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Retargetable Estimation Scheme for DSP Architecture Selection

Naji Ghazal, Richard Newton, Jan Rabaey

Given the recent wave of innovation and diversification in digital signal processor (DSP) architecture, the need for quickly evaluating the true potential of considered architectural choices for a given application has been rising. We propose a new scheme, called Retargetable Estimation, that involves analysis of a high-level description of a DSP application, with aggressive optimization search, to provide a performance estimate of its optimal implementation on the architectures considered. With this scheme, we present a new parameterized architecture model that allows quick retargeting to a wide range of architectural choices, and that emphasizes capturing an architecture's salient optimizing features. We show that for a set of DSP benchmarks and two full applications, hand-optimized performance can be predicted reliably. We applied this scheme to two different processors.