As you are asking for help and tips:

the first thing I would suggest is, that you should avoid looping over numpy arrays, as this is inefficient and numpy arrays are not designed for that. If you are working with numpy array you should use vectorized numpy functions and indexing to sort your points and remove the duplicates.

Pandas (which is build on top of numpy) `DataFrames`

have a built in `drop_duplicates`

method which should be faster than getting your points by looping over the array as proposed by C2H5OH.

You can compare them using `ipython`

:

```
import pandas as pd
from collections import OrderedDict
from itertools import groupby
def with_ordered_dict(x, y, z):
tmp = OrderedDict()
for point in zip(x, y, z):
tmp.setdefault(point[:2], point)
return tmp.values()
def with_groupby(x, y, z):
keyfunc = lambda p: p[:2]
mypoints = []
for k, g in groupby(sorted(zip(x, y, z), key=keyfunc), keyfunc):
mypoints.append(list(g)[0])
return mypoints
def with_dataframe(x, y, z):
df = pd.DataFrame({'x':x, 'y':y, 'z':z})
return df.drop_duplicates(cols=['x', 'y'])
In [140]: %timeit mypoints = with_ordered_dict(x, y, z)
1 loops, best of 3: 2.47 s per loop
In [141]: %timeit mypoints = with_groupby(x, y, z)
1 loops, best of 3: 4.22 s per loop
In [142]: %timeit mypoints = with_dataframe(x, y, z)
1 loops, best of 3: 713 ms per loop
```

So with 500000 data points pandas is three or four times faster than with `OrderedDict`

and about six times faster than with `groupby`

.

`numpy`

so my examples are not the optimal solutions. – C2H5OH Oct 8 '12 at 19:34