I was wondering how to enforce the use of batches with a fixed number of samples when using
import numpy as np import tensorflow as tf dataset = tf.data.Dataset.range(101).batch(10) iterator = dataset.make_one_shot_iterator() batch = iterator.get_next() sess = tf.InteractiveSession() try: while True: print(batch.eval().shape) except tf.errors.OutOfRangeError: pass
In this toy example, the data has a total 101 samples and I ask batches of 10 samples. When iterating, the last batch has a size of 1, which is what I want to avoid.
In the former (queue-based) API,
tf.train.batch has a
allow_smaller_final_batch argument that is set to
False by default. I want to reproduce this behavior with
I suppose I could use
dataset = tf.data.Dataset.range(101).batch(10) .filter(lambda x: tf.equal(tf.shape(x), 10))
but surely there should be some build-in way to do this?