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I am reading in an excel spreadsheet about schools with three sheets as follows.

import sys
import pandas as pd
inputfile = sys.argv[1]
xl = pd.ExcelFile(inputfile)
print xl.sheet_names
df1 = xl.parse(xl.sheet_names[0], skiprows=14)
df2 = xl.parse(xl.sheet_names[1], skiprows=14)
df3 = xl.parse(xl.sheet_names[2], skiprows=14)
df1.columns = [chr(65+i) for i in xrange(len(df1.columns))]
df2.columns = df1.columns
df3.columns = df1.columns

The unique id for each school is in column 'D' in each of the three dataframes. I would like to make a new dataframe which has two columns. The first is the sum of column 'G' from df1, df2, df3 and the second is the sum of column 'K' from df1, df2, df3. In other words, I think I need the following steps.

  1. Filter rows for which unique column 'D' ids actually exist in all three dataframes. If the school doesn't appear in all three sheets then I discard it.
  2. For each remaining row (school), add up the values in column 'G' in the three dataframes.
  3. Do the same for column 'K'.

I am new to pandas but how should I do this? Somehow the unique ids have to be used in steps 2 and 3 to make sure the values that are added correspond to the same school.

Attempted solution

df1 = df1.set_index('D')
df2 = df2.set_index('D')
df3 = df3.set_index('D')
df1['SumK']= df1['K'] +  df2['K'] + df3['K']
df1['SumG']= df1['G'] +  df2['G'] + df3['G']
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1 Answer 1

up vote 2 down vote accepted

After concatenating the dataframes, you can use groupby and count to get a list of values for "D" that exist in all three dataframes since there is only one in each dataframe. You can then use this to filter concatenated dataframe to sum whichever columns you need, e.g.:

df = pd.concat([df1, df2, df3])
criteria = df.D.isin((df.groupby('D').count() == 3).index)
df[criteria].groupby('D')[['G', 'K']].sum()
share|improve this answer
I added an attempted solution. I think I only need to filter out the NaN rows now. – felix Feb 25 '14 at 15:49

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