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tensor.py 4.8 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) 2014-2021 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 Union
  10. import numpy as np
  11. from .core._imperative_rt import CompNode
  12. from .core._imperative_rt.core2 import Tensor as _Tensor
  13. from .core._imperative_rt.core2 import apply
  14. from .core._trace_option import use_symbolic_shape
  15. from .core._wrap import device as as_device
  16. from .core.ops.builtin import Copy, GetVarShape
  17. from .core.tensor.array_method import ArrayMethodMixin
  18. from .device import _valid_device, get_default_device
  19. from .logger import get_logger
  20. from .utils.deprecation import deprecated
  21. class Tensor(_Tensor, ArrayMethodMixin):
  22. grad = None
  23. dmap_callback = None
  24. _q_dict = None
  25. def __new__(cls, data, dtype=None, device=None, is_const=False, no_cache=False):
  26. if device is None:
  27. cn = get_default_device()
  28. elif isinstance(device, str):
  29. if cls.dmap_callback is not None:
  30. cn = CompNode(cls.dmap_callback(device))
  31. else:
  32. cn = CompNode(device)
  33. else:
  34. if isinstance(device, CompNode):
  35. cn = device
  36. else:
  37. cn = device._cn
  38. if isinstance(data, _Tensor):
  39. if dtype is not None:
  40. get_logger().warning(
  41. "dtype does not work when creating a new Tensor with another Tensor"
  42. )
  43. obj = _Tensor.__new__(cls, data)
  44. else:
  45. if isinstance(data, np.ndarray):
  46. if 0 in data.strides:
  47. data = data.squeeze().reshape(data.shape)
  48. obj = _Tensor.__new__(cls, data, dtype, cn, is_const, no_cache)
  49. return obj
  50. @property
  51. def shape(self) -> Union[tuple, "Tensor"]:
  52. shape = super().shape
  53. if shape == () or not use_symbolic_shape():
  54. return shape
  55. return apply(GetVarShape(), self)[0]
  56. @property
  57. def _tuple_shape(self):
  58. return super().shape
  59. @property
  60. def dtype(self) -> np.dtype:
  61. return super().dtype
  62. @property
  63. def q_dict(self):
  64. if self._q_dict is None:
  65. self._q_dict = {"mode": None, "scale": None, "zero_point": None}
  66. return self._q_dict
  67. def numpy(self) -> np.ndarray:
  68. return super().numpy()
  69. def _reset(self, other):
  70. super()._reset(other)
  71. def __repr__(self):
  72. piece = "Tensor("
  73. with np.printoptions(precision=4, suppress=True):
  74. piece += "{}".format(str(self.numpy()))
  75. if self.dtype != np.float32:
  76. piece += ", dtype={}".format(np.dtype(self.dtype).name)
  77. piece += ", device={}".format(self.device) + ")"
  78. return piece
  79. @deprecated(version="1.0", reason="no need to reuse an existing tensor since 1.0")
  80. def set_value(self, value):
  81. if not isinstance(value, _Tensor):
  82. value = Tensor(value, dtype=self.dtype, device=self.device)
  83. self._reset(value)
  84. @deprecated(version="1.0", reason="use *= 0 instead")
  85. def reset_zero(self):
  86. self *= 0
  87. def to(self, device):
  88. if isinstance(device, str) and not _valid_device(device):
  89. raise ValueError(
  90. "invalid device name {}. For the correct format of the device name, please refer to the instruction of megengine.device.set_default_device()".format(
  91. device
  92. )
  93. )
  94. cn = as_device(device).to_c()
  95. return apply(Copy(comp_node=cn), self)[0]
  96. @property
  97. def requires_grad(self):
  98. raise AttributeError("requires_grad is reserved for future use")
  99. @requires_grad.setter
  100. def requires_grad(self, value):
  101. raise AttributeError("requires_grad is reserved for future use")
  102. @requires_grad.deleter
  103. def requires_grad(self):
  104. raise AttributeError("requires_grad is reserved for future use")
  105. def __hash__(self):
  106. return id(self)
  107. def __getnewargs__(self):
  108. r""" __getnewargs__ will be called for pickle serialization or deep copy
  109. """
  110. return (self.numpy(), self.dtype, self.device.logical_name)
  111. def __getstate__(self):
  112. r""" __getstate__ will be called for pickle serialization or deep copy
  113. """
  114. state = {
  115. "qdict": self.q_dict,
  116. }
  117. return state
  118. def __setstate__(self, state):
  119. self._q_dict = state.pop("qdict")
  120. tensor = Tensor
  121. class Parameter(Tensor):
  122. r"""
  123. A kind of Tensor that is to be considered a module parameter.
  124. """

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