showSidebars ==
showTitleBreadcrumbs == 1
node.field_disable_title_breadcrumbs.value ==

Faculty Job Seminar by LI Xiaorong

Please click here if you are unable to view this page.

 
High Performance Computing for Big Data Analysis in the Cloud

Speaker (s):

LI Xiaorong
Executive Manager
Technology Planning Division
Infocomm Media Development Authority

Date:

Time:

Venue:

 

12 May 2021, Wednesday

10:00am - 11:15am

This is a virtual seminar. Please register by 
10 May 2021, the webex link will be sent to those who have registered on the following day.

We look forward to seeing you at this research seminar.

About the Talk

High-performance computing (HPC) technologies enable high-speed processing of large amounts of data. A high-performance computing system consists of large-scale computing, network and storage devices. With the advancement of cloud computing technologies, users can build their own cloud-based high-performance systems and develop scalable data analysis applications. This may benefit a wide range of data analysis applications in science, engineering, and business. In this talk, we will discuss high-performance computing for big data analysis, the latest technology trends, and high-performance parallel data processing methods for big data analysis in the cloud. 

About the Speaker

Xiaorong Li received her PhD from Electrical and Computing Engineering from National University of Singapore in 2006 and B.E. in Beijing University of Posts and Telecommunications In 1998. Her interests include parallel and distributed/high performance computing, big data analysis, AI, modelling and simulation, green computing, etc. She has been working in government agencies as technological lead and strategic planner since 2014. Before that, she was a senior scientist and capability group manager in A*STAR Institute of High Performance Computing (IHPC) working on cloud/edge computing for big data analysis using AI/Machine Learning, modelling and simulation, etc. since 2005.

She is a lecturer-track faculty candidate.