# Calculation using shifting is not working in a for loop

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...

• 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

# 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
``````