TBAA20: Task-Based Algorithms and Applications
Citations Over Time
Abstract
The new challenges posed by Exascale system architectures have resulted in difficulty achieving a desired scalability using traditional distributed memory runtimes. Task-based programming models show promise in addressing these challenges, providing application developers with a productive and performant approach to programming on next generation systems. Empirical studies show that task-based models can overcome load balancing issues that are inherent to traditional distributed memory runtimes, and that task-based runtimes perform comparably to those systems when balanced. This panel is designed to explore the advantages of task-based programming models on modern and future HPC systems from an industry, university, and national lab perspective. It aims at gathering application experts and proponents of these models to present concrete and practical examples of using task-based runtimes to overcome the challenges posed by Exascale system architectures. This report describes the objectives, activities, and outcomes of the panel TBAA: Task-Based Algorithms and Applications which was held at the International Conference for High Performance Computing, Networking, Storage, and Analysis (SC 20) on November 18, 2020.
Related Papers
- → Robust online temperature estimation of a membrane-wall gasifier(2019)3 cited
- → Visualization of solid distribution with heterogeneity inside fixed bed gasifier(2020)3 cited
- Generic gasifier modelling : evaluating model by gasifier type(2009)
- Numerical simulation of a new dry-feed entrained-flow coal gasifier(2010)
- → Numerical investigation of slag formation in an entrained-flow gasifier(2018)