# Sorting Data Into Clumps With Python

I'd like to clump a list of data based off a list of ranges. The idea being that I'd like to make a histogram of the end result. I know about collections.Counter but have not seen someone us it or other built in to generate clumps. I have written out the long form but am hoping someone can offer up something that is more efficient.

``````def min_to_sec(val):
ret_val = 60 * int(val)
return ret_val

def hr_to_sec(val):
ret_val = 3600 * int(val)
return ret_val

def histogram(y_lst):
x_lst = [   10,
20,
30,
40,
50,
60,
90,
min_to_sec(2),
min_to_sec(3),
min_to_sec(4),
min_to_sec(5),
min_to_sec(10),
min_to_sec(15),
min_to_sec(20),
]

results = {}
for y_val in y_lst:
for x_val in x_lst:
if y_val < x_val:
results[ str(x_val) ] = results.get( str(x_val), 0) + 1
break
else:
results['greater'] = results.get('greater', 0) + 1
return results
``````

Updated to include an example of desired sample output:

So if my x_lst and y_list are:

``````x_lst = [10,20,30,40]
y_lst = [1,2,3,15,22,27,40]
``````

I'd like a return value similar to Counter, of:

``````{
10:3,
20:1,
30:2,
}
``````

So while my above code works, being that it's a nested for loop, it's quite slow, and I'm hoping there's a way to use something like collections.Count to do this 'clumping' operation.

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Rephrased and got the answer I was looking for: stackoverflow.com/questions/18791571/… –  pyInTheSky Sep 13 '13 at 17:49

You could use `collections.Counter` to do this kind of counting of elements in a list:

``````In [1]: from collections import Counter

In [2]: Counter([1, 2, 10, 1, 2, 100])
Out[2]: Counter({1: 2, 2: 2, 100: 1, 10: 1})
``````

You can increment a Counter more simply using:

``````results['foo'] += 1
``````

In order to count only those before the inequality, you could use `itertools.takewhile`:

``````In [3]: from itertools import takewhile

In [4]: Counter(takewhile(lambda x: x < 10, [1, 2, 10, 1, 2, 100]))
Out[4]: Counter({1: 1, 2: 1})
``````

However this won't keep track of those which have broken out of the takewhile.

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Have you considered using pandas? You could put `y_lst` into a DataFrame and pretty easily make a histogram.

Assuming you have matplotlib and pylab imported...

``````import pandas as pd
data = pd.DataFrame([1, 2, 3, 15, 22, 27, 40])
data[0].hist(bins = 4)
``````

That would give you the histogram you describe above. However, once the data is in a pandas DataFrame it's not too challenging to slice it up however you'd like.

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