Single Instruction Multiple Data Execution(1st Edition)

Authors:

Christopher J Hughes

Type:Hardcover/ PaperBack / Loose Leaf
Condition: Used/New

In Stock: 1 Left

Shipment time

Expected shipping within 2 - 3 Days
Access to 35 Million+ Textbooks solutions Free
Ask Unlimited Questions from expert AI-Powered Answers 30 Min Free Tutoring Session
7 days-trial

Total Price:

$0

List Price: $11.91 Savings: $11.91 (100%)
Access to 30 Million+ solutions
Ask 50 Questions from expert AI-Powered Answers 24/7 Tutor Help Detailed solutions for Single Instruction Multiple Data Execution

Price:

$9.99

/month

Book details

ISBN: 1627057633, 978-1627057639

Book publisher: Morgan & Claypool

Offer Just for You!: Buy 2 books before the end of January and enter our lucky draw.

Book Price $0 : Having Hit Power Limitations To Even More Aggressive Out-of-order Execution In Processor Cores, Many Architects In The Past Decade Have Turned To Single-instruction Multiple-data (SIMD) Execution To Increase Single-threaded Performance. SIMD Execution, Or Having A Single Instruction Drive Execution Of An Identical Operation On Multiple Data Items, Was Already Well Established As A Technique To Efficiently Exploit Data Parallelism. Furthermore, Support For It Was Already Included In Many Commodity Processors. However, In The Past Decade, SIMD Execution Has Seen A Dramatic Increase In The Set Of Applications Using It, Which Has Motivated Big Improvements In Hardware Support In Mainstream Microprocessors. The Easiest Way To Provide A Big Performance Boost To SIMD Hardware Is To Make It Wider, I.e., Increase The Number Of Data Items Hardware Operates On Simultaneously. Indeed, Microprocessor Vendors Have Done This. However, As We Exploit More Data Parallelism In Applications, Certain Challenges Can Negatively Impact Performance. In Particular, Conditional Execution, Non-contiguous Memory Accesses, And The Presence Of Some Dependences Across Data Items Are Key Roadblocks To Achieving Peak Performance With SIMD Execution. This Book First Describes Data Parallelism, And Why It Is So Common In Popular Applications. We Then Describe SIMD Execution, And Explain Where Its Performance And Energy Benefits Come From Compared To Other Techniques To Exploit Parallelism. Finally, We Describe SIMD Hardware Support In Current Commodity Microprocessors. This Includes Both Expected Design Tradeoffs, As Well As Unexpected Ones, As We Work To Overcome Challenges Encountered When Trying To Map Real Software To SIMD Execution.