By Olasunkanmi Jimoh
Manufacturing companies are increasingly exploring the use of artificial intelligence to improve efficiency and reduce operational waste.
At JKO Nigeria Enterprise, a firm specialising in industrial rubber rollers, a recently developed machine learning system is being used to support defect analysis within production processes.
Before the introduction of the system, defect evaluation within the company relied largely on manual inspection and operator judgment.
Industry observers note that such approaches can lead to inconsistencies in classification, delays in decision-making, and limited visibility into the financial impact of production defects.
To address these challenges, Justice Kanayo, Chief Technology Officer at JKO Nigeria Enterprise, led the development of a machine learning–based system known as Rollersense-AI. The system is designed to analyse structured production data and generate predictive insights to support quality control operations.
In a statement, the company said the system is capable of classifying defect severity into categories such as minor, moderate, and critical, while also estimating the potential cost associated with each defect.
This, it noted, is intended to support more consistent and timely decision making within production workflows.
The system is understood to apply machine learning models trained on historical production and defect data. By integrating these models into the inspection process, defect-related information can be processed more efficiently, enabling earlier intervention during manufacturing.
Company representatives indicate that the introduction of the system has been associated with improvements in defect management processes, including reductions in rejection rates and production inefficiencies.
These figures have not been independently verified.
Justice Kanayo is reported to have led the design and implementation of the system, overseeing its integration into live production workflows within the organisation.
The deployment of systems such as Rollersense-AI reflects a broader shift towards Industry 4.0, where digital technologies are increasingly being adopted to modernise traditional manufacturing operations.
As manufacturers continue to explore digital transformation strategies, the application of machine learning in production environments is expected to play a growing role in improving efficiency, reducing waste, and supporting data-driven decision-making.
We’ve got the edge. Get real-time reports, breaking scoops, and exclusive angles delivered straight to your phone. Don’t settle for stale news. Join LEADERSHIP NEWS on WhatsApp for 24/7 updates →
Join Our WhatsApp Channel






