I have a data frame consisting of results from multiple runs of an experiment, each of which serves as a log, with its own ascending counter. I'd like to add another column to the data frame that has the maximum value of
iteration for each distinct value of
experiment.num in the sample below:
df <- data.frame( iteration = rep(1:5,5), experiment.num = c(rep(1,5),rep(2,5),rep(3,5),rep(4,5),rep(5,5)), some.val=42, another.val=12 )
In this example, the extra column would look like this (as all the subsets have the same maximum for
df$max <- rep(5,25)
The naive solution I currently use is:
df$max <- sapply(df$experiment.num,function(exp.num) max(df$iteration[df$experiment.num == exp.num]))
I've also used
sapply(unique(df$experiment.num), function(n) c(n,max(df$iteration[df$experiment.num==n]))) to build another frame which I can then merge with the original, but both of these approaches seem more complicated than necessary.
experiment.num column is a factor, so I think I might be able to exploit that to avoid iteratively doing this naive subsetting for all rows.
Is there a better way to get a column of maximum values for subsets of a