Reconfigurable heterogeneous integration using stackable chips with embedded artificial intelligence

Authors
Chanyeol ChoiHyunseok KimJi-Hoon KangMin-Kyu SongHanwool YeonClelsta S. ChangJun Min SuhKuangye LuBo-In ParkYeongin KimHan Eol LeeDoyoon LeeJaeyong LeeIkbeom JangSubeen PangKanghyun RyuSang-Hoon BaeYifan NieHyun S. KumPark, Min Chul이수연Kim, Hyung junHuaqiang WuPen LinJeehwan Kim
Issue Date
2022-06
Publisher
NATURE PUBLISHING GROUP
Citation
Nature Electronics, v.5, no.6, pp.386 - 393
Abstract
Artificial intelligence applications have changed the landscape of computer design, driving a search for hardware architecture that can efficiently process large amounts of data. Three-dimensional heterogeneous integration with advanced packaging technologies could be used to improve data bandwidth among sensors, memory and processors. However, such systems are limited by a lack of hardware reconfigurability and the use of conventional von Neumann architectures. Here we report stackable hetero-integrated chips that use optoelectronic device arrays for chip-to-chip communication and neuromorphic cores based on memristor crossbar arrays for highly parallel data processing. With this approach, we create a system with stackable and replaceable chips that can directly classify information from a light-based image source. We also modify this system by inserting a preprogrammed neuromorphic denoising layer that improves the classification performance in a noisy environment. Our reconfigurable three-dimensional hetero-integrated technology can be used to vertically stack a diverse range of functional layers and could provide energy-efficient sensor computing systems for edge computing applications. By using optoelectronic device arrays for chip-to-chip communication and neuromorphic cores based on memristor crossbar arrays for highly parallel data processing, reconfigurable and stackable hetero-integrated chips can be created for use in edge computing applications.
ISSN
2520-1131
URI
https://pubs.kist.re.kr/handle/201004/76703
DOI
10.1038/s41928-022-00778-y
Appears in Collections:
KIST Article > 2022
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