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STT-BNN: A Novel STT-MRAM In-Memory Computing Macro for Binary Neural Networks

Thi-Nhan Pham, Quang‐Kien Trinh, Ik‐Joon Chang, Massimo Alioto

2022IEEE Journal on Emerging and Selected Topics in Circuits and Systems58 citationsDOIOpen Access PDF

Abstract

This paper presents a novel architecture for in-memory computation of binary neural network (BNN) workloads based on STT-MRAM arrays. In the proposed architecture, BNN inputs are fed through bitlines, then, a BNN vector multiplication can be done by single sensing of the merged SL voltage of a row. Our design allows to perform unrestricted accumulation across rows for full utilization of the array and BNN model scalability, and overcomes challenges on the sensing circuit due to the limitation of low regular tunneling magnetoresistance ratio (TMR) in STT-MRAM. Circuit techniques are introduced in the periphery to make the energy-speed-area-robustness tradeoff more favorable. In particular, time-based sensing (TBS) and boosting are introduced to enhance the accuracy of the BNN computations. System simulations show 80.01% (98.42%) accuracy under the CIFAR-10 (MNIST) dataset under the effect of local and global process variations, corresponding to an 8.59% (0.38%) accuracy loss compared to the original BNN software implementation, while achieving an energy efficiency of 311 TOPS/W.

Topics & Concepts

Magnetoresistive random-access memoryArtificial neural networkBinary numberComputer scienceMacroNon-volatile memoryResistive random-access memoryRandom access memoryParallel computingArtificial intelligenceElectrical engineeringComputer hardwareVoltageEngineeringMathematicsArithmeticProgramming languageAdvanced Memory and Neural ComputingFerroelectric and Negative Capacitance DevicesMachine Learning and ELM
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