Just 20% of companies are capturing 74% of all AI-driven value. We’ve decoded how, so you can harness AI to drive productivity, reinvention, and growth.
AI is everywhere. But ROI isn’t. PwC’s new AI performance study reveals that a small set of top-performing companies—the AI leaders—are already translating AI into real ROI.
For these companies, using AI for productivity is table stakes. They’re taking AI much further—using it to reinvent and grow. They start with what matters. Build only what's needed. And scale what works.
Want to join the AI leaders? Here’s how.
AI fitness is the ability to focus AI on the outcomes that matter, build the foundations that enable AI to deliver ROI, and then rapidly scale what works—turning pilots into profit.
The most AI fit companies are getting a 7.2 times AI-driven performance boost—a combination of AI-driven revenues and cost reductions—over their peers.
Discover more about the nine factors of AI fitness below.
Why it matters
Becoming AI fit builds the muscle to pull more ROI from AI.
Your next move
Take stock of your AI fitness level by reviewing your company’s performance on the nine AI fitness factors.
The leading companies aim AI at growth and use it to innovate. They’re 2.6 times as likely as others to say AI enhances their ability to reinvent business models and 1.2 times as likely to use AI to drive revenue. They target where value is moving and tightly manage AI bets like an investment portfolio—with clear owners and metrics.
And the AI leaders win where sector boundaries blur. They’re 1.8 times as likely to use AI to find emerging value pools, three times as likely to collaborate across sectors, twice as likely to compete beyond them—and they fast-track “industry convergence” use cases with senior sponsorship.
Why it matters
The biggest returns come when AI changes what you sell and how you create value, not just how quickly you execute tasks.
Your next move
Identify two growth bets AI could unlock this year and define what proof of success looks like.
The most AI fit companies have strong foundational capabilities, including workforce skills, modernised tech, high data quality, and governance and risk management.
AI leaders also invest 2.5 times as much as others in AI, and do it nimbly—building only what’s needed to achieve their strategic priorities. When AI sits on strong foundations, it creates twice as much value from AI use.
Why it matters
Reuse makes AI cheaper, faster, and more reliable with every deployment.
Your next move
Design application components with reuse in mind right from the start.
The biggest performance gains accrue when AI does real work on its own: making routine decisions, handling straightforward tasks, even improving its own performance.
The AI leaders integrate AI into every facet of their business, quickly scaling successful pilots enterprise-wide, and deep into complex operations. They’re two times as likely to embed AI end‑to‑end across the value chain—from corporate strategy to procurement, and from the back office to the customer experience.
Why it matters
Across all operational practices we tested, automating decisions links most strongly to AI-driven performance.
Your next move
Phase autonomy into a high-frequency workflow, progressing AI use from assisting to executing on its own within established guard rails.
Insight for action
Insight for action
Capturing growth opportunities from industry convergence is the strongest AI fitness factor influencing AI-driven performance.
Use AI to find emerging value pools, and then point AI at the most attractive opportunities that customers will pay for.
Get in touch with PwC to help you identify opportunities
Insight for action
Insight for action
Delivering use cases without the ability to repeat them reliably delivers lower ROI.
Before expanding your AI footprint, identify the one or two foundation capabilities most likely to block repeatability and fix them for the highest-value initiatives first.
Get in touch with PwC to help you identify opportunities
Insight for action
Insight for action
Without a way to measure results, there's no way to know if your AI investments are delivering returns.
Stand up a monthly “scale or stop” review. Only projects with measured movement on a defined business metric get more funding.
Get in touch with PwC to help you identify opportunities
AI fitness is six foundational capabilities and three measures of AI use.
Explore the graphic below to discover more and benchmark your organisation’s fitness against sector peers and the AI leaders.
Want to test yourself? Our quiz will give you a sense of your organisation’s baseline score, and strengths and weaknesses.
Tap on the graphic below to learn about each factor—and how well leaders are applying them.
This factor captures how much AI is used across your organisation’s value chain and how deeply AI is deployed into workflows within each function.
The AI leaders’ score for breadth and depth is roughly twice as high as the rest.
Watch Joe Atkinson, PwC’s Global Chief AI Officer, explain more about breadth and depth of AI use, what leaders do differently, and what you can do to join them.
This factor is a measure of a company's most advanced AI applications. Think of this variable as a spectrum—from using AI simply to summarise long texts all the way through to building autonomous, self-optimising agents. The AI leaders are twice as likely to use AI that operates autonomously.
Watch Scott Likens, PwC’s Global Chief AI Engineer, PwC US, explain more about sophisticated AI applications and the value they can create.
This factor assesses the extent to which AI enables cross-sector competition or collaboration. That could be sensing emerging value pools between sectors, responding to shifts in customer needs, or collaborating across sectors to unlock new value from ecosystem partnerships.
AI leaders are more likely to use AI to derive growth from industry convergence, the strongest AI fitness factor influencing AI-driven performance.
Watch Nicki Wakefield, PwC’s Global Clients and Industries Leader, explain what AI leaders are doing differently and what all organisations can do with AI to capture value in motion.
This factor captures how innovation-friendly—yet rigorous—a company is. Does your business have dedicated innovation infrastructure, like sandbox environments? Embedded ownership of innovation within business units? And a cadence of portfolio reviews to test, prioritise, scale and stop AI initiatives?
AI leaders are more likely to provide dedicated innovation infrastructure and conduct frequent reviews of innovation portfolios to scale up AI initiatives.
Watch Agnes Koops, PwC’s Global Chief Commercial Officer, explain how the AI leaders treat innovation and how you can replicate it.
The security, access controls, regulatory compliance processes, ethical frameworks, and oversight bodies needed to manage risk from AI design to deployment.
AI leaders are 1.6x as likely to have a Responsible AI framework that guides AI strategy—including use case selection, design, deployment, and ongoing monitoring.
Watch Kazi Islam, PwC’s Global Assurance Strategy and Growth Leader, discuss the importance of AI risk management and how to build trust in AI.
This factor is the degree to which a business has modern, scalable platforms and trusted, varied data sources accessible to everyone. Also critical: reusable AI components and replicable, redesigned workflows in priority applications.
Compared to the chasing pack, AI leaders are more than twice as likely to have eliminated outdated and costly IT applications, systems, and infrastructure.
Watch Scott Likens, PwC’s Global Chief AI Engineer, PwC US, explain the criticality of high-quality data and the right tech foundations—in the right places—for achieving ROI with AI.
The strength of connection between corporate strategy and AI deployment. Does the organisation have a prioritised AI road map? Is every use case linked to a clear business objective? Is business impact tracked? And is someone accountable for every critical AI outcome?
Watch Daria Vlasova, AI Strategy & Go-to-Market lead, PwC UK, explain how the AI leaders root their AI planning in their strategic growth priorities.
This factor measures the funding and resourcing for AI. Are investment levels sufficient? Can resources be reallocated as priorities shift while still supporting longer-horizon innovation?
Leading companies are more likely to invest sufficiently, reallocate funds with agility, and invest for long-term results.
Watch Teresa Owusu-Adjei, PwC’s Clients and Markets Leader, Global Tax and Legal Services, explain how the AI leaders manage their AI investments.
This factor is a measure of whether leaders and employees have the skills, incentives, collaboration models, and levels of trust needed to build AI and use it effectively in day-to-day decisions.
AI leaders are 1.7 times as likely as other firms to say their employees participate in ongoing, role-based AI-learning sessions. And those employees are twice as likely to trust the insights generated by AI.
Watch Pete Brown, PwC’s Global Workforce Leader, explain how AI can help unite human potential with tech power.
Learn how other companies have leveraged their AI fitness to drive reinvention and ROI—either by supercharging AI’s impact from strong foundations or by using AI with depth and sophistication.
Southwest Airlines’ crew attendance and leave application ran on a legacy tech stack with limited documentation and heavy reliance on tacit knowledge. Executives resolved to find ways to make the system easier to maintain and upgrade—while managing the time, cost, and risk of modernisation.
Southwest worked with PwC to apply GenAI and advanced software engineering to reverse-engineer the application's source code into clear functional requirements for the updated system and a prioritised modernisation backlog. Southwest knowledge specialists then validated and refined the outputs through workshops, producing a detailed delivery plan with greater confidence and a repeatable approach for future modernisation efforts.
GenAI cut the time needed to create backlogs by 50%—from ten weeks to five—and saved more than 200 hours across engineering, technology, and business teams during planning and design. The work also produced upwards of 600 requirements, 90% of which were accepted as high-quality, reducing the risk of the modernisation effort before development began.
A major technology company with millions of customers faced rising expectations for seamless, personalised service. But its largely manual customer engagement model couldn’t keep up. Company leaders wanted to improve customer experience while keeping costs under control.
PwC designed and deployed an AI-driven, omnichannel contact centre that combined predictive intent modelling, adaptive dialogue, and real-time analytics to support humans and AI agents. A centralised AI agent management hub enabled orchestration across channels, scaled deployment, and governance. To help employees use the new software effectively, the company also stood up Responsible AI, workforce upskilling, and new ways of working for human–AI teams.
The results were immediate and measurable: customers spent 25% less time on the phone to get requests resolved, and call transfers fell by as much as 60%, meaning more issues were handled on the first contact. Customer experience improved as well; the company’s Net Promoter Score (NPS) rose 7%, and customer satisfaction rose 10%.
For Wyndham, a global hotel franchise, delivering a distinctive travel experience involves giving hotel owners the trustworthy, timely support they need to apply the company’s brand standards accurately yet have room for regional customisations. However, the process for changing brand standards averaged about 30 days of manual effort. Company leaders sought to improve this process. They put Responsible AI at the heart of their strategy to ensure a sound solution that employees felt confident adopting.
PwC helped Wyndham put trusted AI to work by designing agentic workflows with human oversight built in—using automated prompts, co-authoring, and real-time monitoring so teams could guide and oversee the agents. Wyndham also positioned the programme to scale with a Responsible AI framework and ongoing upskilling to build trust and adoption.
The agents consolidated standards, simplified workflows for change requests, and created centralised, user-friendly access for franchisees. Wyndham achieved brand consistency at speed without sacrificing rigour and reliability: review time for changes to brand standards dropped 94% (AI reviews were 20x as fast), saving 40–80 hours per review and positioning Wyndham to confidently apply trusted AI solutions across its operations.
An industry-leading healthcare organisation knew its oncology data could help it deliver better care and accelerated research. But much of that information was trapped in siloed systems and unstructured notes. Even after the company modernised some of its platforms, key information like pathology, biomarkers, treatment history, and social determinants remained scattered. Executives resolved to unify this data so they could facilitate timely analysis and enable doctors to personalise care or match patients to trials.
With PwC and Google Cloud, the organisation built a scalable, AI-ready oncology data foundation that streamlined how data was ingested, cleaned, organised, and made searchable—across records, claims, third-party sources, and clinical notes. AI helped convert unstructured information into usable formats, while Google Cloud tooling delivered real-time insights designed around frontline clinical and research workflows, with embedded monitoring of data quality to build trust.
The programme organised about 2,000 data tables into reusable assets built for real-world decisions, such as recognising when a patient could benefit from more affordable—but equally effective—treatment options. Care teams now access analytics 50% faster, enabling quicker matching of patients to trials, point-of-care treatment comparisons, and earlier identification of risks. The privacy-protected insights also created more than US$50 million in new value potential through research acceleration and life sciences partnerships.
As automaker Lucid prepared for its next phase of growth, executives wanted the finance department to evolve from reporting results to shaping them—improving the speed and quality of forecasting, planning, and decision support so finance could serve as a foundation for enterprise intelligence.
Working with PwC, Lucid rapidly prototyped AI-enabled forecasting and reporting capabilities using operational data, applied AI models, and agent-based tools. Cross-functional pods combined Lucid and PwC specialists to embed AI into finance workflows—automating forecasting, reconciliation, analytics, and monitoring, and creating a repeatable blueprint for scaling AI decision support across the business.
Lucid reduced end-to-end forecasting cycle time from weeks to less than a minute, and in ten weeks, designed and began scaling 14 AI-driven use cases. The work is now expanding beyond finance into such areas as procurement and operations, including an AI-enabled executive concierge that supports faster leadership decision-making with visibility into more than US$1 billion in capital investments.
Faced with growing pressure from nimble AI-native competitors, executives at a global retail leader knew they would need AI to drive productivity and business reinvention at enterprise scale—along with new ways of working, new processes, and an operating model that could manage risk while moving fast.
The company collaborated with PwC to build a centralised AI hub: a universal platform to prototype, deploy, and govern AI agents. The first wave of agents supported software development from end to end. Subsequent waves supported functions such as customer service and people management. In parallel, the company began reorganising for human–agent collaboration by upskilling talent, defining new roles, building trust through validation and ethics oversight, and establishing agent life-cycle management.
Within months, software development cycle times were as much as 60% shorter, and production errors had fallen 50%, which helped teams attack a large IT backlog. As the company introduced agents in more functions, customer response times dropped by as much as 40%; attrition fell 10% through improved workforce planning; fraud declined 25% via real-time transaction monitoring; and marketing performance improved, with 15% higher conversions and 20% higher ROI.
For farmers, rising input costs and sustainability pressures place greater importance on outcomes like reduced chemical use, higher yields, and better stewardship. For John Deere, these shifts mean opportunities to create value with innovative offerings that bring AI into more sophisticated machines. In response, John Deere has made it a priority to create a solutions-and-services business model that lowers upfront barriers and supports recurring, outcomes-linked revenue.
John Deere deployed See & Spray, an AI-powered ‘sense-and-act’ precision spraying system that uses boom-mounted cameras and onboard computing to identify weeds and trigger nozzles to squirt herbicides only where they’re needed. John Deere packaged the capability in a service-like commercial model that allowed customers to pay for verified outcomes.
In the 2024 growing season, John Deere reported that See & Spray was used on more than 1 million acres, saving farmers an estimated 8 million gallons of herbicide mix, with 59% average herbicide savings across corn, soybean, and cotton fields. Beyond offering these cost and sustainability gains for farmers, the model positions John Deere to capture more value from a scalable services revenue stream rather than a one-time hardware differentiator.
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Want ROI from AI? Go for growth.
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A reconfiguration of the global economy means US$7 trillion is on the move in 2025 alone. We’ve mapped the value in motion from now to 2035, so you can build a future-ready business to capture it.
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Global Chief AI Officer for the PwC Network of Firms, PwC United States
Tel: +1 215-704-0372