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Create a culture of the forefront of continuous learning to unleash the power of industrial AI.

Your maintenance team is trying to become the most strategically important people in your organization. It was always important, not because maintenance was suddenly more important. However, the success or failure of the entire AI strategy is currently dependent on them.
This number makes this clear. 91% of industrial leaders view predictive maintenance as the main value device of AI, and 88% view it as the core source of ROI for AI projects. Your MRO team is not just users of this technology. They are Linchpin who determines whether AI investments are offered or disappointed.
But here’s what bothers me. While executives race to deploy AI solutions, they systematically underestimate those who make those solutions work. An estimated 50 million industrial workers need to be retrained to use AI effectively, with 69% of manufacturers calling premium workers a strategic prioritization. However, only 14% of frontline workers receive AI-related training.
This disconnection is not only inefficient, but also dangerous for a competitive position.
The true value of human intelligence
I spent quite a bit of time working in manufacturing, but most AI vendors don’t tell you. The most valuable insights don’t come from sensors alone. They come from the intersection of mechanical data and human experience.
The sensor can tell you that the bearing is hot. However, it is an experienced technician who knows that this particular machine will always work hot after maintenance, or that the temperature spikes correlate with wet weather patterns, or that this particular sound indicates an issue the sensor has not yet detected.
This context intelligence is irreplaceable. It’s also disappearing quickly. Half of maintenance and reliability experts will reach retirement age over the next 10 years. When they leave, they will embrace decades of institutional knowledge with them – they know that if they are systematically captured, they can run AI systems for years to come.
Beyond Fear: The Reality of Opportunity
There is a permanent myth that workers resist AI because they fear that they will be exchanged. The data suggests that this is not the case. Only 4% of manufacturers cite workforce skepticism as a barrier to AI adoption. In fact, 76% of industrial executives than any other sector believe their teams want to adopt new technology.
The real barrier is not fear. That’s preparation.
Think about what AI can actually do for your maintenance team. Aviation engineers currently spend 60% of their time investigating and documenting the issue. The AI assistant was able to eliminate much of its busy work and free the technicians for practical technical work. In mining operations, AI-assisted route cause analysis accelerates troubleshooting by up to 70% and reduces unscheduled maintenance times by up to 50%.
These are not job exclusion, but job reinforcement. A third of manufacturers expect employment to increase as AI takes root, but only a fifth of expected staffing will decrease. When thoughtfully implemented, AI was able to promote the creation of nets of 58 million new jobs across the economy.
A learning revolution
The most successful AI implementations I have observed share common characteristics. AI treats it not as an alternative to human judgment, but as an amplifier of human abilities. More importantly, we recognize that AI adoption is not a one-off training event. This is an ongoing process of continuous learning and adaptation.
This is where most businesses get wrong. They approach AI training to approach them as learning to use new equipment. I hope people will grasp the rest once they have put in the basics. However, AI systems are constantly evolving. New patterns emerge, new insights arise, and the interaction of human expertise and mechanical intelligence becomes more refined over time.
Companies that understand this are building learning systems that work in both ways. Their technicians use AI to expand their capabilities, but they continuously supply insights and context to AI systems, creating a positive cycle of improvement.
Make it practical
What does this actually look like? The most effective implementation I’ve seen is to integrate learning directly into the workflow. The AI Assistant provides immediate answers to complex device questions drawn directly from OEM documents and historical data. It provides step-by-step guidance for implementing complex solutions. Most importantly, they capture and share insights across the workforce.
Combining AI with new technologies like augmented reality will dramatically expand possibilities. Engineers can test potential solutions for simulations without disrupting production. You can receive hands-free guidance through AR overlays while working on complex repairs. The boundary between learning and execution fades away.
A key insight is that every moment on your workday will be an opportunity for AI-enabled learning. This system serves as a repository of institutional knowledge, ensuring that insights and experience are seamlessly shared and that the knowledge of retired workers is preserved for future generations.
Implementation challenge
This does not happen automatically. Both technology and process require intentional design. AI systems need to be built to capture qualitative insights from not only quantitative sensor data but also from technician notes and observations. The interfaces must be so intuitive that workers want to use them.
Most importantly, leadership must commit to making AI a driver of continuous improvement across the organization, not just bolt-on solutions to specific issues.
The fierce competition reality
Here’s what you should keep you in the evening: While discussing AI strategies, your smartest competitor is already moving. They are not waiting for the perfect solution or comprehensive training program. They start now, capture knowledge before they leave the door and build human partnerships that define manufacturing for the next decade.
While 43% of manufacturers are concerned about a lack of skills, organizations acting in appointing workforce preparation create a competitive advantage that is almost insurmountable. There are teams that can use AI to solve problems that cannot identify competitors.
The window for this advantage is rapidly closing. Passing every day without systematic knowledge and skill development is a day when competitive positioning is lost. Companies that recognize and act on this urgency are those who define the next era of manufacturing excellence.
This is not about following the latest technology trends. It’s about building a human foundation that will reward technology investments. Rather than trying to exchange it, AI creates an organization that amplifies human expertise.
The question is not whether the maintenance team needs to use AI. The question is whether you are ready to reach your full potential when the time comes. The answer to that question will determine which companies will lead to an AI-driven future in manufacturing, and which companies will continue.
About the author
Nick Haase is the co-founder of MaintingX, the leading maintenance and frontline work execution platform. He has spent thousands of hours on-site helping businesses transform their businesses with intelligent, frontline-friendly software. He regularly writes and talks about digital transformation. He is the host of #ThewrenchFactor, a LinkedIn live series that explores emerging trends and technologies that will shape the future of industrial business and asset management. Follow @maintainx to be notified when the next episode is released.
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