Since ChatGPT came out, there’s been a surge of excitement about the potential of AI to change how businesses operate and how we all work.
However, as the initial hype dies down, a more nuanced understanding is emerging: AI, particularly generative AI, is not a universal remedy for every business challenge. Sustainable value comes not from simply adopting the latest technology, but from embedding AI capabilities thoughtfully and strategically within an organisation – a journey towards what can be termed ‘AI maturity’.
This means moving beyond treating AI as a shiny new toy and instead focusing on solving concrete business problems and delivering tangible outcomes.
Sonia Ingram, Global AI Director, Pandora, has some great points to make on AI maturity, and she shared them on the VUX World podcast. Read on to learn more.
Aligning with business strategy
AI maturity begins when all AI initiatives are deeply aligned with the overarching business strategy. Technology, including AI, should always be a means to an end, not an end in itself. The focus must remain on solving genuine business problems and generating measurable returns, whether that’s through enhanced customer experiences, operational efficiencies, or improved safety and compliance.
Effective prioritisation of AI use cases is key. Start with the top-level company vision and objectives, and then identify areas where AI can make the most significant impact. For example, Pandora, which manages its entire value chain from design and manufacturing to retail and marketing, leveraged AI in a “Customer Voices” project. They analysed customer feedback from their website and social media to identify product issues, such as a frequently breaking clasp, and fed this insight directly back to their manufacturing facilities to drive improvements. This demonstrates how AI-driven insights, when acted upon, can create a powerful feedback loop for tangible business enhancement.
An AI-ready organisation is an educated one
To succeed with AI, there needs to be data and AI understanding across all levels of an organisation. It starts with educating senior management about the essential groundwork required – solid data infrastructure, unwavering data quality, and comprehensive data management are the non-negotiable first steps. Trying to leapfrog to advanced AI without these fundamentals is a recipe for disappointment.
Beyond leadership, it’s crucial to foster AI literacy throughout the workforce. This isn’t about turning everyone into an AI expert, but about providing a baseline understanding of what AI is, what it can realistically do, and what it cannot.
The best way to teach your team about AI? Create a safe space for experimentation, learning, and failure. Allow individuals and teams across the business to apply AI to their specific challenges and opportunities. This way, employees can solve local problems that a central AI team might not be able to address and it will also foster broader understanding and adoption of AI.
Establishing governance and stewardship
AI must be used responsibly. Teams need to create frameworks to manage AI effectively and ethically. A critical starting point is for the business to define its AI risk appetite. Organisations may inadvertently expose themselves to issues without a clear, agreed-upon understanding of acceptable risk. Adherence to AI legislation is vital, but it’s also important to consider what is acceptable for the brand.
Defining the limits of what is acceptable may feel like putting the brakes on progress, but in fact, limitations can enhance creativity. They force people to create solutions that fit within the company’s best interests and foster users’ trust.
The unsung hero: User experience (UX)
An often-underestimated factor in AI success is user experience. The remarkable uptake of ChatGPT wasn’t just due to its underlying technology, but significantly because of its intuitive and accessible user interface. This highlights a crucial lesson: even the most sophisticated AI model is of little value if it’s difficult to use or doesn’t genuinely meet the needs of its intended users.
Integrating UX designers into AI development teams is a strong indicator of an organisation’s growing AI maturity, ensuring that solutions are built with the end-user at the centre. The philosophy should be to “start with the experience and work back to the technology,” not the other way around.
Structuring for success and smart sourcing
Organisational structure also plays a part. A ‘hub and spoke’ model can be effective, with a Centre of Excellence developing foundational models and standards, while federated teams embedded within different business areas address localised needs. A centralised ML Ops team can further support this by providing reusable components and standardising best practices, freeing federated teams to concentrate on use case delivery.
The path forward
The journey to AI maturity is not a short sprint but a sustained marathon. It requires a holistic view, blending strategic top-down direction with opportunities for emergent, bottom-up innovation. It involves fostering a data-centric culture, continuously educating the workforce, establishing robust governance, building solid technical foundations, and always tying AI initiatives back to core business objectives. Learn more about purposeful and emergent AI strategies.
While the path may vary for each organisation depending on its starting point and specific needs, the underlying principles of thoughtful, strategic, and value-driven AI adoption remain constant. By focusing on these core components, businesses can move beyond the initial hype and unlock the transformative potential of artificial intelligence.
Thanks to Sonia for her thoughts! You can check out her full interview here.