Draft:Manish Parashar
Manish Parashar (born 21 January 1967) is a Computer Scientist and Electrical Engineer. He is a Presidential Professor in the Kahlert School of Computing, Director and Chair in Computational Science and Engineering in the Scientific Computing and Imaging Institute at the University of Utah.[1] He is the Founding Chair of the IEEE Technical Community on High Performance Computing (TCHPC).[2] He is an AAAS Fellow, ACM Fellow, and IEEE Fellow.[3] He also served as Office Director in the US National Science Foundation’s Office of Advanced Cyberinfrastructure from 2018 to 2023.[4]
Manish Parashar | |
---|---|
Born | January 21, 1967 |
Alma mater | Syracuse University (MS and PhD) |
Awards | CRA Distinguished Service Award AAAS Fellow ACM Fellow IEEE Fellow |
Scientific career | |
Fields | Translational Computer Science High Performance Parallel and Distributed Computing National and Regional Cyberinfrastructure |
Institutions | Scientific Computing and Imaging Institute at University of Utah Office of Advanced Cyberinfrastructure, US National Science Foundation Rutgers University |
Parashar currently leads the One-Utah Responsible Artificial Intelligence Initiative, whose mission is to realize a transdisciplinary ecosystem that fosters AI innovation to address scientific and societal grand challenges.[5] He is the Faculty Co-Director, Data Science & Ethics of Technology Initiative (DATASET) and One-Utah Data Science Hub at the University of Utah.[6][7]
As a leader in cyberinfrastructure research and policy, he has advocated for a national strategic computing reserve and the democratization of cyberinfrastructure’s use and impact. He also focuses on the importance of translational computer science, which bridges foundational, use-inspired, and applied research with the delivery and deployment of its outcomes to a target community.[8]
Early life and Education
[edit]Parashar received a BE degree in Electronics and Telecommunications from Bombay University, India in 1988. Following this, he moved to the United States to pursue higher studies, earning his Master of Science and PhD degrees in 1994, both in Computer Engineering from Syracuse University. His Ph.D. thesis was titled Interpretive Performance Prediction for High Performance Parallel Computing. Prior to joining the University of Utah, he was a faculty member at Rutgers University.[9]
Research and Career
[edit]Parashar’s academic career has focused on translational computer science with a specific emphasis on computational and data-enabled science and engineering, and has addressed key conceptual, technological and educational challenge. His journey began with postdoctoral work at The University of Texas at Austin (1994-1995) in the field of computational science. He then joined Rutgers University in 1997, where he held several faculty positions, eventually becoming a Distinguished Professor.[10] During his tenure at Rutgers, Parashar was instrumental in founding the Rutgers Discovery Informatics Institute (RDI2), a research center aimed at addressing grand challenges in computational and data-enabled science.[11] He also co-led the Office of Advanced Research Computing (OARC), which advanced Rutgers University’s research and scholarly achievements through next generation computing, data science and networking.[12]
Parashar has also served as Program Director in the Office of Cyberinfrastructure (now Office of Advanced Cyberinfrastructure) at the US National Science Foundation between 2009 and 2011, where he focused on computational and data-enabled science and engineering research and education, software sustainability, cloud and data intensive computing research programs, and managed an extensive research portfolio.[13] He was responsible for establishing a number of new programs including Software Infrastructure for Sustained Innovation (SI2) and NSF Fellowships for Transformative Computational Science using Cyberinfrastructure (CI TraCS) and co-led the creation of the Computing in the Cloud (CIC) program.[14][15]
As Assistant Director for Strategic Computing in the US Office of Science and Technology Policy(OSTP) in 2020, Parashar led the development of a national strategy for the Future Advanced Computing Ecosystem and the formulation of the National Strategic Computing Reserve in response to the COVID-19 pandemic.[16]
In 2023, Parashar completed a 5+ year IPA as Office Director for the Office of Advanced Cyberinfrastructure (OAC) at the US National Science Foundation (NSF), where he oversaw NSF’s investments in the exploration development, acquisition and provisioning of state-of- the-art national cyberinfrastructure resources, tools, services, and expertise essential to the advancement and transformation of all of science and engineering.[4][13] He developed NSF’s strategic vision for a National Cyberinfrastructure Ecosystem for 21st Century Science and Engineering that responds to rapidly changing application and technology landscapes, as well as blueprints for NSF’s key cyberinfrastructure investments over the next decade.[17] [18]A key element of this vision was ensuring equitable access and democratizing cyberinfrastructure’s use and impact.[19]
In 2020, Parashar moved to the University of Utah, where he currently serves as the Director and Chair in Computational Science and Engineering at the Scientific Computing and Imaging Institute (SCI) and Presidential Professor in the University of Utah’s Kahlert School of Computing.[1] He also leads the One-Utah Responsible Artificial Intelligence Initiative, a $100 Million University of Utah initiative aimed at harnessing translational AI to achieve societal good while protecting privacy, civil rights and civil liberties, and promoting fairness, accountability, transparency, and equity.[5] He is a Faculty Co-Director of the Data Science & Ethics of Technology Initiative (DATASET), that is part of the One-Utah Data Science Hub, which is develop an overarching data-science strategy for the University of Utah.[6][7]
Parashar’s work enables advanced application formulations, such as those based on dynamically adaptive, coupled methods, and data-driven workflows, to be implemented on extreme-scale high-performance computing systems. His contributions have included innovations in data structures and algorithms,[20] programming abstractions, and runtime systems.[21] He has pioneered the use of autonomic computing techniques to address application/system complexity and uncertainty.[22] He has also deployed open-source software encapsulating these research innovations, which directly impact a range of applications.[23]
A leader in structured adaptive mesh refinement, Parashar is one of the earliest researchers to address scalable SAMR. His research has included a theoretical framework for locality preserving distributed and dynamic data-structures for SAMR, programming abstractions that enable distributed, dynamically adaptive formulations to be directly expressed, and a family of innovative partitioning algorithms that incorporate system/applications characteristics, and mechanisms for actively managing SAMR grid-hierarchies.[24] These contributions continue to enable truly scalable SAMR applications and have led to realistic simulations of complex phenomena, such as colliding black-holes and neutron stars, forest fire propagation, and fluid flows in the human heart.[25]
Parashar's research is in the broad area of high performance parallel and distributed computing and investigating conceptual models, programming abstractions, and implementation architectures that enables new insights through very large-scale computations and big data in a range of domains critical to advancing our understanding of important natural, built, and human systems.[26]
Awards and recognitions
[edit]Manish Parashar has been honored with numerous prestigious awards that highlight his exceptional contributions to computing and cyberinfrastructure. In 2024, he received the Computing Research Association (CRA) Distinguished Service Award for his impactful and multifaceted service to the computing research community.[27] This was preceded in 2023 by the IEEE Computer Society Sidney Fernbach Award, recognizing his groundbreaking work in distributed high-performance computing systems, data-driven workflows, and translational science.[28] That same year, he was awarded the Achievement Award in High-Performance Distributed Computing at the ACM International Symposium on High-Performance Parallel and Distributed Computing for groundbreaking work in high performance parallel and distributed computational methods, data management, in-situ computing, and global leadership in cyberinfrastructure and translational computer science .[29][30]
Earlier, Parashar’s innovative contributions were celebrated with the R&D 100 Award (2013) for his development of the "ADIOS: Adaptable I/O System for Big Data," a project that had significant technological impact.[31] His academic achievements were also recognized with the NSF CAREER Award (2000–2004), which acknowledged his early leadership and innovation in computational science.[32]
Parashar has served the community in a variety of leadership roles through his involvement with numerous technical committees. He was elevated to an IEEE Fellow in 2011, a Fellow with the American Association for the Advancement of Science(AAAS)in 2012,[33] and a Fellow of the Association of Computing Machinery in 2020.[34] He was awarded the IEEE T&C Distinguished Leadership Award in 2021.[35] He is the Founding Chair of the Technical Consortium on High Performance Computing (TCHPC).[2] He served as the Editor-in-Chief of the IEEE Transactions on Parallel and Distributed Systems (TPDS) from 2018 to 2022,[36]. He was also elected to IEEE Computer Society's Golden Core in 2016.[37]
Selected works
[edit]Manish Parashar has co-authored over 400 technical papers, including publications in leading journals and international conferences. Notable works include his contributions to structured adaptive mesh refinement (SAMR), extreme-scale data management, autonomic scientific computing and national and regional cyberinfrastructure. His key papers include:
Structure Adaptive Mesh Refinement
- Parashar, M. and Browne, J.C. (2000) ‘Systems engineering for high performance computing software: The HDDA/dagh infrastructure for implementation of parallel structured adaptive mesh’, The IMA Volumes in Mathematics and its Applications, pp. 1–18. doi:10.1007/978-1-4612-1252-2_1.
- M. Parashar and J. C. Browne, "On partitioning dynamic adaptive grid hierarchies," Proceedings of HICSS-29: 29th Hawaii International Conference on System Sciences, Wailea, HI, USA, 1996, pp. 604-613 vol.1, doi: 10.1109/HICSS.1996.495511.
- J. Steensland, S. Chandra and M. Parashar, "An application-centric characterization of domain-based SFC partitioners for parallel SAMR," in IEEE Transactions on Parallel and Distributed Systems, vol. 13, no. 12, pp. 1275-1289, Dec. 2002, doi: 10.1109/TPDS.2002.1158265.
Extreme-scale Data Management
- C. Schmidt and M. Parashar, "Flexible information discovery in decentralized distributed systems," High Performance Distributed Computing, 2003. Proceedings. 12th IEEE International Symposium on, Seattle, WA, USA, 2003, pp. 226-235, doi: 10.1109/HPDC.2003.1210032.
- Docan, C., Parashar, M. and Klasky, S. (2011) ‘Dataspaces: An interaction and coordination framework for coupled simulation workflows’, Cluster Computing, 15(2), pp. 163–181. doi:10.1007/s10586-011-0162-y.
Autonomic Scientific Computing
- Parashar, M. and Hariri, S. (2005) ‘Autonomic computing: An overview’, Lecture Notes in Computer Science, pp. 257–269. doi:10.1007/11527800_20.
- Jin, T., Zhang, F., Sun, Q., Romanus, M., Bui, H. and Parashar, M. (2020) ‘Towards autonomic data management for staging-based coupled scientific workflows’, Journal of Parallel and Distributed Computing, 146, pp. 35–51. doi:10.1016/j.jpdc.2020.07.002
- Hua Liu, M. Parashar and S. Hariri, "A component-based programming model for autonomic applications," International Conference on Autonomic Computing, 2004. Proceedings., New York, NY, USA, 2004, pp. 10-17, doi: 10.1109/ICAC.2004.1301341.
National and regional cyberinfrastructure
- Rodero, I. and Parashar, M. (2019) ‘Data Cyber-Infrastructure for End-to-end Science: Experiences from the NSF Ocean Observatories Initiative’, Computing in Science & Engineering, pp. 1–1. doi:10.1109/MCSE.2019.2892769.
- M. Parashar, "Democratizing Science Through Advanced Cyberinfrastructure," in Computer, vol. 55, no. 9, pp. 79-84, Sept. 2022, doi: 10.1109/MC.2022.3174928.
Translational Computer Science
Parashar (along with David Abramson) pioneered the formalization of Translational Computer Science (TCS) to complement traditional modes of computer science research, as a means to accelerate and amplify its impact. TCS refers to research that bridges foundational, use-inspired, and applied research with the delivery and deployment of its outcomes to a target community. It supports essential bi-direction interplays where delivery and deployment processes inform the research.[38]
- D. Abramson and M. Parashar, "Translational Research in Computer Science," in Computer, vol. 52, no. 9, pp. 16-23, Sept. 2019, doi: 10.1109/MC.2019.2925650.
External links
[edit]- Website
- Dr. Manish Parashar. "Director & Chair in Computational Science and Engineering". Scientific Computing and Imaging Institute at the University of Utah
- Parashar, Manish."Professor". Rutgers University
References
[edit]- ^ a b "People". sci.utah.edu. Retrieved 2022-11-18.
- ^ a b "Technical Community on High Performance Computing". IEEE Computer Society Technical Community on High Performance Computing. Retrieved 2024-12-09.
- ^ vincenth (2022-07-01). "Parashar Named Presidential Professor". The College of Engineering at the University of Utah. Retrieved 2022-11-18.
- ^ a b Russell, John (2018-03-05). "NSF Elevates Irene Qualters and Manish Parashar". HPCwire. Retrieved 2024-12-09.
- ^ a b "One-U Responsible AI Initiative". rai.utah.edu. Retrieved 2024-12-09.
- ^ a b "Data Science & Ethics of Technology Initiative (DATASET) - Vice President for Research". www.research.utah.edu. Retrieved 2024-12-09.
- ^ a b "One Utah Data Science Hub - Vice President for Research". www.research.utah.edu. Retrieved 2024-12-09.
- ^ Abramson, David; Parashar, Manish (September 2019). "Translational Research in Computer Science". Computer. 52 (9): 16–23. doi:10.1109/MC.2019.2925650. ISSN 1558-0814. S2CID 201739141.
- ^ vincenth (2022-07-01). "Parashar Named Presidential Professor". The College of Engineering at the University of Utah. Retrieved 2022-11-18.
- ^ "Parashar, Manish". www.cs.rutgers.edu. Retrieved 2024-12-09.
- ^ "Rutgers Discovery Informatics Institute (RDI2)". www.cs.rutgers.edu. Retrieved 2024-12-09.
- ^ "Home". Office of Advanced Research Computing. Retrieved 2024-12-09.
- ^ a b "Office of Advanced Cyberinfrastructure (CISE/OAC) | NSF - National Science Foundation". new.nsf.gov. 2024-12-16. Retrieved 2024-12-09.
- ^ "Software Infrastructure for Sustained Innovation (SSE, SSI, S2I2) | NSF - National Science Foundation". new.nsf.gov. 2016-12-01. Retrieved 2024-12-09.
- ^ "NSF 10-553: NSF Fellowships for Transformative Computational Science using CyberInfrastructure (CI TraCS) | NSF - National Science Foundation". new.nsf.gov. Retrieved 2024-12-09.
- ^ Friedlander, Manish Parashar,Amy. "The U.S. Needs a National Strategic Computing Reserve". Scientific American. Retrieved 2022-11-18.
{{cite web}}
: CS1 maint: multiple names: authors list (link) - ^ "NSF-led National Artificial Intelligence Research Resource Task Force Releases Final Report | NSF - National Science Foundation". new.nsf.gov. 2023-01-24. Retrieved 2024-12-09.
- ^ Parashar, Manish; Friedlander, Amy; Gianchandani, Erwin; Martonosi, Margaret (2022-07-21). "Transforming science through cyberinfrastructure". Communications of the ACM. 65 (8): 30–32. doi:10.1145/3507694. ISSN 0001-0782. S2CID 250925591.
- ^ Parashar, Manish (September 2022). "Democratizing Science Through Advanced Cyberinfrastructure". Computer. 55 (9): 79–84. doi:10.1109/MC.2022.3174928. ISSN 1558-0814.
- ^ Qin, Yubo; Rodero, Ivan; Parashar, Manish (May 2022). "Toward Democratizing Access to Facilities Data: A Framework for Intelligent Data Discovery and Delivery". Computing in Science & Engineering. 24 (3): 52–60. arXiv:2112.06479. Bibcode:2022CSE....24c..52Q. doi:10.1109/MCSE.2022.3179408. ISSN 1558-366X.
- ^ Steensland, J.; Chandra, S.; Parashar, M. (December 2002). "An application-centric characterization of domain-based SFC partitioners for parallel SAMR". IEEE Transactions on Parallel and Distributed Systems. 13 (12): 1275–1289. doi:10.1109/TPDS.2002.1158265. ISSN 1558-2183.
- ^ Jin, Tong; Zhang, Fan; Sun, Qian; Romanus, Melissa; Bui, Hoang; Parashar, Manish (2020-12-01). "Towards autonomic data management for staging-based coupled scientific workflows". Journal of Parallel and Distributed Computing. 146: 35–51. doi:10.1016/j.jpdc.2020.07.002. ISSN 0743-7315. S2CID 225011569.
- ^ Docan, Ciprian; Parashar, Manish; Klasky, Scott (2012-06-01). "DataSpaces: an interaction and coordination framework for coupled simulaiton workflows". Cluster Computing. 15 (2): 163–181. doi:10.1007/s10586-011-0162-y. ISSN 1573-7543. S2CID 36207749.
- ^ Parashar, Manish; Browne, James C. (2000). "Systems Engineering for High Performance Computing Software: The HDDA/DAGH Infrastructure for Implementation of Parallel Structured Adaptive Mesh". In Baden, Scott B.; Chrisochoides, Nikos P.; Gannon, Dennis B.; Norman, Michael L. (eds.). Structured Adaptive Mesh Refinement (SAMR) Grid Methods. The IMA Volumes in Mathematics and its Applications. Vol. 117. New York, NY: Springer. pp. 1–18. doi:10.1007/978-1-4612-1252-2_1. ISBN 978-1-4612-1252-2.
- ^ Steensland, J.; Chandra, S.; Parashar, M. (December 2002). "An application-centric characterization of domain-based SFC partitioners for parallel SAMR". IEEE Transactions on Parallel and Distributed Systems. 13 (12): 1275–1289. doi:10.1109/TPDS.2002.1158265. ISSN 1558-2183.
- ^ "Biosketch". Home. Retrieved 2024-12-09.
- ^ "Distinguished Service Award". CRA. 2015-01-16. Retrieved 2024-12-11.
- ^ "Sidney Fernbach Memorial Award". IEEE Computer Society. 2018-04-03. Retrieved 2024-12-11.
- ^ "Manish Parashar Receives 2023 HPDC Achievement Award". HPCwire. Retrieved 2024-12-11.
- ^ Butt, Ali R.; Mi, Ningfang; Chard, Kyle (2023). Proceedings of the 32nd International Symposium on High-Performance Parallel and Distributed Computing. doi:10.1145/3588195. ISBN 979-8-4007-0155-9. Retrieved 2024-12-11.
{{cite book}}
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ignored (help) - ^ Hemsoth, Nicole (2013-09-04). "ADIOS Team Wins Award". HPCwire. Retrieved 2024-12-11.
- ^ "NSF Award Search: Award # 9984357 - CAREER: Development of a Unified Data-Management and Interaction Substrate: An Integrated Research and Education Program for Enabling Distributed Computational Collaboratories". www.nsf.gov. Retrieved 2024-12-11.
- ^ "AAAS - 2012 Fellows". 2012-12-06. Archived from the original on 6 December 2012. Retrieved 2024-12-11.
- ^ "2023 ACM Fellows Celebrated for Contributions to Computing That Underpin Our Daily Lives". awards.acm.org. Retrieved 2024-12-11.
- ^ Little, Brookes (2018-05-01). "T&C Awards". IEEE Computer Society. Retrieved 2024-12-11.
- ^ "CSDL | IEEE Computer Society". www.computer.org. Retrieved 2024-12-11.
- ^ "Golden Core Recognition". IEEE Computer Society. 2018-04-04. Retrieved 2024-12-11.
- ^ "Translational Computer Science". sites.google.com. Retrieved 2024-12-18.