IEEE/ACM International Symposium on Code Generation and Optimization, CGO 2015


Article Details
Title: Optimizing and auto-tuning scale-free sparse matrix-vector multiplication on Intel Xeon Phi
Article URLs:
Alternative Article URLs:
Authors: Wai Teng Tang
  • Agency for Science, Technology and Research, Institute of High Performance Computing
Ruizhe Zhao
  • Peking University, Center for Energy-Efficient Computing and Applications
  • Peking University, School of EECS
Mian Lu
  • Agency for Science, Technology and Research, Institute of High Performance Computing
Yun Liang
  • Peking University, Center for Energy-Efficient Computing and Applications
  • Peking University, School of EECS
Huynh Phung Huyng
  • Agency for Science, Technology and Research, Institute of High Performance Computing
Xibai Li
  • Peking University, Center for Energy-Efficient Computing and Applications
  • Peking University, School of EECS
Rick Siow Mong Goh
  • Peking University, Institute of High Performance Computing
  • Peking University, School of EECS
Sharing: Unknown
Verification: Authors have not verified information
Artifact Evaluation Badge: none
Artifact URLs:
Artifact Correspondence Email Addresses:
NSF Award Numbers:
DBLP Key: conf/cgo/TangZLLHLG15
Author Comments:

Discuss this paper and its artifacts below