I am currently using Python/Numpy to deal with geographical/GPS data (loving it!), and I am facing the recurring task to calculate distances between geographical points defined by a coordinate pair `pn = [lon, lat]`

.

I have a function that I use like this: `dist = geodistance(p1, p2)`

which is analog to euclidean distance in linear algebra (vector subtraction/difference), but occurs in geodesical (spherical) space instead of rectangular euclidean space.

Programmatically, euclidean distance is given by

```
dist = ((p2[0] - p1[0])**2 + (p2[1] - p1[1])**2)**0.5
```

Mathematically, this is equivalent to the "idiomatic" (for lack of a better word) sentence

```
dist = p1 - p1 # the "norm" of the vector difference, subtraction.
```

Currently, I get my distance like this:

```
p1 = [-51.598354,-29.953363]
p2 = [-51.598701,-29.953045]
dist = geodistance(p1, p2)
print dist
>> 44.3904032407
```

I would like to do this:

```
print p2 - p1 # these points now are from some fancy datatype
>> 44.3904032407
```

And the final goal:

```
track = numpy.array([[-51.203018 -29.996149]
[-51.203018 -29.99625 ]
[-51.20266 -29.996229]
[-51.20229 -29.996309]
[-51.201519 -29.99416 ]], dtype=fancy) # (**) or something like
print numpy.diff(track)
>> ndarray([[ 0. ]
[ 7.03531252]
[ 39.82663316]
[ 41.50958596]
[ 172.49825765]])
```

A similar thing is: if you take two `datetime`

objects and subtract them, the operation returns a `timedelta`

object. I want to subtract two coordinates and get a geodesic distance as the result.

I wonder if a class would work, but dtype (a "subtype" of float32, for example) would help a lot upon array creation from lists (** which is how I read things from xml files).

Thanks a lot!

`.dist()`

of course. The numpy documentation has some simple examples. For just adding a method you don't really need to do much, otherwise it can be a bit tricky. – seberg Oct 23 '12 at 23:54