DEVELOPMENT OF «GREEN» AGRICULTURAL SERVICES IN THE CONTEXT OF THE DIGITAL ECONOMY DEVELOPMENT IN UZBEKISTAN

DEVELOPMENT OF «GREEN» AGRICULTURAL SERVICES IN THE CONTEXT OF THE DIGITAL ECONOMY DEVELOPMENT IN UZBEKISTAN

Authors

  • Mirzaev Kulmamat Djanzakovich

DOI:

https://doi.org/10.5281/zenodo.19602369

Keywords:

Agrotourism, green agrotourism, agricultural production, organizational and economic mechanisms of green agrotourism, modernization of green agrotourism, diversification of green agrotourism, digital technologies developing green agrotourism, financial advantages of green agrotourism

Abstract

The development of environmentally friendly agricultural services, considered an important type of service, in
the republic was studied based on the available economic opportunities. This article also discusses the features of the
development of green agroforestry, organizational and economic mechanisms, ways of modernization and diversification,
and directions of development

Author Biography

Mirzaev Kulmamat Djanzakovich

Head of the Department of Digital Economy, DSc,
Professor at the Samarkand Institute of Economics and Service.


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Published

2026-04-01
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