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Dear Colleagues, 

we would like to remind interested readers that the application deadline
for the Machine Learning Summer School is next Monday, 11 March 2013.
See the following re-post for details. Many thanks for your interest.
        
                    http://mlss.tuebingen.mpg.de
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                   MACHINE LEARNING SUMMER SCHOOL
at the Max Planck Institute for Intelligent Systems in Tübingen, Germany
                    26 August to 6 September 2013
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Overview
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The machine learning summer school provides graduate students and industry
professionals with an intense learning experience on the theory and 
applications of modern machine learning. Over the course of two weeks, 
a panel of internationally renowned experts of the field will offer
tutorials covering basic as well as advanced topics. 

Confirmed Speakers and Topics
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Yasemin Altun (Google) will speak on 
        Structured Output Prediction 

Christopher Bishop (Microsoft Research) will speak on
        Graphical Models

Léon Bottou (Microsoft Research) will speak on
        Multilayer Networks

Peter Dayan (Gatsby Computational Neuroscience Unit) will speak on
        Cognitive Learning

Zoubin Ghahramani (University of Cambridge) will speak on 
        Bayesian Inference

Ralf Herbrich (Amazon) will speak on 
        Distributed Machine Learning at Scale

Andreas Krause (ETH Zürich) will speak on
        Submodularity

Tom Minka (Microsoft Research) will teach a practical on
        Graphical Models

Joaquin Quiñonero-Candela (Facebook) will teach a practical on
        a topic to be announced

Stefan Schaal (Max Planck Institute for Intelligent Systems) will speak on
        Learning Robots

Matthias Seeger (École Polytechnique Fédérale de Lausanne) will speak on
        Sparse Models

Ingo Steinwart (University of Stuttgart) will speak on
        Learning Theory

YeeWhye Teh (University of Oxford) will speak on 
        Bayesian Nonparametrics

Marc Toussaint (University of Stuttgart) will speak on
        Reinforcement Learning

Stephen Wright (University of Wisconsin-Madison) will speak on 
        Optimization    

Practical Tutorials will, among others, be taught by 

Application process
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Applications are invited from graduate students, postdoctoral researchers
and industry professionals looking to use, or already using machine 
learning methods in their work. This includes researchers in applied 
fields as well as students of machine learning itself. Prior experience
is not strictly required, but helpful. A small number of travel stipends
will be available.

Applicants will be asked to submit a CV, a cover letter of up to 200 
words, and a short letter of recommendation from one referee of their
choice. We are also seeking to give participants a chance to discuss their
own work with their peers and the speakers. Each applicant is thus invited
to provide the title of a poster they would like to present at the school.


Important Dates
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* Monday 11 February 2013       application system opens
* Monday 11 March 2013          DEADLINE FOR APPLICATIONS
* Friday 12 April 2013          notification of acceptance

The school takes place from 

        Monday 26 August to Friday 6 September 2013

Organizers
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Philipp Hennig             Stefan Harmeling             Bernhard Schölkopf

inquiries should be directed to                  mlss2...@tuebingen.mpg.de

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