Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

How do I find the count of an element in a column grouped by a few columns using python pandas?

I have the following csv file structure:

'Country'     'City'     'Year'  'Month'   'Value'    'Street_Code'
 USA          New York    1971     jan        0.0        1
 USA          New York    1971     feb       23.5        1
 USA          New York    1971     mar       10.2        1
 USA          Florida     1971     jan        0.0        1
 USA          Florida     1971     feb        0.0        1
 USA          Florida     1971     mar        0.0        1
 USA          New York    1971     jan        0.0        2
 USA          New York    1971     feb        15.0       2
 USA          New York    1971     mar        7.6        2
 USA          Florida     1971     jan        0.0        2
 USA          Florida     1971     feb        0.0        2
 USA          Florida     1971     mar        2.3        2

I want to count the number of zeros (0.0) in 'value' by grouping 'Country', 'City','Year' & 'Street Code'.

I've tried this so far;

import pandas as pd
data = pd.read_csv('country_details.csv')
count_data = data[data['Value'] == 0.0] # I'm filtering the data. I don't think this is the right way of doing it
grouped = count_data.groupby(['Country','Year','Month','Street_Code']) # I'm stuck here
share|improve this question
    
does your data get correctly parsed with read_csv? –  elyase Apr 23 '13 at 14:16
    
yes. No problems with that. –  richie Apr 23 '13 at 14:17
2  
If your data's correctly parsed by read_csv, why do you have a column named '0'? I'd've thought that it'd be data[data['Value'] == 0]. –  DSM Apr 23 '13 at 14:19
    
gosh.. sorry ...edited –  richie Apr 23 '13 at 14:20

1 Answer 1

up vote 2 down vote accepted

Your filtering is almost right, but you need to reference the column name, in this case 'Value'.

Try:

import pandas as pd
import StringIO

csv = StringIO.StringIO("""Country,City,Year,Month,Value,Street_Code
USA,NewYork,1971,jan,0.0,1
USA,NewYork,1971,feb,23.5,1
USA,NewYork,1971,mar,10.2,1
USA,Florida,1971,jan,0.0,1
USA,Florida,1971,feb,0.0,1
USA,Florida,1971,mar,0.0,1
USA,NewYork,1971,jan,0.0,2
USA,NewYork,1971,feb,15.0,2
USA,NewYork,1971,mar,7.6,2
USA,Florida,1971,jan,0.0,2
USA,Florida,1971,feb,0.0,2
USA,Florida,1971,mar,2.3,2""")

data = pd.read_csv(csv)

datasub = data[data['Value'] == 0.0]

print datasub.groupby(['Country','Year','Month','Street_Code'])['Value'].count()

Country  Year  Month  Street_Code
USA      1971  feb    1              1
                      2              1
               jan    1              2
                      2              2
               mar    1              1
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.