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Adaptive and Energy-Efficient Architectures for Machine Learning: Challenges, Opportunities, and Research Roadmap

机译:机器学习的自适应和节能架构:挑战,机遇和研究路线图

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Gigantic rates of data production in the era of Big Data, Internet of Thing (IoT)/Internet of Everything (IoE), and Cyber Physical Systems (CSP) pose incessantly escalating demands for massive data processing, storage, and transmission while continuously interacting with the physical world under unpredictable, harsh, and energy-/power-constrained scenarios. Therefore, such systems need to support not only the high performance capabilities at tight power/energy envelop, but also need to be intelligent/cognitive, self-learning, and robust. As a result, a hype in the artificial intelligence research (e.g., deep learning and other machine learning techniques) has surfaced in numerous communities. This paper discusses the challenges and opportunities for building energy-efficient and adaptive architectures for machine learning. In particular, we focus on brain-inspired emerging computing paradigms, such as approximate computing; that can further reduce the energy requirements of the system. First, we guide through an approximate computing based methodology for development of energy-efficient accelerators, specifically for convolutional Deep Neural Networks (DNNs). We show that in-depth analysis of datapaths of a DNN allows better selection of Approximate Computing modules for energy-efficient accelerators. Further, we show that a multi-objective evolutionary algorithm can be used to develop an adaptive machine learning system in hardware. At the end, we summarize the challenges and the associated research roadmap that can aid in developing energy-efficient and adaptable hardware accelerators for machine learning.
机译:在大数据,物联网(IoT)/万物互联(IoE)和网络物理系统(CSP)时代,巨大的数据生产速度不断提高了对海量数据处理,存储和传输的需求,同时不断与之交互物理世界处于不可预测,苛刻和能源/功率受限的情况下。因此,这样的系统不仅需要在紧密的功率/能量包络下支持高性能功能,而且还需要具有智能/认知能力,自学习能力和鲁棒性。结果,人工智能研究(例如深度学习和其他机器学习技术)中的炒作已经在众多社区中浮出水面。本文讨论了为机器学习构建节能和自适应架构的挑战和机遇。特别是,我们专注于以大脑为灵感的新兴计算范例,例如近似计算。可以进一步降低系统的能源需求。首先,我们将指导您使用基于近似计算的方法开发节能型加速器,特别是用于卷积深度神经网络(DNN)。我们表明,对DNN的数据路径进行深入分析可以为节能型加速器更好地选择“近似计算”模块。此外,我们证明了多目标进化算法可用于开发硬件中的自适应机器学习系统。最后,我们总结了挑战和相关的研究路线图,这些路线图可以帮助开发节能高效且适应性强的机器学习硬件加速器。

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