Using Machine-Learning to Efficiently Explore the Architecture/Compiler Co-Design Space (Distinguished Dissertations)
📄 Viewing lite version
Full site ›
⌛ 🇫🇷 France pricing being fetched…
Prices will appear once fetched — usually within a few minutes.
View in:
🇺🇸 USA
Book Details
Author(s)Christophe Dubach
PublisherBritish Informatics Society Ltd
ISBN / ASIN1906124663
ISBN-139781906124663
MarketplaceFrance 🇫🇷
Description ▲
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 process becomes more time consuming when compiler optimisations are also considered. Once the architecture is selected, a new compiler must be developed and tuned. What is needed are techniques that can speedup this whole process and develop a new optimising compiler automatically. This thesis proposes the use of machine-learning techniques to address architecture/compiler co-design.