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March 25, 2015
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Date:03MondayJuly 2023Lecture
Choosing the Right Model for Translational Cancer Research
More information Time 12:15 - 13:00Location Wolfson Building for Biological ResearchLecturer Prof. Ruth Scherz-Shouval
Dept. of Biomolecular SciencesOrganizer Weizmann School of ScienceContact -
Date:04TuesdayJuly 2023Lecture
Siah3 acts upstream to Parkin to limit mitophagy and facilitate the apoptotic machinery during axonal pruning
More information Time 10:00 - 11:00Location Nella and Leon Benoziyo Building for Biological SciencesLecturer Omer Abraham
Dept. of Biomolecular Sciences, WISOrganizer Department of Biomolecular SciencesContact Abstract Show full text abstract about Spatial and temporal regulation of the apoptotic machinery i...» Spatial and temporal regulation of the apoptotic machinery is critical for the execution of multiple cellular events. Here we identify Seven In Absentia Homolog 3 (Siah3) as a new regulator of the cell death machinery during axonal pruning in developing mice. Sensory neurons from Siah3 KO mice exhibit delayed axonal degeneration and Caspase-3 activation in response to trophic deprivation. In agreement, the Siah3 KO mice display increased peripheral sensory innervation. Mechanistically, we show that Siah3 directly binds to the core mitophagy machinery protein Parkin, and, importantly, co-ablation of Prkn and Siah3 reverses the delay in axonal degeneration and Caspase-3 activation detected in Siah3 KO neurons. Strikingly, loss of Siah3 causes dramatic increase in axonal mitophagy upon trophic deprivation, suggesting that Siah3 is a positive regulator of axonal elimination acting by modulation of Parkin-mediated mitophagy. Overall, our results suggest that Parkin-mediated mitophagy restrains the apoptotic system by eliminating signaling mitochondria and reveal the role of mitochondrial signaling in axonal elimination. -
Date:04TuesdayJuly 2023Lecture
Conservation Biology in the age of big data?
More information Time 11:30 - 12:30Location Nella and Leon Benoziyo Building for Biological SciencesLecturer Prof. Uri Roll
Ben Gurion University of the NegevOrganizer Department of Plant and Environmental SciencesContact Abstract Show full text abstract about Host: Dr. David Zeevi ...» Host: Dr. David Zeevi -
Date:05WednesdayJuly 2023Lecture
Chromatin 3D distribution in live muscle nuclei: impacts on epigenetic activation/repression of chromatin
More information Time 10:00 - 11:00Location Arthur and Rochelle Belfer Building for Biomedical ResearchLecturer Prof. Talila Volk
Dept of Molecular Genetics, WISOrganizer Department of Brain SciencesContact -
Date:05WednesdayJuly 2023Lecture
Discovery & Development of Therapeutic Interfering Particles (TIPs): single-administration, escape-resistant antivirals
More information Time 11:00 - 12:00Location Max and Lillian Candiotty BuildingLecturer Prof. Leor Weinberger
Gladstone Institutes | University of California, San Francisco (UCSF), USAOrganizer Department of Immunology and Regenerative BiologyContact -
Date:05WednesdayJuly 2023Lecture
Machine Learning and Statistics Seminar
More information Time 11:15 - 12:15Title Implicit Bias and Provable Generalization in Overparameterized Neural NetworksLocation Jacob Ziskind BuildingOrganizer Department of Computer Science and Applied MathematicsContact Abstract Show full text abstract about When training large neural networks, there are typically man...» When training large neural networks, there are typically many solutions that perfectly fit the training data. Nevertheless, gradient-based methods have a tendency to reach those which generalize well, and understanding this "implicit bias" has been a subject of extensive research. In this talk, I will discuss three works that show settings where the implicit bias provably implies generalization in two-layer neural networks: First, the implicit bias implies generalization in univariate ReLU networks. Second, in ReLU networks where the data consists of clusters and the correlations between cluster means are small, the implicit bias leads to solutions that generalize well, but are highly vulnerable to adversarial examples. Third, in Leaky-ReLU networks (as well as linear classifiers), under certain assumptions on the input distribution, the implicit bias leads to benign overfitting: the estimators interpolate noisy training data and simultaneously generalize well to test data.
Based on joint works with Spencer Frei, Itay Safran, Peter L. Bartlett, Jason D. Lee, and Nati Srebro.
Bio:
Gal is a postdoc at TTI-Chicago and the Hebrew University, hosted by Nati Srebro and Amit Daniely as part of the NSF/Simons Collaboration on the Theoretical Foundations of Deep Learning. Prior to that, he was a postdoc at the Weizmann Institute, hosted by Ohad Shamir, and a PhD student at the Hebrew University, advised by Orna Kupferman. His research focuses on theoretical machine learning, with an emphasis on deep-learning theory. -
Date:05WednesdayJuly 2023Lecture
Toward “reading” and “writing” neural population codes in the primate cortex
More information Time 12:30 - 13:30Location Arthur and Rochelle Belfer Building for Biomedical ResearchLecturer Prof. Eyal Seidemann
Depts. of Psychology and Neuroscience University of Texas at Austin.Organizer Department of Brain SciencesContact Abstract Show full text abstract about : A central goal of sensory neuroscience is to understand th...» : A central goal of sensory neuroscience is to understand the nature of the neural code in sensory cortex to the point where we could “read” the code – i.e., account for a subject’s perceptual capabilities using solely the relevant cortical signals, and “write” the code – i.e., substitute sensory stimuli with direct cortical stimulation that is perceptually equivalent. Distributed representations and topography are two key properties of primate sensory cortex. For example, in primary visual cortex (V1), a localized stimulus activates millions of V1 neurons that are distributed over multiple mm2, and neurons that are similarly tuned are clustered together at the sub-mm scale and form several overlaid topographic maps. The distributed and topographic nature of V1’s representation raises the possibility that in some visual tasks, the neural code in V1 operates at the topographic scale rather than at the scale of single neurons. If this were the case, then the fundamental unit of information would be clusters of similarly tuned neurons (e.g., orientation columns), and to account for the subjects’ performance, it would be necessary and sufficient to consider the summed activity of the thousands of neurons within each cluster. A long-term goal of my lab is to test the topographic population code hypothesis. In this presentation, I will describe our progress toward developing a bi-directional, read-write, optical-genetic toolbox for directly testing this hypothesis in behaving macaques.
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Date:06ThursdayJuly 2023Colloquia
Physics colloquium
More information Time 11:15 - 12:30Title Intercalation 2.0Location Edna and K.B. Weissman Building of Physical SciencesLecturer Prof Jurgen Smet
Max Planck InstituteOrganizer Faculty of PhysicsContact Abstract Show full text abstract about The intercalation of ions is a powerful strategy to modify t...» The intercalation of ions is a powerful strategy to modify the structural, electrical and optical properties of layered solids [1]. It is also a key ingredient for energy storage and the operation of secondary batteries. Even though first studies of driving chemical elements into the van der Waals galleries of graphite date back to as early as 1840, we believe that our recent successful demonstration of on-chip electrochemistry driven ion intercalation in the single van der Waals gallery of a graphene bilayer marks a paradigm shift. The “active” device area is left uncovered by the electrolyte and we can borrow the toolbox of the low dimensional electron system community for monitoring the ion transport [2,3]. This intercalation 2.0 offers, in conjunction with the versatile technique of van der Waals stacking of 2D materials for engineering arbitrary layered structures and hetero-interfaces, unprecedented control and truly unique opportunities to chart new territory in the fields addressing ion transport, diffusion, storage and intercalant induced structural, electronic and optical property changes. Here, examples will be presented how this technique has been exploited to study ion diffusion, ion ordering as well as unconventional superconductivity.
[1] M.S. Dresselhaus, G. Dresselhaus, Intercalation compounds of graphite, Advances in Physics 51-1, 1-186 (2002).
[2] M. Kühne, F. Paolucci, J. Popovic, P. Ostrovsky, J. Maier, J. Smet, Ultrafast lithium diffusion in bilayer graphene, Nature Nanotechnology 12, 895 (2017).
[3] M. Kühne, F. Börrnert, S. Fecher, M. Ghorbani-Asl, J. Biskupek, D. Samuelis, A. Krasheninnikov, U. Kaiser, J. Smet, Reversible superdense ordering of lithium between two graphene sheets, Nature 564, 234-239 (2018). -
Date:06ThursdayJuly 2023Lecture
Vision and AI
More information Time 12:15 - 13:15Title When is Unsupervised Disentanglement Possible?Location Jacob Ziskind BuildingLecturer Daniella Horan
HUJIOrganizer Department of Computer Science and Applied MathematicsContact Abstract Show full text abstract about A common assumption in many domains is that high dimensional...» A common assumption in many domains is that high dimensional data are a smooth nonlinear function of a small number of independent factors. When is it possible to recover the factors from unlabeled data? In the context of deep models this problem is called "disentanglement" and was recently shown to be impossible without additional strong assumptions. In this work, we show that the assumption of local isometry together with non-Gaussianity of the factors, is sufficient to provably recover disentangled representations from data. We leverage recent advances in deep generative models to construct manifolds of highly realistic images for which the ground truth latent representation is known, and test whether modern and classical methods succeed in recovering the latent factors. For many different manifolds, we find that a spectral method that explicitly optimizes local isometry and non-Gaussianity consistently finds the correct latent factors, while baseline deep autoencoders do not. We propose how to encourage deep autoencoders to find encodings that satisfy local isometry and show that this helps them discover disentangled representations. Overall, our results suggest that in some realistic settings, unsupervised disentanglement is provably possible, without any domain-specific assumptions.
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Date:06ThursdayJuly 2023Lecture
Phosphoinositide switches at the cytokinetic bridge control abscission, senescence and cellular ploidy
More information Time 14:00 - 15:00Location Max and Lillian Candiotty BuildingLecturer Prof. Emilio Hirsch
Professor of Experimental Biology, Department of Molecular Biotechnology and Health Sciences Director, Center for Molecular Biotechnology School of Medicine, University of Torino, ItalyOrganizer Dwek Institute for Cancer Therapy ResearchContact -
Date:09SundayJuly 2023Lecture
A Neolithic Tsunami Event along the Eastern Mediterranean Littoral: A Transdisciplinary Research at the Coast of Dor Israel
More information Time 11:00 - 11:00Location Sussman Family Building for Environmental SciencesLecturer Gilad Steinberg
University of California San DiegoOrganizer Department of Earth and Planetary SciencesContact Abstract Show full text abstract about Tsunami events in antiquity had a profound influence on coas...» Tsunami events in antiquity had a profound influence on coastal societies. Six thousand years of historical records and geological data show that tsunamis are a common phenomenon affecting the eastern Mediterranean coastline. However, the possible impact of older tsunamis on prehistoric societies has not been investigated. Here we report, based on optically stimulated luminescence chronology, the earliest documented Holocene tsunami event, between 9.91 to 9.29 ka (kilo-annum), from the eastern Mediterranean at Dor, Israel. Tsunami debris from the early Neolithic is composed of marine sand embedded within fresh-brackish wetland deposits. Global and local sea-level curves for the period, 9.91–9.29 ka, as well as surface elevation reconstructions, show that the tsunami had a run-up of at least ~16 m and traveled between 3.5 to 1.5 km inland from the palaeo-coastline. Submerged slump scars on the continental slope, 16 km west of Dor, point to the nearby “Dor complex” as a likely cause. The near absence of Pre-Pottery Neolithic A-B archaeological sites (11.70–9.80 cal. ka) suggests these sites were removed by the tsunami, whereas younger, late Pre-Pottery Neolithic B-C (9.25–8.35 cal. ka) and later Pottery-Neolithic sites (8.25–7.80 cal. ka) indicate resettlement following the event. The significant run-up of this event highlights the disruptive impact of tsunamis on past societies along the Levantine coast. -
Date:10MondayJuly 2023Lecture
Systems Biology Seminar 2022-2023
More information Time 10:00 - 11:00Location Arthur and Rochelle Belfer Building for Biomedical ResearchOrganizer Azrieli Institute for Systems BiologyContact -
Date:10MondayJuly 2023Lecture
Cancer Imaging Principles
More information Time 11:15 - 12:00Location Wolfson Building for Biological ResearchLecturer Prof. Rachel Katz-Brull
Faculty of Medicine Department of Radiology , The Hebrew University-Hadassah Medical SchoolContact -
Date:10MondayJuly 2023Lecture
PhD Thesis Defense by Amichay Afriat (Shalev Itzkovitz Lab)
More information Time 12:00 - 14:00Title Spatio-temporal analysis of host-pathogen interactions in zonatedmetabolic tissuesLocation Ullmann Building of Life SciencesLecturer Amichay Afriat
Shalev Itzkovitz LabOrganizer Department of Molecular Cell BiologyContact -
Date:10MondayJuly 2023Lecture
Cancer Imaging in the Clinics
More information Time 12:15 - 13:00Location Wolfson Building for Biological ResearchLecturer Prof. Dorith Shaham
Unit Director, CT and Cardiothoracic Imaging , The Hebrew University-Hadassah Medical SchoolContact -
Date:10MondayJuly 2023Lecture
Dendritic voltage imaging, excitability rules, and plasticity
More information Time 12:45 - 13:45Location Gerhard M.J. Schmidt Lecture HallLecturer Prof. Adam E. Cohen
Depts of Chemistry, Chemical Biology and Physics Harvard UniversityOrganizer Department of Brain SciencesContact Abstract Show full text abstract about Membrane voltage in dendrites plays a key role in mediating ...» Membrane voltage in dendrites plays a key role in mediating synaptic integration and activity-dependent plasticity; but dendritic voltages have been difficult to measure. We developed molecular, optical, and computational tools for simultaneous optogenetic perturbations and voltage mapping in dendrites of neurons in acute slices and in awake mice. These experiments revealed relations between dendritic ion channel biophysics and rules of synaptic integration and plasticity. I will also describe tools for mapping large-scale network dynamics with millisecond time resolution, and for mapping brain-wide patterns of plasticity.
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Date:11TuesdayJuly 2023Lecture
Unconventional semiconductors and device architectures enabled by molecular design, doping and film morphology engineering
More information Time 11:00 - 12:00Location Gerhard M.J. Schmidt Lecture HallLecturer Prof. Antonio Facchetti
Department of Chemistry and the Materials Research Center, Northwestern UniversityOrganizer Department of Molecular Chemistry and Materials ScienceContact Abstract Show full text abstract about Organic/printed electronics is a technology enabling the fab...» Organic/printed electronics is a technology enabling the fabrication of mechanically flexible/stretchable electronic circuits and devices using low-temperature, possibly by additive, solution processing methodologies. In this presentation we report the development of novel materials, as well as thin-film processing and morphology engineering, for flexible and stretchable organic and inorganic thin film transistors, electrolyte gated transistors and circuits. On material development, we present that “soft” small-molecules and polymers can be synthesized by co-polymerizing naphthalenediimide (NDI) or diketopyrrolopyrrole (DPP) units with proper co-monomer building blocks or properly designed additives. Furthermore, we also report the fabrication of stretchable inorganic metal oxide fiber network by spry coating metal salts+thermally labile polymer formulations. New transistor architectures using semiconductor film porosity as the key element for enhancing mechanical flexibility and tune charge transport are also demonstrated. These films, combined with elastomeric pre-stretching, enables unprecedentedly stable current-output characteristic upon mechanical deformation, which are used for sensing analytes, strain, light, temperature and physiological parameters. Finally, we report our recent work on molecular n-doping of organic semiconductors using a novel strategy involving catalysts.
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Date:13ThursdayJuly 2023Colloquia
Physics colloquium
More information Time 11:15 - 12:30Title TBALocation Edna and K.B. Weissman Building of Physical SciencesLecturer Prof Anindya Das
IISc BangaloreOrganizer Faculty of PhysicsContact Abstract Show full text abstract about TBA ...» TBA -
Date:13ThursdayJuly 2023Lecture
Vision and AI
More information Time 12:15 - 13:15Title SeaThru-NeRF- neural radiance fields in scattering mediaLocation Jacob Ziskind BuildingLecturer Deborah Levy
Haifa UniversityOrganizer Department of Computer Science and Applied MathematicsContact Abstract Show full text abstract about Research on neural radiance fields (NeRFs) for novel view ge...» Research on neural radiance fields (NeRFs) for novel view generation is exploding with new models and extensions. However, a question that remains unanswered is what happens in underwater or foggy scenes where the medium strongly influences the appearance of objects. Thus far, NeRF and its variants have ignored these cases. However, since the NeRF framework is based on volumetric rendering, it has inherent capability to account for the medium’s effects, once modeled appropriately. We develop a new rendering model for NeRFs in scattering media, which is based on the SeaThru image formation model, and suggest a suitable architecture for learning both scene information and medium parameters. We demonstrate the strength of our method using simulated and real-world scenes, correctly rendering novel photorealistic views underwater. Even more excitingly, we can render clear views of these scenes, removing the medium between the camera and the scene and reconstructing the appearance and depth of far objects, which are severely occluded by the medium. I will also briefly show several other projects from our lab.
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Date:16SundayJuly 2023Lecture
Vision and AI
More information Time 12:15 - 13:15Title Deep Learning Approaches for Inverse Problems in Computational Imaging and ChemistryLocation Jacob Ziskind BuildingLecturer Tomer Weiss
TechnionOrganizer Department of Computer Science and Applied MathematicsContact Abstract Show full text abstract about In this talk, I will present two chapters from my Ph.D. thes...» In this talk, I will present two chapters from my Ph.D. thesis. The core of my research focuses on methods that utilize the power of modern neural networks not only for their conventional tasks such as prediction or reconstruction, but rather use the information they “learned” (usually in the forms of their gradients) in order to optimize some end-task, draw insight from the data, or even guide a generative model. The first part of the talk is dedicated to computational imaging and shows how to apply joint optimization of the forward and inverse models to improve the end performance. We demonstrate these methods on three different tasks in the fields of Magnetic Resonance Imaging (MRI) and Multiple Input Multiple Output (MIMO) radar imaging. In the second part, we show a novel method for molecular inverse design that utilizes the power of neural networks in order to propose molecules with desired properties. We developed a guided diffusion model that uses the gradients of a pre-trained prediction model to guide a pre-trained unconditional diffusion model toward the desired properties. This method allows, in general, to transform any unconditional diffusion model into a conditional generative model.
