如何在 PyTorch 中访问和修改张量的值?
我们使用索引和切片来访问张量的值。索引用于访问张量的单个元素的值,而切片用于访问元素序列的值。
我们使用赋值运算符来修改张量的值。使用赋值运算符分配新值/秒将使用新值/秒修改张量。
脚步
导入所需的库。在这里,所需的库是torch。
定义PyTorch张量。
使用索引访问特定索引处的单个元素的值或使用slicing访问元素序列的值。
使用赋值运算符用新值修改访问的值。
最后,打印张量以检查是否使用新值修改了张量。
示例1
# Python program to access and modify values of a tensor in PyTorch # Import the libraries import torch # Define PyTorch Tensor a = torch.Tensor([[3, 5],[1, 2],[5, 7]]) print("a:\n",a) # Access a value at index [1,0]-> 2nd row, 1st Col using indexing b = a[1,0] print("a[1,0]:\n", b) # Other indexing method to access value c = a[1][0] print("a[1][0]:\n",c) # Modifying the value 1 with new value 9 # assignment operator is used to modify with new value a[1,0] = 9 print("tensor 'a' after modifying value at a[1,0]:") print("a:\n",a)输出结果
a: tensor([[3., 5.], [1., 2.], [5., 7.]]) a[1,0]: tensor(1.) a[1][0]: tensor(1.) tensor 'a' after modifying value at a[1,0]: a: tensor([[3., 5.], [9., 2.], [5., 7.]])
示例2
# Python program to access and modify values of a tensor in PyTorch # Import necessary libraries import torch # Define PyTorch Tensor a = torch.Tensor([[3, 5],[1, 2],[5, 7]]) print("a:\n", a) # Access all values of 2nd row using slicing b = a[1] print("a[1]:\n", a[1]) # Access all values of 1st and 2nd rows b = a[0:2] print("a[0:2]:\n" , a[0:2]) # Access all values of 2nd col c = a[:,1] print("a[:,1]:\n", a[:,1]) # Access values from first two rows but 2nd col print("a[0:2, 1]:\n", a[0:2, 1]) # assignment operator is used to modify with new value # Modifying the values of 2nd row a[1] = torch.Tensor([9, 9]) print("After modifying a[1]:\n", a) # Modify values of first two rows but 2nd col a[0:2, 1] = torch.Tensor([4, 4]) print("After modifying a[0:2, 1]:\n", a)输出结果
a: tensor([[3., 5.], [1., 2.], [5., 7.]]) a[1]: tensor([1., 2.]) a[0:2]: tensor([[3., 5.], [1., 2.]]) a[:,1]: tensor([5., 2., 7.]) a[0:2, 1]: tensor([5., 2.]) After modifying a[1]: tensor([[3., 5.], [9., 9.], [5., 7.]]) After modifying a[0:2, 1]: tensor([[3., 4.], [9., 4.], [5., 7.]])