13

In TensorFlow's new set of input pipeline functions, there is an ability to group sets of records together using the "group_by_window" function. It is described in the documentation here:

https://www.tensorflow.org/api_docs/python/tf/contrib/data/Dataset#group_by_window

I don't fully understand the explanation here used to describe the function, and I tend to learn best by example. I can't find any example code anywhere on the internet for this function. Could someone please whip up a barebones and runnable example of this function to show how it works, and what to give this function?

1 Answer 1

13

For tensorflow version 1.9.0 Here is a quick example I could come up with:

import tensorflow as tf
import numpy as np
components = np.arange(100).astype(np.int64)
dataset = tf.data.Dataset.from_tensor_slices(components)
dataset = dataset.apply(tf.contrib.data.group_by_window(key_func=lambda x: x%2, reduce_func=lambda _, els: els.batch(10), window_size=100)
iterator = dataset.make_one_shot_iterator()
features = iterator.get_next()
sess = tf.Session()
sess.run(features) # array([ 0,  2,  4,  6,  8, 10, 12, 14, 16, 18], dtype=int64)

The first argument key_func maps every element in the dataset to a key.

The window_size defines the bucket size that is given to the reduce_fund.

In the reduce_func you receive a block of window_size elements. You can shuffle, batch or pad however you want.

EDIT for dynamic padding and bucketing using the group_by_window fucntion more here :

If you have a tf.contrib.dataset which holds (sequence, sequence_length, label) and sequence is a tensor of tf.int64:

def bucketing_fn(sequence_length, buckets):
    """Given a sequence_length returns a bucket id"""
    t = tf.clip_by_value(buckets, 0, sequence_length)
    return tf.argmax(t)

def reduc_fn(key, elements, window_size):
    """Receives `window_size` elements"""
    return elements.shuffle(window_size, seed=0)
# Create buckets from 0 to 500 with an increment of 15 -> [0, 15, 30, ... , 500]
buckets = [tf.constant(num, dtype=tf.int64) for num in range(0, 500, 15)
window_size = 1000
# Bucketing
dataset = dataset.group_by_window(
        lambda x, y, z: bucketing_fn(x, buckets), 
        lambda key, x: reduc_fn(key, x, window_size), window_size)
# You could pad it in the reduc_func, but I'll do it here for clarity
# The last element of the dataset is the dynamic sentences. By giving it tf.Dimension(None) it will pad the sencentences (with 0) according to the longest sentence.
dataset = dataset.padded_batch(batch_size, padded_shapes=(
        tf.TensorShape([]), tf.TensorShape([]), tf.Dimension(None)))
dataset = dataset.repeat(num_epochs)
iterator = dataset.make_one_shot_iterator()
features = iterator.get_next()
3
  • key_func=lambda x: x%2 maps x to either 0 and 1, right? I don't understand why the result has only even elements?
    – lifang
    May 18, 2018 at 6:14
  • Yes. It basically creates two buckets: one for even and one for odd. There are only even element in first print statement because it took elements from the even bucket for this batch May 18, 2018 at 12:58
  • Hi @MaximeDeBruyn could you explain why you have lambda x, y, z: bucketing_fn(x, buckets) and lambda key, x: reduc_fn(key, x, window_size), window_size)? what would be wrong with just passing the functions, instead of lambda?
    – funmath
    Mar 29, 2021 at 15:39

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.