MS6D - High-Performance Machine Learning: Scale and Performance (Part II)
Session Chairs
Event TypeMinisymposium
Computer Science and Applied Mathematics
TimeWednesday, June 2914:00 - 16:00 CEST
LocationSingapore Room
DescriptionWith the growing range of machine learning approaches and the availability of large-scale data, performant and scalable algorithmic techniques have become central topics. Nowadays, high-performance computing (HPC) technologies have become essential for modern large-scale machine learning applications. The convergence of HPC and machine learning has shown compelling success across many application fields. With that said, real-world applications are rife with inherent challenges associated with high dimensionality, scarcity of data, and ill-posedness, among many others. This minisymposium will serve as a platform to discuss cutting-edge developments for modern, scalable, and efficient machine learning approaches.
Presentations
14:00 - 14:30 CEST | Machine Learning at Scale using ALP/GraphBLAS | |
14:30 - 15:00 CEST | Scaling Distributed Training of Regular and Irregular Deep Learning Models on Public Cloud | |
15:00 - 15:30 CEST | MG-GCN: Scalable Multi-GPU GCN Training Framework | |
15:30 - 16:00 CEST | Neural-Network Approaches for High-Dimensional Optimal Control Problems |