What does batch, repeat, and shuffle do with TensorFlow Dataset?
Solution 1:
Update: Here is a small collaboration notebook for demonstration of this answer.
Imagine, you have a dataset: [1, 2, 3, 4, 5, 6]
, then:
How ds.shuffle() works
dataset.shuffle(buffer_size=3)
will allocate a buffer of size 3 for picking random entries. This buffer will be connected to the source dataset.
We could image it like this:
Random buffer
|
| Source dataset where all other elements live
| |
↓ ↓
[1,2,3] <= [4,5,6]
Let's assume that the entry 2
was taken from the random buffer. Free space is filled by the next element from the source buffer, that is 4
:
2 <= [1,3,4] <= [5,6]
We continue reading till nothing is left:
1 <= [3,4,5] <= [6]
5 <= [3,4,6] <= []
3 <= [4,6] <= []
6 <= [4] <= []
4 <= [] <= []
How ds.repeat() works
As soon as all the entries are read from the dataset and you try to read the next element, the dataset will throw an error.
That's where ds.repeat()
comes into play. It will re-initialize the dataset, making it again like this:
[1,2,3] <= [4,5,6]
What will ds.batch() produce
The ds.batch()
will take first batch_size
entries and make a batch out of them. So, batch size of 3 for our example dataset will produce two batch records:
[2,1,5]
[3,6,4]
As we have a ds.repeat()
before the batch, the generation of the data will continue. But the order of the elements will be different, due to the ds.random()
. What should be taken into account is that 6
will never be present in the first batch, due to the size of the random buffer.
Solution 2:
The following methods in tf.Dataset :
-
repeat( count=0 )
The method repeats the datasetcount
number of times. -
shuffle( buffer_size, seed=None, reshuffle_each_iteration=None)
The method shuffles the samples in the dataset. Thebuffer_size
is the number of samples which are randomized and returned astf.Dataset
. -
batch(batch_size,drop_remainder=False)
Creates batches of the dataset with batch size given asbatch_size
which is also the length of the batches.