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I have a python pandas DataFrame that looks something like this:

                   A      B      C    ...     Z
2012-01-01 00    True  False  False   ...   True
2012-01-02 00    True  False   True   ...  False
2012-01-03 00   False   True  False   ...  False
...              ...    ...    ...    ...   ...
2012-12-31 00   False   True  False   ...  False

The columns are named in alphabetical order from A to Z. I want to boolean 'and' all the columns from A to Z using column Z (i.e. pseudocode=>> new_dataframe = [A and Z, B and Z,... Y and Z, Z and Z])

Am I stuck with using a for loop to apply the boolean 'and' operation on all columns (i.e. from column A to column Z)? To reiterate my question in another manner is there an efficient way or built-in pandas function to 'AND' a pandas Series on all the columns of a pandas dataframe?

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up vote 0 down vote accepted

It is not clear exactly what you want to do. If you simply want to and some of the columns together, you can use the built-in method all, as follows (I've included some code to make this a runnable example):

import pandas
import numpy

a = numpy.random.rand(10, 10)>0.5
b = pandas.DataFrame(a, columns=list('ABCDEFGHIJ'))
selectedcolumns = ['A', 'B', 'C']
b['Anded'] = b[selectedcolumns].all(1)

If you want to "and" each of the columns with the last one, you can do

anded = b[selectedcolumns].apply(lambda x, y: x*y, args=[b['J']])
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I have a different thing in mind.. sorry my question was not clear and i've just edit it. I need to get a new dataframe from my original dataframe i.e. pseudocode=>> new_dataframe = [A and Z, B and Z,... Y and Z, Z and Z] I want to 'and' all the columns in the dataframe with the column named Z. Thanks – golden.rum Oct 30 '13 at 2:54
I've added that option now. I think the key in the wording would have been to say "and each of the columns with the last one". – chthonicdaemon Oct 30 '13 at 4:24
Thanks for the answer. Though i've refrained from using it i did learn a thing or two. I'd like to avoid loops if possible because they say it's slow.. so in the intermediate step before i got the boolean dataframe as shown in my example above, it was a dataframe of floating number type. I just changed the intermediate steps by processing the floating type dataframe to avoid multiplying the boolean dataframe in a looping fashion. Oh programming you so naughty giving me headaches – golden.rum Oct 30 '13 at 11:49

This has to be the strangest tech problem I have ever heard of.

Binary stuff can be hard to debug.

Karnaut Tables might help...

share|improve this answer
hi pardon me if my question seems theoretical in nature.. it's not one.. what i meant by an 'efficient way' is if there's any 'built-in function' in pandas to do what i described in question :P – golden.rum Oct 30 '13 at 3:00

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