FinOps X continues to be one of the fastest-growing and most action-packed events on our calendar. FinOps X 2026 outdid the prior year’s iteration with 2,500 total attendees, up 25% from FinOps X’s 2025 count. Last year, we wrote that AI cost management was a “nascent but growing” theme at the event. Wow, that has changed. With the announcement of the Tokenomics Foundation at the 2026 conference, AI cost management is taking center stage while traditional FinOps (focused on cloud costs) has moved to business as usual. Forrester believes AI value must justify AI cost, and token economics is only one part of the value versus the cost management.

AI Spend Management Dominated The Conference

The big announcement on day one was the Linux Foundation’s launch of a new organization, the Tokenomics Foundation, focused on best practices for AI billing and spend management. While the FinOps Foundation serves mostly cloud consumers, the Tokenomics Foundation seeks to bring both consumers as well as the AI vendors (LLMs, neoclouds, hardware providers, etc.) together in one ecosystem. This is an interesting concept because both clients and cost management software vendors face challenges with immature billing transparency from AI vendors. Forrester clients report widespread uncertainly about pricing and ask, “Why am I paying this price?” “What is driving pricing?” and “Where is pricing going?” While we agree with the broader remit on the total supply chain to tackle pricing, we’re not convinced it warrants an entirely new organization. It certainly warrants tactics and personas above FinOps’ current scope, however.

The Rise Of Autonomous Agentic FinOps

Day two showed that the FinOps operating model itself is being reinvented. Across hyperscalers and FinOps tooling vendors, the shift is clear: FinOps is moving from reactive cost management to agent-driven, intelligence-led optimization. Cloud providers and third-party platforms alike are adding intelligent layers — often powered by emerging MCP-style architectures — that can explain spend, recommend actions, and increasingly execute optimization decisions autonomously. This was evident in announcements from AWS, Microsoft, Google Cloud, IBM Cloudability, and Flexera all converging on AI-driven financial intelligence and automation and raises the question whether UX will matter in five years. Critically, this change is not just about faster insights; it is about shifting FinOps. This aligns with the “From Alerts to Agents” keynote and the crawl-walk-run maturity model, where organizations progress from visibility to recommendation to autonomous action. Yet one message was consistent: AI will not replace FinOps practitioners — it will elevate them.

A Shift In FinOps To Business As Usual

The increase in automation and efficiency being demanded from FinOps teams is also an indicator of a larger trend, namely that FinOps is becoming business as usual. At least four sessions touched on FinOps teams doing more with less, and analysts, vendors and practitioners alike were echoing the sentiment. The reason? Enterprises want to shift their engineering talent to AI and are expecting FinOps teams to work leaner to enable this. This places new pressure on CIOs and FinOps leaders to redesign operating models, ensuring cost governance scales without adding headcount. Leaders who succeed will treat FinOps capabilities as embedded infrastructure rather than a standalone team.

From Cost Optimization To AI Value

While agentic FinOps dominated the agenda, the most unresolved and urgent topic at FinOps X 2026 was AI value. Across sessions and practitioner stories, a clear pattern emerged: Organizations are scaling AI spend faster than their ability to measure outcomes. This tension is compounded by a structural shift in pricing. As vendors move from seat-based to consumption-based (token-driven) models, enterprise buyers struggle to connect granular usage metrics to meaningful business results. The result is a widening AI value gap visibility into cost without clarity on impact. As the industry moves beyond cloud cost management to AI, it needs to also focus on total AI economics that include other costs — data center, energy, cooling, and model training. The broader takeaway is clear: AI economics must evolve from a cost-based to a value-based discipline, and organizations that tie token consumption to revenue growth, productivity gains, and customer outcomes will shift from cost control to true AI value optimization.

Final Thoughts

FinOps X 2026 marked a clear inflection point. FinOps is no longer just about cloud cost management; it is rapidly expanding to encompass AI economics, agentic automation, and AI value realization. The emergence of tokenomics, the rise of intelligent FinOps agents, and the growing urgency around AI ROI signal a fundamental shift in both scope and expectations and a burning desire to align AI value to outcomes. Forrester’s AI Value Matrix is a framework that offers help here. The opportunity, and challenge, for enterprises is to evolve just as quickly. Those that embrace agentic FinOps and invest in AI value measurement will lead in the intelligence era. Those that don’t risk optimizing cost in isolation while missing the bigger picture: AI is not just a cost to manage — it is an asset to maximize and drive value.