9

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)]
Error in eval(expr, envir, enclos) : object 'expr' not found

> dt[, ans := eval(parse(text = expr))]
Error in parse(text = expr) : object 'expr' not found

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

12

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
6

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

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