I ran a code about the deep learning network,first I trained the network,and it works well,but this error occurs when running to the validate network.

I have five epoch,every epoch has a process of training and validation. I met the error when validate in the first epoch. So I don not run the validate code, I found that code can run to the second epoch and have no error.

My code:

for epoch in range(10,15): # epoch: 10~15
        trainer.epoch(model, epoch)

    #if(epoch == 14):

enter image description here enter image description here

I feel the code of validation may have some bugs. But I can not find that.

  • How do you eventually fix the bug then? Do you reduce the batch size? – Lauraishere Oct 11 '20 at 18:58
  • @xiaoding, could you tell us please, what was the solution? – AqC Feb 9 at 14:50
  • @Lauraishere, they commented below that they reduced the batch size and it did not work. Same for me also. Did you solve your problem, and if yes, could you please share? – AqC Feb 9 at 14:56

The error, which you has provided is shown, because you ran out of memory on your GPU. A way to solve it is to reduce the batch size until your code will run without this error.

  • 1
    I tried it, I reduce the batch size to 8,but it also has the same error. – xiaoding chen Jan 27 '19 at 13:53
  • 3
    The amount of data in the training set is much larger than the verification set. Why is there no error in training, and there is time for validation? – xiaoding chen Jan 27 '19 at 13:55
  • Another approach which helped me was this: I ran this command in terminal sudo rm -rf ~/.nv and after rebooted my laptop. – K. Khanda Jan 27 '19 at 14:49
  • Also maybe tensors, which were used during the training are still active and then you are creating even more during the validation. – K. Khanda Jan 27 '19 at 14:51
  • You can check this issue here github.com/tensorflow/tensorflow/issues/19731 – K. Khanda Jan 27 '19 at 16:43

1.. When you only perform validation not training,
you don't need to calculate gradients for forward and backward phase.
In that situation, your code can be located under

with torch.no_grad():

Above code doesn't use GPU memory

2.. If you use += operator in your code,
it can accumulate gradient continuously in your gradient graph.
In that case, you need to use float() like following site

Even if docs guides with float(), in case of me, item() also worked like

for i in range(100):

3.. If you use for loop in training code,
data can be sustained until entire for loop ends.
So, in that case, you can explicitly delete variables after performing optimizer.step()

for one_epoch in range(100):
    del intermediate_variable1,intermediate_variable2,...
  • Regarding point 1, I use the pretrained bert model to transform the text data (only inference, no training). Still get cuda out of memory error. – Lei Hao Jul 24 '20 at 12:19
  • @LeiHao: Try reducing your batch size. – stackoverflowuser2010 Sep 18 '20 at 0:27

The best way is to find the process engaging gpu memory and kill it:

find the PID of python process from:


copy the PID and kill it by:

sudo kill -9 pid
  • 2
    what other programs could be taking up a lot of GPU memory other than something obvious like a game? – IntegrateThis Dec 10 '20 at 8:11

It might be for a number of reasons that I try to report in the following list:

  1. Modules parameters: check the number of dimensions for your modules. Linear layers that transform a big input tensor (e.g., size 1000) in another big output tensor (e.g., size 1000) will require a matrix whose size is (1000, 1000).
  2. RNN decoder maximum steps: if you're using an RNN decoder in your architecture, avoid looping for a big number of steps. Usually, you fix a given number of decoding steps that is reasonable for your dataset.
  3. Tensors usage: minimise the number of tensors that you create. The garbage collector won't release them until they go out of scope.
  4. Batch size: incrementally increase your batch size until you go out of memory. It's a common trick that even famous library implement (see the biggest_batch_first description for the BucketIterator in AllenNLP.

In addition, I would recommend you to have a look to the official PyTorch documentation: https://pytorch.org/docs/stable/notes/faq.html

  • 2
    The same network is used for training and validation. Why is there no error in training, and it happens when validation? – xiaoding chen Jan 27 '19 at 14:05

I had the same issue and this code worked for me :

import gc


  • good if running on collab and need to reset GPU memory – jtomasrl Apr 5 at 13:43

If someone arrives here because of fast.ai, the batch size of a loader such as ImageDataLoaders can be controlled via bs=N where N is the size of the batch.

My dedicated GPU is limited to 2GB of memory, using bs=8 in the following example worked in my situation:

from fastai.vision.all import *
path = untar_data(URLs.PETS)/'images'

def is_cat(x): return x[0].isupper()
dls = ImageDataLoaders.from_name_func(
    path, get_image_files(path), valid_pct=0.2, seed=42,
    label_func=is_cat, item_tfms=Resize(244), num_workers=0, bs=)

learn = cnn_learner(dls, resnet34, metrics=error_rate)
  • 1
    This is exactly where I was encountering this error - trying to execute the above jupyter cell for the book "Deep Learning for Coders with fastai and pytorch". However, at first, it didn't work. Even with num_workers=0 and bs=8, it ran out of memory. I tried using bs=4, I tried shutting down all other running apps, still out of memory. But then, I decided to reboot (always a good idea with Windows), and after that, it took a while, but ran successfully. In fact, thinking about it, I'd probably recommend rebooting first, then using just num_workers=0 (which is necessary under Windows). – John Deighan Nov 25 '20 at 14:02

I faced the same issue with my computer. All you have to do is customize your cfg file that suits your computer.Turns out my computer takes image size below 600 X 600 and when I adjusted the same in config file, the program ran smoothly.Picture Describing my cfg file

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