Team Challenger: Difference between revisions

From Cpre584
Jump to navigation Jump to search
Zhonghu (talk | contribs)
Xinying (talk | contribs)
Line 20: Line 20:
:*  week 4
:*  week 4
::* Convey computing with bioinformatics applications [http://hpcsociety.org/Resources/Documents/121212Kirby-CONVEY-SHPCP_121212.pdf]
::* Convey computing with bioinformatics applications [http://hpcsociety.org/Resources/Documents/121212Kirby-CONVEY-SHPCP_121212.pdf]
:*  week 5
::* Tutorial for COREGEN [http://homepages.cae.wisc.edu/~ece554/website/Xilinx/Coregen_user_guide.pdf]
* Qilin Li
* Qilin Li
:*  week 1
:*  week 1

Revision as of 22:44, 19 February 2013

Team Members

  • Xinying Wang
  • Qilin Li
  • Zhong Hu


Wiki Contributions

  • Xinying Wang
  • week 1
  • Convey vector personalities offer OpenMP-like programming approach with FPGA accelerating. [1]
  • Weekly presentation slides Media:week1slides.pptx
  • week 2
  • A Sparse Matrix Personality for the Convey HC-1 [2]
  • week 3
  • Translate verilog version adder file to vhdl code.
  • Discuss the implementation of QR application on convey system
  • Cordic Algorithm Implementations on FPGA [3]
  • week 4
  • Convey computing with bioinformatics applications [4]
  • week 5
  • Tutorial for COREGEN [5]
  • Qilin Li
  • week 1
  • Introduction to Compilers for Convey [6]
  • GPGPU Programming on example of CUDA [7]
  • Parallel Programming in CUDA C [8]
  • week 2
  • week 3
  • week 4
  • Zhong Hu
  • CUDA Global Memory Usage & Strategy. [9]
  • CUDA C++ code samples.[10]
  • make-up for week 2
  • QR ecomposition on GPUs[11]
  • Introduction to Householder algorithm in QR decomposition application[12]
  • make-up for week 3
  • CUDA Memory Model[13]
  • CUBLAS Library Usage Reference[14]
  • week 4
  • system Verilog tutorial[15]
  • week 5
  • most commonly used CUDA wiki website[16]
  • Nvidia GPU versions and corresponding compute capability[17]
  • methods to check CUDA memory constraints in terms of different GPU versions[18]