# Apply function to column of data frame (column is a list)

I have a data frame with 2 columns, the first is the ID number and the second one is a list of numbers. I have defined a function which sums up the list and add 2. What I'd like to do is to do the calculation for all rows without using a for loop. I tried using apply but I can't make it work...

Here's the code:

The test data frame:

``````d1 <- c(1,2,3,4,5)
d2 <- c(4,6,8)
d3 <- c(5,10)

df1 <- data.frame(cbind(1, I(list(d1))))
df2 <- data.frame(cbind(2, I(list(d2))))
df3 <- data.frame(cbind(3, I(list(d3))))
df <- rbind(df1, df2, df3)
``````

The defined function sum2:

``````sum2 <- function(a)
{
sum(unlist(a)) + 2
}
``````

How can I use apply and add a third column to df containing the calculated value?

Thanks!

• Why do you prefer `sapply` over a loop? They are both a loop. Unless you want a cleaner syntax? – David Arenburg Dec 7 '16 at 11:29
• I thought I coud do it more efficiently... Is there a better approach to do it? – jormaga Dec 7 '16 at 13:18
• Can't think of one currently, sorry. If `X2` was containing strings such as `"4, 6, 8"` instead of lists, you could easily vectorize this, but I"m uncertain how to vectorize your specific format. – David Arenburg Dec 7 '16 at 13:55

## 2 Answers

the following works for your example

``````sapply(df[,2], function(x) sum(x)+2)
``````

We can use `sapply`

``````df\$NewCol <- sapply(df\$X2, function(x) sum(x) + 2)
``````

Or using the OP's function, but `unlist` is not needed

``````sapply(df\$X2, sum2)
``````
• Thanks a lot!!! :) – jormaga Dec 7 '16 at 11:56