I'm reading Python for Data Analysis by Wes Mckinney, but I was surprised by this data manipulation. You can see all the procedure here but I will try to summarize it here. Assume you have something like this:
In : agg_counts = by_tz_os.size().unstack().fillna(0) Out: a Not Windows Windows tz 245 276 Africa/Cairo 0 3 Africa/Casablanca 0 1 Africa/Ceuta 0 2 Africa/Johannesburg 0 1 Africa/Lusaka 0 1 America/Anchorage 4 1 ...
tz means time zone and
Not Windows and
Windows are categories extracted from the User Agent in the original data, so we can see that there are 3 Windows users and 0 Non-windows users in Africa/Cairo from the data collected.
Then in order to get "the top overall time zones" we have:
In : indexer = agg_counts.sum(1).argsort() Out: tz 24 Africa/Cairo 20 Africa/Casablanca 21 Africa/Ceuta 92 Africa/Johannesburg 87 Africa/Lusaka 53 America/Anchorage 54 America/Argentina/Buenos_Aires 57 America/Argentina/Cordoba 26 America/Argentina/Mendoza 55 America/Bogota 62 ...
So at that point, I would have thought that according to the documentation I was summing over columns (in
sum(1)) and then sorting according to the result showing arguments (as usual in argsort). First of all, I'm not sure what does it mean "columns" in the context of this series because
sum(1) is actually summing
Not Windows and
Windows users keeping that value in the same row as its time zone. Furthermore, I can't see a correlation between argsort values and
agg_counts. For example,
Pacific/Auckland has an "argsort value" (in
In) of 0 and it only has a sum of 11
Not Windows users.
Asia/Harbin has an argsort value of 1 and appears with a sum of 3
Windows and Not Windows users.
Can someone explain to me what is going on there? Obviously I'm misunderstanding something.