I have a list of functions

```
funs <- list(fn1 = function(x) x^2,
fn2 = function(x) x^3,
fn3 = function(x) sin(x),
fn4 = function(x) x+1)
#in reality these are all f = splinefun()
```

And I have a dataframe:

```
mydata <- data.frame(x1 = c(1, 2, 3, 2),
x2 = c(3, 2, 1, 0),
x3 = c(1, 2, 2, 3),
x4 = c(1, 2, 1, 2))
#actually a 500x15 dataframe of 500 samples from 15 parameters
```

For each of *i* rows, I would like to evaluate function *j* on each of the *j* columns and sum the results:

```
unlist(funs)
attach(mydata)
a <- rep(NA,4)
for (i in 1:4) {
a[i] <- sum(fn1(x1[i]), fn2(x2[i]), fn3(x3[i]), fn4(x4[i]))
}
```

How can I do this efficiently? Is this an appropriate occasion to implement `plyr`

functions? If so, how?

bonus question: why is `a[4]`

`NA`

?

Is this an appropriate time to use functions from `plyr`

, if so, how can I do so?

`unlist(funs)`

and`attach(mydata)`

or use`funs$fn1`

and`mydata$x1`

– David Jan 21 '11 at 23:53`x1[i]`

is a data frame, not a vector. You want`x1[[i]]`

or`x1[, 1]`

– hadley Jan 22 '11 at 1:29`str(x1[1])`

returns num 1 – BondedDust Jan 22 '11 at 3:30