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	<title>Gordon Bell Prize Archives &#8226; SC23</title>
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	<title>Gordon Bell Prize Archives &#8226; SC23</title>
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		<title>Eyes Beyond the Prize</title>
		<link>https://sc23.supercomputing.org/2023/09/eyes-beyond-the-prize/</link>
		
		<dc:creator><![CDATA[John Taylor]]></dc:creator>
		<pubDate>Tue, 12 Sep 2023 20:40:43 +0000</pubDate>
				<category><![CDATA[Program]]></category>
		<category><![CDATA[Awards]]></category>
		<category><![CDATA[Gordon Bell Prize]]></category>
		<guid isPermaLink="false">https://sc23.supercomputing.org/?p=25684</guid>

					<description><![CDATA[The new ACM Gordon Bell Prize for Climate Modelling puts the spotlight on a Grand Challenge problem.  ]]></description>
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<p>In 2023, the Association for Computing Machinery will present its first-ever <a href="https://awards.acm.org/bell-climate" target="_blank" rel="noreferrer noopener">ACM Gordon Bell Prize for Climate Modelling</a> during a <a href="/awards/">special ceremony</a> at SC23 this November in Denver. The award, which will be given annually for the next 10 years, aims to recognize the contributions of climate scientists and software engineers in addressing climate change. Award namesake Gordon Bell, a pioneer in high-performance and parallel computing, is providing the $10,000 award. </p>



<p>Specifically, the award will spotlight innovative parallel computing contributions based on performance and innovation in their computational methods and their contributions toward improving climate modeling and understanding the Earth’s climate system. </p>



<p>Today, climate modeling provides the most viable window to anticipate, and potentially reduce, the future impacts of climate change driven by increasing atmospheric greenhouse gas levels. By recognizing the scientific and computing contributions required to tackle worldwide climate change and respond to the need for more accurate, rapidly available climate information, the Gordon Bell Prize for Climate Modelling can be a means to elevate awareness about the consequences of climate change while showcasing the pioneering science and dedicated researchers working on this Grand Challenge problem. </p>



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<h3 class="wp-block-heading">John Taylor</h3>



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<p class="has-gray-700-color has-text-color has-small-font-size">ACM Gordon Bell Prize for Climate Modelling Committee Chair</p>



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<div class="wp-block-button"><a class="wp-block-button__link wp-element-button" href="https://www.linkedin.com/in/john-taylor-2963a715/" target="_blank" rel="noreferrer noopener"><i class="fab fa-linkedin-in"></i> John on LinkedIN</a></div>
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<p>Finalists for the award are determined by the work’s actual or potential influence on the realm of climate modeling, its interconnected disciplines, and broader societal impact. The use of HPC in the climate modeling applications is also considered. Based on these criteria, the <a href="https://awards.acm.org/bell-climate/committee" target="_blank" rel="noreferrer noopener">Association for Computing Machinery (ACM) GBP for Climate Modelling Award Committee</a> selected three finalists for the inaugural award.</p>



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<p class="has-gray-700-color has-text-color has-small-font-size">Target Surface Temperatures</p>
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<p class="has-gray-700-color has-text-color has-small-font-size">Predicted Surface Temperatures</p>
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<h2 class="wp-block-heading">Finalist Project Summaries</h2>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 1</h3>



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<p><strong>The Simple Cloud-Resolving E3SM Atmosphere Model Running on the Frontier Exascale System</strong></p>
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<p class="has-small-font-size">Authors: Mark Taylor, Peter M. Caldwell, Luca Bertagna, Conrad Clevenger, Aaron S. Donahue, James G. Foucar, Oksana Guba, Benjamin R. Hillman, Noel Keen, Jayesh Krishna, Matthew R. Norman, Sarat Sreepathi, Christopher R. Terai, James B. White III, Danqing Wu, Andrew G. Salinger, Renata B. McCoy, L. Ruby Leung, and David C. Bader</p>
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<p>This work introduces an efficient and performance portable implementation of the Simple Cloud Resolving E3SM Atmosphere Model (SCREAM). SCREAM is a full-featured atmospheric global circulation cloud-resolving model. A significant advancement is SCREAM was developed anew using C++ and incorporates the Kokkos library to abstract the on-node execution model for both CPUs and GPUs. To date, only a few global atmosphere models have been ported to GPUs. SCREAM was able to run on both AMD and NVIDIA GPUs and on nearly an entire exascale system (Frontier). On the Frontier system, it achieved a groundbreaking performance, simulating 1.26 years per day for a practical cloud-resolving simulation. This constitutes a pivotal stride in climate modeling, offering enhanced and highly necessary predictions regarding the potential outcomes of future climate changes.</p>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 2</h3>



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<p><strong>Establishing a Modeling System in 3-km Horizontal Resolution for Global Atmospheric Circulation Triggered by Submarine Volcanic Eruptions with 400 Billion Smoothed Particle Hydrodynamics</strong></p>
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<p class="has-small-font-size">Authors: Shenghong Huang, Junshi Chen, Ziyu Zhang, Xiaoyu Hao, Jun Gu, Hong An, Chun Zhao, Yan Hu, Zhanming Wang, Longkui Chen, Yifan Luo, Jineng Yao, Yi ZhangSong, Yang Zhao, Zhihao Wang, Dongning Jia, Zhao Jin, Changming Song, Xisheng Luo, Xiaobin He, and Dexun Chen</p>
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<p>This work presents a comprehensive simulation that captures the entire dynamic sequence of the Tonga eruption, spanning from the initial shock waves, earthquakes, and tsunamis to the subsequent development of mushroom clouds over the following 6-7 days. This simulation accounts for the dispersion and diffusion of ash and water vapor during the period. The modeling system was able to resolve the effects of the full coupling of the volcanic eruption, resulting seismic activity, and concurrent oceanic and atmospheric phenomena. In their paper, the team describes a novel modeling system designed for volcanic eruptions and atmosphere circulation. This system was run on a new Sunway supercomputer in China using a spatial resolution, ranging from 10 meters at local scale to 3 kilometers globally. The method incorporates an enhanced multimedium and multiphase smoothed particle hydrodynamics (SPH) model combined with a fully coupled meteorology-chemistry global atmospheric modeling scheme. The modeling system was able to use 400 billion particles with 80% parallel efficiency using 39 million processor cores. This marks a breakthrough in the ability to study interactions between tectonic processes and climate change. Furthermore, it provides the means to develop an early-warning simulation system capable of addressing similar global hazard events in the future.</p>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 3</h3>



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<p><strong>Big Data Assimilation: Real-time 30-second-refresh Heavy Rain Forecast Using Fugaku During Tokyo Olympics and Paralympics</strong></p>
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<p class="has-small-font-size">Authors: Takemasa Miyoshi, Arata Amemiya, Shigenori Otsuka, Yasumitsu Maejima, James Taylor, Takumi Honda, Hirofumi Tomita, Seiya Nishizawa, Kenta Sueki, Tsuyoshi Yamaura, Yutaka Ishikawa, Shinsuke Satoh, Tomoo Ushio, Kana Koike, and Atsuya Uno</p>
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<p>The work presents a real-time 30-second-refresh numerical weather prediction (NWP), performed via exclusive use of 11,580 nodes (approximately 7% of the total) of the Fugaku supercomputer during the 2021 Tokyo Olympics and Paralympics. A total of 75,248 forecasts were disseminated in the one-month period with time-to-solution in less than three minutes for each 30-minute forecast. Japan’s Big Data Assimilation (BDA) project developed the novel NWP system for precise prediction of hazardous rains as a step toward solving the global climate crisis, where hazardous rain events are likely to increase with global warming. To achieve the required time-to-solution for a real-time 30-second refresh with high accuracy, the core BDA software incorporates single precision and enhanced parallel input/output (I/O) with tailored configurations involving 1,000 ensemble members of a 500-meter resolution weather model. Compared to the conventional one-hour refresh systems used by the weather bureaus, the BDA system not only showcased a two-orders-of magnitude increase in problem size, but it also revealed the effectiveness of 30-second refresh for highly nonlinear and rapidly evolving convective rainstorms. This endeavor stands as a testament to the value of engaging advanced computational methodologies to advance understanding of intricate meteorological phenomena.</p>



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<h2 class="wp-block-heading">More on Gordon Bell Awards</h2>



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<p>View summaries of this year’s six Gordon Bell finalists via brief descriptions of the work. The ACM Gordon Bell Prize award winner will be announced as part of a&nbsp;<a href="https://sc23.supercomputing.org/program/awards/">special ceremony</a>&nbsp;at SC23 this November in Denver.</p>
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<div class="wp-block-button"><a class="wp-block-button__link wp-element-button" href="https://sc23.supercomputing.org/2023/08/a-look-at-the-2023-gordon-bell-prize-finalists/"><i class="fas fa-trophy"></i> ACM gordon Bell Prize</a></div>
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		<title>A Look at the 2023 Gordon Bell Prize Finalists</title>
		<link>https://sc23.supercomputing.org/2023/08/a-look-at-the-2023-gordon-bell-prize-finalists/</link>
		
		<dc:creator><![CDATA[Taisuke Boku]]></dc:creator>
		<pubDate>Tue, 08 Aug 2023 01:30:56 +0000</pubDate>
				<category><![CDATA[Program]]></category>
		<category><![CDATA[Awards]]></category>
		<category><![CDATA[Gordon Bell Prize]]></category>
		<guid isPermaLink="false">https://sc23.supercomputing.org/?p=24764</guid>

					<description><![CDATA[As in previous years, the 2023 Gordon Bell Prize drew a number of exciting submissions. From them, the six finalists were selected. ]]></description>
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<p>As in previous years, the 2023 Gordon Bell Prize (GBP) drew a number of exciting submissions. From them, the <a href="https://awards.acm.org/bell/committee" target="_blank" rel="noreferrer noopener">Association for Computing Machinery (ACM) GBP Award Committee</a> selected six finalists. Chester Gordon Bell (pictured above) is the namesake of the prestigious award that honors outstanding achievements in HPC.</p>



<p>The GBP is awarded to the most valuable scientific computation as demonstrated using state-of-the-art software and hardware technologies on world-leading supercomputers. The GBP represents various aspects of evaluation, such as the importance of target problems, performance optimization, maximum utilization of target system performance, and knowledge given for widely spread platforms. This year, the Gordon Bell finalists’ work spans various applications, including materials science, fluid dynamics, nuclear simulation, seismic processing, and biomolecular simulations. The hardware platforms also include world-class systems: <a href="https://www.olcf.ornl.gov/frontier/" target="_blank" rel="noreferrer noopener">Frontier</a> (ORNL, USA), new Sunway System (SC Wuxi, China), <a href="https://www.lumi-supercomputer.eu/" target="_blank" rel="noreferrer noopener">LUMI</a> (EuroHPC/CSC, Finland), <a href="https://leonardo-supercomputer.cineca.eu/" target="_blank" rel="noreferrer noopener">Leonardo</a> (EuroHPC/Cineca, Italy), Cerebras CS-2 (KAUST, Saudi Arabia), and <a href="https://www.nersc.gov/systems/perlmutter/" target="_blank" rel="noreferrer noopener">Perlmutter</a> (NERSC, USA). </p>



<p>The following summarizes this year’s Gordon Bell finalists via brief descriptions of the work. Please note that the results or system sizes will not be finalized before the teams’ final submissions in August. The ACM Gordon Bell Prize award winner will be announced as part of a <a href="https://sc23.supercomputing.org/program/awards/">special ceremony</a> at SC23 this November in Denver.</p>



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<figure class="wp-block-image size-full"><img loading="lazy" decoding="async" width="600" height="600" src="https://sc23.supercomputing.org/wp-content/uploads/2023/08/tai.jpg" alt="" class="wp-image-25306" srcset="https://sc23.supercomputing.org/wp-content/uploads/2023/08/tai.jpg 600w, https://sc23.supercomputing.org/wp-content/uploads/2023/08/tai-300x300.jpg 300w, https://sc23.supercomputing.org/wp-content/uploads/2023/08/tai-150x150.jpg 150w, https://sc23.supercomputing.org/wp-content/uploads/2023/08/tai-320x320.jpg 320w" sizes="auto, (max-width: 600px) 100vw, 600px" /></figure>
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<h3 class="wp-block-heading">Taisuke Boku</h3>



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<p class="has-gray-700-color has-text-color has-small-font-size">ACM Gordon Bell Prize 2023 Committee Chair; Professor/Director of the Center for Computational Sciences, University of Tsukuba</p>
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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 1</h3>



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<p><strong>Large-scale Materials Modeling at Quantum Accuracy: Ab Initio Simulations of Quasicrystals and Interacting Extended Defects in Metallic Alloys</strong></p>
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<p class="has-small-font-size">Sambit Das, Bikash Kanungo, Vishal Subramanian, and others (eight authors total) as part of a team that includes the University of Michigan, Indian Institute of Science, and Oak Ridge National Laboratory</p>
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<p>In this work, the team developed a mixed method to combine density function theory (DFT) and the quantum many body (QMB) problem using a machine learning technique. The effort achieves high accuracy of calculation and affords large-scale modeling with the inverse-DFT that links the QMB method to DFT. They realized the ground-stage energy calculation while keeping the accuracy commensurate with QMB, using more than 60% of resources on the Frontier supercomputer housed within the <a href="https://www.olcf.ornl.gov/" target="_blank" rel="noreferrer noopener">Oak Ridge Leadership Computing Facility</a>.</p>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 2</h3>



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<p><strong>Towards Exascale Computation for Turbomachinery Flows</strong></p>
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<p class="has-small-font-size">Yuhang Fu, Weiqi Shen Jiahuan Cui and others (20 authors total) as part of a team from Zhejiang University, Tsinghua University, National Supercomputing Center in Wuxi, Taiyuan University of Technology, Xi’an Jiaotong-Liverpool University, University of Cambridge, University of Florida, and University of Illinois Urbana-Champaign</p>
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<p>The team developed a new large eddy simulation code to solve compressible flows in turbomachinery. They applied it to NASA’s grand challenge problem with a high-order unstructured solver for a high-pressure turbine cascade of 1.69 billion mesh elements and 865 billion degrees of freedom. The code has been calculated on Wuxi’s new Sunway supercomputer with extreme many-cores per node, up to 19.2 million cores, where each computation node consists of 384 calculation cores and six control cores.</p>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 3</h3>



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<p><strong>Exascale Multiphysics Nuclear Reactor Simulations for Advanced Designs</strong></p>
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<p class="has-small-font-size">Elia Merzaria, Steven Hamilton, Thomas Evans, and others (12 authors total) featuring a team from Pennsylvania State University, Oak Ridge National Laboratory, Argonne National Laboratory, and University of Illinois at Urbana-Champaign</p>
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<p>The team simulated an advanced nuclear reactor system coupling radiation transport with heat and fluid simulation, including the high-fidelity, high-resolution Monte-Carlo code, Shift, and the computational fluid dynamics code, NekRS. Nek5000/RS was implemented on ORNL’s Frontier system and achieved 1 billion spectral elements and 350 billion degrees of freedom, while Shift achieved very high weak-scaling on 8192 system nodes. As a result, they calculated six reactions in 214,896 fuel pin regions below 1% statistical error, yielding first-of-a-kind resolution for a Monte Carlo transport application.</p>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 4</h3>



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<p><strong>Exploring the Ultimate Regime of Turbulent Rayleigh–Bénard Convection Through Unprecedented Spectral-element Simulations</strong></p>
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<p class="has-small-font-size">Niclas Jansson, Martin Karp, Adalberto Perez, and others (12 authors total), featuring a team from KTH Royal Institute of Technology, Friedrich-Alexander-Universitat, Max Planck Computing and Data Facility, and Technische Universität Ilmenau</p>
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<p>The team developed a high-fidelity spectral-element code, Neko, which is essential for unprecedented large-scale direct numerical simulations of fully developed turbulence—all while maintaining high-performance portability on GPU-accelerated platforms. They applied a GPU-optimized preconditioner with task overlapping for the pressure-Poisson equation and <em>in situ</em> data compression. They also conducted initial runs of Rayleigh–Bénard convection at extreme scale on the LUMI and Leonardo supercomputers with up to 16,384 GPUs via a sophisticated workflow control.</p>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 5</h3>



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<p><strong>Scaling the “Memory Wall” for Multi-dimensional Seismic Processing with Algebraic Compression on Cerebras CS-2 Systems</strong></p>
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<p class="has-small-font-size">Hatem Ltaief, Yuxi Hong, Leighton Wilson, and others (six authors total) as part of a team from King Abdullah University of Science and Technology and Cerebras Systems Inc.</p>
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<p>This work exploits the high-memory bandwidth of artificial intelligence (AI)-customized Cerebras CS-2 systems for seismic processing by leveraging the low-rank matrix approximation to fit the problem on SRAM (static random-access memory) wafer-scale hardware and use many wave-equation-based algorithms that rely on multidimensional convolution operators. As a result, the team implemented a standard seismic benchmark dataset into the small local memories of Cerebras processing elements, extrapolating a worst-case load-balanced whole application execution to 48 CS-2 systems on 35,784,000 processing elements. This is a significant example of applications run on AI-customized architectures that can enable a new generation of seismic algorithms.</p>



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<h3 class="has-green-700-color has-text-color wp-block-heading">Finalist 6</h3>



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<p><strong>Scaling the Leading Accuracy of Deep Equivariant Models to Biomolecular Simulations of Realistic Size</strong></p>
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<p class="has-small-font-size">Albert Musaelian, Anders Johansson, Simon Batzner, and Boris Kozinsky as part of a team from the Harvard John A. Paulson School of Engineering and Applied Sciences</p>
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<p>The group developed the Allegro architecture to bridge the accuracy-speed tradeoff of atomistic simulations and enable the description of dynamics in structures of unprecedented complexity at quantum fidelity. This is achieved through a combination of innovative model architecture, massive parallelization, and model implementations optimized for efficient GPU utilization. Allegro’s scalability is illustrated by a nanoseconds-long stable simulation of protein dynamics and up to 44-million atom structure of a complete, all-atom, explicitly solvated HIV capsid on the Perlmutter system at the <a href="https://www.nersc.gov/" target="_blank" rel="noreferrer noopener">National Energy Research Scientific Computing Center</a>. They achieved strong scaling up to 100 million atoms.</p>



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<h2 class="wp-block-heading">More on Gordon Bell Awards</h2>



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<p>The ACM Gordon Bell Prize for Climate Modelling is a new award to be presented during a<a href="/awards/"> special ceremony</a> at SC23 in Denver. Learn more!</p>
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<div class="wp-block-button"><a class="wp-block-button__link wp-element-button" href="https://sc23.supercomputing.org/2023/09/eyes-beyond-the-prize/"><i class="fas fa-trophy"></i> gordon Bell Climate Modelling</a></div>
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