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_utils.py 11 kB

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  1. # Copyright 2020 Huawei Technologies Co., Ltd
  2. #
  3. # Licensed under the Apache License, Version 2.0 (the "License");
  4. # you may not use this file except in compliance with the License.
  5. # You may obtain a copy of the License at
  6. #
  7. # http://www.apache.org/licenses/LICENSE-2.0
  8. #
  9. # Unless required by applicable law or agreed to in writing, software
  10. # distributed under the License is distributed on an "AS IS" BASIS,
  11. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  12. # See the License for the specific language governing permissions and
  13. # limitations under the License.
  14. # ============================================================================
  15. """Utils of auto parallel"""
  16. import numpy as np
  17. from mindspore import context, log as logger
  18. from mindspore.context import ParallelMode
  19. from mindspore._c_expression import reset_op_id
  20. from mindspore.common.tensor import Tensor
  21. from mindspore.common.dtype import dtype_to_nptype
  22. from mindspore.common import dtype as mstype
  23. from mindspore.communication.management import get_group_size, get_rank
  24. from mindspore.parallel._auto_parallel_context import auto_parallel_context
  25. from mindspore.common.seed import get_seed
  26. def _get_parallel_mode():
  27. """Get parallel mode."""
  28. return auto_parallel_context().get_parallel_mode()
  29. def _is_in_auto_parallel_mode():
  30. return _get_parallel_mode() in [ParallelMode.SEMI_AUTO_PARALLEL, ParallelMode.AUTO_PARALLEL]
  31. def _get_full_batch():
  32. """Get whether to use full_batch."""
  33. return auto_parallel_context().get_full_batch()
  34. def _get_pipeline_stages():
  35. """Get pipeline stages"""
  36. return auto_parallel_context().get_pipeline_stages()
  37. def _check_full_batch():
  38. """
  39. full_batch could only be used under semi_auto_parallel or auto_parallel, check it.
  40. Raises:
  41. RuntimeError: Using full_batch under neither semi_auto_parallel nor auto_parallel.
  42. """
  43. parallel_mode = _get_parallel_mode()
  44. full_batch = _get_full_batch()
  45. if ((parallel_mode not in ("semi_auto_parallel", "auto_parallel")) and full_batch):
  46. raise RuntimeError("full_batch could only be used under semi_auto_parallel or auto_parallel.")
  47. def _need_to_full():
  48. """Check whether to convert input to full shape or tensor."""
  49. parallel_mode = _get_parallel_mode()
  50. full_batch = _get_full_batch()
  51. need = ((parallel_mode in ("semi_auto_parallel", "auto_parallel"))
  52. and (not full_batch))
  53. return need
  54. def _to_full_shapes(shapes, device_num):
  55. """Expanding batch dimension according to device_num, adapt to mindspore minddata graph solution."""
  56. new_shapes = []
  57. for shape in shapes:
  58. new_shape = ()
  59. for i, item in enumerate(shape):
  60. if i == 0:
  61. new_shape += (item * device_num,)
  62. else:
  63. new_shape += (item,)
  64. new_shapes.append(new_shape)
  65. return new_shapes
  66. def _to_full_tensor(elem, global_device_num, global_rank, scaling_sens=None):
  67. """Convert numpy to tensor, expanding batch dimension according to device_num, adapt to feed the data
  68. from host solution.
  69. """
  70. lst = []
  71. device_num = global_device_num // _get_pipeline_stages()
  72. stage_rank = global_rank % device_num
  73. if not isinstance(elem, (tuple, list)):
  74. elem = [elem]
  75. if stage_rank >= device_num:
  76. raise ValueError("The global rank must be smaller than device number, the global rank is {}, "
  77. "the device num is {}".format(stage_rank, device_num))
  78. for data in elem:
  79. if isinstance(data, np.ndarray):
  80. data = Tensor(data)
  81. if not isinstance(data, Tensor):
  82. raise ValueError("elements in tensors must be Tensor")
  83. shape_ = data.shape
  84. type_ = data.dtype
  85. new_shape = ()
  86. batchsize_per_device = 1
  87. for i, item in enumerate(shape_):
  88. if i == 0:
  89. new_shape += (item * device_num,)
  90. batchsize_per_device = item
  91. else:
  92. new_shape += (item,)
  93. new_tensor_numpy = np.zeros(new_shape, dtype_to_nptype(type_))
  94. start = stage_rank * batchsize_per_device
  95. new_tensor_numpy[start: start + batchsize_per_device] = data.asnumpy()
  96. new_tensor = Tensor(new_tensor_numpy)
  97. lst.append(new_tensor)
  98. if scaling_sens:
  99. lst.append(Tensor(scaling_sens, mstype.float32))
  100. return tuple(lst)
  101. def _get_gradients_mean():
  102. """Get if using gradients_mean."""
  103. return auto_parallel_context().get_gradients_mean()
  104. def _get_device_num():
  105. """Get the device num."""
  106. parallel_mode = auto_parallel_context().get_parallel_mode()
  107. if parallel_mode == "stand_alone":
  108. device_num = 1
  109. return device_num
  110. if auto_parallel_context().get_device_num_is_set() is False:
  111. device_num = get_group_size()
  112. else:
  113. device_num = auto_parallel_context().get_device_num()
  114. return device_num
  115. def _get_global_rank():
  116. """Get the global rank."""
  117. parallel_mode = auto_parallel_context().get_parallel_mode()
  118. if parallel_mode == "stand_alone":
  119. global_rank = 0
  120. return global_rank
  121. if auto_parallel_context().get_global_rank_is_set() is False:
  122. global_rank = get_rank()
  123. else:
  124. global_rank = auto_parallel_context().get_global_rank()
  125. return global_rank
  126. def _get_parameter_broadcast():
  127. """Get the parameter broadcast."""
  128. parallel_mode = auto_parallel_context().get_parallel_mode()
  129. parameter_broadcast = auto_parallel_context().get_parameter_broadcast()
  130. if parallel_mode in ("data_parallel", "hybrid_parallel") and parameter_broadcast is False and get_seed() is None:
  131. logger.warning("You are suggested to use mindspore.context.set_auto_parallel_context(parameter_broadcast=True)"
  132. " or mindspore.common.set_seed() to share parameters among multi-devices.")
  133. return parameter_broadcast
  134. def _get_enable_parallel_optimizer():
  135. """Get if using parallel optimizer."""
  136. return auto_parallel_context().get_enable_parallel_optimizer()
  137. def _device_number_check(parallel_mode, device_number):
  138. """
  139. Check device num.
  140. Args:
  141. parallel_mode (str): The parallel mode.
  142. device_number (int): The device number.
  143. """
  144. if parallel_mode == "stand_alone" and device_number != 1:
  145. raise ValueError("If parallel_mode is stand_alone, device_number must be 1, "
  146. "device_number: {0}, parallel_mode:{1}".format(device_number, parallel_mode))
  147. def _parameter_broadcast_check(parallel_mode, parameter_broadcast):
  148. """
  149. Check parameter broadcast.
  150. Note:
  151. If parallel mode is semi_auto_parallel or auto_parallel, parameter broadcast is not supported. Using the same
  152. random seed to make sure parameters on multiple devices are the same.
  153. Args:
  154. parallel_mode (str): The parallel mode.
  155. parameter_broadcast (bool): The parameter broadcast.
  156. Raises:
  157. ValueError: If parameter is broadcasted
  158. but the parallel mode is "stand_alone" or "semi_auto_parallel" or "auto_parallel").
  159. """
  160. if parameter_broadcast is True and parallel_mode in ("stand_alone", "semi_auto_parallel", "auto_parallel"):
  161. raise ValueError("stand_alone, semi_auto_parallel and auto_parallel "
  162. "do not support parameter broadcast, parallel_mode: {0}, parameter_broadcast:{1}"
  163. .format(parallel_mode, parameter_broadcast))
  164. def _get_python_op(op_name, op_path, instance_name, arglist):
  165. """Get python operator."""
  166. module = __import__(op_path, fromlist=["None"])
  167. cls = getattr(module, op_name)
  168. if op_path != "mindspore.ops.functional":
  169. op = cls(*arglist)
  170. else:
  171. op = cls
  172. op.set_prim_instance_name(instance_name)
  173. return op
  174. def _reset_op_id():
  175. """Reset op id."""
  176. reset_op_id()
  177. def _parallel_predict_check():
  178. """validate parallel model prediction"""
  179. if _get_parallel_mode() in (ParallelMode.SEMI_AUTO_PARALLEL, ParallelMode.AUTO_PARALLEL):
  180. if not context.get_auto_parallel_context("full_batch"):
  181. raise RuntimeError('Model prediction only supports full batch dataset. Please set "full_batch" with True.')
  182. def _check_similar_layout(tensor_layout1, tensor_layout2):
  183. """check if two tensor layouts are same"""
  184. if tensor_layout1[1] != tensor_layout2[1]:
  185. return False
  186. for i in tensor_layout1[1]:
  187. if i == -1:
  188. continue
  189. if tensor_layout1[0][-1-i] != tensor_layout2[0][-1-i]:
  190. return False
  191. return True
  192. def _check_same_layout(tensor_layout1, tensor_layout2):
  193. """check if two tensor layouts are same"""
  194. return tensor_layout1[0] == tensor_layout2[0] and tensor_layout1[1] == tensor_layout2[1]
  195. def _remove_repeated_slices(tensor_layout):
  196. """generate unrepeated tensor layout"""
  197. import copy
  198. new_tensor_layout = copy.deepcopy(tensor_layout)
  199. dev_mat = tensor_layout[0][:]
  200. tensor_map = tensor_layout[1]
  201. for dim in range(len(dev_mat)):
  202. if dim not in tensor_map:
  203. dev_mat[-1-dim] = 1
  204. new_tensor_layout[0] = dev_mat
  205. return new_tensor_layout
  206. def _infer_rank_list(train_map, predict_map=None):
  207. """infer checkpoint slices to be loaded"""
  208. ret = {}
  209. if _get_pipeline_stages() > 1:
  210. local_rank = int(_get_global_rank() % (_get_device_num() / _get_pipeline_stages()))
  211. else:
  212. local_rank = _get_global_rank()
  213. for param_name in train_map:
  214. train_layout = train_map[param_name]
  215. train_dev_mat = train_layout[0]
  216. dev_num = np.array(train_dev_mat).prod()
  217. new_train_layout = _remove_repeated_slices(train_layout)
  218. array = np.arange(dev_num).reshape(train_dev_mat)
  219. index = ()
  220. for i in new_train_layout[0]:
  221. if i == 1:
  222. index = index + (0,)
  223. else:
  224. index = index + (slice(None),)
  225. rank_list = array[index].flatten()
  226. if not predict_map:
  227. ret[param_name] = (rank_list, False)
  228. continue
  229. if param_name not in predict_map:
  230. logger.warning("predict_map does not contain %s", param_name)
  231. continue
  232. predict_layout = predict_map[param_name]
  233. dev_num = np.array(predict_layout[0]).prod()
  234. # optimization pass
  235. if _check_same_layout(train_layout, predict_layout):
  236. ret[param_name] = ([local_rank], True)
  237. continue
  238. if _check_similar_layout(train_layout, predict_layout):
  239. if len(rank_list) == 1:
  240. ret[param_name] = (rank_list, True)
  241. elif len(rank_list) == dev_num:
  242. ret[param_name] = ([rank_list[local_rank]], True)
  243. else:
  244. ret[param_name] = (rank_list, False)
  245. else:
  246. ret[param_name] = (rank_list, False)
  247. return ret