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Energy-efficient and reliable in-memory classifier for machine-learning applications

机译:用于机器学习应用的高效节能的内存中分类器

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Large-scale machine-learning (ML) algorithms require extensive memory interactions. Managing or reducing data movement can significantly increase the speed and efficiency of many ML tasks. Towards this end, the authors devise an energy efficient in-memory computing (IMC) kernel for linear classification and design an initial prototype. The authors achieve a power savings of over 6.4 times than a conventional discrete system while improving reliability by 54.67%. The authors employ a split-data-aware technique to manage process, voltage, and temperature variations and to achieve fair trade-offs between energy efficiency, area requirements, and accuracy. The authors utilise a trimodal architecture with a hierarchical tree structure to further decrease power consumption. The authors also explore alternatives to the hierarchical tree structure with a significantly reduced number of linear regression blocks, while maintaining a competitive classification accuracy. Overall, the scheme provides a fast, energy efficient, and competitively accurate binary classification kernel.
机译:大规模机器学习(ML)算法需要大量的内存交互。管理或减少数据移动可以显着提高许多ML任务的速度和效率。为此,作者设计了一种用于线性分类的高效节能内存计算(IMC)内核,并设计了初始原型。作者实现了比传统分立系统低6.4倍的功耗,同时将可靠性提高了54.67%。作者采用分裂数据感知技术来管理过程,电压和温度变化,并在能效,面积要求和精度之间取得合理的权衡。作者利用具有分层树结构的三峰架构进一步降低了功耗。作者还探索了线性树形图块数量显着减少,同时保持竞争性分类准确性的分层树结构的替代方法。总体而言,该方案提供了一种快速,节能且具有竞争优势的二进制分类内核。

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