Back to Search

Automatic Simd Vectorization of Ssa-Based Control Flow Graphs

AUTHOR Karrenberg, Ralf
PUBLISHER Springer Vieweg (06/29/2015)
PRODUCT TYPE Paperback (Paperback)

Description
Ralf Karrenberg presents Whole-Function Vectorization (WFV), an approach that allows a compiler to automatically create code that exploits data-parallelism using SIMD instructions. Data-parallel applications such as particle simulations, stock option price estimation or video decoding require the same computations to be performed on huge amounts of data. Without WFV, one processor core executes a single instance of a data-parallel function. WFV transforms the function to execute multiple instances at once using SIMD instructions. The author describes an advanced WFV algorithm that includes a variety of analyses and code generation techniques. He shows that this approach improves the performance of the generated code in a variety of use cases.
Show More
Product Format
Product Details
ISBN-13: 9783658101121
ISBN-10: 3658101121
Binding: Paperback or Softback (Trade Paperback (Us))
Content Language: English
More Product Details
Page Count: 187
Carton Quantity: 38
Product Dimensions: 5.83 x 0.43 x 8.27 inches
Weight: 0.55 pound(s)
Feature Codes: Illustrated
Country of Origin: NL
Subject Information
BISAC Categories
Computers | Languages - General
Computers | Software Development & Engineering - Computer Graphics
Computers | Applied
Dewey Decimal: 005.13
Descriptions, Reviews, Etc.
jacket back

Ralf Karrenberg presents Whole-Function Vectorization (WFV), an approach that allows a compiler to automatically create code that exploits data-parallelism using SIMD instructions. Data-parallel applications such as particle simulations, stock option price estimation, or video decoding require the same computations to be performed on huge amounts of data. Without WFV, one processor core executes a single instance of a data-parallel function. WFV transforms the function to execute multiple instances at once using SIMD instructions. The author describes an advanced WFV algorithm that includes a variety of analyses and code generation techniques. He shows that this approach improves the performance of the generated code in a variety of use cases.

Contents

  • Introduction, Foundations & Terminology, Related Work
  • SIMD Property Analyses
  • Whole-Function Vectorization
  • Dynamic Code Variants, Evaluation, Conclusion, Outlook

Target Groups

  • Computer science researchers and students working in data-parallel computing
  • Software and compiler engineers in the fields high-performance computing and compiler construction

About the Author

Ralf Karrenberg received his PhD in computer science at Saarland University in 2015. His seminal research on compilation techniques for SIMD architectures found wide recognition in both academia and the CPU and GPU industry. Currently, he is working for NVIDIA in Berlin. Prior to that, he contributed to research and development for visual effects in blockbuster movies at Weta Digital, New Zealand.

Show More
publisher marketing
Ralf Karrenberg presents Whole-Function Vectorization (WFV), an approach that allows a compiler to automatically create code that exploits data-parallelism using SIMD instructions. Data-parallel applications such as particle simulations, stock option price estimation or video decoding require the same computations to be performed on huge amounts of data. Without WFV, one processor core executes a single instance of a data-parallel function. WFV transforms the function to execute multiple instances at once using SIMD instructions. The author describes an advanced WFV algorithm that includes a variety of analyses and code generation techniques. He shows that this approach improves the performance of the generated code in a variety of use cases.
Show More
List Price $54.99
Your Price  $54.44
Paperback