Data Engineering
Data engineering process
First Step
Define requirements
Within this phase, we collaboratively outline key aspects, addressing inquiries pertaining to data origins, potential need for supplementary tracking, designated storage locations, strategies for data preparation, and the consideration of automated processes to ensure fluidity and efficiency.
Second Step
Retrieve data
The data is embedded in a desired framework, which is brought into agreement with the tool for subsequent storage. With the help of ETL tools, retrieval is also automated in order to keep reports permanently up to date
Third Step
Save data
In order to use the data for processing after retrieval, the storage of the data must be optimized. The choice here is generally between a cloud-based system or local data storage.
Fourth Step
Process data
In this step, the relevant data volumes are prepared for subsequent presentation. In most cases, only a small amount of precisely processed data is needed to ensure a fast and meaningful analysis. The processing basis depends heavily on the previously selected tools.
Final Step
Visualize data
There is a wide range of visualization tools from which results can be derived. All of them have specific strengths and weaknesses. Here too, our many years of experience and expertise in the field of data engineering enable us to provide high-quality advice.
Optimize with our data engineering offer
Unlock the power of data with precision-driven data engineering solution