# Calculate diff of a numpy array using custom function instead of subtraction

I am working with an array created from a list of geographical coordinates describing a GPS trajectory. The data is like this:

``````[[-51.203018 -29.996149]
[-51.203018 -29.99625 ]
[-51.20266  -29.996229]
...,
[-51.64315  -29.717896]
[-51.643112 -29.717737]
[-51.642937 -29.717709]]
``````

What I want to do is to calculate the geographic distances between rows (with the special condition that the first element is always zero, at the starting point). This would give me either a list of distances with `len(distances) == coord_array.shape[1]`, or maybe a third column in the same array.

It is important to say that I already have a function that returns a distance between two points (two coordinate pairs), but I don't know how to apply it with a single array operation instead of looping through row pairs.

Currently I do the following to calculate segment distances in one new column, and cumulative distances in another new column (`latlonarray` is already shown above and `distance(p1, p2)` is already defined):

``````    dists = [0.0]
for n in xrange(len(lonlat)-1):
dists.append(distance(lonlat[n+1], lonlat[n]))

lonlatarray = numpy.array(lonlat).reshape((-1,2))
distsarray = numpy.array(dists).reshape((-1,1))
cumdistsarray = numpy.cumsum(distsarray).reshape((-1,1))

print numpy.hstack((lonlatarray, distsarray, cumdistsarray))

[[   -51.203018      -29.996149        0.              0.        ]
[   -51.203018      -29.99625         7.04461338      7.04461338]
[   -51.20266       -29.996229       39.87928578     46.92389917]
...,
[   -51.64315       -29.717896       11.11669769  92529.72742791]
[   -51.643112      -29.717737       11.77016407  92541.49759198]
[   -51.642937      -29.717709       19.57670066  92561.07429263]]
``````

My main question is: "How could I perform the distance function (which takes a pair of rows as argument) like an array operation instead of a loop?" (that is, how could I properly vectorize it)

Other on-topic questions would be:

• If I decide to use Pandas, is ther some clever trick to accomplish this?
• Is there a way to put `scipy.spatial.distance` to "work for me" using geographic distance (haversine, great-circle distance)?

Also, I would appreciate some tip if I am doing anything unnecessarily complicated.

Thank you all, very much, for your interest.

-

It sounds like you need to have your original data `lonlat` represented as a pair of numpy arrays, then pass these arrays to a version of the function `distance` which accepts arrays.

For example, looking up the definition of haversine distance, you can fairly easily turn it into a vectorised formula as follows:

``````def haversine_pairwise(phi, lam):

dphi = phi[1:]-phi[:-1]
dlam = lam[1:]-lam[:-1]

# r is assumed to be a known constant
return r*(0.5*(1-cos(dphi)) + cos(phi[1:])*cos(phi[:-1])*0.5*(1-cos(dlam)))
``````

I'm not familiar with these formulas myself, but hopefully this shows you how you can do it for whichever formula you want. You would then use `cumsum` as you have already done. The array slicing syntax which I have used is documented here in case it's not clear.

-
I have started writing very similar function, taking the original array as argument and building phi an lam inside the very function, via slicing, but I feel there should be a more magical way to accomplish this. Your rewriting of the formula looks nice, too. I'll wait some more just in case someone comes with a breakthrough answer, otherwise soon I'll come back to accept yours. Thanks! –  heltonbiker Oct 23 '12 at 16:48
It is a weakness of python that tight loops with repeated function call can't really be made efficient. Numpy allows things to be efficient if you can vectorise them. Tools like cython and pypy can overcome this limitation but may be overkill for your problem. –  DaveP Oct 23 '12 at 21:58
In case you (or anyone) are interested, I posted a derived question with another (different) perspective here: stackoverflow.com/q/13040738/401828 –  heltonbiker Oct 23 '12 at 23:15