1

I guess that iterating over an numpy array is not the most efficient way, and I can see that my program is really slow now that I have a bit larger dataset.

1) What is the go to way to iterate over a matrix and apply a function to each cell?

This is part of the code:

# States and data are two lists with a few appended items ~100
rows = len(self.states)
cols = len(self.data)
self.trellis = np.zeros((rows, cols))
    for i, state in enumerate(self.states):
        for j, vector in enumerate(self.data):
            self.trellis[i][j] = mvnun_wrapper(vector, state.mu, state.sigma, vector_length)
  • May this solution help stackoverflow.com/a/8079151/5050917 ? – mgc Jan 17 '16 at 2:40
  • What is the relation between vector and vector_length? – Ramon Crehuet Jan 18 '16 at 8:37
  • Vector is an array of numbers and vector_length is its length. It is actually of no importance. Method call is the essence :D – Dusan J. Jan 18 '16 at 21:37
1

it seems to be a classic numpy problem. states sound like a list of state with 2 attributes, mu and sigma.

I don't think vector_length is requisite here, and suppose mvnun a function of three scalars.

then just try:

mu = [state.mu for state in states]
sigma = [state.sigma for state in states]
v=np.asarray(vector).reshape(-1,1) # a "column" vector
result = mvnun(v,mu,sigma)

As an example :

class state():
    def __init__(self):
        self.mu=np.random.random()
        self.sigma=np.random.random() 

states=[state() for _ in range(10)]  # 10 states
vector=list(range(5))  # a 5-vector
def mvnun(x,m,s) : return x*m+3*x*s # a scalar function

mu=[state.mu for state in states]
sigma = [state.sigma for state in states]
v=np.asarray(vector).reshape(-1,1) # a "column" vector
result = mvnun(v,mu,sigma)

result.shapeis (5,10).

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.