19

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
    if(options["training"]["train"]):
        trainer.epoch(model, epoch)

    if(options["validation"]["validate"]):
    #if(epoch == 14):
        validator.epoch(model)

enter image description here enter image description here

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

3
  • 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
23

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.

6
  • 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
18

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():
    ...
    net=Net()
    pred_for_validation=net(input)
    ...

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
https://pytorch.org/docs/stable/notes/faq.html#my-model-reports-cuda-runtime-error-2-out-of-memory

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

entire_loss=0.0
for i in range(100):
    one_loss=loss_function(prediction,label)
    entire_loss+=one_loss.item()

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):
    ...
    optimizer.step()
    del intermediate_variable1,intermediate_variable2,...
2
  • 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
11

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

find the PID of python process from:

nvidia-smi

copy the PID and kill it by:

sudo kill -9 pid
1
  • 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
6

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

1
  • 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
1

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

import gc

gc.collect()

torch.cuda.empty_cache()
1
  • good if running on collab and need to reset GPU memory – jtomasrl Apr 5 at 13:43
0

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)
learn.fine_tune(1)
1
  • 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
0

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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