The Data Science Chair at JMU Würzburg as a member of the Center for AI and 
Data Science (CAIDAS) offers two positions for doctoral researchers (m/w/d) in 
the area of machine learning and natural language processing.

The first position will work within the BigData@Geo2 project, the followup of 
the successful BigData@Geo project [1], that provides machine-learning-aided 
decision support for agricultural measures in the light of regional climate 
change. This includes prediction of crop yields and enabling proactive 
agricultural strategies.

The second position is part of the LitBERT project, which focuses on developing 
machine learning solutions to support and improve the modelling and analysis of 
characters in literary texts.

The BigData@Geo2 position will allow you to work on data from many small 
companies in the form of historical yearbooks, as well as general information 
from local newspapers or social media discussing local climate events. Using 
this data, you will develop new methods for discovering climate, ecosystem and 
agriculturally relevant events that assist in the overarching goal of 
BigData@Geo2 of assessing the economic viability of agricultural decisions, 
such as which crops to grow in future seasons, or predicting crop yield.

In the LitBERT position, you will work with a large collection of German 
literary texts such as narratives and novels to develop improved language 
models that provide a foundation for comprehensive analysis of literary 
characters. This includes automatic extraction of character traits, 
categorizing their types, and analysis of the complex evolution of 
relationships between characters in literary texts. The work focuses on using 
and improving state-of-the-art language models to effectively address the 
unique challenges posed by literary texts.

Payment is at the level of E13 according to the German federal wage agreement 
scheme (TV-L). Candidates are expected to have a strong background in computer 
science and mathematics, with a specialization in machine learning and interest 
in the topic of one of the positions. Prior knowledge in the field of deep 
learning in one of the subject areas is advantageous.

Please send your application (letter of motivation, curriculum vitae, academic 
records) at your earliest convenience, but no later than November 30th, 2023, 
to Prof. Dr. Andreas Hotho ([email protected]). You are welcome to 
contact us on the same address for additional details.

[1] https://bigdata-at-geo.eu/
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