AC-DSE: Approximate Computing for the Design Space Exploration of Reconfigurable MPSoCs

Author:

Shahid Arsalan1,Qadri Muhammad Yasir2,Fleury Martin2ORCID,Waris Hira3,Ahmad Ayaz3,Qadri Nadia N.3

Affiliation:

1. School of Computer Science, University College Dublin, Dublin 4, Ireland

2. School of Computer Science and Electronic Engineering, University of Essex, Colchester, Essex CO4 3SQ, UK

3. COMSATS Institute of Information Technology, CIIT Wah, Wah Cantt, Pakistan

Abstract

This paper concerns the design space exploration (DSE) of Reconfigurable Multi- Processor System-on- Chip (MPSoC) architectures. Reconfiguration allows users to allocate optimum system resources for a specific application in such a way to improve the energy and throughput balance. To achieve the best balance between power consumption and throughput performance for a particular application domain, typical design space parameters for a multi-processor architecture comprise the cache size, the number of processor cores and the operating frequency. The exploration of the design space has always been an offline technique, consuming a large amount of time. Hence, the exploration has been unsuitable for reconfigurable architectures, which require an early runtime decision. This paper presents Approximate Computing DSE (AC-DSE), an online technique for the DSE of MPSoCs by means of approximate computing. In AC-DSE, design space solutions are first obtained from a set of optimization algorithms, which in turn are used to train a neural network (NN). From then on, the NN can be used to rapidly return its own solutions in the form of design space parameters for a desired energy and throughput performance, without any further training.

Funder

National ICT R&D Fund, Pakistan

Publisher

World Scientific Pub Co Pte Lt

Subject

Electrical and Electronic Engineering,Hardware and Architecture,Electrical and Electronic Engineering,Hardware and Architecture

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