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According to Deloitte, 65% of manufacturers say attracting and retaining talent is their primary business challenge. The wider labor pool is also underprepared for technological shifts, as 60% of all employees will need some degree of reskilling by 2027, according to the World Economic Forum.
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For organizations on a lean budget, hiring expensive, high-skill workers may be out of reach. Likewise, carrying out extensive upskilling may be out of budget. That’s one reason that so many manufacturers are looking to AI to break through the constraints of the labor market and extend the reach of the current workforce.
Sharing workflows: collaborating with AI
AI is most effective when used as a copilot, sharing workflows with human operators. That’s how many maintenance, reliability, and operations (MRO) teams currently use AI in their work—as a way to fill in the gaps created by a lack of experienced, high-skilled technicians on staff.
Today, most manufacturers collect condition monitoring data in real-time via IIoT sensors. But most plants don’t have enough experts on hand to analyze the data within a meaningful timeframe. That’s where AI comes in.
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AI-powered monitoring programs track sensor data on a continuous basis, scanning for anomalies and issuing alerts at the first sign of an emerging fault. With minimal training, machine operators can respond to AI-generated reports and take appropriate action, whether that means carrying out repairs or scheduling expert inspections.
The best AI tools issue detailed asset health reports, set maintenance priority levels, and generate specific guidelines for maintenance teams to follow so they can make the necessary repairs before machines ever get to the point of failure.
These capabilities enable organizations to implement predictive maintenance programs at a larger scale than ever before. And as AI continues to advance, it will deliver even more detailed guidance to maintenance teams to further workflow optimization.
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Operators who aren’t trained to interpret raw data can now read and understand the reports generated by an AI diagnostic engine. Vibration experts are freed to focus on the jobs where they’re needed most. And managers can use AI’s recommendations to increase efficiencies, making it possible to oversee multiple worksites at once and grow the business further.
Leveraging AI for growth
Today’s manufacturing organizations rely heavily on data, software, and analytical processes. However, the labor shortage means that most companies don’t have the skilled teams they need to operate an Industry 4.0 worksite.
AI tools fill that gap. The technology’s unique combination of analytics and automation extends the reach of less-skilled workers, letting them achieve far more than before.
See also: New survey says manufacturers prefer AI copilots over autonomous agents
In real terms, AI diagnostic engines can reduce severe machine faults by as much as 90% and extend average equipment life by 10%. Organizations using AI can save 10% of their annual budget. These improvements can be felt throughout the organization, resulting in a far more efficient, productive company.