Institute of Data Analysis and Process Design (IDP)
We create value from data
We use advanced data-based methods to create innovative solutions for business and industry. We address real-life challenges with scientific methods and a strong commitment to practicability. We are the leading educator and partner of choice for applied data science and business engineering in Switzerland.
Research Groups

Advanced scientific tools for solutions in the financial industry

Health and Envrionmental Analytics
Health and Environmental Analytics
Analyzing data to derive interpretable results using statistical and machine learning techniques

Maintenance, Mobility, AI & Society
Leverage AI and advanced modeling for innovations in predictive maintenance, mobility solutions, and socially aligned systems

Generating insights, creating value and fostering innovation in business processes and services

Visual Intelligence and Applications
As visual data becomes one of the most abundant and complex sources of information, Visual Intelligence is a key pillar of modern data science — enabling new ways to analyze, model, and communicate through images, video, and immersive environments
For Students
Consulting Services
News
Team IDP
Publikationen
-
Weinauer, Marlene,
2017.
Analysis and forecasting of Austrian mortality data with methods of compositional data analysis.
-
Templ, Matthias,
2017.
Applied statistical disclosure control : methods and software.
In:
3rd International Conference on Computing, Mathematics and Statistics (iCMS2017), Langkawi, Malaysia, 7-8 November 2017.
-
Eisenberger, Daniel; Fink, Olga,
2017.
Assessment of maintenance strategies for railway vehicles using Petri-Nets[paper].
In:
20th EURO Working Group on Transportation Meeting (EWGT 2017), Budapest, Hungary, 4-6 September 2017.
Elsevier.
pp. 205-214.
Available from: https://doi.org/10.1016/j.trpro.2017.12.012
-
Osterrieder, Jörg; Strika, Martin; Lorenz, Julian,
2017.
Bitcoin and cryptocurrencies - not for the faint-hearted.
International Finance and Banking.
4(1), pp. 56-94.
Available from: https://doi.org/10.5296/ifb.v4i1.10451
-
Fink, Olga; Jenni, Lukas; Nguyen, Hong Son; Ponnudurai, Nirujan; Subbiah, Subanatarajan; Turrin, Simone,
2017.
Cluster analysis of condition monitoring data[paper].
In:
Risk, reliability and safety : innovating theory and practice.
26th European Safety and Reliability Conference (ESREL 2016), Glasgow, UK, 25-29 September 2016.
London:
Taylor & Francis.
pp. 1978-1985.