
The narrative surrounding artificial intelligence has long been dominated by fears of workforce displacement. However, a landmark study released today by the IBM Institute for Business Value offers a compelling counter-narrative, suggesting that the most aggressive adopters of AI are not shedding jobs but generating them. The report, titled AI Poised to Drive Smarter Business Growth Through 2030, reveals that "AI-first" organizations are 48% more likely to create net-new job roles compared to their less advanced counterparts.
This finding marks a pivotal shift in the enterprise AI landscape, signaling a transition from an era focused on cost reduction and efficiency to one defined by innovation and structural reinvention. For industry observers and business leaders alike, the data provides a roadmap for the next decade, where competitive advantage will be determined not by how much labor can be automated, but by how effectively human and machine intelligence can be woven into a unified operational fabric.
For the past few years, the primary use case for enterprise AI has been efficiency—automating routine tasks to cut costs. IBM’s research indicates that this phase is rapidly evolving. While nearly half (47%) of current AI expenditure is focused on efficiency, executives project that by 2030, the balance will tip significantly, with 62% of AI spend dedicated to innovation.
This pivot is driven by the realization that efficiency gains have a ceiling, whereas innovation offers unlimited upside. Mohamad Ali, Senior Vice President of IBM Consulting, emphasized this trajectory, stating, "By 2030, the companies that win will weave AI into every decision and operation." The study underscores that AI is no longer just a supporting tool; it is becoming the central architecture of the modern enterprise.
Organizations that prioritize AI integration are effectively decoupling their growth from traditional resource constraints. By leveraging AI to handle complex data analysis, predictive modeling, and autonomous workflows, these companies can launch new business lines and enter new markets faster than ever before. The study highlights that 79% of executives expect AI to significantly contribute to revenue by 2030, a sharp increase from just 40% today.
The financial motivations for this shift are clear, yet the path forward remains complex. Although optimism is high, the study uncovers a "knowledge gap" among leadership. While the vast majority expect revenue contributions from AI, only 24% have a clear view of exactly where that revenue will come from. This suggests that while the destination is agreed upon, the strategic map is still being drawn.
Key Financial and Operational Shifts by 2030
| Metric | Current State (2025-2026) | Projected 2030 Expectation |
|---|---|---|
| Primary AI Spend Focus | 47% on Efficiency | 62% on Innovation |
| Revenue Contribution | 40% of Executives Expect Significant Impact | 79% of Executives Expect Significant Impact |
| Productivity Gains | Incremental | 42% Increase Projected |
| Model Strategy | Dominance of Large Language Models (LLMs) | 72% Expect Small Language Models (SLMs) to Surpass LLMs |
Perhaps the most striking finding of the IBM study is the extent to which AI is reshaping the very structure of the corporation. The statistic that AI-first companies are 46% more likely to redesign their organizational structure speaks to a fundamental transformation. This is not merely about adding a few data scientists to the roster; it is about reimagining how teams are constructed, how decisions are made, and how value is delivered.
The impact of AI is reaching the highest levels of corporate governance. The study predicts that by 2030, 25% of enterprise boards will feature an AI advisor or co-decision maker. This inclusion of non-human intelligence in governance structures represents a profound shift in corporate responsibility and strategy. Furthermore, 74% of executives believe AI will redefine leadership roles across the enterprise, with two-thirds anticipating the creation of entirely new leadership categories that do not exist today.
These new roles will likely bridge the gap between technical capability and business strategy. We are moving toward a future where "Chief AI Officer" is just the beginning, likely to be followed by roles focused on AI ethics, algorithmic auditing, and human-machine collaboration management.
While the creation of new jobs is a positive indicator, the transition will not be without friction. The report presents a sobering statistic: 57% of executives expect most current employee skills to be obsolete by 2030. This creates an urgent imperative for reskilling and upskilling.
However, the report suggests that the solution may not lie solely in technical training. 67% of respondents agree that mindset will matter more than skills. In an AI-first world, the ability to adapt, think critically, and collaborate with intelligent systems becomes more valuable than proficiency in any specific, rapidly depreciating software tool. This "adaptability quotient" will likely become a primary hiring criterion.
The technology underpinning this revolution is also undergoing a metamorphosis. For the past several years, the industry has been fixated on "bigger is better"—creating massive Large Language Models (LLMs) with trillions of parameters. IBM’s research suggests a reversal of this trend.
72% of executives expect Small Language Models (SLMs) to surpass LLMs in importance by 2030. This shift is driven by the need for efficiency, lower latency, and data privacy. SLMs, which can be run locally and fine-tuned on proprietary data without leaking information to public clouds, offer a more sustainable path for enterprise AI.
This aligns with the concept of "sovereign AI," where organizations seek to own and control their models rather than renting intelligence from third-party providers. The study notes that 82% of respondents expect their AI capabilities to be multi-model, implying a future where specialized models (a mix of SLMs and LLMs) work in concert to solve specific business problems.
While AI is the current focus, the study also points to the looming convergence of AI and quantum computing. 59% of respondents believe quantum-enabled AI will transform their industry by 2030. However, a significant readiness gap exists: only 27% expect to be actually using quantum computing by that time. This discrepancy highlights a major opportunity for forward-thinking organizations to gain a first-mover advantage by investing in "quantum-ready" infrastructure today.
The message from the IBM Institute for Business Value is clear: incrementalism is a strategy for obsolescence. To thrive in the coming decade, organizations must adopt a holistic "AI-first" posture. This involves several critical strategic pillars:
The findings of IBM's AI Poised to Drive Smarter Business Growth Through 2030 offer a refreshing and data-backed rebuttal to the "AI doomerism" that often clouds industry discourse. Far from being a harbinger of unemployment, AI appears to be the engine of a new era of job creation and economic expansion.
However, this future is not guaranteed for everyone. It is reserved for the "AI-first" organizations—those willing to endure the short-term pain of structural redesign and the uncertainty of innovation. As we move closer to 2030, the divide between these pioneers and the laggards will likely widen, defining the winners and losers of the next industrial revolution. For Creati.ai readers, the takeaway is actionable: do not wait for AI to change your industry; use AI to actively reshape it.