While running kubeflow pipeline having code that uses tensorflow 2.0. below error is displayed at end of each epoch

W tensorflow/core/kernels/data/generator_dataset_op.cc:103] Error occurred when finalizing GeneratorDataset iterator: Cancelled: Operation was cancelled

Also, after some epochs, it does not show log and shows this error

This step is in Failed state with this message: The node was low on resource: memory. Container main was using 100213872Ki, which exceeds its request of 0. Container wait was using 25056Ki, which exceeds its request of 0.

  • I'm getting the first error as well. Haven't seen the second error yet. – markemus Feb 5 '20 at 23:07

In my case, I didn't match the batch_size and steps_per_epoch

For example,

his = Test_model.fit_generator(datagen.flow(trainrancrop_images, trainrancrop_labels, batch_size=batchsize), steps_per_epoch=len(trainrancrop_images)/batchsize, validation_data=(test_images, test_labels), epochs=1, callbacks=[callback])

batch_size in the datagen.flow must correspond to the steps_per_epoch in Test_model.fit_generator (actually, I used the wrong value on the steps_per_epoch)

This is one of the cases for the Error, I guess.

As a result, I think the problem arises when there is wrong correspondence on the batch size and steps(iterations)

Maybe the floats can be a problem when you get the step by dividing...

Check your code about this issue.

Good luck :)


This was due to incompatible CUDA and Tensorflow versions. below versions work well with each other





Upgrading tensorflow from 2.1 to 2.2 fixed this issue for me. I didn't have to go to tf-nightly version.

  • 1
    Upgraded TensorFlow 2.1 to TensorFlow 2.2 and this issue is gone. me – user3284804 Jul 2 '20 at 23:37
  • @user3284804 - Please consider upvoting if this answer helped you. Thanks. – Safwan Jul 3 '20 at 5:10
  • I am running tensorflow-gpu on a conda env and it keeps installing version 2.1 and if I try to upgrade it using pip3 install --upgrade tensorflow-gpu i can't use it no more does anyone know how to upgrade a tensorflow-gpu version inside of a env – Dhouibi iheb Sep 7 '20 at 1:23
  • @Dhouibiiheb What do you mean by you cannot use it anymore? – Safwan Sep 8 '20 at 3:38
  • @Safwan meaning that when I try the following : pip install --upgrade tensorflow==2.2 / 2.3 tensorflow won't work anymore.. as far as I know, conda env supports tf 2.1 for now, not sure though – Dhouibi iheb Sep 9 '20 at 5:10

I have the same problem. People claimed that warming is superfluous and it has been removed in the tf-nightly, see here. But the memory leak is still there for each epoch.


In my case: I installed tf-nightly. Now it's working, Though I am new to tensorflow. I followed this link

You can try.


To fix the problem you can add workers=1 in model.fit(...).


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.