10

I'm trying to use tf.data.Dataset to interleave two datasets but having problems doing so. Given this simple example:

ds0 = tf.data.Dataset()
ds0 = ds0.range(0, 10, 2)
ds1 = tf.data.Dataset()
ds1 = ds1.range(1, 10, 2)
dataset = ...
iter = dataset.make_one_shot_iterator()
val = iter.get_next()

What is ... to produce an output like 0, 1, 2, 3...9?

It would seem like dataset.interleave() would be relevant but I haven't been able to formulate the statement in a way that doesn't generate an error.

  • You can interleave the values of ds0 and ds1 by calling tf.data.Dataset.zip((ds0, ds1)). But that contains one element for each pair of values. I don't know how to flatten a multi-element dataset into a single-element dataset. – MatthewScarpino Nov 17 '17 at 5:28
23

MattScarpino is on the right track in his comment. You can use Dataset.zip() along with Dataset.flat_map() to flatten a multi-element dataset:

ds0 = tf.data.Dataset.range(0, 10, 2)
ds1 = tf.data.Dataset.range(1, 10, 2)

# Zip combines an element from each input into a single element, and flat_map
# enables you to map the combined element into two elements, then flattens the
# result.
dataset = tf.data.Dataset.zip((ds0, ds1)).flat_map(
    lambda x0, x1: tf.data.Dataset.from_tensors(x0).concatenate(
        tf.data.Dataset.from_tensors(x1)))

iter = dataset.make_one_shot_iterator()
val = iter.get_next()

Having said this, your intuition about using Dataset.interleave() is pretty sensible. We're investigating ways that you can do this more easily.


PS. As an alternative, you can use Dataset.interleave() to solve the problem if you change how ds0 and ds1 are defined:

dataset = tf.data.Dataset.range(2).interleave(
    lambda x: tf.data.Dataset.range(x, 10, 2), cycle_length=2, block_length=1)
  • Perfect. Thanks for the quick and complete answer. And thanks to you and team for continuing improvements to TF with the dataset api, etc. – RobR Nov 17 '17 at 13:28
0

tf.data.experimental.sample_from_datasets method could be also useful if you do not need to preserve the strict order for the items you want to interleave.

In my case I had to interleave a real life data with some synthetic data, so the order was not an issue for me. Then this can be easily done as follows

dataset = tf.data.experimental.sample_from_datasets([ds0, ds1])

Note that the result will be non-deterministic and some items could be taken from same dataset twice, but in general it will be very similar to regular interleave.

The advantages of this approach:

  • you can use multiple datasets in one method call
  • you can specify fraction of the samples for each dataset using weights parameter (e.g. I wanted to have only small fraction of the data to be generated so I used weights=[0.9, 0.1])

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.