8

I have a DataFrame in Julia and I want to create a new column that represents the difference between consecutive rows in a specific column. In python pandas, I would simply use df.series.diff(). Is there a Julia equivelant?

For example:

data
1
2
4
6
7

# in pandas

df['diff_data'] = df.data.diff()

data   diff_data
1        NaN 
2          1
4          2
6          2
7          1
2
  • diff(A; dims), and for a DataFrame, diff.(eachcol(df)) Commented Jun 9, 2021 at 13:07
  • @BallpointBen I get this error: ``` MethodError: no method matching diff(::SentinelArrays.ChainedVector{Int64,Array{Int64,1}}, ::Int64) Closest candidates are: diff(::AbstractArray{T,1} where T) at multidimensional.jl:809 diff(::AbstractArray{T,N}; dims) where {T, N} at multidimensional.jl:841 ```
    – connor449
    Commented Jun 9, 2021 at 13:24

2 Answers 2

12

You can use ShiftedArrays.jl like this.

Declarative style:

julia> using DataFrames

julia> using ShiftedArrays: lag

julia> df = DataFrame(data=[1, 2, 4, 6, 7])
5×1 DataFrame
 Row │ data
     │ Int64
─────┼───────
   1 │     1
   2 │     2
   3 │     4
   4 │     6
   5 │     7

julia> transform(df, :data => (x -> x - lag(x)) => :data_diff)
5×2 DataFrame
 Row │ data   data_diff
     │ Int64  Int64?
─────┼──────────────────
   1 │     1    missing
   2 │     2          1
   3 │     4          2
   4 │     6          2
   5 │     7          1

Imperative style (in place):

julia> df = DataFrame(data=[1, 2, 4, 6, 7])
5×1 DataFrame
 Row │ data
     │ Int64
─────┼───────
   1 │     1
   2 │     2
   3 │     4
   4 │     6
   5 │     7

julia> df.data_diff = df.data - lag(df.data)
5-element Vector{Union{Missing, Int64}}:
  missing
 1
 2
 2
 1

julia> df
5×2 DataFrame
 Row │ data   data_diff
     │ Int64  Int64?
─────┼──────────────────
   1 │     1    missing
   2 │     2          1
   3 │     4          2
   4 │     6          2
   5 │     7          1

with diff you do not need extra packages and can do similarly the following:

julia> df.data_diff = [missing; diff(df.data)]
5-element Vector{Union{Missing, Int64}}:
  missing
 1
 2
 2
 1

(the issue is that diff is a general purpose function that does change the length of vector from n to n-1 so you have to add missing manually in front)

4
  • 4
    Adding to this awesome answer by Bogumil, you may also be interested in the TimeSeries.jl package which has "dataframes" with a special column containing times. They have a lag function as well: juliastats.org/TimeSeries.jl/stable/apply/#lag-1
    – juliohm
    Commented Jun 9, 2021 at 17:06
  • Indeed - time delta aware lagging is a common and very important requirement and it is not covered by my answer. Commented Jun 9, 2021 at 17:18
  • I get an error that "lag" is not defined. Has it been removed from ShiftedArrays?
    – Peaceful
    Commented Mar 24, 2023 at 16:19
  • I have updated the answer. It is defined but not exported. Commented Mar 24, 2023 at 17:42
1

Pandas df.diff() does it to the whole data frame at once and allows you to specify row-wise or column-wise. There might be a better way but this is what I used before (I like chaining or piping like in dplyr):

# using chain.jl

@chain df begin
    eachcol()
    diff.()
    DataFrame(:auto)
    rename!(names(df))
end

# OR base pipe

df |>
    x -> eachcol(x) |>
    x -> diff.(x) |>
    x -> DataFrame(x, :auto) |>
    x -> rename!(x, names(df)[2:end])


# OR without piping 

rename!(DataFrame(diff.(eachcol(df)), :auto), names(df))

You might need to insert the starting row, which will now have missing values.

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.