# CUDA - Splitting points by distance in a parallel fashion

I'm looking to sort an array of points into multiple arrays by distance between each point. Below is the code I used to do it in Java,

``````    public Point[] GetPointsCloseTo(Point p, Point[] arr, int dist) {
ArrayList<Point> pts = new ArrayList<Point>();
for (Point n : arr) {
if (n.distance(p) <= dist) {
}
}
return Arrays.copyOf(pts.toArray(), pts.toArray().length, Point[].class);
}

public Point[] GetPointsCloseToPoints(Point[] a, Point[] b, int dist) {
ArrayList<Point> pts = new ArrayList<Point>();
for (Point p : a) {
Point[] z = GetPointsCloseTo(p, b, dist);
}
return Arrays.copyOf(pts.toArray(), pts.toArray().length, Point[].class);
}

public Point[][] Split(int dist) {
ArrayList<Point> pts = new ArrayList<Point>();
ArrayList<Point[]> res = new ArrayList<Point[]>();
while (pts.size() > 0) {
Point p = pts.get(0);
pts.remove(p);
ArrayList<Point> r = new ArrayList<Point>();
Point[] n = {p};
while ((n = GetPointsCloseToPoints(n, Arrays.copyOf(pts.toArray(), pts.toArray().length, Point[].class), dist)).length > 0) {
for (Point x : n) {
pts.remove(x);
}
}
}
return Arrays.copyOf(res.toArray(), res.toArray().length, Point[][].class);
}
``````

(Summary of what's happening above, it's been a while since I wrote that and I don't find it exactly appealing -)

1. Pick a point from the array
2. Find points within the distance to that point and remove it from the array
3. Find points within the distance to those points and remove them from the array --- Repeat step 3 until "step 3 returns 0 points"
4. All those gathered points constitute one array in the result [][]
5. Back to step 1

Now, in CUDA what I imagine I would do is have GetPointsCloseTo() be a kernel, (dreaming of using dynamic parallelism for GetPointsCloseToPoints(), not happening on my GTX 660..), and the rest of it would have to be done in host code, pretty much. My problem is how would I return the "valid" points in GetPointsCloseTo? I can't use a vector in the device code, and from what I've understood allocating an array of the size of the input array and then scaling it down would be insane since that'd be done in every thread.

EDIT: The approach I'm trying right now is to have the parallelism done with GetPointsCloseTo() (refer to above Java code), where each thread checks one point in arr for dist to p. However I will end up with an array that has some entries that will needed to be cleared out in host code.

``````__device__ unsigned int count;

__global__ void k_getNearbyPoints(Point pt, Point* pts, double dist, Point* ret)
{
int idx = blockIdx.x * blockDim.x + threadIdx.x;
if (hypot((double)pt.x - pts[idx].x, (double)pt.y - pts[idx].y) <= dist)
{