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When I'm running simulations, I like to initialize a big, empty array and fill it up as the simulation iterates through to the end. I do this with something like res = Array(Real,(n_iterations,n_parameters)). However, it would be nice to have named columns, which I think means using a DataFrame. Yet when I try to do something like res_df = convert(DataFrame,res) it throws an error. I would like a more concise approach than doing something like res_df = DataFrame(a=Array(Real,N),b=Array(Real,N),c=Array(Real,N),....) as suggested by the answers to: julia create an empty dataframe and append rows to it

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To preallocate a data frame, you must pre-allocate its columns. You can create three columns full of missing values by simply doing [fill(missing, 10000) for _ in 1:3], but that doesn't actually allocate anything at all because those vectors can only hold one value — missing — and thus they can't be changed to hold other values later. One way to do this is by using to Vector constructors that can hold either Missing or Float64:

julia> DataFrame([Vector{Union{Missing, Float64}}(missing, 10000) for _ in 1:3], [:a, :b, :c])
10000×3 DataFrame
   Row │ a         b         c
       │ Float64?  Float64?  Float64?
───────┼──────────────────────────────
     1 │  missing   missing   missing
     2 │  missing   missing   missing
   ⋮   │    ⋮         ⋮         ⋮
 10000 │  missing   missing   missing
                     9997 rows omitted

Note that rather than Real, this is using the concrete Float64 — this will have significantly better performance.

(this answer was edited to reflect DataFrames v1.0 syntax)

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  • If you know that all your columns are of the same type and that there will never be unpopulated (NA) elements, there may be other data structures that you can use. Take a look at NamedArrays.jl, or if you're willing to fly by the seat of your pants and working on the unstable 0.4, you can try my recent work-in-progress AxisArrays.jl. Both projects aim to more directly augment the built-in Array with dimension names and axis metadata, whereas DataFrames uses a collection-of-columns approach.
    – mbauman
    Feb 23, 2015 at 20:01
  • This method is now deprecated. Oct 13, 2021 at 10:26
  • 1
    @JakeIreland I've updated the answer
    – mbauman
    Oct 13, 2021 at 13:59

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