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.

I recently learned about Pandas and was happy to see its analytics functionality. I am trying to convert Excel array functions into the Pandas equivalent to automate spreadsheets that I have created for the creation of performance attribution reports. In this example, I created a new column in Excel based on conditions within other columns:

={SUMIFS($F$10:$F$4518,$A$10:$A$4518,$C$4,$B$10:$B$4518,0,$C$10:$C$4518," ",$D$10:$D$4518,$D10,$E$10:$E$4518,$E10)}

The formula is summing up the values in the "F" array (security weights) based on certain conditions. "A" array (portfolio ID) is a certain number, "B" array (security id) is zero, "C" array (group description) is " ", "D" array (start date) is the date of the row that I am on, and "E" array (end date) is the date of the row that I am on.

In Pandas, I am using the DataFrame. Creating a new column on a dataframe with the first three conditions is straight forward, but I am having difficult with the last two conditions.

reportAggregateDF['PORT_WEIGHT'] = reportAggregateDF['SEC_WEIGHT_RATE']
          [(reportAggregateDF['PORT_ID'] == portID) &
           (reportAggregateDF['SEC_ID'] == 0) &
           (reportAggregateDF['GROUP_LIST'] == " ") & 
           (reportAggregateDF['START_DATE'] == reportAggregateDF['START_DATE'].ix[:]) & 
           (reportAggregateDF['END_DATE'] == reportAggregateDF['END_DATE'].ix[:])].sum()

Obviously the .ix[:] in the last two conditions is not doing anything for me, but is there a way to make the sum conditional on the row that I am on without looping? My goal is to not do any loops, but instead use purely vector operations.

share|improve this question

2 Answers 2

You want to use the apply function and a lambda:

>> df
     A    B    C    D     E
0  mitfx  0  200  300  0.25
1     gs  1  150  320  0.35
2    duk  1    5    2  0.45
3    bmo  1  145   65  0.65

Let's say I want to sum column C times E but only if column B == 1 and D is greater than 5:

df['matches'] = df.apply(lambda x: x['C'] * x['E'] if x['B'] == 1 and x['D'] > 5 else 0, axis=1)

It might be cleaner to split this into two steps:

df_subset = df[(df.B == 1) & (df.D > 5)]
df_subset.apply(lambda x: x.C * x.E, axis=1).sum()

or to use simply multiplication for speed:

df_subset = df[(df.B == 1) & (df.D > 5)]
print sum(df_subset.C * df_subset.E)

You are absolutely right to want to do this problem without loops.

share|improve this answer

I'm sure there is a better way, but this did it in a loop:

for idx, eachRecord in reportAggregateDF.T.iteritems():
reportAggregateDF['PORT_WEIGHT'].ix[idx] = reportAggregateDF['SEC_WEIGHT_RATE'][(reportAggregateDF['PORT_ID'] == portID) &            
    (reportAggregateDF['SEC_ID'] == 0) &            
    (reportAggregateDF['GROUP_LIST'] == " ") &             
    (reportAggregateDF['START_DATE'] == reportAggregateDF['START_DATE'].ix[idx]) &             
    (reportAggregateDF['END_DATE'] == reportAggregateDF['END_DATE'].ix[idx])].sum()
share|improve this answer

Your Answer


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.