For companies looking to use new tools and AI to improve their logistics processes, a strong data foundation is a prerequisite. But as supply chains have become more complex in recent years, the depth, diversity and precision of necessary data – such as cost information – has equally increased.
While many companies have made significant progress in digitalization, information is often scattered across diverse systems and interfaces: Enterprise Resource Planning systems (ERP), Warehouse Management Systems (WMS), Transportation Management Systems (TMS) but also other planning tools, supplier portals and external systems. The challenge today is to regain control over this data before it can be effectively utilized for deploying AI in supply chains.
After digitalization comes organization
In the Supply Chain Tech Report 2026, two thirds of surveyed executives report that this fragmentation and low quality of information is one of the main barriers to adopting AI across organizations. Meanwhile, 61% point to integration issues with existing systems, with most use cases still stuck in early stages and far from full implementation.
In other words, the problem is not so much about finding a better AI solution, but about knowing whether the structure it depends on is ready to support it.