High Performance Data Analytics
David Bader, Distinguished Professor, New Jersey Institute of Technology
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.
Learning Objectives
- Attendees will be able to describe challenges in big data analytics
- Attendees will be able to discuss graph data science.
- Attendees will be able to describe the confluence of high performance computing and data science