2

I have a dictionary:

dict = { "A": ("a", "mean"),
         "B": ("b", "sum")}

I want to use the following function for each of the keys:

for i in dict.keys():
    df.groupby(i)[dict[i][0]].sum()
or
    df.groupby(i)[dict[i][0]].mean()

How can I replace hardcoded "sum" or "mean", so it uses what is given in the dictionary? Something like this:

df.groupby(i)[dict[i][0]].dict[i][1]()
3

Since they are just strings sum, mean, which are valid Pandas function names, you can pass them as is with agg or apply. Also, you can rewrite your code so it can be a bit more readable:

# Please please do not use `dict` as a variable
for k, (col,op) in your_dict.items(): 
    df.groupby(k)[col].agg(op)
1

agg (doc) function is appropriate for this. An example for the use:

my_dict = { "A": ("a", "mean"),
         "B": ("b", "sum")}

for (col_for_group, (col_for_agg, agg_func)) in my_dict.items():
    df.groupby(col_for_group)[col_for_agg].agg(agg_func)

The use of reserved name like dict (datatype) as variable name is not recommended!

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