dataframes in pandas are indexed in one or more numerical and/or string columns. Particularly, after a groupby operation, the output is a dataframe where the new index is given by the groups.

Similarly, julia dataframes always have a column named Row which I think is equivalent to the index in pandas. However, after groupby operations, julia dataframes don't use the groups as the new index. Here is a working example:

using RDatasets;
using DataFrames;
using StatsBase;

df = dataset("Ecdat","Cigarette");

gdf = groupby(df, "Year");

combine(gdf, "Income" => mean)


11×2 DataFrame
│ Row │ Year  │ Income_mean │
│     │ Int32 │ Float64     │
│ 1   │ 1985  │ 7.20845e7   │
│ 2   │ 1986  │ 7.61923e7   │
│ 3   │ 1987  │ 8.13253e7   │
│ 4   │ 1988  │ 8.77016e7   │
│ 5   │ 1989  │ 9.44374e7   │
│ 6   │ 1990  │ 1.00666e8   │
│ 7   │ 1991  │ 1.04361e8   │
│ 8   │ 1992  │ 1.10775e8   │
│ 9   │ 1993  │ 1.1534e8    │
│ 10  │ 1994  │ 1.21145e8   │
│ 11  │ 1995  │ 1.27673e8   │

Even if the creation of the new index isn't done automatically, I wonder if there is a way to manually set a chosen column as index. I discover the method setindex! reading the documentation. However, I wasn't able to use this method. I tried:

#create new df
income = combine(gdf, "Income" => mean)
#set index
setindex!(income, "Year")

which gives the error:

ERROR: LoadError: MethodError: no method matching setindex!(::DataFrame, ::String)

I think that I have misused the command. What am I doing wrong here? Is it possible to manually set an index in a julia dataframe using one or more chosen columns?

  • The "Row" column you see when you display the DataFrame is just there for show--there is no default column named "Row" in a DataFrame. Is there a reason you need an index column in the first place?
    – PaSTE
    Nov 5, 2020 at 2:19
  • I need an index to create pivot tables to later convert to latex. I like this feature in pandas groupby and pivot_table. I also like multi-index and so on. I just want it in julia too.
    – Lucas
    Nov 5, 2020 at 2:38
  • 1
    @Lucas To be clear, you can pivot a DataFrame with DataFrames.jl. See the docs. If you have further questions about table operations on DataFrames, please open additional Stack Overflow questions with the specific problem you are facing. :) Nov 5, 2020 at 17:26

1 Answer 1


DataFrames.jl does not currently allow specifying an index for a data frame. The Row column is just there for printing---it's not actually part of the data frame.

However, DataFrames.jl provides all the usual table operations, such as joins, transformations, filters, aggregations, and pivots. Support for these operations does not require having a table index. A table index is a structure used by databases (and by Pandas) to speed up certain table operations, at the cost of additional memory usage and the cost of creating the index.

The setindex! function you discovered is actually a method from Base Julia that is used to customize the indexing behavior for custom types. For example, x[1] = 42 is equivalent to setindex!(x, 42, 1). Overloading this method allows you to customize the indexing behavior for types that you create.

The docstrings for Base.setindex! can be found here and here.

If you really need a table with an index, you could try IndexedTables.jl.

  • 1
    Thanks for clarifying. Hopefully, DataFrames library will add this feature in the future.
    – Lucas
    Nov 5, 2020 at 0:47
  • 2
    Can you please comment for what operations you need the index for that are not currently supported? In DataFrames.jl the normal way to work if you need an index is to use groupby. Nov 5, 2020 at 6:51
  • 2
    I like the whole set of index methods in pd (set_index, reset_index, and reindex). They are convenient and simple. For example, if I want a table in latex with a statistic from groups I just type df.groupby("species").agg({k:mean for k in ["petal_length", "petal_width"]}. to_latex() or if I want to compute the % in columns I will just iterate over columns in 100*df.col=df.col/df.col.sum() after run df.set_index("species"). In both cases, DataFrames.jl will treat species as a regular column which create an undesired output in first operation and simply don't work in the second
    – Lucas
    Nov 5, 2020 at 12:43
  • @LucasCavalcantiRodrigues The use of Not(cols) as a selector might be helpful for grabbing excluding the groupby keys from a selection. e.g., df2 = combine(groupby(df1, gb_cols), f); df[!, Not(gb_cols)] May 21, 2021 at 4:37

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