8

I am trying to make a groupby + sum on a Julia Dataframe with Int and String values

For instance, df :

│ Row │ A      │ B      │ C     │ D      │
│     │ String │ String │ Int64 │ String │
├─────┼────────┼────────┼───────┼────────┤
│ 1   │ x1     │ a      │ 12    │ green  │
│ 2   │ x2     │ a      │ 7     │ blue   │
│ 3   │ x1     │ b      │ 5     │ red    │
│ 4   │ x2     │ a      │ 4     │ blue   │
│ 5   │ x1     │ b      │ 9     │ yellow │

To do this in Python, the command could be :

df_group = df.groupby(['A', 'B']).sum().reset_index()

I will obtain the following output result with the initial column labels :

    A  B   C
0  x1  a  12
1  x1  b  14
2  x2  a  11

I would like to do the same thing in Julia. I tried this way, unsuccessfully :

df_group = aggregate(df, ["A", "B"], sum)

MethodError: no method matching +(::String, ::String)

Have you any idea of a way to do this in Julia ?

2 Answers 2

7

Try (actually instead of non-string columns, probably you want columns that are numeric):

numcols = names(df, findall(x -> eltype(x) <: Number, eachcol(df)))
combine(groupby(df, ["A", "B"]), numcols .=> sum .=> numcols)

and if you want to allow missing values (and skip them when doing a summation) then:

numcols = names(df, findall(x -> eltype(x) <: Union{Missing,Number}, eachcol(df)))
combine(groupby(df, ["A", "B"]), numcols .=> sum∘skipmissing .=> numcols)
2
  • Thanks for the answer. In practice my real dataframe has many columns to sum (+100). So I would like to find a more generic way to do. Is this possible to make the sum on all non string columns ?
    – Bebio
    Oct 6, 2020 at 15:25
  • It is possible on master (so it will be available in 0.22 release). I will update the answer with the recommendation that can be used now. Oct 6, 2020 at 15:51
5

Julia DataFrames support split-apply-combine logic, similar to pandas, so aggregation looks like

using DataFrames

df = DataFrame(:A => ["x1", "x2", "x1", "x2", "x1"], 
               :B => ["a", "a", "b", "a", "b"],
               :C => [12, 7, 5, 4, 9],
               :D => ["green", "blue", "red", "blue", "yellow"])

gdf = groupby(df, [:A, :B])
combine(gdf, :C => sum)

with the result

julia> combine(gdf, :C => sum)
3×3 DataFrame
│ Row │ A      │ B      │ C_sum │
│     │ String │ String │ Int64 │
├─────┼────────┼────────┼───────┤
│ 1   │ x1     │ a      │ 12    │
│ 2   │ x2     │ a      │ 11    │
│ 3   │ x1     │ b      │ 14    │

You can skip the creation of gdf with the help of Pipe.jl or Underscores.jl

using Underscores

@_ groupby(df, [:A, :B]) |> combine(__, :C => sum)

You can give name to the new column with the following syntax

julia> @_ groupby(df, [:A, :B]) |> combine(__, :C => sum => :C)
3×3 DataFrame
│ Row │ A      │ B      │ C     │
│     │ String │ String │ Int64 │
├─────┼────────┼────────┼───────┤
│ 1   │ x1     │ a      │ 12    │
│ 2   │ x2     │ a      │ 11    │
│ 3   │ x1     │ b      │ 14    │
2
  • Thanks for your answer.
    – Bebio
    Oct 6, 2020 at 15:55
  • what if I want to do a groupby sum and count in the same line? Mar 7, 2022 at 12:07

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.