# efficient algorithm instead of looping

I have a data set where each samples has a structure similar to this

``````X=[ [[],[],[],[]], [[],[]] , [[],[],[]] ,[[][]]]
``````

for example:

``````X=np.array([ [ [1,2,3], [2,4,5] ,[2,3,4] ] , [ [5,6], [6,6] ] , [[2,3,1],[2,3,10],[23,1,2],[1,4,5]]  ] ,"object")

Y=np.array([ [ [12,14,15] ,[12,13,14] ] , [ [15,16], [16,16] ] , [[22,23,21],[32,33,11],[12,44,55]]  ] ,"object")
``````

so for every sample I need to calculate the dot product between every element of x with corresponding element of y of same index and sum the result. i.e:

``````result=0

for i in range(3):
for n,m in itertools.product(X[i],Y[i]):
print "%s, %s" % (n,m)
result+=np.dot(n,m)

.....:
[1, 2, 3], [12, 14, 15]
[1, 2, 3], [12, 13, 14]
[2, 4, 5], [12, 14, 15]
[2, 4, 5], [12, 13, 14]
[2, 3, 4], [12, 14, 15]
[2, 3, 4], [12, 13, 14]
[5, 6], [15, 16]
[5, 6], [16, 16]
[6, 6], [15, 16]
[6, 6], [16, 16]
[2, 3, 1], [22, 23, 21]
[2, 3, 1], [32, 33, 11]
[2, 3, 1], [12, 44, 55]
[2, 3, 10], [22, 23, 21]
[2, 3, 10], [32, 33, 11]
[2, 3, 10], [12, 44, 55]
[23, 1, 2], [22, 23, 21]
[23, 1, 2], [32, 33, 11]
[23, 1, 2], [12, 44, 55]
[1, 4, 5], [22, 23, 21]
[1, 4, 5], [32, 33, 11]
[1, 4, 5], [12, 44, 55]
``````

This is my whole code:

`````` print "***build kernel***"
K = np.zeros((n_samples, n_samples))
for i in range(n_samples):
for j in range(n_samples):

K[i,j] = self.kernel(X[i], X[j])

def kernel(x1,x2):
N=8 #number of objects
result=0
for i in xrange(N):
for n,m in itertools.product(x1[i],x2[i]):
result+=np.dot(n,m)
return result
``````

as you can see the complexity of this algorithm is too high and also my samples are much bigger than this. so for even a small data set, i.e. contains 400 samples, I have to wait 4 hours to get the result. I am looking for a better way to implement this algorithm. P.S: I was thinking about multithreading or multiproccessing but I am not sure if it helps?!

I appreciate any suggestion!

-
How does your problem grow? When you say 200 samples takes 4 hours, do you mean that, for example, `X[i]` and `Y[i]` both have 200 vectors? –  Claudiu Mar 18 at 14:57
Your "whole code" does not reference `Y`. –  Janne Karila Mar 18 at 14:58
X and y are just examples.. you see x1 and x2 in code –  Moj Mar 18 at 15:22
@Claudiu by 200 I mean the dataset with samples –  Moj Mar 18 at 15:23

Instead of summing the dot product of each pair, which requires `n * m` operations, you can sum all of the vectors in each list and just do the final dot product, which will only take `n + m` operations.

Before:

``````def calc_slow(L1, L2):
result = 0
for n, m in itertools.product(L1, L2):
result += np.dot(n, m)
return result
``````

After:

``````def calc_fast(L1, L2):
L1_sums = np.zeros(len(L1[0]))
L2_sums = np.zeros(len(L2[0]))
for vec in L1:
L1_sums += vec
for vec in L2:
L2_sums += vec
return np.dot(L1_sums, L2_sums)
``````

EDIT: Even faster version, taking advantage of numpy:

``````def calc_superfast(L1, L2):
return np.dot(np.array(L1).sum(0),
np.array(L2).sum(0))
``````

The output is the same:

``````print X[0], Y[0], calc_slow(X[0], Y[0])
print X[0], Y[0], calc_fast(X[0], Y[0])
``````

prints:

``````[[1, 2, 3], [2, 4, 5], [2, 3, 4]] [[12, 14, 15], [12, 13, 14]] 711
[[1, 2, 3], [2, 4, 5], [2, 3, 4]] [[12, 14, 15], [12, 13, 14]] 711.0
``````

Timing it shows that there is significant improvement. Timing code:

``````import random
import time
def rand_vector(size=3):
return [random.randint(1, 100) for _ in xrange(3)]
def rand_list(length=200):
return [rand_vector() for _ in xrange(length)]

print "Generating lists..."
L1 = rand_list(200)
L2 = rand_list(200)

print "Running slow..."
s = time.time()
print calc_slow(L1, L2)
print "Slow for (%d, %d) took %.2fs" % (len(L1), len(L2), time.time() - s)

print "Running fast..."
s = time.time()
print calc_fast(L1, L2)
print "Fast for (%d, %d) took %.2fs" % (len(L1), len(L2), time.time() - s)
``````

Sample outputs:

``````Generating lists...
Running slow...
75715569
Slow for (100, 100) took 1.48s
Running fast...
75715569.0
Fast for (100, 100) took 0.03s

Generating lists...
Running slow...
309169971
Slow for (200, 200) took 5.29s
Running fast...
309169971.0
Fast for (200, 200) took 0.04s

Running fast...
3.05185703539e+12
Fast for (20000, 20000) took 1.94s
``````

The operation for two lists of 20000 elements each only took ~2 seconds, whereas I predict it would take several hours with the old method.

The reason this works is that you can group the operations together. Assuming you have the following lists:

``````L1 = [a, b, c], [d, e, f], [g, h, i]
L2 = [u, v, w], [x, y, z]
``````

Then summing the dot product of each pair would look like this:

``````a*u + b*v + c*w + a*x + b*y + c*z +
d*u + e*v + f*w + d*x + e*y + f*z +
g*u + h*v + i*w + g*x + h*y + i*z
``````

You can factor out the `u`, `v`, `w`, `x`, `y`, and `z` elements:

``````u*(a + d + g) + v*(b + e + h) + w*(c + f + i) +
x*(a + d + g) + y*(b + e + h) + z*(c + f + i)
``````

Then you can further factor out those sums:

``````(u + x)*(a + d + g) + (v + y)*(b + e + h) + (w + z)*(c + f + i)
``````

Which is just the dot product of the summed vectors from each initial list.

-
Thanks man.. 2 thumbs up! –  Moj Mar 21 at 10:16

You can also bypass the need for `itertools.product` by directly doing the dot product on inner matrices:

``````def calc_matrix(l1, l2):
return np.array(l1).dot(np.array(l2).T).sum()

def kernel(x1, x2):
return sum(
calc_matrix(l1, l2)
for l1, l2 in zip(x1, x2)
)
``````

Edit:

On short lists (less than a few thousand elements) this will be faster than Claudiu's (awesome) answer. His will scale better above these numbers:

Using Claudiu's benchmarks:

``````# len(l1) == 500

In [9]: %timeit calc_matrix(l1, l2)
10 loops, best of 3: 8.11 ms per loop

In [10]: %timeit calc_fast(l1, l2)
10 loops, best of 3: 14.2 ms per loop

# len(l2) == 5000

In [19]: %timeit calc_matrix(l1, l2)
10 loops, best of 3: 61.2 ms per loop

In [20]: %timeit calc_fast(l1, l2)
10 loops, best of 3: 56.7 ms per loop
``````
-
Nice idea encoding the operation entirely in numpy! I managed to do so as well, how does my updated answer (`calc_superfast`) compare to your matrix one? I also changed my list-generating code to return `np.array`s to remove any time taken to do conversions. –  Claudiu Mar 18 at 15:56
Combining numpy with your initial approach makes it slightly faster on small lists and even faster as size grows. Best of both worlds :). –  mtth Mar 18 at 16:06