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Campaign ID Revenue Total
601         $2,690 
601         $817 
601         $0 
649         $4,339 
10901   $7,273 

I have a table above . Want to apply groupby function to the data and apply sum ( over revenue_total) . Pandas gives an NA value since revenue_total is an object data type . Any help

import pandas as pd 
path = r"C:\Users\roy\Google Drive\Work\Backlog\test.csv" 
df = pd.read_csv(path) 
df[['Campaign ID','Revenue Total']].head() 
df.groupby(['Campaign ID'])[['Revenue Total']].sum()
share|improve this question
    
How did you create the table frame? You need to post your code so people can see where the problem is –  Anthony Kong Mar 1 at 0:57
    
Here is my code : import pandas as pd path = r"C:\Users\roy\Google Drive\Work\Backlog\test.csv" df = pd.read_csv(path) df[['Product ID ','Revenue Total']].head() df.groupby(['Product ID '])[['Revenue Total']].sum() and the values in Revenue Total for the output are all NaN –  user3367015 Mar 1 at 1:04
    
Code should be added as an edit to the question (and put in a code block). I don't know enough Python to do the edit for you, but as is it is not very helpful to potential answerers. –  BradleyDotNET Mar 1 at 1:06

2 Answers 2

up vote 0 down vote accepted

If your data file looks like

Campaign ID  Revenue Total
601         $2,690 
601         $817 
601         $0 
649         $4,339 
10901   $7,273 

Then you could remove the $ and commas and parse it into a DataFrame using

import pandas as pd

df = pd.read_csv('data', sep='\s{2,}',
                 converters={'Revenue Total':lambda x: x.lstrip('$').replace(',','')}) 

   Campaign ID Revenue Total
0          601          2690
1          601           817
2          601             0
3          649          4339
4        10901          7273

You might want to try just adding

converters={'Revenue Total':lambda x: x.lstrip('$').replace(',','')}

to your call to pd.read_csv. That is what is stripping the $ and commas.

You probably do not need sep='\s{2,}' -- that was just to allow me to read in the data given the format I showed above. Your format is probably different but you didn't post it so I don't know what it is...

share|improve this answer

There are problems with your data file.

If you do the following

  • remove the "," and "$" from the dollar figures
  • use ',' as seperate

Then running your code ...

import pandas as pd 
path = r"C:\Users\roy\Google Drive\Work\Backlog\test.csv" 
df = pd.read_csv(path) 
df[['Campaign ID','Revenue Total']].head() 
print  df.groupby(['Campaign ID'])[['Revenue Total']].sum() 

will give this result

             Revenue Total
Campaign ID               
601                   3507
649                   4339
10901                 7273
share|improve this answer
    
I want the header =0 . The issue is dtype for Revenue Total is object and group by is not able to perform an agfunc on that. –  user3367015 Mar 1 at 1:21
    
I have updated my answer. Also as a reminder to newcomer to stackoverflow, it is important for you to upvote and/or accept answer. See explanation here: meta.stackexchange.com/questions/5234/… Thanks. –  Anthony Kong Mar 1 at 4:09
    
Ok So the issue is to remove $ and ,. Then how do I do that –  user3367015 Mar 1 at 6:23

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