Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

# data.frame: create column by applying a function to groups of rows

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 `iteration`):

``````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.

The `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 `data.frame`?

-

Using plyr:

``````ddply(df, .(experiment.num), transform, max = max(iteration))
``````
-
Thanks for the pointer to `plyr`, looks like really useful package. – Mathew Hall Jun 13 '12 at 17:02

Using `ave` in base R:

``````df\$i_max <- with(df, ave(iteration, experiment.num, FUN=max))
``````
-

Here's a way in base R:

``````within(df[order(df\$experiment.num), ],
max <- rep(tapply(iteration, experiment.num, max),
rle(experiment.num)\$lengths))
``````
-

I think you can use `data.table`:

``````install.packages("data.table")
library("data.table")
dt <- data.table(df) #make your data frame into a data table)
dt[, pgIndexBY := .BY, by = list(experiment.num)] #this will add a new column to your data table called pgIndexBY
``````
-