Reconfigurable Edge via Analytics Architecture

Shih-Yu Chen, G. Lee, Tai-Ping Wang, Chin-Wei Huang, Jia-Hong Chen, Chang-Ling Tsai
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引用次数: 2

Abstract

As artificial intelligence (AI) algorithms requiring high accuracy become exceedingly more complex and Edge/IoT generated data becomes increasingly bigger, flexible reconfigurable processing is crucial in the design of efficient smart edge systems requiring low power and is introduced in this paper. In AI, analytics algorithms are typically used to analyze speech, audio, image video data, etc. In current cross-level system design methodology different algorithmic realizations are analyzed in the form of dataflow graphs (DFG) to further increase efficiency and flexibility in constituting “analytics architecture”. Having information on both algorithmic behavior and architectural information including software and hardware, the DFG so introduced provides a mathematical representation which, as opposed to traditional linear difference equations, better models the underlying computational platform for systematic analysis thus providing flexible and efficient management of the computational and storage resources. In our analytics architecture work, parallel and reconfigurable computing are formulated via DFG which are analogous to the analysis and synthesis equations of the well-known Fourier transform pair. In parallel computing, a connected component is eigen-decomposed to unconnected components for concurrent processing. For computation resource saving, commonalities in DFGs are analyzed for reuse when synthesizing or reconfiguring the edge platform. In this paper, we specifically introduce lightweight edge upon which algorithmic convolution for Convolution Neural Network are eigen-transformed to matrix operations with higher symmetry which facilitates fewer operations, lower data transfer rate and storage anticipating lower power when synthesizing or reconfiguring the eigenvectors.
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通过分析架构可重新配置边缘
随着要求高精度的人工智能(AI)算法变得越来越复杂,边缘/物联网生成的数据越来越大,灵活的可重构处理对于设计高效、低功耗的智能边缘系统至关重要,本文介绍了这一点。在人工智能中,分析算法通常用于分析语音、音频、图像视频数据等。在当前的跨层系统设计方法中,不同的算法实现以数据流图(DFG)的形式进行分析,以进一步提高构建“分析架构”的效率和灵活性。由于包含了算法行为和架构信息(包括软件和硬件),因此引入的DFG提供了一种数学表示,与传统的线性差分方程相反,它可以更好地为系统分析建立底层计算平台的模型,从而提供灵活有效的计算和存储资源管理。在我们的分析架构工作中,并行和可重构计算是通过DFG制定的,类似于著名的傅立叶变换对的分析和合成方程。在并行计算中,连接的组件被特征分解为未连接的组件,以供并发处理。为了节省计算资源,分析了DFGs的共性,以便在综合或重新配置边缘平台时重用。在本文中,我们特别引入了轻量级边缘,在此边缘上卷积神经网络的算法卷积被特征变换为具有更高对称性的矩阵运算,这使得在合成或重新配置特征向量时更少的运算,更低的数据传输速率和更低的存储预期功耗。
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