AI-Driven Innovation in Russian Youth Policy: Strategies, Mechanisms, and Practices

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How Artificial Intelligence (AI) enhances the effectiveness of Russian youth policy implementation amidst technological advancements and digital transformation? The study’s novelty lies in its comprehensive analysis of specific mechanisms for integrating AI into the Russian youth policy system, considering national strategic priorities. Furthermore, it identifies personalized approaches to youth human capital management through AI. Analyzing the functional potential of AI technologies, the Russian Youth Policy Strategy to 2030, and relevant practices of applying digital technologies with AI systems in the context of youth policy, the authors highlight three key areas for AI implementation: 1) developing strategic monitoring and forecasting systems for youth vulnerabilities, 2) acceleration of transformation processes in the sphere of implementation of youth policy through the introduction of digital products with elements of artificial intelligence, and 3) optimizing processes for engaging youth in social dynamics, intensification of civic engagement. The article presents examples of successful national and international scenarios in these areas and proposes new approaches to enhance youth policy strategy implementation through innovative intelligent technologies. Significant limitations of AI application are noted, including ethical concerns and methodological challenges. The study outlines key risks in developing legislative initiatives aimed at regulating the use of AI within the youth human capital management ecosystem, emphasizing the importance of balancing innovation promotion with the protection of citizens’ rights and freedoms in the digital environment.

Sobre autores

Karina Strebkova

Coordination Center for TLD .RU/.РФ

Email: streb.karina@gmail.com
ORCID ID: 0009-0001-7017-1310

Master in Psychology, Member of The Youth Council

Moscow, Russian Federation

Daria Maltseva

Saint-Petersburg State University; RUDN University

Autor responsável pela correspondência
Email: maltseva-da@rudn.ru
ORCID ID: 0000-0002-0213-6919

Ph.D. in Political Science, Associate Professor of the Department of Theory and Philosophy of Politics, Deputy Dean for Youth Policy of the Faculty of Political Science, St Petersburg State University; Associate Professor of the Department of Comparative Political Science, RUDN University

St Petersburg, Russian Federation; Moscow, Russian Federation

Daniil Fedotov

Saint-Petersburg State University; The Legislative Assembly of Saint Petersburg

Email: phedotovdaniil@mail.ru
ORCID ID: 0000-0001-8338-6751

postgraduate student at the Faculty of Political Science, St Petersburg State University; the Lead Specialist of the Office of the Chairman of the Legislative Assembly of St Petersburg

St Petersburg, Russian Federation

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