2022-07-26 –, Green
The "Julia for HPC" minisymposium aims to gather current and prospective Julia practitioners in the field of high-performance computing (HPC) from multidisciplinary applications. We invite participation from industry, academia, and government institutions interested in Julia’s capabilities for supercomputing. The goal is to provide a venue for Julia enthusiasts to share best practices, discuss current limitations, and identify future developments in the scientific HPC community.
YouTube Link: https://www.youtube.com/watch?v=fog1x9rs71Q
As we approach the era of exascale computing, scalable performance and fast development on extremely heterogeneous hardware have become ever more important aspects for high-performance computing (HPC). Scientists and developers with interest in Julia for HPC need to know how to leverage the capabilities of the language and ecosystem to address these issues and which tools and best practices can help them to achieve their performance goals.
What do we mean by HPC? While HPC can be mainly associated with running large-scale physical simulations like computational fluid dynamics, molecular dynamics, high-energy physics, climate models etc., we use a more inclusive definition beyond the scope of computational science and engineering. More recently, rapid prototyping with high-productivity languages like Julia, machine learning training, data management, computer science research, research software engineering, large scale data visualization and in-situ analysis have expanded the scope for defining HPC. For us, the core of HPC is not to run simple test problems faster but involves everything that enables solving challenging problems in simulation or data science, on heterogeneous hardware platforms, from a high-end workstation to the world's largest supercomputers powered with different vendors CPUs and accelerators (e.g. GPUs).
In this two-hour minisymposium, we will give an overview of the current state of affairs of Julia for HPC in a series of eight 10-minute talks. The focus of these overview talks is to introduce and motivate the audience by highlighting aspects making the Julia language beneficial for scientific HPC workflows such as scalable deployments, compute accelerator support, user support, and HPC applications. In addition, we have reserved some time for participants to interact, discuss and share the current landscape of their investments in Julia HPC, while encouraging networking with their colleagues over topics of common interest.
The minisymposium schedule, with confirmed speakers and topics, is as follows:
- 0:00: William F Godoy (ORNL) & Michael Schlottke-Lakemper (U Stuttgart/HLRS): Julia for High-Performance Computing
- 0:05: Samuel Omlin (CSCS): Scalability of the Julia/GPU stack
- 0:15: Simon Byrne (Caltech/CliMA): MPI.jl
- 0:25: Q&A
- 0:30: Tim Besard (Julia Computing): CUDA.jl: Update on new features and developments
- 0:40: Julian Samaroo (MIT): AMDGPU.jl: State of development and roadmap to the future
- 0:50: Q&A
- 1:00: Albert Reuther (MIT): Supporting Julia Users at MIT LL Supercomputing Center
- 1:10: Johannes Blaschke (NERSC): Supporting Julia users on NERSC’s “Cori” and “Perlmutter” systems
- 1:20: Q&A
- 1:25: Michael Schlottke-Lakemper (U Stuttgart/HLRS): Running Julia code in parallel with MPI: Lessons learned
- 1:35: Ludovic Räss (ETH Zurich): Julia and GPU-HPC for geoscience applications
- 1:45: Q&A, Discussion & Wrap up
The overall goal of the minisymposium is to identify and summarize current practices, limitations, and future developments as Julia experiences growth and positions itself in the larger HPC community due to its appeal in scientific computing. It also exemplifies the strength of the existing Julia HPC community that collaboratively prepared this event. We are an international, multi institutional, and multi disciplinary group interested in advancing Julia for HPC applications in our academic and national laboratory environments. We would like to welcome new people from multiple backgrounds sharing our interest and bring them together in this minisymposium.
In this spirit, the minisymposium will serve as a starting point for further Julia HPC activities at JuliaCon 2022. During the main conference, a Birds of Feather session will provide an opportunity to bring together the community for more discussions and to allow new HPC users to join the conversation. Furthermore, a number of talks will be dedicated to topics relevant for HPC developers and users alike.
Theoretical Physicist - Scientific HPC Advisor - National High Performance Computing (NHR) - Paderborn Center for Parallel Computing (PC²)
Michael is a group leader and research software engineer at the High-Performance Computing Center Stuttgart of the University of Stuttgart, Germany. His research focus is on numerical methods for adaptive multi-physics simulations, high-performance computing with Julia, and scientific machine learning.
I am interested in numerical analysis and scientific computing with applications in science and engineering. In particular, I like to analyze and develop numerical methods for differential equations, focusing on stability, mimetic properties, structure preservation, and efficiency. I started with the common mix of C, C++, Fortran, Python, Matlab, Mathematica etc. Nowadays, I am using Julia nearly exclusively for my work. Currently, I am an Assistant Professor in Applied Mathematics at the University of Hamburg. If you want to know more about me, please visit my website.