Sebastian M Schmon

Durham University

Names

How do you usually write your name as author of a paper? Also add any other names you have authored papers under.

Sebastian M Schmon (Preferred)
,
Sebastian M. Schmon

Emails

Enter email addresses associated with all of your current and historical institutional affiliations, as well as all your previous publications, and the Toronto Paper Matching System. This information is crucial for deduplicating users, and ensuring you see your reviewing assignments.

****@gmail.com
,
****@improbable.io
,
****@durham.ac.uk

Education & Career History

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Assistant Professor
Durham University (dur.ac.uk)
2021Present
 
Researcher
Improbable (improbable.io)
2020Present
 
PhD student
University of Oxford (ox.ac.uk)
20152020
 
MS student
Humboldt Universität Berlin (hu-berlin.de)
20132015
 
Undergrad student
Freie Universität Berlin (fu-berlin.de)
20092013
 

Advisors, Relations & Conflicts

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Coauthor
Stefan Groha
****@dfci.harvard.edu
2020Present
 
Coauthor
Alexander Gusev
****@dfci.harvard.edu
2020Present
 
Coauthor
Jeremias Knoblauch
****@ucl.ac.uk
2020Present
 
Coauthor
Jack Fitzsimons
****@gmail.com
2019Present
 
Coauthor
Siddarth Narayanaswamy
****@robots.ox.ac.uk
2019Present
 
Coauthor
Tom Rainforth
****@stats.ox.ac.uk
2019Present
 
Coauthor
Tom Joy
****@robots.ox.ac.uk
2019Present
 
Coauthor
Philip Torr
****@eng.ox.ac.uk
2019Present
 
Coauthor
Michael Pitt
****@kcl.ac.uk
2018Present
 
PhD Advisor
Arnaud Doucet
****@stats.ox.ac.uk
2015Present
 
PhD Advisor
George Deligiannidis
****@stats.ox.ac.uk
2015Present
 

Expertise

For each line, enter comma-separated keyphrases representing an intersection of your interests. Think of each line as a query for papers in which you would have expertise and interest. For example: deep learning, RNNs, dependency parsing

large language models
2021Present
 
neural ordinary differential equation
2020Present
 
survival analysis
2020Present
 
diffusion models
2020Present
 
deep generative models
2019Present
 
generative AI
2018Present
 
markov chain monte carlo
2015Present
 
time series analysis
2013Present
 
bayesian statistics
2013Present