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arxiv: 2208.13571 · v1 · pith:5EHU2UWH · submitted 2022-08-13 · cs.LG · cs.AI

PECAN: A Product-Quantized Content Addressable Memory Network

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classification cs.LG cs.AI
keywords addressablecontentmemorynetworkdistance-basedpecanproduct-quantizedadditive
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A novel deep neural network (DNN) architecture is proposed wherein the filtering and linear transform are realized solely with product quantization (PQ). This results in a natural implementation via content addressable memory (CAM), which transcends regular DNN layer operations and requires only simple table lookup. Two schemes are developed for the end-to-end PQ prototype training, namely, through angle- and distance-based similarities, which differ in their multiplicative and additive natures with different complexity-accuracy tradeoffs. Even more, the distance-based scheme constitutes a truly multiplier-free DNN solution. Experiments confirm the feasibility of such Product-Quantized Content Addressable Memory Network (PECAN), which has strong implication on hardware-efficient deployments especially for in-memory computing.

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