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Sobre

Sobre

Em termos de temas de investigação principais destaca-se a gestão de dados em modelos de coerência fraca, mecanismos de agregação de dados e causalidade em sistemas distribuídos. No últimos anos, e em colaboração outros investigadores, têm sido desenvolvidos mecanismos de sumarização de dados como os Scalable Bloom Filters, registo de causalidade em ambientes dinâmicos com Interval Tree Clocks e Dotted Version Vectors, bem como abordagens robustas para o suporte à alta disponibilidade com coerência fraca via Conflict-Free Replicated Data Types. Alguns destes mecanismos têm sido aplicados na base de dados distribuída Riak e no Akka distributed data, estando estes mesmos em uso em diversas aplicações finais com milhões de utilizadores a nível global.

Tópicos
de interesse
Detalhes

Detalhes

  • Nome

    Carlos Baquero
  • Cargo

    Responsável de Área
  • Desde

    01 novembro 2011
003
Publicações

2025

Social Compliance with NPIs, Mobility Patterns, and Reproduction Number: Lessons from COVID-19 in Europe

Autores
Baccega, D; Aguilar, J; Baquero, C; Fernández Anta, A; Ramirez, JM;

Publicação

Abstract
AbstractNon-pharmaceutical interventions (NPIs), including measures such as lockdowns, travel limitations, and social distancing mandates, play a critical role in shaping human mobility, which subsequently influences the spread of infectious diseases. Using COVID-19 as a case study, this research examines the relationship between restrictions, mobility patterns, and the disease’s effective reproduction number (Rt) across 13 European countries. Employing clustering techniques, we uncover distinct national patterns, highlighting differences in social compliance between Northern and Southern Europe. While restrictions strongly correlate with mobility reductions, the relationship between mobility and Rtis more nuanced, driven primarily by the nature of social interactions rather than mere compliance. Additionally, employing XGBoost regression models, we demonstrate that missing mobility data can be accurately inferred from restrictions, and missing infection rates can be predicted from mobility data. These findings provide valuable insights for tailoring public health strategies in future crisis and refining analytical approaches.

2025

CRDT-Based Game State Synchronization in Peer-to-Peer VR

Autores
Dantas, A; Baquero, C;

Publicação
CoRR

Abstract

2025

Distributed Generalized Linear Models: A Privacy-Preserving Approach

Autores
Tinoco, D; Menezes, R; Baquero, C;

Publicação
CoRR

Abstract

2025

CRDT-Based Game State Synchronization in Peer-to-Peer VR

Autores
Dantas, A; Baquero, C;

Publicação
Proceedings of the 12th Workshop on Principles and Practice of Consistency for Distributed Data, PaPoC 2025, World Trade Center, Rotterdam, The Netherlands, 30 March 2025- 3 April 2025

Abstract
Virtual presence demands ultra-low latency, a factor that centralized architectures, by their nature, cannot minimize. Local peer-to-peer architectures offer a compelling alternative, but also pose unique challenges in terms of network infrastructure.This paper introduces a prototype leveraging Conflict-Free Replicated Data Types (CRDTs) to enable real-time collaboration in a shared virtual environment. Using this prototype, we investigate latency, synchronization, and the challenges of decentralized coordination in dynamic non-Byzantine contexts.We aim to question prevailing assumptions about decentralized architectures and explore the practical potential of P2P in advancing virtual presence. This work challenges the constraints of mediated networks and highlights the potential of decentralized architectures to redefine collaboration and interaction in digital spaces. © 2025 Copyright is held by the owner/author(s).

2024

Performance and explainability of feature selection-boosted tree-based classifiers for COVID-19 detection

Autores
Rufino, J; Ramírez, JM; Aguilar, J; Baquero, C; Champati, J; Frey, D; Lillo, RE; Fernández Anta, A;

Publicação
HELIYON

Abstract
In this paper, we evaluate the performance and analyze the explainability of machine learning models boosted by feature selection in predicting COVID-19-positive cases from self-reported information. In essence, this work describes a methodology to identify COVID-19 infections that considers the large amount of information collected by the University of Maryland Global COVID-19 Trends and Impact Survey (UMD-CTIS). More precisely, this methodology performs a feature selection stage based on the recursive feature elimination (RFE) method to reduce the number of input variables without compromising detection accuracy. A tree-based supervised machine learning model is then optimized with the selected features to detect COVID-19-active cases. In contrast to previous approaches that use a limited set of selected symptoms, the proposed approach builds the detection engine considering a broad range of features including self-reported symptoms, local community information, vaccination acceptance, and isolation measures, among others. To implement the methodology, three different supervised classifiers were used: random forests (RF), light gradient boosting (LGB), and extreme gradient boosting (XGB). Based on data collected from the UMD-CTIS, we evaluated the detection performance of the methodology for four countries (Brazil, Canada, Japan, and South Africa) and two periods (2020 and 2021). The proposed approach was assessed in terms of various quality metrics: F1-score, sensitivity, specificity, precision, receiver operating characteristic (ROC), and area under the ROC curve (AUC). This work also shows the normalized daily incidence curves obtained by the proposed approach for the four countries. Finally, we perform an explainability analysis using Shapley values and feature importance to determine the relevance of each feature and the corresponding contribution for each country and each country/year.

Teses
supervisionadas

2023

Dynamic end-to-end reliable causal delivery middleware for geo-replicated services

Autor
Georges Younes

Instituição
UP-FEUP

2023

ROSES: Renaming Operations for Scalable Eventually-Consistent Sets

Autor
Juliane de Lima Marubayashi

Instituição
UP-FEUP

2023

Design and Implementation of Pure Operation-Based CRDTs

Autor
Luís Filipe Sousa Teixeira Recharte

Instituição
UP-FEUP

2022

Development of a platform for integrated clinical records of cystic fibrosis patients in a national reference center

Autor
Márcia Isabel Reis Teixeira

Instituição
UP-FEUP

2022

Design de Interface para uma Plataforma de Registo Clínico Integrado de Doentes com Fibrose Quística num Centro de Referência Nacional

Autor
Maria Teresa Santos Quelhas Pinto Leite

Instituição
UP-FEUP