I am using a brute force method to optimize a solution in one of my recent projects and it is working quite well. Basically the optimization process involves searching for a global maximum in the space of all possible solutions. I was curious if there are other techniques which can be used to speed up a brute force search or other methods entirely. This is an area that I have little experience in but, as I said, I am quite curious.

Genetic algorithms are a good way to find maximums, even when is not possible to test all solutions. It's a wide spread technique and there are implementations in very programming languages. 


Simulated annealing is useful for solving local maxima problems, but is not always guaranteed to find the global maxima. It basically uses random 'jumps' in an attempt to find a better location/value than its current, and this can speed up searches. 

