#<\/span> Students\u2019 day,<\/span> Friday<\/strong>, 4 November 2022, 09:00 - 12:00<\/span>\n <\/p>\n An event dedicated to students taking first steps as researchers and speakers, consisting of a series of talks and networking sessions. More information can be found here<\/a><\/span><\/p>\n Attendance at this event is free of charge!<\/strong><\/span> Agenda:<\/span><\/strong><\/p>\n 09:00 - 09:05 CET: Opening remarks<\/span> #<\/span> Students\u2019 day - NVIDIA Workshop,<\/span> Friday<\/strong>, 4 November 2022, 08:00 - 14:00 (Room 4.05)<\/span>\n <\/p>\n During the workshop you will learn about the mechanics of deep learning and popular techniques, train your computer vision model and finally use transfer learning to train your own RNN model.<\/span><\/p>\n After the workshop you can take part in the exam, passing which you will be provided with the certificate that confirms you understood all of the topics.<\/span><\/p>\n Registration form: https:\/\/mlinplworkshop.paperform.co\/<\/a> For more details: <\/span>https:\/\/www.nvidia.com\/en-us\/training\/instructor-led-workshops\/fundamentals-of-deep-learning\/<\/span><\/a><\/span>\n <\/p>\n <\/div>\n <\/div>\n <\/div>\n \n <\/div>\n \n <\/section>\n <\/a>\n #<\/span> Friday<\/strong>, 4 November 2022<\/span>\n <\/p>\n 15:00 - 15:45 CET: Registration 15:45 - 16:00 CET: Opening remarks The opening remarks of the project leaders Alicja Grochocka and Dima Zhylko.<\/span><\/strong><\/p>\n <\/div>\n <\/li>\n 16:00 - 17:00 CET: Keynote Lecture: Kyunghyun Cho Lab-in-the-loop de novo antibody design - what are we missing from machine learning?<\/span><\/strong><\/p>\n In this talk, I will give an overview of what we do at Prescient Design by introducing the concept of lab-in-the-loop de novo<\/i> antibody design with particular emphasis on its computational side. I will then deconstruct the computational side of lab-in-the-loop design into three major components; generative modeling, computational oracles and active learning. I will then go over why each component is necessary, how each component still requires significant scientific research and what Prescient Design is doing to address these challenges.<\/span><\/p>\n <\/div>\n <\/li>\n 17:05 - 18:20 CET: Strategic Sponsor\u2019s Lecture: QuantumBlack, AI by McKinsey Through this series of short talks, QuantumBlack\/McKinsey practitioners will share how they work across industries to push AI's limits and create solutions that transform organizations. As part of this session, you'll hear how they used Reinforcement Learning to help Emirates Team New Zealand win the 36th America's Cup. They'll also demo some of their products including Customer1, a tool that helps optimize customer journeys, and Kedro, an open-sourced Python framework for creating maintainable and modular data science code. Finally, you will hear from one of QuantumBlack's brilliant data scientists about his career journey.<\/span><\/p>\n <\/div>\n <\/li>\n 18:35 - 19:35 CET: Panel: Popularization of ML Research During the panel, we will discuss how we should popularize research. What should we think about when presenting AI to the public and what are some guidelines which help to reach a wider audience? We will also address the misleading presentation of scientific results.<\/span><\/p>\n Panelists: <\/span>Piotr Migda\u0142 (Quantum Flytrap), Yannick Kilcher (<\/span>DeepJudge)<\/span>, Letitia Parcalabescu (Heidelberg University)<\/span><\/span>\n <\/p>\n <\/div>\n <\/li>\n 19:40 - 20:40 CET: Keynote Lecture: Petar Veli\u010dkovi\u0107 Amazing things that happen with Human-AI synergy<\/span><\/strong><\/p>\n For the past few years, I have been working on a challenging project: teaching machines to assist humans with proving difficult theorems and conjecturing new approaches to long-standing open problems. Alongside our pure mathematician collaborators from the Universities of Oxford and Sydney, we have demonstrated that analyzing and interpreting the outputs of (graph) neural networks offers a concrete way of empowering human intuition. This allowed us to derive novel top-tier mathematical results in areas as diverse as representation theory and knot theory. The significance of these results has been recognised by the journal Nature, where our work featured on the cover page. Naturally, being on a project of this scale gets one thinking: what other kinds of amazing things can one do when AI and human domain experts synergistically interact? During this talk, I will offer my personal perspective on these findings, the key details of our modelling work, and also positioning them in the \"bigger picture\" context of synergistic Human-AI efforts.<\/span><\/p>\n <\/div>\n <\/li>\n <\/ul>\n \n <\/div>\n #<\/span> Saturday<\/strong>, 5 November 2022<\/span>\n <\/p>\n 09:30 - 10:00 CET: Registration<\/p><\/span><\/div>\n 10:00 - 11:15 CET: Keynote Lecture: Cheng Zhang (Room 3180) Causal Decision Making<\/span><\/strong><\/p>\n Causal inference is essential for data-driven decision-making across domains such as business engagement, medical treatment, or policymaking. Building a framework that can answer real-world causal questions at scale is critical. However, research on deep learning, causal discovery, and inference has evolved separately. In this talk, I will present a Deep End-to-end Causal Inference (DECI) framework, a single flow-based method that takes in observational data and can perform both causal discovery and inference, including conditional average treatment effect estimation (CATE). Moreover, I will talk about how such a framework can be used with different real-world data, including time series or considering latent confounders. In the end, I will cover different application scenarios with the Microsoft causal AI suite. We hope that our work bridges the causality and deep learning communities leading to real-world impact.<\/span><\/p>\n <\/div>\n <\/li>\n 10:00 - 11:15 CET: Keynote Lecture: Andriy Mnih (Room 4420) Deep Generative Models Through the Lens of Inference<\/strong><\/span><\/p>\n Latent variable modelling provides a powerful and flexible framework for generative models. We will start by introducing this framework along with the concept of inference, which is central to it. We will then cover three types of deep generative models: flow-based models, variational autoencoders, and diffusion models. We will highlight the interdependence between the model structure and the inference process, and explain the trade-offs each model type involves.<\/span><\/p>\n <\/div>\n <\/li>\n 11:30 - 12:20 CET: Sponsor\u2019s Talk: deepsense.ai (Room 3180) TrelBERT \u2013 a model that understands the language of social media Abstract: <\/span><\/strong>With the growing importance and popularity of social media, the application of natural language processing techniques to this domain is becoming an increasingly trendy topic both among NLP researchers and practitioners. In this talk I will explain what is so interesting in the language of social media and why this topic requires special attention. <\/span>deepsense.ai<\/span><\/a> actively follows the latest international developments in the field of NLP and as part of an R&D project has introduced TrelBERT - a language model for Polish social media which has achieved outstanding results in detecting cyberbullying.<\/span><\/span>\n <\/p>\n Address:
University of Warsaw, Faculty of Mathematics, Informatics and Mechanics
Banacha 2 Street \u2013 02-097 Warsaw<\/h3>\n
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09:05 - 09:25 CET: Extraction of semantic relations using selected methods and data for the Polish language (Grzegorz Kwiatkowski)<\/span>
09:25 - 09:45 CET: Linear probing of transformer models for Slavic languages (Aleksandra Mysiak)<\/span>
09:45 - 10:05 CET: HyperSound: Generating Implicit Neural Representations of Audio Signals with Hypernetworks (Filip Szatkowski)<\/span>
10:05 - 10:25 CET: How weakening the constraints on non-negative model leads to the more practical XAI (Micha\u0142 Balicki)<\/span>
10:25 - 10:45 CET: Esperanto constituency parser (Tomasz Michalik)<\/span>
10:45 - 11:05 CET: SurvSHAP(t): Time-dependent explanations of machine learning survival models (Mateusz Krzyzi\u0144ski)<\/span>
11:05 - 11:25 CET: Application of Advanced Text Data Analysis in Science (Aleksandra Kowalczuk)<\/span>
11:25 - 11:45 CET: Universal Image Embedding (Konrad Szafer)<\/span>
11:45 - 11:50 CET: Closing remarks<\/span><\/p>\n Address:
Cziitt PW
ul. Rektorska 4 00-614 Warszawa<\/h3>\n
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Note: we may close the form earlier in case we have an overwhelming number of eligible participants.<\/span><\/p>\n Adress:
<\/span>University of Warsaw, Auditorium Maximum<\/span>
Krakowskie Przedmie\u015bcie 26\/28 Street - 00-927 Warszawa<\/span><\/h3>\n <\/div>\n \n
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<\/span>University of Warsaw, Faculty of Mathematics, Informatics and Mechanics<\/span>
Banacha 2 Street \u2013 02-097 Warsaw<\/span><\/h3>\n <\/div>\n \n
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<\/b><\/span>Wojciech Szmyd, Data Scientist (<\/span>deepsense.ai<\/span><\/a>)<\/span>\n <\/span>\n <\/p>\n