I have a data frame of records that looks something like this:
stocks = pd.Series(['A', 'A', 'B', 'C', 'C'], name = 'stock') positions = pd.Series([ 100, 200, 300, 400, 500], name = 'positions') same1 = pd.Series(['AA', 'AA', 'BB', 'CC', 'CC'], name = 'same1') same2 = pd.Series(['AAA', 'AAA', 'BBB', 'CCC', 'CCC'], name = 'same2') diff = pd.Series(['A1', 'A2', 'B3' ,'C1', 'C2'], name = 'different') df = pd.DataFrame([stocks, same1, positions, same2, diff]).T df
This gives a pandas DataFrame that looks like
stock same1 positions same2 different 0 A AA 100 AAA A1 1 A AA 200 AAA A2 2 B BB 300 BBB B3 3 C CC 400 CCC C1 4 C CC 500 CCC C2
not interested in the data in 'different' columns and want to sum the positions along the unique other columns. I am currently doing it by:
stock same1 same2 A AA AAA 300 B BB BBB 300 C CC CCC 900 Name: positions
Problem is that this is a pd.Series (with Multi-Index). Currently I iterate over it to build a DataFrame again. I am sure that I am missing a method. Basically I want do drop 1 column form a DataFrame and then "rebuild it" so that one column is summed and the rest of the fields (which are the same) stay in place.
This groupby method breaks if there are empty positions. So I currently use an elaborate iteration over the DataFrame to build a new one