IFML
IFML
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IFML Seminar: 9/13/24 - On the Computational Complexity of Private High-dimensional Model Selection
Speaker: Saptarshi Roy, Postdoc Research Fellow, The University of Texas at Austin
Abstract: We consider the problem of model selection in a high-dimensional sparse linear regression model under privacy constraints. We propose a differentially private best subset selection method with strong utility properties by adopting the well-known exponential mechanism for selecting the best model. We propose an efficient Metropolis-Hastings algorithm and establish that it enjoys polynomial mixing time to its stationary distribution. Furthermore, we also establish approximate differential privacy for the estimates of the mixed Metropolis-Hastings chain. Finally, we perform some illustrative experiments that show the strong utility of our algorithm.
Speaker Bio: I am currently a Postdoc Research Fellow at the University of Texas, Austin with a joint appointment in the Department of Computer Science, Department of Statistics and Data Science, and the Institute for Foundations of Machine Learning. Prior to joining UT Austin, I completed my PhD in Statistics from the University of Michigan, Ann Arbor under the supervision of Prof. Ambuj Tewari. I completed my master's and bachelor's degree in Statistics from ISI, Kolkata. My research interest includes GenAI, high dimensional statistics, privacy, and online bandits.
Переглядів: 18

Відео

IFML Seminar: 9/6/24 Perceiving Humans in 4D
Переглядів 5314 днів тому
Speaker: Georogios Pavlakos, Assistant Professor, UT Austin Abstract: From the moment we open our eyes, we are surrounded by people. By observing the people around us, we learn how to interact with them and the world. To create intelligent agents with similar capabilities, it is crucial to endow them with a perceptual system that can interpret and understand human behavior from visual observati...
IFML Seminar: 8/23/24 - Clued-in to Clueless
Переглядів 13721 день тому
Speaker: Olawale Salaudeen, Postdoctoral Associate, MIT CSAIL Abstract: Distribution shifts, where deployment conditions differ from the training environment, are pervasive in real-world AI applications and often undermine model performance. This talk explores why distribution shifts present such challenges and offers actionable strategies to mitigate their impact. I will introduce modern princ...
Panel Discussion on Generative AI
Переглядів 753 місяці тому
A comprehensive discussion on the current state and future of generative AI in academia and industry with panelists from the University of Texas at Austin, SparkCognition, and OpenAI
Danny Diaz: Learning how Evolution Engineers Proteins
Переглядів 473 місяці тому
Protein engineering enables scientists to address medical, chemical, and environmental issues by converting natural proteins into biotechnologies. Currently, this process is more stochastic than deterministic and often fails to generate proteins sufficient for commercializations. However, nature has been evolving proteins for nearly 4 billion years with tremendous success. Here, we present nove...
Stella Offner: Advancing New Frontiers in Astronomy Data Analysis and Discovery with AI
Переглядів 283 місяці тому
Stella Offner, associate professor of astronomy, will deliver her talk “Advancing New Frontiers in Astronomy Data Analysis, Modeling, and Discovery with Artificial Intelligence.” Recent advances in large language models (e.g., ChatGPT) will transform how astronomers interact with data and how astronomy discoveries are made. Prof. Offner will describe studies that apply computer vision and gener...
Luke Zettlemoyer: Branch-Train-Merge: Embarrassingly Parallel Training of Expert Language Models
Переглядів 1393 місяці тому
Existing language model (LM) training regimes entangle compute, data, and parameters, requiring expensive synchronous communication with massive supercomputers. This talk introduces a new algorithm called Branch-Train-Merge (BTM) that asynchronously trains LMs that are fundamentally modular. In BTM, components (or experts) of the LM are specialized to distinct domains in the training corpus, an...
Sanjay Shakkottai: On Solving Inverse Problems Using Latent Diffusion-based Generative Models
Переглядів 1383 місяці тому
Diffusion models have emerged as a powerful new approach to generative modeling. In this talk, we present the first framework that uses pre-trained latent diffusion models to solve linear inverse problems such as image denoising, inpainting, and super-resolution. Previously proposed algorithms (such as DPS and DDRM) only apply to pixel-space diffusion models. We theoretically analyze our algori...
Panel: Navigating Intersection: AI’s Role in Shaping the Secure Open Source Software Ecosystem
Переглядів 363 місяці тому
Join us as we navigate these intersections, exploring the relationship between AI, security, and open-source software (OSS) could drive innovation, enhancing security, and fostering a more robust open-source community. This talk will emphasize the interconnectedness of AI, security, and OSS, and the transformative potential of these intersections.
Dayran Dehghanpisheh: Securing LLMs
Переглядів 353 місяці тому
OpenAI's GPT-4 and other LLMs are revolutionizing AI. Their adoption spans various sectors, including customer service, healthcare, and content creation, driving the market's growth from USD 11.3 billion in 2023 to an expected USD 51.8 billion by 2028, according to multiple industry analysts. This growth, fueled by the demand for applications like chatbots and virtual assistants, positions LLMs...
Dan Roth: Reasoning Myths about Language Models: What is Next?
Переглядів 1023 місяці тому
Performance of language models and higher-order reasoning. On the road to AGI, have we solved it all?
Sébastien Bubeck: Small Language Models
Переглядів 1653 місяці тому
Large language models (LLMs) have taken the field of AI by storm. But how large do they really need to be? I'll discuss the phi series of models from Microsoft, which exhibit many of the striking emergent properties of LLMs despite having merely a few billion parameters.
IFML Seminar: 5/3/24 - Generating a Video: Reflecting on a Two-Year Odyssey
Переглядів 1724 місяці тому
Speaker: Atlas Wang, Associate Professor, The University of Texas at Austin Abstract: In this talk, I will recount the developmental trajectory of video generation models at Picsart AI Research over the past two years-a journey that has taken us from initial baselines to the frontiers of ultra-long video streaming and storytelling. Our inaugural project Text2Video-Zero, presented at ICCV 2023, ...
IFML Seminar: 4/12/24 - Iterative Hard Thresholding for Sparse Generalized Linear Models
Переглядів 1724 місяці тому
Speaker: Arya Mazumdar, Associate Professor, UC San Diego Abstract: The first step to understand non-linear models in machine learning is the study of generalized linear models that include linear regression, logistic regression, half-space learning, and two-layer neural networks as special cases. In this talk we discuss some algorithmic approaches for parameter learning in sparse generalized l...
IFML Seminar: 3/29/24 - Generative Models AAA: Acceleration, Application, Adversary
Переглядів 1354 місяці тому
Speaker: Amin Karbasi, Associate Professor at Yale University and Staff Scientist at Google NY Abstract: In this talk, we will delve into the dynamic and evolving landscape of generative AI, concentrating on three areas: the acceleration of foundation models for extensive context lengths, the implications of such accelerations in teaching these models the intricate 'language of the brain', and ...
AIHealthTalk : 4/10/24 - Towards Digital Twins for Cardiovascular Health: From Clinical To Remote
Переглядів 414 місяці тому
AIHealthTalk : 4/10/24 - Towards Digital Twins for Cardiovascular Health: From Clinical To Remote
IFML Seminar: 4/5/24 - Robustness in the Era of LLMs: Jailbreaking Attacks and Defenses
Переглядів 3545 місяців тому
IFML Seminar: 4/5/24 - Robustness in the Era of LLMs: Jailbreaking Attacks and Defenses
AIHealthTalk : 4/3/24 - The Generalist Medical AI Will See You Now
Переглядів 925 місяців тому
AIHealthTalk : 4/3/24 - The Generalist Medical AI Will See You Now
IFML Seminar: 3/29/24 - Generative Models AAA: Acceleration, Application, Adversary
Переглядів 1475 місяців тому
IFML Seminar: 3/29/24 - Generative Models AAA: Acceleration, Application, Adversary
AIHealthTalk : 3/27/24 - Shaping the Creation and Adoption of Large Language Models in Healthcare
Переглядів 705 місяців тому
AIHealthTalk : 3/27/24 - Shaping the Creation and Adoption of Large Language Models in Healthcare
AIHealthTalk: 3/20/24 - How LLMs Might Help Scale World Class Healthcare to Everyone
Переглядів 2965 місяців тому
AIHealthTalk: 3/20/24 - How LLMs Might Help Scale World Class Healthcare to Everyone
IFML Seminar: 3/8/2024 - An Lyapunov Analysis of the Lion Optimizer
Переглядів 3916 місяців тому
IFML Seminar: 3/8/2024 - An Lyapunov Analysis of the Lion Optimizer
IFML Seminar: 2/23/2024 - Recent Advances in Parallel Stochastic Convex Optimization
Переглядів 2676 місяців тому
IFML Seminar: 2/23/2024 - Recent Advances in Parallel Stochastic Convex Optimization
IFML Seminar: 3/1/2024 - On Solving Inverse Problems Using Latent Diffusion-based Generative Models
Переглядів 9106 місяців тому
IFML Seminar: 3/1/2024 - On Solving Inverse Problems Using Latent Diffusion-based Generative Models
IFML SEMINAR: 2/16/24 - Long Context Foundational Models
Переглядів 2977 місяців тому
IFML SEMINAR: 2/16/24 - Long Context Foundational Models
IFML SEMINAR: 2/2/24 - Gromov-Wasserstein Alignment: Statistical and Computational Advancements...
Переглядів 1,7 тис.7 місяців тому
IFML SEMINAR: 2/2/24 - Gromov-Wasserstein Alignment: Statistical and Computational Advancements...
IFML SEMINAR: 1/26/24 - Meta Optimization
Переглядів 1,5 тис.7 місяців тому
IFML SEMINAR: 1/26/24 - Meta Optimization
2023 Machine Learning Lab Public Lecture -- Scott Aaronson
Переглядів 2 тис.Рік тому
2023 Machine Learning Lab Public Lecture Scott Aaronson
Visual Quality Measurement: At the Nexus of Video Engineering, Visual Neuroscience and Deep Learning
Переглядів 101Рік тому
Visual Quality Measurement: At the Nexus of Video Engineering, Visual Neuroscience and Deep Learning
MLL Public Lecture 2022
Переглядів 36Рік тому
MLL Public Lecture 2022

КОМЕНТАРІ

  • @luke.perkin.inventor
    @luke.perkin.inventor 2 місяці тому

    A really interesting paper, and some good results. I was wondering if diffusion models could be trained with different types of noise - motion blur, geometric distortion, etc not just random latent perturbations. Conceptually it is quite a different problem to denoising!

  • @mulderbm
    @mulderbm 3 місяці тому

    Thanks for this very much needed talk

  • @mnazaal
    @mnazaal 6 місяців тому

    Starts 12:29

  • @Fetrose
    @Fetrose 7 місяців тому

    The audience should show respect to the speaker as well as other online audiences. It's unprofessional when in-person audiences interrupt the speaker with too many questions. It would be better for them to hold their questions until the end of the session.

    • @ullibowyer
      @ullibowyer 7 місяців тому

      The speaker literally asked for the audience to interrupt him at any time if they had questions, and offered a book as a prize for the most questions in order to incentivise the audience to do so.

    • @Fetrose
      @Fetrose 7 місяців тому

      @@ullibowyer thank you for the clarification.

  • @黄敏-l6s
    @黄敏-l6s 9 місяців тому

    Good

  • @VinnieDreher
    @VinnieDreher Рік тому

    Is there a website to learn this content?

  • @syedr94
    @syedr94 2 роки тому

    ayyyyyy lmao