(Apologies for cross posting. This project also has open PhD positions.)

Postdoctoral fellow open in the "Democratising Big Machine Learning" project in 
the Department of Computing and Information Systems at the University of 
Melbourne, Australia.

The project is on machine learning and systems for data preparation. Topics 
span probabilistic databases, data integration/entity resolution, adaptive 
importance sampling for crowd sourcing, ML workflows - it is expected the 
candidate would work in one of these areas or related, but likely not all.

Ideal candidates would have strong background in some of: Bayesian inference, 
probabilistic graphical models, optimisation, linear algebra, mathematical 
statistics, experimental design, databases (the probabilistic kind and 
otherwise), cloud platforms like EC2/Azure. A strong mathematical background is 
a must. The project involves systems building; a major activity will be 
publishing.

The  project's sole-CI Ben Rubinstein is a junior faculty member in the 
department (Assistant Professor equivalent) with a PhD from Berkeley and 3yrs 
as Researcher at the Microsoft Research Silicon Valley lab. He has worked in 
many of the major industry research labs, and has served on the PCs of many of 
the major ML, AI, DB conferences. The group has strong connections and support 
from industry, specifically for this project (with significant time on Azure). 
The project is fully funded by the ARC (Australia's NSF). The broader group at 
Melbourne is very strong, eg hosting both SIGMOD and CIKM this year, and with 
ties with an exceptional mathematical statistics group at Melbourne lead by 
Peter Hall. The University of Melbourne is ranked as the top in Australia, and 
among the top 30-40 institutions internationally, while the city of Melbourne 
is consistently ranked among the top handful of most liveable cities for its 
exceptional quality of life.

The position is funded for 1 year with a competitive salary of $80k AUD plus 
17% superannuation.

For more:
Email Ben Rubinstein 
[email protected]<mailto:[email protected]>
Web http://bipr.net/join

_______________________________________________
uai mailing list
[email protected]
https://secure.engr.oregonstate.edu/mailman/listinfo/uai

Reply via email to