# Speeding up arithmetic with Python Decimal library

I am trying to run a function that is similar to Google's PageRank algorithm (for non-commercial purposes, of course). Here is the Python code; note that `a[0]` is the only thing that matters here, and `a[0]` contains an `n x n` matrix such as `[[0,1,1],[1,0,1],[1,1,0]]`. Also, you can find where I got this code from on Wikipedia:

``````def GetNodeRanks(a):        # graph, names, size
numIterations = 10
for i in range(numIterations):
tmp[j] = 0
tmp[j] = tmp[j] + adjacencyMatrix[j][k] * b[k]
norm_sq = 0
norm_sq = norm_sq + tmp[j]*tmp[j]
norm = math.sqrt(norm_sq)
for j in range(len(b)):
b[j] = tmp[j] / norm
print b
return b
``````

When I run this implementation (on a matrix much larger than a `3 x 3` matrix, n.b.), it does not yield enough precision to calculate the ranks in a way that allows me to compare them usefully. So I tried this instead:

``````from decimal import *

getcontext().prec = 5

def GetNodeRanks(a):        # graph, names, size
numIterations = 10
for i in range(numIterations):
tmp[j] = Decimal(0)
tmp[j] = Decimal(tmp[j] + adjacencyMatrix[j][k] * b[k])
norm_sq = Decimal(0)
norm_sq = Decimal(norm_sq + tmp[j]*tmp[j])
norm = Decimal(norm_sq).sqrt
for j in range(len(b)):
b[j] = Decimal(tmp[j] / norm)
print b
return b
``````

Even at this unhelpfully low precision, the code was extremely slow and never finished running in the time I sat waiting for it to run. Previously, the code was quick but insufficiently precise.

Is there a sensible/easy way to make the code run quickly and precisely at the same time?

-
What is in `a`? It's going to be basically impossible to optimize your code since you gave no expected inputs or expected outputs. – Two-Bit Alchemist Apr 16 '14 at 23:01
a[0] is the only thing that I'm operating on; it holds an n x n adjacency matrix. – Philip White Apr 16 '14 at 23:02
For example, a[0] might hold: [[0,1,1],[1,0,1],[1,1,0]] – Philip White Apr 16 '14 at 23:02
Edit that into your question as example input. Is it a normal list of lists or something created with a library like `numpy`? – Two-Bit Alchemist Apr 16 '14 at 23:03
It's a normal list of lists. I thought of using numpy; might that help? (Will edit in a moment.) – Philip White Apr 16 '14 at 23:04

Few tips for speeding up:

• optimize code inside of loops
• move all things out of inner loop up, if possible.
• do not recompute, what is already known, use variables
• do not do things, which are not necessary, skip them
• consider using list comprehension, it is often a bit faster
• stop optimizing as soon as it gets acceptable speed

``````from decimal import *

getcontext().prec = 5

def GetNodeRanks(a):        # graph, names, size
# opt: pass in directly a[0], you do not use the rest
numIterations = 10
#opt: why copy.deepcopy? You do not modify adjacencyMatric
# opt: You often call Decimal(1) and Decimal(0), it takes some time
# do it only once like
# dec_zero = Decimal(0)
# dec_one = Decimal(1)
# prepare also other, repeatedly used data structures
# Replace code with pre-calculated variables yourself

for i in range(numIterations):
tmp[j] = Decimal(0)
tmp[j] = Decimal(tmp[j] + adjacencyMatrix[j][k] * b[k])
norm_sq = Decimal(0)
norm_sq = Decimal(norm_sq + tmp[j]*tmp[j])
norm = Decimal(norm_sq).sqrt #is this correct? I woudl expect .sqrt()
for j in range(len(b)):
b[j] = Decimal(tmp[j] / norm)
print b
return b
``````

Now few samples of how can be list processing optimized in Python.

Using `sum`, change:

``````        norm_sq = Decimal(0)
norm_sq = Decimal(norm_sq + tmp[j]*tmp[j])
``````

to:

``````        norm_sq = sum(val*val for val in tmp)
``````

A bit of list comprehension:

Change:

``````        for j in range(len(b)):
b[j] = Decimal(tmp[j] / norm)
``````

change to:

``````    b = [Decimal(tmp_itm / norm) for tmp_itm in tmp]
``````

If you get this coding style, you will be able optimizing the initial loops too and will probably find, that some of pre-calculated variables are becoming obsolete.

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That sped it up a lot! Thanks. Now my problem is an overflow error in the "reduce" line of code. I'll see if I can't figure that out. – Philip White Apr 17 '14 at 21:05
Are you sure the reduce code is correct? It could have been my imagination, but when I tried the code it looked like it was giving me a different result for the eigenvector. – Philip White Apr 17 '14 at 21:23
@PhilipWhite You are probably right. I think, the reduce code shall read `norm_sq = reduce(lambda a, b: a+b*b, tmp, Decimal(0))` otherwise it is squaring the original sum every time. Try it and if it works, correct it in my answer. – Jan Vlcinsky Apr 17 '14 at 21:25
@PhilipWhite When you are done, consider adding your final code into end of your question. – Jan Vlcinsky Apr 17 '14 at 21:27
You can use `sum` rather than `reduce`, and let Python take care of the adding for you: `norm_sq = sum(tmp[j]*tmp[j] for j in range(len(adjacencyMatrix)))`. You don't even need to start it off with a `Decimal` instance, since `0+Decimal(whatever)` will be a Decimal. There are lots of other places where you're calling `Decimal` where you probably don't need to. If either argument is already a `Decimal`, you can just to operations on it and the result will be a `Decimal` too. – Blckknght Apr 18 '14 at 1:46