Factors Affected Successful Implementation of Unstructured Data by Entropy Model (Based on Shannon’s Entropy)
Keywords:
unstructured data, unstructured data project, unstructured data entropy factorAbstract
This study aims to refine the modeling approach for digital transformation projects, specifically addressing the assessment and management of unstructured data. By employing the entropy model, the research seeks to identify crucial success factors associated with such projects. Digital transformation constitutes a vital process in the contemporary era, and the analysis of unstructured data presents considerable challenges. The research methodology encompasses the enhancement and adaptation of flexible models to assess project readiness concerning unstructured data. This approach facilitates the formulation of effective strategies for managing digital transformation projects within organizations. Furthermore, the study introduces a novel model, improved by incorporating the entropy model, which offers both practical benefits and a readiness framework for organizations striving for success in the digital era.
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