Artificial intelligence will redefine corporate operations by 2030, evolving from a tool into the core engine of business models, according to a sweeping survey of 2,000 executives across 33 countries and 23 industries conducted by the IBM Institute for Business Value in partnership with Oxford Economics during the third and fourth quarters of 2025. Nearly 80% of respondents anticipate AI delivering substantial revenue contributions by decade’s end, up from 40% today, yet a mere 24% can pinpoint the exact origins of those gains. This optimism fuels a projected 150% surge in AI spending as a share of revenue from 2025 levels, with allocations shifting from 47% on efficiency to 62% toward product innovation and model reinvention.
“AI won’t just support businesses, it will define them,” declared Mohamad Ali, senior vice president at IBM Consulting, in a January 2026 press release covered by IBM Newsroom. “By 2030, the companies that win will weave AI into every decision and operation.” Such pronouncements underscore a pivotal transition where AI-first strategies demand tailored agents, proprietary data integration, and rapid experimentation to outpace rivals.
Executive Optimism Meets Strategic Gaps
IBM’s findings reveal a stark disconnect: while 57% of leaders view sophisticated AI models as a key competitive edge, integration hurdles loom large, with 68% fearing initiatives will falter due to misalignment with core activities. Current priorities for 2026 through 2030—product innovation, productivity gains, and execution speed—signal a pivot from cost-cutting to value creation. AI-first adopters project 70% superior productivity boosts, 74% sharper cycle-time reductions, and 67% faster project delivery compared to laggards.
Aaron Levie, CEO and co-founder of Box, captured the urgency in the IBM report: “A startup can now operate at the same scale as a large enterprise, but move at a much faster speed. That means smaller companies can really disrupt the markets they’re going after.” This dynamic pressures incumbents to foster cultures of minimum viable products, iterative scaling, and ecosystem partnerships.
Bold Bets Drive Survival
The report’s first prediction posits that competitive intensity will render massive AI commitments essential. Success hinges on creativity, confidence, and velocity, as 55% of executives prioritize speed over flawless decisions. Organizations must harness proprietary data streams and real-time flows to fuel adaptive systems, blending human oversight with autonomous agents tuned to unique organizational DNA.
Productivity windfalls from initial AI phases—eliminating waste and amplifying outputs within existing frameworks—will bankroll deeper disruptions. Executives forecast a 42% productivity uplift by 2030, with 67% capturing the lion’s share and 70% channeling proceeds into expansion. Those embedding AI into offerings and workflows via advanced models anticipate 59% greater gains, igniting a self-reinforcing cycle of revenue acceleration and market dominance, as detailed in Axios.
Productivity Fuels Reinvention
Differentiation will stem from bespoke AI, not sheer scale. By 2030, 82% expect multi-model arsenals, and 72% foresee small language models eclipsing their larger counterparts in prevalence. Jinesh Dalal, head and vice president of technology development at C-Metric, emphasized in the IBM study: “AI’s future isn’t about bigger models. It’s about smarter integration with people and processes.” Constant tuning, ethical guardrails, and strategic alignment will be paramount, birthing roles like chief AI officers—anticipated by 68% of respondents.
AI’s cognitive limits necessitate human orchestration. Job tenures shorten as skills obsolesce—57% predict most current proficiencies irrelevant by 2030—and two-thirds foresee agentic AI dominating finance, sales, marketing, IT, supply chains, and R&D. In healthcare, 65% envision automation slashing validation from months to hours, redirecting talent to high-touch care. Yet 68% identify rigid structures as barriers, with 56% of workforces requiring reskilling by 2026’s close.
Custom Models Redefine Edges
Jacobo Díaz García, CFO and head of digital banking at Bankinter, urged in the report: “We have to push our creativity to see how many things we can do without human intervention. That is a mandate.” Leaders must cultivate problem-solving prowess, amplified by generative tools, to manage cross-domain agents—personal aides for staff or enterprise-scale optimizers.
Quantum computing emerges as the next disruptor, with 59% expecting quantum-AI hybrids to upend sectors by 2030, though only 27% plan deployment. Quantum-ready firms, per IBM’s 2025 index, boast triple the ecosystem presence. Early movers prioritize alliances and pilots, as Kristie Chon Flynn, data protection officer at Google, noted: “Building a robust, proactive plan for quantum resilience is going to take some investment—and I deliberately use the word investment, because it’s not a cost.” Flexible infrastructure and partnerships will bridge to quantum-centric supercomputing.
Quantum’s Looming Disruption
Recent market signals amplify these forecasts. Global AI infrastructure spend could hit $1.4 trillion by 2030, per Yahoo Finance citing JPMorgan, while enterprise AI swells to $229 billion annually by then, according to Mordor Intelligence. Agentic AI alone eyes $45 billion by 2030 from $8.5 billion in 2026, as outlined in Forbes via Deloitte’s survey of 3,200 leaders.
2026 trends point to agent proliferation and small-model dominance. AT&T’s chief data officer Andy Markus told TechCrunch: “Fine-tuned SLMs will be the big trend and become a staple used by mature AI enterprises in 2026.” Salesforce’s 90% engineer adoption of Cursor AI coding tools, yielding 30% faster PR velocity, exemplifies viral enterprise uptake, per Cursor.
2026 Signals Acceleration
Quantum and agentic synergies gain traction; Siemens and NVIDIA target AI-driven factories by 2026, per Siemens News. PwC’s 2026 predictions stress top-down AI strategies and responsible governance for agentic workflows, as in PwC. ARK Invest envisions AI agents mediating 25% of online spend by 2030, boosting GDP toward 7.3% globally.
Challenges persist: 74% foresee AI reshaping leadership, with 25% of boards adding AI advisors. Reskilling imperatives and integration risks demand action now. Alex Schultz, Meta’s VP of analytics and CMO, prophesied: “By 2030, we will do things that were previously too expensive to be ROI-positive. We will also build products that simply couldn’t exist without AI semantic understanding.” Enterprises heeding IBM’s blueprint—orchestrating unique AI ecosystems—stand poised to capture the trillions in play.


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