# Calculate sums with large binomial coefficients

I would like to compute the following sums. The problem is that the binomial coefficients are too large I think so it fails.

``````from __future__ import division
import numpy as np
from scipy.special import binom
print [sum(binom(n,2*k)*np.sqrt(np.pi*k)**(-n/10) for k in xrange(1,int(n/2)+1)) for n in xrange(100000)]
``````

Is there some way to approximate the answer?

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Well, binom tops out pretty early:

``````from scipy.special import binom

binom(1019, 509)    # => 1.40313388415e+305
binom(1020, 510)    # => inf
``````

What exactly is the calculation you are trying to perform?

Here's an reformulated version which shifts the values around a bit; we can find successive values of the binomial series for each n instead of recomputing from scratch each time, and I've pushed the power-of-a-sqrt into a single operation.

``````from math import pi

for n in xrange(100000):
total = 0.

binom = 1
binom_mul = n
binom_div = 1

power = -0.05 * n
for k in xrange(1, n // 2 + 1):
binom = binom * binom_mul / binom_div
binom_mul -= 1
binom_div += 1

total += binom * (pi * k) ** power

print(total)
``````
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Mathematically it is just what I have in the question. The values should eventually tend to zero. It looks like I need some way to avoid calculating these massive binomial coefficients explicitly. – felix Apr 9 '14 at 15:00

The problem you're facing is that `scipy.special.binom` is approximating the answer. You could try computing them exactly using `scipy.misc.comb` with the optional argument `exact=True`.

With `exact=False` it uses a gamma function for fast computation, but you can force it to calculate the coefficient explicitly with `exact=True`. In that case, it returns a python `long`.

For example:

``````In [1]: from scipy.misc import comb
In [2]: comb(1100, 600, exact=1)
Out[2]: 3460566959226705345639127495806232085745599377428662585566293887742644983083368677353972462238094509711079840182716572056521046152741092473183810039372681921994584724384022883591903620756613168264181145704714086085028150718406438428295606240034677372942820551517227766024953527980780035209056864110017856973033878393954438656320L
``````

Additionally, you could try using something other than `scipy`: gmpy here and here.

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