Tim Erdmann, Stefan Zecevic, et al.
ACS Spring 2024
Power awareness is fast becoming immensely important in computing, ranging from the traditional high-performance computing applications to the new generation of data centric workloads. In this work, we describe our efforts towards a powerefficient computing paradigm that combines lowand high-precision arithmetic.We showcase our ideas for the widely used kernel of solving systems of linear equations that finds numerous applications in scientific and engineering disciplines as well as in large-scale data analytics, statistics and machine learning. Towards this goal, we developed tools for the seamless power profiling of applications at a finegrain level. In addition, we verify here previous work on post-FLOPS/W metrics and show that these can shed much more light in the power/energy profile of important applications. © 2014 The Author(s) Published by the Royal Society. All rights reserved.
Tim Erdmann, Stefan Zecevic, et al.
ACS Spring 2024
Chen-chia Chang, Wan-hsuan Lin, et al.
ICML 2025
Ella Barkan, Ibrahim Siddiqui, et al.
Computational And Structural Biotechnology Journal
Arnold.L. Rosenberg
Journal of the ACM