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Post-Doctoral Position (f/m) in Data Science and Machine Learning
Published(335 days ago)
Air / Frankfurt School of Finance and ManagementFrankfurt
Air, an InsurTech Company, in cooperation with the Frankfurt School of Finance and Management, one of Europe's leading business schools, seeks qualified applications for a
Post-Doctoral Position in Data Science and Machine Learning
offering €60,000 gross per annum. The length of the contract will be of one year, but it can be extended for an additional year upon satisfactory review.
The successful candidate will have a PhD in Computer Science or a related field and a clear mastery of quantitative research methods, such as numerical modelling, machine learning, and big data. He or she will be involved in the development of an automotive insurance platform, working on the analysis of geolocalized time series of customer driving data. The focus will be on identifying behavioral patterns and designing interventions to encourage safer driving.
Work will start at the candidate‘s earliest convenience in the Management Department of the Frankfurt School of Finance and Management. At the School, the candidate will closely collaborate with Prof. Giustiziero and Prof. Klingebiel (Strategy and Behavioral Economics) as well as with Prof. Elsaesser and Prof. Nagler (Centre for Human and Machine Intelligence and Deep Dynamics Group).
Review of applications will begin on December 1, 2018. Applications will be accepted until the position is filled. Please submit your CV, sample papers, and the contact information of at least two references by email to Roberta Addeo at email@example.com.
For further information, please visit myair.io and fs.de. Air and the Frankfurt School of Finance and Management are equal-opportunities employers and encourage applications from diverse backgrounds