Bite-size Case Study

AfterWork: optimization through data analytics

Published on November 29, 2022 Originally recorded 2022   8 min
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0:04
AfterWork is a training provider for data courses and we developed an eight-week part-time Data Science Program for working professionals. When we started recruiting the first three cohorts, we didn't have any guidelines to use for optimizing the recruitment pipeline. Instead, we simply used data on marketing channels to decide the marketing strategies to undertake. While this approach was somewhat satisfactory, it didn't help us to exhaustively solve the business problem at hand. As we'll get to see when we conclude this talk, upon the adoption of Crisp DM, the increase in revenue for the successful cohorts increased by at least 25 percent. Our main goal was to optimize the student recruitment pipeline and in the process, maximize student engagement and increase revenue through a data analytics workflow that comprises five stages: that's business understanding, data understanding, data preparation, data analysis, and data presentation.
1:13
Going through the first stage of the data analytics workflow derived from Crisp DM, we were required to first define the business problem, which was to optimize the student recruitment pipeline and, in the process, maximize student engagement and increase revenue. Secondly, we are required to translate the business problem into a data analytics problem, allowing us to solve the business problem directly by solving the right data analytics problem. There are many data analytics problems that could have been solved, however, we opted to solve a data analytics problem that required us to minimize operational costs and increase student enrollment. The other key consideration for the business understanding stage was defining the metrics of success, which we would use at the end of the project to evaluate whether we had solved for our goal. If we were able to determine the optimal values for the expense variables using linear programming and also determine their relationships in students demographics data and curriculum data, then it would mean that we had solved for the data analytics problem and as a result, so for the business problem. The last consideration at this stage was to come up with a project plan in the form of a work plan that outlined the duration, the resources and tools required to complete the project. The project plan ensured that we did not overlook or miss out on key project requirements.
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AfterWork: optimization through data analytics

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