ABOUT
The
INVICTA will guide you through an unforgettable journey into the development of intelligent systems, where innovation meets tradition in the captivating city of Porto.
What can you expect?
- Interactive lectures
- Hands-on workshops
- Debates
All led by distinguished experts and practitioners from academia and industry.
This is the perfect experience whether you're a budding enthusiast eager to grasp the fundamentals or a seasoned professional aiming to refine your expertise. This school promises to equip you with the skills and insights needed to thrive in the rapidly evolving landscape of artificial intelligence technologies.
Mission
INVICTA aims to become an European reference in state-of-the-art artificial intelligence, computer vision and pattern analysis topics by promoting knowledge and sharing of experiences while building a global community from Porto, Portugal to the World.
Applications
How can I apply?
Applications are open. Don't miss this opportunity and grab one of the last spots: INVICTA School 2024 | Application Form
After being accepted, you'll be contacted and have the opportunity to register for INVICTA School 2024.
Registrations
I'm in! How do I register?
If your application has been accepted, we'll contact you with instructions.
Keep in mind the following information on fees and deadlines:
Registration Phase | Deadline | Registration Fee | |||
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Full | Simple | Social Dinner | Lunches (for the 5 days) |
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Early-bird Registrations | Until January 22, 2024* | €650 | €500 | €50 | €100 |
Regular Registrations | Until February 5, 2024* | €700 | €550 | ||
Late Registrations | Until March 1, 2024* | €750 | €600 | ||
Until March 17, 2024* | Closed | €600 | Closed | Closed |
* All deadlines are 23:59 WEST (UTC+1)
Can I have a discount?
We provide a 15% discount for APRP members.
What does the simple registration include?
- All lectures
- Hands-on sessions
- Round-table
- Industry sessions
- AI talks
- Coffee breaks
- Social programme and other events (without Social Dinner)
What does the full registration include?
All the above plus Lunches (for the 5 days) and the Social Dinner.
How can I get a VISA to attend INVICTA?
If you need a visa to travel to Portugal, you need to send us the following information:
- Your full name
- Your e-mail address
- Address to which you would like the acceptance letter to be sent
- Your passport information: number, issue date and place, and expiration date
Send this info to invicta@inesctec.pt with the subject line "Visa letter request". Visas will only be issued after the payment of registration fees is confirmed.
Sessions
Julius von Kügelgen
Max Planck Institute for Intelligent Systems, Tübingen, Germany
University of Cambridge
Julius von Kügelgen is an (incoming) postdoc with Jonas Peters at ETH Zürich doing research at the intersection of causal inference and machine learning. He pursued his PhD under the supervision of Bernhard Schölkopf at the Max Planck Institute for Intelligent Systems in Tübingen and Adrian Weller at the University of Cambridge. During his PhD, he interned at Amazon and visited Columbia University and UC Berkeley. Previously, he studied Mathematics at Imperial College London and Artificial Intelligence at UPC Barcelona and at TU Delft.
Causality for Machine Learning
Causal models provide rich descriptions of complex systems as sets of mechanisms by which each variable is influenced by its direct causes. As such, they support reasoning about manipulating parts of the system and capture a whole range of interventional distributions. Causality therefore holds promise for addressing some of the open challenges of artificial intelligence (AI), such as planning, transferring knowledge in changing environments, or robustness to distribution shifts. In this lecture, I will provide an introduction to the field of causal inference from a machine learning perspective. First, we will cover different types of causal models and how to use them to compute quantities of interest ("causal reasoning"). We will then discuss key assumptions and how to leverage them to learn causal models from data ("causal discovery"), including in temporal settings. Lastly, we will turn to connections between causality and machine learning, including the recently emerged field of causal representation learning, which hopes to overcome some of the limitations of traditional methods.
Gido van de Ven
KU Leuven, Leuven, Belgium
Gido van de Ven is a MSCA postdoctoral fellow at the KU Leuven (Belgium), where he performs research at the intersection of deep learning, computational neurosience and cogntive science. In his research, Gido van de Ven uses insights and intuitions from neuroscience to make the behavior of deep neural networks more human-like. In particular, he is interested in the problem of continual learning, with generative models a principal tool to address this problem. Previously, for the doctoral research, Gido van de Ven used optogenetics and electrophysiological recordings in mice to study the role of replay in memory consolidation in the brain.
Continual Learning
Incrementally learning new information from a non-stationary stream of data, referred to as 'continual learning', is a key feature of natural intelligence, but an open challenge for deep learning. For example, standard deep neural networks tend to catastrophically forget previous tasks or data distributions when trained on a new one. Enabling these networks to incrementally learn, and retain, information from different contexts has become a topic of intense research. In the first part of this lecture, I introduce the continual learning problem. After covering key terminology, I review the popular benchmarks and setups currently used in the literature. In particular, I discuss three different types of continual learning, that each have their own challenges: task-, domain- and class-incremental learning. I also cover the distinction between task-based and task-free continual learning. I end this part of the lecture with practical examples to illustrate why continual learning is so important. In the second part of the lecture, I review approaches that have been proposed to address the continual learning problem. I do this at the level of computational strategies, covering the following: context-specific components, parameter regularization, functional regularization, replay, template-based classification, and optimization-based approaches. For each strategy I highlight some representative example methods, and code is available to gain hands-on experience.
Anna Hedström
Technische Universität Berlin, Berlin, Germany
Anna Hedström is a third-year PhD candidate at Technische Universität Berlin where she is a part of the independent research group, Understandable Machine Intelligence Lab (UMI Lab), focusing on eXplainable AI (XAI) and Interpretable Machine Learning (IML) topics. Her current research interests include deep learning, software for IML and in particular, evaluation-centric XAI. She has been published and/ or presented her work at AAAI, JMLR, TMLR, ICLR and XAIA NeurIPS and reviewed for prestigious venues such as IEEE TNNLS and ECAI. AH received her BSc from University College London (UCL) and her MSc degree in ML from the Royal Institute of Technology (KTH). She has previously held different research- and ML positions at various companies and AI start-ups and is the main developer of the popular open-source library Quantus.
Explainable AI
In this keynote series, we explore the rapidly evolving field of Explainable AI (XAI). First, beginning with a foundational overview, we trace the evolution of XAI methods from early neural network models to the recent transformer-based architectures, assessing their strengths and failure modes. Second, central to our discussions will be the critical theme of XAI evaluation, a previously understudied area that has caused confusion about which explanation methods work and under what conditions. We will concentrate on the fundamental challenge of XAI evaluation: how to establish and verify ground truth and review the community-driven approaches to it. Third, we will introduce Quantus in a hands-on practical session. Quantus is a toolkit for evaluating neural network explanations, exemplifying the practical application of XAI theory. Our goal is to equip the attendees with a deep understanding of both theoretical and practical aspects of XAI, providing a balanced view of the challenges and opportunities that characterise the current state of the field.
Naser Damer
Fraunhofer Institute for Computer Graphics Research IGD
Department of Computer Science, TU
Darmstadt, Darmstadt, Germany
Dr. Naser Damer is a senior researcher at the competence center Smart Living & Biometric Technologies, Fraunhofer IGD. He received his master of science degree in electrical engineering from the Technische Universität Kaiserslautern (2010) and his PhD in computer science from the Technischen Universität Darmstadt (2018). He is a researcher at Fraunhofer IGD since 2011 performing applied research, scientific consulting, and system evaluation. His main research interests lie in the fields of biometrics, machine learning and information fusion. He published more than 50 scientific papers in these fields. Dr. Damer is a Principal Investigator at the National Research Center for Applied Cybersecurity CRISP in Darmstadt, Germany. He serves as a reviewer for a number of journals and conferences and as an associate editor for the Visual Computer journal. He represents the German Institute for Standardization (DIN) in ISO/IEC SC37 biometrics standardization committee.
Fadi Boutros
Fraunhofer Institute for Computer Graphics Research IGD
Department of Computer Science, TU
Darmstadt, Darmstadt, Germany
Dr. Fadi Boutros is a scientific researcher at the Fraunhofer IGD and a principal investigator at the National Research Center for Applied Cybersecurity ATHENE, Germany. Fadi received his Ph.D. in computer science from TU Darmstadt (2022) and a master's degree in "Distributed Software Systems" from TU Darmstadt (2019). Also, he is participating in the Software Campus program, a management program of the German Federal Ministry of Education and Research (BMBF). He authored and co-authored several conference and journal papers. His main research interests lie in the fields of biometrics, machine learning, and efficient deep learning. For his scientific work, he received several awards, including the CAST-Förderpreis 2019 award, the IJCB 2022 Qualcomm Audience Choice Award, and the 2022 EAB Biometrics Industry Award from the European Association for Biometrics (EAB) for his Ph.D. dissertation.
Learning from synthetic data - generation for learning
The availability of sufficient and diverse data to train neural networks is essential for such networks to operate properly in real applications. Data collection, use, re-use, and share is not only expensive in term of effort and actual cost, but can be impossible in some cases. Such processes faces more challenges when restricted by legal and ethical frameworks, such as the case when dealing with personal data. The raise in generative models presents the chance to explore generating data, with more granular diversity than the data used to train it. Thus, can help generating data more suitable to train neural networks both in terms of availability and representation of reality. This session will focus on motivating different use cases of synthetic data in training neural networks, with a focus on generation mechanisms specifically designed to produce data with training data properties. Given the strong legal and ethical motivations, as well as the unique requirements, most examples will focus on generating synthetic faces and training face recognition models. The audience is expected to gain insights into generating and using synthetic data for the purpose of training neural networks in this relatively early stage of technology adaption.
Jason Eshraghian
UCSC Neuromorphic Computing Group, University of California, Santa Cruz, USA
Jason Eshraghian is an Assistant Professor and Fulbright Fellow at the Department of Electrical and Computer Engineering at the University of California, Santa Cruz. He works on neuromorphic chip and algorithm design, primarily trying to understand how to bridge the gap between artificial intelligence and natural intelligence. He is the developer of snnTorch, a Python library used to train and model brain-inspired spiking neural networks which has been downloaded over 100,000 times. He has received several IEEE Best Paper and Best Live Demo Awards for his work in neuromorphic computing.
Training Brain-Inspired Spiking Neural Networks Using Lessons from Deep Learning
The brain is the perfect place to look for inspiration to develop more efficient neural networks.
Our brains are constantly adapting, our neurons
processing all that we know, mistakes we've made, failed predictions - all working to anticipate
what will happen next with incredible speed.
Our brains are also amazingly efficient. Training large-scale neural networks can cost more than
millions of dollars in energy expense, yet the
human brain does remarkably well on a power budget of 20 watts.
One of the main differences with modern deep learning is that the brain encodes and processes
information as temporal spikes rather than continuous,
high-precision activations. This presentation will dive into the intersection between neuroscience
and deep learning. We will explore how spiking
neurons and learning rules derived from neuroscience intersect with deep learning, and how the
Python package Eshraghian developed - snnTorch - spans
across the neuroscience, machine learning, and hardware abstractions to drive forward the next
generation of deep learning algorithms.
Round-Table
Filipa Castro
Continental, Lousado, Portugal
Data Science for Social Good Portugal
Filipa works as AI Program Manager at Continental, where she plays a pivotal role in establishing and steering innovative AI solutions across the value chain of tires. With a strong foundation in computer vision, deep learning and generative AI, Filipa brings a deep technical perspective to her cross-functional work with business and engineering. Prior to joining the automotive industry, Filipa helped develop AI-based solutions for the subsea environment. She holds an Integrated Masters in Bioengineering from the University of Porto, complemented by international study experiences in the UK and the Netherlands. Filipa also belongs to the Lead Team of Data Science for Social Good Portugal, a community of data enthusiasts who focus on empowering non-profit social organizations to leverage their data effectively and augment their impact.
Jos Dumortier
Timelex, Brussel, Belgium
Jos Dumortier studied Law at KU Leuven (1973), Nancy (Centre Europe´en Universitaire, 1974) and Heidelberg (DAAD, 1975), and Information Sciences (INFODOC) at the Universite´ Libre de Bruxelles. Between 1984 and 1992 he was part-time lecturer in Information Science at the University of Antwerp. In 1985 he became part-time lecturer and in 1993 full- time Professor in Law and IT at K.U.Leuven. In 1990 he was the founder of the Interdisciplinary Centre for Law and Information Technology (currently “CITIP”) of which he became the first Director. Between 1987 and 2014 he was active in lecturing, research and consultancy in the area of Law and IT and published several books and articles on this subject. Prof. Dumortier is currently a member of the Bar of Brussels as a founding partner of Timelex, a law firm specialized in information technology and data protection law. Since the start of the law firm in 2007 his firm has conducted many policy support studies for the European Commission on various issues related to personal data protection and other legal issues relating to the digital single market. With his team at Timelex, Jos also provides legal guidance in a large number of European research and innovation actions. Jos Dumortier participates in the boards of several national and international scientific and business associations and he is a member of various editorial and program committees.
Luís Lóia
Faculty of Human Sciences, Universidade Católica Portuguesa, Lisbon, Portugal
Centre for
Philosophical and Humanistic Studies, Universidade Catolica Portuguesa, Lisbon, Portugal
Professor Luís Lóia is an Assistant Professor at the Faculty of Human Sciences (FCH) of the Universidade Católica Portuguesa (UCP). He has a degree in Philosophy, a postgraduate degree in Citizenship Education, a Master's degree in Political Science and International Relations, from UCP and a PhD in Philosophy from the Faculty of Arts of the University of Porto. In addition to his teaching duties at UCP, he is Coordinator of the Degree Course in Philosophy, Pedagogical Coordinator of the Postgraduate Course in Philosophy for Children and Young People at FCH and Editor of its Magazine, International Journal of Philosophy and Social Values.
Paulo Maia
NILG.AI, Porto, Portugal
Data Science for Social Good Portugal
Paulo Maia has a Master's degree in Bioengineering (Specialization in Biomedical Engineering) from FEUP (2019). As a student, he carried out research in the area of signal processing in neurological diseases, at INESC TEC. Since 2019, he has worked as a Data Scientist at NILG.AI (currently Lead Data Scientist), where he supports companies to use artificial intelligence as part of their business strategy. He has also been part of the Lead Team of Data Science for Social Good Portugal (DSSG PT) since October 2019, an association with the aim of supporting non-profit institutions to use data to increase their impact.
Seeing Beyond: Dissecting AI, Ethics and Society
Artificial Intelligence (AI) has experienced remarkable growth in recent years, finding applications across critical sectors of society including healthcare, public safety and security, agriculture, industry, and commerce. The advent of Large Language Models (LLMs) and recent advancements in Computer Vision (CV) are the main enablers of this rapidly evolving landscape. However, as these tools are increasingly adopted to address real-world challenges, concerns surrounding fairness, accountability, transparency, privacy, and safety have come to the forefront. This round table aims to foster dialogue among diverse perspectives from academia, industry, and civil society, with a focus on exploring the multifaceted implications of AI on ethics and society. We expect to debate ethical guidelines and principles to govern AI development, while discussing critical concerns like identifying and mitigating biases present in AI algorithms and data sets, safeguarding user privacy and protecting personal data from unauthorized access, misuse, and exploitation, or the development of appropriate regulatory frameworks and standards to govern AI development and deployment. Overall, we aim for the roundtable to be a dynamic and rich discussion on the complex ethical dilemmas and societal ramifications of AI, ultimately paving the way for more informed decision-making and collaborative solutions.
AI Talks
Kelwin Fernandes
NILG.AI, Porto, Portugal
Kelwin Fernandes is passionate about discovering new ways of using artificial intelligence (AI) in businesses and has expertise in AI-based digital transformation and data-driven decision-making in organizations. He is the CEO of NILG.AI, an AI consultancy company that aims to become the standard for AI adoption, making any company highly efficient, ever-improving, and adaptable.
Susana K. Lai-Yuen
University of South Florida, Tampa, FL, U.S.A
Dr. Susana K. Lai-Yuen is an Associate Professor of Industrial and Management Systems Engineering, and the Program Director of the M.S. in Data Intelligence program at the University of South Florida, Tampa, FL, U.S.A. She received the Ph.D., M.S., and B.S. (Summa Cum Laude) degrees in Industrial Engineering from North Carolina State University, Raleigh, NC, U.S.A. Dr. Lai-Yuen's research interests are in optimization techniques for deep neural networks and machine learning with applications in computer vision, medical image analysis, and computer-aided decision support systems. Some of her research focuses on neural architecture search (NAS) techniques to automate the discovery of novel neural network architectures for image classification and medical image segmentation.
Bosch
Bosch aims to improve people's quality of life and safeguard the livelihoods of present and future generations by acting in an economically, environmentally, and socially responsible manner. The company's goal is to make renewable energy more affordable and mobility even safer, cleaner, and more economical, and to develop eco-friendly products across the board. In Portugal, you can find Bosch in Braga, Ovar, Aveiro and Lisboa.
NILG.AI
NILG.AI guides managers in using AI to improve their business processes and aims to help every company worldwide make efficient decisions at scale based on data. They make the transformative process of any company with AI a smooth journey with precise, predictable results, focusing on eliminating uncertainty and ensuring a high success rate.
Fraunhofer Portugal
Fraunhofer Portugal AICOS is the first Fraunhofer research centre in Portugal since 2009. From Porto to the world, presents a client portfolio from a broad range of areas, such as health, agriculture, retail or energy, and has consolidated competencies in Human-Centred Design, Artificial Intelligence and Cyber-physical systems.
Schedule
Time | MONDAY 18 March 2024 |
TUESDAY 19 March 2024 |
WEDNESDAY 20 March 2024 Sponsored by |
THURSDAY 21 March 2024 Sponsored by |
FRIDAY 22 March 2024 Sponsored by and |
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09:00 |
Check-In
9:00-10:00
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Check-In
9:00-9:30
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Check-In
9:00-9:30
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Check-In
9:00-9:30
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Check-In
9:00-9:30
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09:30 |
Talk
9:30-11:00
Continual Learning
Gido van de Ven
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Talk
9:30-11:00
Causality for Machine Learning
Julius von Kügelgen
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Talk
9:30-10:30
Explainable AI
Anna Hedström
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Talk
9:30-10:30
Learning from synthetic data
Naser Damer
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10:00 |
Welcoming Session
10:00-10:30
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10:30 |
Talk
10:30-11:30
Spiking Neural Networks
Jason Eshraghian
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Coffee Break
10:30-11:00
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Coffee Break
10:30-11:00
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11:00 |
Coffee Break
11:00-11:30
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Coffee Break
11:00-11:30
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Talk
11:00-12:00
Explainable AI
Anna Hedström
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Talk
11:00-12:30
Learning from synthetic data
Naser Damer
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11:30 |
Coffee Break
11:30-12:00
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Talk
11:30-12:30
Continual Learning
Gido van de Ven
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Talk
11:30-12:30
Causality for Machine Learning
Julius von Kügelgen
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12:00 |
Talk
12:00-13:00
Spiking Neural Networks
Jason Eshraghian
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Hands-On
12:00-13:00
Explainable AI
Anna Hedström
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12:30 |
Lunch
12:30-14:00
(*)
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Lunch
12:30-14:00
(*)
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Lunch
12:30-14:00
(**)
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13:00 |
Lunch
13:00-14:30
(*)
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Lunch
13:00-14:30
(*)
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13:30 | |||||
14:00 |
Hands-On
14:00-15:30
Continual Learning
Gido van de Ven
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Hands-On
14:00-15:30
Causality for Machine Learning
Julius von Kügelgen
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Hands-On
14:00-15:00
Learning from synthetic data
Naser Damer
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14:30 |
Hands-On
14:30-15:30
Spiking Neural Networks
Jason Eshraghian
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AI Talks
14:30-15:30
NILG.AI
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15:00 |
AI Talks
15:00-15:30
Fraunhofer Portugal AICOS
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15:30 |
Coffee Break
15:30-16:00
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Coffee Break
15:30-16:00
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AI Talks
15:30-16:30
Susana Lai Yuen
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Coffee Break
15:30-16:00
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Round-Table
15:30-16:30
Seeing Beyond: Dissecting AI, Ethics and Society
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16:00 |
Hands-On
16:00-17:00
Spiking Neural Networks
Jason Eshraghian
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Social Visit to Porto
16:00-17:30
Visit to "Casa do Infante"
(**)
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AI Talks
16:00-17:00
NILG.AI
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16:30 |
AI Talks
16:30-17:00
Bosch
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Coffee Break
16:30-17:00
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17:00 |
AI Talks
17:00-18:00
Kelwin Fernandes
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Coffee Break
17:00-17:30
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Free Time |
Round-Table
17:00-18:00
Seeing Beyond: Dissecting AI, Ethics and Society
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17:30 | Free Time | Free Time | |||
18:00 | Free Time |
Closing Session
18:00-18:30
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18:30 |
Social Drinks
18:30-19:30
Hotel Dom Henrique
(**)
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Free Time | |||
19:00 | |||||
19:30 | Free Time |
Social Dinner
19:30-00:00
Torreão Restaurant
(*)
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20:00 | |||||
20:30 | |||||
21:00 | |||||
21:30 | |||||
22:00 | |||||
22:30 | |||||
23:00 | |||||
23:30 |
Venue
Porto is Portugal's second-largest city, European Best Destination in 2012, 2014 and 2017. Known as "The Invicta" - the epithet granted by Queen D. Maria II (daughter of D. Pedro IV) to the city because during the 19th-century Portuguese civil war, Porto withstood a siege of over a year.
Porto is full of contrasts within a small area and offers a diversity of styles and ambiences. In this city of great wine and rich history, you will enjoy the famous baroque-style monuments and the worldwide famous Port Wine cellars. With the World Heritage Douro Riverside in the background, the narrow and sinuous cobbled streets of this old and charming city contrast with the growing innovation, cutting-edge technology, and start-ups that have made Porto their home.
INVICTA School 2024 will take place at Porto Innovation Hub facilities. Located at Largo do Dr. Tito Fontes close to the Trindade Station in the city centre. Porto Innovation Hub is an initiative of the Municipality of Porto which aims to be a platform for the reinforcement of the city’s innovation and entrepreneurship ecosystem. This is a project coordinated by Porto Digital Association, a private non-profit association owned by Porto City Council, the University of Porto and Metro of Porto.
Hotels
Hotel Dom Henrique Downtown
150 m's from the Venue
10% Discount available
Contact the hotels' reservations department and indicate that you are an INVICTA participant.
A 10% discount will be applied to the BB flexible rate.
Contacts:
- Phone:+351 223 401 616
- Email: reserv@hoteldomhenrique.pt
Gallery
Team
Ana F. Sequeira
INESC TEC & FEUP
Hélder P. Oliveira
INESC TEC & FCUP
Ana F. Nogueira
INESC TEC & FEUP
Francisco Silva
INESC TEC & FCUP
Inês Domingues
ISEC & CI-IPOP
Jaime S. Cardoso
FEUP & INESC TEC
Joana Sousa
INESC TEC & FEUP
João Matos
INESC TEC & FEUP & MIT
João Nunes
INESC TEC & FEUP
Leonardo Capozzi
INESC TEC & FEUP
Luís Fernandes
INESC TEC & FEUP
Luís Teixeira
FEUP & INESC TEC
Margarida Gouveia
INESC TEC & FEUP
Tania Pereira
INESC TEC & UC
Tiago Gonçalves
INESC TEC & FEUP
Tomé Albuquerque
INESC TEC & FEUP