Cloud Does Not Scale Immature Teams and Neither Do Microservices
Marcelo Scheidt
Verified Author
7 April
Something interesting is happening inside logistics and supply chain companies right now.
Boards are asking about AI.
Competitors are announcing AI initiatives.
Investors expect innovation.
Which means one group is feeling the pressure more than anyone else.
Technology leaders.
CIOs and CTOs in logistics are now expected to answer a difficult question:
“What is our AI strategy?”
The challenge is that most organizations are still dealing with foundational technology constraints.
Transportation systems, warehouse platforms, and ERP environments often run on a mix of legacy infrastructure and newer cloud tools. These systems are critical to operations and difficult to change.
Before any meaningful AI deployment happens, companies often have to solve more basic problems:
• fragmented operational data
• integration across multiple systems
• inconsistent data quality
• limited internal AI capability
This creates a difficult dynamic.
The board expects progress on AI.
The technology team knows that jumping into AI without the right foundations often leads to experiments that never reach production.
I hear the same tension repeatedly in conversations with supply chain technology leaders.
Some organizations feel pressure to launch AI initiatives quickly so they do not appear behind competitors.
Others take the opposite approach and decide to wait until the technology matures.
Neither approach tends to work well.
Moving too quickly creates scattered pilots and unclear ROI.
Waiting too long means competitors begin using automation and predictive intelligence to improve margins, routing efficiency, and inventory performance.
The organizations making real progress tend to do something different.
They treat AI as an operational capability, not a technology experiment.
Instead of launching broad AI programs, they focus on specific operational bottlenecks such as:
• demand forecasting
• inventory optimization
• exception management
• invoice validation
• route planning
These are areas where data already exists and where automation can produce measurable improvements.
AI becomes a tool to improve operational decisions rather than a standalone initiative.
The interesting part is that many logistics companies are still very early in this journey.
The biggest gap I often see is not technology.
It is clarity on where AI can actually create operational value.
That is why more organizations are starting with AI maturity assessments to understand where they stand before launching new initiatives.
Because the real question for logistics leaders is no longer:
“Should we adopt AI?”
The real question is:
“Where will AI actually move the needle in our operations?”