Ferroelectric FET based Context-Switching FPGA Enabling Dynamic Reconfiguration for Adaptive Deep Learning Machines
Yixin Xu, Zijian Zhao, Yi Xiao, Tongguang Yu, Halid Mulaosmanovic,, Dominik Kleimaier, Stefan Duenkel, Sven Beyer, Xiao Gong, Rajiv Joshi, X., Sharon Hu, Shixian Wen, Amanda Sofie Rios, Kiran Lekkala, Laurent Itti, Eric, Homan, Sumitha George, Vijaykrishnan Narayanan, Kai Ni

TL;DR
This paper introduces a ferroelectric FET-based FPGA design that enables fast, area-efficient, and low-power dynamic reconfiguration for deep learning accelerators, significantly reducing reconfiguration time and power consumption.
Contribution
It presents a novel FeFET-based FPGA architecture supporting dynamic reconfiguration without area overhead, enabling efficient context switching for adaptive deep learning applications.
Findings
63-71% reduction in LUT and CB area
82-54% reduction in power consumption
78.7% average time saving in context switching
Abstract
Field Programmable Gate Array (FPGA) is widely used in acceleration of deep learning applications because of its reconfigurability, flexibility, and fast time-to-market. However, conventional FPGA suffers from the tradeoff between chip area and reconfiguration latency, making efficient FPGA accelerations that require switching between multiple configurations still elusive. In this paper, we perform technology-circuit-architecture co-design to break this tradeoff with no additional area cost and lower power consumption compared with conventional designs while providing dynamic reconfiguration, which can hide the reconfiguration time behind the execution time. Leveraging the intrinsic transistor structure and non-volatility of ferroelectric FET (FeFET), compact FPGA primitives are proposed and experimentally verified, including 1FeFET look-up table (LUT) cell, 1FeFET routing cell for…
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Taxonomy
TopicsFerroelectric and Negative Capacitance Devices · Advanced Memory and Neural Computing · Semiconductor materials and devices
