You obviously want to project points in 3D-space on a 3D grid with a certain grid spacing (which is directly related to your tolerance value) and create some kind of histogram. Write yourself a projection function: It takes an arbitrary 3-element list/tuple (a vector describing a point in space) as argument and projects it onto a certain grid point. You do this for filling up your dictionary as well as for reading it out. Furthermore, regarding the keys in your dictionary, I think you should go with tuples of integers instead of floats, because I am not sure if floats can ever be identical.

This is an implementation example:

```
from collections import defaultdict
from random import random as rn
class Grid(object):
def __init__(self, spacing):
self.spacing = spacing
self.griddict = defaultdict(int)
def add_point(self, coords):
"""
`vid`, a voxel id, is a tuple of indices, indicating one grid
bin for each dimension, e.g. (1, 5, 2)
rule: i_x = int(floor(x_coord / spacing))
"""
vid = tuple([int(c//self.spacing) for c in coords])
self.griddict[vid] += 1
def get_point(self, coords):
vid = tuple([int(c//self.spacing) for c in coords])
return self.griddict[vid]
def vid_centercoords(self, vid):
"""
Return the real coordinates in space for a certain voxel,
which is identified by its voxel id `vid` (a tuple of indices).
"""
return tuple([(i-1)*self.spacing + self.spacing/2 for i in vid])
N = 20
fillpoints = [(rn(),rn(),rn()) for _ in xrange(N)]
testpoints = [(rn(),rn(),rn()) for _ in xrange(N)]
grid = Grid(spacing=0.3)
for p in fillpoints:
grid.add_point(p)
print [grid.get_point(p) for p in testpoints]
```

What it does: it creates 20 random vectors in 3D space (all coordinates between 0 and 1). It populates a 3D grid using these points in space. The grid has a spacing of 0.3 in each dimension. Each of these 20 points in space is assigned to a certain voxel (just a word for a 3D pixel) in the grid. Each assignment increased the counter of the corresponding voxel by 1 (rendering the grid to be a histogram). Then, another random set of 20 vectors is used to read out the voxels. These points are again projected onto voxels, but this time the counter is just returned instead of increased. Execution test:

```
$ python gridtest.py
[2, 1, 0, 1, 0, 0, 0, 2, 0, 0, 0, 0, 1, 0, 0, 1, 0, 0, 1, 0]
```

Execution with your data:

```
fillpoints = [(0.334, 0.333, 0.333), (0.167, 0.666, 0.167), (0.167, 0.666, 0.167), (0.5, 0.5, 0), (0.5, 0.5, 0), (0.5, 0.5, 0)]
testpoints = [(0.333, 0.333, 0.333), (0.16667, 0.6666667, 0.17), (0.34, 0.33, 0.33), (0.5001, 0.4999, 0.0)]
grid = Grid(spacing=0.03)
for p in fillpoints:
grid.add_point(p)
print [grid.get_point(p) for p in testpoints]
```

It prints `[1, 2, 1, 3]`

as desired. I haven't thought deeply about the relation `spacing=3*tolerance`

. It likely is wrong. I only know that there is a deterministic relation. Proving/finding this formula is left for you as an exercise :)