# Evaluate expression in R data.table

I have the following `data.table`:

``````> dt = data.table(expr = c("a + b", "a - b", "a * b", "a / b"), a = c(1,2,3,4), b = c(5,6,7,8))
> dt
expr a b
1: a + b 1 5
2: a - b 2 6
3: a * b 3 7
4: a / b 4 8
``````

My aim is to get the following `data.table`:

``````> dt
expr a b ans
1: a + b 1 5   6
2: a - b 2 6  -4
3: a * b 3 7  21
4: a / b 4 8 0.5
``````

I tried the following:

``````> dt[, ans := eval(expr)]

> dt[, ans := eval(parse(text = expr))]
``````

Any idea how can I calculate the `ans` column based on the expression in the `expr` column?

If your actual expressions describe calls to vectorized functions and are repeated many times each, this may be more efficient, since it only parses and evaluates each distinct expression one time:

``````f <- function(e, .SD) eval(parse(text=e[1]), envir=.SD)
dt[, ans:=f(expr,.SD), by=expr, .SDcols=c("a", "b")]
#     expr a b  ans
# 1: a + b 1 5  6.0
# 2: a - b 2 6 -4.0
# 3: a * b 3 7 21.0
# 4: a / b 4 8  0.5
``````

Really, there are a bunch of challenges for vectorization in such a setup. `eval` doesn't expect to run on a vector of expressions nor is it set up to iterate over a vector of environments by default. Here I define a helper function to wrap much of the iteration

``````calc <- function(e, ...) {
run<-function(x, ...) {
eval(parse(text=x), list(...))
}
do.call("mapply", c(list(run, e), list(...)))
}

dt[, ans:=calc(expr,a=a,b=b)]
``````

which returns

``````    expr a b  ans
1: a + b 1 5  6.0
2: a - b 2 6 -4.0
3: a * b 3 7 21.0
4: a / b 4 8  0.5
``````

as desired. Note that you'll need to name the parameters in the call to `calc()` so it knows which column to map to which variable.

• Functional programming FTW, big +1 – Colonel Beauvel Feb 4 '15 at 17:57