`by`

is slower than `tapply`

because it is wrapping `by`

.
Let's take a look at some benchmarks: `tapply`

in this situation is more than 3x faster than using `by`

**UPDATED** to include @Roland's great recomendation:

```
library(rbenchmark)
library(data.table)
dt <- data.table(x,key="f")
using.tapply <- quote(tapply(x[, 1], x[, "f"], mean))
using.by <- quote(by(x[, 1], x[, "f"], mean))
using.dtable <- quote(dt[,mean(col1),by=key(dt)])
times <- benchmark(using.tapply, using.dtable, using.by, replications=10, order="relative")
times[,c("test", "elapsed", "relative")]
#------------------------#
# RESULTS #
#------------------------#
# COMPARING tapply VS by #
#-----------------------------------
# test elapsed relative
# 1 using.tapply 2.453 1.000
# 2 using.by 8.889 3.624
# COMPARING data.table VS tapply VS by #
#------------------------------------------#
# test elapsed relative
# 2 using.dtable 0.168 1.000
# 1 using.tapply 2.396 14.262
# 3 using.by 8.566 50.988
```

### If x$f is a factor, the loss in efficiency between tapply and by is even greater!

**Although, notice that they both improve relative to non-factor inputs, while data.table remains approx the same or worse**

```
x[, "f"] <- as.factor(x[, "f"])
dt <- data.table(x,key="f")
times <- benchmark(using.tapply, using.dtable, using.by, replications=10, order="relative")
times[,c("test", "elapsed", "relative")]
# test elapsed relative
# 2 using.dtable 0.175 1.000
# 1 using.tapply 1.803 10.303
# 3 using.by 7.854 44.880
```

## As for the why, the short answer is in the documentation itself.

`?by`

:

Description

Function by is an object-oriented wrapper for tapply applied to data frames.

let's take a look at the source for `by`

(or more specificaly, `by.data.frame`

):

```
by.data.frame
function (data, INDICES, FUN, ..., simplify = TRUE)
{
if (!is.list(INDICES)) {
IND <- vector("list", 1L)
IND[[1L]] <- INDICES
names(IND) <- deparse(substitute(INDICES))[1L]
}
else IND <- INDICES
FUNx <- function(x) FUN(data[x, , drop = FALSE], ...)
nd <- nrow(data)
ans <- eval(substitute(tapply(seq_len(nd), IND, FUNx, simplify = simplify)),
data)
attr(ans, "call") <- match.call()
class(ans) <- "by"
ans
}
```

We see immediately that there is still a call to `tapply`

plus a lot of extras (including calls to `deparse(substitute(.))`

and an `eval(substitute(.))`

both of which are relatively slow). Therefore it makes sense that your `tapply`

will be relatively faster than a similar call to `by`

.

`*apply`

tool will serve (some allow multiple arguments), or a nested`tapply(tapply(...))`

construction. – Carl Witthoft Dec 4 '12 at 15:23