Hi all R efficiency gurus (and people with a similar question to me),
This is an efficiency question. I have some very large data set. One data.frame contains data from one instrument with a POSIX date and time with values at a very high frequency. Another data.frame contains data from another instrument with a column of date and time values at much lower sampling frequency.
I wish to assign summary values of the high frequency data frame to the time periods of the low frequency data.frame. This function works, but is very slow when you have millions of data points:
st <- strptime("22/09/2013 12:00:00", "%d/%m/%Y %H:%M:%S")
st.vec <- st + runif(10,0, 60*60*24)
en.vec <- st.vec + 10*60
tm.hfreq <- strptime("22/09/2013 12:00:00", "%d/%m/%Y %H:%M:%S") + runif(400,0, 60*60*24)
vals.hfreq <- runif(400,0, 12000)
intervalstats <- function(strt, fin, vals, tms){
mns <- NULL
mds <- NULL
sds <- NULL
for (i in seq(1,length(fin))){
mns <- append(mns,mean(vals[(tms > strt[i])&(tms < fin[i])]))
sds <- append(sds,sd(vals[(tms > strt[i])&(tms < fin[i])]))
mds <- append(mds,median(vals[(tms > strt[i])&(tms < fin[i])]))
}
res <- cbind(mns, sds, mds)
res
}
intervalstats(st.vec, en.vec, vals.hfreq, tm.hfreq)
Does anyone have a suggestion for a more efficient, faster approach?
mns
asNULL
but asrep(NA, length(fin))
(or something similar) and -instead ofappend
- usemns[i] = ..
. Also, you could calculatevals[(tms > strt[i])&(tms < fin[i])]
just once and set it to a variable and, then, use it three times.