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The AI and Big Data programme on day two of TechEx North America referred at least once to the “AI graveyard,” meaning the large number of pilots that never become durable systems. That phrase set the tone. The question was proof.
The Enterprise AI Implementation, ROI and Adoption track dealt with the hard middle of AI work. Its sessions covered stalled pilots, agentic AI for business impact, the move from experimentation to impact, the decision to buy or build, and durable ROI and autonomous decisioning. A system has to be adopted, governed and measured before it deserved to be called successful.
The session on the AI graveyard was useful because it named the failure pattern. Many companies have enough budget to start AI experiments and enough executive attention to publicise them. Fewer have the data quality, process design, operating authority, and risk control to keep them going.
A day-two session on moving beyond copilots towards agentic AI framed the issue as business impact not novelty. Copilots have been useful as individual productivity tools, but their value is often hard to measure. Agents promise a closer connection to business process, yet they also increase the need for boundaries. An agent that can act in systems has to be evaluated by the quality of the action.
That point linked directly with the Future of AI track. Its opening theme, trust as a competitive advantage, was a useful counterweight to speed. The programme dealt with transparency, governance, regulation, banking analytics, and risk. It also included material from Hex on data agent, with evaluation and governance built in. Agentic AI will not mature in enterprise settings if evaluation remains informal.
Governance appeared in several forms. There was cross-functional governance, which reflects the reality that AI risk does not belong to legal, security or engineering. There was governance in the data layer, where trust depends on lineage and quality. There was governance around agent personas and risk stacks, where companies need to understand what an AI agent is permitted to know and do. The banking session gave the theme a sectoral focus, since financial services have less room for undefinedassurances about automation.
Digital Transformation Week carried the same day-two pressure into business delivery. The programme was built around real use cases, business impact, ROI, AI agents built on APIs, change readiness, government service transformation, city innovation and the conversion of data into financial value. The change-readiness material was especially important. AI fails because staff do not change routines, managers do not alter incentives, or the data needed for daily use never appears in the right place.
Sessions involving the DMV and the City of San Jose placed AI and transformation inside government service. In government, the measure of quality includes reliability, access, explainability and public trust. The Dow material on turning data into dollars sat at the commercial end of the same argument. In both cases, value depends on connecting data work with an accountable outcome.