Throughout your training, and as your skills are developed, you will carry out several projects in groups, according to the breakdown of the curriculum:
Module | Project |
Data Analyst | Development of a data solution. |
ETL Developer | Create an ETL pipeline, from raw data recovery to modeling and visualization.
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These projects can be drawn from our catalog, which includes a wide range of subjects based on technical business issues. You can also propose your own projects, as long as the data is accessible and our teaching team validates them.
This is an extremely effective way of putting theory into practice and ensuring that you apply the topics covered in class.
These projects are highly appreciated by companies, as they ensure the quality of the training and the knowledge acquired at the end of the Analytics Engineer course, since the use of soft-skills is also very present. These projects will teach you to :
- present and popularize your work;
- highlighting data with interactive tools (Dashboard, Streamlit…).
In short, these projects will require a real investment, representing at least a third of your training time.
The 150 hours to be allocated to the projects that make up the curriculum can be broken down as follows:
- Data Analyst project: 90h ;
- ETL Developer project: 60h ;
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The projects are supervised by DataScientest mentors who will be in regular contact with you to monitor your progress and provide guidance.