Data Science for Managers (Start May) - Data Science for Managers
Participation Prerequisites
none
Course Content
With the dramatically increased use of data science in business there comes an even higher increased need for managers with knowledge of the fundamentals of data science to make effective decisions: McKinsey estimated that about 10 managers with these skills will be needed for every data scientist (because leverage from a data science team can be gotten in multiple areas of the business).
This course seeks to impart this knowledge. Specifically, the objective is to convey an understanding of data science sufficient to become a critical consumer of data science solutions. You will acquire the skills needed to ask the right questions when consultants are proposing data science projects, and you will be able to communicate better with internal data science teams as you will have an understanding of how data scientists work. The aim is not to train you to become a data scientist, but to work with them as a manager.
The following concepts are covered:
- Introduction to the Cross-Industry Standard Process for Data Mining: from business understanding over data understanding, data preparation, modelling, evaluation to deployment.
- Data types and why this matters
- Data sampling and partitioning
- Conceptual understanding of key machine learning models for predictive analytics (decision trees, linear classifiers, …)
- What is a good model? Evaluation and visualisation of model performance
- Data Science and business strategy: assessing data science project proposals, working with data scientists
- Generative AI, like ChatGPT, and its impact on data science project management
- Visualization concepts, interactive maps and dashboards: theory and practice using Tableau
We will use an innovate interactive video-based role play on the basis of a case study based on real-life data to train interaction with data scientists and interpretation of the analyst's results.
Intended Learning Outcomes and Competencies
ability to effectively collaborate with data scientists and to assess data science projects
Instruction Type
Online only. Course runs asynchronously. Live feedback sessions are offered.
Form of Examination
The first individual assignment (on assessing a data science plan) counts for 50% of the grade.
Moodle quizzes at the end of each week (10%)
A final individual assignment (on dashboard design) counts for 40% of the grade.
Literature
F. Provost and T. Fawcett. Data Science for Business. O'Reilly, 2013
K. Dubovikov. Managing Data Science. Packt, 2019
Lecturers
Indicative Student Workload
| Workload per week (approx.18.5) | 73 h |
| Examination | 2 h |