
356 357 358 359 360
            is not set, the bias is initialized zero. The default value is None.
        use_cudnn (bool, optional): Use cudnn kernel or not, it is valid only when the cudnn
            library is installed. The default value is True.
        act (str, optional): Activation type, if it is set to None, activation is not appended.
            The default value is None.
361
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
362

D
DuYao 已提交
363 364 365 366
    Attribute:
        **weight** (Parameter): the learnable weights of filters of this layer.

        **bias** (Parameter): the learnable bias of this layer.
367

368
    Returns:
D
DuYao 已提交
369
        None.
370 371 372 373 374 375 376 377

    Raises:
        ValueError: If the shapes of input, filter_size, stride, padding and
                    groups mismatch.

    Examples:
        .. code-block:: python

378 379 380 381 382 383
          import paddle.fluid as fluid
          import numpy

          with fluid.dygraph.guard():
              data = numpy.random.random((5, 3, 12, 32, 32)).astype('float32')
              conv3d = fluid.dygraph.nn.Conv3D(
384
                    num_channels=3, num_filters=2, filter_size=3, act="relu")
385 386
              ret = conv3d(fluid.dygraph.base.to_variable(data))

387 388
    """

L
lujun 已提交
389
    def __init__(self,
390
                 num_channels,
L
lujun 已提交
391 392 393 394 395 396 397 398 399
                 num_filters,
                 filter_size,
                 stride=1,
                 padding=0,
                 dilation=1,
                 groups=None,
                 param_attr=None,
                 bias_attr=None,
                 use_cudnn=True,
400 401
                 act=None,
                 dtype='float32'):
L
lujun 已提交
402
        assert param_attr is not False, "param_attr should not be False here."
403 404
        super(Conv3D, self).__init__()
        self._num_channels = num_channels
L
lujun 已提交
405 406 407
        self._groups = groups
        self._stride = utils.convert_to_list(stride, 3, 'stride')
        self._padding = utils.convert_to_list(padding, 3, 'padding')
408
        self._dilation = utils.convert_to_list(dilation, 3, 'dilation')
L
lujun 已提交
409 410
        self._act = act
        self._use_cudnn = use_cudnn
411 412 413 414
        self._filter_size = filter_size
        self._num_filters = num_filters
        self._param_attr = param_attr
        self._bias_attr = bias_attr
415
        self._dtype = dtype
416 417

        if self._groups is None:
418
            num_filter_channels = self._num_channels
L
lujun 已提交
419
        else:
420
            if self._num_channels % self._groups != 0:
L
lujun 已提交
421
                raise ValueError("num_channels must be divisible by groups.")
422
            num_filter_channels = self._num_channels // self._groups
L
lujun 已提交
423

424 425
        filter_size = utils.convert_to_list(self._filter_size, 3, 'filter_size')
        filter_shape = [self._num_filters, num_filter_channels] + filter_size
L
lujun 已提交
426 427 428

        def _get_default_param_initializer():
            filter_elem_num = filter_size[0] * filter_size[1] * filter_size[
429
                2] * self._num_channels
L
lujun 已提交
430 431 432
            std = (2.0 / filter_elem_num)**0.5
            return Normal(0.0, std, 0)

433
        self.weight = self.create_parameter(
434
            attr=self._param_attr,
L
lujun 已提交
435 436 437 438
            shape=filter_shape,
            dtype=self._dtype,
            default_initializer=_get_default_param_initializer())

439
        self.bias = self.create_parameter(
440 441
            attr=self._bias_attr,
            shape=[self._num_filters],
L
lujun 已提交
442 443 444 445 446 447 448 449
            dtype=self._dtype,
            is_bias=True)

    def forward(self, input):
        pre_bias = self._helper.create_variable_for_type_inference(
            dtype=self._dtype)

        self._helper.append_op(
450
            type='conv3d',
L
lujun 已提交
451 452
            inputs={
                'Input': input,
453
                'Filter': self.weight,
L
lujun 已提交
454 455 456 457 458 459 460 461 462 463 464
            },
            outputs={"Output": pre_bias},
            attrs={
                'strides': self._stride,
                'paddings': self._padding,
                'dilations': self._dilation,
                'groups': self._groups if self._groups else 1,
                'use_cudnn': self._use_cudnn,
                'use_mkldnn': False
            })

465
        if self.bias is not None:
466 467 468 469 470
            pre_act = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
            self._helper.append_op(
                type='elementwise_add',
                inputs={'X': [pre_bias],
471
                        'Y': [self.bias]},
472 473 474 475
                outputs={'Out': [pre_act]},
                attrs={'axis': 1})
        else:
            pre_act = pre_bias
L
lujun 已提交
476 477 478 479 480

        return self._helper.append_activation(pre_act, act=self._act)


class Conv3DTranspose(layers.Layer):
L
lujun 已提交
481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526
    """
    **Convlution3D transpose layer**

    The convolution3D transpose layer calculates the output based on the input,
    filter, and dilations, strides, paddings. Input(Input) and output(Output)
    are in NCDHW format. Where N is batch size, C is the number of channels,
    D is the depth of the feature, H is the height of the feature, and W
    is the width of the feature. Parameters(dilations, strides, paddings) are
    two elements. These two elements represent height and width, respectively.
    The details of convolution transpose layer, please refer to the following
    explanation and references `therein <http://www.matthewzeiler.com/wp-content/uploads/2017/07/cvpr2010.pdf>`_.
    If bias attribution and activation type are provided, bias is added to
    the output of the convolution, and the corresponding activation function
    is applied to the final result.

    For each input :math:`X`, the equation is:

    .. math::

        Out = \sigma (W \\ast X + b)

    In the above equation:

    * :math:`X`: Input value, a tensor with NCDHW format.
    * :math:`W`: Filter value, a tensor with MCDHW format.
    * :math:`\\ast`: Convolution operation.
    * :math:`b`: Bias value, a 2-D tensor with shape [M, 1].
    * :math:`\\sigma`: Activation function.
    * :math:`Out`: Output value, the shape of :math:`Out` and :math:`X` may be different.

    Example:

        - Input:

          Input shape: :math:`(N, C_{in}, D_{in}, H_{in}, W_{in})`

          Filter shape: :math:`(C_{in}, C_{out}, D_f, H_f, W_f)`

        - Output:

          Output shape: :math:`(N, C_{out}, D_{out}, H_{out}, W_{out})`

        Where

        .. math::

D
DuYao 已提交
527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545
           D^\prime_{out} &= (D_{in} - 1) * strides[0] - 2 * paddings[0] + dilations[0] * (D_f - 1) + 1 \\\\
           H^\prime_{out} &= (H_{in} - 1) * strides[1] - 2 * paddings[1] + dilations[1] * (H_f - 1) + 1 \\\\
           W^\prime_{out} &= (W_{in} - 1) * strides[2] - 2 * paddings[2] + dilations[2] * (W_f - 1) + 1 \\\\
           D_{out} &\in [ D^\prime_{out}, D^\prime_{out} + strides[0] ] \\\\
           H_{out} &\in [ H^\prime_{out}, H^\prime_{out} + strides[1] ] \\\\

    **Note**:

          The conv3d_transpose can be seen as the backward of the conv3d. For conv3d, 
          when stride > 1, conv3d maps multiple input shape to the same output shape, 
          so for conv3d_transpose, when stride > 1, input shape maps multiple output shape.
          If output_size is None, :math:`H_{out} = H^\prime_{out}, :math:`H_{out} = \
          H^\prime_{out}, W_{out} = W^\prime_{out}`; else, the :math:`D_{out}` of the output 
          size must between :math:`D^\prime_{out}` and :math:`D^\prime_{out} + strides[0]`, 
          the :math:`H_{out}` of the output size must between :math:`H^\prime_{out}` 
          and :math:`H^\prime_{out} + strides[1]`, and the :math:`W_{out}` of the output size must 
          between :math:`W^\prime_{out}` and :math:`W^\prime_{out} + strides[2]`, 
          conv3d_transpose can compute the kernel size automatically.

L
lujun 已提交
546

547
    Parameters:
548
        num_channels(int): The number of channels in the input image.
L
lujun 已提交
549 550
        num_filters(int): The number of the filter. It is as same as the output
            image channel.
551
        filter_size(int|tuple): The filter size. If filter_size is a tuple,
L
lujun 已提交
552
            it must contain three integers, (filter_size_D, filter_size_H, filter_size_W).
553
            Otherwise, the filter will be a square.
D
DuYao 已提交
554 555 556 557 558 559 560 561 562 563 564 565 566 567 568
        padding(int|tuple, optional): The padding size. The padding argument effectively
             adds `dilation * (kernel - 1)` amount of zero-padding on both sides of input. If `padding` is a string,
             either 'VALID' or 'SAME' supported, which is the padding algorithm. If `padding`
             is a tuple or list, it could be in three forms: `[pad_depth, pad_height, pad_width]` or
            `[pad_depth_front, pad_depth_back, pad_height_top, pad_height_bottom, pad_width_left, pad_width_right]`,
            and when `data_format` is `'NCDHW'`, `padding` can be in the form
            `[[0,0], [0,0], [pad_depth_front, pad_depth_back], [pad_height_top, pad_height_bottom], [pad_width_left, pad_width_right]]`.
            when `data_format` is `'NDHWC'`, `padding` can be in the form
            `[[0,0], [pad_depth_front, pad_depth_back], [pad_height_top, pad_height_bottom], [pad_width_left, pad_width_right], [0,0]]`.
            The default value is 0.
        stride(int|tuple, optional): The stride size. It means the stride in transposed convolution. 
            If stride is a tuple, it must contain three integers, (stride_depth, stride_height, 
            stride_width). Otherwise, stride_depth = stride_height = stride_width = stride. 
            The default value is 1.
        dilation(int|tuple, optional): The dilation size. If dilation is a tuple, it must
L
lujun 已提交
569
            contain three integers, (dilation_D, dilation_H, dilation_W). Otherwise, the
D
DuYao 已提交
570 571
            dilation_D = dilation_H = dilation_W = dilation. The default value is 1.
        groups(int, optional): The groups number of the Conv3d transpose layer. Inspired by
L
lujun 已提交
572 573 574 575
            grouped convolution in Alex Krizhevsky's Deep CNN paper, in which
            when group=2, the first half of the filters is only connected to the
            first half of the input channels, while the second half of the
            filters is only connected to the second half of the input channels.
D
DuYao 已提交
576 577
            The default value is 1.
        param_attr (ParamAttr, optional): The parameter attribute for learnable parameters/weights
L
lujun 已提交
578 579
            of conv3d_transpose. If it is set to None or one attribute of ParamAttr, conv3d_transpose
            will create ParamAttr as param_attr. If the Initializer of the param_attr
D
DuYao 已提交
580 581
            is not set, the parameter is initialized with Xavier. The default value is None.
        bias_attr (ParamAttr|bool, optional): The parameter attribute for the bias of conv3d_transpose.
L
lujun 已提交
582 583 584
            If it is set to False, no bias will be added to the output units.
            If it is set to None or one attribute of ParamAttr, conv3d_transpose
            will create ParamAttr as bias_attr. If the Initializer of the bias_attr
D
DuYao 已提交
585 586 587 588 589 590 591
            is not set, the bias is initialized zero. The default value is None.
        use_cudnn(bool, optional): Use cudnn kernel or not, it is valid only when the cudnn
            library is installed. The default value is True.
        act (str, optional): Activation type, if it is set to None, activation is not appended.
            The default value is None.
        name(str, optional): The default value is None. Normally there is no need for user 
            to set this property. For more information, please refer to :ref:`api_guide_Name`.
L
lujun 已提交
592

D
DuYao 已提交
593 594 595 596
    Attribute:
        **weight** (Parameter): the learnable weights of filters of this layer.

        **bias** (Parameter): the learnable bias of this layer.
597

L
lujun 已提交
598
    Returns:
D
DuYao 已提交
599
        None.
L
lujun 已提交
600 601 602 603 604 605 606 607

    Raises:
        ValueError: If the shapes of input, filter_size, stride, padding and
                    groups mismatch.

    Examples:
       .. code-block:: python

608 609 610 611 612 613
         import paddle.fluid as fluid
         import numpy

         with fluid.dygraph.guard():
             data = numpy.random.random((5, 3, 12, 32, 32)).astype('float32')
             conv3dTranspose = fluid.dygraph.nn.Conv3DTranspose(
614
                    num_channels=3,
615 616 617 618 619
                    num_filters=12,
                    filter_size=12,
                    use_cudnn=False)
             ret = conv3dTranspose(fluid.dygraph.base.to_variable(data))

L
lujun 已提交
620 621
    """

L
lujun 已提交
622
    def __init__(self,
623
                 num_channels,
L
lujun 已提交
624
                 num_filters,
625
                 filter_size,
L
lujun 已提交
626 627 628 629 630 631 632 633
                 padding=0,
                 stride=1,
                 dilation=1,
                 groups=None,
                 param_attr=None,
                 bias_attr=None,
                 use_cudnn=True,
                 act=None,
634 635
                 dtype='float32'):
        super(Conv3DTranspose, self).__init__()
L
lujun 已提交
636 637 638 639 640 641 642
        if not isinstance(use_cudnn, bool):
            raise ValueError("use_cudnn should be True or False")
        assert param_attr is not False, "param_attr should not be False in conv3d_transpose."
        self._padding = utils.convert_to_list(padding, 3, 'padding')
        self._stride = utils.convert_to_list(stride, 3, 'stride')
        self._dilation = utils.convert_to_list(dilation, 3, 'dilation')
        self._param_attr = param_attr
643
        self._num_channels = num_channels
L
lujun 已提交
644 645 646 647 648 649
        self._filter_size = filter_size
        self._groups = 1 if groups is None else groups
        self._num_filters = num_filters
        self._use_cudnn = use_cudnn
        self._bias_attr = bias_attr
        self._act = act
650
        self._dtype = dtype
L
lujun 已提交
651

652 653
        self._filter_size = utils.convert_to_list(
            self._filter_size, 3, 'conv3d_transpose.filter_size')
L
lujun 已提交
654

655 656
        filter_shape = [self._num_channels, self._num_filters // self._groups
                        ] + self._filter_size
657
        self.weight = self.create_parameter(
L
lujun 已提交
658
            dtype=self._dtype, shape=filter_shape, attr=self._param_attr)
659 660 661 662 663
        self.bias = self.create_parameter(
            attr=self._bias_attr,
            shape=[self._num_filters],
            dtype=self._dtype,
            is_bias=True)
L
lujun 已提交
664 665 666 667 668 669 670

    def forward(self, input):
        pre_bias = self._helper.create_variable_for_type_inference(
            dtype=self._dtype)
        self._helper.append_op(
            type="conv3d_transpose",
            inputs={'Input': [input],
671
                    'Filter': [self.weight]},
L
lujun 已提交
672 673 674 675 676 677 678 679 680 681 682 683 684 685 686
            outputs={'Output': pre_bias},
            attrs={
                'strides': self._stride,
                'paddings': self._padding,
                'dilations': self._dilation,
                'groups': self._groups if self._groups else 1,
                'use_cudnn': self._use_cudnn
            })

        if self._bias_attr:
            pre_act = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
            self._helper.append_op(
                type='elementwise_add',
                inputs={'X': [pre_bias],
687
                        'Y': [self.bias]},
L
lujun 已提交
688 689 690 691 692 693 694 695 696
                outputs={'Out': [pre_act]},
                attrs={'axis': 1})
        else:
            pre_act = pre_bias

        # Currently, we don't support inplace in imperative mode
        return self._helper.append_activation(pre_act, act=self._act)


X
Xin Pan 已提交
697
class Pool2D(layers.Layer):
698
    """
699 700 701 702 703
    This interface is used to construct a callable object of the ``Pool2D`` class.
    For more details, refer to code examples.
    The pooling2d operation calculates the output based on the input, pool_type and pool_size, pool_stride,
    pool_padding parameters.Input and output are in NCHW format, where N is batch size, C is the number of feature map,
    H is the height of the feature map, and W is the width of the feature map.
L
lujun 已提交
704 705
    Parameters(ksize, strides, paddings) are two elements. These two elements represent height and width, respectively.
    The input(X) size and output(Out) size may be different.
706

707 708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750
    Example:

        - Input:

          Input shape: :math:`(N, C, H_{in}, W_{in})`

        - Output:

          Output shape: :math:`(N, C, H_{out}, W_{out})`

        If ``ceil_mode`` = False:

        .. math::

            H_{out} = \\frac{(H_{in} - ksize[0] + 2 * paddings[0])}{strides[0]} + 1 \\\\
            W_{out} = \\frac{(W_{in} - ksize[1] + 2 * paddings[1])}{strides[1]} + 1

        If ``ceil_mode`` = True:

        .. math::

            H_{out} = \\frac{(H_{in} - ksize[0] + 2 * paddings[0] + strides[0] - 1)}{strides[0]} + 1 \\\\
            W_{out} = \\frac{(W_{in} - ksize[1] + 2 * paddings[1] + strides[1] - 1)}{strides[1]} + 1

        If ``exclusive`` = False:

        .. math::

            hstart &= i * strides[0] - paddings[0] \\\\
            hend   &= hstart + ksize[0] \\\\
            wstart &= j * strides[1] - paddings[1] \\\\
            wend   &= wstart + ksize[1] \\\\
            Output(i ,j) &= \\frac{sum(Input[hstart:hend, wstart:wend])}{ksize[0] * ksize[1]}

        If ``exclusive`` = True:

        .. math::

            hstart &= max(0, i * strides[0] - paddings[0])\\\\
            hend &= min(H, hstart + ksize[0]) \\\\
            wstart &= max(0, j * strides[1] - paddings[1]) \\\\
            wend & = min(W, wstart + ksize[1]) \\\\
            Output(i ,j) & = \\frac{sum(Input[hstart:hend, wstart:wend])}{(hend - hstart) * (wend - wstart)}

751
    Parameters:
752
        pool_size (int or list or tuple, optional): The pool kernel size. If pool kernel size is a tuple or list,
753
            it must contain two integers, (pool_size_Height, pool_size_Width).
754 755 756 757
            Otherwise, the pool kernel size will be a square of an int. Default: -1.
        pool_type(str, optional) : The pooling type, can be "max" for max-pooling and "avg" for average-pooling. 
            Default: max.
        pool_stride (int or list or tuple, optional): The pool stride size. If pool stride size is a tuple or list,
L
lujun 已提交
758
            it must contain two integers, (pool_stride_Height, pool_stride_Width). Otherwise,
759 760 761
            the pool stride size will be a square of an int. Default: 1.
        pool_padding (int or list or tuple, optional): The padding size for pooling operation. 
            If ``pool_padding`` is a tuple,
762
            it must contain two integers, (pool_padding_on_Height, pool_padding_on_Width).
763 764 765 766 767 768 769
            Otherwise, the padding size for pooling operation will be a square of an int. Default: 0.
        global_pooling (bool, optional): Whether to use the global pooling. If global_pooling = true,
            kernel size and paddings will be ignored. Default: False.
        use_cudnn (bool, optional): Only used in cudnn kernel, need install cudnn. Default: True.
        ceil_mode (bool, optional): Whether to use the ceil function to calculate output height and width.
            False is the default. If it is set to False, the floor function will be used. Default: False.
        exclusive (bool, optional): Whether to exclude padding points in average pooling mode. Default: True.
770 771

    Returns:
772
        None
773 774 775 776 777 778 779 780 781 782

    Raises:
        ValueError: If 'pool_type' is not "max" nor "avg"
        ValueError: If 'global_pooling' is False and 'pool_size' is -1
        ValueError: If 'use_cudnn' is not a bool value.

    Examples:

        .. code-block:: python

L
lujun 已提交
783
          import paddle.fluid as fluid
784 785
          from paddle.fluid.dygraph.base import to_variable
          import numpy as np
L
lujun 已提交
786 787

          with fluid.dygraph.guard():
788
             data = numpy.random.random((3, 32, 32, 5)).astype('float32')
789
             pool2d = fluid.dygraph.Pool2D(pool_size=2,
790 791 792
                            pool_type='max',
                            pool_stride=1,
                            global_pooling=False)
793
             pool2d_res = pool2d(to_variable(data))
794 795 796

    """

M
minqiyang 已提交
797 798 799 800 801 802 803 804
    def __init__(self,
                 pool_size=-1,
                 pool_type="max",
                 pool_stride=1,
                 pool_padding=0,
                 global_pooling=False,
                 use_cudnn=True,
                 ceil_mode=False,
805
                 exclusive=True):
M
minqiyang 已提交
806 807 808 809 810 811 812 813 814 815 816 817 818
        if pool_type not in ["max", "avg"]:
            raise ValueError(
                "Unknown pool_type: '%s'. It can only be 'max' or 'avg'.",
                str(pool_type))

        if global_pooling is False and pool_size == -1:
            raise ValueError(
                "When the global_pooling is False, pool_size must be passed "
                "and be a valid value. Received pool_size: " + str(pool_size))

        if not isinstance(use_cudnn, bool):
            raise ValueError("use_cudnn should be True or False")

819
        super(Pool2D, self).__init__()
M
minqiyang 已提交
820 821 822 823 824 825 826 827 828 829 830 831 832

        self._pool_type = pool_type
        self._pool_size = utils.convert_to_list(pool_size, 2, 'pool_size')
        self._pool_padding = utils.convert_to_list(pool_padding, 2,
                                                   'pool_padding')
        self._pool_stride = utils.convert_to_list(pool_stride, 2, 'pool_stride')
        self._global_pooling = global_pooling
        self._use_cudnn = use_cudnn
        self._ceil_mode = ceil_mode
        self._exclusive = exclusive
        self._l_type = 'pool2d'

    def forward(self, input):
833 834 835 836 837 838 839 840
        if in_dygraph_mode():
            attrs = ('pooling_type', self._pool_type, 'ksize', self._pool_size,
                     'global_pooling', self._global_pooling, 'strides',
                     self._pool_stride, 'paddings', self._pool_padding,
                     'use_cudnn', self._use_cudnn, 'ceil_mode', self._ceil_mode,
                     'use_mkldnn', False, 'exclusive', self._exclusive)
            return core.ops.pool2d(input, *attrs)

841 842 843 844
        check_variable_and_dtype(
            input, 'input', ['int8', 'uint8', 'float16', 'float32', 'float64'],
            'Pool2D')

845 846 847 848 849 850 851 852 853 854 855 856 857
        attrs = {
            "pooling_type": self._pool_type,
            "ksize": self._pool_size,
            "global_pooling": self._global_pooling,
            "strides": self._pool_stride,
            "paddings": self._pool_padding,
            "use_cudnn": self._use_cudnn,
            "ceil_mode": self._ceil_mode,
            "use_mkldnn": False,
            "exclusive": self._exclusive,
        }
        inputs = {"X": [input]}

M
minqiyang 已提交
858 859
        pool_out = self._helper.create_variable_for_type_inference(self._dtype)

M
minqiyang 已提交
860 861 862
        self._helper.append_op(
            type=self._l_type,
            inputs={"X": input},
M
minqiyang 已提交
863
            outputs={"Out": pool_out},
864
            attrs=attrs)
M
minqiyang 已提交
865
        return pool_out
M
minqiyang 已提交
866 867


S
songyouwei 已提交
868 869 870 871 872 873 874 875 876 877
class Linear(layers.Layer):
    """
    Fully-connected linear transformation layer:

    .. math::

        Out = Act({XW + b})

    where :math:`X` is the input Tensor, :math:`W` and :math:`b` are weight and bias respectively.

878
    Linear layer takes only one ``Tensor`` input.
S
songyouwei 已提交
879 880 881 882 883 884 885 886 887 888 889 890 891 892 893 894 895 896 897 898 899 900 901 902 903 904 905 906 907 908 909 910 911 912 913 914 915 916 917 918 919 920 921 922 923 924 925 926 927 928 929 930 931 932 933 934 935 936 937
    The Linear layer multiplies input tensor with weight matrix and
    produces an output Tensor of shape [N, *, `output_dim`],
    where N is batch size and `*` means any number of additional dimensions.
    If ``bias_attr`` is not None, a bias variable will be created and added to the output.
    Finally, if ``act`` is not None, it will be applied to the output as well.

    Parameters:
        input_dim(int): The number of input units in this layer.
        output_dim(int): The number of output units in this layer.
        param_attr(ParamAttr or list of ParamAttr, optional): The parameter attribute for learnable
            weights(Parameter) of this layer. Default: None.
        bias_attr(ParamAttr or list of ParamAttr, optional): The attribute for the bias
            of this layer. If it is set to False, no bias will be added to the output units.
            If it is set to None, the bias is initialized zero. Default: None.
        act(str, optional): Activation to be applied to the output of this layer. Default: None.
        dtype(str, optional): Dtype used for weight, it can be "float32" or "float64". Default: "float32".

    Attributes:
        **weight** (Parameter): the learnable weights of this layer.

        **bias** (Parameter or None): the learnable bias of this layer.

    Returns:
        None

    Examples:
        .. code-block:: python

          from paddle.fluid.dygraph.base import to_variable
          import paddle.fluid as fluid
          from paddle.fluid.dygraph import Linear
          import numpy as np

          data = np.random.uniform(-1, 1, [30, 10, 32]).astype('float32')
          with fluid.dygraph.guard():
              linear = Linear(32, 64)
              data = to_variable(data)
              res = linear(data)  # [30, 10, 64]
    """

    def __init__(self,
                 input_dim,
                 output_dim,
                 param_attr=None,
                 bias_attr=None,
                 act=None,
                 dtype="float32"):
        super(Linear, self).__init__()
        self._act = act
        self._dtype = dtype
        self.weight = self.create_parameter(
            shape=[input_dim, output_dim],
            attr=param_attr,
            dtype=dtype,
            is_bias=False)
        self.bias = self.create_parameter(
            shape=[output_dim], attr=bias_attr, dtype=dtype, is_bias=True)

    def forward(self, input):
938
        if in_dygraph_mode():
S
songyouwei 已提交
939 940
            pre_bias = core.ops.matmul(input, self.weight, 'transpose_X', False,
                                       'transpose_Y', False, "alpha", 1)
941 942 943 944 945
            pre_act = dygraph_utils._append_bias_in_dygraph(
                pre_bias, self.bias, axis=len(input.shape) - 1)

            return dygraph_utils._append_activation_in_dygraph(pre_act,
                                                               self._act)
946 947 948 949

        check_variable_and_dtype(input, 'input',
                                 ['float16', 'float32', 'float64'], "Linear")

950
        attrs = {
S
songyouwei 已提交
951 952 953
            "transpose_X": False,
            "transpose_Y": False,
            "alpha": 1,
954 955
        }
        inputs = {"X": [input], "Y": [self.weight]}
956

S
songyouwei 已提交
957 958
        tmp = self._helper.create_variable_for_type_inference(self._dtype)
        self._helper.append_op(
S
songyouwei 已提交
959
            type="matmul", inputs=inputs, outputs={"Out": tmp}, attrs=attrs)
S
songyouwei 已提交
960 961 962 963 964 965 966 967 968 969 970 971 972 973
        if self.bias:
            pre_activation = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
            self._helper.append_op(
                type='elementwise_add',
                inputs={'X': [tmp],
                        'Y': [self.bias]},
                outputs={'Out': [pre_activation]},
                attrs={'axis': len(input.shape) - 1})
        else:
            pre_activation = tmp
        return self._helper.append_activation(pre_activation, act=self._act)


974 975 976 977 978 979 980 981 982 983 984 985 986 987 988 989 990 991 992 993 994 995 996 997 998 999 1000 1001 1002 1003 1004 1005 1006 1007 1008 1009 1010 1011 1012 1013 1014 1015 1016 1017 1018 1019 1020 1021 1022 1023 1024 1025 1026 1027 1028 1029 1030 1031 1032 1033 1034 1035 1036 1037 1038 1039 1040 1041 1042 1043 1044 1045 1046 1047 1048 1049 1050 1051 1052 1053 1054 1055 1056 1057 1058 1059 1060 1061 1062 1063 1064 1065 1066 1067 1068 1069 1070 1071 1072 1073 1074 1075 1076 1077 1078 1079 1080 1081 1082 1083 1084 1085 1086 1087 1088 1089 1090 1091 1092 1093 1094 1095 1096 1097 1098 1099
class InstanceNorm(layers.Layer):
    """
    This interface is used to construct a callable object of the ``InstanceNorm`` class.
    For more details, refer to code examples.

    Can be used as a normalizer function for convolution or fully_connected operations.
    The required data format for this layer is one of the following:

    DataLayout: NCHW `[batch, in_channels, in_height, in_width]`

    Refer to `Instance Normalization: The Missing Ingredient for Fast Stylization <https://arxiv.org/pdf/1607.08022.pdf>`_
    for more details.

    :math:`input` is the input features over a mini-batch.

    ..  math::
        
        \\mu_{\\beta} &\\gets \\frac{1}{HW} \\sum_{i=1}^{HW} x_i \\qquad &//\\
        \\ mean\ of\ one\  feature\ map\ in\ mini-batch \\\\
        \\sigma_{\\beta}^{2} &\\gets \\frac{1}{HW} \\sum_{i=1}^{HW}(x_i - \\
        \\mu_{\\beta})^2 \\qquad &//\ variance\ of\ one\ feature\ map\ in\ mini-batch \\\\
        \\hat{x_i} &\\gets \\frac{x_i - \\mu_\\beta} {\\sqrt{\\
        \\sigma_{\\beta}^{2} + \\epsilon}} \\qquad &//\ normalize \\\\
        y_i &\\gets \\gamma \\hat{x_i} + \\beta \\qquad &//\ scale\ and\ shift

    Note:
        `H` means height of feature map, `W` means width of feature map.

    Parameters:
        num_channels(int): Indicate the number of channels of the input ``Tensor``.
        epsilon(float, optional): A value added to the denominator for
            numerical stability. Default is 1e-5.
        param_attr(ParamAttr, optional): The parameter attribute for Parameter `scale`
             of instance_norm. If it is set to None or one attribute of ParamAttr, instance_norm
	     will create ParamAttr as param_attr, the name of scale can be set in ParamAttr.
	     If the Initializer of the param_attr is not set, the parameter is initialized 
	     one. Default: None.
        bias_attr(ParamAttr, optional): The parameter attribute for the bias of instance_norm.
             If it is set to None or one attribute of ParamAttr, instance_norm
	     will create ParamAttr as bias_attr, the name of bias can be set in ParamAttr. 
	     If the Initializer of the bias_attr is not set, the bias is initialized zero. 
	     Default: None.
        dtype(str, optional): Indicate the data type of the input ``Tensor``,
             which can be float32 or float64. Default: float32.

    Returns:
        None.

    Examples:

        .. code-block:: python

          import paddle.fluid as fluid
          from paddle.fluid.dygraph.base import to_variable
          import numpy as np
          import paddle

          # x's shape is [1, 3, 1, 2] 
          x = np.array([[[[1.0, 8.0]], [[10.0, 5.0]], [[4.0, 6.0]]]]).astype('float32')
          with fluid.dygraph.guard():
              x = to_variable(x)
              instanceNorm = paddle.nn.InstanceNorm(3)
              ret = instanceNorm(x)
              # ret's shape is [1, 3, 1, 2]; value is [-1 1 0.999999 -0.999999 -0.999995 0.999995] 
              print(ret)

    """

    def __init__(self,
                 num_channels,
                 epsilon=1e-5,
                 param_attr=None,
                 bias_attr=None,
                 dtype='float32'):
        super(InstanceNorm, self).__init__()
        assert bias_attr is not False, "bias_attr should not be False in InstanceNorm."

        self._epsilon = epsilon
        self._param_attr = param_attr
        self._bias_attr = bias_attr
        self._dtype = dtype

        self.scale = self.create_parameter(
            attr=self._param_attr,
            shape=[num_channels],
            dtype=self._dtype,
            default_initializer=Constant(1.0),
            is_bias=False)
        self.bias = self.create_parameter(
            attr=self._bias_attr,
            shape=[num_channels],
            dtype=self._dtype,
            default_initializer=Constant(0.0),
            is_bias=True)

    def forward(self, input):
        if in_dygraph_mode():
            out, _, _ = core.ops.instance_norm(input, self.scale, self.bias,
                                               'epsilon', self._epsilon)
            return out

        check_variable_and_dtype(input, 'input', ['float32', 'float64'],
                                 "InstanceNorm")

        attrs = {"epsilon": self._epsilon}

        inputs = {"X": [input], "Scale": [self.scale], "Bias": [self.bias]}

        saved_mean = self._helper.create_variable_for_type_inference(
            dtype=self._dtype, stop_gradient=True)
        saved_variance = self._helper.create_variable_for_type_inference(
            dtype=self._dtype, stop_gradient=True)
        instance_norm_out = self._helper.create_variable_for_type_inference(
            self._dtype)

        outputs = {
            "Y": [instance_norm_out],
            "SavedMean": [saved_mean],
            "SavedVariance": [saved_variance]
        }

        self._helper.append_op(
            type="instance_norm", inputs=inputs, outputs=outputs, attrs=attrs)
        return instance_norm_out


M
minqiyang 已提交
1100
class BatchNorm(layers.Layer):
1101
    """
1102 1103 1104 1105 1106
    This interface is used to construct a callable object of the ``BatchNorm`` class.
    For more details, refer to code examples.
    It implements the function of the Batch Normalization Layer and can be used 
    as a normalizer function for conv2d and fully connected operations.
    The data is normalized by the mean and variance of the channel based on the current batch data.
1107 1108 1109 1110
    Refer to `Batch Normalization: Accelerating Deep Network Training by Reducing
    Internal Covariate Shift <https://arxiv.org/pdf/1502.03167.pdf>`_
    for more details.

1111 1112 1113
    When use_global_stats = False, the :math:`\\mu_{\\beta}` 
    and :math:`\\sigma_{\\beta}^{2}` are the statistics of one mini-batch.
    Calculated as follows:
1114 1115 1116 1117 1118 1119 1120 1121

    ..  math::

        \\mu_{\\beta} &\\gets \\frac{1}{m} \\sum_{i=1}^{m} x_i \\qquad &//\\
        \ mini-batch\ mean \\\\
        \\sigma_{\\beta}^{2} &\\gets \\frac{1}{m} \\sum_{i=1}^{m}(x_i - \\
        \\mu_{\\beta})^2 \\qquad &//\ mini-batch\ variance \\\\

1122 1123
    - :math:`x` : mini-batch data
    - :math:`m` : the size of the mini-batch data
1124 1125 1126

    When use_global_stats = True, the :math:`\\mu_{\\beta}`
    and :math:`\\sigma_{\\beta}^{2}` are not the statistics of one mini-batch.
1127 1128 1129 1130 1131 1132
    They are global or running statistics (moving_mean and moving_variance). It usually got from the
    pre-trained model. Calculated as follows:

    .. math::
        moving\_mean = moving\_mean * momentum + \mu_{\beta} * (1. - momentum) \quad &// global mean \\
        moving\_variance = moving\_variance * momentum + \sigma_{\beta}^{2} * (1. - momentum) \quad &// global variance \\
1133

1134 1135
    The normalization function formula is as follows:
 
1136 1137 1138
    ..  math::

        \\hat{x_i} &\\gets \\frac{x_i - \\mu_\\beta} {\\sqrt{\\
1139 1140 1141 1142 1143 1144
        \\sigma_{\\beta}^{2} + \\epsilon}} \\qquad &//\ normalize \\\\
        y_i &\\gets \\gamma \\hat{x_i} + \\beta \\qquad &//\ scale\ and\ shift

    - :math:`\\epsilon` : add a smaller value to the variance to prevent division by zero
    - :math:`\\gamma` : trainable proportional parameter
    - :math:`\\beta` : trainable deviation parameter
1145

1146
    Parameters:
1147
        num_channels(int): Indicate the number of channels of the input ``Tensor``.
T
tianshuo78520a 已提交
1148
        act(str, optional): Activation to be applied to the output of batch normalization. Default: None.
1149 1150 1151
        is_test (bool, optional): A flag indicating whether it is in test phrase or not.
             This flag only has effect on static graph mode. For dygraph mode, please use ``eval()``.
             Default: False.
1152 1153 1154
        momentum(float, optional): The value used for the moving_mean and moving_var computation. Default: 0.9.
        epsilon(float, optional): The small value added to the variance to prevent division by zero. Default: 1e-5.
        param_attr(ParamAttr, optional): The parameter attribute for Parameter `scale`
1155 1156 1157
             of batch_norm. If it is set to None or one attribute of ParamAttr, batch_norm
             will create ParamAttr as param_attr. If the Initializer of the param_attr
             is not set, the parameter is initialized with Xavier. Default: None.
1158
        bias_attr(ParamAttr, optional): The parameter attribute for the bias of batch_norm.
1159 1160 1161
             If it is set to None or one attribute of ParamAttr, batch_norm
             will create ParamAttr as bias_attr. If the Initializer of the bias_attr
             is not set, the bias is initialized zero. Default: None.
1162 1163 1164 1165 1166 1167
        dtype(str, optional): Indicate the data type of the input ``Tensor``,
             which can be float32 or float64. Default: float32.
        data_layout(str, optional): Specify the input data format, the data format can be "NCHW" or "NHWC". Default: NCHW.
        in_place(bool, optional): Make the input and output of batch norm reuse memory. Default: False.
        moving_mean_name(str, optional): The name of moving_mean which store the global Mean. Default: None.
        moving_variance_name(str, optional): The name of the moving_variance which store the global Variance. Default: None.
1168 1169
        do_model_average_for_mean_and_var(bool, optional): Whether parameter mean and variance should do model
            average when model average is enabled. Default: True.
1170
        use_global_stats(bool, optional): Whether to use global mean and
1171 1172 1173
            variance. In inference or test mode, set use_global_stats to true
            or is_test to true, and the behavior is equivalent.
            In train mode, when setting use_global_stats True, the global mean
1174 1175 1176 1177
            and variance are also used during train period. Default: False.
        trainable_statistics(bool, optional): Whether to calculate mean and var in eval mode. In eval mode, when
            setting trainable_statistics True, mean and variance will be calculated by current batch statistics.
            Default: False.
1178 1179

    Returns:
1180
        None
1181 1182 1183

    Examples:
        .. code-block:: python
L
lujun 已提交
1184 1185

          import paddle.fluid as fluid
1186 1187
          from paddle.fluid.dygraph.base import to_variable
          import numpy as np
L
lujun 已提交
1188

1189
          x = np.random.random(size=(3, 10, 3, 7)).astype('float32')
L
lujun 已提交
1190
          with fluid.dygraph.guard():
1191
              x = to_variable(x)
1192
              batch_norm = fluid.BatchNorm(10)
1193
              hidden1 = batch_norm(x)
1194 1195
    """

M
minqiyang 已提交
1196 1197 1198 1199 1200 1201 1202 1203
    def __init__(self,
                 num_channels,
                 act=None,
                 is_test=False,
                 momentum=0.9,
                 epsilon=1e-05,
                 param_attr=None,
                 bias_attr=None,
1204
                 dtype='float32',
M
minqiyang 已提交
1205 1206 1207 1208
                 data_layout='NCHW',
                 in_place=False,
                 moving_mean_name=None,
                 moving_variance_name=None,
1209
                 do_model_average_for_mean_and_var=True,
1210 1211
                 use_global_stats=False,
                 trainable_statistics=False):
1212
        super(BatchNorm, self).__init__()
1213
        self._param_attr = param_attr
1214
        self._bias_attr = bias_attr
1215
        self._act = act
M
minqiyang 已提交
1216 1217 1218

        assert bias_attr is not False, "bias_attr should not be False in batch_norm."

1219 1220
        if dtype == "float16":
            self._dtype = "float32"
M
minqiyang 已提交
1221 1222 1223 1224 1225 1226
        else:
            self._dtype = dtype

        param_shape = [num_channels]

        # create parameter
1227
        self.weight = self.create_parameter(
1228
            attr=self._param_attr,
M
minqiyang 已提交
1229 1230 1231
            shape=param_shape,
            dtype=self._dtype,
            default_initializer=Constant(1.0))
1232
        self.weight.stop_gradient = use_global_stats and self._param_attr.learning_rate == 0.
M
minqiyang 已提交
1233

1234
        self.bias = self.create_parameter(
1235
            attr=self._bias_attr,
M
minqiyang 已提交
1236 1237 1238
            shape=param_shape,
            dtype=self._dtype,
            is_bias=True)
1239
        self.bias.stop_gradient = use_global_stats and self._param_attr.learning_rate == 0.
M
minqiyang 已提交
1240

1241
        self._mean = self.create_parameter(
M
minqiyang 已提交
1242 1243 1244 1245 1246 1247 1248
            attr=ParamAttr(
                name=moving_mean_name,
                initializer=Constant(0.0),
                trainable=False,
                do_model_average=do_model_average_for_mean_and_var),
            shape=param_shape,
            dtype=self._dtype)
1249
        self._mean.stop_gradient = True
M
minqiyang 已提交
1250

1251
        self._variance = self.create_parameter(
M
minqiyang 已提交
1252 1253 1254 1255 1256 1257 1258
            attr=ParamAttr(
                name=moving_variance_name,
                initializer=Constant(1.0),
                trainable=False,
                do_model_average=do_model_average_for_mean_and_var),
            shape=param_shape,
            dtype=self._dtype)
1259
        self._variance.stop_gradient = True
M
minqiyang 已提交
1260 1261

        self._in_place = in_place
1262
        self._data_layout = data_layout
M
minqiyang 已提交
1263 1264 1265
        self._momentum = momentum
        self._epsilon = epsilon
        self._is_test = is_test
1266
        self._fuse_with_relu = False
M
minqiyang 已提交
1267
        self._use_global_stats = use_global_stats
1268
        self._trainable_statistics = trainable_statistics
M
minqiyang 已提交
1269 1270 1271 1272 1273 1274 1275

    def forward(self, input):
        # create output
        # mean and mean_out share the same memory
        mean_out = self._mean
        # variance and variance out share the same memory
        variance_out = self._variance
1276 1277

        if in_dygraph_mode():
1278
            _is_test = not self.training and not self._trainable_statistics
1279 1280 1281 1282 1283 1284 1285 1286 1287 1288 1289
            attrs = ("momentum", self._momentum, "epsilon", self._epsilon,
                     "is_test", _is_test, "data_layout", self._data_layout,
                     "use_mkldnn", False, "fuse_with_relu",
                     self._fuse_with_relu, "use_global_stats",
                     self._use_global_stats)
            batch_norm_out, _, _, _, _ = core.ops.batch_norm(
                input, self.weight, self.bias, self._mean, self._variance,
                mean_out, variance_out, *attrs)
            return dygraph_utils._append_activation_in_dygraph(
                batch_norm_out, act=self._act)

1290 1291 1292
        check_variable_and_dtype(input, 'input',
                                 ['float16', 'float32', 'float64'], 'BatchNorm')

1293 1294 1295 1296 1297 1298 1299
        attrs = {
            "momentum": self._momentum,
            "epsilon": self._epsilon,
            "is_test": self._is_test,
            "data_layout": self._data_layout,
            "use_mkldnn": False,
            "fuse_with_relu": self._fuse_with_relu,
1300
            "use_global_stats": self._use_global_stats
1301
        }
M
minqiyang 已提交
1302

1303 1304 1305 1306 1307 1308 1309 1310
        inputs = {
            "X": [input],
            "Scale": [self.weight],
            "Bias": [self.bias],
            "Mean": [self._mean],
            "Variance": [self._variance]
        }

1311 1312 1313 1314 1315 1316
        saved_mean = self._helper.create_variable_for_type_inference(
            dtype=self._dtype, stop_gradient=True)
        saved_variance = self._helper.create_variable_for_type_inference(
            dtype=self._dtype, stop_gradient=True)
        batch_norm_out = input if self._in_place else self._helper.create_variable_for_type_inference(
            self._dtype)
1317 1318 1319 1320 1321 1322 1323 1324 1325

        outputs = {
            "Y": [batch_norm_out],
            "MeanOut": [mean_out],
            "VarianceOut": [variance_out],
            "SavedMean": [saved_mean],
            "SavedVariance": [saved_variance]
        }

M
minqiyang 已提交
1326
        self._helper.append_op(
1327
            type="batch_norm", inputs=inputs, outputs=outputs, attrs=attrs)
M
minqiyang 已提交
1328

L
lujun 已提交
1329
        # Currently, we don't support inplace in dygraph mode
1330
        return self._helper.append_activation(batch_norm_out, self._act)
1331 1332


1333 1334 1335 1336 1337 1338 1339 1340 1341 1342 1343 1344 1345 1346 1347 1348 1349 1350 1351 1352 1353 1354 1355 1356 1357 1358 1359 1360 1361 1362 1363 1364 1365 1366 1367 1368 1369 1370 1371 1372 1373 1374 1375 1376 1377 1378 1379 1380 1381 1382 1383 1384 1385 1386 1387 1388 1389 1390 1391 1392 1393 1394 1395 1396 1397 1398 1399 1400 1401 1402 1403 1404 1405 1406 1407 1408 1409 1410 1411 1412 1413 1414 1415 1416 1417 1418 1419 1420 1421 1422 1423 1424 1425 1426 1427 1428 1429 1430 1431 1432 1433 1434 1435 1436 1437 1438 1439 1440 1441
class Dropout(layers.Layer):
    """
   This interface is used to construct a callable object of the ``Dropout`` class.
   For more details, refer to code examples.

   Drop or keep each element of input independently. Dropout is a regularization
   technique for reducing overfitting by preventing neuron co-adaption during
   training. The dropout operator randomly sets (according to the given dropout
   probability) the outputs of some units to zero, while others are remain
   unchanged.

   Dropout layer can be removed for efficiency concern.

   Parameters:
       p (float, optional): Probability of setting units to zero. Default: 0.5
       seed (int, optional): A Python integer used to create random seeds. If this
                   parameter is set to None, a random seed is used.
                   NOTE: If an integer seed is given, always the same output
                   units will be dropped. DO NOT use a fixed seed in training. Default: None.
       dropout_implementation(string, optional): ['downgrade_in_infer'(default)|'upscale_in_train']

                                       1. downgrade_in_infer(default), downgrade the outcome at inference

                                          - train: out = input * mask
                                          - inference: out = input * (1.0 - p)

                                          (mask is a tensor same shape with input, value is 0 or 1
                                          ratio of 0 is dropout_prob)
                                       2. upscale_in_train, upscale the outcome at training time

                                          - train: out = input * mask / ( 1.0 - p )
                                          - inference: out = input

                                          (mask is a tensor same shape with input, value is 0 or 1
                                          ratio of 0 is p)
       is_test (bool, optional): A flag indicating whether it is in test phrase or not.
                   This flag only has effect on static graph mode. For dygraph mode, please use ``eval()``.
                   Default: False.

   Returns:
       None

   Examples:

       .. code-block:: python

           import paddle.fluid as fluid
           from paddle.fluid.dygraph.base import to_variable
           import numpy as np

           x = np.random.random(size=(3, 10, 3, 7)).astype('float32')
           with fluid.dygraph.guard():
               x = to_variable(x)
               m = fluid.dygraph.Dropout(p=0.5)
               droped_train = m(x)
               # switch to eval mode
               m.eval()
               droped_eval = m(x)
   """

    def __init__(self,
                 p=0.5,
                 seed=None,
                 dropout_implementation="downgrade_in_infer",
                 is_test=False):
        super(Dropout, self).__init__()
        assert isinstance(p, (float, int)), "p argument should be a number"
        assert 0 <= p <= 1, "p argument should between 0 and 1"
        self._dropout_prob = p
        assert seed is None or isinstance(
            seed, int), "seed argument should be None or a integer"
        self._seed = seed
        assert dropout_implementation in (
            'downgrade_in_infer', 'upscale_in_train'
        ), "dropout_implementation argument should be 'downgrade_in_infer' or 'upscale_in_train'"
        self._dropout_implementation = dropout_implementation
        self._is_test = is_test

    def forward(self, input):
        prog = default_main_program()
        if (self._seed is None or self._seed == 0) and prog.random_seed != 0:
            self._seed = prog.random_seed
        attrs = {
            'dropout_prob': self._dropout_prob,
            'is_test': not self.training
            if in_dygraph_mode() else self._is_test,
            'fix_seed': self._seed is not None,
            'seed': self._seed if self._seed is not None else 0,
            'dropout_implementation': self._dropout_implementation,
        }

        if in_dygraph_mode():
            attrs = sum(attrs.items(), ())
            out, mask = core.ops.dropout(input, *attrs)
            return out

        out = self._helper.create_variable_for_type_inference(dtype=input.dtype)
        mask = self._helper.create_variable_for_type_inference(
            dtype=core.VarDesc.VarType.UINT8, stop_gradient=True)

        self._helper.append_op(
            type='dropout',
            inputs={'X': [input]},
            outputs={'Out': [out],
                     'Mask': [mask]},
            attrs=attrs)
        return out


1442 1443 1444 1445
class Embedding(layers.Layer):
    """
    **Embedding Layer**

Z
zhongpu 已提交
1446 1447 1448 1449 1450 1451
    This interface is used to construct a callable object of the ``Embedding`` class.
    For specific usage, refer to code examples. It implements the function of the Embedding Layer.
    This layer is used to lookup embeddings vector of ids provided by :attr:`input` .
    It automatically constructs a 2D embedding matrix based on the
    input :attr:`size` (vocab_size, emb_size) and :attr:`dtype` .

1452 1453
    The shape of output Tensor is generated by appending an emb_size dimension to the
    last dimension of the input Tensor shape.
Z
zhongpu 已提交
1454

1455
    **Note:** The id in :attr:`input` must satisfy :math:`0 =< id < size[0]` ,
Z
zhongpu 已提交
1456 1457 1458 1459 1460 1461 1462
    otherwise the program will throw an exception and exit.

    .. code-block:: text

        Case 1:

        input is a Tensor. padding_idx = -1
1463 1464
            input.data = [[1, 3], [2, 4], [4, 127]
            input.shape = [3, 2]
Z
zhongpu 已提交
1465 1466 1467 1468 1469 1470 1471 1472 1473 1474 1475 1476 1477
        Given size = [128, 16]
        output is a Tensor:
            out.shape = [3, 2, 16]
            out.data = [[[0.129435295, 0.244512452, ..., 0.436322452],
                        [0.345421456, 0.524563927, ..., 0.144534654]],

                        [[0.345249859, 0.124939536, ..., 0.194353745],
                        [0.945345345, 0.435394634, ..., 0.435345365]],
                        
                        [[0.945345345, 0.435394634, ..., 0.435345365],
                        [0.0,         0.0,         ..., 0.0        ]]]  # padding data
        The input padding_idx is less than 0, it is automatically converted to padding_idx = -1 + 128 = 127
        It will pad all-zero data when ids is 127.
1478

1479
    Parameters:
L
lujun 已提交
1480 1481
        size(tuple|list): The shape of the look up table parameter. It should have two elements which indicate the size
            of the dictionary of embeddings and the size of each embedding vector respectively.
Z
zhongpu 已提交
1482 1483 1484 1485 1486 1487 1488 1489 1490 1491 1492 1493 1494 1495 1496 1497 1498 1499
        is_sparse(bool): The flag indicating whether to use sparse update. This parameter only
            affects the performance of the backwards gradient update. It is recommended to set 
            True because sparse update is faster. But some optimizer does not support sparse update,
            such as :ref:`api_fluid_optimizer_AdadeltaOptimizer` , :ref:`api_fluid_optimizer_AdamaxOptimizer` , 
            :ref:`api_fluid_optimizer_DecayedAdagradOptimizer` , :ref:`api_fluid_optimizer_FtrlOptimizer` ,
            :ref:`api_fluid_optimizer_LambOptimizer` and :ref:`api_fluid_optimizer_LarsMomentumOptimizer` .
            In these case, is_sparse must be False. Default: False.
        is_distributed(bool): Whether to store the embedding matrix in a distributed manner. Only used
            in multi-machine distributed CPU training. Default: False.
        padding_idx(int|long|None): padding_idx needs to be in the interval [-vocab_size, vocab_size). 
            If :math:`padding\_idx < 0`, the :math:`padding\_idx` will automatically be converted
            to :math:`vocab\_size + padding\_idx` . It will output all-zero padding data whenever lookup
            encounters :math:`padding\_idx` in id. And the padding data will not be updated while training.
            If set None, it makes no effect to output. Default: None.
        param_attr(ParamAttr): To specify the weight parameter property. Default: None, which means the
            default weight parameter property is used. See usage for details in :ref:`api_fluid_ParamAttr` . In addition,
            user-defined or pre-trained word vectors can be loaded with the :attr:`param_attr` parameter. 
            The local word vector needs to be transformed into numpy format, and the shape of local word
T
tianshuo78520a 已提交
1500
            vector should be consistent with :attr:`size` . Then :ref:`api_fluid_initializer_NumpyArrayInitializer`
Z
zhongpu 已提交
1501 1502 1503
            is used to load custom or pre-trained word vectors. See code example 2 for details.
        dtype(np.dtype|core.VarDesc.VarType|str): It refers to the data type of output Tensor.
            It must be "float32" or "float64". Default: "float32".
1504

Z
zhongpu 已提交
1505 1506
    Attribute:
        **weight** (Parameter): the learnable weights of this layer.
1507

1508
    Returns:
Z
zhongpu 已提交
1509
        Variable: Embedding Tensor or LoDTensor mapped by input. The data type is the same as :attr:`dtype` .
1510 1511

    Examples:
1512

1513 1514
        .. code-block:: python

L
lujun 已提交
1515 1516 1517 1518
          import paddle.fluid as fluid
          import paddle.fluid.dygraph.base as base
          import numpy as np

Z
zhongpu 已提交
1519
          # example 1
1520 1521
          inp_word = np.array([[2, 3, 5], [4, 2, 1]]).astype('int64')
          inp_word.shape  # [2, 3]
1522 1523
          dict_size = 20
          with fluid.dygraph.guard():
L
lujun 已提交
1524
              emb = fluid.dygraph.Embedding(
1525 1526 1527
                  size=[dict_size, 32],
                  param_attr='emb.w',
                  is_sparse=False)
L
lujun 已提交
1528
              static_rlt3 = emb(base.to_variable(inp_word))
1529
              static_rlt3.shape  # [2, 3, 32]
Z
zhongpu 已提交
1530 1531 1532 1533 1534 1535 1536 1537 1538 1539 1540 1541 1542 1543

          # example 2: load custom or pre-trained word vectors
          weight_data = np.random.random(size=(128, 100))  # word vectors with numpy format
          w_param_attrs = fluid.ParamAttr(
              name="emb_weight",
              learning_rate=0.5,
              initializer=fluid.initializer.NumpyArrayInitializer(weight_data),
              trainable=True)
          with fluid.dygraph.guard():
              emb = fluid.dygraph.Embedding(
                  size=[128, 100],
                  param_attr= w_param_attrs,
                  is_sparse=False)
              static_rlt3 = emb(base.to_variable(inp_word))          
1544 1545
    """

1546 1547 1548 1549 1550 1551 1552
    def __init__(self,
                 size,
                 is_sparse=False,
                 is_distributed=False,
                 padding_idx=None,
                 param_attr=None,
                 dtype='float32'):
1553
        super(Embedding, self).__init__()
1554 1555 1556 1557
        self._size = size
        self._is_sparse = is_sparse
        self._is_distributed = is_distributed
        self._padding_idx = -1 if padding_idx is None else padding_idx if padding_idx >= 0 else (
J
JiabinYang 已提交
1558
            size[0] + padding_idx)
1559 1560 1561

        self._param_attr = param_attr
        self._dtype = dtype
J
JiabinYang 已提交
1562
        self._remote_prefetch = self._is_sparse and (not self._is_distributed)
1563 1564 1565
        if self._remote_prefetch:
            assert self._is_sparse is True and self._is_distributed is False

1566
        self.weight = self.create_parameter(
1567 1568 1569 1570 1571 1572
            attr=self._param_attr,
            shape=self._size,
            dtype=self._dtype,
            is_bias=False)

    def forward(self, input):
1573 1574 1575 1576 1577 1578
        if in_dygraph_mode():
            return core.ops.lookup_table_v2(
                self.weight, input, 'is_sparse', self._is_sparse,
                'is_distributed', self._is_distributed, 'remote_prefetch',
                self._remote_prefetch, 'padding_idx', self._padding_idx)

1579
        check_variable_and_dtype(input, 'input', ['int64'], 'Embedding')
1580 1581 1582 1583 1584 1585
        attrs = {
            'is_sparse': self._is_sparse,
            'is_distributed': self._is_distributed,
            'remote_prefetch': self._remote_prefetch,
            'padding_idx': self._padding_idx
        }
1586

1587 1588
        out = self._helper.create_variable_for_type_inference(self._dtype)
        self._helper.append_op(
1589
            type='lookup_table_v2',
1590
            inputs={'Ids': input,
1591
                    'W': self.weight},
1592
            outputs={'Out': out},
1593
            attrs=attrs)
1594 1595

        return out
M
minqiyang 已提交
1596 1597


1598
class LayerNorm(layers.Layer):
1599
    """
1600 1601 1602
    This interface is used to construct a callable object of the ``LayerNorm`` class.
    For more details, refer to code examples.
    It implements the function of the Layer Normalization Layer and can be applied to mini-batch input data.
1603
    Refer to `Layer Normalization <https://arxiv.org/pdf/1607.06450v1.pdf>`_
1604

1605
    The formula is as follows:
1606

1607
    ..  math::
1608

1609
        \\mu & = \\frac{1}{H}\\sum_{i=1}^{H} x_i
1610

1611
        \\sigma & = \\sqrt{\\frac{1}{H}\sum_{i=1}^{H}{(x_i - \\mu)^2} + \\epsilon}
1612

1613
        y & = f(\\frac{g}{\\sigma}(x - \\mu) + b)
1614

1615 1616 1617 1618 1619
    - :math:`x`: the vector representation of the summed inputs to the neurons in that layer.
    - :math:`H`: the number of hidden units in a layers
    - :math:`\\epsilon`: the small value added to the variance to prevent division by zero.
    - :math:`g`: the trainable scale parameter.
    - :math:`b`: the trainable bias parameter.
1620

1621
    Parameters:
1622 1623 1624 1625
        normalized_shape(int or list or tuple): Input shape from an expected input of
            size :math:`[*, normalized_shape[0], normalized_shape[1], ..., normalized_shape[-1]]`.
            If it is a single integer, this module will normalize over the last dimension
            which is expected to be of that specific size.
1626
        scale(bool, optional): Whether to learn the adaptive gain :math:`g` after
L
lujun 已提交
1627
            normalization. Default: True.
1628
        shift(bool, optional): Whether to learn the adaptive bias :math:`b` after
L
lujun 已提交
1629
            normalization. Default: True.
1630
        epsilon(float, optional): The small value added to the variance to prevent
L
lujun 已提交
1631
            division by zero. Default: 1e-05.
1632
        param_attr(ParamAttr, optional): The parameter attribute for the learnable
1633 1634 1635
            gain :math:`g`. If :attr:`scale` is False, :attr:`param_attr` is
            omitted. If :attr:`scale` is True and :attr:`param_attr` is None,
            a default :code:`ParamAttr` would be added as scale. The
L
lujun 已提交
1636
            :attr:`param_attr` is initialized as 1 if it is added. Default: None.
1637
        bias_attr(ParamAttr, optional): The parameter attribute for the learnable
1638 1639 1640
            bias :math:`b`. If :attr:`shift` is False, :attr:`bias_attr` is
            omitted. If :attr:`shift` is True and :attr:`param_attr` is None,
            a default :code:`ParamAttr` would be added as bias. The
L
lujun 已提交
1641
            :attr:`bias_attr` is initialized as 0 if it is added. Default: None.
T
tianshuo78520a 已提交
1642
        act(str, optional): Activation to be applied to the output of layer normalization.
L
lujun 已提交
1643
                  Default: None.
1644 1645
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".

1646
    Returns:
1647
        None
1648

1649
    Examples:
1650

1651 1652 1653
        .. code-block:: python

          import paddle.fluid as fluid
1654
          from paddle.fluid.dygraph.base import to_variable
1655 1656
          import numpy

1657
          x = numpy.random.random((3, 32, 32)).astype('float32')
1658
          with fluid.dygraph.guard():
1659
              x = to_variable(x)
1660
              layerNorm = fluid.LayerNorm([32, 32])
1661
              ret = layerNorm(x)
1662

1663
    """
1664

1665
    def __init__(self,
1666
                 normalized_shape,
1667 1668 1669 1670 1671
                 scale=True,
                 shift=True,
                 epsilon=1e-05,
                 param_attr=None,
                 bias_attr=None,
1672 1673 1674 1675 1676
                 act=None,
                 dtype='float32'):
        super(LayerNorm, self).__init__()
        if isinstance(normalized_shape, numbers.Integral):
            normalized_shape = [normalized_shape]
H
hong 已提交
1677

1678
        self._normalized_shape = list(normalized_shape)
1679 1680 1681 1682 1683 1684
        self._scale = scale
        self._shift = shift
        self._epsilon = epsilon
        self._param_attr = param_attr
        self._bias_attr = bias_attr
        self._act = act
1685 1686
        self._dtype = dtype
        param_shape = [np.prod(self._normalized_shape)]
1687
        if self._scale:
1688
            self.weight = self.create_parameter(
1689 1690 1691 1692
                attr=self._param_attr,
                shape=param_shape,
                dtype=self._dtype,
                default_initializer=Constant(1.0))
1693 1694
        else:
            if self._param_attr:
T
tianshuo78520a 已提交
1695
                logging.warn("param_attr are only available with scale is True")
1696
            self.weight = None
1697

1698 1699
        if self._shift:
            assert self._bias_attr is not False
1700
            self.bias = self.create_parameter(
1701 1702 1703 1704
                attr=self._bias_attr,
                shape=param_shape,
                dtype=self._dtype,
                is_bias=True)
1705 1706
        else:
            if self._bias_attr:
T
tianshuo78520a 已提交
1707
                logging.warn("bias_attr are only available with shift is True")
1708
            self.bias = None
1709 1710

    def forward(self, input):
1711 1712 1713 1714 1715 1716 1717 1718 1719 1720 1721
        input_shape = list(input.shape)
        input_ndim = len(input_shape)
        normalized_ndim = len(self._normalized_shape)
        self._begin_norm_axis = input_ndim - normalized_ndim
        if input_ndim < normalized_ndim or input_shape[
                self._begin_norm_axis:] != self._normalized_shape:
            str_normalized_shape = str(self._normalized_shape)
            raise ValueError(
                'Given normalized_shape is ' + str_normalized_shape +
                ', expected input with shape [*, ' + str_normalized_shape[
                    1:] + ', but got input shape ' + str(input_shape))
1722 1723 1724 1725 1726 1727 1728 1729

        if in_dygraph_mode():
            pre_act, _, _ = core.ops.layer_norm(
                input, self.weight, self.bias, 'epsilon', self._epsilon,
                'begin_norm_axis', self._begin_norm_axis)
            return dygraph_utils._append_activation_in_dygraph(
                pre_act, act=self._act)

1730 1731 1732
        check_variable_and_dtype(input, 'input', ['float32', 'float64'],
                                 'LayerNorm')

1733
        inputs = dict()
1734
        inputs['X'] = [input]
1735
        if self._scale:
1736
            inputs['Scale'] = [self.weight]
1737
        if self._shift:
1738 1739 1740 1741 1742 1743
            inputs['Bias'] = [self.bias]
        attrs = {
            "epsilon": self._epsilon,
            "begin_norm_axis": self._begin_norm_axis
        }

1744 1745 1746 1747 1748 1749 1750 1751 1752 1753 1754 1755 1756 1757 1758 1759 1760 1761 1762 1763 1764
        # create output
        mean_out = self._helper.create_variable_for_type_inference(
            dtype=self._dtype, stop_gradient=True)
        variance_out = self._helper.create_variable_for_type_inference(
            dtype=self._dtype, stop_gradient=True)
        layer_norm_out = self._helper.create_variable_for_type_inference(
            self._dtype)

        self._helper.append_op(
            type="layer_norm",
            inputs=inputs,
            outputs={
                "Y": layer_norm_out,
                "Mean": mean_out,
                "Variance": variance_out,
            },
            attrs={
                "epsilon": self._epsilon,
                "begin_norm_axis": self._begin_norm_axis
            })

1765
        return self._helper.append_activation(layer_norm_out, act=self._act)
1766 1767


M
minqiyang 已提交
1768 1769 1770
class GRUUnit(layers.Layer):
    """
    **GRU unit layer**
D
DuYao 已提交
1771 1772 1773 1774 1775
    
    It creates a callable object from GRUUnit class.
    If origin_mode is True, then the equation of a gru step is from paper
    `Learning Phrase Representations using RNN Encoder-Decoder for Statistical 
    Machine Translation <https://arxiv.org/pdf/1406.1078.pdf>`_
M
minqiyang 已提交
1776 1777 1778 1779 1780 1781 1782 1783 1784 1785

        .. math::
            u_t & = actGate(xu_{t} + W_u h_{t-1} + b_u)

            r_t & = actGate(xr_{t} + W_r h_{t-1} + b_r)

            m_t & = actNode(xm_t + W_c dot(r_t, h_{t-1}) + b_m)

            h_t & = dot(u_t, h_{t-1}) + dot((1-u_t), m_t)

D
DuYao 已提交
1786
    If origin_mode is False, then the equation of a gru step is from paper
M
minqiyang 已提交
1787 1788 1789 1790 1791 1792 1793 1794 1795 1796 1797 1798 1799 1800 1801 1802 1803 1804 1805 1806 1807 1808 1809 1810 1811
    `Empirical Evaluation of Gated Recurrent Neural Networks on Sequence
    Modeling <https://arxiv.org/pdf/1412.3555.pdf>`_

        .. math::
            u_t & = actGate(xu_{t} + W_u h_{t-1} + b_u)

            r_t & = actGate(xr_{t} + W_r h_{t-1} + b_r)

            m_t & = actNode(xm_t + W_c dot(r_t, h_{t-1}) + b_m)

            h_t & = dot((1-u_t), h_{t-1}) + dot(u_t, m_t)


    The inputs of gru unit includes :math:`z_t`, :math:`h_{t-1}`. In terms
    of the equation above, the :math:`z_t` is split into 3 parts -
    :math:`xu_t`, :math:`xr_t` and :math:`xm_t`. This means that in order to
    implement a full GRU unit operator for an input, a fully
    connected layer has to be applied, such that :math:`z_t = W_{fc}x_t`.

    The terms :math:`u_t` and :math:`r_t` represent the update and reset gates
    of the GRU cell. Unlike LSTM, GRU has one lesser gate. However, there is
    an intermediate candidate hidden output, which is denoted by :math:`m_t`.
    This layer has three outputs :math:`h_t`, :math:`dot(r_t, h_{t-1})`
    and concatenation of :math:`u_t`, :math:`r_t` and :math:`m_t`.

1812
    Parameters:
L
lujun 已提交
1813
        size (int): The input dimension value.
D
DuYao 已提交
1814 1815 1816 1817 1818 1819 1820 1821 1822
        param_attr(ParamAttr, optional): The parameter attribute for the learnable
            hidden-hidden weight matrix. 
            
            **Note**:
    
                1. The shape of the weight matrix is :math:`[T, 3*D]`, where D is the hidden size.
                2. All elements in the weight matrix can be divided into two parts. The first 
                   part are weights of the update gate and reset gate with shape :math:`[D, 2*D]`, 
                   and the second part are weights for candidate hidden state with shape :math:`[D, D]`.
M
minqiyang 已提交
1823 1824 1825 1826


            If it is set to None or one attribute of ParamAttr, gru_unit will
            create ParamAttr as param_attr. If the Initializer of the param_attr
D
DuYao 已提交
1827 1828 1829 1830
            is not set, the parameter is initialized with Xavier. The default 
            value is None.
        bias_attr (ParamAttr|bool, optional): The parameter attribute for the bias
            of GRU.Note that the bias with :math:`[1, 3*D]` concatenates
M
minqiyang 已提交
1831 1832 1833 1834 1835
            the bias in the update gate, reset gate and candidate calculations.
            If it is set to False, no bias will be applied to the update gate,
            reset gate and candidate calculations. If it is set to None or one
            attribute of ParamAttr, gru_unit will create ParamAttr as
            bias_attr. If the Initializer of the bias_attr is not set, the bias
D
DuYao 已提交
1836
            is initialized zero. The default value is None.
L
lujun 已提交
1837
        activation (str): The activation type for cell (actNode).
D
DuYao 已提交
1838
                             The default value is 'tanh'.
L
lujun 已提交
1839
        gate_activation (str): The activation type for gates (actGate).
D
DuYao 已提交
1840 1841 1842
                                  The default value is 'sigmoid'.
        dtype(str): The dtype of the layers. The data type can be set as
            'float32', 'float64'. The default value is 'float32'.
M
minqiyang 已提交
1843

D
DuYao 已提交
1844 1845 1846 1847
    Attribute:
        **weight** (Parameter): the learnable weights of this layer.

        **bias** (Parameter): the learnable bias of this layer.
1848

M
minqiyang 已提交
1849
    Returns:
D
DuYao 已提交
1850 1851 1852 1853
        tuple: The hidden value, reset-hidden value and gate values. The hidden value
        is a 2-D tensor with shape  :math:`[T, D]` . The reset-hidden value is a
        2-D tensor with shape  :math:`[T, D]` . The gate value is a 2-D tensor with 
        shape  :math:`[T, 3*D]`.
L
lujun 已提交
1854 1855 1856 1857 1858 1859 1860 1861 1862 1863 1864 1865 1866

    Examples:

        .. code-block:: python

          import paddle.fluid as fluid
          import paddle.fluid.dygraph.base as base
          import numpy

          lod = [[2, 4, 3]]
          D = 5
          T = sum(lod[0])

D
DuYao 已提交
1867
          input = numpy.random.rand(T, 3 * D).astype('float32')
L
lujun 已提交
1868 1869 1870
          hidden_input = numpy.random.rand(T, D).astype('float32')
          with fluid.dygraph.guard():
              x = numpy.random.random((3, 32, 32)).astype('float32')
1871
              gru = fluid.dygraph.GRUUnit(size=D * 3)
L
lujun 已提交
1872 1873 1874
              dy_ret = gru(
                base.to_variable(input), base.to_variable(hidden_input))

M
minqiyang 已提交
1875 1876 1877 1878 1879 1880 1881 1882 1883 1884
    """

    def __init__(self,
                 size,
                 param_attr=None,
                 bias_attr=None,
                 activation='tanh',
                 gate_activation='sigmoid',
                 origin_mode=False,
                 dtype='float32'):
1885
        super(GRUUnit, self).__init__()
1886
        self._bias_attr = bias_attr
M
minqiyang 已提交
1887 1888 1889 1890 1891
        activation_dict = dict(
            identity=0,
            sigmoid=1,
            tanh=2,
            relu=3, )
H
Hongyu Liu 已提交
1892 1893
        self.activation = activation_dict[activation]
        self.gate_activation = activation_dict[gate_activation]
M
minqiyang 已提交
1894

M
minqiyang 已提交
1895
        self._dtype = dtype
M
minqiyang 已提交
1896 1897
        size = size // 3
        # create weight
1898
        self.weight = self.create_parameter(
M
minqiyang 已提交
1899
            attr=param_attr, shape=[size, 3 * size], dtype=dtype)
M
minqiyang 已提交
1900 1901

        # create bias
M
minqiyang 已提交
1902
        bias_size = [1, 3 * size]
1903
        self._bias_size = bias_size
1904
        self.bias = self.create_parameter(
M
minqiyang 已提交
1905
            attr=bias_attr, shape=bias_size, dtype=dtype, is_bias=True)
M
minqiyang 已提交
1906

M
minqiyang 已提交
1907
    def forward(self, input, hidden):
1908 1909 1910 1911 1912 1913
        if in_dygraph_mode():
            gate, reset_hidden_pre, updated_hidden = core.ops.gru_unit(
                input, hidden, self.weight, self.bias, 'activation',
                self.activation, 'gate_activation', self.gate_activation)
            return updated_hidden, reset_hidden_pre, gate

1914 1915 1916 1917
        check_variable_and_dtype(input, 'input', ['float32', 'float64'],
                                 'GRUUnit')
        check_variable_and_dtype(hidden, 'hidden', ['float32', 'float64'],
                                 'GRUUnit')
1918 1919 1920 1921 1922
        inputs = {
            'Input': [input],
            'HiddenPrev': [hidden],
            'Weight': [self.weight]
        }
1923
        if self.bias is not None:
1924
            inputs['Bias'] = [self.bias]
M
minqiyang 已提交
1925 1926 1927 1928 1929
        gate = self._helper.create_variable_for_type_inference(self._dtype)
        reset_hidden_pre = self._helper.create_variable_for_type_inference(
            self._dtype)
        updated_hidden = self._helper.create_variable_for_type_inference(
            self._dtype)
M
minqiyang 已提交
1930 1931 1932 1933 1934 1935 1936 1937 1938
        self._helper.append_op(
            type='gru_unit',
            inputs=inputs,
            outputs={
                'Gate': gate,
                'ResetHiddenPrev': reset_hidden_pre,
                'Hidden': updated_hidden,
            },
            attrs={
H
Hongyu Liu 已提交
1939 1940
                'activation': self.activation,
                'gate_activation': self.gate_activation,
M
minqiyang 已提交
1941 1942 1943
            })

        return updated_hidden, reset_hidden_pre, gate
1944 1945 1946 1947


class NCE(layers.Layer):
    """
1948 1949 1950 1951 1952
    This interface is used to construct a callable object of the ``NCE`` class.
    For more details, refer to code examples.
    It implements the function of the ``NCE`` loss function.
    By default this function uses a uniform distribution for sampling, and it
    compute and return the noise-contrastive estimation training loss. See
1953
    `Noise-contrastive estimation: A new estimation principle for unnormalized statistical models <http://www.jmlr.org/proceedings/papers/v9/gutmann10a/gutmann10a.pdf>`_ .
1954

1955
    Parameters:
1956 1957
        num_total_classes (int): Total number of classes in all samples.
        dim (int): Dimension of input (possibly embedding dim).
1958
        param_attr (ParamAttr, optional): The parameter attribute for learnable weights(Parameter)
1959 1960 1961
             of nce. If it is set to None or one attribute of ParamAttr, nce
             will create ParamAttr as param_attr. If the Initializer of the param_attr
             is not set, the parameter is initialized with Xavier. Default: None.
1962
        bias_attr (ParamAttr or bool, optional): The attribute for the bias of nce.
1963 1964 1965 1966
             If it is set to False, no bias will be added to the output units.
             If it is set to None or one attribute of ParamAttr, nce
             will create ParamAttr as bias_attr. If the Initializer of the bias_attr
             is not set, the bias is initialized zero. Default: None.
1967
        num_neg_samples (int, optional): The number of negative classes. The default value is 10.
T
tianshuo78520a 已提交
1968
        sampler (str, optional): The sampler used to sample class from negative classes.
1969 1970
                       It can be 'uniform', 'log_uniform' or 'custom_dist'.
                       default: 'uniform'.
1971
        custom_dist (float[], optional): A float[] with size=num_total_classes.
1972
                       It is used when sampler is set to 'custom_dist'.
1973
                       custom_dist[i] is the probability of i-th class to be sampled.
L
lujun 已提交
1974
                       Default: None.
1975 1976
        seed (int, optional): The seed used in sampler. Default: 0.
        is_sparse(bool, optional): The flag indicating whether to use sparse update. If is_sparse is True, the weight@GRAD and bias@GRAD will be changed to SelectedRows. Default: False.
1977
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
1978

1979 1980
    Attribute:
        **weight** (Parameter): the learnable weights of this layer.
1981

1982 1983
        **bias** (Parameter or None): the learnable bias of this layer.
    
1984
    Returns:
1985
        None
1986 1987 1988 1989

    Examples:
        .. code-block:: python

1990 1991 1992
            import numpy as np
            import paddle.fluid as fluid

1993
            window_size = 5
1994 1995
            dict_size = 20
            label_word = int(window_size // 2) + 1
1996
            inp_word = np.array([[1], [2], [3], [4], [5]]).astype('int64')
1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017
            nid_freq_arr = np.random.dirichlet(np.ones(20) * 1000).astype('float32')

            with fluid.dygraph.guard():
                words = []
                for i in range(window_size):
                    words.append(fluid.dygraph.base.to_variable(inp_word[i]))

                emb = fluid.Embedding(
                    size=[dict_size, 32],
                    param_attr='emb.w',
                    is_sparse=False)

                embs3 = []
                for i in range(window_size):
                    if i == label_word:
                        continue

                    emb_rlt = emb(words[i])
                    embs3.append(emb_rlt)

                embs3 = fluid.layers.concat(input=embs3, axis=1)
2018
                nce = fluid.NCE(
2019
                             num_total_classes=dict_size,
2020
                             dim=embs3.shape[1],
2021 2022 2023 2024 2025 2026 2027
                             num_neg_samples=2,
                             sampler="custom_dist",
                             custom_dist=nid_freq_arr.tolist(),
                             seed=1,
                             param_attr='nce.w',
                             bias_attr='nce.b')

2028 2029
                wl = fluid.layers.unsqueeze(words[label_word], axes=[0])
                nce_loss3 = nce(embs3, wl)
2030 2031 2032 2033 2034

    """

    def __init__(self,
                 num_total_classes,
2035
                 dim,
2036
                 sample_weight=None,
2037 2038 2039 2040 2041 2042
                 param_attr=None,
                 bias_attr=None,
                 num_neg_samples=None,
                 sampler="uniform",
                 custom_dist=None,
                 seed=0,
2043 2044 2045
                 is_sparse=False,
                 dtype='float32'):
        super(NCE, self).__init__()
2046 2047 2048
        self._param_attr = param_attr
        self._bias_attr = bias_attr
        self._num_total_classes = num_total_classes
2049
        self._dtype = dtype
2050
        self._inputs = dict()
2051
        self._inputs['SampleWeight'] = sample_weight if sample_weight is not None else []
2052 2053 2054 2055 2056 2057 2058 2059 2060 2061 2062 2063 2064 2065 2066 2067 2068 2069 2070 2071 2072 2073 2074 2075 2076 2077 2078 2079 2080 2081 2082 2083 2084 2085 2086 2087 2088 2089 2090 2091 2092 2093 2094 2095 2096 2097 2098 2099 2100 2101 2102 2103 2104 2105 2106 2107 2108 2109 2110 2111 2112 2113 2114 2115 2116 2117 2118 2119 2120 2121 2122 2123 2124 2125 2126 2127 2128 2129 2130 2131 2132 2133 2134 2135 2136 2137 2138
        if sampler == "uniform":
            sampler = 0
        elif sampler == "log_uniform":
            sampler = 1
        elif sampler == "custom_dist":
            assert custom_dist is not None
            # assert isinstance(custom_dist, Variable)

            custom_dist_len = len(custom_dist)
            alias_probs_ = [0] * custom_dist_len
            alias_ = [0] * custom_dist_len
            bigs = []
            littles = []
            for i in range(custom_dist_len):
                normal_prob = custom_dist[i] * custom_dist_len
                if normal_prob - 1.0 > 0:
                    bigs.append((i, normal_prob))
                elif 1.0 - normal_prob > 0:
                    littles.append((i, normal_prob))
                else:
                    alias_probs_[i] = normal_prob
                    alias_[i] = -1

            while len(bigs) and len(littles):
                big = bigs.pop(0)
                little = littles.pop(0)

                big_idx = big[0]
                big_prob = big[1]

                alias_probs_[little[0]] = little[1]
                alias_[little[0]] = big_idx
                big_left = big[1] + little[1] - 1
                if big_left - 1.0 > 0:
                    bigs.append((big_idx, big_left))
                elif 1.0 - big_left > 0:
                    littles.append((big_idx, big_left))
                else:
                    alias_probs_[big_idx] = big_left
                    alias_[big_idx] = -1

            if len(bigs):
                big = bigs.pop(0)
                alias_probs_[big[0]] = 1.0
                alias_[big[0]] = -1
            if len(littles):
                little = littles.pop(0)
                alias_probs_[little[0]] = 1.0
                alias_[little[0]] = -1

            def _init_by_numpy_array(numpy_array):
                ret = self.create_parameter(
                    attr=ParamAttr(),
                    shape=numpy_array.shape,
                    dtype=numpy_array.dtype,
                    default_initializer=NumpyArrayInitializer(numpy_array))
                ret.stop_gradient = True
                return ret

            self._inputs['CustomDistProbs'] = _init_by_numpy_array(
                np.array(custom_dist).astype('float32'))
            self._inputs['CustomDistAlias'] = _init_by_numpy_array(
                np.array(alias_).astype('int32'))
            self._inputs['CustomDistAliasProbs'] = _init_by_numpy_array(
                np.array(alias_probs_).astype('float32'))
            sampler = 2
        else:
            raise Exception("Unsupported sampler type.")

        if num_neg_samples is None:
            num_neg_samples = 10
        else:
            num_neg_samples = int(num_neg_samples)
        self._num_neg_samples = num_neg_samples
        remote_prefetch = is_sparse
        print(
            "With sparse mode, if your models has only small parameter prefetch may cause speed down"
        )
        self._attrs = {
            'num_total_classes': int(num_total_classes),
            'num_neg_samples': num_neg_samples,
            'seed': seed,
            'sampler': sampler,
            'is_sparse': is_sparse,
            'remote_prefetch': remote_prefetch
        }

2139
        self.weight = self.create_parameter(
2140 2141 2142
            attr=self._param_attr,
            shape=[self._num_total_classes, dim],
            is_bias=False,
2143
            dtype=self._dtype)
2144
        if self._bias_attr:
2145
            self.bias = self.create_parameter(
2146 2147 2148
                attr=self._bias_attr,
                shape=[self._num_total_classes, 1],
                is_bias=True,
2149
                dtype=self._dtype)
2150 2151
            self._inputs['Bias'] = self.bias
        self._inputs['Weight'] = self.weight
2152

2153
    def forward(self, input, label, sample_weight=None):
2154 2155 2156 2157
        check_variable_and_dtype(input, "input", ['float32', 'float64'], "NCE")
        check_variable_and_dtype(label, "label", ['int64'], "NCE")
        check_type(sample_weight, 'sample_weight', (Variable, type(None)),
                   'NCE')
2158 2159 2160 2161 2162 2163 2164 2165 2166 2167 2168 2169 2170 2171 2172 2173 2174 2175 2176 2177 2178 2179 2180 2181 2182 2183 2184 2185
        assert isinstance(input, Variable)
        assert isinstance(label, Variable)

        self._inputs['Input'] = input
        self._inputs['Label'] = label
        self._inputs['SampleWeight'] = sample_weight if sample_weight is not None else []

        cost = self._helper.create_variable_for_type_inference(
            dtype=input.dtype)
        sample_logits = self._helper.create_variable_for_type_inference(
            dtype=input.dtype)
        sample_labels = self._helper.create_variable_for_type_inference(
            dtype=label.dtype)

        self._helper.append_op(
            type='nce',
            inputs=self._inputs,
            outputs={
                'Cost': cost,
                'SampleLogits': sample_logits,
                'SampleLabels': sample_labels
            },
            attrs=self._attrs)
        return cost / (self._num_neg_samples + 1)


class PRelu(layers.Layer):
    """
2186 2187 2188 2189
    This interface is used to construct a callable object of the ``PRelu`` class.
    For more details, refer to code examples.
    It implements three activation methods of the ``PRelu`` activation function.

2190 2191 2192 2193 2194
    Equation:

    .. math::
        y = \max(0, x) + \\alpha * \min(0, x)

2195
    Parameters:
L
lujun 已提交
2196
        mode (str): The mode for weight sharing. It supports all, channel
2197 2198 2199
          and element. all: all elements share same weight
          channel:elements in a channel share same weight
          element:each element has a weight
S
songyouwei 已提交
2200 2201 2202
        channel (int, optional): The number of channels.
          This argument is required when mode is "channel".
          Default: None.
2203
        input_shape (list or tuple, optional): The shape of input.
S
songyouwei 已提交
2204 2205
          This argument is required when mode is "element".
          Default: None.
2206 2207
        param_attr(ParamAttr, optional): The parameter attribute for the learnable
          weight (alpha). Default: None.
2208
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
2209

2210 2211 2212
    Attribute:
        **weight** (Parameter): the learnable weights of this layer.
    
2213
    Returns:
2214
        None
2215 2216 2217 2218 2219

    Examples:

        .. code-block:: python

L
lujun 已提交
2220
          import paddle.fluid as fluid
2221
          from paddle.fluid.dygraph.base import to_variable
L
lujun 已提交
2222 2223 2224 2225
          import numpy as np

          inp_np = np.ones([5, 200, 100, 100]).astype('float32')
          with fluid.dygraph.guard():
2226
              inp_np = to_variable(inp_np)
S
songyouwei 已提交
2227 2228 2229 2230 2231 2232 2233 2234 2235 2236 2237
              prelu0 = fluid.PRelu(
                 mode='all',
                 param_attr=fluid.ParamAttr(initializer=fluid.initializer.Constant(1.0)))
              dy_rlt0 = prelu0(inp_np)
              prelu1 = fluid.PRelu(
                 mode='channel',
                 channel=200,
                 param_attr=fluid.ParamAttr(initializer=fluid.initializer.Constant(1.0)))
              dy_rlt1 = prelu1(inp_np)
              prelu2 = fluid.PRelu(
                 mode='element',
2238
                 input_shape=inp_np.shape,
L
lujun 已提交
2239
                 param_attr=fluid.ParamAttr(initializer=fluid.initializer.Constant(1.0)))
S
songyouwei 已提交
2240
              dy_rlt2 = prelu2(inp_np)
L
lujun 已提交
2241

2242 2243
    """

S
songyouwei 已提交
2244 2245 2246 2247 2248
    def __init__(self,
                 mode,
                 channel=None,
                 input_shape=None,
                 param_attr=None,
2249
                 dtype='float32'):
2250 2251
        # need specify name_scope since snake-cased 'PRelu' is 'p_relu'
        super(PRelu, self).__init__(name_scope='prelu')
2252 2253
        self._mode = mode
        self._param_attr = param_attr
2254
        self._dtype = dtype
S
songyouwei 已提交
2255 2256 2257 2258 2259 2260 2261 2262 2263 2264 2265 2266 2267 2268
        if mode == 'all':
            self._alpha_shape = [1]
        elif mode == 'channel':
            assert isinstance(
                channel,
                int), "channel argument is required when mode is 'channel'."
            self._alpha_shape = [1, channel, 1, 1]
        elif mode == 'element':
            assert isinstance(input_shape, (
                list, tuple
            )), "input_shape argument is required when mode is 'element'."
            self._alpha_shape = [1] + list(input_shape)[1:]
        else:
            raise ValueError('mode should be one of all, channel, element.')
2269
        self.weight = self.create_parameter(
2270 2271 2272 2273 2274 2275 2276
            attr=self._param_attr,
            shape=self._alpha_shape,
            dtype='float32',
            is_bias=False,
            default_initializer=Constant(1.0))

    def forward(self, input):
2277
        check_variable_and_dtype(input, 'input', ['float32'], 'PRelu')
2278 2279 2280 2281
        out = self._helper.create_variable_for_type_inference(self._dtype)
        self._helper.append_op(
            type="prelu",
            inputs={"X": input,
2282
                    'Alpha': self.weight},
2283 2284 2285 2286 2287 2288 2289 2290 2291 2292 2293 2294 2295 2296 2297 2298 2299 2300 2301 2302
            attrs={"mode": self._mode},
            outputs={"Out": out})
        return out


class BilinearTensorProduct(layers.Layer):
    """
    **Add Bilinear Tensor Product Layer**

    This layer performs bilinear tensor product on two inputs.
    For example:

    .. math::
      out_{i} = x * W_{i} * {y^\mathrm{T}}, i=0,1,...,size-1

    In this formula:
     - :math:`x`: the first input contains M elements, shape is [batch_size, M].
     - :math:`y`: the second input contains N elements, shape is [batch_size, N].
     - :math:`W_{i}`: the i-th learned weight, shape is [M, N]
     - :math:`out_{i}`: the i-th element of out, shape is [batch_size, size].
D
DuYao 已提交
2303
     - :math:`y^\mathrm{T}`: the transpose of :math:`y`.
2304

2305
    Parameters:
2306 2307 2308 2309 2310
       input1_dim (int): The dimension of each first input.
       input2_dim (int): The dimension of each second input.
       output_dim (int): The dimension of output of this layer.
       name (str, optional): The default value is None. Normally there is no need for user
           to set this property. For more information, please refer to :ref:`api_guide_Name`. Default: None.
D
DuYao 已提交
2311 2312 2313 2314
       act (str, optional): Activation to be applied to the output of this layer. The default value is None.
       param_attr (ParamAttr, optional): The parameter attribute for the learnable w, parameters/weights of 
           this layer. The default value is None.
       bias_attr (ParamAttr, optional): The parameter attribute for the bias
2315
           of this layer. If it is set to False, no bias will be added to the output units.
D
DuYao 已提交
2316
           If it is set to None, the bias is initialized zero. The default value is None.
2317
       dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
2318

D
DuYao 已提交
2319 2320 2321 2322
    Attribute:
        **weight** (Parameter): the learnable weights of this layer.

        **bias** (Parameter): the learnable bias of this layer.
2323

2324 2325 2326 2327 2328 2329
    Returns:
       Variable: A 2-D Tensor of shape [batch_size, size].

    Examples:
       .. code-block:: python

2330 2331 2332 2333 2334 2335 2336
         import paddle.fluid as fluid
         import numpy

         with fluid.dygraph.guard():
             layer1 = numpy.random.random((5, 5)).astype('float32')
             layer2 = numpy.random.random((5, 4)).astype('float32')
             bilinearTensorProduct = fluid.dygraph.nn.BilinearTensorProduct(
2337
                    input1_dim=5, input2_dim=4, output_dim=1000)
2338 2339
             ret = bilinearTensorProduct(fluid.dygraph.base.to_variable(layer1),
                                fluid.dygraph.base.to_variable(layer2))
2340 2341 2342
    """

    def __init__(self,
2343 2344 2345
                 input1_dim,
                 input2_dim,
                 output_dim,
2346 2347 2348
                 name=None,
                 act=None,
                 param_attr=None,
2349 2350 2351
                 bias_attr=None,
                 dtype='float32'):
        super(BilinearTensorProduct, self).__init__()
2352 2353 2354 2355
        self._param_attr = param_attr
        self._bias_attr = bias_attr
        self._act = act
        self._name = name
2356 2357 2358
        self._input1_dim = input1_dim
        self._input2_dim = input2_dim
        self._output_dim = output_dim
2359
        self._inputs = dict()
2360
        self._dtype = dtype
2361

2362
        param_shape = [self._output_dim, self._input1_dim, self._input2_dim]
2363
        self.weight = self.create_parameter(
2364 2365 2366 2367
            attr=self._param_attr,
            shape=param_shape,
            dtype=self._dtype,
            is_bias=False)
2368
        bias_size = [1, self._output_dim]
2369
        self.bias = self.create_parameter(
2370 2371 2372 2373
            attr=self._bias_attr,
            shape=bias_size,
            dtype=self._dtype,
            is_bias=True)
2374 2375

    def forward(self, x, y):
2376 2377 2378 2379
        check_variable_and_dtype(x, 'x', ['float32', 'float64'],
                                 'BilinearTensorProduct')
        check_variable_and_dtype(y, 'y', ['float32', 'float64'],
                                 'BilinearTensorProduct')
2380
        self._inputs = {"X": x, "Y": y, "Weight": self.weight}
2381
        if self.bias is not None:
2382
            self._inputs["Bias"] = self.bias
2383 2384 2385 2386 2387 2388 2389 2390 2391 2392 2393 2394 2395 2396
        if self._name is not None:
            out = self._helper.create_variable(
                name=".".join([self.full_name(), self._name]),
                dtype=self._dtype,
                persistable=False)
        else:
            out = self._helper.create_variable(
                dtype=self._dtype, persistable=False)
        self._helper.append_op(
            type="bilinear_tensor_product",
            inputs=self._inputs,
            outputs={"Out": out})

        # add activation
2397
        return self._helper.append_activation(out, act=self._act)
2398 2399 2400 2401


class Conv2DTranspose(layers.Layer):
    """
2402 2403
    This interface is used to construct a callable object of the ``Conv2DTranspose`` class.
    For more details, refer to code examples.
2404
    The convolution2D transpose layer calculates the output based on the input,
2405 2406 2407
    filter, and dilations, strides, paddings. Input and output
    are in NCHW format. Where N is batch size, C is the number of feature map,
    H is the height of the feature map, and W is the width of the feature map.
2408 2409
    Filter's shape is [MCHW] , where M is the number of input feature map,
    C is the number of output feature map, H is the height of the filter,
2410 2411
    and W is the width of the filter. If the groups is greater than 1,
    C will equal the number of input feature map divided by the groups.
2412 2413 2414
    If bias attribution and activation type are provided, bias is added to
    the output of the convolution, and the corresponding activation function
    is applied to the final result.
2415 2416
    The details of convolution transpose layer, please refer to the following explanation and references
    `conv2dtranspose <http://www.matthewzeiler.com/wp-content/uploads/2017/07/cvpr2010.pdf>`_ .
2417 2418 2419 2420 2421 2422 2423 2424 2425

    For each input :math:`X`, the equation is:

    .. math::

        Out = \sigma (W \\ast X + b)

    Where:

2426 2427
    * :math:`X`: Input value, a ``Tensor`` with NCHW format.
    * :math:`W`: Filter value, a ``Tensor`` with shape [MCHW] .
2428
    * :math:`\\ast`: Convolution operation.
2429
    * :math:`b`: Bias value, a 2-D ``Tensor`` with shape [M, 1].
2430 2431 2432 2433 2434 2435 2436 2437 2438 2439 2440 2441 2442 2443 2444 2445 2446 2447 2448 2449 2450 2451 2452 2453
    * :math:`\\sigma`: Activation function.
    * :math:`Out`: Output value, the shape of :math:`Out` and :math:`X` may be different.

    Example:

        - Input:

          Input shape: :math:`(N, C_{in}, H_{in}, W_{in})`

          Filter shape: :math:`(C_{in}, C_{out}, H_f, W_f)`

        - Output:

          Output shape: :math:`(N, C_{out}, H_{out}, W_{out})`

        Where

        .. math::

           H^\prime_{out} &= (H_{in} - 1) * strides[0] - 2 * paddings[0] + dilations[0] * (H_f - 1) + 1 \\\\
           W^\prime_{out} &= (W_{in} - 1) * strides[1] - 2 * paddings[1] + dilations[1] * (W_f - 1) + 1 \\\\
           H_{out} &\in [ H^\prime_{out}, H^\prime_{out} + strides[0] ) \\\\
           W_{out} &\in [ W^\prime_{out}, W^\prime_{out} + strides[1] )

2454
    Parameters:
2455
        num_channels(int): The number of channels in the input image.
2456
        num_filters(int): The number of the filter. It is as same as the output
2457
            feature map.
2458 2459 2460
        filter_size(int or tuple): The filter size. If filter_size is a tuple,
            it must contain two integers, (filter_size_H, filter_size_W).
            Otherwise, the filter will be a square.
2461
        output_size(int or tuple, optional): The output image size. If output size is a
2462 2463 2464
            tuple, it must contain two integers, (image_H, image_W). None if use
            filter_size, padding, and stride to calculate output_size.
            if output_size and filter_size are specified at the same time, They
L
lujun 已提交
2465
            should follow the formula above. Default: None.
2466
        padding(int or tuple, optional): The padding size. If padding is a tuple, it must
2467
            contain two integers, (padding_H, padding_W). Otherwise, the
2468 2469
            padding_H = padding_W = padding. Default: 0.
        stride(int or tuple, optional): The stride size. If stride is a tuple, it must
2470
            contain two integers, (stride_H, stride_W). Otherwise, the
2471 2472
            stride_H = stride_W = stride. Default: 1.
        dilation(int or tuple, optional): The dilation size. If dilation is a tuple, it must
2473
            contain two integers, (dilation_H, dilation_W). Otherwise, the
2474 2475
            dilation_H = dilation_W = dilation. Default: 1.
        groups(int, optional): The groups number of the Conv2d transpose layer. Inspired by
2476 2477 2478 2479
            grouped convolution in Alex Krizhevsky's Deep CNN paper, in which
            when group=2, the first half of the filters is only connected to the
            first half of the input channels, while the second half of the
            filters is only connected to the second half of the input channels.
2480 2481
            Default: 1.
        param_attr (ParamAttr, optional): The parameter attribute for learnable weights(Parameter)
2482 2483 2484
            of conv2d_transpose. If it is set to None or one attribute of ParamAttr, conv2d_transpose
            will create ParamAttr as param_attr. If the Initializer of the param_attr
            is not set, the parameter is initialized with Xavier. Default: None.
2485
        bias_attr (ParamAttr or bool, optional): The attribute for the bias of conv2d_transpose.
2486 2487 2488 2489
            If it is set to False, no bias will be added to the output units.
            If it is set to None or one attribute of ParamAttr, conv2d_transpose
            will create ParamAttr as bias_attr. If the Initializer of the bias_attr
            is not set, the bias is initialized zero. Default: None.
2490
        use_cudnn(bool, optional): Use cudnn kernel or not, it is valid only when the cudnn
2491
            library is installed. Default: True.
2492
        act (str, optional): Activation type, if it is set to None, activation is not appended.
2493
            Default: None.
2494
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
2495

2496 2497
    Attribute:
        **weight** (Parameter): the learnable weights of filters of this layer.
2498

2499
        **bias** (Parameter or None): the learnable bias of this layer.
2500

2501 2502
    Returns:
        None
2503 2504 2505 2506

    Examples:
       .. code-block:: python

2507
          import paddle.fluid as fluid
2508
          import numpy as np
2509 2510

          with fluid.dygraph.guard():
2511
              data = np.random.random((3, 32, 32, 5)).astype('float32')
2512
              conv2DTranspose = fluid.dygraph.nn.Conv2DTranspose(
2513
                    num_channels=32, num_filters=2, filter_size=3)
2514 2515
              ret = conv2DTranspose(fluid.dygraph.base.to_variable(data))

2516 2517 2518
    """

    def __init__(self,
2519
                 num_channels,
2520
                 num_filters,
2521
                 filter_size,
2522 2523 2524 2525 2526 2527 2528 2529
                 output_size=None,
                 padding=0,
                 stride=1,
                 dilation=1,
                 groups=None,
                 param_attr=None,
                 bias_attr=None,
                 use_cudnn=True,
2530 2531 2532
                 act=None,
                 dtype='float32'):
        super(Conv2DTranspose, self).__init__()
2533 2534 2535
        assert param_attr is not False, "param_attr should not be False in conv2d_transpose."
        self._param_attr = param_attr
        self._bias_attr = bias_attr
2536
        self._act = act
2537
        self._groups = groups
2538
        self._num_channels = num_channels
2539 2540 2541 2542 2543 2544 2545
        self._num_filters = num_filters
        self._use_cudnn = use_cudnn
        self._padding = padding
        self._stride = stride
        self._dilation = dilation
        self._filter_size = filter_size
        self._output_size = output_size
2546
        self._dtype = dtype
2547

2548 2549 2550
        if (self._num_channels == self._groups and
                self._num_filters == self._num_channels and
                not self._use_cudnn):
2551
            self._op_type = 'depthwise_conv2d_transpose'
2552 2553
        else:
            self._op_type = 'conv2d_transpose'
2554 2555 2556 2557 2558

        self._padding = utils.convert_to_list(self._padding, 2, 'padding')
        self._stride = utils.convert_to_list(self._stride, 2, 'stride')
        self._dilation = utils.convert_to_list(self._dilation, 2, 'dilation')

2559 2560
        self._filter_size = utils.convert_to_list(
            self._filter_size, 2, 'conv2d_transpose.filter_size')
2561 2562 2563 2564 2565 2566 2567 2568 2569 2570 2571

        if self._output_size is None:
            self._output_size = []
        elif isinstance(self._output_size, list) or isinstance(
                self._output_size, int):
            self._output_size = utils.convert_to_list(self._output_size, 2,
                                                      'output_size')
        else:
            raise ValueError("output_size should be list or int")
        self._padding = utils.convert_to_list(self._padding, 2, 'padding')
        self._groups = 1 if self._groups is None else self._groups
2572
        filter_shape = [self._num_channels, self._num_filters // self._groups
2573 2574
                        ] + self._filter_size

2575
        self.weight = self.create_parameter(
2576
            dtype=self._dtype, shape=filter_shape, attr=self._param_attr)
2577

2578
        self.bias = self.create_parameter(
2579 2580 2581 2582 2583
            attr=self._bias_attr,
            shape=[self._num_filters],
            dtype=self._dtype,
            is_bias=True)

2584
    def forward(self, input):
2585 2586 2587 2588 2589 2590 2591 2592 2593 2594 2595 2596
        if in_dygraph_mode():
            op = getattr(core.ops, self._op_type)
            out = op(input, self.weight, 'output_size', self._output_size,
                     'strides', self._stride, 'paddings', self._padding,
                     'dilations', self._dilation, 'groups', self._groups,
                     'use_cudnn', self._use_cudnn)
            pre_bias = out
            pre_act = dygraph_utils._append_bias_in_dygraph(pre_bias, self.bias,
                                                            1)
            return dygraph_utils._append_activation_in_dygraph(
                pre_act, act=self._act)

2597 2598 2599 2600
        check_variable_and_dtype(input, 'input',
                                 ['float16', 'float32', 'float64'],
                                 "Conv2DTranspose")

2601 2602 2603 2604 2605 2606 2607 2608 2609 2610
        inputs = {'Input': [input], 'Filter': [self.weight]}
        attrs = {
            'output_size': self._output_size,
            'strides': self._stride,
            'paddings': self._padding,
            'dilations': self._dilation,
            'groups': self._groups,
            'use_cudnn': self._use_cudnn
        }

2611 2612 2613 2614
        pre_bias = self._helper.create_variable_for_type_inference(
            dtype=input.dtype)
        self._helper.append_op(
            type=self._op_type,
2615
            inputs=inputs,
2616
            outputs={'Output': pre_bias},
2617
            attrs=attrs)
2618

2619
        if self.bias is not None:
2620 2621 2622 2623 2624
            pre_act = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
            self._helper.append_op(
                type='elementwise_add',
                inputs={'X': [pre_bias],
2625
                        'Y': [self.bias]},
2626 2627 2628 2629 2630 2631
                outputs={'Out': [pre_act]},
                attrs={'axis': 1})
        else:
            pre_act = pre_bias

        out = self._helper.append_activation(pre_act, act=self._act)
2632 2633 2634 2635 2636 2637 2638 2639 2640
        return out


class SequenceConv(layers.Layer):
    """
    This function creates the op for sequence_conv, using the inputs and
    other convolutional configurations for the filters and stride as given
    in the input parameters to the function.

2641
    Parameters:
L
lujun 已提交
2642
        name_scope(str): The name of this class.
2643
        num_filters (int): number of filters.
L
lujun 已提交
2644 2645 2646
        filter_size (int): the filter size (H and W). Default: 3.
        filter_stride (int): stride of the filter. Default: 1.
        padding (bool|None): if True, add paddings. Default: None
2647 2648 2649 2650 2651 2652 2653 2654 2655 2656 2657 2658
        bias_attr (ParamAttr|bool|None): The parameter attribute for the bias of sequence_conv.
            If it is set to False, no bias will be added to the output units.
            If it is set to None or one attribute of ParamAttr, sequence_conv
            will create ParamAttr as bias_attr. If the Initializer of the bias_attr
            is not set, the bias is initialized zero. Default: None.
        param_attr (ParamAttr|None): The parameter attribute for learnable parameters/weights
            of sequence_conv. If it is set to None or one attribute of ParamAttr, sequence_conv
            will create ParamAttr as param_attr. If the Initializer of the param_attr
            is not set, the parameter is initialized with Xavier. Default: None.
        act (str): Activation type, if it is set to None, activation is not appended.
            Default: None.

2659 2660 2661 2662
    Attributes:
        weight (Parameter): the learnable weights of filters of this layer.
        bias (Parameter|None): the learnable bias of this layer.

2663 2664 2665 2666 2667 2668 2669 2670 2671 2672 2673 2674 2675
    Returns:
        Variable: output of sequence_conv
    """

    def __init__(self,
                 name_scope,
                 num_filters,
                 filter_size=3,
                 filter_stride=1,
                 padding=None,
                 bias_attr=None,
                 param_attr=None,
                 act=None):
L
lujun 已提交
2676
        assert not in_dygraph_mode(
2677
        ), "SequenceConv is not supported by dynamic graph mode yet!"
2678 2679 2680 2681 2682 2683 2684
        super(SequenceConv, self).__init__(name_scope)
        self._num_filters = num_filters
        self._filter_size = filter_size
        self._filter_stride = filter_stride
        self._padding = padding
        self._bias_attr = bias_attr
        self._param_attr = param_attr
2685
        self._act = act
2686

2687
    def _build_once(self, input):
2688 2689
        self._dtype = self._helper.input_dtype(input)
        filter_shape = [self._filter_size * input.shape[1], self._num_filters]
2690
        self.weight = self.create_parameter(
2691
            attr=self._param_attr, shape=filter_shape, dtype=self._dtype)
2692

2693
        self.bias = self.create_parameter(
2694 2695 2696 2697 2698
            attr=self._bias_attr,
            shape=[self._num_filters],
            dtype=self._dtype,
            is_bias=True)

2699 2700 2701 2702 2703 2704
    def forward(self, input):
        pre_bias = self._helper.create_variable_for_type_inference(self._dtype)
        self._helper.append_op(
            type='sequence_conv',
            inputs={
                'X': [input],
2705
                'Filter': [self.weight],
2706 2707 2708 2709 2710 2711 2712
            },
            outputs={"Out": pre_bias},
            attrs={
                'contextStride': self._filter_stride,
                'contextStart': -int(self._filter_size // 2),
                'contextLength': self._filter_size
            })
2713

2714
        if self.bias is not None:
2715 2716 2717 2718 2719
            pre_act = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
            self._helper.append_op(
                type='elementwise_add',
                inputs={'X': [pre_bias],
2720
                        'Y': [self.bias]},
2721 2722 2723 2724 2725 2726
                outputs={'Out': [pre_act]},
                attrs={'axis': 1})
        else:
            pre_act = pre_bias

        return self._helper.append_activation(pre_act, act=self._act)
L
lujun 已提交
2727 2728 2729


class RowConv(layers.Layer):
2730 2731 2732 2733 2734 2735 2736 2737 2738 2739 2740 2741 2742 2743 2744 2745 2746 2747
    """
    ***Row-convolution operator***

    The row convolution is called lookahead convolution.  This operator was introduced in the following paper for DeepSpeech2:
    http://www.cs.cmu.edu/~dyogatam/papers/wang+etal.iclrworkshop2016.pdf

    The main motivation is that a bidirectional RNN, useful in DeepSpeech like speech models, learns representation for a sequence by performing a
    forward and a backward pass through the entire sequence. However, unlike
    unidirectional RNNs, bidirectional RNNs are challenging to deploy in an online
    and low-latency setting. The lookahead convolution incorporates information
    from future subsequences in a computationally efficient manner to improve
    unidirectional recurrent neural networks. The row convolution operator is
    different from the 1D sequence convolution, and is computed as follows:

    Given an input sequence X of length t and input dimension D, and a filter (W) of size context * D.

    More details about row_conv please refer to the design document https://github.com/PaddlePaddle/Paddle/issues/2228#issuecomment-303903645 .

2748
    Parameters:
L
lujun 已提交
2749
        name_scope(str): The name of this class.
2750 2751 2752
        future_context_size (int): Future context size. Please note, the shape
            of convolution kernel is [future_context_size + 1, D].
        param_attr (ParamAttr): Attributes of parameters, including
L
lujun 已提交
2753 2754
            name, initializer etc. Default: None.
        act (str): Non-linear activation to be applied to output variable. Default: None.
2755

2756 2757 2758
    Attributes:
        weight (Parameter): the learnable weights of this layer.

2759
    Returns:
L
lujun 已提交
2760 2761
        the output(Out) is a LodTensor, which supports variable time-length input sequences.
        The underlying tensor in this LodTensor is a matrix with shape T x N, i.e., the same shape as X.
2762 2763 2764 2765 2766 2767 2768 2769 2770 2771 2772 2773 2774 2775 2776

    Examples:
        .. code-block:: python

          import paddle.fluid as fluid
          import numpy

          with fluid.dygraph.guard():
              x = numpy.random.random((16)).astype('float32')
              rowConv = fluid.dygraph.nn.RowConv(
                    'RowConv', future_context_size=2)
              ret = rowConv(fluid.dygraph.base.to_variable(x))

    """

L
lujun 已提交
2777 2778 2779 2780 2781
    def __init__(self,
                 name_scope,
                 future_context_size,
                 param_attr=None,
                 act=None):
L
lujun 已提交
2782
        assert not in_dygraph_mode(
2783
        ), "RowConv is not supported by dynamic graph mode yet!"
L
lujun 已提交
2784 2785 2786 2787 2788
        super(RowConv, self).__init__(name_scope)
        self._act = act
        self._param_attr = param_attr
        self._future_context_size = future_context_size

2789
    def _build_once(self, input):
L
lujun 已提交
2790 2791
        self._dtype = self._helper.input_dtype(input)
        filter_shape = [self._future_context_size + 1, input.shape[1]]
2792
        self.weight = self.create_parameter(
2793 2794 2795 2796
            attr=self._param_attr,
            shape=filter_shape,
            dtype=self._dtype,
            is_bias=False)
L
lujun 已提交
2797 2798 2799 2800 2801 2802

    def forward(self, input):
        out = self._helper.create_variable_for_type_inference(self._dtype)
        self._helper.append_op(
            type='row_conv',
            inputs={'X': [input],
2803
                    'Filter': [self.weight]},
L
lujun 已提交
2804 2805 2806 2807 2808 2809
            outputs={'Out': [out]})
        return self._helper.append_activation(out, act=self._act)


class GroupNorm(layers.Layer):
    """
2810 2811 2812 2813 2814 2815
    This interface is used to construct a callable object of the ``GroupNorm`` class.
    For more details, refer to code examples.
    It implements the function of the Group Normalization Layer.
    Refer to `Group Normalization <https://arxiv.org/abs/1803.08494>`_ .

    Parameters:
2816
        channels(int): The number of channels of input.
2817 2818 2819 2820 2821 2822 2823 2824 2825
        groups(int): The number of groups that divided from channels.
        epsilon(float, optional): The small value added to the variance to prevent
                                  division by zero. Default: 1e-05.
        param_attr(ParamAttr, optional): The parameter attribute for the learnable
                                         scale :math:`g`. If it is set to False, no scale will be added to the output units.
                                         If it is set to None, the bias is initialized one. Default: None.
        bias_attr(ParamAttr, optional): The parameter attribute for the learnable
                                        bias :math:`b`. If it is set to False, no bias will be added to the output units.
                                        If it is set to None, the bias is initialized zero. Default: None.
T
tianshuo78520a 已提交
2826
        act(str, optional): Activation to be applied to the output of group normalization. Default: None.
2827 2828 2829 2830 2831 2832 2833 2834 2835 2836 2837 2838 2839
        data_layout(str, optional): Specify the input data format. Only NCHW is supported. Default: NCHW.

    Returns:
        None

    Examples:
        .. code-block:: python

          import paddle.fluid as fluid
          import numpy as np

          with fluid.dygraph.guard():
              x = np.random.random((8, 32, 32)).astype('float32')
2840
              groupNorm = fluid.dygraph.nn.GroupNorm(channels=32, groups=4)
2841
              ret = groupNorm(fluid.dygraph.base.to_variable(x))
L
lujun 已提交
2842 2843 2844 2845

    """

    def __init__(self,
2846
                 channels,
L
lujun 已提交
2847 2848 2849 2850 2851
                 groups,
                 epsilon=1e-05,
                 param_attr=None,
                 bias_attr=None,
                 act=None,
2852 2853 2854
                 data_layout='NCHW',
                 dtype='float32'):
        super(GroupNorm, self).__init__()
L
lujun 已提交
2855 2856 2857
        self._param_attr = param_attr
        self._bias_attr = bias_attr
        self._epsilon = epsilon
2858
        self._channels = channels
L
lujun 已提交
2859 2860
        self._groups = groups
        self._act = act
2861
        self._dtype = dtype
L
lujun 已提交
2862 2863 2864
        if data_layout != 'NCHW':
            raise ValueError("unsupported data layout:" + data_layout)

2865
        param_shape = [self._channels]
L
lujun 已提交
2866

2867 2868 2869 2870 2871 2872 2873 2874 2875 2876 2877
        self.weight = self.create_parameter(
            attr=self._param_attr or False,
            shape=param_shape,
            dtype=self._dtype,
            default_initializer=Constant(1.0))

        self.bias = self.create_parameter(
            attr=self._bias_attr or False,
            shape=param_shape,
            dtype=self._dtype,
            is_bias=True)
L
lujun 已提交
2878 2879 2880

    def forward(self, input):
        inputs = {'X': input}
2881
        if self.bias is not None:
2882
            inputs['Bias'] = self.bias
2883
        if self.weight is not None:
2884
            inputs['Scale'] = self.weight
L
lujun 已提交
2885 2886

        # create output
2887
        mean_out = self._helper.create_variable_for_type_inference(
L
lujun 已提交
2888 2889 2890 2891 2892 2893 2894 2895 2896 2897 2898 2899 2900 2901 2902 2903 2904 2905 2906 2907 2908
            dtype=self._dtype, stop_gradient=True)
        variance_out = self._helper.create_variable_for_type_inference(
            dtype=self._dtype, stop_gradient=True)
        group_norm_out = self._helper.create_variable_for_type_inference(
            dtype=self._dtype)

        self._helper.append_op(
            type="group_norm",
            inputs=inputs,
            outputs={
                "Y": group_norm_out,
                "Mean": mean_out,
                "Variance": variance_out,
            },
            attrs={"epsilon": self._epsilon,
                   "groups": self._groups})

        return self._helper.append_activation(group_norm_out, self._act)


class SpectralNorm(layers.Layer):
2909
    """
2910 2911
    This interface is used to construct a callable object of the ``SpectralNorm`` class.
    For more details, refer to code examples. It implements the function of the Spectral Normalization Layer.
2912 2913 2914 2915 2916 2917 2918 2919 2920 2921
    This layer calculates the spectral normalization value of weight parameters of
    fc, conv1d, conv2d, conv3d layers which should be 2-D, 3-D, 4-D, 5-D
    Parameters. Calculations are showed as follows.

    Step 1:
    Generate vector U in shape of [H], and V in shape of [W].
    While H is the :attr:`dim` th dimension of the input weights,
    and W is the product result of remaining dimensions.

    Step 2:
T
tianshuo78520a 已提交
2922
    :attr:`power_iters` should be a positive integer, do following
2923 2924 2925 2926 2927 2928 2929 2930 2931 2932 2933 2934 2935 2936 2937 2938 2939 2940 2941 2942
    calculations with U and V for :attr:`power_iters` rounds.

    .. math::

        \mathbf{v} := \\frac{\mathbf{W}^{T} \mathbf{u}}{\|\mathbf{W}^{T} \mathbf{u}\|_2}

        \mathbf{u} := \\frac{\mathbf{W}^{T} \mathbf{v}}{\|\mathbf{W}^{T} \mathbf{v}\|_2}

    Step 3:
    Calculate :math:`\sigma(\mathbf{W})` and normalize weight values.

    .. math::

        \sigma(\mathbf{W}) = \mathbf{u}^{T} \mathbf{W} \mathbf{v}

        \mathbf{W} = \\frac{\mathbf{W}}{\sigma(\mathbf{W})}


    Refer to `Spectral Normalization <https://arxiv.org/abs/1802.05957>`_ .

2943
    Parameters:
2944
        weight_shape(list or tuple): The shape of weight parameter.
2945 2946 2947 2948
        dim(int, optional): The index of dimension which should be permuted to the first before reshaping Input(Weight) to matrix, it should be set as 0 if Input(Weight) is the weight of fc layer, and should be set as 1 if Input(Weight) is the weight of conv layer. Default: 0.
        power_iters(int, optional): The number of power iterations to calculate spectral norm. Default: 1.
        eps(float, optional): The epsilon for numerical stability in calculating norms. Default: 1e-12.
        name (str, optional): The default value is None.  Normally there is no need for user to set this property.  For more information, please refer to :ref:`api_guide_Name` .
2949
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
2950 2951

    Returns:
2952
        None
2953 2954 2955 2956 2957

    Examples:
       .. code-block:: python

            import paddle.fluid as fluid
2958
            import numpy as np
2959 2960

            with fluid.dygraph.guard():
2961 2962 2963
                weight = np.random.random((2, 8, 32, 32)).astype('float32')
                spectralNorm = fluid.dygraph.nn.SpectralNorm(weight.shape, dim=1, power_iters=2)
                ret = spectralNorm(fluid.dygraph.base.to_variable(weight))
2964 2965 2966

    """

2967 2968 2969 2970 2971 2972 2973
    def __init__(self,
                 weight_shape,
                 dim=0,
                 power_iters=1,
                 eps=1e-12,
                 dtype='float32'):
        super(SpectralNorm, self).__init__()
L
lujun 已提交
2974 2975 2976
        self._power_iters = power_iters
        self._eps = eps
        self._dim = dim
2977
        self._dtype = dtype
L
lujun 已提交
2978

2979 2980 2981
        self._weight_shape = list(weight_shape)
        h = self._weight_shape[self._dim]
        w = np.prod(self._weight_shape) // h
L
lujun 已提交
2982

2983
        self.weight_u = self.create_parameter(
L
lujun 已提交
2984 2985 2986 2987
            attr=ParamAttr(),
            shape=[h],
            dtype=self._dtype,
            default_initializer=Normal(0., 1.))
2988
        self.weight_u.stop_gradient = True
L
lujun 已提交
2989

2990
        self.weight_v = self.create_parameter(
L
lujun 已提交
2991 2992 2993 2994
            attr=ParamAttr(),
            shape=[w],
            dtype=self._dtype,
            default_initializer=Normal(0., 1.))
2995
        self.weight_v.stop_gradient = True
L
lujun 已提交
2996 2997

    def forward(self, weight):
2998 2999
        check_variable_and_dtype(weight, "weight", ['float32', 'float64'],
                                 'SpectralNorm')
3000
        inputs = {'Weight': weight, 'U': self.weight_u, 'V': self.weight_v}
L
lujun 已提交
3001 3002 3003 3004 3005 3006 3007 3008 3009 3010 3011 3012 3013 3014 3015
        out = self._helper.create_variable_for_type_inference(self._dtype)
        self._helper.append_op(
            type="spectral_norm",
            inputs=inputs,
            outputs={"Out": out, },
            attrs={
                "dim": self._dim,
                "power_iters": self._power_iters,
                "eps": self._eps,
            })

        return out


class TreeConv(layers.Layer):
3016
    """
3017 3018 3019 3020 3021 3022 3023 3024 3025 3026
    This interface is used to construct a callable object of the ``TreeConv`` class.
    For more details, refer to code examples.
    Tree-Based Convolution is a kind of convolution based on tree structure.
    Tree-Based Convolution is a part of Tree-Based Convolution Neural Network(TBCNN),
    which is used to classify tree structures, such as Abstract Syntax Tree.
    Tree-Based Convolution proposed a kind of data structure called continuous binary tree,
    which regards multiway tree as binary tree.
    The paper of Tree-Based Convolution Operator is here: `tree-based convolution <https://arxiv.org/abs/1409.5718v1/>`_ .
    
    Parameters:
3027
        feature_size(int): last dimension of nodes_vector.
3028 3029 3030 3031 3032 3033 3034
        output_size(int): output feature width.
        num_filters(int, optional): number of filters, Default: 1.
        max_depth(int, optional): max depth of filters, Default: 2.
        act(str, optional): activation function, Default: tanh.
        param_attr(ParamAttr, optional): the parameter attribute for the filters, Default: None.
        bias_attr(ParamAttr, optional): the parameter attribute for the bias of this layer, Default: None.
        name(str, optional): The default value is None. Normally there is no need for user to set this property. For more information, please refer to :ref:`api_guide_Name` .
3035
        dtype (str, optional): Data type, it can be "float32" or "float64". Default: "float32".
3036

3037 3038
    Attribute:
        **weight** (Parameter): the learnable weights of filters of this layer.
3039

3040
        **bias** (Parameter or None): the learnable bias of this layer.
3041

3042 3043
    Returns:
        None
L
lujun 已提交
3044

3045
    Examples:
L
lujun 已提交
3046

3047
        .. code-block:: python
3048

3049 3050
          import paddle.fluid as fluid
          import numpy
3051

3052 3053 3054 3055
          with fluid.dygraph.guard():
              nodes_vector = numpy.random.random((1, 10, 5)).astype('float32')
              edge_set = numpy.random.random((1, 9, 2)).astype('int32')
              treeConv = fluid.dygraph.nn.TreeConv(
3056
                feature_size=5, output_size=6, num_filters=1, max_depth=2)
3057
              ret = treeConv(fluid.dygraph.base.to_variable(nodes_vector), fluid.dygraph.base.to_variable(edge_set))
3058 3059
    """

L
lujun 已提交
3060
    def __init__(self,
3061
                 feature_size,
L
lujun 已提交
3062 3063 3064 3065 3066 3067
                 output_size,
                 num_filters=1,
                 max_depth=2,
                 act='tanh',
                 param_attr=None,
                 bias_attr=None,
3068 3069 3070
                 name=None,
                 dtype='float32'):
        super(TreeConv, self).__init__()
L
lujun 已提交
3071
        self._name = name
3072
        self._feature_size = feature_size
L
lujun 已提交
3073 3074 3075 3076 3077 3078
        self._output_size = output_size
        self._act = act
        self._max_depth = max_depth
        self._num_filters = num_filters
        self._bias_attr = bias_attr
        self._param_attr = param_attr
3079 3080
        self._dtype = dtype
        w_shape = [self._feature_size, 3, self._output_size, self._num_filters]
L
lujun 已提交
3081
        if self._bias_attr:
3082
            self.bias = self.create_parameter(
L
lujun 已提交
3083 3084 3085 3086
                attr=self._bias_attr,
                shape=[self._num_filters],
                dtype=self._dtype,
                is_bias=True)
3087
        self.weight = self.create_parameter(
L
lujun 已提交
3088 3089 3090 3091 3092 3093
            attr=self._param_attr,
            shape=w_shape,
            dtype=self._dtype,
            is_bias=False)

    def forward(self, nodes_vector, edge_set):
3094 3095
        check_type(nodes_vector, 'nodes_vector', (Variable), 'TreeConv')
        check_type(edge_set, 'edge_set', (Variable), 'TreeConv')
L
lujun 已提交
3096 3097 3098 3099 3100 3101 3102 3103 3104 3105 3106
        if self._name:
            out = self.create_variable(
                name=self._name, dtype=self._dtype, persistable=False)
        else:
            out = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
        self._helper.append_op(
            type='tree_conv',
            inputs={
                'NodesVector': nodes_vector,
                'EdgeSet': edge_set,
3107
                'Filter': self.weight
L
lujun 已提交
3108 3109 3110 3111 3112 3113 3114 3115 3116
            },
            outputs={'Out': out, },
            attrs={'max_depth': self._max_depth})
        if self._bias_attr:
            pre_activation = self._helper.create_variable_for_type_inference(
                dtype=self._dtype)
            self._helper.append_op(
                type='elementwise_add',
                inputs={'X': [out],
3117
                        'Y': [self.bias]},
L
lujun 已提交
3118 3119 3120 3121 3122
                outputs={'Out': [pre_activation]},
                attrs={'axis': 1})
        else:
            pre_activation = out
        return self._helper.append_activation(pre_activation, act=self._act)