Energy footprint of advanced dense numerical linear algebra using tile algorithms on multicore architectures
Type
Conference PaperDate
2012-11Permanent link to this record
http://hdl.handle.net/10754/575808
Metadata
Show full item recordAbstract
We propose to study the impact on the energy footprint of two advanced algorithmic strategies in the context of high performance dense linear algebra libraries: (1) mixed precision algorithms with iterative refinement allow to run at the peak performance of single precision floating-point arithmetic while achieving double precision accuracy and (2) tree reduction technique exposes more parallelism when factorizing tall and skinny matrices for solving over determined systems of linear equations or calculating the singular value decomposition. Integrated within the PLASMA library using tile algorithms, which will eventually supersede the block algorithms from LAPACK, both strategies further excel in performance in the presence of a dynamic task scheduler while targeting multicore architecture. Energy consumption measurements are reported along with parallel performance numbers on a dual-socket quad-core Intel Xeon as well as a quad-socket quad-core Intel Sandy Bridge chip, both providing component-based energy monitoring at all levels of the system, through the Power Pack framework and the Running Average Power Limit model, respectively. © 2012 IEEE.Citation
Dongarra, J., Ltaief, H., Luszczek, P., & Weaver, V. M. (2012). Energy Footprint of Advanced Dense Numerical Linear Algebra Using Tile Algorithms on Multicore Architectures. 2012 Second International Conference on Cloud and Green Computing. doi:10.1109/cgc.2012.113Conference/Event name
2nd International Conference on Cloud and Green Computing, CGC 2012, Held Jointly with the 2nd International Conference on Social Computing and Its Applications, SCA 2012ISBN
9780769548647ae974a485f413a2113503eed53cd6c53
10.1109/CGC.2012.113