Removing nested loops in numpy

I've been writing a program to brute force check a sequence of numbers to look for euler bricks, but the method that I came up with involves a triple loop. Since nested Python loops get notoriously slow, I was wondering if there was a better way using numpy to create the array of values that I need.

``````#x=max side length of brick. User Input.
for t in range(3,x):
a=[];b=[];c=[];
for u in range(2,t):
for v in range(1,u):
a.append(t)
b.append(u)
c.append(v)
a=np.array(a)
b=np.array(b)
c=np.array(c)
...
``````

Is there a better way to generate the array af values, using numpy commands?

Thanks.

Example: If x=10, when t=3 I want to get:

``````a=[3]
b=[2]
c=[1]
``````

the first time through the loop. After that, when t=4:

``````a=[4, 4, 4]
b=[2, 3, 3]
c=[1, 1, 2]
``````

The third time (t=5) I want:

``````a=[5, 5, 5, 5, 5, 5]
b=[2, 3, 3, 4, 4, 4]
c=[1, 1, 2, 1, 2, 3]
``````

and so on, up to max side lengths around 5000 or so.

EDIT: Solution

``````a=array(3)
b=array(2)
c=array(1)
for i in range(4,x): #Removing the (3,2,1) check from code does not affect results.
foo=arange(1,i-1)
foo2=empty(len(foo))
foo2.fill(i-1)
c=hstack((c,foo))
b=hstack((b,foo2))
a=empty(len(b))
a.fill(i)
...
``````

Works many times faster now. Thanks all.

-
Could you post an example of input values and desired output? That might help finding the right expression. –  larsmans Jul 11 '11 at 12:13
Loops nested 3 levels deep is slow, period -- not just in Python. –  Steven Rumbalski Jul 11 '11 at 14:05

There are couple of things which could help, but probably only for large values of x. For starters use `xrange` instead of `range`, that will save creating a list you never need. You could also create empty numpy arrays of the correct length and fill them up with the values as you go, instead of appending to a list and then converting it into a numpy array.

I believe this code will work (no python access right this second):

``````for t in xrange(3, x):
size = (t - 2) * (t - 3)
a = np.zeros(size)
b = np.zeros(size)
c = np.zeros(size)

idx = 0
for u in xrange(2,t):
for v in xrange(1,u):
a[idx] = t
b[idx] = u
c[idx] = v
idx += 1
``````
-
I thought about starting with arrays, but I cannot .append() in numpy. Is there anything equivalent? –  Matt Hill Jul 11 '11 at 12:34
Also, if there is then I could just append to the b and c arrays each time instead of overwriting and starting from scratch each loop. –  Matt Hill Jul 11 '11 at 12:37
–  troutinator Jul 11 '11 at 12:38
hstack looks like it should work without the triple loop. Thanks. –  Matt Hill Jul 11 '11 at 12:40