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The problem consist on calculate from a dataframe the column "accumulated" using the columns "accumulated" and "weekly". The formula to do this is accumulated in t = weekly in t + accumulated in t-1

The desired result should be:

weekly  accumulated
   2          0
   1          1
   4          5
   2          7

The result I'm obtaining is:

weekly  accumulated
   2          0
   1          1
   4          4
   2          2

What I have tried is:

 for key, value in df_dic.items():
         df_aux = df_dic[key]
         df_aux['accumulated'] = 0  
         df_aux['accumulated'] = (df_aux.weekly + df_aux.accumulated.shift(1))
         #df_aux["accumulated"] = df_aux.iloc[:,2] + df_aux.iloc[:,3].shift(1) 
         df_aux.iloc[0,3] = 0 #I put this because I want to force the first cell to be 0.

Being df_aux.iloc[0,3] the first row of the column "accumulated".

What I´m doing wrong?

Thank you

EDIT: df_dic is a dictionary with 5 dataframes. df_dic is seen as {0: df1, 1:df2, 2:df3}. All the dataframes have the same size and same columns names. So i do the for loop to do the same calculation in every dataframe inside the dictionary.

EDIT2 : I'm trying doing the computation outside the for loop and is not working. What im doing is:

df_auxp = df_dic[0]
df_auxp['accumulated'] = 0
df_auxp['accumulated'] = df_auxp["weekly"] + df_auxp["accumulated"].shift(1)
df_auxp.iloc[0,3] = df_auxp.iloc[0,3].fillna(0)   

Maybe have something to do with the dictionary interaction...

  • 1
    Welcome to Stackoverflow. It is always useful to have your dataframes defined in code so others can test their proposed solutions easily, pls see how to provide a great pandas example. Also in the snippet of code that you helpfully provided, df_dic is not defined so it cannot be run by others. – piterbarg Nov 25 '20 at 10:13
  • Thanks for the advice! – TCosm Nov 25 '20 at 10:23
  • This is a single line solution. You dont need a for loop. Use df['accumulated'] = df['weekly'].cumsum() - df.iloc[0,0] – Joe Ferndz Nov 25 '20 at 10:43
  • I need the for loop since I have to do the same calculation in 3 dataframes :/ – TCosm Nov 25 '20 at 10:49
  • You can iterate thru the 3 dataframes using a for loop. for d in [df1, df2, df3]: d['accumulate'] = d['weekly'].cumsum() - d.iloc[0,0]. This will iterate thru the 3 dataframes and do the calculations. Am I missing something? – Joe Ferndz Nov 25 '20 at 10:55
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To solve for 3 dataframes

import pandas as pd
df1 = pd.DataFrame({'weekly':[2,1,4,2]})
df2 = pd.DataFrame({'weekly':[3,2,5,3]})
df3 = pd.DataFrame({'weekly':[4,3,6,4]})

print (df1)
print (df2)
print (df3)

for d in [df1,df2,df3]:
    d['accumulated'] = d['weekly'].cumsum() - d.iloc[0,0]
    print (d)

The output of this will be as follows:

Original dataframes:

df1

   weekly
0       2
1       1
2       4
3       2

df2

   weekly
0       3
1       2
2       5
3       3

df3

   weekly
0       4
1       3
2       6
3       4

Updated dataframes:

df1:

   weekly  accumulated
0       2            0
1       1            1
2       4            5
3       2            7

df2:

   weekly  accumulated
0       3            0
1       2            2
2       5            7
3       3           10

df3:

   weekly  accumulated
0       4            0
1       3            3
2       6            9
3       4           13

To solve for 1 dataframe

You need to use cumsum and then subtract the value from first row. That will give you the desired result. here's how to do it.

import pandas as pd
df = pd.DataFrame({'weekly':[2,1,4,2]})
print (df)
df['accumulated'] = df['weekly'].cumsum() - df.iloc[0,0]
print (df)

Original dataframe:

   weekly
0       2
1       1
2       4
3       2

Updated dataframe:

   weekly  accumulated
0       2            0
1       1            1
2       4            5
3       2            7

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