# Trying to speed up python code by replacing loops with functions

I am trying to come up with a faster way of coding what I want to. Here is the part of my program I am trying to speed up, hopefully using more inbuilt functions:

``````num = 0
num1 = 0
rand1 = rand_pos[0:10]
time1 = time.clock()
for rand in rand1:
for gal in gal_pos:
num1 = dist(gal, rand)
num = num + num1
time2 = time.clock()
time_elap = time2-time1
print time_elap
``````

Here, rand_pos and gal_pos are lists of length 900 and 1 million respectively. Here dist is function where I calculate the distance between two points in euclidean space. I used a snippet of the rand_pos to get a time measurement. My time measurements are coming to be about 125 seconds. This is way too long! It means that if I run the code over all the rand_pos, it will take about three hours to do! Is there a faster way I can do this?

Here is the dist function:

``````def dist(pos1,pos2):
n = 0
dist_x = pos1[0]-pos2[0]
dist_y = pos1[1]-pos2[1]
dist_z = pos1[2]-pos2[2]
if dist_x<radius and dist_y<radius and dist_z<radius:
positions = [pos1,pos2]
distance = scipy.spatial.distance.pdist(positions, metric = 'euclidean')
if distance<radius:
n = 1
return n
``````
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Probably, but post the actual code, and run a profiler to see what's causing the bottleneck. It's almost certainly your implementation of `dist` that's to blame. –  Henry Keiter Jan 3 '14 at 1:28
we cannot see dist, which could be important –  user3125280 Jan 3 '14 at 1:30
I just added dist function @user3125280 –  Abhinav Kumar Jan 3 '14 at 1:37
I am already using pdist @BrenBarn –  Abhinav Kumar Jan 3 '14 at 1:37

## 2 Answers

While most of the optimization probably needs to happen within your `dist` function, there are some tips here to speed things up:

``````# Don't manually sum
for rand in rand1:
num += sum([dist(gal, rand) for gal in gal_pos])

#If you can vectorize something, then do
import numpy as np
new_dist = np.vectorize(dist)
for rand in rand1:
num += np.sum(new_dist(gal_pos, rand))

# use already-built code whenever possible (as already suggested)
scipy.spatial.distance.cdist(gal, rand1, metric='euclidean')
``````
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There is a function in `scipy` that does exactly what you want to do here:

``````scipy.spatial.distance.cdist(gal, rand1, metric='euclidean')
``````

It will be faster than anything you write in pure `Python` probably, since the heavy lifting (looping over the pairwise combinations between arrays) is implemented in `C`.

Currently your loop is happening in Python, which means there is more overhead per iteration, then you are making many calls to `pdist`. Even though `pdist` is very optimized, the overhead of making so many calls to it slows down your code. This type of performance issue was once described to me with a very useful analogy: its like trying to have a conversation with someone over the phone by saying one word per phone call, even though each word is going across the line very fast, your conversation will take a long time because you need to hang up and dial again repeatedly.

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The analogy with a phone conversation is absolutely fantastic! Anyways, cdist accepts 2 dimensional arrays. My lists are in the following form: rand1 = [[1,2,3],[34,23,43],[23,34,23],[56,34,12]...[]]. Here each sublist includes the x,y and z position of a point. I do not know how this can be expressed as a 2D array. –  Abhinav Kumar Jan 3 '14 at 1:50
I know, I wish I could take credit for it! RE your question, sure it can! just use `arr = numpy.array(rand1)` –  qwwqwwq Jan 3 '14 at 1:53