I have a data frame like this:
pd.DataFrame([ [1, None, 'a'], [1, 3.3, None], [2, 1.7, 'c'] ], columns=['unique_id', 'x', 'target'])
I want to drop one of the rows where
1, but take the union of their values. That is, I want to produce this:
pd.DataFrame([ [1, 3.3, 'a'], [2, 1.7, 'c'] ], columns=['unique_id', 'x', 'target'])
Can this be done efficiently in Pandas?
Assume this data frame has between 10k and 100k rows, with maybe 10% being duplicates I want to eliminate. There will only be 2 or 3 duplicates of each
Edit: when both rows have disagreeing entries, just taking the first one is fine in my case. But I'm open to solutions where, e.g. both values are collected in a list.