Pythagorean Triples make a good example for claiming "`for`

loops considered harmful", because `for`

loops seduce us into thinking about counting, often the most irrelevant part of a task.

(I'm going to stick with pseudo-code to avoid language biases, and to keep the pseudo-code streamlined, I'll not optimize away multiple calculations of e.g. `x * x`

and `y * y`

.)

**Version 1**:

```
for x in 1..N {
for y in 1..N {
for z in 1..N {
if x * x + y * y == z * z then {
// use x, y, z
}
}
}
}
```

is the worst solution. It generates duplicates, and traverses parts of the space that aren't useful (e.g. whenever `z < y`

). Its time complexity is cubic on `N`

.

**Version 2**, the first improvement, comes from requiring `x < y < z`

to hold, as in:

```
for x in 1..N {
for y in x+1..N {
for z in y+1..N {
if x * x + y * y == z * z then {
// use x, y, z
}
}
}
}
```

which reduces run time and eliminates duplicated solutions. However, it is still cubic on `N`

; the improvement is just a reduction of the co-efficient of `N`

-cubed.

It is pointless to continue examining increasing values of `z`

after `z * z < x * x + y * y`

no longer holds. That fact motivates **Version 3**, the first step away from brute-force iteration over `z`

:

```
for x in 1..N {
for y in x+1..N {
z = y + 1
while z * z < x * x + y * y {
z = z + 1
}
if z * z == x * x + y * y and z <= N then {
// use x, y, z
}
}
}
```

For `N`

of 1000, this is about 5 times faster than Version 2, but it is *still* cubic on `N`

.

The next insight is that `x`

and `y`

are the only independent variables; `z`

depends on their values, and the last `z`

value considered for the previous value of `y`

is a good *starting* search value for the next value of `y`

. That leads to **Version 4**:

```
for x in 1..N {
y = x+1
z = y+1
while z <= N {
while z * z < x * x + y * y {
z = z + 1
}
if z * z == x * x + y * y and z <= N then {
// use x, y, z
}
y = y + 1
}
}
```

which allows `y`

and `z`

to "sweep" the values above `x`

only once. Not only is it over 100 times faster for `N`

of 1000, it is quadratic on `N`

, so the speedup increases as `N`

grows.

I've encountered this kind of improvement often enough to be mistrustful of "counting loops" for any but the most trivial uses (e.g. traversing an array).

**Update:** Apparently I should have pointed out a few things about V4 that are easy to overlook.

**Both** of the `while`

loops are controlled by the value of `z`

(one directly, the other indirectly through the square of `z`

). The inner `while`

is actually speeding up the outer `while`

, rather than being orthogonal to it. *It's important to look at what the loops are doing, not merely to count how many loops there are.*

All of the calculations in V4 are strictly integer arithmetic. Conversion to/from floating-point, as well as floating-point calculations, are costly by comparison.

V4 runs in constant memory, requiring only three integer variables. There are no arrays or hash tables to allocate and initialize (and, potentially, to cause an out-of-memory error).

The original question allowed all of `x`

, `y`

, and `x`

to vary over the same range. V1..V4 followed that pattern.

Below is a not-very-scientific set of timings (using Java under Eclipse on my older laptop with other stuff running...), where the "use x, y, z" was implemented by instantiating a Triple object with the three values and putting it in an ArrayList. (For these runs, `N`

was set to 10,000, which produced 12,471 triples in each case.)

```
Version 4: 46 sec.
using square root: 134 sec.
array and map: 400 sec.
```

The "array and map" algorithm is *essentially*:

```
squares = array of i*i for i in 1 .. N
roots = map of i*i -> i for i in 1 .. N
for x in 1 .. N
for y in x+1 .. N
z = roots[squares[x] + squares[y]]
if z exists use x, y, z
```

The "using square root" algorithm is *essentially*:

```
for x in 1 .. N
for y in x+1 .. N
z = (int) sqrt(x * x + y * y)
if z * z == x * x + y * y then use x, y, z
```

The actual code for V4 is:

```
public Collection<Triple> byBetterWhileLoop() {
Collection<Triple> result = new ArrayList<Triple>(limit);
for (int x = 1; x < limit; ++x) {
int xx = x * x;
int y = x + 1;
int z = y + 1;
while (z <= limit) {
int zz = xx + y * y;
while (z * z < zz) {++z;}
if (z * z == zz && z <= limit) {
result.add(new Triple(x, y, z));
}
++y;
}
}
return result;
}
```

Note that `x * x`

*is* calculated in the outer loop (although I didn't bother to cache `z * z`

); similar optimizations are done in the other variations.

I'll be glad to provide the Java source code on request for the other variations I timed, in case I've mis-implemented anything.