I have a Dataframe of several columns say column1, column2...column100. How do I select only a subset of the columns eg (not column1) should return all columns column2...column100.

data[[colnames(data) .!= "column1"]])

doesn't seem to work.

I don't want to mutate the dataframe. I just want to select all the columns that don't have a particular column name like in my example


5 Answers 5


EDIT 2/7/2021: as people seem to still find this on Google, I'll edit this to say write at the top that current DataFrames (1.0+) allows both Not() selection supported by InvertedIndices.jl and also string types as column names, including regex selection with the r"" string macro. Examples:

julia> df = DataFrame(a1 = rand(2), a2 = rand(2), x1 = rand(2), x2 = rand(2), y = rand(["a", "b"], 2))
2×5 DataFrame
 Row │ a1        a2        x1        x2        y      
     │ Float64   Float64   Float64   Float64   String 
   1 │ 0.784704  0.963761  0.124937  0.37532   a
   2 │ 0.814647  0.986194  0.236149  0.468216  a

julia> df[!, r"2"]
2×2 DataFrame
 Row │ a2        x2       
     │ Float64   Float64  
   1 │ 0.963761  0.37532
   2 │ 0.986194  0.468216

julia> df[!, Not(r"2")]
2×3 DataFrame
 Row │ a1        x1        y      
     │ Float64   Float64   String 
   1 │ 0.784704  0.124937  a
   2 │ 0.814647  0.236149  a

Finally, the names function has a method which takes a type as its second argument, which is handy for subsetting DataFrames by the element type of each column:

julia> df[!, names(df, String)]
2×1 DataFrame
 Row │ y      
     │ String 
   1 │ a
   2 │ a

In addition to indexing with square brackets, there's also the select function (and its mutating equivalent select!), which basically takes the same input as the column index in []-indexing as its second argument:

julia> select(df, Not(r"a"))
2×3 DataFrame
 Row │ x1        x2        y      
     │ Float64   Float64   String 
   1 │ 0.124937  0.37532   a
   2 │ 0.236149  0.468216  a

Original answer below

As @Reza Afzalan said, what you're trying to do returns an array of strings, while column names in DataFrames are symbols.

Given that Julia doesn't have conditional list comprehension, the nicest thing you could do I guess would be

data[:, filter(x -> x != :column1, names(df))]

This will give you the data set with column 1 removed (without mutating it). You could extend this to checking against lists of names as well:

data[:, filter(x -> !(x in [:column1,:column2]), names(df))]

UPDATE: As Ian says below, for this use case the Not syntax is now the best way to go.

More generally, conditional list comprehensions are also available by now, so you could do:

data[:, [x for x in names(data) if x != :column1]]
  • The docs mention using a set of names as selection, although do not go very deep on ways you can define such a set Sep 14, 2015 at 12:18
  • Anything wrong with data[!, 2:ncol(df)] to select all except the first column? Thanks.
    – PatrickT
    Apr 13, 2021 at 1:46
  • Nothing wrong with that, although if you go that way I would probably write it as data[!, 2:end]
    – Nils Gudat
    Apr 14, 2021 at 12:45

As of DataFrames 0.19, seems that you can now do

select(data, Not(:column1))

to select all but the column column1. To select all except for multiple columns, use an array in the inverted index:

select(data, Not([:column1, :column2]))

  • 1
    just make sure all columns being dropped exist in data, else raises ArgumentError: column not found in the data frame
    – muon
    Sep 10, 2020 at 17:50

To select several columns by name:

 df[[:col1, :col2]

or, for other versions of the DataFrames library, I use:

select(df, [:col1, :col2])
  • 1
    This works great. In this case it returns a copy of the dataframe columns. I think equivalent is df[:, [:col1, :col2]]. To get a reference to the same dataframes columns (dont make a copy), use df[!, [:col1, :col2]]
    – Merlin
    Sep 23, 2020 at 2:50

colnames(data) .!= "column1" # => returns an array of bool

I think the right way is to use a filter function that returns desired column names

filter(x->x != "column1", colnames(data)) # => returns an array of string

DataFrame column names are of Symbol datatype

map(symbol ,str_array_of_filterd_column_names) # => returns array of identical symbols


One way is selecting a range of columns using the index

idx = length(data) data[2:idx]

Other ways to do conditional selection are in the DataFrames docs


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