I am trying to compute the frequency of a grouping defined by multiple columns and I want that frequency output to the original dask dataframe.
For instance. I want this table
ID PayMethod Day
45 CC Monday
45 Cash Monday
45 CC Tuesday
57 Cash Tuesday
57 Cash Tuesday
69 CC Saturday
69 Cash Sunday
To look like this:
ID PayMethod Day ID_PayMethod_Count ID_PayMethod_Day_Count
45 CC Monday 2 1
45 Cash Monday 2 1
45 CC Tuesday 2 1
57 Cash Tuesday 2 2
57 Cash Tuesday 2 2
69 CC Saturday 1 1
69 Cash Sunday 1 1
Groupby + transform gives us a groupby object that gives us the same number of rows as the original dataframe.
In pandas I could do the following
df['ID_PayMethod_Count'] = df.groupby(['ID','PayMethod','Count']).transform(np.size)
Currently Dask does not implement the groupby transform method. I was wondering if there was an alternative, whether it be some vectorized operation that could be applied to get to the same place or some other way. I know this could be done with a groupby/aggregation/merge operation but I'm trying to avoid this as it results in a memory issues and the operation not completing (these are large files).
Thanks.