Monika Nagy-Huber | Machine Learning | Best Researcher Award

Mrs. Monika Nagy-Huber | Machine Learning | Best Researcher Award

Ms. Universität Basel, Switzerland

Monika Timea Nagy-Huber is currently pursuing a PhD in Computer Science at the University of Basel, specializing in Physics-informed Machine Learning Algorithms under the supervision of Prof. Dr. Volker Roth in the Biomedical Data Analysis research group. She earned her Master of Science in Mathematics from the same university, focusing on Numerics (Partial Differential Equations for Wave Equations) and Algebra-Geometry-Number Theory (Elliptic Curves). Her master’s thesis, titled “The Local Discontinuous Galerkin Method with Local Time Stepping Method for solving the Wave Equation,” received a grade of 5.5. Monika also holds a Bachelor of Science in Mathematics from the University of Basel, completed in 2016.

Profile

Google scholar

Personal Data 🌐

Last Name: Nagy-Huber
First Name: Monika Timea
E-Mail: monika.nagy@unibas.ch
Nationality: Swiss

University Education 🎓

PhD in Computer Science, University of Basel
09/2019 – Present

Supervisor: Prof. Dr. Volker Roth

Research Group: Biomedical Data Analysis

Specialization: Physics-informed Machine Learning Algorithms

Master of Science in Mathematics, University of Basel
02/2016 – 02/2019

Areas of Specialization: Numerics (Partial Differential Equations for Wave Equations), Algebra-Geometry-Number Theory (Elliptic Curves)

Master’s Thesis: “The Local Discontinuous Galerkin Method with Local Time Stepping Method for solving the Wave Equation”

Grade: 5.5

Supervisor: Prof. Dr. Marcus J. Grote

Bachelor of Science in Mathematics, University of Basel
09/2011 – 02/2016

Publications:

The effect of lysergic acid diethylamide (LSD) on whole-brain functional and effective connectivity

CITED BY 17

Learning invariances with generalised input-convex neural networks

CITED BY 5

Mesh-free Eulerian Physics-Informed Neural Networks

CITED BY 1

Mesh-free Eulerian physics-informed neural networks

CITED BY 1

Dr. João Gama – Computer Science – Best Researcher Award

Dr. João Gama - Computer Science - Best Researcher Award

Universidade do Porto - Portugal

Professional Profiles

ORCID

Early Academic Pursuits

João Gama embarked on his academic journey at the University of Porto, Portugal, where he developed a profound interest in computer science. He pursued this passion rigorously, culminating in a Ph.D. in Computer Science from the same institution in 2000. This period was marked by intensive research and the laying of a solid foundation in data science and machine learning, areas that would define his illustrious career.

Professional Endeavors

Currently, João Gama serves as a Full Professor at the School of Economics, University of Porto, Portugal. His academic influence extends beyond teaching; he is also deeply involved in various professional organizations and research groups. Gama is an esteemed member of the board of directors at LIAAD, a research group within INESC TEC, a leading R&D institution. His professional affiliations include being a EurIA Fellow, IEEE Fellow, and Fellow of the Asia-Pacific AI Association, all of which underscore his significant contributions and leadership in the field of artificial intelligence.

Gama's expertise and reputation have also earned him the role of ACM Distinguished Speaker, where he shares his knowledge and insights at various conferences and academic gatherings worldwide. His h-index of 71 on Google Scholar is a testament to the impact and reach of his research, reflecting a prolific career filled with influential publications and citations.

Contributions and Research Focus

João Gama’s research interests are broad and impactful, focusing on knowledge discovery from data streams, evolving network data, probabilistic reasoning, and causality. His pioneering work in data stream learning has been particularly influential. Data stream learning involves analyzing continuous flows of data in real-time, a field critical for applications ranging from financial analytics to sensor networks and beyond.

Gama has published more than 300 peer-reviewed papers in prestigious journals and major conferences, solidifying his position as a leading researcher. His extensive body of work includes significant contributions to the understanding and development of algorithms for real-time data analysis, which are essential in today's data-driven world.

As the Editor-in-Chief of the Journal of Data Science and Analytics and an editor for several top-tier journals in machine learning and data mining, Gama plays a pivotal role in shaping the direction of research and discourse in these fields. His editorial work ensures the dissemination of high-quality research and the advancement of knowledge in data science.

Accolades and Recognition

João Gama's contributions have been recognized with numerous accolades. He has served as Program Chair for several prestigious conferences, including ECMLPKDD 2005, DS09, ADMA09, EPIA 2017, and DSAA 2017. His leadership roles also extend to serving as Conference Chair for events like IDA 2011, ECMLPKDD 2015, and DSAA 2021, as well as organizing workshops on Knowledge Discovery from Sensor Data with ACM SIGKDD. These roles highlight his expertise and leadership in the field, as well as his commitment to advancing research and fostering collaboration among scholars.

Impact and Influence

João Gama’s work has had a profound impact on the field of data science and machine learning. His research on data streams and evolving network data has provided crucial insights and tools for real-time data analysis, influencing both academic research and practical applications. His contributions to probabilistic reasoning and causality have advanced our understanding of complex systems and how we can infer relationships from data.

Through his numerous publications and editorial work, Gama has significantly influenced the research community, shaping the discourse and direction of data science. His role as a mentor and educator has also helped cultivate the next generation of data scientists and researchers.

Legacy and Future Contributions

As a scholar, João Gama’s legacy is built on his extensive research, influential publications, and leadership in the academic community. His work in data stream learning and other areas of data science continues to inspire and guide research efforts worldwide. His ongoing involvement in conferences and editorial boards ensures that he remains at the forefront of developments in his field.

Looking forward, Gama is poised to continue making significant contributions to data science and machine learning. His future research is likely to delve deeper into the complexities of real-time data analysis and the application of machine learning algorithms to new and emerging data types. His commitment to advancing knowledge and fostering innovation ensures that his impact on the field will endure for many years to come.

In summary, João Gama's career is a testament to his dedication to the advancement of data science and machine learning. His contributions have not only expanded our understanding of these fields but have also paved the way for future innovations. His influence as a researcher, educator, and leader in the academic community is both profound and enduring.

Notable Publications

S+t-SNE - Bringing Dimensionality Reduction to Data Streams 2024

Super-Resolution Analysis for Landfill Waste Classification 2024

From fault detection to anomaly explanation: A case study on predictive maintenance 2024