Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

consider my code

a,b,c = np.loadtxt ('test.dat', dtype='double', unpack=True)

a,b, and c are the same array length.

for i in range(len(a)):

   q[i] = 3*10**5*c[i]/100
   x[i] = q[i]*math.sin(a)*math.cos(b)
   y[i] = q[i]*math.sin(a)*math.sin(b)
   z[i] = q[i]*math.cos(a)

I am trying to find all the combinations for the difference between 2 points in x,y,z to iterate this equation (xi-xj)+(yi-yj)+(zi-zj) = r

I use this combination code

for combinations in it.combinations(x,2):
   xdist =  (combinations[0] - combinations[1])
for combinations in it.combinations(y,2):
   ydist =  (combinations[0] - combinations[1])
for combinations in it.combinations(z,2):
   zdist =  (combinations[0] - combinations[1])

r = (xdist + ydist +zdist) 

This takes a long time for python for a large file I have and I am wondering if there is a faster way to get my array for r preferably using a nested loop?

Such as

if i in range(?):
     if j in range(?):
share|improve this question

3 Answers 3

Since you're apparently using numpy, let's actually use numpy; it'll be much faster. It's almost always faster and usually easier to read if you avoid python loops entirely when working with numpy, and use its vectorized array operations instead.

a, b, c = np.loadtxt('test.dat', dtype='double', unpack=True)

q = 3e5 * c / 100  # why not just 3e3 * c?
x = q * np.sin(a) * np.cos(b)
y = q * np.sin(a) * np.sin(b)
z = q * np.cos(a)

Now, your example code after this doesn't do what you probably want it to do - notice how you just say xdist = ... each time? You're overwriting that variable and not doing anything with it. I'm going to assume you want the squared euclidean distance between each pair of points, though, and make a matrix dists with dists[i, j] equal to the distance between the ith and jth points.

The easy way, if you have scipy available:

# stack the points into a num_pts x 3 matrix
pts = np.hstack([thing.reshape((-1, 1)) for thing in (x, y, z)])

# get squared euclidean distances in a matrix
dists = scipy.spatial.squareform(scipy.spatial.pdist(pts, 'sqeuclidean'))

If your list is enormous, it's more memory-efficient to not use squareform, but then it's in a condensed format that's a little harder to find specific pairs of distances with.

Slightly harder, if you can't / don't want to use scipy:

pts = np.hstack([thing.reshape((-1, 1)) for thing in (x, y, z)])
sqnorms = np.sum(pts ** 2, axis=1)
dists = sqnorms.reshape((-1, 1)) - 2 *, pts.T) + sqnorms

which basically implements the formula (a - b)^2 = a^2 - 2 a b + b^2, but all vector-like.

share|improve this answer
q/x/y/z all = np.zeros(len(q)) –  user1821176 Feb 22 '13 at 22:17
Sure, then my code as written is the same thing; will remove that comment. –  Dougal Feb 22 '13 at 22:18
Ok I do have scipy. Actually, I am trying to solve ((xi-xj)**2+(yi-yj)**2+(zi-zj)**2)**0.5 = r. Would using squareform still be useful and what do i change in your code? –  user1821176 Feb 22 '13 at 22:41
+1 The (a - b)**2 = a**2 - 2 * a * b + b**2 is a brilliantly simple way of speeding things up about 50% compared to a naive (a - b)**2 –  Jaime Feb 22 '13 at 22:52
@user1821176 Do you mean you have a particular value of r and you're looking for i and j such that that's true? That usually won't happen (float equality is very rarely the right thing to do), but you could get the closest one through something like i, j = np.unravel_index(np.abs(dists - r).argmin(), dists.shape). –  Dougal Feb 23 '13 at 1:54

Well, the complexity of your calculation is pretty high. Also, you need to have huge amounts of memory if you want to store all r values in a single list. Often, you don't need a list and a generator might be enough for what you want to do with the values.

Consider this code:

def calculate(x, y, z):
    for xi, xj in combinations(x, 2):
        for yi, yj in combinations(y, 2):
            for zi, zj in combinations(z, 2):
                yield (xi - xj) + (yi - yj) + (zi - zj)

This returns a generator that computes only one value each time you call the generator's next() method.

gen = calculate(xrange(10), xrange(10, 20), xrange(20, 30)) # returns -3 # returns -4 and so on
share|improve this answer

Apologies for not posting a full solution, but you should avoid nesting calls to range(), as it will create a new tuple every time it gets called. You are better off either calling range() once and storing the result, or using a loop counter instead.

For example, instead of:

max = 50

for number in range (0, 50):

    doSomething(number) would do:

max = 50
current = 0

while current < max:

    current += 1
share|improve this answer
The range caution is only valid if he is not using python3. –  kzh Feb 22 '13 at 21:04
range in 2.x creates a list, not a tuple, and the idiomatic way to fix it (in Python 2.x) is to use xrange(), not to use a while loop. –  Joel Cornett Feb 22 '13 at 21:15

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.