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batchnorm.py 9.7 kB

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  1. # -*- coding: utf-8 -*-
  2. # MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
  3. #
  4. # Copyright (c) 2014-2020 Megvii Inc. All rights reserved.
  5. #
  6. # Unless required by applicable law or agreed to in writing,
  7. # software distributed under the License is distributed on an
  8. # "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  9. from typing import Optional
  10. import numpy as np
  11. from ..distributed.group import WORLD, Group
  12. from ..functional.nn import batch_norm2d, sync_batch_norm
  13. from ..tensor import Parameter, Tensor
  14. from . import init
  15. from .module import Module
  16. class _BatchNorm(Module):
  17. def __init__(
  18. self,
  19. num_features,
  20. eps=1e-5,
  21. momentum=0.9,
  22. affine=True,
  23. track_running_stats=True,
  24. freeze=False,
  25. ):
  26. super(_BatchNorm, self).__init__()
  27. self.num_features = num_features
  28. self.eps = eps
  29. self.momentum = momentum
  30. self.affine = affine
  31. self.track_running_stats = track_running_stats
  32. self._track_running_stats_saved = track_running_stats
  33. self.freeze = freeze
  34. if self.affine:
  35. self.weight = Parameter(np.ones(num_features, dtype=np.float32))
  36. self.bias = Parameter(np.zeros(num_features, dtype=np.float32))
  37. else:
  38. self.weight = None
  39. self.bias = None
  40. tshape = (1, self.num_features, 1, 1)
  41. if self.track_running_stats:
  42. self.running_mean = Tensor(np.zeros(tshape, dtype=np.float32))
  43. self.running_var = Tensor(np.ones(tshape, dtype=np.float32))
  44. else:
  45. self.running_mean = None
  46. self.running_var = None
  47. def reset_running_stats(self) -> None:
  48. if self.track_running_stats:
  49. init.zeros_(self.running_mean)
  50. init.ones_(self.running_var)
  51. def reset_parameters(self) -> None:
  52. self.reset_running_stats()
  53. if self.affine:
  54. init.ones_(self.weight)
  55. init.zeros_(self.bias)
  56. def _check_input_ndim(self, inp):
  57. raise NotImplementedError
  58. def forward(self, inp):
  59. self._check_input_ndim(inp)
  60. if self._track_running_stats_saved == False:
  61. assert (
  62. self.track_running_stats == False
  63. ), "track_running_stats can not be initilized to False and changed to True later"
  64. _ndims = len(inp.shape)
  65. if _ndims != 4:
  66. origin_shape = inp.shape
  67. if _ndims == 2:
  68. n, c = inp.shape[0], inp.shape[1]
  69. new_shape = (n, c, 1, 1)
  70. elif _ndims == 3:
  71. n, c, h = inp.shape[0], inp.shape[1], inp.shape[2]
  72. new_shape = (n, c, h, 1)
  73. inp = inp.reshape(new_shape)
  74. if self.freeze and self.training and self._track_running_stats_saved:
  75. scale = self.weight.reshape(1, -1, 1, 1) * (
  76. self.running_var + self.eps
  77. ) ** (-0.5)
  78. bias = self.bias.reshape(1, -1, 1, 1) - self.running_mean * scale
  79. return inp * scale.detach() + bias.detach()
  80. if self.training and self.track_running_stats:
  81. exponential_average_factor = self.momentum
  82. else:
  83. exponential_average_factor = 0.0 # useless
  84. output = batch_norm2d(
  85. inp,
  86. self.running_mean if self.track_running_stats else None,
  87. self.running_var if self.track_running_stats else None,
  88. self.weight,
  89. self.bias,
  90. training=self.training
  91. or ((self.running_mean is None) and (self.running_var is None)),
  92. momentum=exponential_average_factor,
  93. eps=self.eps,
  94. )
  95. if _ndims != 4:
  96. output = output.reshape(origin_shape)
  97. return output
  98. def _module_info_string(self) -> str:
  99. s = (
  100. "{num_features}, eps={eps}, momentum={momentum}, affine={affine}, "
  101. "track_running_stats={track_running_stats}"
  102. )
  103. return s.format(**self.__dict__)
  104. class SyncBatchNorm(_BatchNorm):
  105. r"""
  106. Applies Synchronization Batch Normalization.
  107. """
  108. def __init__(
  109. self,
  110. num_features,
  111. eps=1e-5,
  112. momentum=0.9,
  113. affine=True,
  114. track_running_stats=True,
  115. freeze=False,
  116. group: Optional[Group] = WORLD,
  117. ) -> None:
  118. super().__init__(
  119. num_features, eps, momentum, affine, track_running_stats, freeze
  120. )
  121. self.group = group
  122. def _check_input_ndim(self, inp):
  123. if len(inp.shape) not in {2, 3, 4}:
  124. raise ValueError(
  125. "expected 2D, 3D or 4D input (got {}D input)".format(len(inp.shape))
  126. )
  127. def forward(self, inp):
  128. self._check_input_ndim(inp)
  129. _ndims = len(inp.shape)
  130. if _ndims != 4:
  131. new_shape = Tensor([1, 1, 1, 1], device=inp.device)
  132. origin_shape = inp.shape
  133. if _ndims == 2:
  134. new_shape[:2] = origin_shape[:2]
  135. elif _ndims == 3:
  136. new_shape[:3] = origin_shape[:3]
  137. else:
  138. raise ValueError(
  139. "expected 2D, 3D or 4D input (got {}D input)".format(len(inp.shape))
  140. )
  141. inp = inp.reshape(new_shape)
  142. if self.training and self.track_running_stats:
  143. exponential_average_factor = self.momentum
  144. else:
  145. exponential_average_factor = 0.0 # useless
  146. output = sync_batch_norm(
  147. inp,
  148. self.running_mean,
  149. self.running_var,
  150. self.weight,
  151. self.bias,
  152. self.training or not self.track_running_stats,
  153. exponential_average_factor,
  154. self.eps,
  155. group=self.group,
  156. )
  157. if _ndims != 4:
  158. output = output.reshape(origin_shape)
  159. return output
  160. class BatchNorm1d(_BatchNorm):
  161. r"""
  162. Applies Batch Normalization over a 2D/3D tensor.
  163. Refer to :class:`~.BatchNorm2d` for more information.
  164. """
  165. def _check_input_ndim(self, inp):
  166. if len(inp.shape) not in {2, 3}:
  167. raise ValueError(
  168. "expected 2D or 3D input (got {}D input)".format(len(inp.shape))
  169. )
  170. class BatchNorm2d(_BatchNorm):
  171. r"""
  172. Applies Batch Normalization over a 4D tensor.
  173. .. math::
  174. y = \frac{x - \mathrm{E}[x]}{ \sqrt{\mathrm{Var}[x] + \epsilon}} * \gamma + \beta
  175. The mean and standard-deviation are calculated per-dimension over
  176. the mini-batches and :math:`\gamma` and :math:`\beta` are learnable
  177. parameter vectors.
  178. By default, during training this layer keeps running estimates of its
  179. computed mean and variance, which are then used for normalization during
  180. evaluation. The running estimates are kept with a default :attr:`momentum`
  181. of 0.9.
  182. If :attr:`track_running_stats` is set to ``False``, this layer will not
  183. keep running estimates, batch statistics is used during
  184. evaluation time instead.
  185. .. note::
  186. This :attr:`momentum` argument is different from one used in optimizer
  187. classes and the conventional notion of momentum. Mathematically, the
  188. update rule for running statistics here is
  189. :math:`\hat{x}_\text{new} = \text{momentum} \times \hat{x} + (1 - \text{momentum}) \times x_t`,
  190. where :math:`\hat{x}` is the estimated statistic and :math:`x_t` is the
  191. new observed value.
  192. Because the Batch Normalization is done over the `C` dimension, computing
  193. statistics on `(N, H, W)` slices, it's common terminology to call this
  194. Spatial Batch Normalization.
  195. :type num_features: int
  196. :param num_features: usually :math:`C` from an input of shape
  197. :math:`(N, C, H, W)` or the highest ranked dimension of an input
  198. less than 4D.
  199. :type eps: float
  200. :param eps: a value added to the denominator for numerical stability.
  201. Default: 1e-5
  202. :type momentum: float
  203. :param momentum: the value used for the ``running_mean`` and ``running_var`` computation.
  204. Default: 0.9
  205. :type affine: bool
  206. :param affine: a boolean value that when set to True, this module has
  207. learnable affine parameters. Default: True
  208. :type track_running_stats: bool
  209. :param track_running_stats: when set to True, this module tracks the
  210. running mean and variance. When set to False, this module does not
  211. track such statistics and always uses batch statistics in both training
  212. and eval modes. Default: True
  213. :type freeze: bool
  214. :param freeze: when set to True, this module does not update the
  215. running mean and variance, and uses the running mean and variance instead of
  216. the batch mean and batch variance to normalize the input. The parameter takes effect
  217. only when the module is initilized with track_running_stats as True and
  218. the module is in training mode.
  219. Default: False
  220. Examples:
  221. .. testcode::
  222. import numpy as np
  223. import megengine as mge
  224. import megengine.module as M
  225. # With Learnable Parameters
  226. m = M.BatchNorm2d(4)
  227. inp = mge.tensor(np.random.rand(1, 4, 3, 3).astype("float32"))
  228. oup = m(inp)
  229. print(m.weight.numpy(), m.bias.numpy())
  230. # Without L`e`arnable Parameters
  231. m = M.BatchNorm2d(4, affine=False)
  232. oup = m(inp)
  233. print(m.weight, m.bias)
  234. Outputs:
  235. .. testoutput::
  236. [1. 1. 1. 1.] [0. 0. 0. 0.]
  237. None None
  238. """
  239. def _check_input_ndim(self, inp):
  240. if len(inp.shape) != 4:
  241. raise ValueError("expected 4D input (got {}D input)".format(len(inp.shape)))

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