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When grouping a Pandas DataFrame, when should I use transform and when should I use aggregate? How do they differ with respect to their application in practice and which one do you consider more important?

1 Answer 1

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consider the dataframe df

df = pd.DataFrame(dict(A=list('aabb'), B=[1, 2, 3, 4], C=[0, 9, 0, 9]))

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groupby is the standard use aggregater

df.groupby('A').mean()

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maybe you want these values broadcast across the whole group and return something with the same index as what you started with.
use transform

df.groupby('A').transform('mean')

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df.set_index('A').groupby(level='A').transform('mean')

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agg is used when you have specific things you want to run for different columns or more than one thing run on the same column.

df.groupby('A').agg(['mean', 'std'])

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df.groupby('A').agg(dict(B='sum', C=['mean', 'prod']))

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    fabulously tremendous answer!
    – mathopt
    Jul 28, 2017 at 4:24
  • 2
    By using agg how can I return to original data-frame df exploding the aggregated columns?
    – MAC
    Aug 12, 2021 at 12:12
  • @MAC To explode columns, use transform. Jun 24, 2022 at 7:14

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