IEICE Transactions on Electronics
Online ISSN : 1745-1353
Print ISSN : 0916-8524
Signed Approximate Adder Tree and Quantization- and Bit-Pruning-Aware Training for Digital Computation-in-Memory
Daqi LinTao WangAdil PadiyalNaoko MisawaChihiro MatsuiKen Takeuchi
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論文ID: 2024FUP0001

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In this work, an 8-bit signed approximate adder (SAA) and a quantization- and bit-pruning-aware training method (QBAT) are proposed to reduce the substantial area and power consumption caused by adder trees for digital Computation-in-Memory (DCiM). QBAT achieves efficient bit pruning and minimizes the accuracy loss caused by the approximation. The SAA reduce area and power consumption by 20% and power-delay product (PDP) by 36.7%. With QBAT, the proposed design achieves 95.5% and 96.4% inference accuracy for Resnet-18 and Resnet-50 models on the CIFAR-10 dataset.

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