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In R, it is easy to aggregate values and apply a function (in this case, sum)

> example <- c(a1=1,a2=2,b1=3,b2=4)
> example # this is the vector (equivalent to Series)
a1 a2 b1 b2 
 1  2  3  4 
> grepl("^a",names(example)) #predicate statement
[1]  TRUE  TRUE FALSE FALSE
> sum(example[grep("^a",names(example))]) #combined into one statement
[1] 3

The way I can think of doing this in pandas is to use a list comprehension rather than any vectorized pandas function:

In [55]: example = pd.Series({'a1':1,'a2':2,'b1':3,'b2':4})

In [56]: example
Out[56]: 
a1    1
a2    2
b1    3
b2    4
dtype: int64

In [63]: sum([example[x] for x in example.index if re.search('^a',x)])
Out[63]: 3

Is there any equivalent of the vectorized approach in pandas?

share|improve this question
up vote 2 down vote accepted

In pandas v0.12.0 you can convert the Index to a Series and search for the string using str.contains.

In [12]: s[s.index.to_series().str.contains('^a')].sum()
Out[12]: 3

In v0.13.0 use the Series.filter method:

In [6]: s = Series([1,2,3,4], index=['a1','a2','b1','b2'])

In [7]: s.filter(regex='^a')
Out[7]:
a1    1
a2    2
dtype: int64

In [8]: s.filter(regex='^a').sum()
Out[8]: 3

NOTE: The behavior of filter is untested in pandas git master, so I would use it with caution for now. There's an open issue to address this.

share|improve this answer
    
I wonder if str methods should be available directly for Index. – Andy Hayden Sep 16 '13 at 18:36
    
I think there's an issue somewhere....can't remember exactly where though. – Phillip Cloud Sep 16 '13 at 18:37
    
@AndyHayden I forgot that the NDFrame.filter method will work in 0.13! – Phillip Cloud Sep 16 '13 at 19:46
    
boom! If I hadn't already +1d, I would again. That's how to do it! – Andy Hayden Sep 16 '13 at 20:21

You can use groupby, which can apply a function to the index values (in this case looking at the first element):

In [11]: example.groupby(lambda x: x[0]).sum()
Out[11]:
a    3
b    7
dtype: int64

In [12]: example.groupby(lambda x: x[0]).sum()['a']
Out[12]: 3
share|improve this answer
    
+1 I always forget that you can pass a callable to groupby. – Phillip Cloud Sep 16 '13 at 19:57
    
Very elegant, but I guess groupby would require more computation than necessary... – crippledlambda Sep 17 '13 at 11:46
    
@crippledlambda rather than guess, you should always test (e.g. with %timeit), you may be surprised. Though in this case filter is more elegant! – Andy Hayden Sep 17 '13 at 13:48
    
That is true about using %timeit, but I was thinking in the general case and it seems that computing necessary statistics is undesirable. groupby is as elegant though. – crippledlambda Sep 20 '13 at 20:21

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