Mission
Many organisations are no longer asking whether AI matters. They are asking how to turn scattered use cases into something they can trust, govern and scale.
For a major French civil engineering business, part of a leading European construction and concessions group, this question was directly connected to its 2025–2030 strategic roadmap. The Executive Committee wanted AI to support operational excellence and improve project productivity — not as a disconnected innovation topic, but as a practical lever for the business.
The entity operates at significant scale, with close to 30,000 employees and more than €6bn in annual revenues. Its teams deliver complex infrastructure projects across transport, energy and maritime sectors, from ports and tunnels to large engineering structures. In such an environment, complexity is not an exception. It is the business itself.
This made AI both promising and difficult to structure. The most relevant opportunities were likely to emerge close to the work: in projects, engineering routines, methods, functional processes and day-to-day operational irritants. At the same time, the organisation needed to ensure that emerging use cases were aligned with Group guidelines, data governance, confidentiality requirements and existing information systems.
The challenge for the Executive Committee was therefore clear: create enough openness for useful AI opportunities to surface from the field, and enough structure to assess, prioritize, govern and scale them.
The mandate was to move from fragmented initiatives to a clear, actionable AI roadmap: a set of use cases tailored to civil engineering activities, a shared prioritization framework and the foundations for secure, scalable deployment.





