I have a very large dataframe (~1.7MM rows x 6 columns). A simplified example of the relevant data is:
City Borough Brooklyn Brooklyn Astoria Queens Astoria Unspecified Ridgewood Unspecified Ridgewood Queens
So I'm trying to fill the 'Unspecified' values based on the information from the City column. So for example, the City Ridgewood is in an Unspecified Borough in one instance, but correctly has the Borough listed as Queens elsewhere in the dataset.
I've already explored Panda's fillna, but it doesn't seem to meet my needs. I've also considered the np.where method, but I'm not sure how'd it work in this situation. I'm pretty new to Pandas, but maybe the map/apply function are what I need? This can probably be accomplished a thousand different ways, but looking for something that won't crawl given the size of the data.
EDIT: I was able to create a dictionary which contains the highest occurring "pairs" between cities and boroughs with the following code:
specified = data[['Borough','City']][data['Borough']!= 'Unspecified'] paired = specified.Borough.groupby(specified.City).max() paired = paired.to_dict()
The paired dict has the city as the key and the borough as the value. Now the last step is to apply/map it back to the borough column...how do I do that?