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Large-Scale Integrated Vector-Matrix Multiplication Processor Based on Monolayer MoS2

Mesoscale and Nanoscale Physics 2024-01-24 v1 Materials Science

Abstract

Led by the rise of the internet of things, the world is experiencing exponential growth of generated data. Data-driven algorithms such as signal processing and artificial neural networks are required to process and extract meaningful information from it. They are, however, seriously limited by the traditional von-Neuman architecture with physical separation between processing and memory, motivating the development of in-memory computing. This emerging architecture is gaining attention by promising more energy-efficient computing on edge devices. In the past few years, two-dimensional materials have entered the field as a material platform suitable for realizing efficient memory elements for in-memory architectures. Here, we report a large-scale integrated 32x32 vector-matrix multiplier with 1024 floating-gate field-effect transistors (FGFET) that use monolayer MoS2 as the channel material. In our wafer-scale fabrication process, we achieve a high yield and low device-to-device variability, which are prerequisites for practical applications. A statistical analysis shows the potential for multilevel and analog storage with a single programming pulse, allowing our accelerator to be programmed using an efficient open-loop programming scheme. Next, we demonstrate reliable, discrete signal processing in a highly parallel manner. Our findings set the grounds for creating the next generation of in-memory processors and neural network accelerators that can take advantage of the full benefits of semiconducting van der Waals materials for non-von Neuman computing.

Keywords

Cite

@article{arxiv.2303.07183,
  title  = {Large-Scale Integrated Vector-Matrix Multiplication Processor Based on Monolayer MoS2},
  author = {Guilherme Migliato Marega and Hyun Goo Ji and Zhenyu Wang and Mukesh Tripathi and Aleksandra Radenovic and Andras Kis},
  journal= {arXiv preprint arXiv:2303.07183},
  year   = {2024}
}
R2 v1 2026-06-28T09:14:19.486Z