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MOTOR 2026

 

International conference “Mathematical Optimization Theory and Operations Research(MOTOR 2026) will be held on July 6-11, 2026, in the picturesque place not far from Irkutsk (Russia) and Lake Baikal.

The conference brings together a wide research community in the fields of mathematical programming and global optimization, discrete optimization, complexity theory and combinatorial algorithms, optimal control and games, and their applications in relevant practical problems of operations research, mathematical economy, and data analysis.

 

MOTOR 2026 is a successor of the following well-known International and All-Russian conference series, which were held in Ural, Siberia, and the Far East for a long time:

  • Baikal International Triennial School Seminar on Methods of Optimization and Their Applications (Irkutsk, Ulan-Ude), last event                                         
  • Mathematical Programming and Applications (Ekaterinburg), last event 
  • Discrete Optimization and Operations Research (Novosibirsk, Vladivostok), last event 
  • Optimization Problems and their Applications (Omsk), last event 

The previous MOTOR conferences:

  

 Dates 

 Venue Proceedings
MOTOR 2025 July 7–11, 2025 Novosibirsk, Russia LNCS Vol. 15681 Proceedings of IMM of UB RAS Vol. 31, issue 3 
MOTOR 2024 June 30 – July 8, 2024     Omsk, Russia LNCS Vol. 14766 CCIS Vol. 2239
MOTOR 2023 July 2–8, 2023 Ekaterinburg, Russia LNCS Vol. 13930 CCIS Vol. 1881
MOTOR 2022 July 2–6, 2022 Petrozavodsk, Russia LNCS Vol. 13367 CCIS Vol. 1661
MOTOR 2021 July 5–10, 2021 Irkutsk-Baikal, Russia LNCS Vol. 12755   CCIS Vol. 1476
MOTOR 2020 July 6–10, 2020 Novosibirsk (online), Russia            LNCS Vol. 12095 CCIS Vol. 1275
MOTOR 2019 July 8–12, 2019 Ekaterinburg, Russia LNCS Vol. 11548 CCIS Vol. 1090

 

 

Main topics

The main conference topics include, but not limited to

  • theory and methods of mathematical optimization
  • integer programming and combinatorial optimization
  • global optimization, stochastic integer programming, multi-objective programming
  • computational complexity, approximation algorithms, schemes, bounds, heuristics and metaheuristics
  • optimal control and game theory
  • mathematical economics and multilevel programming
  • optimization and approximation
  • optimization in machine learning and data analysis
  • applications in operations research: scheduling, routing, facility location, packing and cutting, manufacturing systems, etc.