IT in Manufacturing


AI and the smart factory

November 2025 IT in Manufacturing

Imagine walking into a factory where machines can think ahead, predict problems before they happen, and automatically make adjustments to realise peak performance. This isn’t science fiction; it’s happening right now as AI transforms how we run industrial operations.

But as we who have been on this journey know, not all AI is created equal. Today’s factories mainly rely on narrow AI, or systems designed to perform specific tasks such as detecting product defects or predicting equipment failures.

The next step would be general AI that will allow machines to apply knowledge across different areas, more like a human operator. Further down the line lies artificial superintelligence, where machines outperform humans in every respect, still distant and even a bit daunting, but part of the conversation about the industrial future.

Put into practice, we need to look at the levels of AI containment and its expected evolution in industrial operations:

Level 1: Monitored systems where human operators approve every decision.

Level 2: Semi-autonomous systems where AI manages routine tasks, flagging complex issues for humans.

Level 3: Autonomous systems where AI controls entire processes with minimal oversight.

Level 4: Networked intelligence where systems across facilities coordinate and share learning.

Level 5: Unrestricted AI where AI theoretically redesigns itself continuously, but raises governance and safety questions.


Johan Potgieter, cluster industrial software lead at Schneider Electric.

The engine behind the growth

Machine learning (ML) is the engine behind this transformation, with applications in three broad areas:

Supervised learning predicting process behaviour: Classification algorithms spot abnormal conditions, regression models forecast values such as temperature or pressure, and time-series models anticipate demand or equipment wear.

Unsupervised learning finding hidden patterns: Clustering reveals operational modes, anomaly detection flags subtle faults, and dimensionality reduction identifies key performance drivers.

Reinforcement learning at the frontier of adaptive control: These algorithms learn optimal strategies through trial and error, balancing competing goals like energy efficiency, throughput and product quality.

Smarter control systems and predictive maintenance

Unlike rigid rule-based controllers, AI-enabled systems evolve with experience. For example, Google cut data centre cooling costs by 40% using AI-driven optimisation. Key technologies include:

• Neural network controllers that handle nonlinear processes by learning input-output relationships.

• Fuzzy logic with ML that are self-adjusting rules based on real-time performance.

• Adaptive predictive control that continuously updates models as conditions or equipment change.

The most visible industrial AI success is predictive maintenance. By spotting small changes before they escalate, downtime is minimised. Techniques include:

Vibration Analysis: Detects wear, imbalance or misalignment.

Thermal Imaging: Identifies overheating components.

Oil Analysis: Spots contamination or early-stage degradation.

Acoustic monitoring: Picks up subtle sound changes linked to faults.

Hurdles and the way forward

While AI continues to transform industrial operations, its rise is not without significant challenges. One of the most persistent hurdles is data quality. Industrial AI systems rely heavily on sensor inputs, and poor calibration, noise or missing data can severely undermine model accuracy and reliability.

Equally critical is explainability. Operators and engineers must be able to trust and understand the decisions made by AI systems, especially in high-stakes environments. Without transparency, adoption stalls and human oversight becomes compromised. To that end, security also remains a major consideration. As systems become more autonomous, they present expanded attack surfaces, making robust cybersecurity protocols essential to prevent breaches or sabotage.

Then there’s the issue of integration. Blending multiple AI tools, legacy systems and operational workflows without disrupting production is a complex and delicate task, often requiring bespoke solutions and cross-disciplinary coordination.

Looking ahead, however, several emerging innovations promise to extend AI’s industrial impact. Quantum-enhanced optimisation could unlock solutions to problems that are currently computationally intractable like real-time supply chain reconfiguration or molecular design.

Furthermore, neuromorphic chips, inspired by the architecture of the human brain, offer energy-efficient processing for edge AI applications, enabling smarter, faster decision making directly on devices.

Also, swarm intelligence introduces a paradigm where multiple AI agents coordinate like ant colonies, offering resilience and adaptability in distributed systems such as logistics or autonomous fleets.

Finally, cross-domain learning allows insights gained in one sector − say, predictive maintenance in aviation − to be transferred and adapted to another, such as mining or manufacturing, fostering a more agile and interconnected industrial ecosystem.


Credit(s)



Share this article:
Share via emailShare via LinkedInPrint this page

Further reading:

A lesson in the history and evolution of industrial safety systems
Schneider Electric South Africa IS & Ex
One only has to briefly page through the annals of our industrial history to come across truly hair-raising stories of safety systems failing or underperforming with catastrophic repercussions. Fortunately, industrial safety in the last few decades has undergone some truly profound development.

Read more...
OMRON simplifies safety verification for SA manufacturers
Omron Electronics IT in Manufacturing
OMRON’s NX Safety platform, Online Safety Functional Test Verification is a feature built into the Sysmac Studio engineering environment. This intuitive tool allows safety verification to be carried out digitally, with step-by-step guidance and full traceability, all from a single workstation.

Read more...
Schneider Electric to become Official Energy Technology Partner of McLaren Racing
Schneider Electric South Africa News
Schneider Electric will become the Official Energy Technology Partner of McLaren Racing.

Read more...
Range of CDUs to meet the rising demands of HPC and AI workloads
Schneider Electric South Africa IT in Manufacturing
Motivair by Schneider Electric has introduced two new coolant distribution units that are engineered to meet the rising thermal demands of HPC and AI workloads.

Read more...
Schneider Electric accelerates adoption of SF6-free switchgear
Schneider Electric South Africa Electrical Power & Protection
Schneider Electric is driving the transition to sustainable medium-voltage solutions across East Africa with its award-winning SM AirSeT pure-air switchgear.

Read more...
Data centre design powers up for AI, digital twins and adaptive liquid cooling
IT in Manufacturing
The Vertiv Frontiers report, which draws on expertise from across the organisation, details the technology trends driving current and future data centre innovation, from powering up for AI, to digital twins, to adaptive liquid cooling.

Read more...
Siemens drives next-generation vehicle development
Siemens South Africa IT in Manufacturing
The Siemens PAVE360 Automotive technology is a new category of digital twin software that is pre-integrated and designed as an off-the-shelf offering to address the escalating complexity of automotive hardware and software integration.

Read more...
How digital infrastructure design choices will decide who wins in AI
Schneider Electric South Africa IT in Manufacturing
As AI drives continues to disrupt industries across the world, the race is no longer just about smarter models or better data. It’s about building infrastructure powerful enough to support innovation at scale.

Read more...
How quantum computing and AI are driving the next wave of cyber defence innovation
IT in Manufacturing
We are standing at the edge of a new cybersecurity frontier, shaped by quantum computing, AI and the ever-expanding IIoT. To stay ahead of increasingly sophisticated threats, organisations must embrace a new paradigm that is proactive, integrated and rooted in zero-trust architectures.

Read more...
2026: The Year of AI execution for South African businesses
IT in Manufacturing
As we start 2026, artificial intelligence in South Africa is entering a new era defined not by experimentation, but by execution. Across the region, the conversation is shifting from “how do we build AI?” to “how do we power, govern and scale it responsibly?”

Read more...









While every effort has been made to ensure the accuracy of the information contained herein, the publisher and its agents cannot be held responsible for any errors contained, or any loss incurred as a result. Articles published do not necessarily reflect the views of the publishers. The editor reserves the right to alter or cut copy. Articles submitted are deemed to have been cleared for publication. Advertisements and company contact details are published as provided by the advertiser. Technews Publishing (Pty) Ltd cannot be held responsible for the accuracy or veracity of supplied material.




© Technews Publishing (Pty) Ltd | All Rights Reserved