

Critical smelting equipment failures generate safety risks, losses, and environmental impact.
Proven delivery overcoming complex multi-country business challenges



Executed a PoC using computer vision and AI
Modeled thermal insulation variability and internal temperature behavior
Evaluated feasibility of real-time alerts and operational applications
Demonstrated applicability of video analytics to maintenance scenarios
Validated AI feasibility for monitoring critical assets.
Improved understanding of wear and thermal behavior.
Reduced inspection risk for personnel.
Opened the path for predictive maintenance applications.