Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I've been testing various open source codes for solving a linear system of equations in C++. So far the fastest I've found is armadillo, using the OPENblas package as well. To solve a dense linear NxN system, where N=5000 takes around 8.3 seconds on my system, which is really really fast (without openblas installed, it takes around 30 seconds).

One reason for this increase is that armadillo+openblas seems to enable using multiple threads. It runs on two of my cores, whereas armadillo without openblas only uses 1. I have an i7 processor, so I want to increase the number of cores, and test it further. I'm using ubuntu, so from the openblas documentation I can do in the terminal:


however, running the code again doesn't seem to increase the number of cores being used or the speed. Am i doing something wrong, or is the 2 the max amount for using armadillo's "solve(A,b)" command? I wasn't able to find armadillo's source code anywhere to take a look.

Incidentally does anybody know the methods armadillo/openblas use for solving Ax=b (standard LU decomposition with parallelism or something else) ? Thanks!

edit: Actually the number of cores stuck at 2 seems to be a bug when installing openblas with synaptic package manager see here. Reinstalling from source allows it to detect how many cores i actutally have (8). Now I can use export OPENBLAS_NUM_THREADS=4 etc to govern it.

share|improve this question

1 Answer 1

up vote 2 down vote accepted

Armadillo doesn't prevent OpenBlas from using more cores. It's possible that the current implementation of OpenBlas simply chooses 2 cores for certain operations.

You can see Armadillo's source code directly in the downloadable package (it's open source), in the folder "include". Specifically, have a look at the file "include/armadillo_bits/fn_solve.hpp" (which contains the user accessible solve() function), and the file "include/armadillo_bits/auxlib_meat.hpp" (which contains the wrapper and housekeeping code for calling the torturous Blas and Lapack functions).

If you already have Armadillo installed on your machine, have a look at "/usr/include/armadillo_bits" or "/usr/local/include/armadillo_bits".

share|improve this answer
Thanks for the info about the source code. See my edit regarding number of cores used by openblas –  Johnny Lyco Jan 31 '13 at 12:30

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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