Rajesh K. Gupta
Affiliations: | Computer Science and Engineering | University of California, San Diego, La Jolla, CA |
Area:
Computer ScienceWebsite:
http://mesl.ucsd.edu/gupta/bio.htmlGoogle:
"Rajesh Gupta"Bio:
Parents
Sign in to add mentorGiovanni De Micheli | grad student | 1993 | Stanford (Computer Science Tree) | |
(Co-Synthesis of Hardware and Software for Digital Embedded Systems.) |
Children
Sign in to add traineeMuhammad A. Adnan | grad student | UCSD | |
Ali Dasdan | grad student | UIUC | |
Ravindra Jejurikar | grad student | UC Irvine | |
Nick Savoiu | grad student | UC Irvine | |
Dinesh Ramanathan | grad student | 2000 | UC Irvine |
Sumit Gupta | grad student | 2003 | UC Irvine |
Yuvraj Agarwal | grad student | 2009 | UCSD |
Sudipta Kundu | grad student | 2009 | UCSD |
Ryo Sugihara | grad student | 2009 | UCSD |
Zhong-Yi Jin | grad student | 2010 | UCSD |
Joel D. Coburn | grad student | 2012 | UCSD |
Kaisen Lin | grad student | 2012 | UCSD |
Arup De | grad student | 2014 | UCSD |
Abbas Rahimi | grad student | 2015 | UCSD |
Bharathan Balaji | grad student | 2016 | UCSD |
Zhou Fang | grad student | 2018 | UCSD |
Manish Gupta | grad student | 2018 | UCSD |
Xun Jiao | grad student | 2018 | UCSD |
Atieh Lotfi | grad student | 2013-2018 | UCSD |
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Publications
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Fraternali F, Balaji B, Agarwal Y, et al. (2020) ACES: Automatic Configuration of Energy Harvesting Sensors with Reinforcement Learning Acm Transactions On Sensor Networks. 16: 1-31 |
Lin J, Jiao X, Luo M, et al. (2020) Vulnerability of Hardware Neural Networks to Dynamic Operation Point Variations Ieee Design & Test of Computers. 1-1 |
Gupta RK, Mitra S, Gupta P. (2019) Variability Expeditions: A Retrospective Ieee Design & Test of Computers. 36: 65-67 |
Fraternali F, Balaji B, Gupta R. (2018) Scaling configuration of energy harvesting sensors with reinforcement learning Arxiv: Learning. 7-13 |
Fang Z, Luo M, Anwar FM, et al. (2018) Go-realtime: a lightweight framework for multiprocessor real-time system in user space Acm Sigbed Review. 14: 46-52 |
Jiao X, Rahimi A, Jiang Y, et al. (2018) CLIM: A Cross-Level Workload-Aware Timing Error Prediction Model for Functional Units Ieee Transactions On Computers. 67: 771-783 |
Davidson S, Xie S, Torng C, et al. (2018) The Celerity Open-Source 511-Core RISC-V Tiered Accelerator Fabric: Fast Architectures and Design Methodologies for Fast Chips Ieee Micro. 38: 30-41 |
Balaji B, Bhattacharya A, Fierro G, et al. (2018) Brick : Metadata schema for portable smart building applications Applied Energy. 226: 1273-1292 |
Rathi S, Gupta R. (2017) Optimal sensor locations for contamination detection in pressure-deficient water distribution networks using genetic algorithm Urban Water Journal. 14: 160-172 |
Gupta R, Rathi S. (2017) Joint Consideration of Layout and Pipe Sizes for Water Distribution Network Design with Reliability Procedia Engineering. 186: 357-363 |