pytorch 禁止/允许计算局部梯度的操作

作者:Answerlzd 时间:2021-01-17 01:55:35 

一、禁止计算局部梯度

torch.autogard.no_grad: 禁用梯度计算的上下文管理器。

当确定不会调用Tensor.backward()计算梯度时,设置禁止计算梯度会减少内存消耗。如果需要计算梯度设置Tensor.requires_grad=True

两种禁用方法:

将不用计算梯度的变量放在with torch.no_grad()里


>>> x = torch.tensor([1.], requires_grad=True)
>>> with torch.no_grad():
...   y = x * 2
>>> y.requires_grad
Out[12]:False

使用装饰器 @torch.no_gard()修饰的函数,在调用时不允许计算梯度


>>> @torch.no_grad()
... def doubler(x):
...     return x * 2
>>> z = doubler(x)
>>> z.requires_grad
Out[13]:False

二、禁止后允许计算局部梯度

torch.autogard.enable_grad :允许计算梯度的上下文管理器

在一个no_grad上下文中使能梯度计算。在no_grad外部此上下文管理器无影响.

用法和上面类似:

使用with torch.enable_grad()允许计算梯度


>>> x = torch.tensor([1.], requires_grad=True)
>>> with torch.no_grad():
...   with torch.enable_grad():
...     y = x * 2
>>> y.requires_grad
Out[14]:True

>>> y.backward()  # 计算梯度
>>> x.grad
Out[15]: tensor([2.])

在禁止计算梯度下调用被允许计算梯度的函数,结果可以计算梯度


>>> @torch.enable_grad()
... def doubler(x):
...     return x * 2

>>> with torch.no_grad():
...     z = doubler(x)
>>> z.requires_grad

Out[16]:True

三、是否计算梯度


torch.autograd.set_grad_enable()

可以作为一个函数使用:


>>> x = torch.tensor([1.], requires_grad=True)
>>> is_train = False
>>> with torch.set_grad_enabled(is_train):
...   y = x * 2
>>> y.requires_grad
Out[17]:False

>>> torch.set_grad_enabled(True)
>>> y = x * 2
>>> y.requires_grad
Out[18]:True

>>> torch.set_grad_enabled(False)
>>> y = x * 2
>>> y.requires_grad
Out[19]:False

总结:

单独使用这三个函数时没有什么,但是若是嵌套,遵循就近原则。


x = torch.tensor([1.], requires_grad=True)

with torch.enable_grad():
   torch.set_grad_enabled(False)
   y = x * 2
   print(y.requires_grad)
Out[20]: False

torch.set_grad_enabled(True)
with torch.no_grad():
   z = x * 2
   print(z.requires_grad)
Out[21]:False

补充:pytorch局部范围内禁用梯度计算,no_grad、enable_grad、set_grad_enabled使用举例

pytorch 禁止/允许计算局部梯度的操作 pytorch 禁止/允许计算局部梯度的操作

原文及翻译


Locally disabling gradient computation
在局部区域内关闭(禁用)梯度的计算.
The context managers torch.no_grad(), torch.enable_grad(),
and torch.set_grad_enabled() are helpful for locally disabling
and enabling gradient computation. See Locally disabling gradient
computation for more details on their usage. These context
managers are thread local, so they won't work if you send
work to another thread using the threading module, etc.
上下文管理器torch.no_grad()、torch.enable_grad()和
torch.set_grad_enabled()可以用来在局部范围内启用或禁用梯度计算.
在Locally disabling gradient computation章节中详细介绍了
局部禁用梯度计算的使用方式.这些上下文管理器具有线程局部性,
因此,如果你使用threading模块来将工作负载发送到另一个线程,
这些上下文管理器将不会起作用.

no_grad   Context-manager that disabled gradient calculation.
no_grad   用于禁用梯度计算的上下文管理器.
enable_grad  Context-manager that enables gradient calculation.
enable_grad  用于启用梯度计算的上下文管理器.
set_grad_enabled  Context-manager that sets gradient calculation to on or off.
set_grad_enabled  用于设置梯度计算打开或关闭状态的上下文管理器.

例子1


Microsoft Windows [版本 10.0.18363.1440]
(c) 2019 Microsoft Corporation。保留所有权利。
C:\Users\chenxuqi>conda activate pytorch_1.7.1_cu102
(pytorch_1.7.1_cu102) C:\Users\chenxuqi>python
Python 3.7.9 (default, Aug 31 2020, 17:10:11) [MSC v.1916 64 bit (AMD64)] :: Anaconda, Inc. on win32
Type "help", "copyright", "credits" or "license" for more information.
>>> import torch
>>> torch.manual_seed(seed=20200910)
<torch._C.Generator object at 0x000001A2E55A8870>
>>> a = torch.randn(3,4,requires_grad=True)
>>> a
tensor([[ 0.2824, -0.3715,  0.9088, -1.7601],
       [-0.1806,  2.0937,  1.0406, -1.7651],
       [ 1.1216,  0.8440,  0.1783,  0.6859]], requires_grad=True)
>>> b = a * 2
>>> b
tensor([[ 0.5648, -0.7430,  1.8176, -3.5202],
       [-0.3612,  4.1874,  2.0812, -3.5303],
       [ 2.2433,  1.6879,  0.3567,  1.3718]], grad_fn=<MulBackward0>)
>>> b.requires_grad
True
>>> b.grad
__main__:1: UserWarning: The .grad attribute of a Tensor that is not a leaf Tensor is being accessed. Its .grad attribute won't be populated during autograd.backward(). If you indeed want the gradient for a non-leaf Tensor, use .retain_grad() on the non-leaf Tensor. If you access the non-leaf Tensor by mistake, make sure you access the leaf Tensor instead. See github.com/pytorch/pytorch/pull/30531 for more informations.
>>> print(b.grad)
None
>>> a.requires_grad
True
>>> a.grad
>>> print(a.grad)
None
>>>
>>> with torch.no_grad():
...     c = a * 2
...
>>> c
tensor([[ 0.5648, -0.7430,  1.8176, -3.5202],
       [-0.3612,  4.1874,  2.0812, -3.5303],
       [ 2.2433,  1.6879,  0.3567,  1.3718]])
>>> c.requires_grad
False
>>> print(c.grad)
None
>>> a.grad
>>>
>>> print(a.grad)
None
>>> c.sum()
tensor(6.1559)
>>>
>>> c.sum().backward()
Traceback (most recent call last):
 File "<stdin>", line 1, in <module>
 File "D:\Anaconda3\envs\pytorch_1.7.1_cu102\lib\site-packages\torch\tensor.py", line 221, in backward
   torch.autograd.backward(self, gradient, retain_graph, create_graph)
 File "D:\Anaconda3\envs\pytorch_1.7.1_cu102\lib\site-packages\torch\autograd\__init__.py", line 132, in backward
   allow_unreachable=True)  # allow_unreachable flag
RuntimeError: element 0 of tensors does not require grad and does not have a grad_fn
>>>
>>>
>>> b.sum()
tensor(6.1559, grad_fn=<SumBackward0>)
>>> b.sum().backward()
>>>
>>>
>>> a.grad
tensor([[2., 2., 2., 2.],
       [2., 2., 2., 2.],
       [2., 2., 2., 2.]])
>>> a.requires_grad
True
>>>
>>>

例子2


Microsoft Windows [版本 10.0.18363.1440]
(c) 2019 Microsoft Corporation。保留所有权利。
C:\Users\chenxuqi>conda activate pytorch_1.7.1_cu102
(pytorch_1.7.1_cu102) C:\Users\chenxuqi>python
Python 3.7.9 (default, Aug 31 2020, 17:10:11) [MSC v.1916 64 bit (AMD64)] :: Anaconda, Inc. on win32
Type "help", "copyright", "credits" or "license" for more information.
>>> import torch
>>> torch.manual_seed(seed=20200910)
<torch._C.Generator object at 0x000002109ABC8870>
>>>
>>> a = torch.randn(3,4,requires_grad=True)
>>> a
tensor([[ 0.2824, -0.3715,  0.9088, -1.7601],
       [-0.1806,  2.0937,  1.0406, -1.7651],
       [ 1.1216,  0.8440,  0.1783,  0.6859]], requires_grad=True)
>>> a.requires_grad
True
>>>
>>> with torch.set_grad_enabled(False):
...     b = a * 2
...
>>> b
tensor([[ 0.5648, -0.7430,  1.8176, -3.5202],
       [-0.3612,  4.1874,  2.0812, -3.5303],
       [ 2.2433,  1.6879,  0.3567,  1.3718]])
>>> b.requires_grad
False
>>>
>>> with torch.set_grad_enabled(True):
...     c = a * 3
...
>>> c
tensor([[ 0.8472, -1.1145,  2.7263, -5.2804],
       [-0.5418,  6.2810,  3.1219, -5.2954],
       [ 3.3649,  2.5319,  0.5350,  2.0576]], grad_fn=<MulBackward0>)
>>> c.requires_grad
True
>>>
>>> d = a * 4
>>> d.requires_grad
True
>>>
>>> torch.set_grad_enabled(True)  # this can also be used as a function
<torch.autograd.grad_mode.set_grad_enabled object at 0x00000210983982C8>
>>>
>>> # 以函数调用的方式来使用
>>>
>>> e = a * 5
>>> e
tensor([[ 1.4119, -1.8574,  4.5439, -8.8006],
       [-0.9030, 10.4684,  5.2031, -8.8257],
       [ 5.6082,  4.2198,  0.8917,  3.4294]], grad_fn=<MulBackward0>)
>>> e.requires_grad
True
>>>
>>> d
tensor([[ 1.1296, -1.4859,  3.6351, -7.0405],
       [-0.7224,  8.3747,  4.1625, -7.0606],
       [ 4.4866,  3.3759,  0.7133,  2.7435]], grad_fn=<MulBackward0>)
>>>
>>> torch.set_grad_enabled(False) # 以函数调用的方式来使用
<torch.autograd.grad_mode.set_grad_enabled object at 0x0000021098394C48>
>>>
>>> f = a * 6
>>> f
tensor([[  1.6943,  -2.2289,   5.4527, -10.5607],
       [ -1.0836,  12.5621,   6.2437, -10.5908],
       [  6.7298,   5.0638,   1.0700,   4.1153]])
>>> f.requires_grad
False
>>>
>>>
>>>

以上为个人经验,希望能给大家一个参考,也希望大家多多支持脚本之家。如有错误或未考虑完全的地方,望不吝赐教。

来源:https://blog.csdn.net/Answer3664/article/details/99460175

标签:pytorch,计算,梯度
0
投稿

猜你喜欢

  • python 字符串详解

    2022-09-27 04:44:25
  • Java使用正则表达式(regex)匹配中文实例代码

    2023-06-17 07:59:46
  • 在ASP.NET 2.0中操作数据之三十七:DataList批量更新

    2023-07-23 10:59:03
  • Python NumPy教程之数据类型对象详解

    2022-03-29 09:05:19
  • Swoole webSocket消息服务系统压力测试解析

    2023-06-09 01:55:45
  • 使用python编写简单计算器

    2023-08-27 17:07:46
  • 使用python库xlsxwriter库来输出各种xlsx文件的示例

    2022-04-27 14:50:30
  • 浅谈Python编程中3个常用的数据结构和算法

    2022-02-11 20:15:04
  • python列表操作之extend和append的区别实例分析

    2023-08-02 15:14:30
  • Oracle 函数大全[字符串函数,数学函数,日期函数]第1/4页

    2009-03-04 10:56:00
  • ASP和Javascript中取整函数的应用

    2009-06-07 18:38:00
  • php7安装openssl扩展方法

    2023-11-14 17:34:14
  • MYSQL教程:服务器优化和硬件优化

    2009-02-27 15:43:00
  • python 图像平移和旋转的实例

    2021-03-06 23:59:49
  • 解决jupyter加载文件失败的问题

    2022-07-21 19:17:05
  • Python采用socket模拟TCP通讯的实现方法

    2021-04-03 09:43:23
  • pandas loc与iloc用法及区别

    2023-01-22 08:26:53
  • python网络编程学习笔记(四):域名系统

    2021-07-15 10:16:49
  • 用Python下载一个网页保存为本地的HTML文件实例

    2023-04-15 18:41:53
  • 分享4个Python中的非常好用的自动化脚本

    2023-12-03 09:59:17
  • asp之家 网络编程 m.aspxhome.com