How do I run through a dataframe and return only the rows which meet a certain condition? This condition has to be tested on previous rows and columns. For example:
#1 #2 #3 #4 1/1/1999 4 2 4 5 1/2/1999 5 2 3 3 1/3/1999 5 2 3 8 1/4/1999 6 4 2 6 1/5/1999 8 3 4 7 1/6/1999 3 2 3 8 1/7/1999 1 3 4 1
I could like to test a few conditions for each row and if all conditions are passed I would like to append the row to list. For example:
for row in dataframe: if [row-1, column 0] + [row-2, column 3] >= 6: append row to a list
I may have up to 3 conditions which must be true for the row to be returned. The way am thinking about doing it is by making a list for all the observations which are true for each condition, and then making a separate list for all of the rows that appear in all three lists.
My two questions are the following:
What is the fastest way to get all of the rows that meet a certain condition based on previous rows? Looping through a dataframe of 5,000 rows seems like it may be too long. Especially if potentially 3 conditions have to be tested.
What is the best way to get a list of rows which meet all 3 conditions?