This brief presents an energy-efficient and high-performance XNOR-bitcount architecture exploiting the benefits of computing-in-memory (CiM) and unique properties of spin-transfer torque magnetic RAM (STT-MRAM) based on double-barrier magnetic tunnel junctions (DMTJs). Our work proposes hardware and algorithmic optimizations, benchmarked against a state-of-the-art CiM-based XNOR-bitcount design. Simulation results show that our hardware optimization reduces the storage requirement (-50%) for each XNOR-bitcount operation. The proposed algorithmic optimization improves execution time and energy consumption by about 30% (78%) and 26% (85%), respectively, for single (5 sequential) 9-bit XNOR-bitcount operations. As a case study, our solution is demonstrated for shape analysis using bit-quads.
CITATION STYLE
Musello, A., Garzon, E., Lanuzza, M., Procel, L. M., & Taco, R. (2023). XNOR-Bitcount Operation Exploiting Computing-In-Memory With STT-MRAMs. IEEE Transactions on Circuits and Systems II: Express Briefs, 70(3), 1259–1263. https://doi.org/10.1109/TCSII.2023.3241163
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