CVLGAug 11, 2020

Hardware-Centric AutoML for Mixed-Precision Quantization

arXiv:2008.04878v118 citations
Originality Highly original
AI Analysis

This work addresses the problem of inefficient manual quantization for hardware accelerators, offering an automated solution that is incremental but improves upon conventional methods by incorporating hardware-specific feedback.

The paper tackles the challenge of finding optimal bitwidths for mixed-precision quantization in deep neural networks by introducing the HAQ framework, which uses reinforcement learning with hardware feedback to automate the process, resulting in latency reductions of 1.4-1.95x and energy savings of 1.9x with minimal accuracy loss.

Model quantization is a widely used technique to compress and accelerate deep neural network (DNN) inference. Emergent DNN hardware accelerators begin to support mixed precision (1-8 bits) to further improve the computation efficiency, which raises a great challenge to find the optimal bitwidth for each layer: it requires domain experts to explore the vast design space trading off among accuracy, latency, energy, and model size, which is both time-consuming and sub-optimal. Conventional quantization algorithm ignores the different hardware architectures and quantizes all the layers in a uniform way. In this paper, we introduce the Hardware-Aware Automated Quantization (HAQ) framework which leverages the reinforcement learning to automatically determine the quantization policy, and we take the hardware accelerator's feedback in the design loop. Rather than relying on proxy signals such as FLOPs and model size, we employ a hardware simulator to generate direct feedback signals (latency and energy) to the RL agent. Compared with conventional methods, our framework is fully automated and can specialize the quantization policy for different neural network architectures and hardware architectures. Our framework effectively reduced the latency by 1.4-1.95x and the energy consumption by 1.9x with negligible loss of accuracy compared with the fixed bitwidth (8 bits) quantization. Our framework reveals that the optimal policies on different hardware architectures (i.e., edge and cloud architectures) under different resource constraints (i.e., latency, energy, and model size) are drastically different. We interpreted the implication of different quantization policies, which offer insights for both neural network architecture design and hardware architecture design.

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