FTMBA2021_I The Analytics Edge
In this course, we shall explore techniques for descriptive, predictive and prescriptive analytics. This will enable better decision making in the presence of big data.
Kurs ID
MBA SCM641, MBA SCM641 SI
Art des Kurses
FT MBA LV
Wochenstunden
2,0
Semester
HS 2020
Vortragssprache
Englisch
Vortragende/r
Prof. Dr. Stefan Spinler
Bitte beachten Sie, dass AustauschstudentInnen im BSc-Programm der WHU eine höhere Anzahl an Credits erwerben als hier aufgeführt. Für weitere Informationen wenden Sie sich bitte direkt an das [International Relations Office].
Kursinhalt
Today’s business world is characterized by an unprecedented growth of data, by 2020 we will experience a 300‐fold increase from 2005. This data comes in a broad variety of forms: 420 million wearable health monitors are currently in use, more than 4 billion hours of video are watched on YouTube each month and
30 billion pieces of content are shared on Facebook every month. A lot of the data is analyzed in real time: modern cars have about 100 sensors and the NYSE captures 1 TB of trade information during each trading session. However, 1 in 3 business leaders don’t trust the information they use to make decisions and about
27% of respondents in one survey were unsure of how much of their data was inaccurate. 4.4 million IT jobs have been created globally to support big data. AlphaGo has recently beaten the reigning (human) Go champion.
In this big data landscape, it becomes imperative for managers to understand what tools are available to gather data, to subsequently aggregate data into information and how to use this information to make better decisions. To this end, we discuss and apply approaches to predictive analytics, which refers to the ability of
discerning patterns from past and current data to prediction of future events. Examples include healthcareapplications such as heart attack pattern detection and financial applications such as fraud detection in regards to credit card usage. An important step in the data analytics journey is the communication of results
which can be achieved via appropriate visualization and reporting.
The primary focus of this course is to gain an understanding of the potential of statistical and machine learning approaches in business. Managers should have trust in their analytics teams that they come up with solutions that entail a competitive edge – such trust will be bolstered by having first‐hand experience with analytical tools and the decisions based on them.
30 billion pieces of content are shared on Facebook every month. A lot of the data is analyzed in real time: modern cars have about 100 sensors and the NYSE captures 1 TB of trade information during each trading session. However, 1 in 3 business leaders don’t trust the information they use to make decisions and about
27% of respondents in one survey were unsure of how much of their data was inaccurate. 4.4 million IT jobs have been created globally to support big data. AlphaGo has recently beaten the reigning (human) Go champion.
In this big data landscape, it becomes imperative for managers to understand what tools are available to gather data, to subsequently aggregate data into information and how to use this information to make better decisions. To this end, we discuss and apply approaches to predictive analytics, which refers to the ability of
discerning patterns from past and current data to prediction of future events. Examples include healthcareapplications such as heart attack pattern detection and financial applications such as fraud detection in regards to credit card usage. An important step in the data analytics journey is the communication of results
which can be achieved via appropriate visualization and reporting.
The primary focus of this course is to gain an understanding of the potential of statistical and machine learning approaches in business. Managers should have trust in their analytics teams that they come up with solutions that entail a competitive edge – such trust will be bolstered by having first‐hand experience with analytical tools and the decisions based on them.
Termine
Date | Time |
---|---|
Thursday, 29.10.2020 | 08:45 - 16:00 |
Friday, 30.10.2020 | 08:45 - 16:00 |
Wednesday, 25.11.2020 | 08:45 - 16:00 |
Thursday, 10.12.2020 | 23:50 - 23:55 |
Lernerfolge
literacy in data modelling and machine learning techniques
Literatur
D. Bertsimas, A.K. O’Hair, W. R. Pulleyblank: The analytics edge. Dynamic ideas, 2016.
Lernmethoden
projects related to real data sets, exercises, guest lectures
Art der Prüfung
Each session will contain short exercises related to descriptive and predictive analytics. There is one intermediate assignment which counts 40%. To be done in teams.
The final project to be done on an individual basis, will allow students to work with a range of data sets to explore various techniques for model building; model analysis, interpretation of results and recommendations. The final project will make up 60% of the grade. The project’s report is to be delivered in R markdown.
Voraussetzungen
none
Umfang
60