Doing a `setkey`

here would be costly (even if you were to use the fast ordering in `1.8.11`

), because it has to move the data (by reference) as well.

However, you can get around this case by using `floor`

function. Basically, if you want all the numbers in [1,2] (Note: inclusive of 1 and 2 here), then `floor`

will provide a value of "1" for all these values. That is, you can do:

```
system.time(t1 <- dt[floor(a) == 1])
# user system elapsed
# 0.234 0.001 0.238
```

This is equivalent to doing `dt[a >= 1 & a <=2]`

and is twice as fast.

```
system.time(t2 <- dt[a >= 1 & a <= 2])
# user system elapsed
# 0.518 0.081 0.601
identical(t1,t2) # [1] TRUE
```

However, since you don't want the equality, you can use a hack to subtract the tolerance = `.Machine$double.eps^0.5`

from column `a`

. If the value is in the range `[1, 1+tolerance)`

, then it's still considered to be 1. And if it's just more, then it's not 1 anymore (internally). That is, it's the smallest number > 1 that the machine can identify as not 1. So, if you subtract 'a' by tolerance all numbers that are internally represented as "1" will become < 1 and `floor(.)`

will result in 0. So, you'll get the range > 1 and < 2 instead. That is,

```
dt[floor(a-.Machine$double.eps^0.5)==1]
```

will give the equivalent result as `dt[a>1 & a<2]`

.

If you've to do this repetitively, then probably creating a new column with this `floor`

function and setting key on that `integer`

column could help:

```
dt[, fa := as.integer(floor(a-.Machine$double.eps^0.5))]
system.time(setkey(dt, fa)) # v1.8.11
# user system elapsed
# 0.852 0.158 1.043
```

Now, you can query whatever range you want using binary search:

```
> system.time(dt[J(1L)]) # equivalent to > 1 & < 2
# user system elapsed
# 0.071 0.002 0.076
> system.time(dt[J(1:4)]) # equivalent to > 1 & < 5
# user system elapsed
# 0.082 0.002 0.085
```

`between`

will not save any time because it contains the code`x >= lower & x <= upper`

.`dt[a > 1 & a < 2]`

will be just as fast – Señor O Dec 16 '13 at 21:08