Six Argonne Researchers Receive DOE Early Career Research Program Awards

June 29, 2020

June 29, 2020 — Argonne scientists Michael Bishof, Maria Chan, Marco Govoni, Alessandro Lovato, Bogdan Nicolae and Stefan Wild are among 76 scientists across the nation awarded funding for their work through DOE’s Early Career Research Program.

Aerial view of Argonne National Laboratory. (Image by Argonne National Laboratory.)

The program, now in its eleventh year, awards each recipient with at least $500,000 per year for five years to advance their research. Offered by DOE’s Office of Science, the award is designed to bolster the nation’s scientific workforce by providing support to exceptional researchers during crucial early career years, when many scientists perform their most formative work. The awardees were selected from a large and competitive pool of university- and national laboratory-based applicants.

By bolstering our commitment to the scientific community, we invest in our nation’s next generation of innovators.” — Under Secretary for Science Paul Dabbar

The Department of Energy is proud to support funding that will sustain America’s scientific workforce and create opportunities for our researchers to remain competitive on the world stage,” said DOE Under Secretary for Science Paul Dabbar. ​By bolstering our commitment to the scientific community, we invest in our nation’s next generation of innovators.”

Michael Bishof, an assistant scientist in Argonne’s Physics division, is using quantum simulators to accelerate the impact of quantum information science on nuclear physics. (Image by Mark Lopez, Argonne National Laboratory.)

Michael Bishof

Quantum devices, such as quantum computers, provide a novel approach to solve significant problems in nuclear physics that cannot be solved using classical computers.

Such problems lie at the heart of nuclear physics: to fundamentally understand how properties of nuclei and their components, protons and neutrons, emerge from the underlying theory of quantum chromodynamics (QCD) — a framework to describe interactions between quarks and gluons, the building blocks of protons and neutrons. While general purpose quantum computers have demonstrated rapid progress in recent years, they are still many years away from addressing these questions.

Michael Bishof, a physicist in Argonne’s Physics division, aims to accelerate the impact of quantum information science on nuclear physics. Bishof’s goal is to develop a quantum simulator that is tailored to address specific challenges in this field. In contrast to a quantum computer, which maps each problem to a set of standard operations on quantum bits, or qubits, a quantum simulator manipulates an experimental apparatus to behave like the system under investigation.

The specific system Bishof will use for this project is an array of laser-trapped ytterbium atoms.

This experimental platform offers resource-efficient simulations of a simplified — but rich — model for interacting quarks, which will enable rapid progress toward simulations of poorly understood phenomena in nuclear physics and inform future simulations of more complex theories as quantum devices improve.

QCD presents a rather annoying puzzle to nuclear physics. It is impossible to directly observe the behavior of quarks and gluons, and not even the most powerful supercomputers can calculate how they work together to give protons, neutrons and nuclei the properties we observe in experiments,” said Bishof. ​Quantum devices could one day help solve this puzzle, and this research will accelerate progress toward that goal.”

Bishof’s research was selected for funding by DOE’s Office of Nuclear Physics.

Maria Chan, a scientist at Argonne’s CNM, is one of the 76 scientists across the nation to receive DOE​’s Early Career Research Program award for her work in computational materials science. (Image by Mark Lopez, Argonne National Laboratory.)

Maria Chan

To design new and improved materials for energy storage and conversion, scientists must understand and control existing materials. Such understanding depends on precise knowledge of the atomic and electronic structures of materials during synthesis and operation. Materials characterization using X-ray, electron, laser and scanning probes can, in principle, contribute to this knowledge, but interpreting the data is a substantial challenge.

Maria Chan, a scientist at Argonne’s Center for Nanoscale Materials (CNM), a DOE Office of Science User Facility, is developing a theory-informed artificial intelligence (AI) and machine learning (ML) toolkit for accelerating the characterization of materials.

The AI and ML computational framework will allow researchers to determine atomic positions in real time from experimental characterization data. The user friendly toolkit is titled FANTASTX (Fully Automated Nanoscale To Atomistic Structure from Theory and eXperiment).

Implementing the FANTASTX framework involves developing and connecting approaches for the simulation of X-ray, electron, laser and scanning probe data; adopting and applying pattern recognition and computer vision algorithms; and constructing and training ML models to find the relationship between experimental data and the local atomic environment in a material sample.

Real-time determination of atomic-scale structural information will accelerate the understanding and design of nanoscale materials for energy applications and more.

The time is ripe to exploit the confluence of computational modeling, advanced characterization and AI to accelerate the way we investigate materials,” said Chan. ​Enabling real time feedback will go a long way towards autonomous experimentation, self-driving operando studies and materials discovery. Argonne — with its expertise in computational materials science, world-class characterization tools and AI and data — is an ideal place to carry out this research.”

Chan’s research was selected for funding by DOE’s Office of Basic Energy Sciences.

Marco Govoni, a scientist in Argonne’s MSD and CME, aims to create computational models to accelerate development of materials for quantum applications. (Image by University of Chicago.)

Marco Govoni

The development of quantum technologies that can store and manipulate information has the potential to provide groundbreaking discoveries that can transform computing technologies and generate a new class of nanoscale sensors.

Marco Govoni, a materials scientist in Argonne’s Materials Science division (MSD) and Center for Molecular Engineering (CME), aims to provide broad and predictive theoretical models to help accelerate the experimental examination of candidate materials for quantum applications.

The electronic states of defects in semiconductors are promising units of quantum information because they combine the quantum properties of isolated atoms with the convenience and scalability of a solid-state host system.

Govoni will develop new computational capabilities to model light-activated mechanisms within quantum materials where contradictory needs for isolation and accessibility must be reconciled in order to obtain robust quantum functionality.

I am grateful to the Department of Energy for the award. This is an incredible opportunity to solve a materials science challenge and explore new and exciting paths for computing, communication and sensing,” said Govoni.

The project will leverage advanced computational techniques to provide a quantitative description of a wide range of materials to better guide and understand experimental activities. In particular, Govoni will harness pre-exascale computing, quantum computing and AI, while taking advantage of Argonne’s expertise and world-class user facilities.

Govoni’s research was selected for funding by DOE’s Office of Basic Energy Sciences.

Alessandro Lovato, a physicist in Argonne’s Physics division, is developing novel computational methods to further scientific understanding of nuclear behavior. (Image by Alessandro Lovato, Argonne National Laboratory.)

Alessandro Lovato

Alessandro Lovato, a physicist in Argonne’s Physics division, aims to aid domestic nuclear experimental programs by providing a unified theoretical picture of atomic nuclei in terms of the individual interactions among their constituents: protons and neutrons.

Lovato is developing novel computational methods, such as artificial neural networks and deep learning algorithms, in order to probe these interactions.

The research project will produce breakthrough developments of existing computational analysis methods, enabling the study of nuclei with a higher number of protons and neutrons than is currently possible with limited, existing quantum Monte Carlo computational approaches.

I will leverage forthcoming exascale computing resources, including Argonne’s Aurora — set to be deployed in 2021 — as well as machine learning techniques, to foster our understanding of short- and long-range dynamics of atomic nuclei,” said Lovato.

Testing the structure of atomic nuclei and their reactions at low energies is the primary focus of several domestic experimental facilities, including the Argonne Tandem Linac Accelerator System (ATLAS), a DOE Office of Science User Facility; the National Superconducting Cyclotron Laboratory; and the Facility for Rare Isotope Beams at Michigan State University. Experiments at Thomas Jefferson Laboratory and the forthcoming Electron-Ion Collider at DOE’s Brookhaven National Laboratory also probe the internal structure and behavior of the nucleus.

Besides covering many areas in nuclear physics, this research has critical applications in high-energy physics, specifically on the study of neutrino oscillation. It will also impact astrophysics, as nuclear dynamics is imprinted in the gravitational waves and neutrino emission signals of merging neutron stars.

Lovato’s research was selected for funding by DOE’s Office of Nuclear Physics.

Bogdan Nicolae is a computer scientist in Argonne’s MCS division whose research will enable scientists to extract meaningful insight from large data sets. (Image by Argonne National Laboratory.)

Bogdan Nicolae

Bogdan Nicolae is a computer scientist in Argonne’s Mathematics and Computer Science (MCS) division. His project, called DataStates, is aimed at efficiently storing and processing the massive datasets generated at warp speeds by modern supercomputers and scientific instruments. In this context, the need to capture, search and reuse datasets on the fly as they are calculated is amplified by the increasing convergence between simulations and the application of machine learning to discovery science.

Current data management approaches do not have the required data manipulation capabilities or the scalability, performance and space efficiency to perform well on leadership-class computing systems. Nicolae’s research will involve development of a new data model in which users do not interact with a data service to read and write datasets directly, but instead, tag their datasets with certain attributes or properties. Implementing the model will automatically add snapshots of the datasets — called data states — into the lineage, providing a data history that can be used to search, reuse and understand the evolution of the datasets.

Supercomputers and scientific instruments are generating more data at an accelerated rate, making it increasingly difficult to efficiently store and manipulate data at a large scale,” said Nicolae. ​To address this problem, DataStates explores transformative data models and techniques at the intersection of high-performance computing, artificial intelligence and big data analytics. I am grateful to DOE for this opportunity and excited to leverage the facilities we have here at Argonne, where Aurora, one of the first exascale supercomputers, will arrive in 2021.”

The project will improve research in multiple areas, allowing scientists to extract meaningful insight from the data deluge, improving data reproducibility, encouraging collaboration and development of new algorithms and ideas, and facilitating advances in AI.

Nicolae’s research was selected for funding by DOE’s Office of Advanced Scientific Computing Research.

Stefan Wild is a computational mathematician in Argonne’s Mathematics and Computer Science division whose research addresses complex design, decision and control problems. (Image by Mark Lopez, Argonne National Laboratory.)

Stefan Wild

The growing interest in applying ML and AI methods in the discovery sciences has expanded optimization problems. Stefan Wild is a computational mathematician in Argonne’s MCS division, whose research addresses complex design, decision and control problems.

Whereas traditional mathematical optimization methods are limited by requirements for derivative information, Wild’s research centers on methods that can help scientists train and calibrate models, reduce empirical risk and design better experiments, even when such requirements cannot be met.

Application of these methods raises numerous challenges. Scientific phenomena are complex, accurate simulations are expensive and research often requires characterization at multiple size and time scales in a variety of high-performance computing environments.

Wild is undertaking an ambitious project to address these challenges by developing a set of novel algorithms — the set of rules or ​recipe” that a computer uses to solve problems — and numerical methods that can be used to improve the efficiency of scientific machine learning. His project will establish a robust mathematical foundation for scientific machine learning and optimization in increasingly complex high-performance computing environments and inspire use of the novel mathematic methods in diverse science domains.

I’m excited to have this opportunity to tackle these challenging mathematical problems and am grateful for being in an environment with so many exceptional colleagues,” Wild said.

Wild’s research was selected for funding by DOE’s Office of Advanced Scientific Computing Research.

To view all the graphics, visit https://www.anl.gov/article/six-argonne-researchers-receive-doe-early-career-research-program-awards

About Argonne’s Center for Nanoscale Materials

The Center for Nanoscale Materials is one of the five DOE Nanoscale Science Research Centers, premier national user facilities for interdisciplinary research at the nanoscale supported by the DOE Office of Science. Together the NSRCs comprise a suite of complementary facilities that provide researchers with state-of-the-art capabilities to fabricate, process, characterize and model nanoscale materials, and constitute the largest infrastructure investment of the National Nanotechnology Initiative. The NSRCs are located at DOE’s Argonne, Brookhaven, Lawrence Berkeley, Oak Ridge, Sandia and Los Alamos National Laboratories. For more information about the DOE NSRCs, please visit https://​sci​ence​.osti​.gov/​U​s​e​r​-​F​a​c​i​l​i​t​i​e​s​/​U​s​e​r​-​F​a​c​i​l​i​t​i​e​s​-​a​t​-​a​-​G​lance.

About Argonne National Laboratory

Argonne National Laboratory seeks solutions to pressing national problems in science and technology. The nation’s first national laboratory, Argonne conducts leading-edge basic and applied scientific research in virtually every scientific discipline. Argonne researchers work closely with researchers from hundreds of companies, universities, and federal, state and municipal agencies to help them solve their specific problems, advance America’s scientific leadership and prepare the nation for a better future. With employees from more than 60 nations, Argonne is managed by UChicago Argonne, LLC for the U.S. Department of Energy’s Office of Science.

About The U.S. Department of Energy’s Office of Science

The U.S. Department of Energy’s Office of Science is the single largest supporter of basic research in the physical sciences in the United States and is working to address some of the most pressing challenges of our time. For more information, visit https://​ener​gy​.gov/​s​c​ience.


Source: Savannah Mitchem and Mary Fitzpatrick, Argonne National Laboratory

 

Subscribe to HPCwire's Weekly Update!

Be the most informed person in the room! Stay ahead of the tech trends with industry updates delivered to you every week!

Stanford HAI AI Index Report: Science and Medicine

April 29, 2024

While AI tools are incredibly useful in a variety of industries, they truly shine when applied to solving problems in scientific and medical discovery. Researching both the world around us and the bodies we inhabit has c Read more…

Atos/Eviden Find a Strategic Path Forward

April 29, 2024

French IT giant Atos seems to have found a path forward. In recent years, Atos has been struggling financially and has not had much luck finding a buyer for some or all of its technology. Atos is the parent of the Read more…

IBM Delivers Qiskit 1.0 and Best Practices for Transitioning to It

April 29, 2024

After spending much of its December Quantum Summit discussing forthcoming quantum software development kit Qiskit 1.0 — the first full version — IBM quietly debuted the latest version (February 15) and recently provi Read more…

Edge-to-Cloud: Exploring an HPC Expedition in Self-Driving Learning

April 25, 2024

The journey begins as Kate Keahey's wandering path unfolds, leading to improbable events. Keahey, Senior Scientist at Argonne National Laboratory and the University of Chicago, leads Chameleon. This innovative projec Read more…

Quantum Internet: Tsinghua Researchers’ New Memory Framework could be Game-Changer

April 25, 2024

Researchers from the Center for Quantum Information (CQI), Tsinghua University, Beijing, have reported successful development and testing of a new programmable quantum memory framework. “This work provides a promising Read more…

Intel’s Silicon Brain System a Blueprint for Future AI Computing Architectures

April 24, 2024

Intel is releasing a whole arsenal of AI chips and systems hoping something will stick in the market. Its latest entry is a neuromorphic system called Hala Point. The system includes Intel's research chip called Loihi 2, Read more…

Stanford HAI AI Index Report: Science and Medicine

April 29, 2024

While AI tools are incredibly useful in a variety of industries, they truly shine when applied to solving problems in scientific and medical discovery. Research Read more…

IBM Delivers Qiskit 1.0 and Best Practices for Transitioning to It

April 29, 2024

After spending much of its December Quantum Summit discussing forthcoming quantum software development kit Qiskit 1.0 — the first full version — IBM quietly Read more…

Shutterstock 1748437547

Edge-to-Cloud: Exploring an HPC Expedition in Self-Driving Learning

April 25, 2024

The journey begins as Kate Keahey's wandering path unfolds, leading to improbable events. Keahey, Senior Scientist at Argonne National Laboratory and the Uni Read more…

Quantum Internet: Tsinghua Researchers’ New Memory Framework could be Game-Changer

April 25, 2024

Researchers from the Center for Quantum Information (CQI), Tsinghua University, Beijing, have reported successful development and testing of a new programmable Read more…

Intel’s Silicon Brain System a Blueprint for Future AI Computing Architectures

April 24, 2024

Intel is releasing a whole arsenal of AI chips and systems hoping something will stick in the market. Its latest entry is a neuromorphic system called Hala Poin Read more…

Anders Dam Jensen on HPC Sovereignty, Sustainability, and JU Progress

April 23, 2024

The recent 2024 EuroHPC Summit meeting took place in Antwerp, with attendance substantially up since 2023 to 750 participants. HPCwire asked Intersect360 Resear Read more…

AI Saves the Planet this Earth Day

April 22, 2024

Earth Day was originally conceived as a day of reflection. Our planet’s life-sustaining properties are unlike any other celestial body that we’ve observed, Read more…

Kathy Yelick on Post-Exascale Challenges

April 18, 2024

With the exascale era underway, the HPC community is already turning its attention to zettascale computing, the next of the 1,000-fold performance leaps that ha Read more…

Nvidia H100: Are 550,000 GPUs Enough for This Year?

August 17, 2023

The GPU Squeeze continues to place a premium on Nvidia H100 GPUs. In a recent Financial Times article, Nvidia reports that it expects to ship 550,000 of its lat Read more…

Synopsys Eats Ansys: Does HPC Get Indigestion?

February 8, 2024

Recently, it was announced that Synopsys is buying HPC tool developer Ansys. Started in Pittsburgh, Pa., in 1970 as Swanson Analysis Systems, Inc. (SASI) by John Swanson (and eventually renamed), Ansys serves the CAE (Computer Aided Engineering)/multiphysics engineering simulation market. Read more…

Intel’s Server and PC Chip Development Will Blur After 2025

January 15, 2024

Intel's dealing with much more than chip rivals breathing down its neck; it is simultaneously integrating a bevy of new technologies such as chiplets, artificia Read more…

Comparing NVIDIA A100 and NVIDIA L40S: Which GPU is Ideal for AI and Graphics-Intensive Workloads?

October 30, 2023

With long lead times for the NVIDIA H100 and A100 GPUs, many organizations are looking at the new NVIDIA L40S GPU, which it’s a new GPU optimized for AI and g Read more…

Choosing the Right GPU for LLM Inference and Training

December 11, 2023

Accelerating the training and inference processes of deep learning models is crucial for unleashing their true potential and NVIDIA GPUs have emerged as a game- Read more…

Baidu Exits Quantum, Closely Following Alibaba’s Earlier Move

January 5, 2024

Reuters reported this week that Baidu, China’s giant e-commerce and services provider, is exiting the quantum computing development arena. Reuters reported � Read more…

AMD MI3000A

How AMD May Get Across the CUDA Moat

October 5, 2023

When discussing GenAI, the term "GPU" almost always enters the conversation and the topic often moves toward performance and access. Interestingly, the word "GPU" is assumed to mean "Nvidia" products. (As an aside, the popular Nvidia hardware used in GenAI are not technically... Read more…

Shutterstock 1606064203

Meta’s Zuckerberg Puts Its AI Future in the Hands of 600,000 GPUs

January 25, 2024

In under two minutes, Meta's CEO, Mark Zuckerberg, laid out the company's AI plans, which included a plan to build an artificial intelligence system with the eq Read more…

Leading Solution Providers

Contributors

China Is All In on a RISC-V Future

January 8, 2024

The state of RISC-V in China was discussed in a recent report released by the Jamestown Foundation, a Washington, D.C.-based think tank. The report, entitled "E Read more…

Nvidia’s New Blackwell GPU Can Train AI Models with Trillions of Parameters

March 18, 2024

Nvidia's latest and fastest GPU, codenamed Blackwell, is here and will underpin the company's AI plans this year. The chip offers performance improvements from Read more…

Shutterstock 1285747942

AMD’s Horsepower-packed MI300X GPU Beats Nvidia’s Upcoming H200

December 7, 2023

AMD and Nvidia are locked in an AI performance battle – much like the gaming GPU performance clash the companies have waged for decades. AMD has claimed it Read more…

Eyes on the Quantum Prize – D-Wave Says its Time is Now

January 30, 2024

Early quantum computing pioneer D-Wave again asserted – that at least for D-Wave – the commercial quantum era has begun. Speaking at its first in-person Ana Read more…

The GenAI Datacenter Squeeze Is Here

February 1, 2024

The immediate effect of the GenAI GPU Squeeze was to reduce availability, either direct purchase or cloud access, increase cost, and push demand through the roof. A secondary issue has been developing over the last several years. Even though your organization secured several racks... Read more…

GenAI Having Major Impact on Data Culture, Survey Says

February 21, 2024

While 2023 was the year of GenAI, the adoption rates for GenAI did not match expectations. Most organizations are continuing to invest in GenAI but are yet to Read more…

Intel Plans Falcon Shores 2 GPU Supercomputing Chip for 2026  

August 8, 2023

Intel is planning to onboard a new version of the Falcon Shores chip in 2026, which is code-named Falcon Shores 2. The new product was announced by CEO Pat Gel Read more…

Intel’s Xeon General Manager Talks about Server Chips 

January 2, 2024

Intel is talking data-center growth and is done digging graves for its dead enterprise products, including GPUs, storage, and networking products, which fell to Read more…

  • arrow
  • Click Here for More Headlines
  • arrow
HPCwire