Deploying a Top-100 Supercomputer for Large Parallel Workloads: the Niagara Supercomputer

07/31/2019
by   Marcelo Ponce, et al.
0

Niagara is currently the fastest supercomputer accessible to academics in Canada. It was deployed at the beginning of 2018 and has been serving the research community ever since. This homogeneous 60,000-core cluster, owned by the University of Toronto and operated by SciNet, was intended to enable large parallel jobs and has a measured performance of 3.02 petaflops, debuting at #53 in the June 2018 TOP500 list. It was designed to optimize throughput of a range of scientific codes running at scale, energy efficiency, and network and storage performance and capacity. It replaced two systems that SciNet operated for over 8 years, the Tightly Coupled System (TCS) and the General Purpose Cluster (GPC). In this paper we describe the transition process from these two systems, the procurement and deployment processes, as well as the unique features that make Niagara a one-of-a-kind machine in Canada.

READ FULL TEXT

page 1

page 2

page 4

research
04/10/2019

Application performance on a Cluster-Booster system

The DEEP projects have developed a variety of hardware and software tech...
research
09/03/2021

Characterization and Prediction of Deep Learning Workloads in Large-Scale GPU Datacenters

Modern GPU datacenters are critical for delivering Deep Learning (DL) mo...
research
06/09/2022

Cluster Builder – A DSL to Deploy a Parallel Application Over a Workstation Cluster

Many organisations have a large network of connected computers, which at...
research
01/31/2019

On Energy Efficiency and Performance Evaluation of SBC based Clusters: A Hadoop case study

Energy efficiency in a data center is a challenge and has garnered resea...
research
02/27/2022

Past, Present and Future of Hadoop: A Survey

In this paper, a technology for massive data storage and computing named...
research
02/09/2021

Mars Image Content Classification: Three Years of NASA Deployment and Recent Advances

The NASA Planetary Data System hosts millions of images acquired from th...

Please sign up or login with your details

Forgot password? Click here to reset