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DTSTART;TZID=America/Los_Angeles:20251205T110000
DTEND;TZID=America/Los_Angeles:20251205T120000
DTSTAMP:20260423T144958
CREATED:20251014T194842Z
LAST-MODIFIED:20260304T210702Z
UID:7652-1764932400-1764936000@tilos.ai
SUMMARY:Optimization for ML and AI Seminar: Stochastic-Gradient and Diagonal-Scaling Algorithms for Constrained Optimization and Learning
DESCRIPTION:Frank E. Curtis\, Lehigh University \nAbstract: I will motivate and provide an overview of recent efforts in my research group on the design and analysis of stochastic-gradient-based algorithms for solving constrained optimization problems. I will focus in particular on our motivation for informed supervised learning\, where constraints in the training problem can be used to impose prior knowledge on the properties that should be possessed by a trained prediction model. In addition\, I will provide a detailed look at our newest extensions of heavy-ball and Adam schemes from the unconstrained to the equality-constrained setting\, for which we have shown state-of-the-art convergence guarantees. I will demonstrate the impressive practical performance of our methods using a few informed supervised learning problems. \n\nFrank E. Curtis is a Professor in the Department of Industrial and Systems Engineering at Lehigh University\, where he has been employed since 2009. He received a bachelor’s degree from the College of William and Mary in 2003 with a double major in Computer Science and Mathematics\, received a master’s degree in 2004 and Ph.D. degree in 2007 from the Department of Industrial Engineering and Management Science at Northwestern University\, and spent two years as a Postdoctoral Researcher in the Courant Institute of Mathematical Sciences at New York University from 2007 until 2009. His research focuses on the design\, analysis\, and implementation of numerical methods for solving large-scale nonlinear optimization problems. He received an Early Career Award from the Advanced Scientific Computing Research (ASCR) program of the U.S. Department of Energy (DoE)\, and has received funding from various programs of the U.S. National Science Foundation (NSF)\, including through a TRIPODS Phase I grant awarded to him and his collaborators at Lehigh\, Northwestern\, and Boston University. He has also received funding from the U.S. Office of Naval Research (ONR) and DoE’s Advanced Research Projects Agency-Energy (ARPA-E). He received\, along with Leon Bottou (Meta AI) and Jorge Nocedal (Northwestern)\, the 2021 SIAM/MOS Lagrange Prize in Continuous Optimization. He was awarded\, with James V. Burke (U. of Washington)\, Adrian Lewis (Cornell)\, and Michael Overton (NYU)\, the 2018 INFORMS Computing Society Prize. He and team members Daniel Molzahn (Georgia Tech)\, Andreas Waechter (Northwestern)\, Ermin Wei (Northwestern)\, and Elizabeth Wong (UC San Diego) were awarded second place in the ARPA-E Grid Optimization Competition in 2020. He currently serves as Area Editor for Continuous Optimization for Mathematics of Operations Research and serves as an Associate Editor for Mathematical Programming\, SIAM Journal on Optimization\, Operations Research\, IMA Journal of Numerical Analysis\, and Mathematical Programming Computation. He previously served as the Vice Chair for Nonlinear Programming for the INFORMS Optimization Society\, and is currently very active in professional societies and groups related to mathematical optimization\, including INFORMS\, the Mathematics Optimization Society\, and the SIAM Activity Group on Optimization.
URL:https://tilos.ai/event/optimization-for-ml-and-ai-seminar-with-frank-e-curtis-lehigh-university/
LOCATION:HDSI 123 and Virtual\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Seminar Series,TILOS Sponsored Event
ATTACH;FMTTYPE=image/jpeg:https://tilos.ai/wp-content/uploads/2025/10/curtis-frank-e1760471303881.jpg
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=America/Los_Angeles:20251204T120000
DTEND;TZID=America/Los_Angeles:20251204T140000
DTSTAMP:20260423T144958
CREATED:20251028T204347Z
LAST-MODIFIED:20251121T020250Z
UID:7692-1764849600-1764856800@tilos.ai
SUMMARY:Networking Lunch Reception at NeurIPS 2025
DESCRIPTION:TILOS will host a networking lunch reception during NeurIPS 2025 at Mezé Greek Fusion from 12:00-2:00pm on Thursday\, December 4\, 2025. This event is open to all NeurIPS attendees affiliated with any of the NSF AI Research Institutes\, as well as invited industry partners. Join us to connect with colleagues across the network of NSF AI Institutes\, share research interests\, and explore opportunities for collaboration. \nRegistration has closed. Please contact tilos@ucsd.edu with any questions. \n? Date: Thursday\, December 4\, 2025? Time: 12:00 – 2:00pm PST? Location: Mezé Greek Fusion (3 blocks from the conference venue)
URL:https://tilos.ai/event/networking-lunch-reception-at-neurips-2025/
LOCATION:Mezé Greek Fusion\, San Diego\, CA\, United States
CATEGORIES:TILOS Sponsored Event
ATTACH;FMTTYPE=image/png:https://tilos.ai/wp-content/uploads/2025/08/TILOS_Tree_Icon-e1743456398274-3qc6Qj.png
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=America/Los_Angeles:20251203T130000
DTEND;TZID=America/Los_Angeles:20251203T140000
DTSTAMP:20260423T144958
CREATED:20250930T163903Z
LAST-MODIFIED:20260304T210653Z
UID:7627-1764766800-1764770400@tilos.ai
SUMMARY:Optimization for AI and ML Seminar: Training Neural Networks at Any Scale
DESCRIPTION:Volkan Cevher\, École Polytechnique Fédérale de Lausanne \nAbstract: At the heart of deep learning’s transformative impact lies the concept of scale–encompassing both data and computational resources\, as well as their interaction with neural network architectures. Scale\, however\, presents critical challenges\, such as increased instability during training and prohibitively expensive model-specific tuning. Given the substantial resources required to train such models\, formulating high-confidence scaling hypotheses backed by rigorous theoretical research has become paramount. \nTo bridge theory and practice\, the talk explores a key mathematical ingredient of scaling in tandem with scaling theory: the numerical solution algorithms commonly employed in deep learning\, spanning domains from vision to language models. We unify these algorithms under a common master template\, making their foundational principles transparent. In doing so\, we reveal the interplay between adaptation to smoothness structures via online learning and the exploitation of optimization geometry through non-Euclidean norms. Our exposition moves beyond simply building larger models–it emphasizes strategic scaling\, offering insights that promise to advance the field while economizing on resources. \n\nVolkan Cevher received the B.Sc. (valedictorian) in electrical engineering from Bilkent University in Ankara\, Turkey\, in 1999 and the Ph.D. in electrical and computer engineering from the Georgia Institute of Technology in Atlanta\, GA in 2005. He was a Research Scientist with the University of Maryland\, College Park from 2006-2007 and also with Rice University in Houston\, TX\, from 2008-2009. Currently\, he is an Associate Professor at the Swiss Federal Institute of Technology Lausanne and a Faculty Fellow in the Electrical and Computer Engineering Department at Rice University. His research interests include machine learning\, signal processing theory\, optimization theory and methods\, and information theory. Dr. Cevher is an ELLIS fellow and was the recipient of the Google Faculty Research award in 2018\, the IEEE Signal Processing Society Best Paper Award in 2016\, a Best Paper Award at CAMSAP in 2015\, a Best Paper Award at SPARS in 2009\, and an ERC CG in 2016 as well as an ERC StG in 2011.
URL:https://tilos.ai/event/optimization-for-ai-and-ml-seminar-with-volkan-cevher-epfl/
LOCATION:HDSI 123 and Virtual\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Seminar Series,TILOS Sponsored Event
ATTACH;FMTTYPE=image/jpeg:https://tilos.ai/wp-content/uploads/2025/09/cevher-volkan-e1759250260485.jpg
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=America/Los_Angeles:20251203T110000
DTEND;TZID=America/Los_Angeles:20251203T120000
DTSTAMP:20260423T144958
CREATED:20250924T154049Z
LAST-MODIFIED:20260227T215023Z
UID:7606-1764759600-1764763200@tilos.ai
SUMMARY:TILOS-SDSU Seminar: 95 Percent: Bridging the Gap Between Prototype and Product
DESCRIPTION:Jeremy Schwartz\, Zoox \nAbstract: When transitioning from the academic world to the professional world of engineering\, one of the most common pitfalls is failing to understand the difference between a compelling prototype and a successful product. This talk will focus on that distinction. We will discuss the differences between them\, and the work required to evolve a good prototype into a real product. We will also discuss some common pitfalls encountered in product development\, and some of the practical software design considerations to keep in mind for development of robust\, mature code. The talk will include examples from my background developing robotic systems for air\, space\, and ground. \n\nJeremy Schwartz is a robotics engineer at Zoox with expertise in a wide variety of areas of mechanical and electrical engineering and computer science. His primary professional expertise is in autonomy and behavioral algorithms\, and he has worked in the aerospace industry as well as ground robotics\, specializing in autonomous systems of all kinds.
URL:https://tilos.ai/event/tilos-sdsu-seminar-with-jeremy-schwartz-of-zoox/
LOCATION:Lamden Hall 341 (SDSU) and Virtual\, San Diego\, CA\, 92182\, United States
CATEGORIES:TILOS Seminar Series,TILOS Sponsored Event
ATTACH;FMTTYPE=image/jpeg:https://tilos.ai/wp-content/uploads/2025/09/schwartz-jeremy-e1758728403382.jpeg
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20251201
DTEND;VALUE=DATE:20251203
DTSTAMP:20260423T144958
CREATED:20250903T222016Z
LAST-MODIFIED:20250908T162145Z
UID:7473-1764547200-1764719999@tilos.ai
SUMMARY:Workshop on Topology\, Algebra\, and Geometry in Data Science (co-located with NeurIPS 2025)
DESCRIPTION:We are thrilled to announce the first official TAG-DS Stand-Alone Event–TAG… We’re it! This will be a two day event\, December 1 & 2\, 2025\, featuring keynotes\, poster sessions\, spotlight talks\, collaboration activities\, and community development. The dates and location were selected to align with NeurIPS 2025–twice the fun! The event will be hosted on the University of California San Diego campus both days and is readily accessible by public transit from downtown for those already planning to attend NeurIPS. There will be an associated Proceedings of Machine Learning Research volume for papers submitted to the archival track.
URL:https://tilos.ai/event/topology-algebra-and-geometry-in-data-science-2025/
LOCATION:UC San Diego\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Sponsored Event,Workshop
ATTACH;FMTTYPE=image/png:https://tilos.ai/wp-content/uploads/2025/09/TAG-DS_logo-1-e1756938002600.png
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=America/Los_Angeles:20251119T110000
DTEND;TZID=America/Los_Angeles:20251119T120000
DTSTAMP:20260423T144958
CREATED:20251105T193505Z
LAST-MODIFIED:20260227T215217Z
UID:7735-1763550000-1763553600@tilos.ai
SUMMARY:TILOS-SDSU Seminar: Certifiably Correct Machine Perception
DESCRIPTION:David Rosen\, Northeastern University \nAbstract: Many fundamental machine perception and state estimation tasks require the solution of a high-dimensional nonconvex estimation problem; this class includes (for example) the fundamental problems of simultaneous localization and mapping (in robotics)\, 3D reconstruction (in computer vision)\, and sensor network localization (in distributed sensing). Such problems are known to be computationally hard in general\, with many local minima that can entrap the smooth local optimization methods commonly applied to solve them. The result is that standard machine perception algorithms (based upon local optimization) can be surprisingly brittle\, often returning egregiously wrong answers even when the problem to which they are applied is well-posed. \nIn this talk\, we present a novel class of certifiably correct estimation algorithms that are capable of efficiently recovering provably good (often globally optimal) solutions of generally-intractable machine perception problems in many practical settings. Our approach directly tackles the problem of nonconvexity by employing convex relaxations whose minimizers provide provably good approximate solutions to the original estimation problem under moderate measurement noise. We illustrate the design of this class of methods using the fundamental problem of pose-graph optimization (a mathematical abstraction of robotic mapping) as a running example. We conclude with a brief discussion of open questions and future research directions. \n\nDavid M. Rosen is an Assistant Professor in the Departments of Electrical & Computer Engineering and Mathematics and the Khoury College of Computer Sciences (by courtesy) at Northeastern University\, where he leads the Robust Autonomy Laboratory (NEURAL). Prior to joining Northeastern\, he was a Research Scientist at Oculus Research (now Meta Reality Labs) from 2016 to 2018\, and a Postdoctoral Associate at MIT’s Laboratory for Information and Decision Systems (LIDS) from 2018 to 2021. He holds the degrees of B.S. in Mathematics from the California Institute of Technology (2008)\, M.A. in Mathematics from the University of Texas at Austin (2010)\, and ScD in Computer Science from the Massachusetts Institute of Technology (2016). \n\nHe is broadly interested in the mathematical and algorithmic foundations of trustworthy machine perception\, learning\, and control. His work has been recognized with the IEEE Transactions on Robotics Best Paper Award (2024)\, an Honorable Mention for the IEEE Transactions on Robotics Best Paper Award (2021)\, a Best Student Paper Award at Robotics: Science and Systems (2020)\, a Best Paper Award at the International Workshop on the Algorithmic Foundations of Robotics (2016)\, and selection as an RSS Pioneer (2019).
URL:https://tilos.ai/event/tilos-sdsu-seminar-with-david-rosen-northeastern/
LOCATION:Lamden Hall 341 (SDSU) and Virtual\, San Diego\, CA\, 92182\, United States
CATEGORIES:TILOS Seminar Series,TILOS Sponsored Event
ATTACH;FMTTYPE=image/jpeg:https://tilos.ai/wp-content/uploads/2025/11/rosen-david-scaled-e1762371210779.jpg
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=America/Los_Angeles:20251024T110000
DTEND;TZID=America/Los_Angeles:20251024T120000
DTSTAMP:20260423T144958
CREATED:20250925T175700Z
LAST-MODIFIED:20260304T210610Z
UID:7611-1761303600-1761307200@tilos.ai
SUMMARY:Optimization for ML and AI Seminar: High-dimensional Optimization with Applications to Compute-Optimal Neural Scaling Laws
DESCRIPTION:Courtney Paquette\, McGill University \nAbstract: Given the massive scale of modern ML models\, we now only get a single shot to train them effectively. This restricts our ability to test multiple architectures and hyper-parameter configurations. Instead\, we need to understand how these models scale\, allowing us to experiment with smaller problems and then apply those insights to larger-scale models. In this talk\, I will present a framework for analyzing scaling laws in stochastic learning algorithms using a power-law random features model (PLRF)\, leveraging high-dimensional probability and random matrix theory. I will then use this scaling law to address the compute-optimal question: How should we choose model size and hyper-parameters to achieve the best possible performance in the most compute-efficient manner? Then using this PLRF model\, I will devise a new momentum-based algorithm that (provably) improves the scaling law exponent. Finally\, I will present some numerical experiments on LSTMs that show how this new stochastic algorithm can be applied to real data to improve the compute-optimal exponent. \n\nCourtney Paquette is an assistant professor at McGill University in the Mathematics and Statistics department\, a CIFAR AI Chair (MILA)\, and an active member of the Montreal Machine Learning Optimization Group (MTL MLOpt) at MILA. Her research broadly focuses on designing and analyzing algorithms for large-scale optimization problems\, motivated by applications in data science\, and using techniques that draw from a variety of fields\, including probability\, complexity theory\, and convex and nonsmooth analysis. Dr. Paquette is a lead organizer of the OPT-ML Workshop at NeurIPS since 2020\, and a lead organizer (and original creator) of the High-dimensional Learning Dynamics (HiLD) Workshop at ICML.
URL:https://tilos.ai/event/optimization-for-ml-and-ai-seminar-with-courtney-paquette-mcgill-university/
LOCATION:CSE 1242 and Virtual\, 3235 Voigt Dr\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Seminar Series,TILOS Sponsored Event
ATTACH;FMTTYPE=image/jpeg:https://tilos.ai/wp-content/uploads/2025/09/paquette-courtney-scaled-e1758822988381.jpg
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20250602
DTEND;VALUE=DATE:20250603
DTSTAMP:20260423T144958
CREATED:20250904T174234Z
LAST-MODIFIED:20250904T183243Z
UID:7531-1748822400-1748908799@tilos.ai
SUMMARY:TILOS Industry Day 2025
DESCRIPTION:
URL:https://tilos.ai/event/tilos-industry-day-2025/
LOCATION:HDSI 123\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Sponsored Event
ATTACH;FMTTYPE=image/png:https://tilos.ai/wp-content/uploads/2025/08/TILOS_Tree_Icon-e1743456398274-3qc6Qj.png
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20250417
DTEND;VALUE=DATE:20250419
DTSTAMP:20260423T144958
CREATED:20250401T180604Z
LAST-MODIFIED:20250904T182557Z
UID:7280-1744848000-1745020799@tilos.ai
SUMMARY:HOT-AI: Horizons for Optimization in AI Workshop
DESCRIPTION:
URL:https://tilos.ai/event/hot-ai-horizons-for-optimization-in-ai-workshop/
LOCATION:HDSI 123\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Sponsored Event,Workshop
ATTACH;FMTTYPE=image/png:https://tilos.ai/wp-content/uploads/2025/08/TILOS_Tree_Icon-e1743456398274-3qc6Qj.png
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20250331
DTEND;VALUE=DATE:20250401
DTSTAMP:20260423T144958
CREATED:20250904T175539Z
LAST-MODIFIED:20250904T182652Z
UID:7282-1743379200-1743465599@tilos.ai
SUMMARY:Boston Symmetry Day 2025
DESCRIPTION:
URL:https://tilos.ai/event/boston-symmetry-day-2025/
LOCATION:CA
CATEGORIES:TILOS Sponsored Event
ATTACH;FMTTYPE=image/png:https://tilos.ai/wp-content/uploads/2025/08/boston-symmetry-group-e1698445385321-eiga9L.png
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20250317
DTEND;VALUE=DATE:20250318
DTSTAMP:20260423T144958
CREATED:20250904T181134Z
LAST-MODIFIED:20250904T182933Z
UID:7275-1742169600-1742255999@tilos.ai
SUMMARY:TILOS-Cisco AI + Security Workshop
DESCRIPTION:
URL:https://tilos.ai/event/tilos-cisco-ai-security-workshop/
LOCATION:HDSI 123\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:Internal Events,TILOS Sponsored Event,Workshop
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END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=America/Los_Angeles:20250306T083000
DTEND;TZID=America/Los_Angeles:20250306T121500
DTSTAMP:20260423T144958
CREATED:20250828T193005Z
LAST-MODIFIED:20250828T193005Z
UID:7276-1741249800-1741263300@tilos.ai
SUMMARY:TILOS Tutorial on AI Alignment
DESCRIPTION:
URL:https://tilos.ai/event/tilos-tutorial-on-ai-alignment/
LOCATION:HDSI 123 and Virtual\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Sponsored Event,Workshop
ATTACH;FMTTYPE=image/png:https://tilos.ai/wp-content/uploads/2025/08/TILOS_Tree_Icon-e1743456398274-3qc6Qj.png
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20250219
DTEND;VALUE=DATE:20250221
DTSTAMP:20260423T144958
CREATED:20250904T180342Z
LAST-MODIFIED:20250904T183026Z
UID:7281-1739923200-1740095999@tilos.ai
SUMMARY:Secure AI for Health\, Defense\, and Beyond
DESCRIPTION:
URL:https://tilos.ai/event/secure-ai-for-health-defense-and-beyond/
LOCATION:CA
CATEGORIES:TILOS Sponsored Event
ATTACH;FMTTYPE=image/png:https://tilos.ai/wp-content/uploads/2025/08/UCSD-e1737756262771-s0U7kP-e1757009005925.png
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=America/Los_Angeles:20250129T110000
DTEND;TZID=America/Los_Angeles:20250129T123000
DTSTAMP:20260423T144958
CREATED:20250828T195813Z
LAST-MODIFIED:20250828T195813Z
UID:7301-1738148400-1738153800@tilos.ai
SUMMARY:TILOS Seminar: Unlearnable Facts Cause Hallucinations in Pretrained Language Models
DESCRIPTION:Adam Tauman Kalai\, OpenAI \nAbstract: Pretrained language models (LMs) tend to preserve many qualities present in their training data\, such as grammaticality\, formatting\, and politeness. However\, for specific types of factuality\, even LMs pretrained on factually correct statements tend to produce falsehoods at high rates. We explain these “hallucinations” by drawing a connection to binary classification\, enabling us to leverage insights from supervised learning. We prove that pretrained LMs (which are “calibrated”) fail to mimic criteria that cannot be learned. Our analysis explains why pretrained LMs hallucinate on facts such as people’s birthdays but not on systematic facts such as even vs. odd numbers.\nOf course\, LM pretraining is only one stage in the development of a chatbot\, and thus hallucinations are *not* inevitable in chatbots.\nThis is joint work with Santosh Vempala. \n\nAdam Tauman Kalai is a Research Scientist at OpenAI working on AI Safety and Ethics. He has worked in Algorithms\, Fairness\, Machine Learning Theory\, Game Theory\, and Crowdsourcing. He received his PhD from Carnegie Mellon University. He has served as an Assistant Professor at Georgia Tech and TTIC\, and is on the science team of the whale-translation Project CETI. He has co-chaired AI and crowdsourcing conferences and has numerous honors\, most notably the Majulook prize.
URL:https://tilos.ai/event/tilos-seminar-unlearnable-facts-cause-hallucinations-in-pretrained-language-models/
LOCATION:HDSI 123 and Virtual\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Seminar Series,TILOS Sponsored Event
ATTACH;FMTTYPE=image/jpeg:https://tilos.ai/wp-content/uploads/2025/08/kalai-adam-e1725645665625-utz75c.jpg
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20241210
DTEND;VALUE=DATE:20241211
DTSTAMP:20260423T144958
CREATED:20250904T180142Z
LAST-MODIFIED:20250904T182846Z
UID:7289-1733788800-1733875199@tilos.ai
SUMMARY:NSF Workshop on AI for Electronic Design Automation
DESCRIPTION:
URL:https://tilos.ai/event/nsf-workshop-on-ai-for-electronic-design-automation/
LOCATION:CA
CATEGORIES:TILOS Sponsored Event,Workshop
ATTACH;FMTTYPE=image/webp:https://tilos.ai/wp-content/uploads/2024/10/circuitboard.webp
END:VEVENT
BEGIN:VEVENT
DTSTART;VALUE=DATE:20240618
DTEND;VALUE=DATE:20240619
DTSTAMP:20260423T144958
CREATED:20250828T201147Z
LAST-MODIFIED:20250904T174448Z
UID:7308-1718668800-1718755199@tilos.ai
SUMMARY:TILOS Industry Day 2024
DESCRIPTION:TILOS (The NSF National AI Institute for Learning-enabled Optimization at Scale) will hold its 3rd Annual Industry Day on June 18\, 2024\, at the Halıcıoğlu Data Science Institute at UC San Diego\, which is the campus hub for Data Science. Our first two Industry Days have attracted more than 100 participants\, each featuring (1) talks from invited Industry Speakers sharing their perspectives on challenges in AI + Optimization + Use domains (chips\, robotics\, networking)\, (2) research highlights from TILOS team members\, and (3) most importantly\, a vibrant TILOS Trainee Poster Session (30+ posters) together with a “Facebook” of students and postdocs (a booklet of these trainees). There is no cost to attend\, but please register here. \nAGENDA\n\n\n\n\n\n\n\n8:00 – 8:45am\nRegistration + Breakfast\n\n\n8:45 – 9:00am\nWelcome Remarks and Introduction to TILOS\nDirector Yusu Wang (UCSD)\nAD Translation Vijay Kumar (UPenn)\nRajesh Gupta (Director of HDSI@UCSD)\n\n\n9:00 – 10:30am\nSESSION 1  Chair: Vijay Kumar (UPenn)\nIndustry Keynote: Towards Scalable and Robust Autonomy\, Nicholas Roy (Zoox)\nTILOS Faculty Highlights:\n[9:50am] Traceable and Scalable GNN-based Circuit Optimization\, Farinaz Koushanfar (UCSD)\n[10:10am] Feature learning in neural networks and kernel models\, Misha Belkin (UCSD)\n\n\n10:30 – 10:45am\nBreak\n\n\n10:45am – 12:15pm\nSESSION 2  Chair: Yian Ma (UCSD)\nIndustry Keynote: AI and Networks: Challenges & Opportunities\, Nageen Himayat (Intel Labs)\nTILOS Faculty Highlights:\n[11:35am] Learning-enabled Optimization at Scale in Wireless Communications and  Networking\, Alejandro Ribeiro (UPenn)\n[11:55am] Reasoning Numerically\, Sean Gao (UCSD)\n\n\n12:15 – 2:00pm\nTILOS Trainee Poster Lightning Preview Session + Lunch\n\n\n2:00 – 3:00pm\nPanel Discussion on Academic–Industry Relations / Collaborations\nPanelists:\nNing Bi (Qualcomm VP Engineering)\nVitaly Feldman (Apple ML Research)\nKatherine Heller (Google Responsible AI)\nTara Javidi (UCSD)\nSomdeb Majumdar (Intel AI/ML Lab)\nModerator: Vijay Kumar (UPenn)\n\n\n3:00 – 3:30pm\nBreak\n\n\n3:30 – 5:00pm\nSESSION 3  Chair: Henrik Christensen (UCSD)\nIndustry Keynote: Foundation Models for Robotics\, Carolina Parada (Google DeepMind)\nTILOS Faculty Highlights:\n[4:20pm] Semantic Mapping and Task Planning for Autonomous Robots\,  Nikolay Atanasov (UCSD)\n[4:40pm] Bias in Evaluation Processes: An Optimization-Based Model\, Nisheeth Vishnoi (Yale U)\n\n\n5:00 – 7:30pm\nBuffet Dinner + Trainee Poster Session (HDSI 123 & 155)\n\n\n\nKEYNOTE PRESENTATION ABSTRACTS \nTowards Scalable and Robust Autonomy \nHow we design and deploy highly autonomous robots such as self-driving cars is evolving rapidly\, and there are numerous technical challenges in how to deploy an autonomous system at scale. I will describe some of the technical design decisions in developing an autonomous robotic at scale\, some of the candidate solutions and open questions for the future. \nNicholas Roy is the Autonomy Architecture Lead and a principal software engineer at Zoox. He and his team address technical challenges that cut across the autonomy verticals\, leading the design and deployment of cross-functional capabilities in the Zoox autonomy system. He is also the Bisplinghoff Professor of Aeronautics & Astronautics and a member of the Computer Science and Artificial Intelligence Laboratory (CSAIL) at the Massachusetts Institute of Technology. Roy’s research focuses on decision-making under uncertainty\, mobile robot autonomy and human-robot interaction. Roy’s research has been transitioned into multiple commercial applications. \n\nAI and Networks: Challenges & Opportunities \nArtificial Intelligence and Machine Learning (AI/ML) Technologies are widely expected to play an integral role in the design and architecture of Next Generation Networks. We present several applications where AI/ML techniques are used to enhance the performance of wireless networking systems\, as well as discuss approaches to enhance AI computations over resource constrained networks. We also highlight the importance of ensuring resilience of network AI solutions and discuss future directions. \nNageen Himayat is a Senior Principal Engineer with the Security and Privacy Research Labs. She leads the Trusted & Distributed Intelligence (TDI) team conducting research on trustworthy AI and network security topics. Her research contributions span areas such as AI security\, distributed ML\, machine learning for networks\, multi-radio heterogeneous networks\, cross layer radio resource management\, and non-linear signal processing techniques. Nageen has authored over 350 technical publications\, contributing to several IEEE peer-reviewed publications\, 3GPP/IEEE standards\, as well as numerous patent filings. Prior to Intel\, Nageen was with Lucent Technologies and General Instrument Corp\, where she developed standards and systems for both wireless and wire-line broadband access networks. Nageen obtained her B.S.E.E degree from Rice University\, and her M.S./Ph.D. degree from the University of Pennsylvania. She also holds an MBA degree from the Haas School of Business at University of California\, Berkeley. \n\nFoundations Models for Robotics \nFoundation models have unlocked major advancements in AI. In this talk\, I will discuss how foundation models are enabling a step function in progress towards general purpose robots\, including enabling robots to understand\, reason\, hold situated conversations with humans and learn from them\, transfer visual and semantic generalization to real world actions\, and show initial signs of transfer between robot embodiments. \nIt is still early in this research journey but it is an exciting one because we can confidently be part of this fantastic fast and dynamic field of foundation models and not only ride the wave of innovation\, but help shape it. With this new approach\, we have to once again ask all the tough questions\, and call for advances in perception\, grounded reasoning\, and safety to build more advanced embodied foundation models\, while leveraging the human-centeredness\, semantic understanding\, and natural interaction that these models seamlessly enable. We’re just getting started. \nDr. Carolina Parada is an Engineering Director at Google DeepMind Robotics who is passionate about developing useful robots through human centered robot learning. Since 2019\, she leads multiple research groups in robot learning\, perception\, simulation\, and embodied reasoning. Prior to that\, she led the perception team for self-driving cars at Nvidia for 2 years. She was also a lead with Speech @ Google for 7 years\, where she drove research and engineering efforts that enabled all the voice products at Google. \n\n\n		\n		\n			\n				\n			\n				\n				Nageen Himayat of Intel Labs presents “AI and Networks: Challenges & Opportunities” at TILOS Industry Day 2024\n				\n			\n				\n			\n				\n				Student and postdoc poster session at TILOS Industry Day 2024\n				\n			\n				\n			\n				\n				Sean Gao (UC San Diego) presents “Reasoning Numerically” at TILOS Industry Day 2024\n				\n			\n				\n			\n				\n				Demonstration of a Robotic Art outreach activity at TILOS Industry Day 2024\n				\n			\n				\n			\n				\n				TILOS Robotics team member Nikolay Atanasov (UC San Diego) presents “Semantic Mapping and Task Planning for Autonomous\nRobots” at TILOS Industry Day 2024\n				\n			\n				\n			\n				\n				Student and postdoc poster session at TILOS Industry Day 2024\n				\n			\n				\n			\n				\n				TILOS Associate Director of Translation and University of Pennsylvania Dean of Engineering Vijay Kumar (right) moderates a discussion on Academic–Industry Relations and Collaboration at TILOS Industry Day 2024 with panelists (from left) Ning Bi (Vice President of Engineering\, Qualcomm)\, Vitaly Feldman (Apple ML Research)\, Katherine Heller (Google Responsible AI)\, Tara Javidi (Professor of Electrical and Computer Engineering\, UC San Diego)\, and Somdeb Majumdar (Director\, Intel AI/ML Lab)\n				\n			\n		\n\nLocation: Halıcıoğlu Data Science Institute [MAP]\nRoom 123\n3234 Matthews Lane\nLa Jolla\, CA 92093 \nContacts: Angela Berti (aberti@ucsd.edu)\, Yusu Wang (yusuwang@ucsd.edu) \nParking: Hopkins Parking Structure (9800 Hopkins Dr\, La Jolla\, CA 92093; 10 minute walk to venue). \nParking fees are payable at pay stations or pay-by-phone. Note that many visitor spots are limited to two hours. Even though the app allows you to pay for longer periods\, you will get a ticket after that time if parked in a 2-hour space.
URL:https://tilos.ai/event/tilos-industry-day-2024/
LOCATION:HDSI 123 and Virtual\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Sponsored Event
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DTSTART;VALUE=DATE:20240315
DTEND;VALUE=DATE:20240317
DTSTAMP:20260423T144958
CREATED:20250904T175958Z
LAST-MODIFIED:20250904T182814Z
UID:7311-1710460800-1710633599@tilos.ai
SUMMARY:HDSI-TILOS “LLM Meets Theory” Workshop 2024
DESCRIPTION:The UC San Diego HDSI-TILOS “LLM Meets Theory” Workshop aims to bring together students and faculty to discuss the future of mathematical and scientific theory and large language models (LLMs). LLMs are like a miracle—not one that breaks the laws of nature (that would be impossible\, of course)\, but something that defied all expectations and could not be predicted just a few years ago. In particular\, the simplicity of the resulting statistical models (which are essentially Markov chains\, and are limited to only predicting the next token) came as a complete surprise to almost all of us. In view of this\, it is crucial to gain some understanding of the implications and potential trajectory of these models. Therefore\, at UCSD HDSI\, we plan to invite a few researchers for talks and also leave a lot of time for panel discussions.
URL:https://tilos.ai/event/hdsi-tilos-llm-meets-theory-workshop-2024/
LOCATION:HDSI 123\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Sponsored Event,Workshop
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DTSTART;TZID=America/Los_Angeles:20240221T140000
DTEND;TZID=America/Los_Angeles:20240221T153000
DTSTAMP:20260423T144958
CREATED:20250828T201626Z
LAST-MODIFIED:20250828T201626Z
UID:7318-1708524000-1708529400@tilos.ai
SUMMARY:TILOS-HDSI Distinguished Colloquium: The Synergy between Machine Learning and the Natural Sciences
DESCRIPTION:Max Welling\, Research Chair in Machine Learning\, University of Amsterdam \nAbstract: Traditionally machine learning has been heavily influenced by neuroscience (hence the name artificial neural networks) and physics (e.g. MCMC\, Belief Propagation\, and Diffusion based Generative AI). We have recently witnessed that the flow of information has also reversed\, with new tools developed in the ML community impacting physics\, chemistry and biology. Examples include faster DFT\, Force-Field accelerated MD simulations\, PDE Neural Surrogate models\, generating druglike molecules\, and many more. In this talk I will review the exciting opportunities for further cross fertilization between these fields\, ranging from faster (classical) DFT calculations and enhanced transition path sampling to traveling waves in artificial neural networks. \n\nProf. Max Welling is a research chair in Machine Learning at the University of Amsterdam and a Distinguished Scientist at MSR. He is a fellow at the Canadian Institute for Advanced Research (CIFAR) and the European Lab for Learning and Intelligent Systems (ELLIS) where he also serves on the founding board. His previous appointments include VP at Qualcomm Technologies\, professor at UC Irvine\, postdoc at U. Toronto and UCL under supervision of prof. Geoffrey Hinton\, and postdoc at Caltech under supervision of prof. Pietro Perona. He finished his PhD in theoretical high energy physics under supervision of Nobel laureate Prof. Gerard ‘t Hooft.
URL:https://tilos.ai/event/tilos-hdsi-distinguished-colloquium-the-synergy-between-machine-learning-and-the-natural-sciences/
LOCATION:HDSI 123 and Virtual\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:TILOS Seminar Series,TILOS Sponsored Event
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DTSTART;TZID=America/Los_Angeles:20231117T093000
DTEND;TZID=America/Los_Angeles:20231117T103000
DTSTAMP:20260423T144958
CREATED:20250828T203006Z
LAST-MODIFIED:20250828T204333Z
UID:7323-1700213400-1700217000@tilos.ai
SUMMARY:Overview of the Executive Order on Safe\, Secure\, and Trustworthy Artificial Intelligence
DESCRIPTION:UC San Diego Professor of Data Science and Philosophy and TILOS affiliate David Danks will present an introduction to the U.S. Government’s Executive Order on Safe\, Secure\, and Trustworthy Artificial Intelligence for TILOS members. \nDavid Danks currently serves on the National AI Advisory Committee (NAIAC)\, which is tasked with advising the President and the National AI Initiative Office on topics related to AI. This talk will give an overview of the recent Executive Order and related activity by the U.S. Government in the space of AI (including regulation\, incentives\, and new programs). Ample time will be reserved for Q&A. \nThis is an internal TILOS event and will not be recorded.
URL:https://tilos.ai/event/overview-of-the-executive-order-on-safe-secure-and-trustworthy-artificial-intelligence/
LOCATION:HDSI 123 and Virtual\, 3234 Matthews Ln\, La Jolla\, CA\, 92093\, United States
CATEGORIES:Internal Events,TILOS Sponsored Event
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DTSTART;VALUE=DATE:20231103
DTEND;VALUE=DATE:20231104
DTSTAMP:20260423T144958
CREATED:20250904T175208Z
LAST-MODIFIED:20250904T182741Z
UID:7325-1698969600-1699055999@tilos.ai
SUMMARY:Boston Symmetry Day 2023
DESCRIPTION:TILOS is a sponsor of Boston Symmetry Day\, a meeting of symmetry-minded folks in the Boston area. It is the largest event on symmetry and machine learning in the United States. Registration is free for all who would like to attend\, subject to space constraints.
URL:https://tilos.ai/event/boston-symmetry-day-2023/
LOCATION:MIT
CATEGORIES:TILOS Sponsored Event
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DTSTART;TZID=America/Los_Angeles:20231004T093000
DTEND;TZID=America/Los_Angeles:20231004T103000
DTSTAMP:20260423T144958
CREATED:20250828T203648Z
LAST-MODIFIED:20250828T203648Z
UID:7330-1696411800-1696415400@tilos.ai
SUMMARY:TILOS Fireside Chat on Theory in the Age of Modern AI
DESCRIPTION:The first TILOS Fireside Chat of Fall 2023 will be a conversation about theory in the age of modern AI led by TILOS members Nisheeth Vishnoi\, Tara Javidi\, Misha Belkin\, and Arya Mazumdar (moderator). This will be a great opportunity to discuss implications of AI and roles of theory (especially with the recent development in LLMs)\, and an exciting way to start the third year of TILOS!
URL:https://tilos.ai/event/tilos-fireside-chat-on-theory-in-the-age-of-modern-ai/
LOCATION:Virtual
CATEGORIES:TILOS Sponsored Event
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DTSTART;TZID=America/Los_Angeles:20230602T090000
DTEND;TZID=America/Los_Angeles:20230602T100000
DTSTAMP:20260423T144958
CREATED:20250828T204002Z
LAST-MODIFIED:20250903T234009Z
UID:7335-1685696400-1685700000@tilos.ai
SUMMARY:AI Ethics Roundtable
DESCRIPTION:The TILOS Ethics and Early Career Committee invites you to an upcoming round table discussion on AI Ethics. This will take place virtually through Zoom on Friday\, June 2\, 2023 at 9am Pacific / 11am Central / Noon Eastern. \nPlease join Dr. Nisheeth Vishnoi from Yale\, Dr. David Danks from UC San Diego\, and Dr. Hoda Heidari from Carnegie Mellon University as we discuss a variety of aspects of AI Ethics with our moderators Dr. Stefanie Jegelka from MIT and Dr. Jodi Reeves from National University. This event is a great opportunity for TILOS students to learn about the constantly evolving issues of AI Ethics in research and the societal impact of AI. It will also provide a platform for students to gain insights and valuable advice that can help them in their future career pursuits. \n\nNisheeth Vishnoi is the A. Bartlett Giamatti Professor of Computer Science and a co-founder of the Computation and Society Initiative at Yale University. He studies the foundations of computation\, and his research spans several areas of theoretical computer science\, optimization\, and machine learning. He is also interested in understanding nature and society from a computational viewpoint. Here\, his current focus includes understanding the emergence of intelligence and developing methods to address ethical issues at the interface of artificial intelligence and humanity. \n\nDavid Danks is Professor of Data Science & Philosophy and affiliate faculty in Computer Science & Engineering at University of California\, San Diego. His research interests range widely across philosophy\, cognitive science\, and machine learning\, including their intersection. Danks has examined the ethical\, psychological\, and policy issues around AI and robotics across multiple sectors\, including transportation\, healthcare\, privacy\, and security. He has also done significant research in computational cognitive science and developed multiple novel causal discovery algorithms for complex types of observational and experimental data. Danks is the recipient of a James S. McDonnell Foundation Scholar Award\, as well as an Andrew Carnegie Fellowship. He currently serves on multiple advisory boards\, including the National AI Advisory Committee. \n\nHoda Heidari is an Assistant Professor in Machine Learning and Societal Computing at the School of Computer Science\, Carnegie Mellon University. Her research is broadly concerned with the social\, ethical\, and economic implications of Artificial Intelligence. In particular\, her research addresses issues of unfairness and accountability through Machine Learning. Her work in this area has won a best-paper award at the ACM Conference on Fairness\, Accountability\, and Transparency (FAccT) and an exemplary track award at the ACM Conference on Economics and Computation (EC). She has organized several scholarly events on topics related to Responsible and Trustworthy AI\, including a tutorial at the Web Conference (WWW) and several workshops at the Neural and Information Processing Systems (NeurIPS) conference. Dr. Heidari completed her doctoral studies in Computer and Information Science at the University of Pennsylvania. She holds an M.Sc. degree in Statistics from the Wharton School of Business. Before joining Carnegie Mellon as a faculty member\, she was a postdoctoral scholar at the Machine Learning Institute of ETH Zurich\, followed by a year at the Artificial Intelligence\, Policy\, and Practice (AIPP) initiative at Cornell University.
URL:https://tilos.ai/event/ai-ethics-roundtable/
LOCATION:Virtual
CATEGORIES:TILOS Sponsored Event
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