This is surely not possible to do in general for a general set of polynomial inequalities, by any method other than enumerative search, even if there are a finite number of solutions. (Perhaps I should say not trivial, as it is possible. Enumerative search will work, subject to floating point issues.) Note that the domain of interest need not be simply connected for higher order inequalities.

Edit: The OP has asked about how one might proceed to do a search.

Consider the problem

```
x^3 + y^3 >= 1e12
x^4 + y^4 <= 1e16
x >= 0, y >= 0
```

Solve for all integer solutions of this system. Note that integer programming in ANY form will not suffice here, since ALL integer solutions are requested.

Use of meshgrid here would force us to look at points in the domain (0:10000)X(0:10000). So it would force us to sample a set of 1e8 points, testing every point to see if they satisfy the constraints.

A simple loop can potentially be more efficient than that, although it will still require some effort.

```
% Note that I will store these in a cell array,
% since I cannot preallocate the results.
tic
xmax = 10000;
xy = cell(1,xmax);
for x = 0:xmax
% solve for y, given x. This requires us to
% solve for those values of y such that
% y^3 >= 1e12 - x.^3
% y^4 <= 1e16 - x.^4
% These are simple expressions to solve for.
y = ceil((1e12 - x.^3).^(1/3)):floor((1e16 - x.^4).^0.25);
n = numel(y);
if n > 0
xy{x+1} = [repmat(x,1,n);y];
end
end
% flatten the cell array
xy = cell2mat(xy);
toc
```

The time required was...

```
Elapsed time is 0.600419 seconds.
```

Of the 100020001 combinations that we might have tested for, how many solutions did we find?

```
size(xy)
ans =
2 4371264
```

Admittedly, the exhaustive search is simpler to write.

```
tic
[x,y] = meshgrid(0:10000);
k = (x.^3 + y.^3 >= 1e12) & (x.^4 + y.^4 <= 1e16);
xy = [x(k),y(k)];
toc
```

I ran this on a 64 bit machine, with 8 gig of ram. But even so the test itself was a CPU hog.

```
Elapsed time is 50.182385 seconds.
```

Note that floating point considerations will sometimes cause a different number of points to be found, depending on how the computations are done.

Finally, if your constraint equations are more complex, you might need to use roots in the expression for the bounds on y, to help identify where the constraints are satisfied. The nice thing here is it still works for more complicated polynomial bounds.