Machine Learning Systems
- Nyhet
The Role of Hardware Design for High Performance Computing
Inbunden, Engelska, 2026
Av Shanshan Liu, Pedro Reviriego, Zhen Gao, Fabrizio Lombardi
2 489 kr
Produktinformation
- Utgivningsdatum2026-04-06
- Mått155 x 235 x undefined mm
- FormatInbunden
- SpråkEngelska
- FörlagSpringer Nature Switzerland AG
- ISBN9783032174451
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Shanshan Liu is currently a professor with the School of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu, China. She received the Ph.D. degree in Microelectronics and Solid-State Electronics from Harbin Institute of Technology, Harbin, China, in 2018. From 2018 to 2021, she was a post-doctoral researcher with the Department of Electrical and Computer Engineering, Northeastern University, Boston, USA, and then an assistant professor with the Klipsch School of Electrical and Computer Engineering, New Mexico State University, Las Cruces, USA from 2021 to 2023.Her research interests include fault tolerant design in high performance computing systems, emerging computing, VLSI design, dependable machine learning, and error correction codes. She has published more than 100 peer-reviewed papers in these areas. She is a Member-at-Large of the IEEE Nanotechnology Council, an Associate Editor for the IEEE Transactions on Emerging Topics in Computing and the IEEE Transactions on Nanotechnology, and a Guest Editor for the IEEE Transactions on Circuits and Systems I: Regular Papers. She also serves as an organization committee member or a technical program committee member for several IEEE/ACM conferences such as NANO, NMDC, DFT, IOLTS, ICCAD, GLSVLSI.Pedro Reviriego completed the PhD in 1997 and joined the R&D department of Teldat a Spanish company that designs and manufactures routers. Then in 2000, he moved to an Irish start-up that was developing Ethernet transceiver ASICs and later acquired by an US company (now part of Broadcom). The transceivers developed were licensed to Intel and had a large commercial success. Since 2007 he has been in Academia with positions at Nebrija University, Universidad Carlos III de Madrid and currently, Universidad Politécnica de Madrid. Dr. Reviriego has made significant contributions in different areas like Energy Efficiency in Ethernet on which he was a pioneer contributing to the IEEE 802.3 standards and writing seminal papers on the field with more than 470 citations in Google Scholar. This work was recognized with two Google Research Awards. The second topic on which he has worked is the design and implementation of Error Correction Codes (ECCs) to protect memories. In this area, he has pioneered the use of one step majority logic decodable codes for memory protection with many publications. More recently, he has focused on fault-tolerant machine learning; in this area he has proposed fault tolerant implementations for many machine learning algorithms, including complex neural networks.Dr. Reviriego is associate editor of IEEE Transactions on Emerging Topics in Computing and has published more than 300 papers on journals indexed on JCR, most of them in IEEE Transactions with more than 6700 citations on Google Scholar. He also holds more than 12 US patents, most of them in collaboration with NVIDIA/Mellanox.Zhen Gao received the BS, MS and PhD degree in Electrical Engineering from Tianjin University, China, in 2005, 2007 and 2011, respectively. He was a visiting scholar at Georgia Tech from 2008 to 2010, and a Postdoc researcher in Tsinghua University from 2011 to 2014. He is currently an Associate Professor in Tianjin University. His research interests include circuit reliability, fault tolerant design and software defined radios. He has published more than 100 peer-reviewed papers in these areas. He won the best paper award of DFT2021 and the CCF Fault Tolerant Computing Outstanding Achievement Award in 2025.Dr. Gao is the Senior Member of IEEE, the Chinese Institute of Electronics (CIE) and the China Institute of Communications (CIC), and the Executive Committee of the Fault Tolerant Special Committee of China Computer Federation (CCF).Fabrizio Lombardi graduated in 1977 from the University of Essex (UK) with a B.Sc. (Hons.) in Electronic Engineering. In 1977 he joined the Microwave Research Unit at University College London, where he received the Master in Microwaves and Modern Optics (1978), the Diploma in Microwave Engineering (1978) and the Ph. D. from the University of London (1982). He is currently the holder of the International Test Conference (ITC) Endowed Chair at Northeastern University, Boston. Currently, Dr. Lombardi is the 2022-2023 President of the IEEE Nanotechnology Council (NTC); in 2021 he was 2nd VP of the IEEE Computer Society (CS). He was the VP of Publications of the IEEE CS (2019-2020) and the NTC (2020) as well as also a member of the IEEE Publication Services and Products Board (PSPB) (2019-2023). He has been appointed on the Executive Boards of many non-profit organizations (such as Computing-in-the-Core, now code.org the non-partisan advocacy coalition for K-12 Computer Science education) as well as the Computer Society (as an elected two-term member of its Board of Governors (2012-2017)) and the IEEE (as an appointed member of the Future Directions Committee (2014-2017)).In the past Dr. Lombardi has been a two 2-year term Editor-in-Chief (2007-2010), Associate Editor-in-Chief (2000-2006) and Associate Editor (1996-2000) of the IEEE Transactions on Computers, the inaugural two-term Editor-in-Chief of the IEEE Transactions on Emerging Topics in Computing (2013-2017); Editor-in-Chief of the IEEE Transactions on Nanotechnology (2014-2019) as well as member of the Editorial Boards of the ACM Journal of Emerging Technologies in Computing Systems, the IEEE Design & Test Magazine and IEEE Transactions on CAD of ICAS. Dr. Lombardi has been a Distinguished Visitor of the IEEE Computer Society (1990-1993 and 2001-2004). Dr. Lombardi is a Fellow of the IEEE for “contributions to testing and fault tolerance of digital systems”. He was the recipient of the 2011 Meritorious Service Award and was elevated to Golden Core membership in the same year by the IEEE CS; he was the Chair of the 2016 and 2017 IEEE CS Fellow Evaluation Committee. He has been awarded the 2019 NTC Distinguished Service Award, the 2019 “Spirit of the CS” Award and the 2021 T Michael Elliott Distinguished Service Certificate from the CS. He has received many professional awards: the Visiting Fellowship at the British Columbia Advanced System Institute, University of Victoria, Canada (1988), twice the Texas Experimental Engineering Station Research Fellowship (1991-1992, 1997-1998) the Halliburton Professorship (1995), the Outstanding Engineering Research Award at Northeastern University (2004) and an International Research Award from the Ministry of Science and Education of Japan (1993-1999). Dr. Lombardi was the recipient of the 1985/86 Research Initiation Award from the IEEE/Engineering Foundation and a Silver Quill Award from Motorola-Austin (1996). Together with his students, his manuscripts have been selected for the best paper awards at technical events/meeting such as IEEE DFT and IEEE/ACM Nanoarch. Since inception, he has been always included in the list of World’s Top 2% Scientists, as compiled by Stanford University. Dr. Lombardi has been involved in organizing many international symposia, conferences and workshops sponsored by professional organizations as well as guest editor of Special Issues in archival journals and magazines. His research interests are emerging technologies (mostly nanoscale circuits and magnetic devices), memory systems, VLSI design and fault/defect tolerance of digital systems. He has extensively published in these areas and coauthored/edited eleven books.
- High performance machine learning accelerators on fpga.- Floating point arithmetic in deep neural networks evaluation and implementation of conventional and emerging formats with mixed precision strategies.- High performance computing architectures for ml.- High performance domain specific computing architectures for machine learning.- Edge ai training accelerator design.- Accelerating machine learning with unconventional architectures.- Mram based energy efficient computing architectures for accelerators machine learning.- Energy efficient data aware computation in computing in memory architecture.- Stochastic computing applied to morphological neural networks.- Approximate multipliers for machine learning applications.- Edge computing meets giant ai innovations in large language model efficiency.- Chiplet based accelerator design for scalable training of transformer based generative adversarial networks.- Energy consumption in generative ai insights from large language models inference.- Sustainable and responsible generative artificial intelligence gen ai a survey.- Low power machine learning realization techniques on biomedical wearable devices.- Application of algorithm and hardware co design in the hardware accelerator of visual slam frontend.- Application of algorithm and hardware co design in the hardware accelerator of visual slam backend.- Hardware efficient designs for spiking neural networks.