I am playing with the KDQuery function in SciPy.Spatial. I have an issue once my data sizes get really large. I realize that the algorithm is not necessarily designed to be efficient for large datasets, but it appears (from the source) that size should only increase processing time, not impact output.

Here is a code snippet:

```
sizes = [ 10**i for i in range(5,6) ] #10^5 for this test
data = np.random.random_integers(0,100,(sizes[-1],2))
for size in sizes:
kd = ps.common.KDTree(data)
nnq = kd.query(data,k=2+1, p=2)
info = nnq[1] #This is the indices of the neighbors
neighbors = {}
idset = np.arange(len(info)) #Indices of the input point
for i, row in enumerate(info):
row = row.tolist()
row.remove(i)
neighbors[idset[i]] = list(row)
```

This returns a value error when i is not in the list (ValueError list.remove(x): x not in list). For data sizes less than 10^5 this code works as expected.

One potential reason for the error is that the recursion limit is being reached. To explore this I set the recursion depth to 1,000,000 (`sys.setrecursionlimit(1000000)`

). This does not alleviate the problem.

`ps.common`

namespace? – Warren Weckesser Mar 19 '13 at 15:49