I'm working with a large data frame called exp (file here) in R. In the interests of performance, it was suggested that I check out the idata.frame() function from plyr. But I think I'm using it wrong.
My original call, slow but it works:
df.median<-ddply(exp, .(groupname,starttime,fPhase,fCycle), numcolwise(median), na.rm=TRUE)
Error: is.data.frame(df) is not TRUE
library(plyr) df.median<-ddply(idata.frame(exp), .(groupname,starttime,fPhase,fCycle), numcolwise(median), na.rm=TRUE)
So, I thought, perhaps it is my data. So I tried the
baseball dataset. The
idata.frame example works fine:
dlply(idata.frame(baseball), "id", nrow) But if I try something similar to my desired call using
baseball, it doesn't work:
bb.median<-ddply(idata.frame(baseball), .(id,year,team), numcolwise(median), na.rm=TRUE) >Error: is.data.frame(df) is not TRUE
Perhaps my error is in how I'm specifying the groupings? Anyone know how to make my example work?
I also tried:
groupVars <- c("groupname","starttime","fPhase","fCycle") voi<-c('inadist','smldist','lardist') i<-idata.frame(exp) ag.median <- aggregate(i[,voi], i[,groupVars], median) Error in i[, voi] : object of type 'environment' is not subsettable
which uses a faster way of getting the medians, but gives a different error. I don't think I understand how to use idata.frame at all.