Summary:
1. North American enterprises are actively deploying agentic AI systems for full autonomy.
2. European firms prioritize governance frameworks and data stewardship for long-term resilience.
3. IT operations emerge as the primary testing ground for agentic AI, leading to improved decision accuracy and efficiency.
Article:
Enterprises in North America and Europe are diverging in their approach to deploying agentic AI systems, with North American companies focusing on achieving full autonomy while European firms prioritize governance and data stewardship. A three-year global program conducted by Digitate reveals that while adoption of AI is universal, the paths to maturity vary across regions.
The evolution of enterprise automation has shifted from cost reduction to profitability, with AI now seen as a capability that enables profit rather than just operational utility. Data from the program indicates that North American organizations are experiencing a median ROI of $175 million from their AI implementations, while European enterprises report a comparable median ROI of approximately $170 million.
IT operations have become the primary laboratory for AI deployments, with 78% of respondents deploying AI within IT operations. This trend is driven by the data-rich and dynamic nature of IT environments, which are ideal for models to learn and adapt. Cloud visibility, cost optimization, and event management are leading the adoption curve, resulting in improvements in decision accuracy and efficiency.
Despite the optimism surrounding ROI, there is a “cost-human conundrum” hindering progress in AI adoption. Enterprises deploy AI to reduce reliance on human labor and operational costs, yet ongoing oversight, tuning, and exception management are required for agentic AI systems. Additionally, the shortage of technical talent remains a significant obstacle to further adoption.
There is a trust and perception gap between executive leadership and operational practitioners regarding AI. While 94% of respondents express trust in AI, C-suite leaders are more optimistic compared to non-C-suite practitioners. The transition to complete agentic AI autonomy is rapidly approaching, with the industry anticipating a shift towards reduced human involvement in routine processes.
To ensure the successful transition to agentic AI, organizations must invest in upskilling existing teams, integrate governance directly into system design, and prioritize data quality. The era of experimental AI has passed, and the focus is now on scaling agentic AI sustainably across the enterprise. As enterprises balance autonomy with accountability, embedding trust, transparency, and human engagement into their AI strategy will shape the future of digital business.