Look-Up Table based Neural Network Hardware
Abstract
Traditional digital implementations of neural accelerators are limited by high power and area overheads, while analog and non-CMOS implementations suffer from noise, device mismatch, and reliability issues. This paper introduces a CMOS Look-Up Table (LUT)-based Neural Accelerator (LUT-NA) framework that reduces the power, latency, and area consumption of traditional digital accelerators through pre-computed, faster look-ups while avoiding noise and mismatch of analog circuits. To solve the scalability issues of conventional LUT-based computation, we split the high-precision multiply and accumulate (MAC) operations into lower-precision MACs using a divide-and-conquer-based approach. We show that LUT-NA achieves up to 29.54× lower area with 3.34× lower energy per inference task than traditional LUT-based techniques and up to 1.23× lower area with 1.80× lower energy per inference task than conventional digital MAC-based techniques (Wallace Tree/Array Multipliers) without retraining and without affecting accuracy, even on lottery ticket pruned (LTP) models that already reduce the number of required MAC operations by up to 98%. Finally, we introduce mixed precision analysis in LUT-NA framework for various LTP models (VGG11, VGG19, Resnet18, Resnet34, GoogleNet) that achieved up to 32.22×-50.95× lower area across models with 3.68×-6.25× lower energy per inference than traditional LUT-based techniques, and up to 1.35×-2.14× lower area requirement with 1.99×-3.38× lower energy per inference across models as compared to conventional digital MAC-based techniques with 1% accuracy loss.
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