World's Best Scientists 2026 revealed!

D-Index & Metrics

Computer Science

D-Index
57
Citations
10045
World Ranking
3909
National Ranking
1851

Research.com Recognitions

  • 2018 - Member of the National Academy of Engineering For contributions to high-performance database systems.
  • 2009 - Fellow of the American Association for the Advancement of Science (AAAS)
  • 2003 - IEEE Fellow For contributions to relational database kernel technology, especially in the area of transaction and access methods.
  • 2002 - ACM Fellow For contributions to database system access methods, concurrency control, and recovery.

Overview

David B. Lomet is affiliated with Microsoft in the United States. Their research primarily focuses on areas within computer science, including advanced data storage technologies, parallel computing and optimization techniques, distributed systems and fault tolerance, as well as distributed and parallel computing systems.

The scientist has contributed to works published in several notable venues. Frequent publication venues include:

  • IEEE Transactions on Very Large Scale Integration (VLSI) Systems
  • IEEE Transactions on Computational Social Systems
  • Computer
  • The VLDB Journal
  • Zenodo (CERN European Organization for Nuclear Research)

David B. Lomet's frequent co-authors reflect collaborations with various researchers in related fields. These co-authors include:

  • Riccardo Mariani
  • William Gropp
  • Amara Amara
  • Manuel Delgado-Restituto
  • Yong Lian

Representative recent publications by David B. Lomet include:

  • "IEEE Transactions on Very Large Scale Integration (VLSI) Systems," 2021, IEEE Transactions on Very Large Scale Integration (VLSI) Systems
  • "Better database cost/performance via batched I/O on programmable SSD," 2021, The VLDB Journal
  • "The Atomic Manifesto," 2020, Zenodo (CERN European Organization for Nuclear Research)
  • "IEEE Transactions on Very Large Scale Integration (VLSI) Systems," 2020, IEEE Transactions on Very Large Scale Integration (VLSI) Systems
  • "IEEE Transactions on Very Large Scale Integration (VLSI) Systems," 2020, IEEE Transactions on Very Large Scale Integration (VLSI) Systems

The scientist's work encompasses subfields including computer networks and communications, and hardware and architecture.

David B. Lomet has been recognized through several awards, among them:

  • Member of the National Academy of Engineering (2018) for contributions to high-performance database systems
  • Fellow of the American Association for the Advancement of Science (AAAS) (2009)
  • IEEE Fellow (2003) for contributions to relational database kernel technology, especially in the area of transaction and access methods
  • ACM Fellow (2002) for contributions to database system access methods, concurrency control, and recovery

Best Publications

  • ALEX: An Updatable Adaptive Learned Index

    Jialin Ding;Umar Farooq Minhas;Jia Yu;Chi Wang

  • The Bw-Tree: A B-tree for new hardware platforms

    J. J. Levandoski;D. B. Lomet;S. Sengupta

  • The hB-tree: a multiattribute indexing method with good guaranteed performance

    David B. Lomet;Betty Salzberg

  • Database computer system with application recovery and dependency handling write cache

    David B. Lomet

  • Access methods for multiversion data

    David Lomet;Betty Salzberg

  • Client-server computer system with application recovery of server applications and client applications

    David B. Lomet;Gerhard Weikum

  • Data system with distributed tree indexes and method for maintaining the indexes

    David B. Lomet

  • Process structuring, synchronization, and recovery using atomic actions

    Unknown

  • Consistent cluster operational data in a server cluster using a quorum of replicas

    Michael T. Massa;David A. Dion;Rajsekhar Das;Rushabh A. Doshi

  • System and method for consistent timestamping in distributed computer databases

    David B. Lomet;Philip A. Bernstein;James Johnson;Kenneth Wilner

  • AlphaSort: a RISC machine sort

    Chris Nyberg;Tom Barclay;Zarka Cvetanovic;Jim Gray

  • The performance of a multiversion access method

    David Lomet;Betty Salzberg

  • Database computer system with application recovery and recovery log sequence numbers to optimize recovery

    David B. Lomet

  • Distributed transaction processing using two-phase commit protocol with presumed-commit without log force

    Butler Lampson;David B. Lomet

  • Adapting microsoft SQL server for cloud computing

    Philip A. Bernstein;Istvan Cseri;Nishant Dani;Nigel Ellis

  • Concurrency control for B-trees with node deletion

    David B. Lomet

  • Deuteronomy: Transaction support for cloud data

    Justin J. Levandoski;David Lomet;Mohamed F. Mokbel;Kevin Keliang Zhao

  • Persistent Client-Server Database Sessions

    Roger S. Barga;David B. Lomet;Thomas Baby;Sanjay Agrawal

  • Persistent stateful component-based applications via automatic recovery

    Roger S. Barga;David B. Lomet

  • Unbundling Transaction Services in the Cloud

    David B. Lomet;Alan D. Fekete;Gerhard Weikum;Michael J. Zwilling

  • IO-Top-k: Index-Access Optimized Top-k Query Processing

    Holger Bast;Debapriyo Majumdar;Ralf Schenkel;Martin Theobald

Frequent Co-Authors

Roger Barga
Roger Barga Microsoft (United States)
Sudipta Sengupta
Sudipta Sengupta Amazon (United States)
Gerhard Weikum
Gerhard Weikum Max Planck Institute for Informatics
Philip A. Bernstein
Philip A. Bernstein Microsoft (United States)
Mohamed F. Mokbel
Mohamed F. Mokbel University of Minnesota
Butler W. Lampson
Butler W. Lampson Microsoft (United States)
Alan Fekete
Alan Fekete University of Sydney
Gustavo Alonso
Gustavo Alonso ETH Zurich
Cliff B. Jones
Cliff B. Jones Newcastle University
Guy M. Lohman
Guy M. Lohman IBM (United States)

If you think any of the details on this page are incorrect, let us know.

Report an issue

We appreciate your kind effort to assist us to improve this page, it would be helpful providing us with as much detail as possible in the text box below:

Related Online Degrees & Career Pathways

Exploring online degrees in Computer Science opens up a wide range of flexible and lucrative opportunities. Many students are interested in easy online degrees that pay well, allowing them to quickly develop in-demand skills and enter the workforce with competitive salaries.

For those looking to keep expenses lower while advancing in specialized fields, researching the cheapest online master's in artificial intelligence can help you access cutting-edge education without breaking the bank. Artificial intelligence and computer science degrees remain at the forefront of future job growth.

Choosing a program aligned with your long-term goals is essential. According to labor market data, there are several top degrees in demand for the future—particularly in technology and data-driven fields.

If time is a factor, consider the variety of short masters programs available online. These can help you fast-track your career while gaining advanced expertise.

Best Scientists Citing David B. Lomet

Trending Scientists

Recently Published Articles