Scalable Computer Vision in Enterprises: Deployment, Limitations and Future Directions.
Denis PINCHUK , Senior Data Science Engineer at The Walt Disney Company, USAAbstract
Computer vision (CV) is increasingly embedded in enterprise workflows. This article presents a comprehensive analysis of how CV systems are being used to automate complex visual tasks, replace repetitive labor, and enhance decision-making in different industries at scale. Special attention is given to the key determinants of CV effectiveness and operational challenges companies face when implementing the technology. The author notes that treating computer vision not as a static tool but as an evolving infrastructure, organizations can unlock substantial value while preparing for the next generation of AI-driven optimization.
Keywords
computer vision, , artificial intelligence, neural networks, enterprise workflows, business process optimization
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