IT in Manufacturing


Five key insights we gained about AI in 2025

I&C February 2026 IT in Manufacturing

African businesses can look back on one of the most pivotal years in AI adoption to date as organisations tested, deployed and learned from AI at pace. Some thrived and others stumbled; but the lessons that emerged are clear, and they matter far more than the hype. Here are five critical insights from 2025 that should shape how African businesses approach AI in the year ahead.

Data quality beats model size

The biggest AI lesson of 2025 was not about which model was the largest or most powerful; it was about the quality of the data feeding those models. Organisations that invested in cleaning, structuring and preparing their data saw dramatically better outcomes than those chasing the latest large language model.

Poor data quality shows up in costly ways, including inaccurate entries, incomplete records, duplicates, outdated information and inconsistent formatting. Consider a regional manufacturer implementing AI-powered demand forecasting using procurement data riddled with duplicates and stale inventory records. The result is failed predictions, stock shortages in high-demand areas, and excess inventory elsewhere.

Meanwhile, financial services firms that established strong data governance frameworks, automating validation and continuously monitoring quality could see their AI models for credit risk and fraud detection perform brilliantly, treating data preparation as strategic infrastructure, not an IT afterthought. In markets where infrastructure variability is the norm, prepared data became the foundation for competitive advantage. No amount of computational power can compensate for fundamentally flawed information.


Andrew Bourne, regional head at Zoho Southern Africa.

Guardrails mattered more than we thought

Without governance, AI quickly becomes a liability. Organisations that deployed AI without proper guardrails faced misinformation, compliance breaches and reputational damage, eroding trust and inviting regulatory scrutiny.

Data governance establishes the policies, processes and rules that guide how businesses collect, store, secure and use data. It also determines access rights, retention periods and protection measures across the entire data lifecycle. In 2025, companies that dismissed governance as bureaucracy instead of strategy paid the price.

Marketing teams could send duplicate or poorly targeted campaigns because CRM systems lacked proper deduplication, turning efficiency tools into spam machines; and in regulated sectors like healthcare and finance, poor governance can result in compliance violations and significant fines. The organisations that succeeded embedded governance into their AI deployment from day one, implementing security standards, audit trails and clear accountability structures. The lesson was stark: speed without structure is reckless.

AI plus people equals the sweet spot

The highest returns in 2025 did not come from replacing people, but from augmenting them. Organisations that combined human creativity, judgment and empathy with AI’s speed, accuracy and scale significantly outperformed those pursuing full automation.

Sales teams supported by AI-prepared customer data could close deals faster because they spent less time hunting for information and more time building relationships. Logistics teams using AI-enhanced dashboards that integrated fleet data, weather conditions and maintenance schedules might pre-empt disruptions before they occurred, optimising routes and preventing breakdowns. Customer service agents with AI assistance could deliver hyper-personalised experiences, detecting risk patterns and triggering relevant offers that improved retention.

The pattern was consistent across industries: augmented teams outperformed automated ones. The sweet spot wasn’t removing humans from the equation, but empowering them with intelligence that amplified their strengths. Work became lighter, decisions became sharper, and teams became unstoppable.

Localisation became essential

Generic, one-size-fits-all AI struggled in African markets. Organisations that invested in culturally aware, multilingual AI systems saw significantly stronger adoption and performance.

Customer engagement platforms that understand code switching between English, Swahili and local languages built trust that generic chatbots could not. Voice assistants trained on regional accents and dialects actually worked, instead of frustrating users with constant misinterpretations. Financial services firms that factored in local payment behaviours and cultural norms into their AI models achieved more accurate credit risk assessments than those relying on imported models designed for Western markets.

This was not just a technical adjustment; it was a strategic one. Businesses that recognised Africa’s linguistic and cultural diversity, and built AI systems accordingly, earned trust, loyalty and market share. Those that did not were quickly outpaced.

Open-source and multi-cloud strategies strengthened resilience

Vendor lock-in emerged as a clear risk in 2025. Organisations that diversified their AI stack using open-source tools and multi-cloud strategies gained flexibility, reduced costs and improved resilience. Those dependent on a single provider found themselves exposed to price hikes, service disruptions and limited control over their own infrastructure.

Forward-thinking organisations built resilient AI ecosystems that could adapt without being held hostage by a single provider. They combined proprietary and open-source models, distributed workloads across cloud providers, and maintained the ability to switch or integrate new tools as technology evolved. When major providers experienced outages or announced steep price increases, these businesses could continue operating seamlessly while competitors scrambled.

The smartest organisations recognised that in a rapidly evolving AI landscape, flexibility is as valuable as functionality. They hedged their bets and built systems designed for change.

What this means for 2026

As African businesses enter 2026, the message is clear. AI success is not about chasing the newest model or deploying the fastest; it’s about building the right foundation. That means treating data quality and governance as strategic priorities, augmenting rather than replacing teams, investing in localisation and diversifying the technology stack as the key to thriving in the AI-first world.

For more information contact Zoho Southern Africa, +27 800 221 023, [email protected], www.zoho.com




Share this article:
Share via emailShare via LinkedInPrint this page

Further reading:

Siemens ecosystem strengthens data and AI integration
Siemens South Africa IT in Manufacturing
Siemens has announced significant expansions to its Industrial Edge ecosystem, accelerating data and AI integration and releasing enhanced cybersecurity functionalities. These enable a seamless integration of IT and OT environments, optimise processes and reduce operational disruptions.

Read more...
Siemens manages shipbuilding process for HD Hyundai
Siemens South Africa IT in Manufacturing
Siemens has been selected by HD Korea Shipbuilding & Offshore Engineering as a preferred partner to establish an integrated platform to manage the entire shipbuilding process as a single data flow to help ensure consistency across all its global shipyard facilities.

Read more...
Transforming the process industry through digitalisation
Endress+Hauser South Africa IT in Manufacturing
By connecting field devices, systems and people, digitalisation creates new opportunities to optimise operations, enhance maintenance strategies and support continuous improvement. As a leading instrumentation provider and major source of process data, Endress+Hauser plays a key role in enabling this transformation.

Read more...
The OT operator’s guide to security and uptime on the plant
RJ Connect IT in Manufacturing
The article addresses three common questions about industrial network deployment and maintenance, exploring ways to achieve better control and visibility with more efficiency.

Read more...
The assets you can’t see are the ones that can shut you down
IT in Manufacturing
ABEGuardOT is an asset management solution that delivers continuous, non-intrusive visibility across multi-vendor environments, including Siemens, Rockwell, ABB, Honeywell, Schneider Electric, Emerson, GE and Yokogawa, with support for OPC UA, EtherNet/IP, Modbus and Profibus.

Read more...
Edge I/O NTS and the need for industrial speed
Schneider Electric South Africa IT in Manufacturing
One of the most compelling solutions to emerge from industrial automation is Edge I/O NTS, which represents a natural evolution of computing from centralised servers to localised, device-level input/output processing, offering improved speed, efficiency and resilience.

Read more...
The next wave of AI-driven process automation
Schneider Electric South Africa IT in Manufacturing
As process industries hurtle toward an AI-driven future, four powerful trends are set to redefine automation strategies in 2026: hyper automation, AI-first automation, low code/no code platforms, and advanced process intelligence.

Read more...
Huge increase in denial-of-service cyber threats
IT in Manufacturing
NETSCOUT has released its Distributed Denial-of-Service Threat Intelligence report, revealing sophisticated attacker collaboration, resilient botnets and compromised IoT infrastructure that drove more than eight million DDoS attacks worldwide.

Read more...
Sustainable manufacturing
ABB South Africa IT in Manufacturing
ABB’s production facility in Shandong province, China is delivering measurable energy and emissions reductions through the implementation of advanced digital energy management and electrification solutions.

Read more...
Open automation is breaking legacy chains
Schneider Electric South Africa IT in Manufacturing
Industrial automation is now entering a new era defined by open, software-driven principles that are breaking decades of hardware-bound limitations.

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