2

Good day all,

I'm struggling with creating a column which would populate the values using a random value generating value function which takes another column's value as an argument.

A bit of a context - I have a data table with lead time in a column:

library(data.table)

dt <- data.table(Item = rep(123456,each = 1000), LT = rnorm(1000,mean = 10, sd = 3))

and a function:

rand_ddlt_norm <- function(Lt,mean,sd){
  sign(Lt) * ( sum( rnorm( floor(abs(Lt)), mean, sd) ) +
                 rnorm(1, mean, sd) * ( abs(Lt)%%1) )
}

The above function is designed to calculate demand during the lead time for each row.

Unfortunately, I cannot do that:

dt[,ddlt := rand_ddlt_norm(LT, mean = 100, sd = 30)]

because all rows will be populated with the same number.

I could obviously put it into a loop, but for 10,000 iterations, 20,000+ products and numerous distribution types, the computation time is getting ridiculous.

I would graciously welcome any suggestions about how this code could be optimised without running a loop.

  • The function you create requests variables LT, est11 and est12. However, when you try to create your data table, you supply LT,mean and sd. Do you mean to use LT, est11 and est12 there, too? – MKBakker Jan 11 at 13:16
  • good capture, thank you, my brain isn't working anymore. that'll teach me retyping the code rather than pasting – ErrHuman Jan 11 at 13:18
3

Use Vectorize() to vectorize your function.

# data
library(data.table)

set.seed(1)

dt <- data.table::data.table(Item = rep(123456,each = 1000), LT = rnorm(1000,mean = 10, sd = 3))

# def function
rand_ddlt_norm <- function(Lt,est11,est12){
  sign(Lt) * ( sum( rnorm( floor(abs(Lt)), est11, est12) ) +
                 rnorm(1, est11, est12) * ( abs(Lt)%%1) )
}

rand_ddlt_norm <- Vectorize(rand_ddlt_norm) # vectorize it

dt[,ddlt := rand_ddlt_norm(LT, 100,30)]

Result:

> head(dt)
     Item        LT      ddlt
1: 123456  8.120639  845.6967
2: 123456 10.550930 1112.5837
3: 123456  7.493114  733.3808
4: 123456 14.785842 1516.8916
5: 123456 10.988523 1101.0449
6: 123456  7.538595  898.3760
  • 1
    Suggest set.seed(1) to make the example the same in perpetuity. – awchisholm Jan 11 at 13:19
  • Thanks @awchisholm, edited the answer. – JdeMello Jan 11 at 13:21
  • this is amazing, I've never used Vectorize() before. It' going to be my best friend I feel now! – ErrHuman Jan 11 at 13:23
  • problem is that the solution is slower than directly vectorizing the function, which can make a big difference when the data is big – denis Jan 11 at 13:30
  • 1
    Copy the set.seed(1) before the creation of dt since it is also randomly generated. – awchisholm Jan 11 at 15:33
3

I would propse you vectorize your function directly :

rand_ddlt_norm_vec <- function(Lt,mean,sd){
  sign(Lt) * ( rowSums( t(sapply(1:length(Lt),function(x){rnorm(floor(abs(Lt)),mean,sd)})))  +
                 rnorm(length(Lt), mean, sd) * ( abs(Lt)%%1) )
}

Where Lt is now a vector. Here

t(sapply(1:length(Lt),function(x){rnorm(floor(abs(Lt)),mean,sd)}))

create a matrice that has the same number of row than Lt, and the same number of column than floor(abs(Lt)). You then use Rowsum to get a vector.

To compare with the solution of JdeMello:

rand_ddlt_norm_vec2 <- Vectorize(rand_ddlt_norm)

library(microbenchmark)
library(data.table)

dt <- data.table(Item = rep(123456,each = 10000), LT = rnorm(10000,mean = 10, sd = 3))

    microbenchmark(
      denis = function(){dt[,ddlt := rand_ddlt_norm_vec(LT, mean = 100, sd = 30)]},
      jdeMello = function(){dt[,ddlt := rand_ddlt_norm_vec2(LT, mean = 100, sd = 30)]}
    )

Unit: nanoseconds
     expr min lq  mean median uq  max neval cld
    denis   0  0  0.24      0  0    1   100   a
 jdeMello   0  0 25.88      0  0 2566   100   a

This solution is 100 time faster than JdeMello solution.

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