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The mission of the Informatics Institute is to perform curiosity-driven and use-inspired fundamental research.

Our research involves complex information systems focusing on collaborative, data driven, computational and intelligent systems clustered in five research themes: Artificial Intelligence; Computational Science; Data Science; People, Science & Technology and Systems and Networking.

The Informatics Institute has a growing research portfolio with a significant and increasing contribution from public-private partnerships. We will continue to develop its research portfolio, further rolling out the ICAI lab model, also to other research themes.

The Informatics Institute is structured in fifteen research groups

  • Amsterdam Machine Learning Lab (AMLab)

    The Amsterdam Machine Learning Lab (AMLab) does research in machine learning, artificial intelligence, and its applications to large scale data domains in science and industry. In the area of large scale modelling of complex data sources, they develop deep generative models, methods for approximate inference, probabilistic programming, Bayesian deep learning, causal inference, reinforcement learning, graph neural networks, and geometric deep learning.

    The predominant question is ‘How to improve generalizability of machine learning algorithms.’ 
    The results from AMLab are widely applicable, particularly in the field of AI-assisted sciences. And make a concrete impact in domains such as computational material science, chemistry and physics.

    AMLab positions itself in the research theme AI with clear links to Computational Science and Data Science.

    Dr. J.W. (Jan-Willem) van de Meent

    Group leader Amsterdam Machine Learning Lab (AMLab)

    Prof. dr. M. (Max) Welling

    Group leader Amsterdam Machine Learning Lab (AMLab)

  • Complex Cyber Infrastructure (CCI)

    Market places to share data in a trustable and transparent way.
    The Complex Cyber Infrastructure (CCI) group is part of the Informatics Institute at the University of Amsterdam. CCI focuses on the complexity of man-made systems on all scales. This scale can be small, like the devices that you carry with you, or the apps they are running, or the communication protocols these apps use to interact. It can be also comprehensive, as in large systems such as data centres or multi-domain networks.

    The complexity of these systems is caused by the fact that more and more cyber infrastructure - e.g. routers, switches, the cloud - is reprogrammable nowadays. This offers many possibilities, but it also makes the equipment more difficult to operate and less transparent. Further, there is the complexity of mapping in computational terms the data sharing requirements which are defined at societal level, through legislation, organizational policies, private data-sharing agreements, and consents.

    CCI positions itself in the research theme Systems & Networking with clear links to AI, Computational Science, Data Science and People, Science & Technology.

    The market places for sharing data that we develop are similar to Netflix. You rent a movie, but you can’t just pass the movie on to someone else. Cees de Laat, former chair of the group
    Dr. Z.A. (Zoltan) Mann

    Group leader Complex Cyber Infrastructure (CCI)

  • Computational Science Lab (CSL)

    Gaining insight into complex natural phenomena through computational modelling and simulation
    The Computational Science Lab (CSL) is a research group within the Informatics Institute at the University of Amsterdam. CSL focuses on the information processing of complex and dynamic natural systems. Complex natural system systems consist of individual entities that interact with each other and the environment. They have mechanisms and rules by which they operate, but it is very hard to predict their behaviour. You need computational techniques to simulate the process and understand future behaviour.

    The predominant question the group tries to answer: How can you use computational techniques to make complex natural systems tractable?

    CSL positions itself in the research theme Computational Science with clear links to AI and People, Science & Technology.

    Traditional means of analysis, like mathematics, will only get you so far. If you really want to understand why the financial market will crash or a crowd will stampede, you also need computational modelling techniques. Mike Lees, chair of the group
    Dr. M.H. (Mike) Lees

    Group leader Computational Science Lab (CSL)

  • Computer Vision research group (CV)

    The mission of the Computer Vision research group is to study core computer vision technologies and in particular colour processing, 3D reconstruction, object recognition, and human-behaviour analysis.

    The aim is to provide theories, representation models and computational methods which are essential for image and video understanding. Research ranges from image processing (filtering, feature extraction, reflection modeling, and photometry), invariants (color, descriptors, scene), image understanding (physics‐based, probabilistic), object recognition (classification and detection) to activity recognition with a focus on human‐behavior (eye tracking, facial expression, head pose, age and gender).

    CV positions itself in the research theme AI with clear links to Data Science and People, Science & Technology.

    Prof. dr. T. (Theo) Gevers

    Group leader Computer Vision (CV)

  • Digital Interactions Lab (DIL)

    Shaping the Future of Digital Life

    The Digital Interactions Lab (DIL) is a research group within the Informatics Institute at the University of Amsterdam. There is a lot of potentially very exciting research taking place in areas such as AI, machine learning, natural language understanding and the Internet of Things. However, the advances in these areas are not making the impact that they might in fields such as education and healthcare. Our research bridges the gap between the technology-oriented and market-led formulation of the smart agenda with a sociological and psychological understanding of what people need artificial intelligence to be, and how data science might enhance our societies.

    The predominant questions the Digital Interactions Lab tries to answer is ‘How can we ensure that advances in artificial intelligence and data science lead to concomitant advances in human values, dignity, wellbeing, and flourishing? How can interactive digital technologies address the pressing societal challenges of today, and the ones of the future, in ways which lead to real impact?’

    DIL positions itself primarily in the research theme People, Science & Technology with clear links to Data Science and AI from a human-centred standpoint.

    There are broad societal issues around agency, trust and ethics which must be considered in the context of how data is gathered and used. There is also increasing debate around the appropriate role for sensors, algorithms, etc. in our everyday lives. Fortunately, this is leading to a heightened awareness of the relative roles of artificial and human intelligence, with a focus on technologies which can augment human capacity rather than attempting to emulate it. Judith Good, chair of the group
    Prof. dr. J.A. (Judith) Good PhD

    Group leader Digital Interactions Lab (DIL)

  • Information Retrieval Lab (IRLab)

    Working on search engines with a modern artificial intelligence perspective.
    IRLab focuses on bringing the right information to the right people in a fair and transparent way.

    IRLab works on data-driven methods to understand content, to analyse and predict user behaviour and to make sense of context and information, all in the setting of search engines, recommender systems and conversational assistants. Applications are ubiquitous: tools to find documents on the web, recommend products, discover music and much more.

    IRLab positions itself in the research theme AI with clear links to Data Science and People, Science & Technology.

    We develop machine intelligence and augment it with human intelligence to help people, locate, and act on, the information they need. Evangelos Kanoulas, chair of the group
    Prof. dr. E. (Evangelos) Kanoulas

    Group leader Information Retrieval Lab (IRLab)

  • INtelligent Data Engineering Lab (INDElab)

    Helping people manage large amounts of data
    The Intelligent Data Engineering Lab (INDElab) is a research group at the Informatics Institute of the University of Amsterdam (UvA). INDElab works on intelligent systems that help people with the preparation, management, integration, and reuse of data.

    In today’s society people are confronted with complex information all the time. INDElab tries to help people manage all this data and make sure that it is correct, transparent and usable. The predominant question that follows: How can we design and build systems to help people understand and work with data?

    INDElab positions itself in the research theme Data Science with clear links to AI and People, Science & Technology.

    You get really exciting problems by seeing what people in the real world are struggling with. Paul Groth, chair of the group
    Prof. P.T. (Paul) Groth

    Group leader INtelligent Data Engineering Lab (INDElab)

  • Language Technology Lab (LTL)

    Breaking down language barriers with language technology
    The Language Technology Lab (LTL) is a research group within the Informatics Institute at the University of Amsterdam. LTL focuses on information access from natural language data. Natural language is, simply put, the way humans communicate with each other in speech and text. The group’s unique angle is that they work on language independent technology.

    There are thousands of languages in the world. Analysing and translating all those languages in an automated way, would break down language barriers. The predominant question the group tries to answer: How can we represent meaning of texts and how can that be exploited for applications?

    LTL positions itself in the research theme AI with clear links to Data Science and People, Science & Technology.

    We strive for actual understanding of language. Not just word or pattern matching, but technology which will allow us to interact with machines far beyond small talk. Christof Monz, chair of the group
    Prof. dr. C. (Christof) Monz

    Group leader Language Technology Lab (LTL)

  • Multimedia Analytics Lab Amsterdam (MultiX)

    Tackling multimedia data with AI techniques.
    Multimedia Analytics Lab Amsterdam (MultiX) is a research group within the Informatics Institute at the University of Amsterdam. The group develops artificial intelligence (AI) techniques that help people understand large collections of multimedia data. Multimedia data can be imagery, text, video, graphs, but also other informational context like geocoordinates.

    The predominant question the group tries to answer: How can you bring together all this information in a way that users get a better understanding of it? How do you combine them in a proper way? And how can you improve machine intelligence by learning from the user?

    MultiX positions itself in the research theme AI with clear links to Data Science and People, Science & Technology.

    Our group brings multimedia research together in a unique way in the Netherlands and beyond. Marel Worring, chair of the group
    Prof. dr. M. (Marcel) Worring

    Group leader Multimedia Analytics Lab Amsterdam (MultiX)

  • MultiScale Networked Systems (MNS)

    Multiscale systems that make a difference.
    The MultiScale Networked Systems (MNS) group is part of the Informatics Institute at the University of Amsterdam. The group focusses its research on multiscale systems e.g. cloud systems or clusters that define themselves by their dynamic size and scale, and on the network connecting them. The MNS group explores the emerging architectures that can support emerging applications across the future internet.

    The predominant question that the group tries to answer: How can these distributed systems work as efficiently as possible? And how do these systems need to evolve to satisfy the constantly new application requirements?

    MNS positions itself primarily in the research theme Systems & Networking with clear links to Data Science.

    nspired by the engineering challenges in data and computing-intensive applications on highly distributed, heterogeneous, and emerging next-generation networked infrastructures, our research explores the architecture, protocols, and algorithms essential for enabling quality critical services and holistic solutions, spanning various levels of abstraction and scale, from the application layer down to underlying networks. Zhiming Zhao
    Dr Z. (Zhiming) Zhao

    Group leader MultiScale Networked Systems (MNS)

  • Parallel Computing Systems (PCS)

    Extra-functional behaviour of computer systems in full glory.
    The Parallel Computing Systems (PCS) group is part of the Informatics Institute at the University of Amsterdam. It is the foremost research group in The Netherlands in the field of system optimization of multi-core and multi-processor computer systems. The PCS group looks at system performance, power/energy consumption, reliability, security & safety, but also the degree of productivity to design and program these systems: the extra-functional behaviour of computer systems in full glory.

    The top research of the PCS group is indispensable for developments within, for example, Artificial Intelligence. In order to be able to cope with the increasingly demanding calculations in computer science, it is essential that computer systems become faster and more efficient. Without the skills of researchers within computer systems, AI, amongst others, was certainly not where it is today.

    PCS positions itself primarily in the research theme Systems & Networking with clear links to AI and Data Science.

    Our research in the combination of extra-functional behaviour and parallel systems on one chip or one machine is unique in The Netherlands, and even beyond. Andy Pimentel, chair of the group
    Prof. dr. A.D. (Andy) Pimentel

    Group leader Parallel Computing Systems (PCS)

  • Quantitative Healthcare Analysis (qurAI) group

    Designing and enabling responsible AI solutions for data analysis challenges in healthcare.
    The mission of the Quantitative Healthcare Analysis (qurAI) group is to enhance patient care by designing and enabling leading edge AI technologies in healthcare.

    The aims are:

    • Bring fundamental AI research and clinical research closer and facilitate the cross-fertilization of these fields.
    • Facilitate interdisciplinary collaboration across UvA to strengthen research and implementation of socially responsible AI in healthcare.
    • Educate the next generation of AI researchers in healthcare and the next generation of doctors that will use AI.
    • Enable responsible use of key resources (data, computational power, algorithms, clinical knowledge, clinical workflows) for the development and translation of healthcare innovations.

    QurAI is an interfaculty group embedded in the Science (Institute of Informatics) and the Faculties of Medicine (AMC, Department of Biomedical Engineering and Physics) of the University of Amsterdam.

    qurAI positions itself primarily in the research theme AI with clear links to Computational Science, Data Science and People, Science & Technology.

    Prof. dr. ir. C.I. (Clarisa) Sánchez Gutiérrez

    Group leader Clarisa Sánchez Gutiérrez (Informatics Institute) group

  • Socially Intelligent Artificial Systems (SIAS) group

    Advancing society through inclusive AI technology.
    The Socially Intelligent Artificial Systems (SIAS) group is part of the Informatics Institute at the University of Amsterdam. The group focuses on civic-centered and community-minded artificial intelligence (AI) that aims to reduce inequality and promote equal opportunity in society.

    SIAS arose out of the concern that AI is increasing inequality in society. The predominant question the group tries to answer: How can we use AI, and in particular learning systems, to advance society? And how can we do that in such a way that people from all corners of society benefit from it?

    SIAS positions itself primarily in the research theme People, Science & Technology with clear links to AI, Computational Science, Data Science, Systems & Networking.

    AI should be working for people, instead of people working for AI. Sennay Ghebreab, chair of the group
    Prof. dr. S. (Sennay) Ghebreab

    Group leader Socially Intelligent Artificial Systems (SIAS) group

  • Theory of Computer Science (TCS)

    The Theory of Computer Science group, led by Christian Schaffner, is concerned with the development of theoretical foundations of computer science, based on logic and mathematics.

    The aim is to seek greater understanding of fundamental computational techniques and their inherent limitations. The emphasis is not only on the abstract aspects of computing, but also on the application of theory in the field of computer science.

    The focus is on developing theory and tools in the field of algebraic specification which can be used to specify, analyse, and verify concurrent communicating and programmed systems.

    TCS has clear links with the research themes AI, Computational Science, Data Science, and People, Science & Technology, and Systems & Networking.

    Prof. dr. C. (Christian) Schaffner

    Group leader

    Qualitative Reasoning group

    Bert Bredeweg leads a subgroup on Qualitative Reasoning, that focuses on the development tools and expertise that supports the acquisition of a conceptual understanding of dynamic systems through conceptual modelling and simulation. The two most notable applications of this technology are in science education and science.

    Dr. B. (Bert) Bredeweg

    Group leader

  • Video & Image Sense Lab (VIS)

    We make sense of video and images with artificial and human intelligence. The lab studies computer vision, deep learning and cognitive science. We are based at the Informatics Institute of the University of Amsterdam.

    The VIS Lab embeds four public-private AI labs. QUVA Lab with Qualcomm, Delta Lab with Bosch, Atlas Lab with TomTom and AIM Lab with the Inception Institute of Artificial Intelligence. Spin-off's from the lab include Kepler Vision Technologies and Ellogon.ai.

    VIS positions itself in the research theme AI with clear links to Data Science and People, Science & Technology.

    Prof. dr. C.G.M. (Cees) Snoek

    Group leader Video & Image Sense Lab (VIS)