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Important: This is a template repository to help you set up your team project.

You are free to modify it based on your needs. For example, if your data is downloaded using multiple scripts instead of a single one (as shown in \data\), structure the code accordingly. The same applies to all other starter files—adapt or remove them as needed.

Feel free to delete this text.

Title of your Project

Describe the purpose of this project

Motivation

Provide background/motivation for your project

Mention your research question

Data

  • What dataset(s) did you use? How was it obtained?
  • How many observations are there in the final dataset?
  • Include a table of variable description/operstionalisation.

Method

  • What methods do you use to answer your research question?
  • Provide justification for why it is the most suitable.

Preview of Findings

  • Describe the gist of your findings (save the details for the final paper!)
  • How are the findings/end product of the project deployed?
  • Explain the relevance of these findings/product.

Repository Overview

*Include a tree diagram that illustrates the repository structure

Dependencies

Explain any tools or packages that need to be installed to run this workflow.

Running Instructions

Provide step-by-step instructions that have to be followed to run this workflow.

About

This project is set up as part of the Master's course Data Preparation & Workflow Management at the Department of Marketing, Tilburg University, the Netherlands.

The project is implemented by team < x > members: < insert member details>

About

course-dprep-classroom-spring-2025-team-project-reproducible-workflow-template created by GitHub Classroom

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