I have a data frame like this:

    [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 unique_id is 1, but take the union of their values. That is, I want to produce this:

    [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 unique_id.

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.

  • Is it all but one None values in rows with similar unique_id? – Lev Zakharov Aug 10 at 21:21
  • 1
    This is still ambiguous. What if there are two valid values? It would seem to me that the union would be a collection of both? If so, what kind of collection? A set, list, tuple? If not, how do you choose among them? The first, last, random? – piRSquared Aug 10 at 21:34
  • @piRSquared either first or last would be fine. – shadowtalker Aug 10 at 21:45
up vote 4 down vote accepted

This gives the result for your example. It takes the first non-Nan value for each column, in each group.

df.groupby("unique_id", as_index=False).first()
  • I didn't know about first, that looks like it does the job. – shadowtalker Aug 10 at 21:46

Use groupby and first:


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