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Communication Lower Bound in Convolution Accelerators

Xiaoming Chen, Yinhe Han, Yu Wang

202041 citationsDOI

Abstract

In current convolutional neural network (CNN) accelerators, communication (i.e., memory access) dominates the energy consumption. This work provides comprehensive analysis and methodologies to minimize the communication for CNN accelerators. For the off-chip communication, we derive the theoretical lower bound for any convolutional layer and propose a dataflow to reach the lower bound. This fundamental problem has never been solved by prior studies. The on-chip communication is minimized based on an elaborate workload and storage mapping scheme. We in addition design a communication-optimal CNN accelerator architecture. Evaluations based on the 65nm technology demonstrate that the proposed architecture nearly reaches the theoretical minimum communication in a three-level memory hierarchy and it is computation dominant. The gap between the energy efficiency of our accelerator and the theoretical best value is only 37-87%.

Topics & Concepts

DataflowComputer scienceMemory hierarchyConvolutional neural networkUpper and lower boundsConvolution (computer science)ComputationChipWorkloadComputer engineeringEfficient energy useEnergy consumptionHierarchyParallel computingComputer architectureAlgorithmArtificial neural networkTelecommunicationsArtificial intelligenceMathematicsEconomicsMathematical analysisMarket economyEcologyOperating systemElectrical engineeringCacheEngineeringBiologyAdvanced Neural Network ApplicationsAdvanced Memory and Neural ComputingFerroelectric and Negative Capacitance Devices
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