cs.AI updates on arXiv.org 08月22日
Quantized Neural Networks for Microcontrollers: A Comprehensive Review of Methods, Platforms, and Applications
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本文系统介绍了量化神经网络(QNNs)在资源受限设备上的部署挑战,通过整合机器学习算法、硬件加速和软件优化,高效运行深度神经网络。重点探讨了模型性能与硬件能力之间的关键权衡,并评估了现有软件框架和硬件平台。

arXiv:2508.15008v1 Announce Type: cross Abstract: The deployment of Quantized Neural Networks (QNNs) on resource-constrained devices, such as microcontrollers, has introduced significant challenges in balancing model performance, computational complexity and memory constraints. Tiny Machine Learning (TinyML) addresses these issues by integrating advancements across machine learning algorithms, hardware acceleration, and software optimization to efficiently run deep neural networks on embedded systems. This survey presents a hardware-centric introduction to quantization, systematically reviewing essential quantization techniques employed to accelerate deep learning models for embedded applications. In particular, further emphasis is put on critical trade-offs among model performance and hardware capabilities. The survey further evaluates existing software frameworks and hardware platforms designed specifically for supporting QNN execution on microcontrollers. Moreover, we provide an analysis of the current challenges and an outline of promising future directions in the rapidly evolving domain of QNN deployment.

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量化神经网络 资源受限设备 TinyML 硬件加速 软件优化
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