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Marco Lapegna
PeerJ Editor
100 Points

Contributions by role

Editor 100

Contributions by subject area

Algorithms and Analysis of Algorithms
Data Mining and Machine Learning
Data Science
Scientific Computing and Simulation

Marco Lapegna

PeerJ Editor

Summary

In 1991 Marco Lapegna received his PhD in Applied Mathematics and Computer Science at the University of Naples Federico II (Italy), and since 2001 is a professor of Computer Science at the Department of Mathematics and Applications of the same university.

His main research interests concern methods, algorithms, and software for parallel and distributed computing environments applied to computational mathematics and machine learning, taking into account the influence of the technological evolution on them (cluster computing, multicore computing, grid computing, cloud, and edge computing). He has an active academic life with several institutional coordination duties.

Data Mining & Machine Learning Distributed & Parallel Computing Scientific Computing & Simulation

Editorial Board Member

PeerJ Computer Science

Past or current institution affiliations

University of Naples Federico II

Work details

Professor of Computer Science

University of Naples Federico II
March 1991
Mathematics and Applications
His main research interests concern methods, algorithms, and software for parallel and distributed computing environments applied to computational mathematics and machine learning, taking into account the influence of the technological evolution on them (cluster computing, multicore computing, grid computing, cloud, and edge computing). His main courses concern Introduction to Programming (math degree) and Parallel Computing (Computer Science master degree). It has an active academic life with several institutional coordination duties.

Websites

  • Google Scholar
  • scopus

PeerJ Contributions

  • Edited 1

Academic Editor on

February 9, 2022
Robustness of autoencoders for establishing psychometric properties based on small sample sizes: results from a Monte Carlo simulation study and a sports fan curiosity study
Yen-Kuang Lin, Chen-Yin Lee, Chen-Yueh Chen
https://doi.org/10.7717/peerj-cs.782