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:
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.