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Staff information

Bin Ren

High Performance Computing
Post Doctorate RA C
Pacific Northwest National Laboratory
PO Box 999
MSIN: J4-30
Richland, WA 99352


Bin Ren received his Ph.D from the Department of Computer Science and Engineering, The Ohio State University, in May, 2014. His advisor is Professor Gagan Agrawal. Currently, he is a Post-doctoral research associate in High Performance Computing group of Pacific Northwest National Laboratory with Dr. Sriram Krishnamoorthy. For more information, please check his personal web page:

Research Interests

  • Parallel Computing
  • Compiler Analysis, and Code Generation
  • Data Intensive and Data Mining Algorithms

Education and Credentials

  • PhD, Master, The Ohio State University, Computer Science and Engineering, 2008 - 2014
  • Master, Beihang University, Computer Software Engineering, 2006 - 2008
  • Bachelor, Beihang University, Computer Software Engineering, 2002 - 2006

Affiliations and Professional Service

  • ACM professional member

Awards and Recognitions

  • 2013 International Symposium on Code Generation and Optimization (CGO), Best Paper Award, SIGPLAN Research Highlights
  • 2012 International Conference on Parallel Architectures and Compilation Techniques (PACT), Travel Award
  • 2011 International Conference on Parallel Architectures and Compilation Techniques (PACT), Travel Award
  • 2008 University Fellowship, The Ohio State University
  • 2006 Award of Outstanding Graduates, Beihang University

PNNL Publications


  • Ren B, Y Jo, S Krishnamoorthy, K Agrawal, and M Kulkarni. 2015. "Efficient Execution of Recursive Programs on Commodity Vector Hardware." In Proceedings of the 36th Annual ACM SIGPLAN Conference on Programming Language Design and Implementation (PLDI 2015), June 13-17, 2015, Portland, Oregon, pp. 509-520.  ACM , New York, NY.  doi:10.1145/2737924.2738004

Advanced Computing, Mathematics, and Data


Seminar Series

Science at PNNL

ACMDD Research

Research highlights

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