DEVELOPMENT OF A METHODOLOGY FOR THE DIGITALIZATION OF TANGIBLE TECHNICAL ASSET INVENTORY IN THE DIGITAL ECONOMY
DOI:
https://doi.org/10.5281/zenodo.18048162Keywords:
IRC, material and technical resources, life cycle management, tabular integration, educational institutions, transparent monitoring, real-time reporting.Abstract
This article proposes a new IRC (Integrated Resource Concept) model for managing the material and technical
resources of educational institutions throughout their entire life cycle (reception → inventory → utilization → repair →
write-off). The model is developed on the basis of tabular management and deeply integrated with blockchain technology,
enabling transparent real-time monitoring and control of each resource movement. The results of a pilot implementation
conducted in an educational organization in Tashkent demonstrate a significant reduction in resource loss and misuse,
as well as improved accuracy in repair scheduling and write-off procedures. This approach represents one of the first
successful practical applications of blockchain technology combined with tabular integration in the management of
material and technical resources within the educational sector
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