登入
選單
返回
Google圖書搜尋
Custom Memory Management Methodology
Francky Catthoor
Sven Wuytack
G.E. de Greef
Florin Banica
Lode Nachtergaele
Arnout Vandecappelle
其他書名
Exploration of Memory Organisation for Embedded Multimedia System Design
出版
Springer Science & Business Media
, 2013-03-09
主題
Computers / Design, Graphics & Media / CAD-CAM
Computers / Artificial Intelligence / Expert Systems
Technology & Engineering / Electrical
Computers / Interactive & Multimedia
Computers / Software Development & Engineering / General
Computers / Design, Graphics & Media / Graphics Tools
ISBN
1475728492
9781475728491
URL
http://books.google.com.hk/books?id=y7HaBwAAQBAJ&hl=&source=gbs_api
EBook
SAMPLE
註釋
The main intention of this book is to give an impression of the state-of-the-art in system-level memory management (data transfer and storage) related issues for complex data-dominated real-time signal and data processing applications. The material is based on research at IMEC in this area in the period 1989- 1997. In order to deal with the stringent timing requirements and the data dominated characteristics of this domain, we have adopted a target architecture style and a systematic methodology to make the exploration and optimization of such systems feasible. Our approach is also very heavily application driven which is illustrated by several realistic demonstrators, partly used as red-thread examples in the book. Moreover, the book addresses only the steps above the traditional high-level synthesis (scheduling and allocation) or compilation (traditional or ILP oriented) tasks. The latter are mainly focussed on scalar or scalar stream operations and data where the internal structure of the complex data types is not exploited, in contrast to the approaches discussed here. The proposed methodologies are largely independent of the level of programmability in the data-path and controller so they are valuable for the realisation of both hardware and software systems. Our target domain consists of signal and data processing systems which deal with large amounts of data.