Using Machine-Learning to Efficiently Explore the Architecture/compiler Co-Design Space

Using Machine-Learning to Efficiently Explore the Architecture/compiler Co-Design Space - BCS/CPHC Distinguished Dissertation Award Series

Paperback (01 Mar 2010)

Not available for sale

Includes delivery to the United States

Out of stock

This service is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Publisher's Synopsis

Designing new microprocessors is a time-consuming task. Architects rely on slow simulators to evaluate performance and a significant proportion of the design space has to be explored before an implementation is chosen. This becomes even more time-consuming when compiler optimisations are considered as part of the design process; once a new architecture is selected, a new compiler must be developed and tuned. This thesis proposes the use of machine-learning to address architecture/compiler co-design. The techniques developed in this work represent a new methodology that has the potential to speed up the design of new processors and automate the generation of the corresponding optimising compilers, resulting in higher system efficiency and shorter time-to-market.

Book information

ISBN: 9781906124663
Publisher: British Informatics Society Limited
Imprint: BCS
Pub date:
DEWEY: 621.3916
DEWEY edition: 22
Language: English
Number of pages: 153
Weight: 438g
Height: 209mm
Width: 294mm
Spine width: 9mm