泛化或死亡:操作系统支持基于忆阻器的加速器

P. Bruel, S. R. Chalamalasetti, Chris I. Dalton, I. E. Hajj, A. Goldman, Catherine E. Graves, Wen-mei W. Hwu, Phil Laplante, D. Milojicic, Geoffrey Ndu, J. Strachan
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引用次数: 11

摘要

晶体管特征尺寸缩放的减速促使越来越多的人采用专用加速器来实现gpu、fpga、asic,以及最近的新型计算,如神经形态、生物启发、超低能量、可逆、随机、光学、量子、组合和其他不可预见的计算。专门化和泛化之间存在紧张关系,当前的状态趋向于主从模型,其中加速器(从)由运行操作系统(OS)的通用系统(主)指示。传统上,操作系统是硬件和应用程序之间的一层,其主要功能是管理硬件资源并为应用程序提供公共抽象。然而,这个函数是否适用于新的计算范式类型?本文回顾了基于忆阻器的加速器的操作系统功能。我们探索了一种加速器实现,即点积引擎(DPE),用于机器学习、成像和科学计算领域的特定应用模式和一小部分用例。我们将探讨典型的操作系统功能,例如重新配置、分区、安全性、虚拟化和编程。我们还探索了新的功能类型,如重新配置的准确性和可信度。我们声称,使加速器,如DPE,更加通用将导致更广泛的采用和更好的利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalize or Die: Operating Systems Support for Memristor-Based Accelerators
The deceleration of transistor feature size scaling has motivated growing adoption of specialized accelerators implemented as GPUs, FPGAs, ASICs, and more recently new types of computing such as neuromorphic, bio-inspired, ultra low energy, reversible, stochastic, optical, quantum, combinations, and others unforeseen. There is a tension between specialization and generalization, with the current state trending to master slave models where accelerators (slaves) are instructed by a general purpose system (master) running an Operating System (OS). Traditionally, an OS is a layer between hardware and applications and its primary function is to manage hardware resources and provide a common abstraction to applications. Does this function, however, apply to new types of computing paradigms? This paper revisits OS functionality for memristor-based accelerators. We explore one accelerator implementation, the Dot Product Engine (DPE), for a select pattern of applications in machine learning, imaging, and scientific computing and a small set of use cases. We explore typical OS functionality, such as reconfiguration, partitioning, security, virtualization, and programming. We also explore new types of functionality, such as precision and trustworthiness of reconfiguration. We claim that making an accelerator, such as the DPE, more general will result in broader adoption and better utilization.
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