International Journal of Reconfigurable and Embedded Systems (IJRES)
Vol 4, No 2: July 2015

An Efficient Framework for Floor-plan Prediction of Dynamic Runtime Reconfigurable Systems

Ahmed Al-Wattar (University of Guelph)
Shawki Areibi (University of Guelph)
Gary Grewal (University of Guelph)



Article Info

Publish Date
01 Jul 2015

Abstract

Several embedded application domains for reconfigurable systems tend to combine frequent changes with high performance demands of their workloads such as image processing, wearable computing andnetwork processors.  Time multiplexing of reconfigurable hardware resources raises a number of new issues, ranging from run-time systems to complex programming models that usually form a Reconfigurablehardware Operating System (ROS).  The Operating System performs online task scheduling and handles resource management.There are many challenges in adaptive computing and dynamic reconfigurable systems. One of the major understudied challengesis estimating the required resources in terms of soft cores, Programmable Reconfigurable Regions (PRRs), the appropriate communication infrastructure, and to predict a near optimal layout and floor-plan of the reconfigurable logic fabric. Some of these issues are specific to the application being designed, while others are more general and relate to the underlying run-time environment.Static resource allocation for Run-Time Reconfiguration (RTR) often leads to inferior and unacceptable results. In this paper, we present a novel adaptive and dynamic methodology, based on a Machine Learning approach, for predicting andestimating the necessary resources for an application based on past historical information.An important feature of the proposed methodology is that the system is able to learn and generalize and, therefore, is expected to improve its accuracy over time.  The goal of the entire process is to extract useful hidden knowledge from the data. This knowledge is the prediction and estimation of the necessary resources for an unknown or not previously seen application.

Copyrights © 2015






Journal Info

Abbrev

IJRES

Publisher

Subject

Economics, Econometrics & Finance

Description

The centre of gravity of the computer industry is now moving from personal computing into embedded computing with the advent of VLSI system level integration and reconfigurable core in system-on-chip (SoC). Reconfigurable and Embedded systems are increasingly becoming a key technological component ...