I've tried many things and I've been having quite a bit of trouble vectorizing this code.
I have managed to figure out a way of doing this with lapply but it's slightly slower than the code below. Note that data is sorted by err
where err
is increasing with the rows.
mySlowFunction <- function(data, vectorizedFunc){
#data is a data.frame
#vectorizedFunc is a function
n <- d <- array(0, dim = c(nrow(data),1))
for (i in 1:nrow(data)){
err.i <- data$err[i]
wt <- vectorizedFunc(data$X[i:nrow(data)] + err.i)
n[i] <- sum(data$Y[i:nrow(data)] / wt)
d[i] <- sum(1 / wt)
}
data$N.wt <- n
data$D.wt <- d
data
}
data <- data.frame(X = rnorm(10000), Y = rnorm(10000), err = rnorm(10000))
data <- data[order(data$err),]
system.time(mySlowFunction(data, exp))
My slightly slower lapply version:
myEvenSlowerFunction <- function(data, vectorizedFunc){
#data is a data.frame
res <- unlist(lapply(data$err, function(x) {
idx <- which(data$err >= x)
wt <- vectorizedFunc(data$X[idx] + x)
c(sum(data$Y[idx] / wt), sum(1 / wt))
}))
idx <- seq(1,length(res) - 1,by=2)
data$N.wt <- res[idx]
data$D.wt <- res[idx + 1]
data
}
Thank you!
vectorizedFunc
? In particular, is it supposed to return a scalar or vector?data$X[i:nrow(data)]
is a vector.vectorizedFunc
is any arbitrary function really. I edited the post so you can run the function on some 'data'