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Modern Python Standard Library Cookbook

You're reading from   Modern Python Standard Library Cookbook Over 100 recipes to fully leverage the features of the standard library in Python

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Product type Paperback
Published in Aug 2018
Publisher Packt
ISBN-13 9781788830829
Length 366 pages
Edition 1st Edition
Languages
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Author (1):
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Alessandro Molina Alessandro Molina
Author Profile Icon Alessandro Molina
Alessandro Molina
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Table of Contents (16) Chapters Close

Preface 1. Containers and Data Structures FREE CHAPTER 2. Text Management 3. Command Line 4. Filesystem and Directories 5. Date and Time 6. Read/Write Data 7. Algorithms 8. Cryptography 9. Concurrency 10. Networking 11. Web Development 12. Multimedia 13. Graphical User Interfaces 14. Development Tools 15. Other Books You May Enjoy

Counting frequencies

A very common need in many kinds of programs is to count the occurrences of a value or of an event, which means counting frequency. Be it the need to count words in text, count likes on a blog post, or track scores for players of a video game, in the end counting frequency means counting how many we have of a specific value.

The most obvious solution for such a need would be to keep around counters for the things we need to count. If there are two, three, or four, maybe we can just track them in some dedicated variables, but if there are hundreds, it's certainly not feasible to keep around such a large amount of variables and we will quickly end up with a solution based on a container to collect all those counters.

How to do it...

Here are the steps for this recipe:

  1. Suppose we want to track the frequency of words in text; the standard library comes to our rescue and provides us with a very good way to track counts and frequencies, which is through the dedicated collections.Counter object.
  2. The collections.Counter object not only keeps track of frequencies, but provides some dedicated methods to retrieve the most common entries, entries that appear at last once and quickly count any iterable.
  3. Any iterable you provide to the Counter is "counted" for its frequency of values:
>>> txt = "This is a vast world you can't traverse world in a day"
>>>
>>> from collections import Counter
>>> counts = Counter(txt.split())
  1. The result would be exactly what we expect, a dictionary with the frequencies of the words in our phrase:
Counter({'a': 2, 'world': 2, "can't": 1, 'day': 1, 'traverse': 1, 
         'is': 1, 'vast': 1, 'in': 1, 'you': 1, 'This': 1})
  1. Then, we can easily query for the most frequent words:
>>> counts.most_common(2)
[('world', 2), ('a', 2)]

  1. Get the frequency of a specific word:
>>> counts['world']
2

Or, get back the total number of occurrences:

>>> sum(counts.values())
12
  1. And we can even apply some set operations on counters, such as joining them, subtracting them, or checking for intersections:
>>> Counter(["hello", "world"]) + Counter(["hello", "you"])
Counter({'hello': 2, 'you': 1, 'world': 1})
>>> Counter(["hello", "world"]) & Counter(["hello", "you"])
Counter({'hello': 1})

How it works...

Our counting code relies on the fact that Counter is just a special kind of dictionary, and that dictionaries can be built by providing an iterable. Each entry in the iterable will be added to the dictionary.

In the case of a counter, adding an element means incrementing its count; for every "word" in our list, we add that word multiple times (one every time it appears in the list), so its value in the Counter continues to get incremented every time the word is encountered.

There's more...

Relying on Counter is actually not the only way to track frequencies; we already know that Counter is a special kind of dictionary, so reproducing the Counter behavior should be quite straightforward.

Probably every one of us came up with a dictionary in this form:

counts = dict(hello=0, world=0, nice=0, day=0)

Whenever we face a new occurrence of hello, world, nice, or day, we increment the associated value in the dictionary and call it a day:

for word in 'hello world this is a very nice day'.split():
    if word in counts:
        counts[word] += 1

By relying on dict.get, we can also easily adapt it to count any word, not just those we could foresee:

for word in 'hello world this is a very nice day'.split():
    counts[word] = counts.get(word, 0) + 1

But the standard library actually provides a very flexible tool that we can use to improve this code even further, collections.defaultdict.

defaultdict is a plain dictionary that won't throw KeyError for any missing value, but will call a function we can provide to generate the missing value.

So, something such as defaultdict(int) will create a dictionary that provides 0 for any key that it doesn't have, which is very convenient for our counting purpose:

from collections import defaultdict

counts = defaultdict(int)
for word in 'hello world this is a very nice day'.split():
    counts[word] += 1

The result will be exactly what we expect:

defaultdict(<class 'int'>, {'day': 1, 'is': 1, 'a': 1, 'very': 1, 'world': 1, 'this': 1, 'nice': 1, 'hello': 1})

As for each word, the first time we face it, we will call int to get the starting value and then add 1 to it. As int gives 0 when called without any argument, that achieves what we want.

While this roughly solves our problem, it's far from being a complete solution for counting—we track frequencies, but on everything else, we are on our own. What if we want to know the most frequent entry in our bag of words?

The convenience of Counter is based on the set of additional features specialized for counting that it provides; it's not just a dictionary with a default numeric value, it's a class specialized in keeping track of frequencies and providing convenient ways to access them.

You have been reading a chapter from
Modern Python Standard Library Cookbook
Published in: Aug 2018
Publisher: Packt
ISBN-13: 9781788830829
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