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AI & IoT I


n a world where AI solutions and machine learning are being constantly thrown at manufacturers, it can be tough to separate genuine technology from hype.


There is a version of the connected factory that most manufacturers have already built: sensors are deployed, data is flowing, dashboards are visible across operations and predictive tools are even generating alerts.


However, performance often tells a different story. While many factories appear connected on the surface, these features and alerts often lack the context and the operational workflows needed to act on them decisively. Under the surface, these systems leave valuable data fragmented across maintenance, operations and process systems, limiting the ability to generate meaningful insight. This results in continued downtime without warning, engineering teams firefighting rather than planning, and decisions being made on instinct rather than insight. Connectivity is not just the presence of data or becoming digitalised; it is an operational outcome rather than a technology milestone – the ability to act on the right intelligence, at the right time, across every function that shapes performance in a factory.


WHY PREDICTIVE AI MUST CONNECT TO DECISIONS, NOT JUST MACHINES A recurring problem with predictive AI initiatives is that they are deployed as bolt-on tools to isolated projects. A model is trained, alerts are configured, and a dashboard goes live, yet months later, the factory runs much as it did before.


It is a reasonable starting point, but it remains a narrow application of a much broader capability when the opportunity exists to connect data and intelligence across the whole factory operation. If AI is not integrated into maintenance planning, production scheduling and engineering workflows, it becomes another layer of noise rather than a driver of performance.


Alerts accumulate, engineers interpret outputs manually and the confidence in these tools dwindles over time.


The real value of predictive AI outputs only emerges when it drives the decisions that shape


A PRACTICAL GUIDE TO BUILDING A CONNECTED FACTORY THAT DELIVERS RESULTS


daily operations, with clear pathways from insight to action, ownership, and defined intervention points. The goal is not to predict more failures, but to prevent disruption and improve asset performance in ways that support throughput, quality and cost.


MOVING BEYOND THE HYPE For many manufacturers, the doubt around AI is not unfounded. Overpromising, technical jargon and solutions that looked compelling in a sales environment but failed in an operational one, have done real damage to confidence across the industry. And with pressure mounting to deliver more with fewer resources, the appetite to take another risk on an underperforming tool is understandably low. Choosing the right AI and machine learning solution to create a truly connected factory starts with transparency and due diligence. Leaders need clarity on what a system does, how it integrates with existing infrastructure and what outcomes it has delivered elsewhere. And the focus should be on long-term productivity gains rather than short-term demonstrations that create technical debt. This also means prioritising systems that can connect to a wide range of sensors, both new and legacy, rather than being restricted to a closed-off infrastructure.


A system tied to a limited sensor set will always miss risks that fall outside its range. That’s because different assets fail in different ways, and effective monitoring needs to reflect that. Legacy equipment and newer infrastructure both need to be part of the same connected view.


A key point to raise here is that more data sources and more alerts do not automatically


By Tom Clayton, CEO, IntelliAM AI


create more value. Without intelligent filtering and context, those alerts become a burden, creating white noise that results in engineering teams drowning in meaningless alerts while missing the problems that actually threaten uptime. The measure of a good predictive AI system is not how much it monitors, but how effectively it guides action. A connected network should integrate multiple data sources into a single view and translate insights into prioritised, actionable work orders. This way, predictive AI can identify real risks and keep production running smoothly.


WHAT REAL VALUE FROM PREDICTIVE AI LOOKS LIKE


Where traditional maintenance models predominantly focus on fixing what breaks, the introduction of predictive AI was supposed to shift the focus from reaction to prevention, yet many deployments focus on responding to alerts. When data is properly integrated and contextualised, AI can move beyond prediction to shape operational decisions based on business impact. Decisions can be guided by how actions influence throughput, yield and overall equipment effectiveness, unique to each factory’s requirements. This approach makes AI a core operational tool, not just a technical add-on. And as models mature and learn from outcomes, results compound. What begins as targeted predictive maintenance evolves into broader optimisation of performance across assets and lines.


CONNECTED DATA AS A MULTIPLIER OF ENGINEERING EXPERTISE


On many factory sites, the most valuable predictive 52 May 2026 Instrumentation Monthly


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