Real-Time Analytics and AI-Based Recommendation Engines in Commercial Operations: A Managerial Performance Framework
  • Author(s): Ufuk Elevli
  • Paper ID: 1713983
  • Page: 2067-2076
  • Published Date: 31-10-2025
  • Published In: Iconic Research And Engineering Journals
  • Publisher: IRE Journals
  • e-ISSN: 2456-8880
  • Volume/Issue: Volume 9 Issue 4 October-2025
Abstract

Commercial operations increasingly operate under conditions of heightened speed, complexity, and performance pressure. Decisions related to pricing, resource allocation, customer engagement, and operational prioritization must be made continuously and often with incomplete information. Traditional performance management approaches—largely dependent on periodic reporting and retrospective analysis—struggle to support timely and consistent decision-making in such environments. This paper examines the role of real-time analytics and AI-based recommendation engines in transforming performance management within commercial operations. From a business management perspective, the study argues that the value of these technologies lies not merely in faster data processing, but in their capacity to reshape how managerial performance is monitored, guided, and optimized. Real-time analytics provide continuous visibility into operational behavior, while AI-based recommendation engines translate analytical insight into actionable guidance at the point of decision. The paper conceptualizes AI-driven recommendation systems as managerial performance instruments rather than technical tools. It analyzes how the integration of real-time analytics and recommendation engines alters performance control by enabling continuous feedback loops, reducing decision latency, and standardizing decision quality across complex operations. At the same time, it highlights new managerial challenges related to trust, governance, and accountability when performance guidance is algorithmically generated. Building on management and decision systems literature, the study proposes a managerial performance framework that clarifies the relationship between real-time data, AI-generated recommendations, and performance outcomes in commercial operations. The framework emphasizes controlled delegation of decision guidance, human–AI role differentiation, and governance mechanisms that preserve managerial authority and accountability. The paper contributes to business management research by reframing real-time analytics and AI-based recommendation engines as core components of performance governance. For practitioners, it offers guidance on how to institutionalize AI-driven recommendation systems as scalable and governable performance management capabilities. The findings suggest that sustainable performance improvement in commercial operations depends less on automation and more on deliberate managerial design of real-time, AI-enabled decision guidance systems.

Keywords

Real-Time Analytics, AI-Based Recommendation Engines, Commercial Operations, Managerial Performance Management, AI-Driven Decision Support

Citations

IRE Journals:
Ufuk Elevli "Real-Time Analytics and AI-Based Recommendation Engines in Commercial Operations: A Managerial Performance Framework" Iconic Research And Engineering Journals Volume 9 Issue 4 2025 Page 2067-2076 https://doi.org/10.64388/IREV9I4-1713983

IEEE:
Ufuk Elevli "Real-Time Analytics and AI-Based Recommendation Engines in Commercial Operations: A Managerial Performance Framework" Iconic Research And Engineering Journals, 9(4) https://doi.org/10.64388/IREV9I4-1713983