I need to perform LU decomposition of a very large sparse matrix (about 10^6 by 10^6). My computer has 24 cores and Parallel Computing Toolbox installed. I have tried the built-in lu() in matlab. It is of course a very good implementation. But it'll take a long time and big memory to deal with such a large matrix. And it seems that the built-in lu function is a single-thread implementation as I could see in system monitor. in which only one core is used.

So I'm thinking about parallel implementation of lu decomposition in matlab. I'm wondering about the following questions:

(1) Is there a multi-thread implementation of lu in matlab, or by using PCT, could lu become more efficient?

(2) Could matlab exploit GPU for lu? how is the computation cost compare with built-in function?

(3) Is there any third-party package of parallel lu recommended? I know the Superlu can perform lu by parallel computing. But only the sequential implementation has a matlab interface.

What do you think about this, what is the fastest way for lu decomposition of a large sparse matrix? Thanks.

`lu`

is multi-threaded in release 2012a and, I presume, later releases. Perhaps an update to your installation is called for ? – High Performance Mark Jun 29 '13 at 9:09`CUDA`

codes compiled and liked as`mex`

files under Matlab to run many functions on the GPU. As long as I know, since recently it has been incorporated as a new feature in the newest releases of Matlab. This software had a lot of optimized functions running under Matlab on the GPU. I would suggest exploring in the direction of GPU acceleration of Matlab codes. Probably you will find the LU decomposition already implemented in one of these tools. – JackOLantern Jun 30 '13 at 8:38