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Cloud-based
data analysis
Preparation of after sales data through automated data pipeline
After-sales data such as information on complaints, customer satisfaction surveys or customer loyalty measures is often stored in different locations, different formats and for different purposes. Insular information management systems like these are known as data silos, and make evaluation of the data very time-consuming if not impossible.
Cloud-based data analysis and visualisation using an automated data pipeline can be the perfect solution when it comes to optimising after-sales activities and strengthening customer loyalty. And machine learning methods provide useful support.
Requirements of the machine learning solution
The goal is efficient data analysis with an integrated analytics platform
Integration of heterogeneous data sources
Structuring of the data
Creation of an automated end-to-end data pipeline
User-friendly implementation of dashboards to visualize the data
The solution for the right
structuring of after sales data
In order to structure after sales data correctly, an automated cloud solution is being developed on AWS. This enables the connection of different, distributed data sources. The data is read in automatically at regular intervals. A central data repository is set up to back up all data in one place (to avoid data silos).
- By implementing an end-to-end data pipeline, data can be prepared, transformed, aggregated, cleansed and analyzed.
- The clear visualization of the data is ultimately done with Tableau.
Added value through the use of
automated data pipelines
- Fast, efficient decisions
Available data is relevant and meaningful
Data can be evaluated and displayed quickly and easily
Data is readily accessible to a wide range of users on custom dashboards

