Efficient Associative Search in Brain-Inspired Hyperdimensional Computing

Editor’s note: This article describes a method for efficient hypervector operations using a grouping strategy for reduced computations. Quantization is used for reducing the number of multiplications, whereas caching of magnitude is used for eliminating redundant computations. —Shao-Wen Yang, Intel Corporation

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