Nataša Kovač (https://orcid.org/0000-0002-6671-2938) is an assistant professor at the Faculty of Applied Sciences, University of Donja Gorica. She defended her PhD thesis entitled "Metaheuristic approach to solving a class of optimization problems in transport" at the Faculty of Mathematics, University of Belgrade, and at the same time acquired the title of Doctor of Mathematics. She was employed at the Faculty of Technical Sciences in Novi Sad and the Faculty of Maritime Studies in Kotor as an assistant. She worked as a lecturer at the Mediterranean University in Podgorica, and she also taught as a professor at the Gymnasium in Kotor. She is currently employed at the Faculty of Applied Sciences in Podgorica where she teaches Euclidean and analytical geometry, stochastic processes and probability and mathematical statistics. Her research interests are statistical analysis, metaheuristics, optimization, algorithm development, and applied mathematics in engineering sciences. She has specializations in data science and was awarded the following certifications: Certified Data Collection and Processing with Python (University of Michigan), Statistics with Python specialization (University of Michigan), Introduction to Data Science specialization (IBM), Applied Data Science specialization (IBM), and IBM Data Science specialization (IBM). She has published more than 80 scientific papers and has been involved in more than 10 international projects. She is one of the founders of the SME "MoDrone" supported by the Montenegrin government, which is dedicated to the development and promotion of innovative solutions. She is a full member of the Scientific Research Honor Society Sigma Xi.Marko Simeunović received the B.Sc., M.Sc., and Ph.D. degrees in electrical engineering from the Faculty of Electrical Engineering of the University of Montenegro, in 2008, 2009 and 2013 respectively. From 2008 to 2016 he was with the University of Montenegro covering positions of teaching/research assistant and was an ICT fellow specializing in e-service engineering. In 2016 he was also involved in the first Center of Excellence in Montenegro. He joined the University of Donja Gorica in 2016 where he is currently holding the position of associate professor. From 2020 to 2022 he was with the Department of Town Planning, Engineering Networks and Systems of the Institute of Architecture and Construction, South Ural State University, Chelyabinsk, Russia where he was associate professor. His courses are related to electrical engineering, programming, artificial intelligence, information systems and digital signal and image processing. He published more than 60 papers in international scientific journals and conferences and participated in several FP7, H2020, bilateral and national research projects. He was a leader of two innovative projects funded by the Ministry of Science of Montenegro. Marko Simeunović is a reviewer with most of the world’s leading journals on signal processing. In 2013, Dr Simeunović was honoured by the Montenegrin Academy of Sciences and Arts for his outstanding scientific achievements. His research interests include time-frequency signal analysis, robust estimation, parametric and nonparametric estimation, statistical and array signal processing, genetic algorithm applications, radar signal processing and wireless sensor networks. More information can be found at http://markosimeunovic.optimussoft.me/.Hojjatollah Farahani is an Assistant Professor at the Tarbiat Modares University (TMU), Iran. He received his Ph.D. from Isfahan University in 2009, and he was a postdoctoral researcher in Fuzzy inference at Victoria University in Australia (2014-2015), where he started working on Fuzzy Cognitive Maps (FCMs) under the supervision of Professor Yuan Miao. He is the author or co-author of more than 200 research papers and a reviewer in numerous scientific journals. He has supervised and advised many theses and dissertations in psychological sciences. His research interests and directions include psychometrics, advanced behavioral statistics, fuzzy psychology, artificial intelligence, and machine learning algorithms in psychology. His recent book entitled “An Introduction to Artificial Psychology: Application Fuzzy Set Theory and Deep Machine Learning in Psychological Research using R” was published by Springer in 2023.