# Pytorch tensor to numpy array

I have a pytorch Tensor of shape [4, 3, 966, 1296]. I want to convert it to numpy array using the following code:

imgs = imgs.numpy()[:, ::-1, :, :]


How does that code work?

• Possible duplicate of Understanding Python's slice notation Apr 11, 2018 at 7:19
• your question is extremely confusing. You already have a .numpy() call. What exactly are you confused about? Do you not understand slicing notation in python or what? Jul 15, 2020 at 18:35
• btw you might need to call .detach() before saving your data e.g. x.detach().numpy() if your tensors have grads...also you might need to call cpu(). I think this should work: x.detach().cpu().numpy() Jul 15, 2020 at 18:41
• When converting to numpy you should call detach before cpu to prevent superfluous gradient copying. See discuss.pytorch.org/t/… Jul 15, 2020 at 18:45

I believe you also have to use .detach(). I had to convert my Tensor to a numpy array on Colab which uses CUDA and GPU. I did it like the following:

# this is just my embedding matrix which is a Torch tensor object
embedding = learn.model.u_weight

embedding_list = list(range(0, 64382))

input = torch.cuda.LongTensor(embedding_list)
tensor_array = embedding(input)
# the output of the line below is a numpy array
tensor_array.cpu().detach().numpy()

• Of course you had to use detach because you originally created a PyTorch Tensor on the GPU. That doesn't apply if it's created in CPU, as seen in the original post. Feb 8, 2019 at 3:50
• I think that even if your tensor is in the CPU, if you want a raw tensor, you have to .detach(). Mar 26, 2019 at 17:03
• When converting to numpy you should call detach before cpu to prevent superfluous gradient copying. See discuss.pytorch.org/t/… Sep 14, 2019 at 8:10

This worked for me:

np_arr = torch_tensor.cpu().detach().numpy()

• I think there is a difference in the order perhaps this is better? x.detach().cpu().numpy() Nov 15, 2021 at 18:11
• What is the use of cpu() here? Jul 4, 2022 at 12:42

There are 4 dimensions of the tensor you want to convert.

[:, ::-1, :, :]


: means that the first dimension should be copied as it is and converted, same goes for the third and fourth dimension.

::-1 means that for the second axes it reverses the the axes

• Are you certain? To me it looks more like axes 0,2,3 are copied as-is, and axis 1 is reversed. Apr 11, 2018 at 7:07
• Real answer: x.detach().cpu().numpy() Jul 15, 2020 at 18:44
• When converting to numpy you should call detach before cpu to prevent superfluous gradient copying. See discuss.pytorch.org/t/… Jul 15, 2020 at 18:45
• x.detach().cpu().numpy() works for me~! Aug 14, 2021 at 8:52

While other answers perfectly explained the question I will add some real life examples converting tensors to numpy array:

### Example: Shared storage

PyTorch tensor residing on CPU shares the same storage as numpy array na

import torch
a = torch.ones((1,2))
print(a)
na = a.numpy()
na=10
print(na)
print(a)


Output:

tensor([[1., 1.]])
[[10.  1.]]
tensor([[10.,  1.]])


### Example: Eliminate effect of shared storage, copy numpy array first

To avoid the effect of shared storage we need to copy() the numpy array na to a new numpy array nac. Numpy copy() method creates the new separate storage.

import torch
a = torch.ones((1,2))
print(a)
na = a.numpy()
nac = na.copy()
nac=10
​print(nac)
print(na)
print(a)


Output:

tensor([[1., 1.]])
[[10.  1.]]
[[1. 1.]]
tensor([[1., 1.]])


Now, just the nac numpy array will be altered with the line nac=10, na and a will remain as is.

### Example: CPU tensor with requires_grad=True

import torch
print(a)
na = a.detach().numpy()
na=10
print(na)
print(a)


Output:

tensor([[1., 1.]], requires_grad=True)
[[10.  1.]]


In here we call:

na = a.numpy()


This would cause: RuntimeError: Can't call numpy() on Tensor that requires grad. Use tensor.detach().numpy() instead., because tensors that require_grad=True are recorded by PyTorch AD. Note that tensor.detach() is the new way for tensor.data.

This explains why we need to detach() them first before converting using numpy().

### Example: CUDA tensor with requires_grad=False

a = torch.ones((1,2), device='cuda')
print(a)
na = a.to('cpu').numpy()
na=10
print(na)
print(a)


Output:

tensor([[1., 1.]], device='cuda:0')
[[10.  1.]]
tensor([[1., 1.]], device='cuda:0')


### Example: CUDA tensor with requires_grad=True

a = torch.ones((1,2), device='cuda', requires_grad=True)
print(a)
na = a.detach().to('cpu').numpy()
na=10
​print(na)
print(a)


Output:

tensor([[1., 1.]], device='cuda:0', requires_grad=True)
[[10.  1.]]


Without detach() method the error RuntimeError: Can't call numpy() on Tensor that requires grad. Use tensor.detach().numpy() instead. will be set.

Without .to('cpu') method TypeError: can't convert cuda:0 device type tensor to numpy. Use Tensor.cpu() to copy the tensor to host memory first. will be set.

You could use cpu() but instead of to('cpu') but I prefer the newer to('cpu').

You can use this syntax if some grads are attached with your variables.

y=torch.Tensor.cpu(x).detach().numpy()[:,:,:,-1]

• This doesn't contribute to this question any more than the other answers here. Mar 9, 2019 at 16:27
• What is with the x in the cpu call? Jun 28, 2020 at 2:56
• Are you sure you need the .cpu() call? Jul 15, 2020 at 18:39
• When converting to numpy you should call detach before cpu to prevent superfluous gradient copying. See discuss.pytorch.org/t/… Jul 15, 2020 at 18:43

Your question is very poorly worded. Your code (sort of) already does what you want. What exactly are you confused about? x.numpy() answer the original title of your question:

Pytorch tensor to numpy array

Anyway, just in case this is useful to others. You might need to call detach for your code to work. e.g.

RuntimeError: Can't call numpy() on Variable that requires grad.


So call .detach(). Sample code:

# creating data and running through a nn and saving it

import torch
import torch.nn as nn

from pathlib import Path
from collections import OrderedDict

import numpy as np

path = Path('~/data/tmp/').expanduser()
path.mkdir(parents=True, exist_ok=True)

num_samples = 3
Din, Dout = 1, 1
lb, ub = -1, 1

x = torch.torch.distributions.Uniform(low=lb, high=ub).sample((num_samples, Din))

f = nn.Sequential(OrderedDict([
('f1', nn.Linear(Din,Dout)),
('out', nn.SELU())
]))
y = f(x)

# save data
y.numpy()
x_np, y_np = x.detach().cpu().numpy(), y.detach().cpu().numpy()
np.savez(path / 'db', x=x_np, y=y_np)

print(x_np)


cpu goes after detach. See: https://discuss.pytorch.org/t/should-it-really-be-necessary-to-do-var-detach-cpu-numpy/35489/5

Also I won't make any comments on the slicking since that is off topic and that should not be the focus of your question. See this:

Understanding slice notation