The Epistemology : Digital Transformation Of Traditional Game Development Based On Machine Learning System
DOI:
https://doi.org/10.51903/elkom.v18i2.3336Keywords:
Epistemology, Game Development, Machine Learning, Digital Transformation, Traditional Game, Artificial IntelligenceAbstract
This paper explores the epistemological dimensions of the digital transformation occurring in traditional game development through the integration of machine learning systems. By examining how knowledge creation, validation, and application have evolved in this domain, we identify fundamental shifts in the epistemological frameworks governing game development practices. The research investigates how machine learning has redefined creative processes, technical implementation, and experiential design while challenging traditional notions of authorship, expertise, and knowledge transmission. Through analysis of industry case studies, technological capabilities, and theoretical frameworks, this paper contributes to understanding how machine learning systems are not merely tools but epistemological agents that fundamentally transform how knowledge is generated, validated, and utilized in game development ecosystems.
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