Different calls of tf.data.Dataset.take() return different batches from the given dataset. Are those samples chosen randomly or is there another mechanism at play?

This is all the more confusing that the documentation makes no reference as to the randomness of the sampling.


2 Answers 2


Most probably, you might be using data.shuffle() before tf.data.Dataset.take().

Commenting that out should make the iterator behave as intended: take the same results over and over for each iterator run.

-- Or if you used an api that automatically shuffles without asking like image_dataset_from_directory

shuffle: Whether to shuffle the data. Default: True. 
If set to False, sorts the data in alphanumeric order.

You would have to explicitly set shuffle=False when creating the dataset

  • 4
    The code I was using came from this notebook. It turns out that make_csv_dataset() is shuffling by default, thereby making it somewhat opaque, and thus returned a random batch upon calls to take().
    – Tfovid
    Commented Nov 8, 2019 at 8:21
  • not exactly: image_dataset_from_directory has shuffle: Whether to shuffle the data. Default: True. so you have to explicitly set it to false. **I just added this to the answer Commented Jun 11, 2022 at 17:40
  • precisely, there are two ways of implementing shuffle, either directly while reading the data as input using "tf.keras.utils.image_dataset_from_directory" or while configuring/defining the pipeline by using ".shuffle()" Commented Jul 5, 2022 at 10:42

I am a newbie to this domain. But from what I have seen in my notebook is that the take() does pick random samples. For instance, in the image shown here, I had just called image_dataset_from_directory() before calling take(), so no shuffling preceded the take op, still I see different samples on every run. Pls correct me if I am wrong, will help my understanding as well.

enter image description here

  • 6
    Please avoid posting images (or worse, links to images) of code or errors. Anything text-based (code and errors) should be posted as text directly in the question itself and formatted properly as a minimal reproducible example. You can get more formatting help here. You can also read about why you shouldn't post images/links of code.
    – Tomerikoo
    Commented Nov 25, 2021 at 13:42
  • Maybe it happens because you did not supply shuffle=False to image_dataset_from_directory() and it reshuffles training dataset each time? It can be clearly seen that image_dataset_from_directory() does it in its source code (line after comment # Shuffle locally at each iteration).
    – serge.v
    Commented Dec 16, 2021 at 0:04
  • you are not wrong, see my edit/comment to the selected answer. image_dataset_from_directory sets shuffle=True by default, you have to explicitly set it to False in the args. Commented Jun 11, 2022 at 18:05

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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