• IEEE.org
  • IEEE CS Standards
  • Career Center
  • About Us
  • Subscribe to Newsletter

0

IEEE
CS Logo
  • MEMBERSHIP
  • CONFERENCES
  • PUBLICATIONS
  • EDUCATION & CAREER
  • VOLUNTEER
  • ABOUT
  • Join Us
CS Logo

0

IEEE Computer Society Logo
Sign up for our newsletter
IEEE COMPUTER SOCIETY
About UsBoard of GovernorsNewslettersPress RoomIEEE Support CenterContact Us
COMPUTING RESOURCES
Career CenterCourses & CertificationsWebinarsPodcastsTech NewsMembership
BUSINESS SOLUTIONS
Corporate PartnershipsConference Sponsorships & ExhibitsAdvertisingRecruitingDigital Library Institutional Subscriptions
DIGITAL LIBRARY
MagazinesJournalsConference ProceedingsVideo LibraryLibrarian Resources
COMMUNITY RESOURCES
GovernanceConference OrganizersAuthorsChaptersCommunities
POLICIES
PrivacyAccessibility StatementIEEE Nondiscrimination PolicyIEEE Ethics ReportingXML Sitemap

Copyright 2025 IEEE - All rights reserved. A public charity, IEEE is the world’s largest technical professional organization dedicated to advancing technology for the benefit of humanity.

  • Home
  • /Profiles
  • Home
  • /Profiles

David A. Bader

2021-2023 Distinguished Visitor Award Recipient

David Bader

David A. Bader is a Distinguished Professor in the Department of Computer Science at New Jersey Institute of Technology. Prior to this, he served as founding Professor and Chair of the School of Computational Science and Engineering, College of Computing, at Georgia Institute of Technology. He is a Fellow of the IEEE, AAAS, and SIAM, and advises the White House, most recently on the National Strategic Computing Initiative (NSCI). Bader serves on the leadership team of Northeast Big Data Innovation Hub as the inaugural chair of the Seed Fund Steering Committee. Dr. Bader is a leading expert in solving global grand challenges in science, engineering, computing, and data science. His interests are at the intersection of high-performance computing and real-world applications, including cybersecurity, massive-scale analytics, and computational genomics, and he has co-authored over 250 scholarly papers. Dr. Bader has served as a lead scientist in several DARPA programs including High Productivity Computing Systems (HPCS) with IBM, Ubiquitous High Performance Computing (UHPC) with NVIDIA, Anomaly Detection at Multiple Scales (ADAMS), Power Efficiency Revolution For Embedded Computing Technologies (PERFECT), Hierarchical Identify Verify Exploit (HIVE), and Software-Defined Hardware (SDH). Bader is Editor-in-Chief of the ACM Transactions on Parallel Computing, and will serve as General Co-Chair of IPDPS 2021. He has also served as Director of the Sony-Toshiba-IBM Center of Competence for the Cell Broadband Engine Processor. Bader is a cofounder of the Graph500 List for benchmarking “Big Data” computing platforms. Bader is recognized as a “RockStar” of High Performance Computing by InsideHPC and as HPCwire’s People to Watch in 2012 and 2014. Recently, Bader received an NVIDIA AI Lab (NVAIL) award (2019), and a Facebook Research AI Hardware/Software Co-Design award (2019).

New Jersey Institute of Technology

Contact: http://www.cs.njit.edu/~bader

(and click on "Contact")

DVP term expires December 2023


Presentations

Solving Global Grand Challenges with High Performance Data Analytics

Data science aims to solve grand global challenges such as: detecting and preventing disease in human populations; revealing community structure in large social networks; protecting our elections from cyber-threats, and improving the resilience of the electric power grid. Unlike traditional applications in computational science and engineering, solving these social problems at scale often raises new challenges because of the sparsity and lack of locality in the data, the need for research on scalable algorithms and architectures, and development of frameworks for solving these real-world problems on high performance computers, and for improved models that capture the noise and bias inherent in the torrential data streams. In this talk, Bader will discuss the opportunities and challenges in massive data science for applications in social sciences, physical sciences, and engineering.

Predictive Analysis from Massive Knowledge Graphs

Graphs are a natural representation for connecting information in real-world challenges such as understanding financial transactions in digital currencies, finding new communities in social networks, increasing power grid resiliency, and protecting us from cyberattack. Prof. David Bader, one of the nation’s leading experts in massive-scale graph analytics, will discuss his Spatio-Temporal Interaction Networks and Graphs (STING) initiative that supports new methods for finding interesting patterns and features in these critical knowledge graphs. This talk includes a case study on predictive analytics on a homeland security knowledge graph that connects disparate data from multiple sources such as spreadsheets and relational databases.

LATEST NEWS
How to Evaluate LLMs and GenAI Workflows Holistically
How to Evaluate LLMs and GenAI Workflows Holistically
The Kill Switch of Vengeance: The Double-Edged Sword of Software Engineering Talent
The Kill Switch of Vengeance: The Double-Edged Sword of Software Engineering Talent
Exploring the Elegance and Applications of Complexity and Learning in Computer Science
Exploring the Elegance and Applications of Complexity and Learning in Computer Science
IEEE CS and ACM Honor Saman Amarasinghe with 2025 Ken Kennedy Award
IEEE CS and ACM Honor Saman Amarasinghe with 2025 Ken Kennedy Award
IEEE Std 3221.01-2025: IEEE Standard for Blockchain Interoperability—Cross Chain Transaction Consistency Protocol
IEEE Std 3221.01-2025: IEEE Standard for Blockchain Interoperability—Cross Chain Transaction Consistency Protocol
Read Next

How to Evaluate LLMs and GenAI Workflows Holistically

The Kill Switch of Vengeance: The Double-Edged Sword of Software Engineering Talent

Exploring the Elegance and Applications of Complexity and Learning in Computer Science

IEEE CS and ACM Honor Saman Amarasinghe with 2025 Ken Kennedy Award

IEEE Std 3221.01-2025: IEEE Standard for Blockchain Interoperability—Cross Chain Transaction Consistency Protocol

Celebrate IEEE Day 2025 with the IEEE Computer Society

Building Community Through Technology: Sardar Patel Institute of Technology (SPIT) Student Chapter Report

IEEE CS and ACM Announce Recipients of 2025 George Michael Memorial HPC Fellowship

FacebookTwitterLinkedInInstagramYoutube
Get the latest news and technology trends for computing professionals with ComputingEdge
Sign up for our newsletter