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April 27, 2017

  • Date:20TuesdayJanuary 2026

    Structure-Function Rules for Protein Sensing and Response at Atomic Resolution

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    Time
    11:15 - 12:15
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerDr. Lee Schnaider
    Organizer
    Department of Chemical and Structural Biology , Department of Biomolecular Sciences
    Lecture
  • Date:20TuesdayJanuary 2026

    NitroNet – a machine learning model for the prediction of tropospheric NO2 profiles from TROPOMI observations

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    Time
    11:30 - 12:30
    Location
    Via zoom only
    LecturerLeon Kuhn
    Organizer
    Department of Earth and Planetary Sciences
    AbstractShow full text abstract about Satellite instruments, such as TROPOMI, are routinelyused to...»
    Satellite instruments, such as TROPOMI, are routinelyused to quantify tropospheric nitrogen dioxide (NO2)based on its narrowband light absorption in the UV/visible spectral range. The key limitation of suchretrievals is that they can only return the „verticalcolumn density“ (VCD), defined as the integral of theNO2 concentration profile. The profile itself, whichdescribes the vertical distribution of NO2, remainsunknown.This presentation showcases „NitroNet“, the first NO2profile retrieval for TROPOMI. NitroNet is a neuralnetwork, which was trained on synthetic NO2 profilesfrom the regional chemistry and transport model WRFChem,operated on a European domain for the month ofMay 2019. The neural network receives NO2 VCDs fromTROPOMI alongside ancillary variables (meteorology,emission data, etc.) as input, from which it estimates NO2concentration profiles.The talk covers:• an introduction to satellite remote sensing of NO2.• the theoretical underpinnings of NitroNet, how themodel was trained, and how it was validated.• practical new applications that NitroNet enables.
    Lecture
  • Date:20TuesdayJanuary 2026

    Machine Learning and Statistics Seminar

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    Time
    12:15 - 13:15
    Title
    Computational and Statistical Limits in Modern Machine Learning
    Location
    Jacob Ziskind Building
    Room 155 - חדר 155
    LecturerIdan Attias
    TTIC
    Organizer
    Department of Computer Science and Applied Mathematics
    Contact
    AbstractShow full text abstract about Modern machine learning systems operate in regimes that chal...»
    Modern machine learning systems operate in regimes that challenge classical learning-theoretic assumptions. Models are highly overparameterized, trained with simple optimization algorithms, and rely critically on how data is collected and curated. Understanding the limits of learning in these settings requires revisiting both the computational and statistical foundations of learning theory.

     

    A central question in learning theory asks which functions are tractably learnable. Classical complexity results suggest strong computational barriers, motivating a focus on “learnable subclasses” defined by properties of the target function. In this talk, I argue for a different perspective by emphasizing the role of the training distribution. Fixing the learning algorithm (e.g. stochastic gradient descent applied to neural networks), I show that allowing a “positive distribution shift”, where training data is drawn from a carefully chosen auxiliary distribution while evaluation remains on the target distribution, can render several classically hard learning problems tractable.

     

    Beyond computational considerations, I then study statistical limits of learning in modern, overparameterized models using stochastic convex optimization as a theoretical framework. While classical theory often suggests that successful generalization requires avoiding memorization, I show that memorization is in fact unavoidable: achieving high accuracy requires retaining nontrivial information about the training data and can even enable the identification of individual training examples. These results reveal fundamental privacy–accuracy tradeoffs inherent to accurate learning.

     

    Bio:

     

    Idan Attias is a postdoctoral researcher at the Institute for Data, Econometrics, Algorithms, and Learning (IDEAL), working with Lev Reyzin (University of Illinois Chicago), Nati Srebro, and Avrim Blum (Toyota Technological Institute at Chicago). He obtained his Ph.D. in Computer Science under the supervision of Aryeh Kontorovich (Ben-Gurion University) and Yishay Mansour (Tel Aviv University and Google Research).

     

    His research focuses on the foundations of machine learning theory and data-driven sequential decision-making. His work has been recognized with a Best Paper Award at ICML ’24 and selection as a Rising Star in Data Science (University of California San Diego ’24). His postdoctoral research is supported by an NSF fellowship, and his Ph.D. studies were fully supported by the Israeli Council for Higher Education Scholarship for Outstanding PhD Students in Data Science.
    Lecture
  • Date:21WednesdayJanuary 2026

    2025-2026 Spotlight on Science Seminar Series - Dr. Jason Cooper (Department of Science Teaching)

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    Time
    12:30 - 14:00
    Title
    Why are school mathematics and sciences so boring? How discipline-faithful teaching can make a difference
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerJason Cooper
    Contact
    AbstractShow full text abstract about One hardly needs to convince theWeizmann community how excit...»
    One hardly needs to convince theWeizmann community how excitingmathematics and science can be. Yet alltoo often these subjects in school aredreary and mundane, taught as a set offacts that need to be memorized andprocedures that need to be mastered.This does little to help inspire the nextgeneration of mathematicians andscientists. Education researchers havebeen investigating ways to narrow thegap between scientific disciplines andtheir school counterparts for decades,yet this gap has its institutionalrationalities, making the gap frustratinglypersistent. In the talk, I will discuss whythis is a “wicked” problem and presentsome research on approaches to bringthe ethos of the academic disciplinesinto the school subjects.
    Lecture
  • Date:22ThursdayJanuary 2026

    Vision and AI

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    Time
    12:15 - 13:15
    Title
    Addressing the Unexpected - Anomaly Detection and AI Safety
    Location
    Jacob Ziskind Building
    Room 1 - 1 חדר
    LecturerNiv Cohen
    NYU
    Organizer
    Department of Computer Science and Applied Mathematics
    Contact
    AbstractShow full text abstract about While AI models are becoming an ever-increasing part of our ...»
    While AI models are becoming an ever-increasing part of our lives, our understanding of their behavior in unexpected situations is drifting even further out of reach. This gap poses significant risks to users, model owners, and society at large.

    In the first part of the talk, I will overview my research on detecting unexpected phenomena with and within deep learning models. Specifically, detecting (i) anomalous samples, (ii) unexpected model behavior, and (iii) unexpected security threats. In the second part of the talk, I will dive into my recent research on a specific type of unexpected security threat: attacks on image watermarks. I will review such attacks and present my recent work toward addressing them. I will conclude with a discussion of future research directions.

    Bio:

    Niv Cohen is a postdoctoral researcher at the school of Computer Science & Engineering at New York University. He received his Ph.D. in Computer Science from the Hebrew University in 2024. His research interests include representation learning, computer vision, and AI safety. He is a recipient of the VATAT Scholarship for Outstanding Postdoctoral Fellows in Data Science and the 2024 Blavatnik Prize for Outstanding Israeli Doctoral Students in Computer Science.
    Lecture
  • Date:22ThursdayJanuary 2026

    Geometric Functional Analysis and Probability Seminar

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    Time
    13:30 - 14:30
    Title
    TBD
    Location
    Jacob Ziskind Building
    Room 155 - חדר 155
    LecturerElliot Paquette
    McGill
    Organizer
    Faculty of Mathematics and Computer Science
    Contact
    Lecture
  • Date:27TuesdayJanuary 2026

    Vesiculab: Advancing the Extracellular Vesicle Workflow

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    Time
    11:00 - 12:30
    Location
    https://events.teams.microsoft.com/event/5dff50bf-ce1e-45b2-a878-fe3a396375be@3f0f7402-6ba8-43ab-9da8-356d1657dd55
    Contact
    AbstractShow full text abstract about Dear Colleagues,You are cordially invited to a scientific an...»
    Dear Colleagues,You are cordially invited to a scientific and application focused webinar entitled Vesiculab: Advancing the Extracellular Vesicle Workflow. This webinar will present state of the art approaches for improving reproducibility, analytical rigor, and translational relevance in extracellular vesicle research, with an emphasis on practical solutions for everyday laboratory workflows. The presentation will be delivered by Dr Dimitri Aubert, PhD, CEO of Vesiculab. Scientific topics include:Fast size exclusion chromatography for efficient EV isolation,Total EV staining strategies for in vitro and in vivo studies,Optimized EV sample preparation for analytical and functional assays,Calibration principles for nanoflow cytometry and fluorescence NTA,Best practices for EV handling, storage, and preservation.
    Lecture
  • Date:27TuesdayJanuary 2026

    Weizmann Ornithology monthly lecture

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    Time
    14:10 - 15:30
    Title
    To be announced
    Location
    Benoziyo
    591C
    LecturerProf. Orr Spiegel
    Organizer
    Department of Plant and Environmental Sciences
    Contact
    AbstractShow full text abstract about Prof. Orr Spiegel from TAU studies animal movement ...»
    Prof. Orr Spiegel from TAU studies animal movement
    Lecture
  • Date:28WednesdayJanuary 2026

    iSCAR Breakfast Seminar

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    Time
    09:00 - 10:00
    Title
    Cellular and Molecular Trajectories of Age-associated Lymphocytes and Their Impact on Aging and Cognitive Decline
    Location
    Max and Lillian Candiotty Building
    Auditorium
    LecturerProf. Alon Monsonego
    Organizer
    Department of Immunology and Regenerative Biology
    Contact
    Lecture
  • Date:28WednesdayJanuary 2026

    Collective states in molecular lattices: A novel route for tailored 2D and 1D materials

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    Time
    11:00 - 12:15
    Location
    Gerhard M.J. Schmidt Lecture Hall
    LecturerProf. Stephanie Reich
    Homepage
    AbstractShow full text abstract about Two-dimensional materials are atomically thin crystals with ...»
    Two-dimensional materials are atomically thin crystals with a huge variety of physico-chemical properties. By stacking such materials into heterostructures we can combine the electrical, optical, and vibrational excitations of different materials with atomic control over their interfaces. Despite the great selection of 2D materials existing today, we desire novel routes for their preparation in addition to cleaving them from layered bulk parent compounds.In this talk I discuss a concept for novel 2D materials from organic molecules: Growing molecules into well-defined 2D and 1D lattices. We prepared 2D lattices of flat aromatic molecules using hexagonal boron nitride and graphene as atomically smooth substrates. The molecules are well separated in space and oriented side-by-side so that electrons and vibrations are confined to the individual building blocks. However, the interaction between their optical and vibrational transition dipole moments gives rise to collective states that can propagate inside the lattices. One-dimensional molecular lattices are grown by filling carbon- and boron-nitride nanotubes leading to giant J aggregates inside the tubes. We discuss how to use molecular lattices for advance molecular-2D-material heterostructures and how to manipulate their emergent optical excitations.
    Colloquia
  • Date:29ThursdayJanuary 2026

    Israel Algorithmic Game Theory Day

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    Time
    08:00 - 08:00
    Title
    Israel Algorithmic Game Theory Day
    Chairperson
    Shahar Dobzinski
    Contact
    Conference
  • Date:29ThursdayJanuary 2026

    Proteolysis-driven immunity: New insights into the role of proteasome-cleaved peptides in adaptive

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    Time
    14:00 - 15:00
    Location
    Max and Lillian Candiotty Building
    Auditorium
    LecturerProf. Yifat Merbl
    Organizer
    Dwek Institute for Cancer Therapy Research
    Lecture
  • Date:02MondayFebruary 202604WednesdayFebruary 2026

    Winter STAR Workshop 2026 in honor of Lenny Makar-Limanov's 80th birthday

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    Time
    All day
    Location
    Jacob Ziskind Building
    Room 1, 155
    Homepage
    Academic Events
  • Date:03TuesdayFebruary 2026

    Scientific Council Meeting - Steering 2026

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    Time
    10:00 - 12:00
    Location
    The David Lopatie Conference Centre
    KIMEL
    Contact
    Academic Events
  • Date:05ThursdayFebruary 2026

    Unleashing natural IL-18 activity using an anti-IL-18BP blocker antibody induces potent immune stimulation and anti-tumor effects

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    Time
    14:00 - 15:00
    Location
    Candiotty
    Auditorium
    LecturerDr. Assaf Menachem
    Organizer
    Dwek Institute for Cancer Therapy Research
    Lecture
  • Date:11WednesdayFebruary 202612ThursdayFebruary 2026

    Stress

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    Time
    08:00 - 08:00
    Title
    Stress
    Location
    The David Lopatie Conference Centre
    Chairperson
    Ruth Scherz-Shouval
    Homepage
    Contact
    Conference
  • Date:11WednesdayFebruary 2026

    Building Bridges through Cell Death

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    Time
    09:30 - 17:30
    Location
    Arthur and Rochelle Belfer Building for Biomedical Research
    Botnar Auditorium
    Contact
    Lecture
  • Date:15SundayFebruary 2026

    PhD Defense seminar by Chen Weller (Prof. Yardena Samuels Lab

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    Time
    13:30 - 15:30
    Title
    Studying the Cancer Immunopeptidome: From Translation Aberrations to Immune Evasion
    Location
    Candiotty auditorium
    Lecture
  • Date:17TuesdayFebruary 2026

    Presentation of PSIFAS - The Israeli National Genomic Medicine Initiative

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    Time
    15:00 - 16:00
    Location
    Schmidt Hall
    LecturerProf. Gabi Barabah
    Lecture
  • Date:18WednesdayFebruary 2026

    2025-2026 Spotlight on Science Seminar Series

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    Time
    12:30 - 14:00
    Location
    Gerhard M.J. Schmidt Lecture Hall
    Contact
    Lecture

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