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One last newbie pandas question for the day: How do I generate a table for a single Series?

For example:

my_series = pandas.Series([1,2,2,3,3,3])
pandas.magical_frequency_function( my_series )

>> {
     1 : 1,
     2 : 2, 
     3 : 3
   }

Lots of googling has led me to Series.describe() and pandas.crosstabs, but neither of these does quite what I need: one variable, counts by categories. Oh, and it'd be nice if it worked for different data types: strings, ints, etc.

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1 Answer 1

up vote 19 down vote accepted

Maybe .value_counts()?

>>> import pandas
>>> my_series = pandas.Series([1,2,2,3,3,3, "fred", 1.8, 1.8])
>>> my_series
0       1
1       2
2       2
3       3
4       3
5       3
6    fred
7     1.8
8     1.8
>>> counts = my_series.value_counts()
>>> counts
3       3
2       2
1.8     2
fred    1
1       1
>>> len(counts)
5
>>> sum(counts)
9
>>> counts["fred"]
1
>>> dict(counts)
{1.8: 2, 2: 2, 3: 3, 1: 1, 'fred': 1}
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Bingo! That's the magical function I was looking for! –  Abe Aug 31 '12 at 0:16
    
.value_counts().sort_index(1) , to prevent the first column possibly getting slightly out-of-order –  smci Apr 17 '13 at 12:12
4  
Is there an equivalent for DataFrame, rather than series? I tried running .value_counts() on a df and got AttributeError: 'DataFrame' object has no attribute 'value_counts' –  Mittenchops May 3 '13 at 14:07

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