Model for the development of a long-term forecast for the development of fundamental and exploratory scientific research in the context of the implementation of strategic planning documents in Russia
DOI: 10.33917/mic-1.102.2022.5-21
The article deals with the regulatory and legal grounds and the subject of development of the forecast for the development of fundamental and exploratory scientific research. Provisions, factors and conditions regulating the formation of this forecast have been developed. Proposals for the development of information and expert support of the forecast are formulated.
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