Generalization in Deep Learning Through the Lens of Implicit Rank Minimization. Nadav Cohen (TAU).

Building 216 room 201

CS colloquium lecture will be given by Dr. Nadav Cohen from Tel-Aviv University. Title: Generalization in Deep Learning Through the Lens of Implicit Rank Minimization Abstract: Understanding deep learning calls for addressing three fundamental questions: expressiveness, optimization and generalization.  Expressiveness refers to the ability of compactly sized neural networks to represent functions capable of solving real-world ... Read more

BIU learning club – Jack Hessel – The Case for Reasoning Beyond Recognition

Location: Engineering building (1103), room 329 Title:The Case for Reasoning Beyond RecognitionAbstract:Algorithms that can jointly process modalities like images+text are needed for next generation search, accessibility, and robot interaction tools. Simply recognizing objects in images, however, is rarely sufficient; to truly be useful, machines must be capable of deeper commonsense inferences about sophisticated multimodal contexts. I'll ... Read more

BIU learning club – Sivan Sabato – Interactive Learning with Discriminative Feature Feedback

Location: Zoom meeting: https://us02web.zoom.us/j/4685913265Title:Interactive Learning with Discriminative Feature Feedback  Abstract:In this talk I will discuss a model of learning with feature-based explanations, that we call Discriminative Feature Feedback. This model formalizes a natural notion of interactive learning with explanations. We study algorithms for this model, including robust algorithms for adversarial and stochastic settings, and derive insightful new results ... Read more

BIU learning club – Students’ talks

NameLab HeadTitle12:00-12:15Ori ErnstIdo DaganBeyond End-to-End: The Case of Multi Document Summarization12:15-12:30Shon OtmazginYoav GoldbergLingMess & F-COREF: Fast, Accurate, and Easy to Use models for Coreference Resolution12:30-12:45Lior Frenkel Jacob GCalibration of Medical Imaging Classification Systems with Weight Scaling12:45-13:00Coby PensoEthan FetayaFunctional Ensemble Distillation13:00-14:00Lunch

BIU learning club – Amir Globerson – Notions of simplicity in deep learning: From time series to images

Location:Engineering building (1103), room 329Title:Notions of simplicity in deep learning: From time series to images Abstract:It is standard practice indeep learning to train large models on relatively small datasets. This canpotentially lead to severe overfitting, but more often than not, test error isactually good. This phenomenon has prompted research on the so-called "ImplicitBias of Deep Learning Algorithms". ... Read more

High dimensional expanders beyond spectral analysis, Talk by Dudi Mass

on 23.11.22 at 12:00 we will have a festive talk by Dudi Mass, summarizing his PhD., in Building 403, room 217. (this will be part of the theory seminar organized by Arnold Filtser)   ************************************************* **There will be food served in the talk *** ******************************************   Title of talk : High dimensional expanders beyond spectral analysis    Abstract:  In ... Read more

BIU learning club – Tom Tirer – Exploring Deep Neural Collapse via Extended and Controlled Unconstrained Features Models

Location:Engineering building (1103), room 329Title:Exploring Deep Neural Collapse via Extended and Controlled Unconstrained Features ModelsAbstract:Training deep neural networks for classification often includes minimizing the training loss beyond the zero training error point. In this phase of training, a "neural collapse" (NC) behavior has been empirically observed: the variability of features (outputs of the penultimate layer) ... Read more

TAU Style: inversion, editing, and applications of StyleGAN. Dr. Amit Bermano from Tel-Aviv University (CS Colloquium)

Building 216 room 201

(CS Colloquium) TAU Style: inversion, editing, and applications of StyleGAN. Dr. Amit Bermano Tel-Aviv University  Abstract:  The generative abilities of GANs are revolutionizing the field of image synthesis and manipulation. Specifically, StyleGAN reaches the highest levels of image quality, and has become the de-facto golden standard for the editing of facial images. StyleGAN is unsupervised, ... Read more

Recovering Data Semantics. Dr. Roee Shraga (CS Colloquium)

Building 203 Room 221

Sunday, December 4, 2022 11:00 A.M. Building 203 Room 221 Dr. Roee Shraga Northeastern University in Boston י רצ ה על Will lecture on Recovering Data Semantics In data science, it is increasingly the case that the main challenge is finding, curating, and understanding the data that is available to solve a problem at hand. ... Read more

BIU learning club – Chaim Baskin – Graph Representation Learning Through Recoverability

Zoom link: https://us02web.zoom.us/j/4685913265Title:Graph Representation Learning Through Recoverability Abstract:Self-supervised learning methods became popular for graph representation learning because they do not rely on manual labels and offer better generalization. Contrastive methods based on mutual information maximization between augmented instances of the same object are widely used in self-supervised learning of representations. For graph-structured data, however, there are two ... Read more

BIU learning club – Itay Hubara – Toward Fast and Efficient Deep Learning

Zoom link: https://us02web.zoom.us/j/4685913265Title:Toward Fast and Efficient Deep Learning Abstract:Deep Neural Networks (DNNs) are now irreplaceable in various applications. However, DNNs require a vast amount of computational resources. In most cases, complex DNNs training requires several machines working in parallel (most commonly using data parallelism). Moreover, DNNs deployment on devices with limited computational power can be challenging and ... Read more

Genomic language model for function prediction of microbial genes – Danielle Miller (TAU)

בחדר 212 בניין 212

דוקטורנטית מאת״א תבוא להרצות על מודלי שפה לגנומים בקטריאלים. מוזמנים להגיע ולהפיץ לסטודנטים ולחברי סגל נוספים. ההרצאה תתקיים בשעה 14:00 ביום ב׳ 12.12 בחדר 212 בניין 212. כמו כן, אני מתכנן לשדר אותה בזום: https://us02web.zoom.us/j/5509052372 Title:  Genomic language model for function prediction of microbial genes Abstract: Revealing the function of uncharacterized genes is a fundamental challenge in an era of ever-increasing ... Read more

BIU learning club – Ravid Shwartz-Ziv – Exploring the Successes and Limitations of Deep Learning

Location:Engineering building (1103), room 329Title:Exploring the Successes and Limitations of Deep Learning Abstract:In this talk, we will explore the successes and limitations of deep learning networks and highlight the need for more rigorous evaluation. Tree ensemble models often outperform deep learning models for tabular data. However, recently there have been claims that some new deep-learning models ... Read more

The tree reconstruction game: phylogenetic reconstruction using reinforcement learning. Dana Azouri (TAU)

Building 212 Room 212

The tree reconstruction game: phylogenetic reconstruction using reinforcement learning Dana Azouri דוברת: דנה עזורי, דוקטורנטית מאת״א. תתקיים בחדר 212 בניין 212. הרצאה בנושא שחזור עצים פילוגנטיים באמצעות למידת חיזוקים - יום ב׳ 26.12 בשעה 14:00 The following two fields have never interacted before: reinforcement learning and molecular evolution. Here we develop a reinforcement-learning algorithm to ... Read more

Guest lecture – Vered Shwartz – Incorporating Commonsense Reasoning into NLP Models

Location:Engineering building (1103), room 329Title:Incorporating Commonsense Reasoning into NLP ModelsAbstract:Human language is often ambiguous, underspecified, and grounded in social norms. We employ commonsense knowledge and reasoning abilities to understand others. Endowing NLP models with the same abilities is imperative for reaching human-level language understanding and generation skills. In this talk, I will present several lines ... Read more

BIU learning club – Jonathan Berant – Retrieval in the age of large language models

Location:Engineering building (1103), room 329 Title:Retrieval in the age of large language modelsAbstract:Large language models have revolutionized natural language processing. However, such models have a limited receptive field and cannot be applied directly on tasks that require processing entire corpora. In this talk, I will talk about the role of information retrieval in the new landscape ... Read more

BIU learning club – Students’ talks

On Sunday 15.01.23, at 12:00 PM, we will have our second session of students’ presentations. In this session, four students from BIU will present their work. Note that, unlike regular learning club meetings, this meeting will last 2 hours, and will include lunch. It will take place at the Engineering building (1103) in room 329. ... Read more

BIU learning club – Dan Vilenchik – From theory to practice and back – Stance Detection as a case study

Location:Engineering building (1103), room 329Title:From theory to practice and back – Stance Detection as a case studyAbstract:Stance detection is an important task, supporting many downstream tasks such as discourse parsing and modeling the propagation of fake news, rumors, and science denial. In this talk we describe a novel framework for stance detection. Our framework is ... Read more

בינה מלאכותית במרחב האקדמי

אולם קונצרטים בניין מוזיקה (1005)

חבר/ת סגל שלום, הפקולטה למדעי הרוח באוניברסיטת בר-אילן מזמינה אותך לכנס "בינה מלאכותית במרחב האקדמי" מה ההבדל בין בינה מלאכותית לתבונה אנושית? האם צ׳אט בוט יכול להחליף אותנו במשימות האקדמיות, לכתוב עבודות, לחבר מסמכים במקומנו? מהן הסכנות והיתרונות של הChatGPT מבחינה אקדמית ואיך זה ישפיע על החינוך בעתיד הלא רחוק?  12/3-13/3 בשעה 9:30-13:30 אולם קונצרטים ... Read more

Advanced Machine Learning Methods to Accelerate Materials Discovery  (Santiago Miret, Intel)

Building 605, room 11

Hi everyone, You are invited to attend the talk of Santiago Miret at the NLP group seminar that will be held on Thursday 9.3.23, at 11 am. The talk will last approximately 1.5 hours including Q&A. See more details below. Best Regards, Idan Location: Building 605, room 11 Title: Advanced Machine Learning Methods to Accelerate Materials ... Read more

DSI Dinner – March 13, 2023

The Gonda Multidisciplinary Brain Research Center (building 901), Bar-Ilan University

CLICK HERE FOR PHOTOS FROM THE EVENT The event took place at BIU’s Brain Research Center hall (Building 901). Agenda:  17:00-17:15: Gathering and refreshments  17:15-17:30: Opening notes Prof. Onn Shehory 17:30-17:40: Prof. Maayan Zhitomirsky-Geffet, Sarit Sambol-Szasz (Libraries and Information System) Digital Humanities Tools and Resources (part1, part2) 17:40-18:30: Selected talks by DSI grant recipients:   Dr. ... Read more

BIU learning club – Dan Rosenbaum – Functa: data as neural fields

Location:Engineering building (1103), room 329Title:Functa: data as neural fieldsAbstract:It is common practice in deep learning to represent a measurement of the world on a discrete grid, e.g. a 2D grid of pixels. However, the underlying signal represented by these measurements is often continuous, e.g. the scene depicted in an image. A powerful continuous alternative is ... Read more

BIU learning club – Students’ talks

On Sunday 26.03.23, at 12:00 PM, we will have our third session of students’ presentations. In this session, four students from BIU will present their work. Note that, unlike regular learning club meetings, this meeting will last 2 hours, and will include lunch. It will take place at the Engineering building (1103) in room 329. ... Read more

BIU learning club – Alon Cohen – Efficient Rate Optimal Regret for Adversarial Contextual MDPs Using Online Function Approximation

Title:Efficient Rate Optimal Regret for Adversarial Contextual MDPs Using Online Function ApproximationAbstract:We study learning tabular finite-horizon Markov Decision Processes with adversarially-chosen contexts. Following latest literature, we assume a realizable function class that maps between context and MDP as well as access to online regression oracles that fits the best function given prior observations. This setting ... Read more

BIU learning club – Yuval Pinter – When Language Models Meet Words

Location:Engineering building (1103), room 329Title:When Language Models Meet WordsAbstract:Over the last few years, deep neural models have taken over the field of natural language processing (NLP), brandishing great improvements on many of its sequence-level tasks. But the end-to-end nature of these models makes it hard to figure out whether the way they represent individual words ... Read more

BIU learning club – Assaf Arbelle – What is next in Vision and Language models?

Location:Building 1300 (students’ dorms), room 1Title:What is next in Vision and Language models?Abstract:In recent years, two mostly separated fields of machine learning, computer vision and natural language processing, have gradually become closer. Advancements in each field have greatly influenced the other, driven in part by the abundance of weekly annotated data in the form of ... Read more

Getting More from Your GPU – Tutorial by Yuval Mazor

604/62

NOTE: Link to slides in presentation - Getting More from Your GPU Due to a technical problem there is no recording of this, however, here is a link to a youtube video by Yuval on A Practical Guide for Reducing DNN Training Time -------------------------------------------------------------------------------------------------- This is a computing Tutorial hosted and organized by the DSI ... Read more

BIU learning club – Amichai Painsky – Inferring the Unseen

Location:Engineering building (1103), room 329Title:Inferring the UnseenAbstract:Consider a finite sample from an unknown distribution over a countable alphabet. Unobserved events are alphabet symbols which do not appear in the sample. Estimating the probabilities of unobserved events is a basic problem in statistics and related fields, which was extensively studied in the context of point estimation. ... Read more

BIU learning club – Kfir Levy – Beyond SGD: Efficient Learning with Non i.i.d. Data

Location:Engineering building (1103), room 329Title:Beyond SGD: Efficient Learning with Non i.i.d. DataAbstract:The tremendous success of the Machine Learning paradigm heavily relies on the development of powerful optimization methods. The canonical algorithm for training learning models is SGD (Stochastic Gradient Descent), yet this method has several limitations. In particular, it relies on the assumption that data-points ... Read more

BIU learning club – Moshe Eliasof – Improving Graph Neural Networks with Learnable Propagation Operators

Location:Engineering building (1103), room 329Title:Improving Graph Neural Networks with Learnable Propagation OperatorsAbstract:Graph Neural Networks (GNNs) are limited in their propagation operators. In many cases, these operators often contain non-negative elements only and are shared across channels, limiting the expressiveness of GNNs. Moreover, some GNNs suffer from over-smoothing, limiting their depth. On the other hand, Convolutional ... Read more

BIU learning club – Shalev Shaer – Betting as a mechanism to make reliable discoveries

Zoom link: https://biu-ac-il.zoom.us/j/4685913265 Title:Betting as a mechanism to make reliable discoveries Abstract:This talk introduces a new statistical testing framework that allows researchers to analyze an incoming i.i.d. data stream with any arbitrary dependency structure, and safely conclude whether a feature is conditionally associated with the response under study. We allow the processing of data points online, as soon ... Read more

BIU NLP & Network Spotlight EVENT

Wohl Convention Center, Bar-Ilan University Anna & Max Webb St. Ramat-Gan.

Welcome to the Bar-Ilan Interdisciplinary Conference on Natural Language Processing (NLP) and Networks! We cordially invite researchers from academia and industry to join us for this unique and intellectually stimulating event, where we bring together two prominent areas of research: NLP and Networks. This conference has been thoughtfully designed to cater to experts and enthusiasts ... Read more

Bioinformatics Day

Auditorium C50, Nanotechnology Building (bldg. 206), Bar-Ilan University

https://dsi.biu.ac.il/wp-content/uploads/2023/09/bio-event-13-september.pdf

BIU AI and ML Learning Club – May 5, CANCELED

CS Bldg 503, Seminar Room 226

UNFORTUNATELY THIS SESSION IS CANCELED We are Back with BIU AI & ML Learning Club ! On May 5,  Hadar Averbuch-Elor from TAU will give a talk titled : Marrying Vision and Language: A Mutually Beneficial Relationship? Abstract: Foundation models that connect vision and language have recently shown great promise for a wide array of ... Read more

BIU AI and ML Learning Club – May 12

CS Bldg 503, Seminar Room 226

On May 12,  Louis Shekhtman from BIU will give a talk titled: Leveraging Big Data and Network Science to understand Philanthropy Abstract: While philanthropic support has increased in the past decade, there is limited quantitative knowledge about the patterns that characterize it and the mechanisms that drive its distribution. Here, we collected over 3 million ... Read more

Google Tools for AI and Data Science Research workshop

CS Auditorium (Bldg. 503)

Google & The BIU Data Science Institute are happy to invite you to the Google Tools for AI and Data Science Research workshop! The workshop is aimed at introducing practical tools for researchers from various academic disciplines, who are engaged or interested in AI and data science. Presented tools include: Gemini, Pinpoint, Trends, and Cloud applications. We'll ... Read more

BIU AI and ML Learning Club – May 19, Subgraphormer: Unifying Subgraph GNNs and Graph Transformers via Graph Products

CS Bldg 503, Seminar Room 226

On May 19,  Guy Bar-Shalom from the Technion will give a talk titled: Subgraphormer: Unifying Subgraph GNNs and Graph Transformers via Graph Products Abstract: In the realm of Graph Neural Networks (GNNs), two exciting research directions have recently emerged: Subgraph GNNs and Graph Transformers. We propose an architecture that integrates both approaches, dubbed Subgraphormer, which ... Read more

Prof. Gal Chechik Bar-Ilan University: Learning with visual foundation models for Gen AI

CS Auditorium (Bldg. 503)

On May 23,  Prof. Gal Chechik Bar-Ilan University will give a lecture on: Learning with visual foundation models for Gen AI Abstract: Between training and inference, lies a growing class of AI problems that involve fast optimization of a pre-trained model for a specific inference task. These are not pure “feed-forward” inference problems applied to ... Read more

BIU AI and ML Learning Club – May 26, Real-to-Sim: Towards interpretable and controllable digital twins (Note the Venue)

חדר ישיבות 329, הנדסה

On May 26,  Dr. Or Litany from the Technion will give a talk titled: Real-to-Sim: Towards interpretable and controllable digital twins Abstract: Do we live in a simulation? Perhaps we should consider the possibility. Replicating real-world observations into a digital twin offers numerous potential benefits. For instance, in autonomous navigation, one could recreate safety-critical scenarios ... Read more

BIU AI and ML Learning Club – June 2, Do Stochastic, Feel Noiseless: Stable Optimization via a Double Momentum Mechanism

חדר ישיבות 329, הנדסה

On May 26,  Dr. Kfir Levy from the Technion will give a talk titled: Do Stochastic, Feel Noiseless: Stable Optimization via a Double Momentum Mechanism Abstract: The tremendous success of the Machine Learning paradigm heavily relies on the development of powerful optimization methods, and the canonical algorithm for training learning models is SGD (Stochastic Gradient ... Read more

BIU AI and ML Learning Club – June 9, Testing for Dependency of Databases

CS Bldg 503, Seminar Room 226

On June 9,  Dr. Wasim Huleihel from the Tel Aviv university will give a talk titled: Testing for Dependency of Databases Abstract: In this talk, we investigate the problem of detecting the dependency between two random databases represented as matrices. This is formalized as a hypothesis testing problem, where under the null hypothesis, the two ... Read more

BIU AI and ML Learning Club – June 16, Revealing Latent Hierarchical Structures in High-Dimensional Data Using Hyperbolic Representations

חדר ישיבות 329, הנדסה

On June 16,  Dr. Ronen Talmon from the Technion will give a talk titled: Revealing Latent Hierarchical Structures in High-Dimensional Data Using Hyperbolic Representations Abstract: The tremendous success of the Machine Learning paradigm heavily relies on the development of powerful optimization methods, and the canonical algorithm for training learning models is SGD (Stochastic Gradient Descent). ... Read more

BIU AI and ML Learning Club, June 23 – BIU Students research talks

CS Bldg 503, Seminar Room 226

On June 23,  we will have 4 BIU Students giving the following talks on their research progress. First hour (12:00-13:00) will be dedicated for the students talks Second hour (13:00 - 14:00) for networking. 12:00 - 12:15 Presenter: Osnat Drien Lab Head: Prof. Yael Amsterdamer Title: Query-Guided Resolution in Uncertain Databases Abstract: We present a ... Read more

BIU AI and ML Learning Club, June 30 – What Makes Data Suitable for Deep Learning?

CS Bldg 503, Seminar Room 226

On June 30,  Dr. Nadav Cohen from the Tel Aviv University will give a talk titled: What Makes Data Suitable for Deep Learning? Abstract: Deep learning is delivering unprecedented performance when applied to various data modalities, yet there are data distributions over which it utterly fails. The question of what makes a data distribution suitable ... Read more