DEV Community

Super Kai (Kazuya Ito)
Super Kai (Kazuya Ito)

Posted on

remainder in PyTorch

Buy Me a Coffee

*Memos:

remainder() can do the modulo(mod) calculation of Python’s modulus operation with two of the 0D or more D tensors of zero or more elements or the 0D or more D tensor of zero or more elements and a scalar, getting the 0D or more D tensor of zero or more elements as shown below:

*Memos:

  • remainder() can be used with torch or a tensor.
  • The 1st argument(input) with torch(Type:tensor or scalar of int or float) or using a tensor(Type:tensor of int or float)(Required). *torch must use a scalar without input=.
  • The 2nd argument with torch or the 1st argument with a tensor is other(Required-Type:tensor or scalar of int or float).
  • There is out argument with torch(Optional-Default:None-Type:tensor): *Memos:
    • out= must be used.
    • My post explains out argument.
  • Setting 0(int) to other gets ZeroDivisionError.
  • The combination of a scalar(input) and a scalar(other) cannot be used.
  • The result has the same sign as other.
import torch

tensor1 = torch.tensor([9, 7, 6])
tensor2 = torch.tensor([[4, -4, 3], [-2, 5, -5]])

torch.remainder(input=tensor1, other=tensor2)
tensor1.remainder(other=tensor2)
# tensor([[1, -1, 0], [-1, 2, -4]])

torch.remainder(9, other=tensor2)
# tensor([[1, -3, 0], [-1, 4, -1]])

torch.remainder(input=tensor1, other=4)
# tensor([1, 3, 2])

tensor1 = torch.tensor([-9, -7, -6])
tensor2 = torch.tensor([[4, -4, 3], [-2, 5, -5]])

torch.remainder(input=tensor1, other=tensor2)
# tensor([[3, -3, 0],

torch.remainder(-9, other=tensor2)
# tensor([[3, -1, 0], [-1, 1, -4]])

torch.remainder(input=tensor1, other=4)
# tensor([3, 1, 2])

tensor1 = torch.tensor([9.75, 7.08, 6.26])
tensor2 = torch.tensor([[4.26, -4.54, 3.37], [-2.16, 5.43, -5.98]])

torch.remainder(input=tensor1, other=tensor2)
# tensor([[1.2300, -2.0000, 2.8900],
#         [-1.0500, 1.6500, -5.7000]])

torch.remainder(9.75, other=tensor2)
# tensor([[1.2300, -3.8700, 3.0100], [-1.0500, 4.3200, -2.2100]])

torch.remainder(input=tensor1, other=4.26)
# tensor([1.2300, 2.8200, 2.0000])
Enter fullscreen mode Exit fullscreen mode

Billboard image

The Next Generation Developer Platform

Coherence is the first Platform-as-a-Service you can control. Unlike "black-box" platforms that are opinionated about the infra you can deploy, Coherence is powered by CNC, the open-source IaC framework, which offers limitless customization.

Learn more

Top comments (0)

Billboard image

Monitoring as code

With Checkly, you can use Playwright tests and Javascript to monitor end-to-end scenarios in your NextJS, Astro, Remix, or other application.

Get started now!

👋 Kindness is contagious

Discover a treasure trove of wisdom within this insightful piece, highly respected in the nurturing DEV Community enviroment. Developers, whether novice or expert, are encouraged to participate and add to our shared knowledge basin.

A simple "thank you" can illuminate someone's day. Express your appreciation in the comments section!

On DEV, sharing ideas smoothens our journey and strengthens our community ties. Learn something useful? Offering a quick thanks to the author is deeply appreciated.

Okay