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欧盟-韩国合作项目为边缘计算提供节能的神经形态二维设备.pdf

上传人: 拾亿 编号:751708 2025-07-29 15页 3.65MB

1、ENERGIZEEnergy-efficient Neuromorphic 2d Devices And Circuits For Edge AI Computing Funded by the European UnionENERGIZE EU-ROK collaborative project to enable energy efficient neuromorphic two-dimensional devices for edge computingDmitry Chigrin,AMO GmbH,Aachen,GermanyENERGIZEEnergy-efficient Neuro

2、morphic 2d Devices And Circuits For Edge AI Computing Funded by the European UnionWhat2ENERGIZEs vision is to leverage the potential of wafer-scale,2D materials-based neural networks to develop energy-efficient neuromorphic devices and circuits for edge AI computing.ENERGIZEEnergy-efficient Neuromor

3、phic 2d Devices And Circuits For Edge AI Computing Funded by the European UnionWhy3Source:SRC Decadal Plan,2020 Machine Learning and Artificial Intelligence need new hardware Neuromorphic ComputingVon-Neumann bottleneckProcessorMemorySebastian et al.,Nat.Nanotechnol.,116,2020ENERGIZEEnergy-efficient

4、 Neuromorphic 2d Devices And Circuits For Edge AI Computing Funded by the European UnionWhoAMO GmbH(AMO)Universita di Pisa(UNIPI)Universidad de Granada(UGR)Ecole Polytechnique Federale de Lausanne(EPFL)Sungkyunkwan University(SKKU)Korea University(KU)Gwangju Institute of Science and Technology(GIST)

5、Sogang University(SGU)4ENERGIZEEnergy-efficient Neuromorphic 2d Devices And Circuits For Edge AI Computing Funded by the European UnionSimulation and Modelling5Objective:To provide a multiscale simulation approach for the study of devices for neuromorphic electronics,spanning from atomistic to large

6、 scale circuit emulations.Partners:UNIPI:Atomistic simulations of 2DMs,multiscale transport simulation of devices up to circuit level.UGR:Simulation of 2DMs,devices and circuits,compact modelling of devices and validation.ENERGIZEEnergy-efficient Neuromorphic 2d Devices And Circuits For Edge AI Comp

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本文主要介绍了欧盟资助的ENERGIZE项目,旨在开发基于二维材料的能量高效神经形态器件和电路,用于边缘AI计算。关键点如下: 1. 项目愿景:利用二维材料开发能量高效的神经形态器件和电路。 2. 背景:机器学习和AI需要新型硬件,即神经形态计算,以突破冯诺伊曼瓶颈。 3. 参与机构:包括AMO GmbH、意大利比萨大学、西班牙格拉纳达大学等。 4. 研究方向:包括仿真与建模、二维材料开发、二维器件制造和大规模突触阵列等。 5. 核心数据:实现了晶圆级生长的多层二维材料,如TMDCs、hBN和α-In2Se3;开发了基于二维材料的二维两终端和三终端器件;实现了具有可靠性能的二维器件阵列。 6. 研究成果:包括点缺陷和晶界的原子级仿真、电阻切换机制研究以及晶圆级MOCVD MoS2忆阻器等。 总之,ENERGIZE项目在二维材料神经形态器件和电路领域取得了一系列研究成果,为边缘AI计算提供了能量高效的解决方案。
"二维材料神经形态计算?" - "ENERGIZE项目如何革新边缘AI计算?" "神经形态设备有多高效?" - "为何二维器件是未来边缘计算的关键?" "边缘AI的模拟与建模" - "ENERGIZE如何通过多尺度模拟推动技术发展?"
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