Data access models for training systems that support natural language dialogue (AI chatbots based on LLM) as a key element in the development of artificial intelligence in Russia and abroad: legal aspects

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Artificial intelligence (AI) technologies, systems, and algorithms are rapidly developing in Russia as well as abroad. The issue of data for training systems that support natural language dialogue (LLM-based chatbots) is becoming increasingly important from the perspective of access to them and compared to the approaches of countries like the USA and China and their unions like the European Union that are developing artificial intelligence parallel to Russia in the direction of obtaining "strong" AI. This study also helps better understand Russia's position in ratings assessing the level of development of artificial intelligence relations. When considering this issue, the author assumes an objective-subjective approach to the world and assumes the emergence of AI as a part of objective reality and a natural process of human development, relying on dialectics. The scientific novelty and theoretical and practical significance are determined by the purpose of the research, the range of sources, and the problems studied. Among the conclusions reached by the author, for example, are the following: under conditions where data is becoming (or has already become) a new oil, it is necessary 1—to overcome the bottlenecks of the new economic system—the data economy - and the onset of "digital feudalism"—a situation in which basic resources and access to them are controlled by a limited number of digital platforms (private or public), which do not provide access to businesses, 2—to spread regional initiatives (for example, the Experimental Legal Regime (ELR) of Moscow, or the Data Lakes of industrial enterprises in the Republic of Tatarstan, Russian Federation, or the ELR in Shanghai) to other entities and/or regions. Because regional "Lakes" are useless without federal integration, 3—provide businesses with the free access to anonymized data from housing, transportation, public procurement, and other areas. This can be achieved by creating a mechanism to monetize data for businesses (for example, a national data market similar to Microsoft Azure, where businesses can exchange data for tax benefits, could be created).

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Sobre autores

Ksenia Belikova

Kutafin Moscow State Law University

Autor responsável pela correspondência
Email: KMBelikova@msal.ru
ORCID ID: 0000-0001-8068-1616
Código SPIN: 2541-3498

Dr. Sci. (Law), Prof., Professor of the Department of Entrepreneurial and Corporate Law

Rússia, Moscow

Bibliografia

  1. Belikova K.M. Experimental legal regime in the field of artificial intelligence in Russia (the example of Moscow). Gaps in Russian legislation. Law Journal. 2024. Vol. 17. No. 5. Pp. 045–052. doi: 10.33693/2072-3164-2024-17-5-045-052. EDN: NHVEGK.
  2. Belikova K.M. Experimental legal regime of artificial intelligence abroad. Law and Business. 2024. No. 4. Pp. 2–6. doi: 10.18572/2712-8865-2024-4-2-6.
  3. Belikova K.M. The Global Race for Artificial Intelligence: Regulatory and Other Acts Governing the Development and Application of Artificial Intelligence in the United States of America. Lobbying in the Legislative Process. Vol. 4 no. 3 (2025): 24–34. doi: 10.33693/2782-7372-2025-4-3-24-34. EDN: ZKZKJX.
  4. Belikova K.M. About the Role, Significance and Reliability of Rankings and Scorings in the Field of Artificial Intelligence. Lobbying in the Legislative Process. Vol. 4 no. 3 (2025): 80–94. doi: 10.33693/2782-7372-2025-4-3-80-94. EDN: ZNVIAK.
  5. Legal regulation of new military technologies in the light of intellectual property legislation and the responsibility of a scientist in the BRICS countries: a monograph. K.M. Belikova et al.; Belikova K.Moscow (Ed.). Moscow: Printing house LLC «MDMprint» (MDM Printing Salon), 2022. Pp. 267–268 (528 p.; ill.).
  6. Sayapin S.P. On the legal regulation of generative artificial intelligence in China. Law and Politics. 2025. No. 3. Pp. 19–29. doi: 10.7256/2454-0706.2025.3.73708 EDN: KXCIPE. URL: https://nbpublish.com/library_read_article.php?id=73708 (accessed: 08/05/2025)
  7. Klimovich A.P. The influence of digital technologies on modern society. An example of a social credit rating system in China. Digital Sociology. 2020. Vol. 3. No. 3. Pp. 35–44. doi: 10.26425/2658-347X-2020-3- T3-35-44.
  8. Varoufakis Ya. Technofeudalism. What killed capitalism. Ya. Varoufakis «Ad Marginem Press», 2023. 151 p.

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2. Fig. 1. Illustrative example of a data lake

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3. Fig. 2. Illustrative example of a data hub

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4. Figure 3. Azure Open Datasets usage diagram

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5. Fig. 4. Implementation of AI in industry in EU countries (as of 2020)

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6. Fig. 5. Readiness for the spread of AI in the EU, USA, and UK (2019)

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7. Fig. 6. Dynamics of filing applications and issuing patents for artificial intelligence in the USA, Europe and China (as of 2022)

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8. Fig. 7. The presence of the US Navy, Air Force, troops, etc. in the Asia-Pacific region

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