I dont understand the how NaN's are being treated in pandas, would be happy to get some explanation, because the logic seems "broken" to me.
I have a csv file, which im loading using read csv. i have a "comments" column in that file, which is empty most of the times.
I've isolated that column, and tried varies ways to drop the empty values. first, when im writing:
0 VP 1 VP 2 VP 3 TEST 4 NaN 5 NaN ....
The rest of the column is NaN. so pandas loading empty entries as NaNs. great so far. Now im trying to drop those entries. Iv tried:
and recieved the same column. nothing was dropped. confused, i'd tried to understand why nothing was dropped, so i tried:
and recieved a series of Falses. Nothing was NaNs... confusing. then i tried:
And again, nothing but falses. I got a little pissed there, and thought to be smarter. so i did:
In : comments_values = marked_results.comments.unique() comments_values Out: array(['VP', 'TEST', nan], dtype=object)
Ah, gotya! so now ive tried:
and surprisingly, still all the results are Falses!!! the only thing that worked was:
which returnd the desired outcome. Can someone explaine what has happend here??