Positions in Econometrics

The International Society for Bayesian Analysis
Glasgow
1 year ago
Applications closed

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Data Scientist

Junior Data Scientist / Data Analyst

Artificial Intelligence, Lakenheath, The Undergraduate School - Adjunct Faculty

Data Scientist

Data Scientist

Weather Data Scientist d/f/m

We have multiple positions in Econometrics at the University of Glasgow, Scotland, at the level of Lecturer (Assistant Professor). Our primary focus is on candidates with expertise in machine learning inference, computational statistics, and natural language processing (text analytics). We welcome applications from PhD students in Bayesian statistics with interest in business/economic/financial data.

We will be holding informal interviews in the European Economic Association job market meeting in Rotterdam (18-19 December), and flyouts will be mid to late January. For informal inquiries please contact .

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