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

PhD Dissertation Defense by RUAN Shaolun | Visual Analytics for Interpretable Quantum Computing

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

 

Visual Analytics for Interpretable Quantum Computing

RUAN Shaolun

PhD Candidate
School of Computing and Information Systems
Singapore Management University
 

FULL PROFILE

Research Area

Dissertation Committee

Research Advisor
  • WANG Yong, Assistant Professor, College of Computing and Data Science, Nanyang Technological University
Committee Members
External Member
  • Tim DWYERi, Professor of Data Visualisation and Immersive Analytics, Faculty of Information Technology, Monash University
 

Date

12 January 2026 (Monday)

Time

1:00pm - 3:00pm

Venue

Meeting room 5.1, 
Level 5
School of Computing and Information Systems 1,
Singapore Management University,
80 Stamford Road
Singapore 178902

Please register by 8 January 2026.

We look forward to seeing you at this research seminar.

 

ABOUT THE TALK

Scientific domains, such as quantum computing, are characterized by their complexity, high dimensionality, and abstract representations, which introduce significant challenges for explainability and informed decision-making. In this defense, I will present a series of visualization-centric research projects that aim to bridge this gap through human-centered design.

 

SPEAKER BIOGRAPHY

RUAN Shaolun is a Ph.D. candidate of Computer Science at Singapore Management University, under the supervision of Professor Yong WANG and Professor Jiannan LI. Before that, he received his bachelor degree from University of Electronic Science and Technology of China at the School of Computer Science and Engineering in 2019. He became a research scholar at Monash University under the supervision of Tim Dwyer in 2025. His research interests include Data Visualization and Human-Computer Interaction. His work focuses on developing human-centered computing tools to address complex scientific problems, facilitating the process of explainability and data-driven decision-making.