I am removing rows from a fairly large data frame using the following code.
try:
df = df[~df['Full'].str.contains(myregex, regex=True, case=False)]
return df
However, instead of decreasing the size of the data frame in memory on each iteration (large amounts of data are removed each time), the task manager shows increased memory utilization.
Before filtering starts, python uses ~4GB of memory but after the 22nd filtering event, it uses ~22GB of RAM.
Is there a way to remove matching entries from the data frame in a more efficient manner?
Edit: I use regex and contains. I can't change that