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arxiv: 2208.02651 · v2 · pith:WNM6XSWDnew · submitted 2022-08-04 · 💻 cs.ET · physics.app-ph

Fully-Binarized, Parallel, RRAM-based Computing Primitive for In-Memory Similarity Search

classification 💻 cs.ET physics.app-ph
keywords operationarraysdemonstratingenergyfull-systemfully-binarizedin-memoryperformed
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In this work, we propose a fully-binarized XOR-based IMSS (In-Memory Similarity Search) using RRAM (Resistive Random Access Memory) arrays. XOR (Exclusive OR) operation is realized using 2T-2R bitcells arranged along the column in an array. This enables simultaneous match operation across multiple stored data vectors by performing analog column-wise XOR operation and summation to compute HD (Hamming Distance). The proposed scheme is experimentally validated on fabricated RRAM arrays. Full-system validation is performed through SPICE simulations using open source Skywater 130 nm CMOS PDK demonstrating energy of 17 fJ per XOR operation using the proposed bitcell with a full-system power dissipation of 145 $\mu$W. Using projected estimations at advanced nodes (28 nm) energy savings of $\approx$1.5$\times$ compared to the state-of-the-art can be observed for a fixed workload. Application-level validation is performed on HSI (Hyper-Spectral Image) pixel classification task using the Salinas dataset demonstrating an accuracy of 90%.

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