5

Given a corpus/texts as such:

Resumption of the session
I declare resumed the session of the European Parliament adjourned on Friday 17 December 1999 , and I would like once again to wish you a happy new year in the hope that you enjoyed a pleasant festive period .
Although , as you will have seen , the dreaded ' millennium bug ' failed to materialise , still the people in a number of countries suffered a series of natural disasters that truly were dreadful .
You have requested a debate on this subject in the course of the next few days , during this part @-@ session .
In the meantime , I should like to observe a minute ' s silence , as a number of Members have requested , on behalf of all the victims concerned , particularly those of the terrible storms , in the various countries of the European Union .

I could simply do this to get a dictionary with word frequencies:

>>> word_freq = Counter()
>>> for line in text.split('\n'):
...     for word in line.split():
...             word_freq[word]+=1
... 

But if the aim is to achieve an ordered dictionary from highest to lowest frequency, I will have to do this:

>>> from collections import OrderedDict
>>> sorted_word_freq = OrderedDict()
>>> for word, freq in word_freq.most_common():
...     sorted_word_freq[word] = freq
... 

Imagine that I have 1 billion keys in the Counter object, iterating through the most_common() would have a complexity of going through a corpus (non-unique instances) once and the vocabulary (unique key).

Note: The Counter.most_common() would call an ad-hoc sorted(), see https://hg.python.org/cpython/file/e38470b49d3c/Lib/collections.py#l472

Given this, I have seen the following code that uses numpy.argsort():

>>> import numpy as np
>>> words = word_freq.keys()
>>> freqs = word_freq.values()
>>> sorted_word_index = np.argsort(freqs) # lowest to highest
>>> sorted_word_freq_with_numpy = OrderedDict()
>>> for idx in reversed(sorted_word_index):
...     sorted_word_freq_with_numpy[words[idx]] = freqs[idx]
... 

Which is faster?

Is there any other faster way to get such an OrderedDict from a Counter?

Other than OrderedDict, is there other python objects that achieves the same sorted key-value pair?

Assume that memory is not an issue. Given 120 GB of RAM, there shouldn't be much issue to keep 1 billion key-value pairs right? Assume an average of 20 chars per key for 1 billion keys and a single integer for each value.

  • Memory may also be an issue as well as speed. I imagine some kind of merge sort would be best on both counts. There is some discussion of the best sort in stackoverflow.com/questions/1180240/…. – user4322779 Aug 2 '15 at 10:56
  • assume that memory is not an issue. – alvas Aug 2 '15 at 11:00
  • Possibly a trillion key-value pair wouldn't take up that much memory right? – alvas Aug 2 '15 at 11:00
  • Well, if they're 1 byte each (which is unlikely), it would be "only" 1 TB... – Thomas Aug 2 '15 at 11:22
  • 1
    Doing it on an Apache Spark cluster would be fast since it can be parallelized. Since its key oriented keys would have to be swapped with values in order to sort by value. Discussion on this is at stackoverflow.com/questions/24656696/…. See spark.apache.org/docs/1.2.0/… in the programming guide. Here is announcement of Spark winning the Daytona Grey benchmark: spark.apache.org/news/… – user4322779 Aug 2 '15 at 11:24
3
+50

The Series object in Pandas is an array of key-value pairs (which can have non-unique keys) which may be of interest. It has a sort method which sorts by the values and is implemented in Cython. Here's an example sorting an array of length one million:

In [39]:
import pandas as pd
import numpy as np

arr = np.arange(1e6)
np.random.shuffle(arr)
s = pd.Series(arr, index=np.arange(1e6))
%timeit s.sort()
%timeit sorted(arr)

1 loops, best of 3: 85.8 ms per loop
1 loops, best of 3: 1.15 s per loop

Given a normal Python dict you can construct a Series by calling:

my_series = pd.Series(my_dict)

Then sort by value by

my_series.sort()
2

One step toward improving the speed is to fill the counter in the optimal way.

For example, with your txt (802 char).

mycounter=Counter(txt.split())

produces the same thing as your word_counter, but in 1/3 the time.

Or if you have to read the text line by line from a file, then use:

word_freq=Counter()
for line in txt.splitlines():
    word_freq.update(line.split())

Similarly the ordered dictionary can be created without the loop:

mydict = OrderedDict(sorted(mycounter.items(), key=operator.itemgetter(1), reverse=True))

Here I am calling sorted in the same way that most_common does (as per your link). And I'm passing the list of sorted items directly to the OrderedDict creator.

When I look at mycounter in ipython, I get the values in sorted order:

In [160]: mycounter
Out[160]: Counter({'the': 13, ',': 10, 'of': 9, 'a': 7, '.': 4, 'in': 4, 'to': 3, 'have': 3, 'session': 3, ''': 3, 'on': 3, 'you': 3, 'I': 3, 'that': 2, 'requested': 2, 'like': 2, 'European': 2, 'this': 2, 'countries': 2, 'as': 2, 'number': 2, 's': 1, 'various': 1, 'wish': 1, 'will': 1, 'Parliament': 1, 'meantime': 1, 'Resumption': 1, 'natural': 1, 'days': 1, 'debate': 1, 'You': 1, 'Members': 1, 'next': 1, '@-@': 1, 'hope': 1, 'enjoyed': 1, 'December': 1, 'victims': 1, 'particularly': 1, 'millennium': 1, .... 'behalf': 1, 'were': 1, 'failed': 1})

That's because its __repr__ method calls most_common. Again this is from your link.

items = ', '.join(map('%r: %r'.__mod__, self.most_common()))

On further testing I see that calling sorted directly doesn't save time:

In [166]: timeit mycounter.most_common()
10000 loops, best of 3: 31.1 µs per loop

In [167]: timeit sorted(mycounter.items(),key=operator.itemgetter(1),reverse=True)
10000 loops, best of 3: 30.5 µs per loop

In [168]: timeit OrderedDict(mycounter.most_common())
1000 loops, best of 3: 225 µs per loop

In this case, loading the dictionary directly doesn't save time either. Your iteration does just as well:

In [174]: %%timeit 
   .....: sorteddict=OrderedDict()
   .....: for word,freq in word_freq.most_common():
    sorteddict[word]=freq
   .....: 
1000 loops, best of 3: 224 µs per loop

For this sample, using np.argsort does not help (timewise). Just calling argsort is slower than most_common.

In [178]: timeit np.argsort(list(mycounter.values()))
10000 loops, best of 3: 34.2 µs per loop

Most of that time is in converting the list to an array, x=np.array(list(mycounter.values())). np.argsort(x) is much faster. That's true of a lot of numpy functionality. When operating on arrays numpy is fast. But there's a lot of overhead when converting lists to arrays.

I can create the OrderedDict via numpy in one line with:

OrderedDict(np.sort(np.array(list(mycounter.items()), dtype='a12,i'), order='f1')[::-1])

or in pieces:

lla = np.array(list(mycounter.items()),dtype='a12,i')
lla.sort(order='f1')
OrderedDict(lla[::-1])

I'm making a structured array from the items(), sorting that by the 2nd field, and then making the dictionary. No time savings though. See https://stackoverflow.com/a/31837513/901925 for another recent example of using order to sort a structured array.

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