Programming memristor arrays with arbitrarily high precision for analog computing

In-memory computing represents an effective method for modeling complex physical systems that are typically challenging for conventional computing architectures but has been hindered by issues such as reading noise and writing variability that restrict scalability, accuracy, and precision in high-pe...

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Veröffentlicht in:Science (American Association for the Advancement of Science) 2024-02, Vol.383 (6685), p.903-910
Hauptverfasser: Song, Wenhao, Rao, Mingyi, Li, Yunning, Li, Can, Zhuo, Ye, Cai, Fuxi, Wu, Mingche, Yin, Wenbo, Li, Zongze, Wei, Qiang, Lee, Sangsoo, Zhu, Hengfang, Gong, Lei, Barnell, Mark, Wu, Qing, Beerel, Peter A, Chen, Mike Shuo-Wei, Ge, Ning, Hu, Miao, Xia, Qiangfei, Yang, J Joshua
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Sprache:eng
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Zusammenfassung:In-memory computing represents an effective method for modeling complex physical systems that are typically challenging for conventional computing architectures but has been hindered by issues such as reading noise and writing variability that restrict scalability, accuracy, and precision in high-performance computations. We propose and demonstrate a circuit architecture and programming protocol that converts the analog computing result to digital at the last step and enables low-precision analog devices to perform high-precision computing. We use a weighted sum of multiple devices to represent one number, in which subsequently programmed devices are used to compensate for preceding programming errors. With a memristor system-on-chip, we experimentally demonstrate high-precision solutions for multiple scientific computing tasks while maintaining a substantial power efficiency advantage over conventional digital approaches.
ISSN:0036-8075
1095-9203
DOI:10.1126/science.adi9405