• Stop treating AI as the strategy

    From TechnologyDaily@1337:1/100 to All on Tue Jun 16 10:00:26 2026
    Stop treating AI as the strategy

    Date:
    Tue, 16 Jun 2026 08:47:25 +0000

    Description:
    AI delivers lasting value when strategy, governance and trust shape adoption.

    FULL STORY ======================================================================Copy link Facebook X Whatsapp Reddit Pinterest Flipboard Threads Email Share this article 0 Join the conversation Follow us Add us as a preferred source on Google Newsletter Subscribe to our newsletter I dislike the term AI strategy. AI can be a powerful tool within an IT or business transformation strategy, but when it becomes the strategy itself, organizations risk losing sight of the outcomes they are trying to achieve.

    Successful transformation depends on planning, meaningful measures of performance, and people who are willing to accept the change. That
    distinction is becoming more important as AI capabilities advance. Latest Videos From Watch full video here: Rebecca Pluthero Social Links Navigation

    Senior Legal Counsel, AI, InterSystems. Organizations are understandably
    eager to adopt the technology and gain a competitive advantage.

    The race is on, but lasting value will depend on asking a more disciplined question: where can AI create meaningful business impact, how should it be governed, and can it scale beyond initial experimentation? You may like The 70% rule: Why your AI strategy is a people strategy AI: The difference
    between augmenting and transforming your business Measuring AI ROI at tool level is missing the point

    For many organizations, that leap from experimentation to scale remains unresolved.

    Recent McKinsey research found that most organizations remain in experimentation or pilot modes. As regulation adds ambiguity for those
    rushing to deploy AI solutions, strategic planning becomes critical. Are you
    a pro? Subscribe to our newsletter Sign up to the TechRadar Pro newsletter to get all the top news, opinion, features and guidance your business needs to succeed! Contact me with news and offers from other Future brands Receive email from us on behalf of our trusted partners or sponsors By submitting
    your information you agree to the Terms & Conditions and Privacy Policy and are aged 16 or over. AI needs business ownership For any business transformation, stakeholder engagement is the first hurdle. The challenge is turning early interest and isolated pilots into initiatives that are
    scalable, well-governed, and tied to long-term enterprise outcomes.

    For scalable AI enablement, a macro view is required. A lack of synergy between invested stakeholders is frequently why AI stalls at pilot phase. The strategy cannot be contained just within the IT department. Instead, collaboration across legal, compliance, technology, operations, and
    commercial teams is crucial, especially as AI risk becomes harder to separate from business risk.

    With the ambiguity of AI regulation and geopolitical agendas, strategic partnership with legal teams is one aspect of this stakeholder engagement
    that is increasingly in demand, helping organizations respond to uncertainty with more agility built in from the start. What to read next AI without regret: Enabling speed, insight, and automation while maintaining control The AI ROI gap: Why enterprise intelligence is stalling at the infrastructure level Before you roll out more AI, answer this: Who's accountable?

    Once the right people are involved, the next step is to understand the business problem. During initial planning, business processes should be coherently mapped. Once the problems are identified, solutions can be found.

    Those solutions may not involve AI at all, of course. It should be considered whether standard IT technology or another process would fix the problem
    first.

    If AI is the right tool, it still needs to be introduced with a clear understanding of workflow processes. Otherwise, organizations risk throwing
    AI at problems in a rushed, bolt-on style.

    Multiple AI use cases and vendors can exacerbate the inefficiencies that AI was supposed to fix and create more regulatory burden. Long-term value will come from identifying where AI can improve specific processes, with simplification not duplication, before deciding which opportunities are ready to scale.

    This is where speed needs to be balanced with adaptability. Responsible AI
    and governance are building blocks for regulatory readiness and compliance, but they are also levers that allow organizations to shift gears when needed. Measuring value beyond productivity Once AI has been framed as part of a
    wider transformation strategy, organizations need to think carefully about
    how success will be measured. Too often, AI remains a technology initiative
    in a silo, assessed mainly through productivity gains or short-term cost savings. These metrics are useful but are not the full picture.

    The real test is whether AI improves the quality and efficiency of work, reduces risk, strengthens business outputs, and promotes employee wellbeing and job satisfaction.

    Many organizations are also grappling with clear KPIs, and tangible ROI. If internal AI adoption is inconsistent, and if organizations struggle to identify use cases that can scale rather than remain isolated pilots, the return will never be realized. People need to use AI tools for the benefits
    to be proven.

    Even when adoption improves, early KPIs may not be immediately tangible. They may not appear quickly in financial reporting or obvious performance metrics.

    Yet AIs value can still be felt in the quality of work itself, reducing repetitive tasks and giving employees more capacity to focus on higher-value activity. That is why organizations need to look beyond the most obvious measures of value.

    Over the longer term, AI deployment will facilitate a shift away from administrative or duplicated tasks, creating more time for strategic initiatives. Beyond the human element, though, organizations should measure
    AI against broader business outcomes such as decision quality, risk
    reduction, resilience, and customer impact.

    The same broader view of value should shape how pilots are designed. Pilots are useful for testing proof of concept, refining guardrails, and encouraging cultural adoption. Yet they are often conducted in a closed setting, on synthetic data, with limited users and under supervision from the technology supplier.

    As AI moves closer to scale, organizations need to revisit those early assumptions and assess whether the tool can still deliver value in real-world conditions. In short, lessons learned from pilots, including how costs and user behavior may shift at scale, need to be applied across wider adoption. Trust will determine scale As organizations move from experimentation to broader deployment, supplier strategy becomes critical. Even well-defined AI use cases can struggle to scale if the technology cannot be embedded into
    core systems and workflows. Once processes and problems are mapped, selecting the right supplier is where strategy starts to play out in practice.

    Businesses that overlook suppliers that promote responsible AI and compliance will be at a competitive disadvantage here. They may waste money on solutions that will not work, will not scale, and may need to be reprocured later. They may also fail to meet regulatory obligations if they cannot source or record information such as data lineage or transparency around when users interact with AI tools.

    Gartner has argued that AI value depends on business-aligned pilots, IT infrastructure readiness, and coordination between AI and business teams. Trust and transparency are therefore becoming the new currency, especially as the Thomson Reuters Foundation and UNESCO have warned of a widening transparency gap in corporate AI adoption.

    For AI to scale, governance cannot be treated as an administrative burden. Effective AI governance covers use case risk classification, tool selection, accountability, security reviews, supplier due diligence, and ongoing monitoring. It provides the playbook for future expansion and helps organisation explain their systems externally.

    That external trust needs to be matched internally. Scalable AI adoption will hinge on whether employees trust the system, understand how tools map against process reform, and feel that their own judgement still matters. If they do, they will use the tools, actualize the KPIs, and help refine deployment.

    Long-term value and scalability from AI is less about speed, automation, and cost-saving. It comes from using the technology strategically, with
    governance and trust built in from the start. For organizations that
    recognize those nuances, AI stops being treated as a singular strategy and becomes part of business strategy. We list the best HR software . This
    article was produced as part of TechRadar Pro Perspectives , our channel to feature the best and brightest minds in the technology industry today.

    The views expressed here are those of the author and are not necessarily those of TechRadarPro or Future plc. If you are interested in contributing find out more here: https://www.techradar.com/pro/perspectives-how-to-submit



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