# Vectorizing a simulation

Facebook and Stack Exchange are now working together to support the Facebook developer community. Facebook engineers participate here along with the best Facebook developers in the world. If you have a technical question about Facebook, this is the best place to ask.

Trying to wrap my mind arround vectorizing, trying to make some simulations faster I found this very basic epidemic simulation. The code is from the book http://www.amazon.com/Introduction-Scientific-Programming-Simulation-Using/dp/1420068725/ref=sr_1_1?ie=UTF8&qid=1338069156&sr=8-1

``````#program spuRs/resources/scripts/SIRsim.r

SIRsim <- function(a, b, N, T) {
# Simulate an SIR epidemic
# a is infection rate, b is removal rate
# N initial susceptibles, 1 initial infected, simulation length T
# returns a matrix size (T+1)*3 with columns S, I, R respectively
S <- rep(0, T+1)
I <- rep(0, T+1)
R <- rep(0, T+1)
S[1] <- N
I[1] <- 1
R[1] <- 0
for (i in 1:T) {
S[i+1] <- rbinom(1, S[i], (1 - a)^I[i])
R[i+1] <- R[i] + rbinom(1, I[i], b)
I[i+1] <- N + 1 - R[i+1] - S[i+1]
}
return(matrix(c(S, I, R), ncol = 3))
}
``````

The core of the simulation is the `for` loop. My question, is since the code produces the `S[i+1]` and `R[i+1]` values from the `S[i]` and `R[i]` values, is it possible to vectorize it with an apply function?

Many thanks

-
`apply` functions are mostly syntactic sugar around `for` loops, you probably wouldn't gain much speed this way. You could try the `compiler` package, or `Rcpp`. – baptiste May 26 '12 at 22:29

It's hard to 'vectorize' iterative calculations, but this is a simulation and simulations are likely to be run many times. So write this to do all the the simulations at the same time by adding an argument `M` (number of simulations to perform), allocating an M x (T + 1) matrix, and then filling in successive columns (times) of each simulation. The changes seem to be remarkably straight-forward (so I've probably made a mistake; I'm particularly concerned about the use of vectors in the second and third arguments to `rbinom`, though this is consistent with the documentation).

``````SIRsim <- function(a, b, N, T, M) {
## Simulate an SIR epidemic
## a is infection rate, b is removal rate
## N initial susceptibles, 1 initial infected, simulation length T
## M is the number of simulations to run
## returns a list of S, I, R matricies, each M simulation
## across T + 1 time points
S <- I <- R <- matrix(0, M, T + 1)
S[,1] <- N
I[,1] <- 1
for (i in seq_along(T)) {
S[,i+1] <- rbinom(M, S[,i], (1 - a)^I[,i])
R[,i+1] <- R[,i] + rbinom(M, I[,i], b)
I[,i+1] <- N + 1 - R[,i+1] - S[,i+1]
}
list(S=S, I=I, R=R)
}
``````
-