As part of the SPARETECH Summit 2024, leading experts exchanged views on the current status and future potential of AI in industry and maintenance. The panel discussion offered insights from:
The experts discussed the opportunities and challenges of integrating AI into maintenance processes. They emphasized the essential role of curated data, the initial hurdles to adopting AI in organizations, and the strategic steps needed to make it successful.
The following is the most important in brief.
The world is turning faster and faster and with this acceleration comes the urgent need for companies to react quickly. Machines need to be back up and running quickly after a breakdown, and the implementation of AI technologies offers promising solutions to meet these needs. AI is used for tasks such as classification, anomaly detection, and criticality assessment, which are essential to maintaining smooth industrial operations.
Currently, the application of AI in maintenance varies significantly between companies. Those who have well-established maintenance processes and efficient spare parts management see AI as the next logical step in their digital transformation journey. These forward-thinking companies are already investing in digital solutions, and AI is a powerful tool to further enhance their capabilities.
A critical point that hinders the effective implementation of AI in maintenance is the state of spare parts data. Clean and well-structured starting data for spare parts offers an optimal basis for further digitization efforts. This data transparency is crucial for conducting valuable analyses and evaluations and is indispensable for the use of AI technologies.
Several challenges complicate the adoption of AI technology:
While there are challenges, there are also opportunities for growth and innovation in the field of AI for spare parts management. A strategic approach is needed to ensure that AI developments are effectively integrated into day-to-day operations, especially at the management level. Key steps include: