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# -*- coding: utf-8 -*-
# MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
#
# Copyright (c) 2014-2021 Megvii Inc. All rights reserved.
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
"""Fills the given ``tensor`` with value ``val``.
Args:
tensor: tensor to be initialized.
val: value to be filled throughout the tensor.
"""
"""Fills the given ``tensor`` with scalar value `0`.
Args:
tensor: tensor to be initialized.
"""
"""Fills the given ``tensor`` with the scalar value `1`.
Args:
tensor: tensor to be initialized.
"""
r"""Fills the given ``tensor`` with random value sampled from uniform distribution
:math:`\mathcal{U}(\text{a}, \text{b})`.
Args:
tensor: tensor to be initialized.
a: lower bound of the sampling interval.
b: upper bound of the sampling interval.
"""
r"""Fills the given ``tensor`` with random value sampled from normal distribution
:math:`\mathcal{N}(\text{mean}, \text{std}^2)`.
Args:
tensor: tensor to be initialized.
mean: mean of the normal distribution.
std: standard deviation of the normal distribution.
"""
r"""Returns a recommended gain value (see the table below) for the given nonlinearity
function.
================= ====================================================
nonlinearity gain
================= ====================================================
Linear / Identity :math:`1`
Conv{1,2,3}D :math:`1`
Sigmoid :math:`1`
Tanh :math:`\frac{5}{3}`
ReLU :math:`\sqrt{2}`
Leaky Relu :math:`\sqrt{\frac{2}{1 + {\text{negative}_\text{slope}}^2}}`
================= ====================================================
Args:
nonlinearity: name of the non-linear function.
param: optional parameter for leaky_relu. Only effective when
``nonlinearity`` is "leaky_relu".
"""
=
return 1
return 5.0 / 3
return
= 0.01
# True/False are instances of int, hence check above
=
return
r"""Calculates fan_in / fan_out value for given weight tensor. This function assumes
input tensor is stored in ``NCHW`` format.
Note:
The group conv2d kernel shape in MegEngine is ``(G, O/G, I/G, K, K)``. This
function calculates ``fan_out = O/G * K * K`` as default, but PyTorch uses
``fan_out = O * K * K``.
Args:
tensor: weight tensor in ``NCHW`` format.
"""
=
=
# Linear
=
=
# ignore the groups dimension of group conv2d and group conv3d
# FIXME: will be wrong for conv3d
=
=
=
= 1
=
= *
= *
return ,
r"""Calculates fan_in / fan_out value for given weight tensor, depending on given
``mode``.
See :func:`calculate_fan_in_and_fan_out` for details.
Args:
tensor: weight tensor in ``NCHW`` format.
mode: fan_in" or "fan_out".
"""
=
=
, =
return
r"""Fills tensor with random values sampled from :math:`\mathcal{U}(-a, a)`
where
.. math::
a = \text{gain} \times \sqrt{\frac{6}{\text{fan_in} + \text{fan_out}}}
Also known as Glorot initialization. Detailed information can be retrieved from
`Understanding the difficulty of training deep feedforward neural networks` -
Glorot, X. & Bengio, Y. (2010).
Args:
tensor: tensor to be initialized.
gain: scaling factor for :math:`a`.
"""
, =
= *
= *
r"""Fills tensor with random values sampled from
:math:`\mathcal{N}(0, \text{std}^2)` where
.. math::
\text{std} = \text{gain} \times \sqrt{\frac{2}{\text{fan_in} + \text{fan_out}}}
Also known as Glorot initialization. Detailed information can be retrieved from
`Understanding the difficulty of training deep feedforward neural networks` -
Glorot, X. & Bengio, Y. (2010).
Args:
tensor: tensor to be initialized.
gain: scaling factor for :math:`std`.
"""
, =
= *
r"""Fills tensor wilth random values sampled from
:math:`\mathcal{U}(-\text{bound}, \text{bound})` where
.. math::
\text{bound} = \sqrt{\frac{6}{(1 + a^2) \times \text{fan_in}}}
Detailed information can be retrieved from
`Delving deep into rectifiers: Surpassing human-level performance on ImageNet
classification`
Args:
tensor: tensor to be initialized.
a: optional parameter for calculating gain for leaky_relu. See
:func:`calculate_gain` for details.
mode: fan_in" or "fan_out", used to calculate :math:`gain`, the
scaling factor for :math:`bound`. See :func:`calculate_fan_in_and_fan_out` for
details.
nonlinearity: name of the non-linear function used to calculate :math:`gain`.
See :func:`calculate_gain` for details.
"""
=
=
= /
= *
r"""Fills tensor wilth random values sampled from
:math:`\mathcal{N}(0, \text{std}^2)` where
.. math::
\text{std} = \sqrt{\frac{2}{(1 + a^2) \times \text{fan_in}}}
Detailed information can be retrieved from
`Delving deep into rectifiers: Surpassing human-level performance on ImageNet
classification`
Args:
tensor: tensor to be initialized
a: optional parameter for calculating gain for leaky_relu. See
:func:`calculate_gain` for details.
mode: fan_in" or "fan_out", used to calculate :math:`gain`, the
scaling factor for :math:`gain`. See :func:`calculate_fan_in_and_fan_out` for
details.
nonlinearity: name of the non-linear function used to calculate :math:`gain`.
See :func:`calculate_gain` for details.
"""
=
=
= /