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AI-Driven Decision Intelligence: Optimizing Enterprise Strategy with AI-Augmented Insights
Abstract
Artificial intelligence-driven decision intelligence represents a transformative force in contemporary enterprise strategy formulation and operational execution. This article examines the critical shift from traditional decision processes characterized by manual interventions and static analytics to dynamic, AI-augmented frameworks that enable organizations to respond proactively to complex business environments. Despite generating unprecedented volumes of operational data, many enterprises struggle to translate this abundance into actionable intelligence, creating a substantial gap between data collection and strategic utilization. This implementation disparity stems from technical barriers and organizational resistance, with cultural factors frequently outweighing technological limitations. The architecture of effective decision intelligence systems integrates diverse data streams through sophisticated preprocessing mechanisms and employs advanced analytical techniques to generate actionable recommendations. Applications span multiple domains, including supply chain optimization, financial operations, marketing personalization, and strategic planning. While offering substantial competitive advantages, these systems also introduce significant ethical challenges related to algorithmic bias, transparency, explainability, and accountability. Success requires multifaceted governance approaches that balance automation with human oversight, continuous monitoring for potential biases, and organizational capabilities that harmonize machine intelligence with human judgment in increasingly complex decision environments.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (2)
Pages
146-152
Published
Copyright
Open access

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