Blog

  • INESC-ID researchers awarded the INFORUM Award for Best student article

    INESC-ID researchers awarded the INFORUM Award for Best student article

    The article “Non-consensual cryptocurrencies at Ethereum” by researchers Paulo Silva, Miguel Matos and João Barreto was awarded the prize for Best Student Article.

    INFORUM – Symposium on Information Technology took place on 9 and 10 September 2021 at ISEL, in Lisbon.

    More information at https://inforum.org.pt/en/premios

     

     

     

    [PT]

    Investigadores do INESC-ID recebem Prémio INFORUM Melhor artigo de estudante

     

    O artigo “Consensusless cryptocurrencies in Ethereum” dos investigadores Paulo Silva, Miguel Matos e  João Barreto foi premiado com a galardão de Melhor artigo de estudante

    O INFORUM – Simpósio de Informática teve lugar a 9 e 10 de Setembro de 2021 no ISEL, em Lisboa.

    Mais informação em https://inforum.org.pt/en/premios

  • 3 INESC-ID researchers win Universidade de Lisboa/ Caixa Geral de Depósitos Scientific Awards

    3 INESC-ID researchers win Universidade de Lisboa/ Caixa Geral de Depósitos Scientific Awards

    3 INESC-ID researchers were recognised in the 2020 edition of Universidade de Lisboa/ Caixa Geral de Depósitos Scientific Awards (ULisboa/CGD Scientific Awards) . The awards ceremony took place on 26th July.

    Joaquim Jorge, researcher at INESC-ID and professor at the Department of Computer Science and Engineering (DEI) at Instituto Superior Técnico, received the award in Computer Science and Informatics Engineering scientific area.

    Leonel Sousa, researcher at INESC-ID and professor at Department of Electrical and Computer Engineering (DEEC), won an honourable mention, in Electrical Engineering and Aerospace Engineering (Avionics) scientific area.

    Rui Gameiro de Castro, professor at the Department of Electrical and Computer Engineering (DEEC) and researcher at INESC-ID, received an honourable mention in Environmental and Energy Engineering scientific area.

    The ULisboa/CGD Scientific Awards reward scientific research activity and encourage the practice of publishing in international journals of recognised quality. These awards consist of a diploma and a €6.500 cash prize.

    The CEO of CGD highlighted the importance of ULisboa in society and shared CGD’s willingness to continue supporting and investing in knowledge, particularly in universities. “We believe that the University, with its endless freedom of spirit, is an essential bulwark for knowledge dissemination”, he said.

    The ceremony is available on ULisboa YouTube channel.

    Source: Instituto Superior Técnico

  • ILU: A technology to help improve Urban Mobility

    ILU: A technology to help improve Urban Mobility

    INESC-ID is developing a project in partnership with National Civil Engineering Laboratory, Câmara Municipal de Lisboa (Lisbon Municipality), and the major public carriers in the Lisbon metropolitan area with the aim of aligning urban mobility plans with the emerging traffic dynamics.

    The ILU project (Integrative Learning from Urban Data and Situational Context for City Mobility Optimization) aims to improve mobility in Lisbon by analyzing heterogeneous sources of traffic data produced by ticketing systems, stationary road sensors, and mobile devices; therefore: 1) supporting the transparency of urban mobility plans to the citizen; 2) offering a solid ground for coordination efforts among municipalities and public transport operators; and 3) ensuring the public transport system responds to the ongoing city transformations and changes observed in a pandemic context.

    To this end, the ILU APP, a pioneer recommendation system that integrates the main computational contributions of the project, is being developed. ILU APP offers a multimodal, dynamic and context-sensitive analysis of urban traffic, combining five main features:

    • automatic consolidation of urban data sources from public transport operators and PGIL (platform for intelligent management in Lisbon) with potential impact on the city traffic analysis, with particular attention to the provision of: efficient cross-modal spatiotemporal queries, Big Data visualization utilities, dynamic updates, mappings into data structures conducive to the subsequent machine learning tasks, and the inference of incomplete traffic flows, including alighting stop estimates in the CARRIS network;
    • descriptive analytics for detecting vulnerabilities and ongoing changes to mobility in the city, focusing on:

    – statistically significant traffic patterns, including: (a) frequent and periodic patterns indicative of overcrowding or congestion; (b) emerging traffic patterns that may reveal future vulnerabilities; (c) deviant patterns including anomalous variations in demand; (d) multimodal traffic synergies; and (e) correlations present in multiple sources of urban traffic;

    – dynamic inference of multimodal origin-destination matrices, allowing the detection of vulnerabilities in the network, including transfer needs and long journey times;

    • predictive analytics of traffic flows from various data sources, using innovative associative learning and deep learning principles. The facilities are provided within a solid statistical frame, enabling forecasts of road traffic or demand on the public transport network to be made with guarantees of significance and variability;

     

    • analytics sensitive to different sources of situational context, in particular the extension of the previous description and forecasting facilities for the study of traffic dynamics in the presence of historical and prospective context, including: (a) planned events (such as sport matches and cultural events), (b) weather forecasts, and (c) interdictions on public roads;

     

    • optimization facilities based on the previous data-centric models of traffic for: (a) adjusting the public transportation network by revising vehicle routing and frequency; and (b) designing intelligent traffic light control systems at specific city junctures. In this context, the ILU project is combining control and micro-simulation principles with advances from deep reinforcement learning.

    The recommendation system will be delivered in the form of a functional prototype to the project’s public partners – CML, CARRIS and METRO – to support their: (a) strategic decisions related to the city mobility; and (b) real-time operational decisions, including the signaling of the ongoing vulnerabilities in the mobility system.

    These contributions are expected to reveal untapped multimodal synergies and promote a sustainable urban mobility, giving priority for public transport options and the integration of active travel modes. Moreover, the modular, dynamic, and online nature of the devised contributions ensures their interoperability and scalability to other cities in the current pandemic era.

     

     

    [pt]

    ILU: A tecnologia a contribuir para melhorar a Mobilidade Urbana

    O INESC-ID está a desenvolver um projeto em parceria com a Câmara Municipal de Lisboa e o Laboratório Nacional de Engenharia Civil que visa contribuir para melhorar a Mobilidade Urbana.

    O projeto iLU (Integrative Learning from Urban Data and Situational Context for City Mobility Optimization) visa melhorar a mobilidade em Lisboa a partir da análise de dados da circulação automóvel e de transportes públicos. Pretende-se descobrir padrões de circulação na cidade, antecipar problemas e fazer recomendações.

    O INESC-ID está a desenvolver um projeto em parceria com o Laboratório Nacional de Engenharia Civil, a Câmara Municipal de Lisboa, e transportadoras na área metropolitana de Lisboa com o objetivo de alinhar os planos de Mobilidade Urbana com as emergentes dinâmicas de tráfego.

    O projeto ILU (Integrative Learning from Urban Data and Situational Context for City Mobility Optimization) visa melhorar a mobilidade em Lisboa através da análise de dados de tráfego produzidos por sistemas de bilhetagem na rede de transportes públicos, sensores rodoviários estacionários, e dispositivos móveis; visando: 1) apoiar a transparência dos planos de mobilidade urbana para o cidadão; 2) fortalecer a coordenação entre municípios e operadoras de transporte público a partir das vistas centradas nos dados; e 3) garantir que o sistema de transporte público responde às transformações em curso na cidade e às mudanças estruturas observadas em contextos pandémicos.

    Para tal, foi desenvolvida a ILU APP, um sistema de recomendação pioneiro que integra as principais contribuições computacionais do projeto. A ILU APP oferece uma análise multimodal, dinâmica e sensível ao contexto do tráfego urbano, combinando cinco características principais:

    • consolidação automática de fontes de dados urbanos presentes nos operadores de transportes públicos e disponibilizados na PGIL (plataforma para gestão inteligente em Lisboa), tendo particular atenção à disponibilização de facilidades de visualização, procuras eficientes, atualização dinâmica dos dados, mapeamentos em estruturas de dados conducivas às subsequentes tarefas de aprendizagem, e à inferência de fluxos de tráfego incompletos, incluindo estimativas do desembarque por passageiro na rede CARRIS;

     

    • analítica descritiva para detectar vulnerabilidades e contínuas alterações à mobilidade na cidade, com foco em:

     

    – padrões de tráfego estatisticamente significativos, incluindo: (a) padrões frequentes e periódicos indicativos de congestionamento ou sobrelotação; (b) padrões emergentes capazes de antecipar vulnerabilidades futuras; (c) padrões desviantes incluindo variações anómalas na procura; (d) sinergias multimodais no tráfego; e (e) correlações presentes nas múltiplas fontes de tráfego urbano;

     

    – inferência dinâmica de matrizes de origem-destino multimodais, permitindo a detecção de vulnerabilidades na rede, incluindo necessidades de transbordo e durações elevadas de viagem;

     

    • análise preditiva de fluxos de tráfego a partir de várias fontes de dados, usando princípios inovadores de aprendizagem associativa e aprendizagem profunda. As facilidades disponibilizadas têm um enquadramento estatístico sólido, permitindo realizar previsões do tráfego rodoviário ou de procura na rede pública de transportes com garantias de significância e variabilidade;

     

    • análises sensíveis a diferentes fontes de contexto situacional, em particular estendo as anteriores facilidades de descrição e previsão para o estudo da dinâmicas de tráfego na presença de contexto histórico e prospectivo, incluindo: (a) eventos planeados (desportivos e culturais), (b) registos e previsões meteorológicas, e (c) interdições em vias públicas;

     

    • optimizadores com base nos modelos de tráfego centrados em dados anteriores para: (a) ajustar a rede de transporte público revendo o roteamento e a frequência dos veículos; e (b) desenhar sistemas de controle de semáforos inteligentes em cruzamentos específicos na cidade. Nesse contexto, o projeto ILU combina princípios de controlo e micro-simulação com avanços em aprendizagem profunda com reforço.

    O sistema de recomendação será entregue sob a forma de um protótipo funcional aos parceiros públicos do projeto – CML, CARRIS e METRO – por forma a apoiar: (a) decisões estratégicas ligadas ao planeamento da mobilidade na cidade; e (b) decisões operacionais em tempo real, incluindo a sinalização de vulnerabilidades ou necessidades de reforço à oferta.

    Esperamos que estas contribuições revelem sinergias multimodais desconhecidas, promovendo uma mobilidade urbana mais sustentável, prioritizando as opções de transporte público e a integração de meios de transporte ativo (mobilidade pedonal, cicloviável, e partilhada). Além disso, a natureza modular e dinâmica das contribuições garante a sua extensão a outras cidades de Portugal e no mundo.

  • H  |  Visions of the Future |  The first issue of the e-magazine of INESC Brussels HUB

    H | Visions of the Future | The first issue of the e-magazine of INESC Brussels HUB

    Discover our newest publication: Visions of the future, the first issue of the e-magazine of INESC Brussels HUB.

     

    It brings you fresh ideas on the most important issues in scientific research and technology today, together with the stories of those who will develop the technological innovations of tomorrow. It focuses on the stories and the projects of the people who work in INESC, and of INESC’s international present and potential partners.

     

    For this issue, we wanted to give our contribution to the Conference on the Future of Europe, through a thematic publication on the future of technology

     

    Learn about the new perspectives and challenges of artificial intelligence, robotics, telecommunications, the energy transition, health technologies, and more.

     

    Read here

     

  • INESC-ID researchers awarded ACM SIGSOFT Distinguished Paper

    INESC-ID researchers awarded ACM SIGSOFT Distinguished Paper

    A joint team of researchers including INESC-ID researchers Vasco Manquinho and Pedro Orvalho will receive an ACM (Association for Computing Machinery) SIGSOFT Distinguished Paper Award for their work on a new analysis engine for the popular Alloy modeling language.

    The paper “AlloyMax: Bringing Maximum Satisfaction to Relational  Specifications” has been chosen to receive an ACM SIGSOFT Distinguished Paper Award at  upcoming ACM Joint European Software Engineering Conference and Symposium on the Foundations of Software Engineering (ESEC/FSE 2021).

    The team of authors is composed by Changjian Zhang (CMU), Ryan Wagner (CMU), Pedro Orvalho (INESC-ID/IST, Universidade de Lisboa), David Garlan (CMU), Vasco Manquinho (INESC-ID/IST, Universidade de Lisboa), Ruben Martins (CMU), and Eunsuk Kang (CMU).

    Distinguished papers are given to at most 10% of the papers accepted at  an ACM SIGSOFT-sponsored conference. The winners were chosen by the  program co-chairs from those papers that had either a nomination for  distinguished paper award, or at least two accept scores and no  negative scores.  In total eight papers were recognized this year.

    “The Alloy language is widely used in software engineering for verification, automatic generation of test cases, or security analysis. Considering that the software is currently pervasive on any device we use, some defects can result in serious failures in the operation and safety of the devices”, mentioned Vasco Manquinho.

    The work, in collaboration with the CMU team, extends the Alloy modeling language to enable the generation of optimal solutions according to a given optimization criterion. For example, it enables to obtain solutions that maximize the performance or security of systems. The INESC-ID research team has a long-term collaboration  with Prof. Rúben Martins (CMU) in the development of new  optimization algorithms using computational logic.

    “This distinction is important because it allows greater visibility to our work in the field of computational logic. Reality is demonstrating the importance of this area in numerous engineering contexts”, adds the INESC-ID researcher.

  • CIMPLE: Countering Creative Information Manipulation with Explainable AI

    CIMPLE: Countering Creative Information Manipulation with Explainable AI

    What’s the role that Artificial Intelligence can play in fighting misinformation?

    CIMPLE project aims to research and develop innovative social and knowledge driven creative AI
    explanations, and testing it in the domain of detection and tracking of manipulated information, while
    taking into account social, psychological, and technical explainability needs and requirements.

    “Our domain is the manipulation of information that we see on social media, in the news… it is about
    the dissemination of information or news that is factually wrong because it does not tell the truth or it has been manipulated, misleading the public”, mentioned  Sofia Pinto, the INESC-ID Researcher involved in the project.

    The CIMPLE project is all about Explainable Artificial Intelligence (XAI) requirements related to AI-driven misinformation detection, XAI by design using Knowledge Graphs and XAI models for detecting
    information manipulation. The Researchers involved aim to be able to generate creative and engaging
    explainability visualisations and personalize XAI to end-users skills and topic affinity.

     

    “INESC-ID’s role is to look for ways to explain the manipulation of information, in a way that the interlocutor has the ability to listen and to question himself. It is more than just presenting facts, as it is very difficult to convince someone else who believes something otherwise. And this is where creativity comes in. We are going to work on this explanation of manipulation using computational creativity to attract people’s attention, so that they can visualize where there was manipulation and so that they can reach to their own conclusions”, adds the researcher.

     

    Explainability is of significant importance in the move towards trusted, responsible and ethical AI, yet
    remains in its infancy. Most relevant efforts focus on the increased transparency of AI model design and
    training data, and on statistics-based interpretations of resulting decisions (interpretability).
    Explainability considers how AI can be understood by human users. The understandability of such
    explanations and their suitability to particular users and application domains received very little
    attention so far. Hence there is a need for an interdisciplinary and drastic evolution in XAI methods.

    CIMPLE will draw on models of human creativity, both in manipulating and understanding information,
    to design more understandable, reconfigurable and personalisable explanations. Human factors are key
    determinants of the success of relevant AI models. In some contexts, such as misinformation detection,
    existing XAI technical explainability methods do not suffice as the complexity of the domain and the
    variety of relevant social and psychological factors can heavily influence users’ trust in derived
    explanations.

    Past research has shown that presenting users with true / false credibility decisions is inadequate and
    ineffective, particularly when a black-box algorithm is used. Knowledge Graphs offer significant potential to better structure the core of AI models, using semantic representations when producing explanations for their decisions. By capturing the context and application domain in a granular manner, such graphs offer a much needed semantic layer that is currently missing from typical brute-force machine learning approaches.

    To this end, CIMPLE aims to experiment with innovative social and knowledge driven AI explanations,
    and to use computational creativity techniques to generate powerful, engaging, and easily and quickly
    understandable explanations of rather complex AI decisions and behavior. These explanations will be tested in the domain of detection and tracking of manipulated information, taking into account social,
    psychological and technical explainability needs and requirements.

     

    The Project is a Partnership between INESC-ID, EUROCOM (Paris, France), The Open University (UK),
    University of Economics and Business (Prague, Czech Republic) and WebLyzard technology, WLT
    (Vienna, Austria).

    CIMPLE was one of the CHIST-ERA projects approved under the 2019 call “Explainable Machine
    Learning-based Artificial Intelligence”.

    CHIST-ERA is a network of funding organisations in Europe and beyond supporting long term research on digital technologies with a high potential impact. It selects every year two new topics of emerging
    importance and launches a call for transnational research projects on these topics.

  • Rui Henriques

    Short Personal Interview

     

     

    Rui Henriques was born in 1987, in Lisbon he is an INESC-ID Researcher since 2010, integrating the Scientic Area Information and Decision Support Systems (IDSS).

     

     

     

    How did you get to INESC-ID?

    Master thesis at IST

     

    INESC-ID is…

    highly supportive, particularly team-, staff- and logistic-wise. Impeccable project support, HR contracting, budget execution facilities, access to legal opinion, acquisition processes, and formalization of bilateral agreements.

     

    Research project(s) under development

    ILU – Integrative Learning from Urban Data and Situational Context for City Mobility Optimization (ILU (IDSS))

     

    WISDOM – Water Intelligence System Data

    Data2Help – Data Science for Optimization of Emergency Medical Services

    iCare4U – Decision Support System for Personalized Medicine in ICUs

    IPOscore

     

     

    How would you explain in the most accessible and least technical language possible, what is the application / expected results of this (these) project (s)?

    Biomedical data analysis for disease study, therapeutics and prognostics (primary research); Urban data analysis to assist mobility planning; Sensor data analysis for detecting fault behavior in utility supply/distribution systems; Spatiotemporal data analysis to optimize resource allocation

     

     

    Tell us about your favorite project so far (or one of them)?

    Multi-omic data analysis to identify the frontiers between psychiatric disorders, especially psychotic (such as schizophrenia) and affective (such as bipolar disease), and assess the adequacy of molecular therapies (specially antipsychotic drugs and mood stabilizers) at a personalized level.

     

    What are the biggest challenges of working in research in this area?

    Maybe time. The necessary time for validating therapeutic possibilities and translating the contributions into the daily clinical practice.

     

    What book are you currently reading?

    “Cada um vê o que quer num molho de couves” by Isabel Abecassis Empis

     

    How would you explain to your child (or your parents or grandparents) what your job is? How do you explain what means to be a researcher in this area?

    Study diseases, especially mental illnesses, dementia, and cancer, in order to offer better therapies for restoring our natural states of health and well-being.

     

     

     

    Email

    rmch@tecnico.ulisboa.pt

     

     

    Linkedin Profile Link

    https://www.linkedin.com/in/rui-henriques-4a300b8/

     

    Academic Degree *

    PhD

     

    Training / Research Area(s)

    Machine Learning, Data Science, Epigenetics, Health Informatics

     

     

    INESC-ID Scientific Area

    Information and Decision Support Systems (IDSS)

  • Luis Miguel Silveira

    Short Personal Interview

     

    Luis Miguel Silveira was born in 1963, in Lisbon. He is an INESC-ID Researcher since its inception, currently integrating the Scientic Area High-Performance Computing Architectures and Systems (HPCAS).

     

     

    How long have you been part of the INESC-ID Team?

    1999, when it started, I was previously a researcher at INESC since my student days.

     

    How did you get to INESC-ID?

    I was a young researcher at INESC before starting my PhD program and kept my association with the institute ever since. Later became an IST professor and have been a researcher at INESC-ID since the institution was started. I have also had the privilege of serving as President of the Scientific Council of the institute.

     

    INESC-ID is…

    An environment of excellence for conducting dynamic, challenging and multidisciplinary R&D&I

     

    Research project(s) under development

    NeuronReduce

     

    How would you explain in the most accessible and least technical language possible, what is the application / expected results of this (these) project (s)?

    Develop algorithms to build efficient simulation models of biological neuronal networks

     

    Tell us about your favorite project so far (or one of them)?

    HiFi-MRI, an international collaboration project for mapping and analyzing whole-brain activity using ultra-high field MRI data

     

    What are the biggest challenges of working in research in this area?

    Understanding the biological context and learning the associated “language”

     

    What book are you currently reading?

    Dilbert Turns 30

     

    How would you explain to your child (or your parents or grandparents) what your job is? How do you explain what means to be a researcher in this area?

    Find ways to describe complex behavior in a simple manner by concentrating on essential aspects

     

    How do you see the mission of INESC-ID “ to produce added value to people and society, supporting the response of public policies to scientific, health, environmental, cultural, social, economic and political challenges, in the fields of Computer Science and Electrical and Computer Engineering”?

    I see enormous potential in all those fields in making technology more widely available, more friendly, more efficient and increasingly devoted to improving our daily lives. And I see INESC-ID having a pivotal role in that transformation

     

     

     

    Email *

    lms@inesc-id.pt

     

     

    Linkedin Profile Link

    https://www.linkedin.com/in/luis-miguel-silveira-77a3304/

     

    Academic Degree *

    Licenciatura, MSc, ECE IST Tecnico, MSc, EE, PhD MIT

     

    Training / Research Area(s) *

    Design Automation

     

    INESC-ID Scientific Area *

    High-Performance Computing Architectures and Systems (HPCAS)

  • Francisco S. Melo

    Short Personal Interview

     

    Francisco S. Melo was born in 1977, in Guarda, Portugal. He is an INESC-ID Researcher since 2009, integrating the Scientic Area Artificial Intelligence for People and Society (AIPS).

     

     

     

     

    How did you get to INESC-ID?

    I started in 2009 as an Associated Laboratory Researcher, and in 2010 I joined IST as a faculty. At that time, I became a senior researcher at INESC-ID.

     

    INESC-ID is…

    A research institution that fosters state-of-the-art research in electrical engineering and computer science and facilitates knowledge and technology transfer between academia and industry in Portugal.

     

    Research project(s) under development

    HOTSPOT – Human-robOt TeamS without PrecoOrdinaTion

     

    ANIMATAS – Advancing intuitive human-machine interaction with human-like social capabilities for education in schools (ANIMATAS)

     

    ILU – Integrative Learning from Urban Data and Situational Context for City Mobility Optimization

     

     

    How would you explain in the most accessible and least technical language possible, what is the application / expected results of this (these) project (s)?

    HOTSPOT seeks to develop robots that can successfully collaborate with humans across multiple tasks.

     

    ANIMATAS is a European initiative that seeks to build a network of PhD researchers in the area of human-robot interaction.

     

    ILU seeks to improve traffic conditions in the city of Lisbon using Artificial Intelligence.

     

     

    Tell us about your favorite project so far (or one of them)?

    My favorite project so far was project INSIDE, which was a collaboration with several research institutions in Portugal and the USA, Portuguese companies and a Hospital, and investigated the use of robots in the therapy of children with autism spectrum disorders.

     

    What are the biggest challenges of working in research in this area?

    I work in artificial intelligence, specifically, a subarea of artificial intelligence known as machine learning. Currently, research in machine learning poses challenges along three orthogonal “perspectives”:

    – Scientific: In spite of the big successes of research in machine learning and artificial intelligence, current methods require absurd amounts of data and computation. One of the challenges is, therefore, to reduce the requirements of such methods. Another important challenge is related with interpretability: the aforementioned successes rely on complex models that are hard to interpret by humans, which brings forth several issues (e.g., trust).

    – Ethical: Relying on large amounts of data, machine learning algorithms are naturally subject to the biases that humans exhibit, and thus the algorithms tend to exhibit the same sort of discriminative outputs that are present in the data. Pursuing research in machine learning that mitigates the effect of such biases is, therefore, a very relevant challenge in this area.

    – Methodological: The large amount of computation required by state-of-the-art algorithms requires that institutions performing research in these areas have large computational budgets available, with two important consequences: institutions with humbler budgets find it challenging to compete with larger institutions/companies, and must therefore find research “niches” where the computation is a less central requirement; on the other hand, the results portrayed in many articles are hard to reproduce without access to such computation, which brings about the challenge of reproducibility.

     

    What book are you currently reading?

    1. Sapkowski, “Blood of Elves”.

     

    How would you explain to your child (or your parents or grandparents) what your job is? How do you explain what means to be a researcher in this area?

    My job is to make machines more intelligent and able to learn.

     

    How do you see the mission of INESC-ID “to produce added value to people and society, supporting the response of public policies to scientific, health, environmental, cultural, social, economic and political challenges, in the fields of Computer Science and Electrical and Computer Engineering”?

    I think that, in light of the technological advances of recent years, if INESC-ID is able to keep this mission in sight during its internal and external strategic decision-making, it has a unique opportunity to position itself as a top research institute at the national, European and even at the world level.

     

     

     

    Email *

    fmelo@inesc-id.pt

     

     

    Linkedin Profile Link

    https://www.linkedin.com/in/francisco-melo-aba83b8/

     

    Academic Degree

    PhD in Electrical and Computer Engineering

     

    Training / Research Area(s)

    Artificial Intelligence (Machine Learning/Reinforcement Learning)

     

    INESC-ID Scientific Area *

    Artificial Intelligence for People and Society (AIPS)