How do I split Tensorflow datasets?

This question is similar to this one and this one, and I am afraid we have not had a satisfactory answer yet.

  • Using take() and skip() requires knowing the dataset size. What if I don't know that, or don't want to find out?

  • Using shard() only gives 1 / num_shards of dataset. What if I want the rest?

I try to present a better solution below, tested on TensorFlow 2 only. Assuming you already have a shuffled dataset, you can then use filter() to split it into two:

import tensorflow as tf

all = tf.data.Dataset.from_tensor_slices(list(range(1, 21))) \
        .shuffle(10, reshuffle_each_iteration=False)

test_dataset = all.enumerate() \
                    .filter(lambda x,y: x % 4 == 0) \
                    .map(lambda x,y: y)

train_dataset = all.enumerate() \
                    .filter(lambda x,y: x % 4 != 0) \
                    .map(lambda x,y: y)

for i in test_dataset:
    print(i)

print()

for i in train_dataset:
    print(i)

The parameter reshuffle_each_iteration=False is important. It makes sure the original dataset is shuffled once and no more. Otherwise, the two resulting sets may have some overlaps.

Use enumerate() to add an index.

Use filter(lambda x,y: x % 4 == 0) to take 1 sample out of 4. Likewise, x % 4 != 0 takes 3 out of 4.

Use map(lambda x,y: y) to strip the index and recover the original sample.

This example achieves a 75/25 split.

x % 5 == 0 and x % 5 != 0 gives a 80/20 split.

If you really want a 70/30 split, x % 10 < 3 and x % 10 >= 3 should do.

UPDATE:

As of TensorFlow 2.0.0, above code may result in some warnings due to AutoGraph's limitations. To eliminate those warnings, declare all lambda functions separately:

def is_test(x, y):
    return x % 4 == 0

def is_train(x, y):
    return not is_test(x, y)

recover = lambda x,y: y

test_dataset = all.enumerate() \
                    .filter(is_test) \
                    .map(recover)

train_dataset = all.enumerate() \
                    .filter(is_train) \
                    .map(recover)

This gives no warning on my machine. And making is_train() to be not is_test() is definitely a good practice.


You may use Dataset.take() and Dataset.skip():

train_size = int(0.7 * DATASET_SIZE)
val_size = int(0.15 * DATASET_SIZE)
test_size = int(0.15 * DATASET_SIZE)

full_dataset = tf.data.TFRecordDataset(FLAGS.input_file)
full_dataset = full_dataset.shuffle()
train_dataset = full_dataset.take(train_size)
test_dataset = full_dataset.skip(train_size)
val_dataset = test_dataset.skip(test_size)
test_dataset = test_dataset.take(test_size)

For more generality, I gave an example using a 70/15/15 train/val/test split but if you don't need a test or a val set, just ignore the last 2 lines.

Take:

Creates a Dataset with at most count elements from this dataset.

Skip:

Creates a Dataset that skips count elements from this dataset.

You may also want to look into Dataset.shard():

Creates a Dataset that includes only 1/num_shards of this dataset.