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8:30-9:00 | ¿ªÄ»Ê½ |
9:00-9:20 | ºÏÓ° |
9:20-10:20 | ÌØÑû±¨¸æ I£º ÌâÄ¿£ºFuture Computing Ecosystem: to be Inclusive + Specialized + Self-defined ±¨¸æÈË: ÕÅÏþ¶«, ½ÌÊÚ, IEEE/ACM Fellow, ÃÀ¹ú¶íº¥¶íÖÝÁ¢´óѧ |
10:20-10:40 | ÐÝÏ¢ |
10:40-11:40 | ÌØÑû±¨¸æ II£º ÌâÄ¿£ºParticle Natures of Classical and Quantum Waves and Signal Processing Circuits ±¨¸æÈË£ºHisato Fujisaka, ½ÌÊÚ, ÈÕ±¾¹ãµºÊÐÁ¢´óѧ |
11:40-14:30 | ÎçÐÝ |
14:30-15:30 | ÌØÑû±¨¸æ III: ÌâÄ¿: Computer Architecture and System Innovations for Enabling AI-based IoT Applications ±¨¸æÈË£ºÀîÌΣ¬½ÌÊÚ, IEEE Fellow, ÃÀ¹ú¸¥ÂÞÀï´ï´óѧ |
15:30-16:30 | ÌØÑû±¨¸æ IV: ÌâÄ¿: Çø¿éÁ´¼¼ÊõÓëÓ¦Óà ±¨¸æÈË: ÖÙÊ¢£¬½ÌÊÚ£¬¹ú¼Ò½ÜÇ࣬ÖйúÄϾ©´óѧ |
9ÔÂ11ÈÕ£¨ÐÇÆÚ¶þ£© | |
8:30-9:30 | ÌØÑû±¨¸æV: ÌâÄ¿£ºMEMS technologies and their medical applications ±¨¸æÈË£ºMitsuhiro Shikida, ½ÌÊÚ, ÈÕ±¾¹ãµºÊÐÁ¢´óѧ |
9:30-10:30 | Keynote VI: ÌâÄ¿£ºDevelopment of the Grass-root Information Distribution System based on MANET and Sensing Techniques for Reducing Damages of Landslide Disasters ±¨¸æÈË£ºMasahiro Nishi, ½ÌÊÚ, ÈÕ±¾¹ãµºÊÐÁ¢´óѧ |
10:30-10:40 | ÐÝÏ¢ |
10:40-11:40 | ÌØÑû±¨¸æ VII: ÌâÄ¿£ºOn dynamics of iterative sparse recovery algorithms ±¨¸æÈË: Kazushi Mimura, ½ÌÊÚ, ÈÕ±¾¹ãµºÊÐÁ¢´óѧ |
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1.±¨¸æÈË I: Xiaodong Zhang £¨ÕÅÏþ¶«£© is the Robert M. Critchfield Professor in Engineering at the Ohio State University. His research interests focus on data management in computer and distributed systems. He has made strong efforts to transfer his academic research into the state-of-the-art technology to advance the design and implementation of general-purpose computing systems. He received his Ph.D. in Computer Science from University of Colorado at Boulder, where he received Distinguished Engineering Alumni Award in 2011. He has recently received Lutron Foundation¡¯s Award for Excellence in Education Leadership. He is a Fellow of the ACM, and a Fellow of the IEEE.
ÌØÑû±¨¸æIÕªÒª: The development of computing ecosystem in both hardware and software has been mainly driven by Moore¡¯s Law that is ending. We are entering an era with a dramatic change to evolve into a new computing ecosystem where a variety of highly parallel, highly customized hardware accelerators co-exist with general purpose processors, such as GPU, FPGA, and ASIC. Our field are facing two fundamental challenges in the post Moore¡¯s Law era. The first one is the crisis of machine¡¯s and application¡¯s complexities --- Developing software for high performance in computing and data processing on advanced hardware require increasingly sophisticated programming and optimization efforts in order to deliver highly optimized code, which is based on a deep human understanding of both underlying hardware architecture and application domain knowledge. The second one is the crisis of human resources. The human-based programming approach is not sustainable due to the shrinking of the talented software developers¡¯ pool worldwide.
In this talk, I will envision the direction of the future computing ecosystem to address the above mentioned two crises. The computing environment will become inclusive to all the hardware accelerators under a uniformed management, where various specialized computing service in high performance and high efficiency will be provided. The computing environment will also be able to produce software by itself, which we call ¡°software-defined software. We still have a long way get there, but we do not have other choice because existing computing ecosystem has become increasingly sophisticated to users and provide only general purpose computing in low efficiency.
2.±¨¸æÈË II: H. Fujisaka received the Dr. Eng. degree from Keio University, Japan, in 1994. From 1994 to 1997, he was with the Department of Optical Communications, Osaki Electric Co. Ltd. In 1997, he joined the Faculty of Information Sciences, Hiroshima City University. Currently, he is a Professor in the Department of System Engineering. His research interests include analysis and synthesis of nonlinear signal processing and communication circuits. He is a member of IEEE and IEICE.
ÌØÑû±¨¸æIIÕªÒª: Quantum effect devices are potential successors of CMOS devices. In the design of signal processing circuits based on traditional classical wave theory, the use of active quantum effect devices requires representation of classical wave propagation by the flow of microscopic particles since the states of the devices are quantized. In simulating signal processing circuits consisting of both active and passive quantum devices, quantum wave propagation in the passive devices such as electron waveguides must be represented by probabilistic behavior of quantum particles. This lecture provides representation of classical and quantum waves by particles, building simulator models of quantum effect devices, and design of signal processing circuits with quantum effect devices.
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ÌØÑû±¨¸æIIIÕªÒª: In recent years, the artificial intelligence (AI) techniques, represented by deep neural networks (DNN), have demonstrated transformative impacts to modern Internet-of-Things (IoT) applications such as smart cities and smart transportation. With the increasing computing power and energy efficiency of mobile devices, there is a growing interest in performing AI-based IoT applications on mobile platforms. As a result, we believe the next-generation AI-based applications are pervasive across all platforms, ranging from central cloud data center to edge-side wearable and mobile devices.
However, we observe several architectural gaps that challenge the pervasive AI. First, the diversity of computing hardware resources and different end-user requirements present challenges to AI-based applications deployment on various IoT platforms, which results in inferior user satisfaction. Second, the traditional statically trained DNN model could not efficiently handle the dynamic data in the real IoT environments, which leads to low inference accuracy. Lastly, the training of DNN models still involves extensive human efforts to collect and label the large-scale dataset, which becomes impractical in IoT big data era where raw IoT data is largely un-labeled and un-categorized.
In this talk, I will introduce our recent research which enables pervasive AI-based IoT applications to become high-efficient, user-satisfactory, and intelligent. I will first introduce Pervasive AI, a user satisfaction-aware deep learning inference framework, to provide the best user satisfaction when migrating AI-based applications from Cloud to all kinds of platforms. Next, I will describe In-situ AI, a novel computing paradigm tailored to AI-based IoT applications. Finally, to achieve real intelligent (support autonomous learning) in IoT nodes, I will introduce an unsupervised GAN-based deep learning accelerator.
4.±¨¸æÈË IV: ÖÙÊ¢£¬Ò®Â³´óѧ²©Ê¿£¬ÔøÔÚÃÀ¹úŦԼÖÝÁ¢´óѧ²¼·¨ÂÞ·ÖУÈν̲¢Ìáǰ½úÉýÖÕÉí½ÌÖ°¡£ÏÖÈÎÄϾ©´óѧ¶þ¼¶½ÌÊÚ¡¢²©µ¼£¬¼ÆËã»úϵ¸±Ö÷ÈΡ¢Ð£È˲ʤ×÷°ì¸±Ö÷ÈΣ¬½ËÕÊ¡ÇÈÁª¸±Ö÷ϯ£¬½ËÕÊ¡ÕþÐίԱ¡£¹ú¼Ò½ÜÇà¡¢ÇàÄêǧÈË¡£ACMÄϾ©·Ö»áÖ÷ϯ£¬IEEE Computer SocietyÄϾ©·Ö»áÖ÷ϯ¡£¼æÈζà¼Ò¹ú¼ÊѧÊõÆÚ¿¯±àί¡£Ñо¿ÐËȤ°üÀ¨£ºÃÜÂëѧ¡¢²©ÞÄÂÛ¼°ÆäÔÚ¼ÆËã»úÍøÂç¡¢·Ö²¼Ê½ÏµÍ³ÖеÄÓ¦Óá£
ÌØÑû±¨¸æIVÕªÒª: Çø¿éÁ´Êǵ±½ñ×îΪÈÈÃŵÄм¼ÊõÖ®Ò»¡£Ôڴ˴α¨¸æÖУ¬ÎÒÃǽ«»áÊ×ÏȼòÒª»Ø¹ËÇø¿éÁ´µÄÀúÊ·ÓëÀ´Ô´¡£È»ºó£¬ÎÒÃǽ«½éÉÜÆäÖ÷ÒªºËÐļ¼Êõ£¬°üÀ¨ÆäÌåϵ¼Ü¹¹¡¢¹¤×÷Á¿Ö¤Ã÷¡¢¹²Ê¶Óë·Ö²æ¡¢ÖÇÄܺÏÔ¼µÈµÈ¡£»ùÓÚÕâЩ¼¼Êõ£¬ÎÒÃǽ«·ÖÎöÇø¿éÁ´µÄÓÅÊÆÓëȱÏÝ£¬ÌÖÂÛÆäÔÚÊý×Ö»õ±ÒÖ®ÖÐÒÔ¼°Êý×Ö»õ±ÒÒÔÍâµÄÓ¦Óá£
5.±¨¸æÈËV: Mitsuhiro Shikida received the B.S. and the M.S. degrees in electrical engineering from Seikei University, Tokyo, Japan, in 1988 and 1990, respectively, and the Ph.D. degree from Nagoya University, Nagoya, Japan, in 1998. He was with Hitachi, Ltd., Tokyo from 1990 to 1995, and Nagoya University from 1995 to 2014. In 2014, he joined the Department of Biomedical Information Sciences, Hiroshima City University, as a Professor. His current research interests include integration of micro-sensors and actuators for intelligent systems, micro-fabrication of 3-D microstructures for bio-medical applications. He has published over 120peer-reviewed articles, over 180 presentations at international conferences, and 21patents. He holds journal editorial board memberships for IEE Letters Journal on Micro & Nano Technology, and Associate Editor for the Micromechanics Section for Sensors and Actuators A, Elsevier. He has served as Technical Program Committee at International Conference, IEEE-MEMS (2006and 2016), Transducers (2007 and 2013), IEEE-Sensors (2012-2018).
ÌØÑû±¨¸æVÕªÒª: In order to reduce damages caused by landslide disasters, it is important for residents to quickly take refuge from the disasters. We consider that it is important to prepare the environment where the residents are able to decide appropriate timing for their evacuation. Our research group has proposed and developed the Grass-root Information Distribution System for monitoring landslide disasters using MANET (Mobile Ad-hoc NETwork) connected with mobile terminals, for the purpose of capturing landslide disasters information in the local area, delivering the information in the local MANET, and sharing the information among the local area residents. In our developed system, we have also constructed and operated the fixed type monitoring systems with the solar power supply in the dangerous places where the landslide disasters occurred in the past. By use of the infrared camera, the residents can visibly disasters occurred in the past. By use of the infrared camera, the residents can visibly monitor the dangerous places during night and day in the developed monitoring systems. In the workshop, we will show the overview of the Grass-root Information Distribution System based on the MANET and the several sensing techniques developed in fixed type monitoring systems.
6.±¨¸æÈË VI: Masahiro Nishi received the B.E., M.E. and Ph. D. degrees in Communications Engineering from Osaka University, in 1995, 1997 and 1999 respectively. He joined Hiroshima City University (HCU) as a research associate in 1999.In 2005, he became an associate professor at HCU, and he was appointed to professor at HCU in 2016. He has been pursuing research on radio sciences, radio wave propagations and wireless network systems. He is a member of IEEE, the Institute of Electronics and Information Communication Engineers of Japan (IEICE), and the Information Processing Society of Japan (IPSJ).
ÌØÑû±¨¸æIVÕªÒª: In order to reduce damages caused by landslide disasters, it is important for residents to quickly take refuge from the disasters. We consider that it is important to prepare the environment where the residents are able to decide appropriate timing for their evacuation. Our research group has proposed and developed the Grass-root Information Distribution System for monitoring landslide disasters using MANET (Mobile Ad-hoc NETwork) connected with mobile terminals, for the purpose of capturing landslide disasters information in the local area, delivering the information in the local MANET, and sharing the information among the local area residents. In our developed system, we have also constructed and operated the fixed type monitoring systems with the solar power supply in the dangerous places where the landslide disasters occurred in the past. By use of the infrared camera, the residents can visibly monitor the dangerous places during night and day in the developed monitoring systems. In the workshop, we will show the overview of the Grass-root Information Distribution System based on the MANET and the several sensing techniques developed in fixed type monitoring systems.
7.±¨¸æÈË VII: Ph.D. (Science), Osaka University, 1999.Professor, Hiroshima City University, Japan, 2017.4-
ÌØÑû±¨¸æVIIÕªÒª: Approximate message passing (AMP) is an effective iterative sparse recovery algorithm for linear system models. Depending on a measurement matrix ensemble, AMP may face a convergence problem. To avoid this problem, orthogonal AMP, which uses de-correlation linear estimation and divergence-free non-linear estimation, was proposed. We derive a simple scalar recursion to characterize iterative sparse recovery algorithms with divergence-free estimators without such assumptions of independence of messages by using the generating functional analysis.
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