









After a requirements analysis and workshops, we create a concept for developing and implementing SQL statements or for integration into existing tech stacks, depending on whether you are building a new data stack or optimizing existing processes.

You're looking for an application that is easy to use, offers the highest quality, and can be seamlessly integrated. We take these principles into account when we build your modern data stack, implement pipelines, or transform data.

To ensure that you are optimally positioned in the long term, we offer you continuous support and development of your data transformation with dbt Labs or train the team to cover all necessary competencies internally.
With dbt projects since 2019, you can rely on the practical experience of our data engineers. Thanks to their know-how, you will reach your destination quickly and reliably.
Our data engineers are always aware of the important new features from dbt Labs. They also complete official certificate exams, which prove their expertise.
As one of the few and long-standing partners of dbt Labs in Germany, you benefit from our network and the extensive expertise of our data experts.
Our data engineers have many years of DBT practice and official certifications, so we can build robust, reproducible transformation processes and establish best practices faster. This saves time, reduces risks and increases the quality of your data pipelines.
With dbt, you structure your data transformation in a versioned, testable framework, improve data quality and documentation, and create a scalable basis for reporting, analytics and self-service BI.
We review your current data and tool landscape, define the role of dbt in your modern data stack and integrate dbt into your existing pipelines and platforms.
Let us answer your questions during a non-binding initial consultation.

We're taking your data management to a new level. Strategically and technologically.

New technology stack for data analysis

These tools are used at the stages of your data usage and data analysis
