Calculate the mean and standard deviation of a tightly clustered set of 1000 initial conditions as a function of iteration number. The bunch of initial conditions should be Gaussian distributed about x = 0.3 with a standard deviation of 10-3
The code I wrote:
from numpy import * def IterateMap(x,r,n): for i in xrange(n): x = r * x * (1.0 - x) return x output = "data" nIterations = 1000 r = 4.0 x0 = 0.3 delta = 0.00005 L =  for i in xrange(nIterations): x = x0 x = IterateMap(x,r,1) L[i] = x x0 = x0 + delta A = array(L) print 'mean: ', mean(A)
So what my code is supposed to do is to take an initial value for x (x0) and call the IterateMap function and return a new value of x and place it in a list(L) then x0 changes to a new value, and this process continues for 1000 times. I get the error "list assignment index out of range". Also, do you think I'm following the problem correctly?