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I am trying to calculate below summation

enter image description here

where f_j,f_j are functions of q calculated before and q=sin(theta) where theta varies[0,90], and r_ij is the respective distance bewteen each two elements I am doing this calculation for.

I used the sum() function at first but it didn't work proberly as it returns a float number, but as q is changing and there's no summation for it I'm expecting an array!Ergo I gave it up.

My second approach was recursive function for calculating this summation,but I get so many errors and have no idea what is wrong with my code as I thing all the syntaxes are correct and I have no idea why I get errors or wrong values one after another!

    theta=arange(radians(0.5), radians(40.010), radians(0.03))

    f_q_1= 2*exp(-3*pow(q,2))+4*exp(-5*pow(q,2))+1.95
    f_q_i(or j).

    atom_positions= open('coordinates.txt','r')

    lines = atom_positions.readlines()
    for i in range(0, len(lines)):
        line = lines[i]
        values = line.split(" ")
        for j in range(0,len(lines)):
         if j<>i: 
          nextLine = lines[j]
          nextLineValues = nextLine.split(" ")

           r =sqrt((float(values[5])-float(nextLineValues[5]))**2 + (float(values[6])

            line_len = len(lines)
            def I_tot(line_len,i,f_i,f_j,r):
             if i<line_len:
                return I + I_tot(line_len,i,f_i,f_j,r)
                return I



RuntimeError: maximum recursion depth exceeded while calling a Python object

+This question is not a duplicate of recursive summation questions asked here before, As I checked them and couldn't find a solution to my problem.

I have also tried the function

def I_tot():
       for i in range(0,len(lines)):

       return I

But I have no idea whether it gives me the correct summation or not, because the graph I get in the end is far from my expectation and indicates that this summation should not be correct.

share|improve this question
That's looks like a infinite recursion, there is no variable changing. –  M4rtini Feb 16 '14 at 15:55
I think you aproach to solution here is not correct, why do it by recursion?? –  Daniel Sanchez Feb 16 '14 at 15:59
What's wrong with sum? returning a float for that expression seems fairly reasonable to me. sin will give a float after all. If you don't want floats, you could just convert it to a int. –  M4rtini Feb 16 '14 at 15:59
@M4rtini my problem is not with ints or folats. my problem is that sum will give me a single number whereas I am expectin an array as the summation contains q and q varies [0:1:90] –  Negin Feb 16 '14 at 16:16
There's so much information missing here we can't tell you yet. What is D? how is q,r,f_i,f_j defined? are they lists? are they numpy arrays maybe? How you are using them could maybe suggest that they are numpy arrays. The mathematical formula you showed, and the code you showed don't correspond as far as i can tell. –  M4rtini Feb 16 '14 at 16:25

2 Answers 2

Recursion in Python is limited. I would try summation anyway.

Note that in Numpy's sum function, you have two parameters:

def sum(a, axis=None, dtype=None, out=None, keepdims=False):
    Sum of array elements over a given axis.

    a : array_like
        Elements to sum.
    axis : None or int or tuple of ints, optional
        Axis or axes along which a sum is performed.
        The default (`axis` = `None`) is perform a sum over all
        the dimensions of the input array. `axis` may be negative, in
        which case it counts from the last to the first axis.

The axis parameters tell it to sum in only sum of the dimensions. Meaning, if you sum along the q and j axis, you can still have a vector result in the q axis .

You should have something similar to that.

import numpy as np
qs = np.array([1,2,3]) #Generate sum qs.
r = np.array([[11,21, 41,51]]) #the r_ij compnent. as a 1D vector 
                               #(you can get it using reshape() )

np.kron(qs,r.T).sum(axis=0) #a vector containing sum(q*r) for each q.

Here, np.krons gives you

array([[ 11,  22,  33],
       [ 21,  42,  63],
       [ 41,  82, 123],
       [ 51, 102, 153]])

and the summation gives

array([124, 248, 372])

A single element for each line.

You can easily generalize it to include f_i(q) (a 2D array of the same structure), add sin, etc.

share|improve this answer

still not sure what your end result is gonna be. But here are some starting points.

Use this to load inn the positions, calculate the distances and put it in a array.

import numpy as np
from scipy.spatial import distance
values = np.genfromtxt('coordinates.txt', dtype=float, usecols=[5,6,7])
r_ij = distance.squareform(distance.pdist(xyz))
nPositions = r_ij.shape()[0]

If you can make arrays of f_j and f_i, you can probably vectorize the summation, by utilizing array multiplication and the numpy version of sum. which allows you to define what axis to sum over.

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