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Radars for multi-parameter technology assessment. Patent analytics scenarios

Abstract

The paper presents an approach to the development of technological radars based on patent data. For the first time, new indicators based on patent analytics have been introduced into the global practice of technology benchmarking (the penetration of new markets, the breadth of artificial intelligence, and other indicators). The design principles of technological radars and their application scenarios can be implemented for a wide range of science, technology and innovation management tasks: the development of R&D programs, the technology modernisation, the assessment of prospective projects, etc.

About the Author

O. V. Ena
Federal Institute of Industrial Property
Russian Federation

Oleg Ena - Head of Scientific Research on Patent Analytics, Federal Institute of Industrial Property 



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Ena O.V. Radars for multi-parameter technology assessment. Patent analytics scenarios. Bulletin of Federal institute of industrial property. 2024;3(1):12-29. (In Russ.)

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ISSN 2782-5086 (Print)
ISSN 2959-2432 (Online)