# Trying to replace for loops in R with apply functions for large dataset

I am trying to perform a simple calculation for a large number of parameter combinations. I have 15,625 permutations, and want to run Monte Carlo experiments (~5000) for each combination. My issue is storing the data properly and avoiding for loops that are taking forever. I'd like to use the apply functions but can't figure them out. I have the following code, which runs, but very inefficiently! I am interested in saving the "res[i,j]" values. I've seen that an easy way to do Monte Carlo is using the replicate command...but clearly I'm not there yet.... Any suggestions would be really appreciated!!

``````#run the beta function
beta <- function(M) {
b_slope <- log(M) / 10
return (b_slope)
}
#set the experiment conditions for looping through different M, Cv, and q parameter vals
cvVals <- seq(0.1,3.09,0.12)
mVals <- seq(1,2.98,0.08)
qVals <- seq(0.9,0.999,0.004)
mNum <- length(mVals);cvNum <- length(cvVals);qNum<-length(qVals);
total<-mNum*cvNum*qNum

#iterate through time (up to 5000 yrs)
imax<-5000

#Number of experiments
expts<-5

#fill a matrix with each combination of cv, m, q values
df <- data.frame(expand.grid(cv=cvVals, m=mVals, q=qVals))

#set a column in the df to have X_Crit values
df\$i<-seq(1:nrow(df))
df\$X_crit <- qlnorm(df\$q)

#store the results in a df with the dimensions of df by # of experiments
res <- data.frame(nrow=nrow(df), ncol=expts)

for (i in 1:nrow(df)) {

for (j in 1:ncol(res)) {
#fill in all the x_critical values for each q
X_crit <- df\$X_crit[i]

#compute the mean and std dev and flow for all values up to imax
tempmean <- beta(df\$m[i])*seq(0, imax-1)
tempstd <- df\$cv[i]*tempmean
#generate imax random lognorm variables as error terms
err <- rlnorm(imax, 0, 1)
#compute flow from lognormal quantile function
flow <- tempmean + tempstd*err

#store the result which looks for the first exceedance of flow
if (sum(flow>X_crit)>0) {
res[i, j] <-min(which(flow > X_crit))
} else {
res[i,j] <- imax
}

}

}
``````
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It appears that you can get rid of the inner loop all together since I see nothing in that loop that depends on `j`, except when you add the values to the data frame. That last part can be rewritten as `res[i,] <- ...`. Value recycling will take care of the adding the value to every column. –  Christopher Louden Apr 9 at 18:34