Наши сотрудники
Yulia A. Orlova
Name: Yulia A. Orlova
Gender: Female
Birthday: November, 17 1984
Address: Volgograd, Russia
Ethnicity.: Russian
Teaching Experience: 17 years
Ph.D. Thesis Automation of semantic analysis of the technical request. Modern information technologies as a means of increasing the effectiveness of training future managers in higher education institutions of physical culture
Prof. Ph.D. Models and methods of information support of communications of people with disabilities
? Education
?Teaching/Supervising Experience
?Working Experience
?Research
- 2016: Dr.Tech.Sc. (Systems theory, information processing and control), Belgorod State University
- 2014: PostDoc (Systems theory, information processing and control), Volgograd State Technical University
- 2009: PhD (Candidate of Pedagogical Science), Volgograd State Technical University
- 2008: PhD (Candidate of Technical Science), Volgograd State Technical University
- 2007: Master of Science in Computer Science, Volgograd State Technical University
- 2005- 2007: Manager, specialty “Management of organization”, Volgograd State Technical University
- 2005: Bachelor of Science in Information Systems, Volgograd State Technical University; Bachelor of Science in Economics, Volgograd State Technical University;
- System analysis
- Methods of fuzzy information analysis
- Data mining and visualization
- Compiler Design
- July, 2017 – present
Head Of Software Engineering Department, Volgograd State Technical University, Volgograd, Russia
- September, 2008 – Jun, 2017
Professor, Assistant Professor, Research Scientist, Volgograd State Technical University, Volgograd, Russia
Project Lead:
- RFBR grant 20-07-00502 (2020-2022): Development of technology and tools of preventive interactive patient support
- RFBR grant 20-37-90004 (2020-2022): Development of models, methods and software for generating genre musical compositions based on a person’s emotional state
- RFBR grant 19-47-340003 (2019-2020): Development of models, methods and software for generating genre musical compositions based on a person’s emotional state
Team Member:
- RSF grant 18-78-10047 (2018-2022): The development of scientific and methodical approaches to assessment of efficiency of national systems of basic research funding
- RFBR grant 19-47-343001 (2019-2020): Development of methods and means of adapting the interface of electronic resources
- RFBR grant 19-47-340009 (2019-2021): Development of methods and means of optimization using video courses and a neural interface