2

I have a DataFrame object df. One of the column values in df is ID There are many rows with the same ID.

I want to create a new columns num_totals that counts the number of observation for each ID. For example, something like this:

ID | Num Totals
1  |    3
1  |    3
1  |    3
2  |    2
2  |    2
3  |    3
3  |    3
3  |    3
4  |    1

What's the fastest way to do this in Pandas?

4

A simple groupby+transform would work:

df['num_totals'] = df.groupby('ID').transform('count')
  • Got it. Brand new to PANDAS, and I wasn't sure if that would add the totals to each row in ID or just one of them. – Parseltongue Oct 9 '13 at 7:53
  • If you would use .count() or .agg('count') instead of transform() it would indeed collapse to the amount of unique ID's. But transform reshapes the result to the original dimension. – Rutger Kassies Oct 9 '13 at 7:56
  • Got it, then transform is what I need. Thanks! – Parseltongue Oct 9 '13 at 7:57

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