Alumnus Named to Chilean Academy of Sciences

Alumnus Juan Alejandro Valdivia has been named a corresponding member of the Chilean Academy of Sciences

Valdivia as a UMD student.Valdivia as a UMD student.

Valdivia received both his undergraduate and graduate degrees at the University of Maryland. He earned his B.S. magna cum laude in 1991 in three majors (physics, mathematics and astronomy). He received his Ph.D. in physics under the direction of Professor Dennis Papadopoulos in 1997. His dissertation on “The Physics of High-Altitude Lightning” received the 1998 Fred Scarf Award given to the best Ph.D. dissertation in Space Physics and Aeronomy by the American Geophysical Union.  

Valdivia currently holds the position of Full Professor in the Department of Physics of the University of Chile. His experience and contributions span various areas, from plasma physics and nonlinear phenomena to the theory of chaos, complex systems, astrophysics and physics in general. He has supervised more than 20 Ph.D. and numerous M.S. theses, has served as Chairman of the Physics Department and has left a significant mark in the editorial field and as a reviewer of projects at the international level.

María Cecilia Hidalgo of the Academy congratulates Valdivia.María Cecilia Hidalgo of the Academy congratulates Valdivia.At the induction ceremony, the president of the Chilean Academy of Sciences, Dr. María Cecilia Hidalgo, noted that "The selection of Dr. Alejandro Valdivia to our Academy is a source of great pride. His outstanding trajectory and contributions in the field of physics are an invaluable contribution to the Chilean scientific community. We are confident that their impact will further enrich our commitment to scientific progress in the country. We warmly welcome the Dr. Valdivia and look forward to working together on the promotion and development of science in Chile."

Gates Honored by Harvard University

Sylvester James Gates, Jr. was awarded an honorary doctorate of science during Harvard University’s 373rd Commencement Exercises on May 23, 2024.  Honorary degree recipients Jennie Chin Hansen (clockwise from top left), Sylvester James Gates Jr., Lawrence S. Bacow, Joy Harjo-Sapulpa, Gustavo Adolfo Dudamel Ramírez, and Maria Ressa with interim President Alan Garber and interim Provost John Manning.  Credit: Stephanie Mitchell/Harvard Staff PhotographerHonorary degree recipients Jennie Chin Hansen (clockwise from top left), Sylvester James Gates Jr., Lawrence S. Bacow, Joy Harjo-Sapulpa, Gustavo Adolfo Dudamel Ramírez, and Maria Ressa with interim President Alan Garber and interim Provost John Manning. Credit: Stephanie Mitchell/Harvard Staff Photographer

A member of the National Academy of Sciences and recipient of the National Medal of Science, Gates holds the Clark Leadership Chair in Science and a joint appointment in the Department of Physics and the School of Public Policy at the University of Maryland. He is also a Distinguished University Professor and a University System of Maryland Regents Professor.

Gates is well-known for his seminal work in supersymmetry, supergravity and string theory. He has made milestone discoveries in the mathematics of particle theory and the geometry of gravity. In addition to his research achievements, Gates also distinguished himself as a powerful advocate for education and an ambassador for science around the world.

Gates received the 2011 National Medal of Science “for contributions to the mathematics of supersymmetry in particle, field, and string theories and extraordinary efforts to engage the public on the beauty and wonder of fundamental physics.” He served on the President’s Council of Advisors on Science and Technology (PCAST) under Barack Obama and was the vice president of the Maryland State Board of Education. Gates was the recipient of the American Institute of Physics’ 2021 Andrew Gemant Award, given in recognition of contributions to the cultural, artistic, or humanistic dimension of physics. 

He is the author (with Cathie Pelletier) of Proving Einstein Right: The Daring Expeditions that Changed How We Look at the Universe, a well-reviewed tale of scientific passion and pursuit in the early 20th century.

Gates joined the UMD physics faculty in 1984. He has also held appointments at the Massachusetts Institute of Technology, Howard University, Dartmouth College and Brown University. He has served as president of both the National Society of Black Physicists and the American Physical Society.

In addition to the new recognition from Harvard, Gates has been awarded honorary degrees from South Africa’s University of the Witwatersrand, the University of Johannesburg, Brown University, the University of Pennsylvania, Memorial University of Newfoundland, NYU-Poly, Morgan State University, the University of Western Australia, Loyola University Chicago and Georgetown University.

Harvard also conferred honorary degrees on Jennie Chin Hansen, Lawrence S. Bacow, Joy Harjo-Sapulpa, Gustavo Adolfo Dudamel Ramirez and Maria Ressa.

 

 

Waldych, Chen Receive Endowed Undergraduate Awards

Every year, the College of Computer, Mathematical, and Natural Sciences (CMNS) Alumni Network offers summer awards to help undergraduates defray costs related to conducting research, attending conferences or interning.  Two physics majors, Patrick Chen and Sarah Waldych, were among this year's receipients. Patrick Chen/Sarah WaldychPatrick Chen/Sarah Waldych

Read below how this year’s award recipients plan to further their professional and career development with funding from the CMNS Alumni Network Endowed Undergraduate Awards program.

Sarah Waldych

Since her freshman year, junior physics and astronomy double major Sarah Waldych has been actively involved in particle physics research at UMD. As part of this research, Waldych contributed to the construction upgrades of the Compact Muon Solenoid (CMS), a particle detector at the European Council for Nuclear Research. She has traveled internationally and domestically for her studies—including traveling to Hamburg, Germany, to study detector physics and recently delivering a feasibility study at the Future Circular Collider workshop at the Massachusetts Institute of Technology.

This summer, Waldych will apply this knowledge at the University of Virginia by helping construct particle detectors that will be utilized in the new high luminosity upgrade within the CMS in Europe. 

“The financial support provided by this award will be instrumental in covering my travel and living expenses during my time at the University of Virginia, allowing me to continue my involvement in these significant research efforts,” Waldych said.

Patrick Chen

Junior physics and mathematics double major Patrick Chen will use his award funding to travel to Oak Ridge National Laboratory and gain hands-on experience with neutron scattering experiments. Chen modeled the magnetic behavior of crystals while interning with the National Institute of Standards and Technology (NIST) last summer. He looks forward to working with Oak Ridge instrument scientists to perform neutron scattering and reconcile the results with the model he developed last summer. 

“My ability to travel with my mentor, [NIST Instrument Scientist] Jonathan Gaudet, to this experiment this summer depended on me receiving this award,” Chen said. “So when I saw that I was selected for the award, I was extremely excited.”

This experience will be especially useful because Chen hopes to pursue graduate studies in condensed matter physics, where neutron scattering is an important method of studying and characterizing materials. 

Yoshi Chettri

Passionate about contributing to the field of medicine, junior biological sciences major Yoshi Chettri aims to pursue a Ph.D. in medical sciences after graduating. Chettri’s summer research in UMD’s Fischell Department of Bioengineering will focus on designing a vessel-on-a-chip model for vascular endothelium cells to evaluate the effects of everolimus, an mTOR inhibitor, on cell morphology, motility, cell-cell junctions and more. 

This research is pivotal in our lab’s efforts to understand the effect of mTOR-inhibiting drugs on the vascular endothelium. After completing this project, Chettri hopes to share his findings at a conference.

“This financial support is not just a monetary contribution, but a significant encouragement that will enable me to further my academic and professional endeavors this summer,” Chettri said. “The opportunity to oversee an entire project will be a unique and invaluable experience. I view this project as a pivotal step in fulfilling my ambition to contribute significantly to the world of medicine.”

Hari Kailad

Sophomore computer science major Hari Kailad works in the Maryland Cybersecurity Center (MC2) on research problems related to cryptography. He is working with Electrical and Computer Engineering Associate Professor Dana Dachman-Soled and Intel on estimating the security hardness of cryptosystems using extra side channel information. 

“This funding will allow me to spend the summer working with MC2 on this project and provide an opportunity to focus on my research to work towards a Ph.D.,” Kailad said. “I am really looking forward to learning more about lattice-based security, ideal lattices and side channels. Post-quantum cryptography is relatively new, and determining the hardness of lattice-based problems is quite important.”

Outside of his research with MC2, Kailad is a member of the Cybersecurity Club and teaches a class on binary exploitation, where students learn how to identify and exploit vulnerabilities. 

HaeSung Lee

Born and raised in South Korea, junior biological sciences major HaeSung Lee has a profound interest in understanding neurological gene expression and its correlation with behavior changes. As an undergraduate researcher in Biology Assistant Professor Scott Juntti’s lab, Lee studies the olfactory senses of cichlid fish and the physiological mechanisms underlying sex-specific responses to pheromones. Lee also serves as a peer research mentor for the First-year Innovation and Research Experience (FIRE) Molecular Diagnostics stream, where she guides student research groups and designs methods for detecting breast cancer biomarkers.

This award will allow Lee to live in Boston this summer for her internship at the Beth Israel Sadhguru Center for Conscious Planet, where she will research postoperative delirium in cardiac patients.

“I am thrilled to join the clinical research team this summer to investigate the effects of medications on neurocognitive function and chronic pain following surgery,” Lee said. “I am also delighted to connect with individuals in this field and expand my knowledge through communication.”

Ying-Rong (Megan) Liu

Junior neuroscience and animal science double major Ying-Rong (Megan) Liu, an international student from Taiwan, works in Animal and Avian Sciences Assistant Professor Andrew Broadbent’s molecular virology research lab. Liu’s research on avian reovirus and infectious bursal disease virus has potential implications for cancer treatment. 

Liu plans to use this award for registration and travel expenses to present her research this June at the American Society for Virology annual meeting—the first conference Liu has attended.

“Presenting at this conference will be a major step forward for both my career and personal endeavors,” Liu said. “The experience will help me develop essential skills in presenting data and scientific communication, which will help me in reaching my career goals as I am planning to apply for a master’s or Ph.D. program in virology or immunology and aiming to become a research scientist in the future.”

Adam Melrod

Math has always been “beautiful” to junior mathematics major Adam Melrod, who plans to use his award funding to attend a course on motivic homotopy theory at the Park City Mathematics Institute.

Melrod conducts research at the intersection of model theory and algebraic geometry. In his free time, he collaborates with other UMD students interested in logic to update the online model theory Wiki—a passion project to organize model theory knowledge in one “easily referenceable and searchable place.”

“This award will provide me with the opportunity to explore many new avenues within my field and engage in research that would have otherwise been financially infeasible,” Melrod said. 

Disha Sanwal

Junior chemistry and mathematics dual-degree student Disha Sanwal joined Chemistry and Biochemistry Professor Pratyush Tiwary’s lab during her first year of college. There, while developing computational methods to explore hard-to-model biophysical systems, she discovered her appreciation for math and decided to pick up her second degree in mathematics. 

This summer, Sanwal will put her knowledge to work at Schrödinger in New York City as a computational research intern. She also plans to attend the 2024 MolSSI MAPOL Computational Chemistry workshop at the University of North Carolina at Charlotte in June. 

Alexander Wolfson

Alexander Wolfson is on the path to medical school as a sophomore chemistry major. This summer, he will study an ocular surface disease with University of Maryland Medical System Assistant Professor of Ophthalmology Sarah Sunshine

“I am most looking forward to spending time at the clinic as well as the lab, combining research with clinical care and learning from a great physician,” Wolfson said. “I was so happy when I found out that I was a recipient of this award because it will be a major help to me as I do research in Baltimore, away from home.”

On campus, Wolfson is an undergraduate research assistant in Chemistry and Biochemistry Professor Lawrence Sita’s lab and serves as a recruitment ambassador for CMNS. 

Are you interested in supporting undergraduate students in their professional development and research activities? Consider donating to the CMNS Alumni Network Current-Use Undergraduate Award Fund.

Original story: https://cmns.umd.edu/news-events/news/alumni-network-endowed-undergraduate-awards-2024

Attacking Quantum Models with AI: When Can Truncated Neural Networks Deliver Results?

Currently, computing technologies are rapidly evolving and reshaping how we imagine the future. Quantum computing is taking its first toddling steps toward delivering practical results that promise unprecedented abilities. Meanwhile, artificial intelligence remains in public conversation as it’s used for everything from writing business emails to generating bespoke images or songs from text prompts to producing deep fakes.

Some physicists are exploring the opportunities that arise when the power of machine learning—a widely used approach in AI research—is brought to bear on quantum physics. Machine learning may accelerate quantum research and provide insights into quantum technologies, and quantum phenomena present formidable challenges that researchers can use to test the bounds of machine learning.

When studying quantum physics or its applications (including the development of quantum computers), researchers often rely on a detailed description of many interacting quantum particles. But the very features that make quantum computing potentially powerful also make quantum systems difficult to describe using current computers. In some instances, machine learning has produced descriptions that capture the most significant features of quantum systems while ignoring less relevant details—efficiently providing useful approximations.An artistic rendering of a neural network consisting of two layers. The top layer represents a real collection of quantum particles, like atoms in an optical lattice. The connections with the hidden neurons below account for the particles’ interactions. (Credit: Modified from original artwork created by E. Edwards/JQI)An artistic rendering of a neural network consisting of two layers. The top layer represents a real collection of quantum particles, like atoms in an optical lattice. The connections with the hidden neurons below account for the particles’ interactions. (Credit: Modified from original artwork created by E. Edwards/JQI)

In a paper published May 20, 2024, in the journal Physical Review Research, two researchers at JQI presented new mathematical tools that will help researchers use machine learning to study quantum physics. And using these tools, they have identified new opportunities in quantum research where machine learning can be applied.

“I want to understand the limit of using traditional classical machine learning tools to understand quantum systems,” says JQI graduate student Ruizhi Pan, who was the first author of the paper.

The standard tool for describing collections of quantum particles is the wavefunction, which provides a complete description of the quantum state of the particles. But obtaining the wavefunction for more than a handful of particles tends to require impractical amounts of time and resources.

Researchers have previously shown that AI can approximate some families of quantum wavefunctions using fewer resources. In particular, physicists, including CMTC Director and JQI Fellow Sankar Das Sarma, have studied how to represent quantum states using neural networks—a common machine learning approach in which webs of connections handle information in ways reminiscent of the neurons firing in a living brain. Artificial neural networks are made of nodes—sometimes called artificial neurons—and connections of various strengths between them.

Today, neural networks take many forms and are applied to diverse applications. Some neural networks analyze data, like inspecting the individual pixels of a picture to tell if it contains a person, while others model a process, like generating a natural-sounding sequence of words given a prompt or selecting moves in a game of chess. The webs of connections formed in neural networks have proven useful at capturing hard-to-identify relationships, patterns and interactions in data and models, including the unique interactions of quantum particles described by wavefunctions.

But neural networks aren’t a magic solution to every situation or even to approximating every wavefunction. Sometimes, to deliver useful results, the network would have to be too big and complex to practically implement. Researchers need a strong theoretical foundation to understand when they are useful and under what circumstances they fall prey to errors.

In the new paper, Pan and JQI Fellow Charles Clark investigated a type of neural network called a restricted Boltzmann machine (RBM), in which the nodes are split into two layers and connections are only allowed between nodes in different layers. One layer is called the visible, or input, layer, and the second is called the hidden layer, since researchers generally don’t directly manipulate or interpret it as much as they do the visible layer.

“The restricted Boltzmann machine is a concept that is derived from theoretical studies of classical ‘spin glass’ systems that are models of disordered magnets,” Clark says. “In the 1980s, Geoffrey Hinton and others applied them to the training of artificial neutral networks, which are now widely used in artificial intelligence. Ruizhi had the idea of using RBMs to study quantum spin systems, and it turned out to be remarkably fruitful.”

For RBM models of quantum systems, physicists frequently use each node of the visible layer to represent a quantum particle, like an individual atom, and use the connections made through the hidden layer to capture the interactions between those particles. As the size and complexity of quantum states grow, a neural net increasingly needs more and more hidden nodes to keep up, eventually becoming unwieldy.

However, the exact relationships between the complexity of a quantum state, the number of hidden nodes used in a neural network, and the resulting accuracy of the approximation are difficult to pin down. This lack of clarity is an example of the black box problem that permeates the field of machine learning. It exists because researchers don’t meticulously engineer the intricate web of a neural network but instead rely on repeated steps of trial and error to find connections that work. This approach often delivers more accurate or efficient results than researchers know how to achieve by working from first principles, but it doesn’t explain why the connections that make up the neural network deliver the desired result—so the results might as well have come from a black box. This built-in inscrutability makes it difficult for physicists to know which quantum models are practical to tackle with neural networks.

Pan and Clark decided to peek behind the veil of the hidden layer and investigate how neural networks boil down the essence of quantum wavefunctions. To do this, they focused on neural network models of a one-dimensional line of quantum spins. A spin is like a little magnetic arrow that wants to point along a magnetic field and is key to understanding how magnets, superconductors and most quantum computers function.

Spins naturally interact by pushing and pulling on each other. Through chains of interactions, even two distant spins can become correlated—meaning that observing one spin also provides information about the other spin. All the correlations between particles tend to drive quantum states into unmanageable complexity. 

Pan and Clark did something that at first glance might not seem relevant to the real world: They imagined and analyzed a neural network that uses infinitely many hidden nodes to model a fixed number of spins.

“In reality of course we don't hope to use a neural network with an infinitely large system size,” Pan says. “We often want to use finite size neural networks to do the numerical computations, so we need to analyze the effects of doing truncations.”

Pan and Clark already knew that using more hidden nodes generally produced more accurate results, but the research community only had a fuzzy understanding of how the accuracy suffers when fewer hidden nodes are used. By backing up and getting a view of the infinite case, Pan and Clark were able to describe the hypothetical, perfectly accurate representation and observe the contributions made by the infinite addition of hidden nodes. The nodes don’t all contribute equally. Some capture the basics of significant features, while many contribute small corrections.

The pair developed a method that sorts the hidden nodes into groups based on how much correlation they capture between spins. Based on this approach, Pan and Clark developed mathematical tools for researchers to use when developing, comparing and interpreting neural networks. With their new perspective and tools, Pan and Clark identified and analyzed the forms of errors they expect to arise from truncating a neural network, and they identified theoretical limits on how big the errors can get in various circumstances. 

In previous work, physicists generally relied on restricting the number of connections allowed for each hidden node to keep the complexity of the neural network in check. This in turn generally limited the reach of interactions between particles that could be modeled—earning the resulting collection of states the name short-range RBM states.

Pan and Clark’s work revealed a chance to apply RBMs outside of those restrictions. They defined a new group of states, called long-range-fast-decay RBM states, that have less strict conditions on hidden node connections but that still often remain accurate and practical to implement. The looser restrictions on the hidden node connections allow a neural network to represent a greater variety of spin states, including ones with interactions stretching farther between particles.

“There are only a few exactly solvable models of quantum spin systems, and their computational complexity grows exponentially with the number of spins,” says Clark. “It is essential to find ways to reduce that complexity. Remarkably, Ruizhi discovered a new class of such systems that are efficiently attacked by RBMs. It’s the old hero-returns-home story: from classical spin glass came the RBM, which grew up among neural networks, and returned home with a gift of order to quantum spin systems.”

The pair’s analysis also suggests that their new tools can be adapted to work for more than just one-dimensional chains of spins, including particles arranged in two or three dimensions. The authors say these insights can help physicists explore the divide between states that are easy to model using RBMs and those that are impractical. The new tools may also guide researchers to be more efficient at pruning a network’s size to save time and resources. Pan says he hopes to further explore the implications of their theoretical framework.

“I'm very happy that I realized my goal of building our research results on a solid mathematical basis,” Pan says. “I'm very excited that I found such a research field which is of great prospect and in which there are also many unknown problems to be solved in the near future.”

Original story by Bailey Bedford: https://jqi.umd.edu/news/attacking-quantum-models-ai-when-can-truncated-neural-networks-deliver-results