Scientific principles, methods of creating and implementing dependable AI systems
Transcript of scientific report at the meeting of the Presidium of NAS of Ukraine, February 25, 2026
DOI:
https://doi.org/10.15407/visn2026.04.037Abstract
The report presents current results of work aimed at developing the theory, methods and technologies of analysis, evaluation, creation and use of dependable AI systems for effective management, data processing, ensuring the readiness, safety and resilience of critical information and energy infrastructure facilities, intelligent unmanned systems and other systems, complexes and infrastructures of various purposes important for the defense and security of the country.
Cite this article:
Kharchenko V.S. Scientific principles, methods of creating and implementing dependable AI systems (transcript of scientific report at the meeting of the Presidium of NAS of Ukraine, February 25, 2026). Visn. Nac. Akad. Nauk Ukr. 2026. (4): 37—43. https://doi.org/10.15407/visn2026.04.037
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