4

I would like to apply a set of functions to a value and get a set of values as output. I see in help?> groupby (DataFrames package) we can do:

> df |> groupby(:a) |> [sum, length]

> df |> groupby([:a, :b]) |> [sum, length]

but can we do

> [sum, length](groupby([:a, :b]))
 MethodError: objects of type Array{Function,1} are not callable
 square brackets [] for indexing an Array.
 eval_user_input(::Any, ::Base.REPL.REPLBackend) at ./REPL.jl:64
    in macro expansion at ./REPL.jl:95 [inlined]
    in (::Base.REPL.##3#4{Base.REPL.REPLBackend})() at ./event.jl:68

or even

> [sum, length](1:5)

I would expect the output:

[15, 5]
6

Yes and no. (i.e. yes it's possible, but no, not with that syntax):


No: The syntax you see with |> and dataframes is not general syntax. It's just how the |> method is defined for dataframes. See its definition in file grouping.jl (line 377) and you'll see it's just a wrapper to another function, and it's defined to either accept a function, or a vector of functions.

PS: Note that the generic |> which "pipes" an argument into a function, only expects 1-argument functions on the right hand side, and has very little to do with this particular "dataframe-overloaded" method.


Yes: You can apply a set of functions to a set of inputs in other ways.
One simple way, e.g. would be via a list comprehension:

julia> a = [1 2 3;2 3 4];
julia> [f(a) for f in [sum, length, size]]
3-element Array{Any,1}:
 15     
  6     
   (2,3)

Or using map:

julia> map( (x) -> x(a), [sum, length, size])

etc.


PS: If you're keen to use |> to achieve this, clearly you could also do something like this:

julia> a |> (x) -> [sum(x), length(x), size(x)]

but presumably that defeats the purpose of what you're trying to do :)

  • 1
    Thanks for pointing out the source code. I could extend that to achieve: import Base.(|>) (|>){T<:Function}(a::Array, fs::Vector{T}) = [f(a) for f in fs] > 1:5 |> collect |> [sum, length] 2-element Array{Int64,1}: 15 5 – Phuoc Nov 9 '16 at 3:32
1

Your proposed syntax is possible in Julia by adding a method to the type Array{T} (here, T is restricted to subtypes of Function):

julia> (a::Array{T}){T<:Function}(x) = [f(x) for f in a]

julia> [sin cos; exp sqrt](0)
2×2 Array{Float64,2}:
 0.0  1.0
 1.0  0.0

However, this has a large overhead if the number of functions is small. For maximum speed, one can use Tuples and a @generated function to unroll the loop manually:

julia> @generated (t::NTuple{N, Function}){N}(x) = :($((:(t[$i](x)) for i in 1:N)...),)

julia> (cos, sin)(0)
(1.0,0.0)

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