I am currently trying to make a genetic algorithm to match a list of floating point numbers to another list of floating point numbers (I know this is sort of "pointless" because I already have the data, but I just want to have the ability to do this before trying to tackle more complex genetic algorithm problems). I have the following code written in Python.

```
from random import random
ofInterest = [
5.76260089714,
7.87666520017,
9.53163269149,
9.72801578613,
5.20002737716,
0.50133290228,
8.58820041647,
9.65056792475,
3.07043110493,
1.13232332178
]
print(ofInterest)
fits = []
for i in range(100):
fits.append([])
for j in range(10):
fits[i].append(random()*10)
fitness = []
for i in range(100):
fitness.append(100000000)
def makeFitnessList():
for i in range(100):
fitValue = 0
for j in range(10):
fitValue += (fits[i][j] - ofInterest[j])**2
fitness[i] = fitValue
topTenFitness = []
for i in range(10):
topTenFitness.append(10000000000000)
print(topTenFitness)
def sortByFitness():
makeFitnessList()
temp = []
count = 0
while len(temp) < 10:
k = 100000000000000000000000000
index = -1
for i in range(len(fitness)):
if k > fitness[i]:
k = fitness[i]
index = i
temp += [index]
topTenFitness[count] = fitness[index]
print(fitness[index])
fitness[index] = 1000000000000
count += 1
temp2 = fits
for i in range(10):
fits[i] = temp2[temp[i]]
#sortByFitness()
#print(fitness[0])
#print(fits[0])
def cross(rate):
for i in range(10,100):
parent1Place = int(random()*10.01)
if (i*random()) > rate:
parent2Place = int(random()*10.01)
crossPoint = int(random()*10.01)
for i in range(crossPoint):
tempOne = fits[parent1Place][i]
tempTwo = fits[parent2Place][i]
fits[parent1Place][i] = tempOne
fits[parent2Place][i] = tempTwo
else:
fits[i] = fits[parent1Place]
def mutate(rate):
for i in range(10,100):
for gene in range(10):
if random() < rate:
fits[i][gene] = random()*10
for i in range(10):
makeFitnessList()
sortByFitness()
print("")
cross(.6)
mutate(.4)
sortByFitness()
print(fits[0])
```

This program runs, but there is no gain in fitness:

```
158.551483202
89.0049309654
150.062479048
223.447907282
162.41893599
105.727706028
169.756843723
77.0767420744
122.905567656
144.328292984
113.405444904
132.748651766
144.739705127
155.959141194
151.507885923
86.3246751862
etc...
```