bet365官网-bet365平台怎么样_7位百家乐扑克桌_全讯网新2代理 (中国)·官方网站

Professor Chen Deming from the University of Illinois at Urbana-Champaign will give a wonderful lecture on the design of deep neural network in the applications of Internet of Things (IoT)

Publisher:吳嬋Release time:2019-10-21Number of Views:393



Speaker: Chen Deming (professor of University of Illinois at Urbana-Champaign, U.S.)

Theme: design, compiling and acceleration of deep neural network in the applications of Internet of Things (IoT)

When: 16:00, Oct. 22 (Tuesday)

Where:J2-103, Jiulonghu Campus

Hosted by: Chieng-Shiung Wu College of SEU

About the speaker:

Dr. Chen Deming, the holder of Bachelor’s Degree in Computer Science from the University of Pittsburgh and Master’s Degree and Ph.D. in Computer Science from the University of California, is currently serving University of Illinois at Urbana-Champaign as a Professor at the Department of Electronics and Computer Engineering. His current researches cover the system-level and advanced synthesis, machine learning, GPU, reconfigurable computing and hardware security, etc.. He was once invited to deliver more than 110 related lectures. Dr. Chen once received the Arnold O. Beckman Research Award from UIUC, the NSF Professional Award, 8 Best Paper Awards and ACM SIGDA Outstanding New Teacher Award; besides, he was once granted IBM Instructor Award twice, led the team to win the first prize twice in DAC International System Design Competition in the field of Internet of Things and was appraised as the excellent teacher. In addition, he is a scholar of Donald Bygweitzer School of Engineering, an IEEE member, an ACM Distinguished Speaker and the editor of ACM TREES. He has participated in the foundation of several companies such as Yingrui Internet of Things.

[Reasons for recommendation]

Today, various deep neural networks (DNNs) are widely applied to the driving of the Internet of Things. These IoT applications rely on the efficient hardware implementation of DNN. In this lecture, Professor Chen Deming will analyze several challenges faced by AI and IoT applications in mapping DNNs to hardware accelerators, especially how FPGA accelerates DNN as loaded on the cloud and the edge devices. As FPGA features difficulty in programing and optimization, Professor Chen will introduce a range of effective design techniques to achieve high performance and energy efficient DNN on the FPGA, including automated hardware/software co-design, configurable use of DNN IP cores, resources allocation between DNN layers, intelligent pipeline scheduling, DNN restoration and retraining. Professor Chen will display several design solutions, including a long-term circular convolutional network (LRCN) for video subtitles and an Inception module for face recognition (GoogleNet).


马牌百家乐娱乐城| 百家乐官网线上真人游戏| bet365 日博| 百家乐官网出千赌具| 百家乐官网免费赌博软件| 百家乐官网视频画面| 镇巴县| 百家乐官网娱乐分析软件v4.0| 最新百家乐出千赌具| 太阳城娱乐开户| 澳门百家乐官网网上直赌| 南京百家乐赌博现场被| 太阳城巴黎左岸| 阿尔山市| 百家乐街机游戏下载| 金木棉蓝盾在线娱乐| 百家乐群柏拉图软件| 带百家乐官网的时时彩平台| 大发888娱乐85战神版| 百家乐官网庄闲和的倍数| 博彩公司评级| 百家乐官网翻天超清| 通河县| 威尼斯人娱乐城官方网站| 澳门百家乐官网打法精华| 王子百家乐的玩法技巧和规则| 百家乐合理的投注法| 百家乐官网娱乐城赌场| 大发888开户博盈国际| 百家乐分析仪博彩正网| 星期八娱乐城官网| 百家乐官网桌子租| 澳门百家乐官网心得玩博| 大发888娱乐城 bg| 百家乐桌手机套| 保时捷百家乐官网娱乐城| 百家乐怎样玩的| 实战百家乐官网的玩法技巧和规则 | 博发| 百家乐压分技巧| 百家乐官网学院教学视频|