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Highly-Adaptive Mixed-Precision MAC Unit for Smart and Low-Power Edge Computing

Guillaume Devic, Maxime France-Pillois, Jérémie Salles, Gilles Sassatelli, Abdoulaye Gamatié

202112 citationsDOIOpen Access PDF

Abstract

Machine learning algorithms are compute- and memory-intensive. Their execution at the edge on resource-constrained embedded systems is challenging. Data quantization, i.e. data bit-width reduction, contributes to reducing de-facto the memory bandwidth requirement. In order to best exploit this bit-width reduction, a prevailing approach consists of tailored hardware accelerators. Another approach relies on general-purpose compute units with Single Instruction Multiple Data (SIMD) support for reduced data bit-width precision, as in ARM Cortex-M [1] or RISC-V based RI5CY [2] processors. However, such processors only handle a few predefined bit-width ranges, e.g. 8-bit and 16-bit only for the ARM SIMD.This paper proposes a flexible architecture of Multiply-and-Accumulate (MAC) unit allowing asymmetric multiplication for operand sizes in powers of 2, up to 32 bits. The synthesis of this architecture in 28nm FD-SOI technology shows 10% and 25% reduction in area and dynamic power respectively, compared to the RI5CY MAC unit. From the energy-efficiency point of view, up to 50% improvements are achieved.

Topics & Concepts

Computer scienceSIMDOperandQuantization (signal processing)Parallel computingFloating pointReduced instruction set computingReduction (mathematics)Addressing modeFloating-point unitARM architectureComputer hardwareMultiplication (music)Bandwidth (computing)Instruction setCentral processing unitInstructions per cycleAlgorithmPhysicsGeometryComputer networkMathematicsAcousticsParallel Computing and Optimization TechniquesEmbedded Systems Design TechniquesCCD and CMOS Imaging Sensors
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