Search results
I am an Assistant Professor in the School of computing at the University of Utah. I co-direct UtahDB Lab. I am also an Affiliate Faculty in the Performance and Algorithms Research Group at Berkeley Lab.
- Service
Here we describe how to add a page to your site. 2025. PC:...
- High-Performance Filters for GPUs
Hunter McCoy, Steven Hofmeyr, Katherine Yelick, Prashant...
- Project
Prashant Pandey Assistant Professor. My research interests...
- Timely Reporting of Heavy Hitters Using External Memory
Prashant Pandey, Shikha Singh, Michael A. Bender, Jonathan...
- Optimizing Every Operation in a Write-Optimized File System
Prashant Pandey Assistant Professor. My research interests...
- Making Every Bit Count
Prashant Pandey, Michael A. Bender, Rob Johnson, and Rob...
- Service
Ph.D., Computer Science, Stony Brook University. Project: Fast and Space-Efficient Maps: Shrinking Big Data Down to Size.
2021. Articles 1–20. Assistant Professor of Computer Science, Kahlert School of Computing, University of Utah - Cited by 1,194 - Data Structures - Algorithms - Storage - Graphs...
Title: Assistant Professor. Email: prashant.pandey@utah.edu. Website: https://prashantpandey.github.io/ College: Engineering. School / Department: School of Computing. Mentoring Philosophy: I am an Assistant Professor in the School of computing at the University of Utah. I co-direct UtahDB Lab.
Assistant Professor. prashant.pandey@utah.edu. WEB 2686. W e bsite | Google Scholar. Research Interests. Algorithms (Algorithms & Data Structures); Data Management (Approximate Databases, Stream Processing, Storage and Indexing); High-Performance Computing; Computational Biology.
Prashant Pandey, Martin Farach-Colton, Niv Dayan & Huanchen Zhang (2024). Beyond Bloom: A Tutorial on Future Feature-Rich Filters. International Conference on Management of Data {SIGMOD}.
Prashant Pandey. Research Interest. My goal as a researcher is to advance the theory and practice of resource-e cient data structures and use them to build data systems to accelerate complex analyses on large-scale data. Contact Information. 72 Central Campus Drive Salt Lake City, UT - 84112.