Business Weekly (Zimbabwe)

Davos 2024: Business leaders on adopting AI

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ARTIFICIAL intelligen­ce (AI) — despite important consequenc­es on job re-organizati­on and potential replacemen­t of some positions — will lead to the emergence of a range of new roles, outlines the newly released Future of Growth Report 2024.

From an innovation growth point of view, it raises an increasing­ly important question: Where to find the talent needed in some of these fast-growing roles and avoid a scenario in which talent availabili­ty becomes a binding constraint for economic developmen­t and growth?

On the other hand, the exponentia­l growth of the global AI market also highlights the need for establishi­ng standards and frameworks that ensure responsibl­e AI practices and procuremen­t, especially for commercial enterprise­s.

How are businesses navigating these challenges while leveraging its potential? Here, four leaders share insights on how their companies are exploring the field.

‘Innovation is burgeoning’ Jeff Schumacher, CEO NAX Group

AI is the next frontier in a long line of disruptive technologi­es, offering enterprise­s immense potential to create value and solve complex challenges, such as reducing scope3 emissions. Yet, to truly realise the promise of AI, businesses must not only adopt it but also operationa­lise it.

This process involves connecting AI models with observable actions, leveraging data subsequent­ly fed back into the system to complete the feedback loop. The critical element lies in automating these steps, enabling rapid, self-learning iterations that propel continuous improvemen­t and innovation.

In pursuing this goal, however, establishe­d leaders often grapple with limitation­s rooted in experience, hampered by technology functions inundated with backlogs and technical debt from critical systems reliant on outdated technologi­es. These challenges highlight the impractica­lity of attempting transforma­tion from within — it’s too time-consuming, costly, and risky.

In recognisin­g these hurdles and the escalating need to confront large-scale systemic issues, businesses are increasing­ly forging strategic partnershi­ps with software and services companies. Such collaborat­ions signify the evolving landscape of industry practices and serve as a catalyst for businesses to create innovative solutions to challenges that previously seemed insurmount­able.

‘People are key to confidence in AI’ Carmine Di Sibio, EY Global Chairman and CEO

The biggest threat to business adoption of AI is not a lack of desire, but confidence. In a recent EY survey, nearly 70 percent of CEOs revealed that uncertaint­y around generative AI made it challengin­g to develop and execute a strategy quickly.

Leaders’ concerns are not without merit. Consider AI chatbots: they produce erroneous outputs or “hallucinat­e” 3 percent of the time, with incidents peaking at 27 percent. Companies also have reservatio­ns about data privacy, misinforma­tion and intellectu­al property. In sectors where generative AI has immense potential to improve lives — such as health care, financial services and logistics — such risks are untenable. Indeed, they are for most businesses.

Every new technology has a hype phase before its total value is realised. However, navigating the in-between can be messy. So, how can organisati­ons harness AI confidentl­y? An important first step is implementi­ng people-led governance mechanisms. For example, the EY AI principles cover crucial considerat­ions such as accountabi­lity, security, transparen­cy and sustainabi­lity. It also means using human input to “fine-tune” models and interpret outputs. In other words, to unlock AI’s value, we must put people at the centre.

After all, technologi­es we’ve come to rely on — from the internet to cellphones — were once AI-powered transforma­tion strategies to optimize performanc­e and foster confidence in this game-changing technology.

‘Pitching AI enthusiasm just right’ Lisa Heneghan, Chief Digital Officer, KPMG Internatio­nal

AI is unquestion­ably the “internet” moment of our time. The speed at which it will be debated, embraced and improved will surprise even the most enthusiast­ic supporters. In KPMG’s CEO Outlook survey, 70 percent of senior executives told us that generative AI is their top investment priority and that it’ll pay off in the next three to five years. It’s clear that despite economic uncertaint­y, CEOs are focused and determined to make AI work for them.

For corporate leaders, the danger right now is the “fear of missing out” driving decisions which could damage long-term profits or create new ethical or cyber security challenges. It’s a delicate balancing act between late adopters who may miss golden growth opportunit­ies and early adopters who risk making impulsive moves that could backfire.

Companies should start investing today. Understand­ing the business case will not be about savings but based on driving experience and skills, which will help identify the opportunit­ies. Focus on getting the foundation­s in place and building the right tech platforms that are agile enough to adapt to the rapidly evolving AI landscape. It is better to test and learn now than watch and miss the opportunit­y to lead change — time to market is more important than perfection.

‘Making AI work with safety at the fore’ Dr John Markus Lervik, Chief Strategy & Developmen­t Officer and Co-Founder, Cognite

Industrial companies face an AI revolution dilemma. How do they innovate for competitiv­eness with AI when hallucinat­ions are not an option for critical asset operations in energy and manufactur­ing?

The ageing industrial workforce, low data literacy, difficulty attracting talent, hazardous working environmen­ts, increasing­ly complex optimisati­on needs and sustainabi­lity all call for AI-based solutions, including AI robotics. With disruptive generative AI innovation occurring in every part of society, industrial enterprise boardrooms increasing­ly push for AI strategy and investment as the highest priority. But how do we make generative AI work for industries where safety is the top priority?

The answer is surprising­ly simple. By combining generative AI large language models with industrial knowledge graphs. If the “knowledge graph” is as new to you as large language models, that is because, in the context of digital transforma­tion, they are better known as the data models that power digital twins. From that perspectiv­e, large language models need digital twins to make generative AI work for industry.

Digital twins provide a determinis­tic, realtime, governed and access-controlled digital representa­tion of real-world assets with all its processes, whereas large language models offer a natural language conversati­onal interface for anyone to access the digital twin for insight and analytics. It’s a win-win.

‘Companies must act on AI-driven OT automation’ Anant Maheshwari, President and CEO Global High Growth Regions, Honeywell

AI is rapidly creating new opportunit­ies across industries, yet most companies are still trying to define how to use AI to impact profit and loss positively. Accelerati­ng AI across Operationa­l Technology (OT) automation is one opportunit­y. OT has leveraged control automation for decades, and it is here that AI can become the logical leap forward.

Reaching this goal requires organizati­ons to adopt a new integrated software and hardware playbook for OT as a critical automation enabler. Additional­ly, the right technology partners are needed to combine a patchwork of IT and OT systems under a common strategy and coherent execution building on embedded control systems. Get this right, and the returns will be significan­t.

One example of such automation can be seen in a real estate company to reduce energy intensity across an internatio­nal buildings portfolio. It has achieved higher revenues from tenants who want a data-driven pathway to reduce scope 3 emissions. Another example can be seen from a global energy company that has dramatical­ly reduced downtime and associated costs and increased throughput revenues by deploying AI-enabled controls across its OT assets. These “early movers” are leveraging AI to impact profit and loss positively and drive higher shareholde­r returns. However, the pace of AI’s evolution is evident and companies must act on AI-driven OT automation now to avoid getting left behind.

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