Difference between revisions of "GPU610/DPS915"

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*# [https://scs.senecac.on.ca/~gpu610/pages/workshops/w9.html Matrix Product using Streams]
 
*# [https://scs.senecac.on.ca/~gpu610/pages/workshops/w9.html Matrix Product using Streams]
 
*# [https://scs.senecac.on.ca/~gpu610/pages/workshops/w10.html CUDA to OpenCL]
 
*# [https://scs.senecac.on.ca/~gpu610/pages/workshops/w10.html CUDA to OpenCL]
* Grading - The window for submission of each workshop is one week.  The penalty for late submission is 50% of the workshop mark.
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* Grading - The window for submission of each workshop is one week plus a day from the date of the workshop period.  The penalty for late submission is 50% of the workshop mark.
  
 
== The Assignments  ==
 
== The Assignments  ==

Revision as of 18:24, 9 January 2013


GPU610/DPS915 | Student List | Group and Project Index | Student Resources | Glossary

Please help make this page resourceful for all GPU610/DPS915 students to use!

Course Material

GPU610 - Parallel Programming Fundamentals

  • Modern GPU (Graphics Processing Unit) technology supports massively parallel computations, which complements the serial processing capabilities of CPU technology. This course teaches students how to read, write, and debug programs that use both CPU and GPU technology. Students learn to reorganize existing programs into serial code that runs on the CPU and parallel code that runs on the GPU. Students also study cases that have benefited from CPU+GPU programming.
  • Course Outline

NV CUDA Teaching Center Small.jpg

DPS915 - Introduction to Parallel Programming

  • Modern GPU (Graphics Processing Unit) technology supports massively parallel computations, which complements the serial processing capabilities of CPU technology. This course teaches students how to read, write, and debug programs that use both CPU and GPU technology. Students learn to reorganize existing programs into serial code that runs on the CPU and parallel code that runs on the GPU. Students also study cases that have benefited from CPU+GPU programming and develop a CPU+GPU application for a client.

NV CUDA Teaching Center Small.jpg

External Links

The Workshops

The Assignments

Evaluation

  • Assignments and Presentation 30%
  • Workshops 20%
  • Test 20%
  • Exam 30%

Resources

Archives