Here's the essence of your confusion:

Due to floating point representation
precision, this could be something
like 122.99999999999999999999 or
123.000000000000000000001.

This is false. It will always be exactly 123 on a IEEE-754 compliant system, which is almost all systems in these modern times. Floating-point arithmetic does not have "random error" or "noise". It has precise, deterministic rounding, and many simple computations (like this one) do not incur any rounding at all.

`123`

is exactly representable in floating-point, and so is `123*123`

(so are *all* modest-sized integers). So no rounding error occurs when you convert `123*123`

to a floating-point type. The result is **exactly** `15129`

.

Square root is a *correctly rounded* operation, per the IEEE-754 standard. This means that if there is an exact answer, the square root function is required to produce it. Since you are taking the square root of *exactly* `15129`

, which is *exactly* `123`

, that's *exactly* the result you get from the square root function. No rounding or approximation occurs.

Now, for how large of an integer will this be true?

Double precision can exactly represent all integers up to 2^53. So as long as `i*i`

is less than 2^53, no rounding will occur in your computation, and the result will be exact for that reason. This means that for all `i`

smaller than `94906265`

, we know the computation will be exact.

But you tried `i`

larger than that! What's happening?

For the largest `i`

that you tried, `i*i`

is just barely larger than 2^53 (`1.1102... * 2^53`

, actually). Because conversions from integer to double (or multiplication in double) are also *correctly rounded* operations, `i*i`

will be the representable value closest to the exact square of `i`

. In this case, since `i*i`

is 54 bits wide, the rounding will happen in the very lowest bit. Thus we know that:

```
i*i as a double = the exact value of i*i + rounding
```

where `rounding`

is either `-1,0, or 1`

. If rounding is zero, then the square is exact, so the square root is exact, so we already know you get the right answer. Let's ignore that case.

So now we're looking at the square root of `i*i +/- 1`

. Using a Taylor series expansion, the infinitely precise (unrounded) value of this square root is:

```
i * (1 +/- 1/(2i^2) + O(1/i^4))
```

Now this is a bit fiddly to see if you haven't done any floating point error analysis before, but if you use the fact that `i^2 > 2^53`

, you can see that the:

```
1/(2i^2) + O(1/i^4)
```

term is smaller than 2^-54, which means that (since square root is correctly rounded, and hence its rounding error must be smaller than 2^54), the *rounded* result of the sqrt function is exactly `i`

.

It turns out that (with a similar analysis), for any exactly representable floating point number x, sqrt(x*x) is exactly x (assuming that the intermediate computation of `x*x`

doesn't over- or underflow), so the only way you can encounter rounding for this type of computation is in the representation of `x`

itself, which is why you see it starting at `2^53 + 1`

(the smallest unrepresentable integer).

`i = 0; 100000000.times { puts i; i += 1 }`

to`100000000.times { |i| puts i }`

– Chris Lutz Jan 13 '10 at 21:43