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Neural Architecture Search with In‐Memory Multiply–Accumulate and In‐Memory Rank Based on Coating Layer Optimized C‐Doped Ge<sub>2</sub>Sb<sub>2</sub>Te<sub>5</sub> Phase Change Memory

Longhao Yan, Qingyu Wu, Xi Li, Chenchen Xie, Xilin Zhou, Yuqi Li, Daijing Shi, Lianfeng Yu, Teng Zhang, Yaoyu Tao, Bonan Yan, Min Zhong, Zhitang Song, Yuchao Yang, Ru Huang

2023Advanced Functional Materials11 citationsDOI

Abstract

Abstract Neural architecture search (NAS), as a subfield of automated machine learning, can design neural network models with better performance than manual design. However, the energy and time consumptions of conventional software‐based NAS are huge, hindering its development and applications. Herein, 4 Mb phase change memory (PCM) chips are first fabricated that enable two key in‐memory computing operations—in‐memory multiply‐accumulate (MAC) and in‐memory rank for efficient NAS. The impacts of the coating layer material are systematically analyzed for the blade‐type heating electrode on the device uniformity and in turn NAS performance. The random weights in the searched network architecture can be fine‐tuned in the last stage. With 512 × 512 arrays based on 40 nm CMOS process, the PCM‐based NAS has achieved 25–53× smaller model size and better performance than manually designed networks and improved the energy and time efficiency by 4779× and 123×, respectively, compared with NAS running on graphic processing unit (GPU). This work can expand the hardware accelerated in‐memory operators, and significantly extend the applications of in‐memory computing enabled by nonvolatile memory in advanced machine learning tasks.

Topics & Concepts

Phase-change memoryComputer scienceResistive random-access memoryNon-volatile memoryArtificial neural networkLayer (electronics)Materials scienceCoatingProcess (computing)Embedded systemComputer architectureComputer hardwareElectrodeNanotechnologyOperating systemArtificial intelligenceChemistryPhysical chemistryAdvanced Memory and Neural ComputingPhase-change materials and chalcogenidesTransition Metal Oxide Nanomaterials