I'm using a python script to clean and concatenate a number of large .csv files. Specifically, I'm reading the files in using the pandas read_csv function and then dealing with them as dataframe objects, which was been working great. This is my first time using pandas, so I'm still getting used to all of the incredibly helpful functions that it includes.
The csv files that I'm reading in use -99.9 as a sentinel value to indicate NA/NaN. Since this is different than the way that I'm denoting missing data elsewhere, I'd like to change all occurrences of -99.9 to "NaN". Is there a quick built in way to do that, or do I have to iterate over the dataframe and check each value?