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...
df_dic
is not defined so it cannot be run by others. – piterbarg Nov 25 '20 at 10:13df['accumulated'] = df['weekly'].cumsum() - df.iloc[0,0]
– Joe Ferndz Nov 25 '20 at 10:43for 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