Suppose you have a data frame with the following structure:
df <- data.frame(a=c(1,2,3,4), b=c("job1;job2", "job1a", "job4;job5;job6", "job9;job10;job11"))
where the column b
is a semicolon-delimited list (unbalanced by row). The ideal data.frame would be:
id,job,jobNum
1,job1,1
1,job2,2
...
3,job6,3
4,job9,1
4,job10,2
4,job11,3
I have a partial solution that takes almost 2 hours (170K rows):
# Split the column by the semicolon. Results in a list.
df$allJobs <- strsplit(df$b, ";", fixed=TRUE)
# Function to reshape column that is a list as a data.frame
simpleStack <- function(data){
start <- as.data.frame.list(data)
names(start) <-c("id", "job")
return(start)
}
# pylr!
system.time(df2 <- ddply(df, .(id), simpleStack))
It appears to be a size issue, because if I run
system.time(df2 <- ddply(df[1:4000,c("id", "allJobs")], .(id), simpleStack))
it only takes 9 seconds. First converting to a set of data.frames with sapply (with a different function) is fast, but the required `rbind' takes even longer.
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