AI is only effective when the problem, data, and processes align.
Many companies are starting to realize that they should be exploring AI. The possibilities seem vast. The examples sound exciting. Initial ideas are emerging internally. Perhaps some initial tests are already underway. Maybe your team has already experimented with ChatGPT, Copilot, or other tools.
And yet, the feeling that many SMEs are currently experiencing often lingers:
- Where should we even start?
- Which AI application really makes sense for us?
- Are our processes and data even ready for this?
- What brings real value, and what is just knee-jerk action?
- How do we avoid investing time and money in something that won’t work properly in the end?
In companies, AI rarely fails because of the technology itself. More often than not, another foundation is missing: a clear use case, usable data, defined responsibilities, suitable processes, or meaningful integration into daily operations. We don’t view AI simply as a tool, but as an interplay of business case, data, software, integration, governance, and practical implementation in everyday operations.