Approximate function with genetic algorithm

Are there modules in python to approximate a given function(a) with a genetic algorithm to receive a function(b) which produces the same or similar outputs with the same inputs? Why approximate? The workings of function(a) are not known. So basically what the algorithm should do is minimizing the deviation from sample values produced by function(a) and mutating function(b). Any ideas?

Example:

``````1.Iteration:
f(a):  0 -> 5, 1 -> 3, 2 -> 7
f(bi): 0 -> 4, 1 -> 6, 2 -> 3
devi:       1       3       4
sum(devi):  8
...
f(bn): 0 -> 3, 1 -> 2, 2 -> 1
devn:       2       1       4
sum(devn):  7   ------------> 'fitter function - use for mutation'

mutate f(b):

2.Iteration:
f(a):  0 -> 5, 1 -> 3, 2 -> 7, ...
f(bi): 0 -> 5, 1 -> 6, 2 -> 3, ...
devi:       0       3       4
...
``````
-
Are you sure about the genetic algorithm part? There is a number of good non-genetic function approximation algorithms. It would be best if you stated your problem constraints more explicitely (What kind of function should approximate the input function?). –  thiton Oct 7 '11 at 14:06
No any approximation function would do I guess. –  user366121 Oct 7 '11 at 14:09
Then a polynomial of degree N (with N being the number of points in a) would suffice. Have numpy solve your equation system (X * A = Y with A being the parameters, X_ij = "the i-th input to the power of j" and Y as output values), and you're done. –  thiton Oct 7 '11 at 14:12
Thx. I will try that. –  user366121 Oct 7 '11 at 14:18