Comprehending In-memory Computing Trends via Proper Benchmarking

Naresh R Shanbhag, Saion K. Roy
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引用次数: 7

Abstract

Since its inception in 2014 [1], the modern version of in-memory computing (IMC) has become an active area of research in integrated circuit design globally for realizing artificial intelligence and machine learning workloads. Since 2018, > 40 IMC-related papers have been published in top circuit design conferences demonstrating significant reductions (>20X) in energy over their digital counterparts especially at the bank-level. Today, bank-level IMC designs have matured but it is not clear what the limiting factors are. This lack of clarity is due to multiple reasons including: 1) the conceptual complexity of IMCs due to its full-stack (devices-to-systems) nature, 2) the presence of a fundamental energy-efficiency vs. compute SNR trade-off due to its analog computations, and 3) the statistical nature of machine learning workloads. The absence of a rigorous benchmarking methodology for IMCs - a problem facing machine learning ICs in general [2] - further obfuscates the underlying trade-offs. As a result, it has become difficult to evaluate the novelty of IMC-related ideas being proposed and therefore gauge the true progress in this exciting field.
通过适当的基准测试来理解内存计算趋势
自2014年问世以来,现代版内存计算(IMC)已成为全球集成电路设计研究的一个活跃领域,用于实现人工智能和机器学习工作负载。自2018年以来,在顶级电路设计会议上发表了40多篇与imc相关的论文,这些论文显示,与数字论文相比,尤其是在银行层面,imc的能耗显著降低(20倍)。如今,银行层面的IMC设计已经成熟,但尚不清楚限制因素是什么。这种缺乏明确性是由于多种原因造成的,包括:1)imc由于其全堆栈(设备到系统)性质而具有概念复杂性,2)由于其模拟计算而存在基本的能源效率与计算信噪比权衡,以及3)机器学习工作负载的统计性质。imc缺乏严格的基准测试方法——这是机器学习ic普遍面临的一个问题——进一步混淆了潜在的权衡。因此,很难评价所提出的与整合营销管理有关的想法的新颖性,从而衡量这一令人兴奋的领域的真正进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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