Using rank and matrixes to find optimal variables

I am trying to find the rank of different matrixes that way i can use the variables that were used to make that matrix. I have a function that takes in `species=['CH4','CO','H2O','CO2','C','H','O']` and `unel=['C','H','O']` and come up with a bunch of different combinations of species and then test each combination. my equation function turns the combination into a matrix (example below). I have thrown in some prints to try and figure out where this is going wrong but it seems it comes up with a rank of 2 for everything. I am not sure if my code is wrong of im not using the right inputs.

``````def basic_var(species,unel):
basic_var=[]
comb=list(combinations(species,len(unel)))
print comb
for x in comb:
matrix=equations(x,unel)
print matrix
print rank(matrix)
if rank(matrix)==len(unel):
basic_var=list(x)
return basic_var
``````

other function:

``````def equations(specie, elements):
result = []
for x in specie:
formula = parse_formula(x)
result.append(extracting_columns(formula, elements))
return np.array(result)

equations(['CH4','CO','H2O','CO2','C','H','O'],['C', 'H', 'O'])
``````

out:

``````array([[ 1.,  4.,  0.],
[ 1.,  0.,  1.],
[ 0.,  2.,  1.],
[ 1.,  0.,  2.],
[ 1.,  0.,  0.],
[ 0.,  1.,  0.],
[ 0.,  0.,  1.]])
``````
-
Is this a common homework going on somewhere ? I've seen this same question yesterday, except the other user didn't bother including any code. The function that works seems interesting, too bad we have no idea what `parse_formula` and `extracting_columns` do (we also don't know what `equations` does in your code). –  mmgp Dec 19 '12 at 3:13