Presenter
Biography
Xinyi Li is a Postdoctoral Researcher at the Pacific Northwest
National Laboratory. She obtained her Ph.D. degree at the University of Utah
specializing in the analysis of floating point behaviors within high-performance
systems. She was advised by Prof. Ganesh Gopalakrishnan. Xinyi's expertise
includes floating-point exception detection using GPU Binary
Instrumentation as well as methods to determine the floating-point
characteristics of GPUs and their Matrix Accelerators using
Feature-Target Testing of Numerics (FTTN). She is the author of
publicly released tools GPU-FPX for efficient Floating-Point Exception
Detection within NVIDIA GPUs and the FTTN Testing Suite. Previously,
she obtained her Master's Degree at the UT Dallas where she worked on
Computational Geometry.
National Laboratory. She obtained her Ph.D. degree at the University of Utah
specializing in the analysis of floating point behaviors within high-performance
systems. She was advised by Prof. Ganesh Gopalakrishnan. Xinyi's expertise
includes floating-point exception detection using GPU Binary
Instrumentation as well as methods to determine the floating-point
characteristics of GPUs and their Matrix Accelerators using
Feature-Target Testing of Numerics (FTTN). She is the author of
publicly released tools GPU-FPX for efficient Floating-Point Exception
Detection within NVIDIA GPUs and the FTTN Testing Suite. Previously,
she obtained her Master's Degree at the UT Dallas where she worked on
Computational Geometry.
Presentations
Tutorial
Debugging and Correctness Tools
Emerging Technologies
Fault-Tolerance, Reliability, Maintainability, and Adaptability
Numerical Methods
TUT