While googleing about matrix inversion algorithms I found that there are several ways (and opinions!) about how to do this in code. I wondered which method is the fastest, or the one with the best performance, and trying to found that answer I found nothing.
I know that for some cases a pseudo-inverse can be computed (using SVD, cholevsky,...), I actually use some of those in my code, and I know that several times an inverse just doesn't exist, etc. It is easy to find an specific answer for an specific problem but not a general intuition for this big (HUGE!) problem that is matrix inversion.
So my question is:
What method is best in performance for small matrices? And in precision? What about big matrices?
My personal case is a 6x6 (EDIT:symetric) matrix that have to be inverted thousands of times (yes,yes, with different values) and I need high precision, but for sure speed would come really handy.
Note that I am not looking for code, I will code myself whatever answer fits most to my case, but I think this is a question that lots of programmers would like to know.