DSA Research Group
DSA Research Group
News
People
Business
Research
Jobs
PhD
MSc
DSSG
Contact
Latest News
A visit from German Chancellor Olaf Scholz
On March 18, 2022, German Chancellor Olaf Scholz visited the DFKI site in Kaiserslautern together with the Minister President of Rhineland-Palatinate, Malu Dreyer.
Sebastian Vollmer
18 Mar 2022
1 min read
Prof. Sebastian Vollmer at the Science and Technology Committee of the British House of Commons
On Wednesday the 19th of January, 2022, Prof Sebastian Vollmer was acting as a witness in an evidence session of the UK House of Commons Science and Technology Committee on reproducibility and research integrity
Raphael Sonabend
19 Jan 2022
1 min read
Neural Networks for Survival Analysis in R
I have received many questions about survival neural networks (‘survival networks’) in R, ranging from “is this even possible?” to “how do I install Python in R?” and “how can I tune these models?”. If you are an R user with an interest in survival networks then this is the article for you!
Raphael Sonabend
12 Oct 2021
10 min read
Twitter internship
Short account of Harry’s internship
Harrison Wilde
12 Oct 2021
2 min read
Machine Learning in Julia
MLJ (Machine Learning in Julia) is a toolbox written in Julia providing a common interface and meta-algorithms for selecting, tuning, evaluating, composing and comparing machine learning models written in Julia and other languages.
Sebastian Vollmer
7 Sep 2020
1 min read
Modelling COVID-19 exit strategies for policy makers in the United Kingdom
The potential of using less accurate tests as means of pandemic surveillance is missed, rather than providing reliable medical information about an individual. We investigate whether the additional information from non-diagnostic-quality mass testing can lead to the implementation of a quicker and lower risk exit strategy from lockdown.
27 May 2020
1 min read
Accelerating Markov Chain Monte Carlo
Speeding up MCMC for scalable Bayesian Inference.
16 Jun 2019
2 min read
Stein's method for Statistics and Machine Learning
Developing efficient Stein-based discrepancies for inference and assessment.
13 May 2018
1 min read
Cite
×