AI’s potential in transforming industries is undeniable. However, as businesses embrace AI, the importance of balancing enthusiasm with fiscal responsibility becomes clearer. Costs associated with AI can quickly accumulate, and overlooking them may undermine the technology’s long-term value.
AI enhances operational efficiency, boosts productivity, and improves customer satisfaction, but it comes at a cost. To realize its full potential, businesses must understand the balance between AI’s benefits and its expenses to ensure sustainable growth.
The AI Acceleration Paradox
AI’s integration into business is accelerating, but its financial impact remains unclear. Without a direct connection between costs and results, how can companies justify their AI investments? As noted in the 2025 Gartner® Hype Cycle™ for AI, GenAI is currently in the “Trough of Disillusionment” phase.
Strategic decisions thrive on clarity. Without it, companies fall back on guesswork, which is risky. According to research from Apptio, 68% of tech leaders plan to increase AI spending, yet nearly 30% of AI leaders report dissatisfaction with ROI, even after spending millions.
The Hidden Financial Risks of AI
AI’s costs can easily spiral out of control. Like the early days of public cloud, AI spending is decentralized, which makes it difficult to trace expenses to tangible business outcomes. AI projects often consume significant cloud infrastructure, and the costs extend beyond data platforms to engineering resources and query tokens.
As AI projects proliferate, companies face increasing costs with limited visibility. Tight budgets create tough choices, leading to the risk of overspending on AI while neglecting other areas of the business. Gartner® predicts that by 2027, over 40% of agentic AI projects will be canceled due to unclear business value and escalating costs.
The Challenge of Traditional Financial Planning
Traditional budget models fall short when it comes to managing AI’s dynamic needs. Much like the cloud, AI requires precise tracking to attribute costs to business outcomes. However, the complexity of AI projects—ranging from data preparation to regulatory compliance—complicates this process.
For finance teams, tracking AI spending with accuracy is nearly impossible without the right systems in place. But unless companies establish clear connections between investment and impact, it’s difficult to track AI’s true ROI.
The Strategic Value of Cost Transparency
Transparency in AI costs allows for smarter decision-making. It enables businesses to allocate resources efficiently and prioritize high-value projects. In particular, AI transparency is crucial when specialized talent is in high demand.
By adopting cost management practices like FinOps, businesses can identify waste, optimize infrastructure, and adjust models as needed. Monitoring AI spending helps leaders avoid unnecessary expenses and pivot when projects become too costly.
AI Cost Management with TBM
Effective AI cost management relies on three key practices: IT financial management (ITFM), FinOps, and strategic portfolio management (SPM). These form the Technology Business Management (TBM) framework, which helps companies align AI spending with business goals.
TBM supports the creation of a clear, unified approach to AI costs, helping organizations make informed decisions. With this structure, AI becomes a measurable business asset, transforming from a costly risk into a valuable, strategic investment.
