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I'm looking for a more efficient implementation for a generic "dictionary counter". Currently this naive function produces a faster result compared to the collections.Counter implementation

def uniqueCounter(x):
    dx = defaultdict(int)
    for i in x:
        dx[i] += 1
    return dx

EDIT: Some characteristic sample input:

c1= zip(np.random.randint(0,2,200000),np.random.randint(0,2,200000))
c2= np.random.randint(0,2,200000)

c1: 
uniqueCounter timing: 
10 loops, best of 3: 61.1 ms per loop
collections.Counter timing:
10 loops, best of 3: 113 ms per loop 

c2:
uniqueCounter timing: 10 loops, best of 3: 57 ms per loop
collections.Counter timing: 10 loops, best of 3: 120 ms per loop
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  • 3
    Please define "fast enough". How did you measure? What performance do you need? What does your data look like? What are you trying to do? ... Feb 23, 2014 at 21:54
  • 1
    This surely belongs on codereview.stackexchange.com Feb 23, 2014 at 21:56
  • What kind of objects do you have to count? Numbers? Strings? Any kind of object? How many elements do the input have at most and on average?
    – Bakuriu
    Feb 23, 2014 at 21:59
  • And are you sure you are CPU bound? Sounds like an I/O problem to me.
    – tripleee
    Feb 23, 2014 at 21:59
  • 1
    @user1749431 What? What will the OP do with a global variable? Also accessing globals is much slower than accessing local variables, so that's going to slow things down.
    – Bakuriu
    Feb 23, 2014 at 22:10

1 Answer 1

1

Try using numpy.bincount

In [19]: Counter(c2)
Out[19]: Counter({1: 100226, 0: 99774})

In [20]: uniqueCounter(c2)
Out[20]: defaultdict(<type 'int'>, {0: 99774, 1: 100226})

In [21]: np.bincount(c2)
Out[21]: array([ 99774, 100226])

Some timings:

In [16]: %timeit np.bincount(c2)
1000 loops, best of 3: 2 ms per loop

In [17]: %timeit uniqueCounter(c2)
1 loops, best of 3: 161 ms per loop

In [18]: %timeit Counter(c2)
1 loops, best of 3: 362 ms per loop
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  • bincount requires the input to be an array-like object containing non-negative integer data, and if max(c2) is much greater than len(c2), it can be highly inefficient. It's good for when you can use it, but it's far from a general-purpose solution. Feb 23, 2014 at 23:00
  • bincount is working great for the c2 example, but it is not suitable for a list of tuples such as c1
    – Gidon
    Feb 24, 2014 at 6:22
  • perhaps you can tweek your data-structures so that you can use bincount() Feb 24, 2014 at 15:47

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