beat365系列講座菁英論壇第12期——Enabling Efficiency Robustness and Security of Deep Learning Systems at The Edge
報告題目(Title):Enabling Efficiency Robustness and Security of Deep Learning Systems at The Edge
時間(Date & Time):2023.6.30 10-11am
地點(Location):理科一号樓1131(燕園校區) Room 1131, Science Building #1 (Yanyuan)
主講人(Speaker):Wei Yang
邀請人(Host):Tao Xie
報告摘要(Abstract):
Deep Neural Networks (DNNs) have shown potential in many applications. However, the power of using DNNs comes at substantial computational costs. The costs, especially the inference-time cost, can be a concern for deploying DNNs on resource-constrained embedded devices such as mobile phones and IoT devices. To enable deploying DNNs on resource-constrained devices, researchers propose a series of deep learning systems where the amount of inference-time computation varies for different inputs. This talk will present challenges and a series of work to deploy energy-efficient and robust deep learning systems on the Edge systems/devices. This talk first reviews some of my past research and then will discuss a few ongoing work towards enabling the wide-scale deployment of resource-constrained embedded AI systems like UAVs, autonomous vehicles, Robotics, IoT-Healthcare / Wearables, Industrial-IoT, etc.
主講人簡介(Bio):

Wei Yang is an assistant professor in the Department of Computer Science at the University of Texas at Dallas. He teaches and does research on software engineering and security. He received my Ph.D. in Computer Science from the University of Illinois at Urbana-Champaign, an M.S. in Computer Science from North Carolina State University, and a B.E. in Software Engineering from Shanghai Jiao Tong University. He was a visiting researcher in University of California, Berkeley. He is a recipient of numerous awards including NSF CAREER Award and ACM SIGSOFT Distinguished Paper Award.

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