Advances in Machine‐Learning Enhanced Nanosensors: From Cloud Artificial Intelligence Toward Future Edge Computing at Chip Level

Author:

Zhang Zixuan12,Liu Xinmiao12,Zhou Hong12,Xu Siyu12,Lee Chengkuo123ORCID

Affiliation:

1. Department of Electrical and Computer Engineering National University of Singapore Singapore 117576 Singapore

2. Center for Intelligent Sensors and MEMS National University of Singapore Singapore 117608 Singapore

3. NUS Graduate School - Integrative Sciences and Engineering Programme (ISEP) National University of Singapore Singapore 119077 Singapore

Abstract

Machine‐learning‐enhanced nanosensors are rapidly emerging as a promising solution in the field of sensor technology, as traditional sensors encounter limitations of data analysis in their development. Since the inception of machine‐learning algorithms being applied to enhance nanosensors, they have gained significant attention due to their adaptive and predictive capabilities, which promise to dramatically improve efficiency in data collection and processing applications. Herein, a comprehensive overview of technological innovation is provided by reviewing the latest developments in cloud computing, edge computing, and the burgeoning realm of neuromorphic computing. Cloud computing has emerged as a powerhouse, harnessing formidable computational capabilities to process vast volumes of high‐dimensional data. Then, the research directions for various applications of these cloud artificial intelligence (AI)‐enhanced nanosensors are outlined. Moreover, the integration of AI and nanosensor technology into chip‐level edge computing, although promising, still faces challenges such as energy‐efficient hardware development, algorithm optimization, and scalability for mass production. Finally, a forward‐looking perspective on the future of machine‐learning‐enhanced nanosensors is provided, delineating the challenges and opportunities for further research and innovation in this exciting field.

Publisher

Wiley

Subject

General Earth and Planetary Sciences,General Environmental Science

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