Ms. Jieru Song | Neuromorphic Computing | Best Researcher Award
Jieru Song at Fudan University, China📖
Jieru Song is a Ph.D. candidate at Fudan University’s School of Microelectronics, specializing in neuromorphic computing and optoelectronic devices. With a Bachelor’s degree in Microelectronics Science and Engineering from Nanjing University, he has contributed to advancing self-powered heterojunction devices and optoelectronic memristors for reservoir computing. His work focuses on the integration of sensing, storage, and computing, with a particular emphasis on energy-efficient solutions for neuromorphic applications. Jieru’s research has resulted in significant innovations in signal processing, energy-efficient computing, and artificial neural networks.]
Profile
Education Background🎓
- Bachelor’s Degree in Microelectronics Science and Engineering, Nanjing University
- Ph.D. (Ongoing), School of Microelectronics, Fudan University (Research in optoelectronic memristors and neuromorphic computing)
Professional Experience🌱
Jieru Song is currently pursuing his Ph.D. at Fudan University, focusing on the development of self-powered heterojunction devices and optoelectronic memristors for neuromorphic applications. His work integrates signal processing with energy-efficient computing solutions for reservoir computing. He has designed and fabricated devices for tasks such as speech and EMG signal classification, enhancing device performance through optimized fabrication techniques. His professional journey is characterized by contributions to innovative algorithms for signal conversion and classification, which have led to advancements in both hardware and software for computing systems.
Her research interests include:
- Neuromorphic Computing
- Optoelectronic Memristors
- Self-Powered Devices
- Reservoir Computing
- Energy-Efficient Computing Solutions
- Signal Processing Algorithms
Author Metrics
Jieru Song has contributed significantly to the field of neuromorphic computing and optoelectronic devices, with his research published in several esteemed journals. Notably, his work on self-powered optoelectronic synaptic devices for both static and dynamic reservoir computing was published in Nano Energy in 2025, where it received widespread attention. Additionally, he has authored papers on photoelectric synaptic devices for neuromorphic computing, featured in IEEE Electron Device Letters (2024) and Journal of Semiconductors (2024). His publications reflect a strong focus on innovative devices for energy-efficient, integrated sensing, and computing systems, contributing valuable insights to the advancement of neuromorphic applications.
Jieru Song has been recognized for his groundbreaking contributions to neuromorphic computing and optoelectronic devices, including publication in leading journals and conferences. His research has garnered attention in the scientific community for advancing energy-efficient, integrated sensing, and computing systems, laying the foundation for future scalable technological solutions.
1. Self-powered optoelectronic synaptic device for both static and dynamic reservoir computing
- Authors: Jieru Song, J. Meng, C. Lu, D.W. Zhang, L. Chen
- Journal: Nano Energy
- Year: 2025
- Volume: 134
- Article Number: 110574
- DOI: [Link Disabled]
- Abstract: This paper presents the development of a self-powered optoelectronic synaptic device that can efficiently operate for both static and dynamic reservoir computing tasks. The device has applications in neuromorphic systems and energy-efficient computation.
2. Reconfigurable Selector-Free All-Optical Controlled Neuromorphic Memristor for In-Memory Sensing and Reservoir Computing
- Authors: C. Lu, J. Meng, Jieru Song, D.W. Zhang, L. Chen
- Journal: ACS Nano
- Year: 2024
- Volume: 18
- Issue: 43
- Pages: 29715–29723
- Citations: 1
- DOI: [Link Disabled]
- Abstract: This study introduces a reconfigurable, selector-free all-optical controlled neuromorphic memristor designed for in-memory sensing and reservoir computing. This novel device has significant implications for neuromorphic computing systems.
3. InGaZnO-based photoelectric synaptic devices for neuromorphic computing
- Authors: Jieru Song, J. Meng, T. Wang, D.W. Zhang, L. Chen
- Journal: Journal of Semiconductors
- Year: 2024
- Volume: 45
- Issue: 9
- Article Number: 092402
- Citations: 1
- DOI: [Link Disabled]
- Abstract: This article explores InGaZnO-based photoelectric synaptic devices, focusing on their application in neuromorphic computing. The devices are designed to enhance performance for computational tasks like image recognition and signal classification.
4. Fluorite-structured antiferroelectric hafnium-zirconium oxide for emerging nonvolatile memory and neuromorphic-computing applications
- Authors: K. Xu, T. Wang, J. Yu, D.W. Zhang, L. Chen
- Journal: Applied Physics Reviews
- Year: 2024
- Volume: 11
- Issue: 2
- Article Number: 021303
- Citations: 3
- Abstract: The paper investigates the use of fluorite-structured antiferroelectric hafnium-zirconium oxide in nonvolatile memory and neuromorphic computing applications. The material’s properties are optimized for energy efficiency in memory storage and computing systems.
5. Ionic Diffusive Nanomemristors with Dendritic Competition and Cooperation Functions for Ultralow Voltage Neuromorphic Computing
- Authors: J. Meng, Jieru Song, Y. Fang, D.W. Zhang, L. Chen
- Journal: ACS Nano
- Year: 2024
- Volume: 18
- Issue: 12
- Pages: 9150–9159
- Citations: 7
- Abstract: This research introduces ionic diffusive nanomemristors that exhibit dendritic competition and cooperation functions, designed for ultralow voltage neuromorphic computing. These memristors are key for advancing neuromorphic computing systems with minimal energy consumption.
Conclusion
Jieru Song has exhibited a strong and consistent track record of groundbreaking research in the emerging field of neuromorphic computing. His innovative work in self-powered optoelectronic devices, memristors, and energy-efficient computing solutions positions him as a leader in the field. His ability to combine technical ingenuity with practical applications has already begun to influence both the academic and technological communities.
Given the impressive impact of his research and its potential for long-term contribution to AI, signal processing, and sustainable computing, Jieru Song is highly deserving of the Best Researcher Award. With further development in industry collaborations and expanded research in cross-disciplinary applications, he can continue to push the boundaries of neuromorphic computing and its practical applications.