
Machine learning is less suitable when:
The key factor is whether machine learning fits the business and technical requirements of the use case. In some situations, reporting tools or tailored systems for data preparation and business logic implementation may be sufficient alternatives.
For clearly defined evaluation and forecasting tasks, specialized machine learning models are often:
However, the right choice always depends on the specific use case.
The amount of data required depends on the use case and the specific problem. There are also specialized methods that allow robust models to be trained even with smaller datasets.
What matters most:
It’s not about “more data,” but about having the right and consistent data.
We systematically assess your data in terms of quality, completeness, and relevance before deploying any model in production.
This includes:
Machine learning is not a one-time project, it is a long-term component of your system architecture that requires ongoing operation and maintenance.
