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grad_manager.py 15 kB

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  1. # MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
  2. #
  3. # Copyright (c) 2014-2021 Megvii Inc. All rights reserved.
  4. #
  5. # Unless required by applicable law or agreed to in writing,
  6. # software distributed under the License is distributed on an
  7. # "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  8. import weakref
  9. from collections import OrderedDict
  10. from typing import Callable, Iterable, List, Union
  11. from ..core._imperative_rt.core2 import pop_scope, push_scope, set_option
  12. from ..core.autodiff.grad import Grad
  13. from ..logger import get_logger
  14. from ..tensor import Tensor
  15. from ..utils.future import Future
  16. logger = get_logger(__name__)
  17. backwarding_grad_manager = None
  18. def get_backwarding_grad_manager():
  19. return backwarding_grad_manager
  20. class AttachSpec:
  21. __slots__ = "tensor", "callbacks"
  22. class GradManager:
  23. r"""GradManager computes gradients or more generally, vector-Jacobian product, by reverse mode
  24. automatic differentiation (a.k.a. back propagation).
  25. Reverse mode autodiff normally reuses many intermediate tensors for best computation efficiency.
  26. In a read-eval-print-loop (REPL) environment however, it is impossible to known how the user
  27. would take gradients later thus which tensors to keep. To solve this problem, the user must
  28. somehow declare beforehand which gradient could possibly be taken. With GradManager, users are
  29. required to call the :meth:`attach` method on a tensor if they want to take gradients with
  30. respect to it later. Furthermore, any computation on a tensor before it is attached is
  31. completely ignored from the autodiff perspective, so :meth:`attach` must be called before any
  32. computation that needs differentiation.
  33. For example, the following symbolic differentiation code
  34. .. code-block::
  35. x = get_x()
  36. y = f(x)
  37. dy = ones_like(y)
  38. dx = vjp(y, x, dy) # vector-Jacobian product
  39. can be rewriten using GradManager for REPL environment as
  40. .. code-block::
  41. with GradManager() as gm:
  42. x = get_x()
  43. gm.attach(x) # must be placed before any computation on x that needs differentiation
  44. y = f(x)
  45. dy = ones_like(y)
  46. gm.backward(y, dy) # doesn't need x, already known via attach()
  47. dx = x.grad # backward() saves result to .grad attribute
  48. A more realistic example of training a neural network would be like
  49. .. code-block::
  50. gm = GradManager()
  51. gm.attach(model.parameters())
  52. for data in dataset:
  53. with gm:
  54. loss = model(data)
  55. gm.backward(loss)
  56. # gradients w.r.t. parameters is accumulated into their .grad attributes
  57. You can also use ``record()`` and ``release()`` method instead of ``with`` context:
  58. .. code-block::
  59. gm = GradManager()
  60. gm.attach(model.parameters())
  61. for data in dataset:
  62. gm.record()
  63. loss = model(data)
  64. gm.backward(loss)
  65. # backward() will clear recorded history and free resources
  66. # call release() if backward() is not called
  67. # gm.release()
  68. For your convenience, GradManager may (not must) be reused. As shown in the examples, you
  69. only need to attach a tensor once and GradManager will remember it afterwards.
  70. However, a single GradManager can record only one computation history at a time. To run
  71. multiple differentiations simultaneously or perform high order differentiation, create
  72. as many GradManager as you need.
  73. .. note::
  74. Mutable tensors introduce ambiguities when doing symbolic differentiation: which version
  75. of the tensor are we referring to? For attached tensors, GradManager resolves this
  76. ambiguity by "snapshoting" them on first encounter, either on :meth:`record` (or entering
  77. with statement) if tensor is attached before :meth:`record`, or on :meth:`attach` if
  78. GradManager is already recording. Attached tensors will then be interpreted as their
  79. snapshotted version for differentiation purpose. The same ambiguity on the first parameter
  80. of :meth:`backward` is simply resolved by using the latest version.
  81. Typically, in data parallel, we would like to average the gradients across
  82. processes. Users will finally get the averaged gradients if an "AllReduce"
  83. callback is registered as follows:
  84. .. code-block::
  85. import megengine.distributed as dist
  86. gm = GradManager()
  87. gm.attach(model.parameters(), callback=dist.make_allreduce_cb("MEAN"))
  88. """
  89. def __init__(self):
  90. self._attach_specs = {} # id(Tensor) -> AttachSpec
  91. self._recording = False
  92. self._grad = None
  93. self._after_backward_callback = []
  94. self._gradients = {}
  95. def attached_tensors(self):
  96. r"""Return attached tensor list from :meth:`attach`."""
  97. return [spec.tensor() for spec in self._attach_specs.values()]
  98. def attach(self, tensors: Iterable[Tensor], callbacks=None):
  99. r"""Instruct GradManager to track operations on tensors, so that gradients with respect
  100. to those tensors could be evaluated later.
  101. :meth:`attach` also accepts a list of callbacks, which will be called with the tensor and
  102. its gradient during :meth:`backward`. The signature of callbacks should look like:
  103. .. code-block::
  104. def callback(tensor: Tensor, grad: Tensor) -> Tensor:
  105. ...
  106. # returned grad is passed to subsequent callbacks
  107. # and finally accumulated to the .grad attribute of tensor
  108. return grad
  109. :meth:`attach` calls with overlapping tensors will result in their callbacks concatenated,
  110. independently for each tensor. For example,
  111. .. code-block::
  112. gm.attach([x, y], callbacks=[f])
  113. gm.attach([y], callbacks=[g])
  114. is equivalent to
  115. .. code-block::
  116. gm.attach([x], callbacks=[f])
  117. gm.attach([y], callbacks=[f, g])
  118. The effect of :meth:`attach` will persist across multiple uses of the GradManager. When
  119. reusing a GradManager, it is likely a mistake to call :meth:`attach` on the same set of
  120. tensors and callbacks repeatedly, which may grow the callback list indefinitely.
  121. .. note::
  122. When reusing a GradManager, it is sometimes desirable to attach temporary tensors each
  123. time, e.g. for computing gradients of inputs of a neural network. GradManager tries to
  124. accommodate such usages by holding weak references to attached tensors. Most of the
  125. times, this should be enough to prevent resource leak. Unfortunately, there are still
  126. some pitfalls left:
  127. - Callbacks should not hold strong references, directly or indirectly, to attached
  128. tensors. Any strong reference, including those from callbacks, will prevent
  129. garbage collection (even by the cycle collector!) of a attached tensor, until
  130. the GradManager object is garbage collected.
  131. Please also note that GradManager might hold additional strong references to attached
  132. tensors when it is in use. This note only covers potential resource leaks across
  133. multiple uses of a GradManager, which is unrelated to whether resources is timely
  134. released within a single use.
  135. Args:
  136. tensors: tensor or list of tensors to track
  137. callbacks: callback or list of callbacks
  138. """
  139. if callbacks is None:
  140. callbacks = []
  141. if isinstance(callbacks, Callable):
  142. callbacks = [callbacks]
  143. if isinstance(tensors, Tensor):
  144. tensors = [tensors]
  145. def make_spec(tensor):
  146. selfref = weakref.ref(self)
  147. key = id(tensor)
  148. def deleter(_):
  149. self = selfref()
  150. if self is not None:
  151. del self._attach_specs[key]
  152. spec = AttachSpec()
  153. spec.tensor = weakref.ref(tensor, deleter)
  154. spec.callbacks = []
  155. return spec
  156. for x in tensors:
  157. assert isinstance(x, Tensor), "Object to be attached should be Tensor"
  158. spec = self._attach_specs.get(id(x))
  159. new_attach = spec is None
  160. if spec is None:
  161. spec = make_spec(x)
  162. self._attach_specs[id(x)] = spec
  163. spec.callbacks.extend(callbacks)
  164. if new_attach and self._recording:
  165. self._do_record(spec)
  166. return self
  167. def _register_after_backward_callback(self, callback):
  168. self._after_backward_callback.append(callback)
  169. return self
  170. def backward(
  171. self,
  172. y: Union[Tensor, List[Tensor]] = None,
  173. dy: Union[Tensor, List[Tensor]] = None,
  174. ):
  175. r"""Compute gradients (or vector-Jacobian product) for all attached tensors, accumulate to
  176. corresponding .grad attribute, and release resources along the way.
  177. :meth:`backward` computes the vector-Jacobian product :math:`dx_j = \sum_{i} dy_i J_{ij}`
  178. where :math:`J_{ij} = ∂y_i/∂x_j` is the Jacobian matrix between vector variables :math:`y`
  179. and :math:`x`, with all vectors involved represented as a list of tensors, in the sense of
  180. direct sums (or flatten-and-concatenate). :math:`y` and :math:`dy` are passed as the first
  181. and second parameter respectively, whereas :math:`x` is directly taken from the list of
  182. all attached tensors. The result :math:`dx` is also not returned. Instead, it is directly
  183. accumulated into the .grad attribute of matching attached tensors (a.k.a. :math:`x`). This
  184. can be done unambiguously since :math:`dx` as a list of tensors has the same structure as
  185. :math:`x`.
  186. If :math:`y` is a scalar and :math:`dy` is chosen to be 1, the vector-Jacobian product
  187. yield gradient of :math:`y` with repect to :math:`x` as a special case. In that case,
  188. you will be able to omit the :math:`dy` parameter and :meth:`backward` will automatically
  189. use 1 for it and compute the gradient.
  190. :meth:`backward` consumes all resources held by this GradManager and releases them in the
  191. process of this call. When the call successfully finishes, the GradManager will be put back
  192. to an inactive state.
  193. Args:
  194. y: tensor or list of tensors
  195. dy: tensor or list of tensors. Defaults to 1 if y is scalar
  196. """
  197. push_scope("backward")
  198. set_option("record_computing_path", 0)
  199. from ..functional import ones_like
  200. global backwarding_grad_manager
  201. cache = backwarding_grad_manager
  202. backwarding_grad_manager = self
  203. if not self._recording:
  204. raise RuntimeError(
  205. "no computation history. "
  206. "did you forget record() or "
  207. "call a method that clears the history?"
  208. )
  209. assert self._grad is not None
  210. # These checks should be consistent with GradScaler's
  211. if y is None:
  212. ys = []
  213. elif isinstance(y, (tuple, list)):
  214. ys = y
  215. else:
  216. ys = [y]
  217. if dy is None:
  218. dys = [ones_like(y) for y in ys]
  219. elif isinstance(dy, (tuple, list)):
  220. dys = dy
  221. else:
  222. dys = [dy]
  223. try:
  224. self._grad(ys, dys)
  225. for callback in self._after_backward_callback:
  226. callback()
  227. for id_, grad in self._gradients.items():
  228. if isinstance(grad, Future):
  229. grad = grad.get()
  230. spec = self._attach_specs.get(id_)
  231. tensor = spec and spec.tensor()
  232. if tensor is not None:
  233. if tensor.grad is None:
  234. tensor.grad = grad
  235. else:
  236. tensor.grad += grad
  237. finally:
  238. self.release()
  239. backwarding_grad_manager = cache
  240. set_option("record_computing_path", 1)
  241. pop_scope("backward")
  242. def record(self):
  243. r"""Start recording operations
  244. After this call, you will be able to call :meth:`backward`.
  245. """
  246. if self._recording:
  247. raise RuntimeError("already recording")
  248. grad = Grad()
  249. self._recording = True
  250. self._grad = grad
  251. grad.__enter__()
  252. for spec in self._attach_specs.values():
  253. self._do_record(spec)
  254. def _do_record(self, spec):
  255. tensor = spec.tensor()
  256. if tensor is None:
  257. return
  258. def callback(grad, callbacks=spec.callbacks):
  259. from ..functional import ones_like
  260. for cb in callbacks:
  261. grad = cb(tensor, grad)
  262. self._gradients[id(tensor)] = grad
  263. # NOTE: override prev callback wrt when called serval times
  264. self._grad.wrt(tensor, callback=callback)
  265. def release(self):
  266. r"""Stop recording operations and release resources kept for gradient computation
  267. After this call, you will not be able to call :meth:`backward`.
  268. """
  269. if self._grad is not None:
  270. self._grad.__exit__(None, None, None)
  271. self._grad = None
  272. self._recording = False
  273. self._gradients = dict()
  274. def __enter__(self):
  275. self.record()
  276. return self
  277. def __exit__(self, exc_type, exc_val, exc_tb):
  278. self.release()
  279. def __or__(self, other):
  280. if isinstance(other, GradManager):
  281. return GradManagerGroup([self, other])
  282. return NotImplemented
  283. __ror__ = __or__
  284. class GradManagerGroup:
  285. def __init__(self, gms) -> None:
  286. self._gms = list(gms)
  287. def merge_with(self, other):
  288. if isinstance(other, GradManager):
  289. other = GradManagerGroup([other])
  290. elif not isinstance(other, GradManagerGroup):
  291. return NotImplemented
  292. return GradManagerGroup([*self._gms, *other._gms])
  293. __or__ = merge_with
  294. __ror__ = merge_with
  295. def __enter__(self):
  296. Grad.stack.append([])
  297. Grad.begin_group()
  298. for gm in self._gms:
  299. gm.record()
  300. assert gm._grad is not None
  301. Grad.end_group()
  302. def __exit__(self, exc_type, exc_val, exc_tb):
  303. for gm in reversed(self._gms):
  304. gm.release()
  305. assert gm._grad is None