Use of Artificial Intelligence Technologies in Transportation Design and Related Industries
Abstract
This article reviews and analyses artificial intelligence technologies used in transport design and related industries, commercial products and transport design challenges addressed by these technologies.
About the Authors
S. A. LebedevRussian Federation
Sergey A. Lebedev - Candidate of Economic Sciences (Ph.D. in Economics), Head of the Department of Software Engineering, Faculty of Computer Science, HSE University.
109028, Moscow, 11 Pokrovsky Bulvar
G. G. Krasnozhenov
Russian Federation
Grigoriy G. Krasnozhenov - Candidate of Physical and Mathematical Sciences (Ph.D. in Mathematics/Physics), Leading Expert of the Research and Educational Laboratory for Big Data Analysis Methods, Institute for Artificial Intelligence and Digital Sciences, HSE University.
109028, Moscow, 11 Pokrovsky Bulvar
N. S. Belova
Russian Federation
Natalia S. Belova - Candidate of Technical Science (Ph.D. in Engineering), Associate Professor of Software Engineering Department, Faculty of Computer Science, HSE University.
109028, Moscow, 11 Pokrovsky Bulvar
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Review
For citations:
Lebedev S.A., Krasnozhenov G.G., Belova N.S. Use of Artificial Intelligence Technologies in Transportation Design and Related Industries. Moscow Transport. Science and Designn. 2025;(2):69-87. (In Russ.)