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Institute for Data Science and Artificial Intelligence

Bayesian inference

Bayesian inference is a method of statistical inference in which Bayes' theorem is used to update the probability for a hypothesis as more evidenceor information becomes available (Wikipedia).

If you're looking for a data scientist to work with on a research project or someone to discuss potential methodologies with for a research problem, then you search for the topic you need or alternatively use the A-Z button to search the full list of data scientists.

Name  Expertise 

Tinkle Chugh

Optimisation, Machine learning, Bayesian inference, Statistical modelling, Frequentist inference
Saptarshi Das Optimisation, Physical Modelling, Machine Learning, Bayesian Inference, Time Series Analysis, Statistical Modelling, Emulation/Uncertainty Quantification, Frequentist Inference, High Performance Computing, Signal Processing, Control Systems, Image Processing
Samuel Engle Causality, Bayesian Inference, Statistical Modelling, Frequentist Inference, Decision Theory
Raphaëlle Haywood Physical Modelling, Machine Learning, Bayesian Inference, Time Series Analysis
Bernard Nortier Optimisation, Machine learning, Bayesian inference, Time series analysis, Statistical modelling, Emulation / uncertainty quantification, Frequentist inference
David Richards Optimisation, Causality, Physical Modelling, Software Engineering, Machine Learning, Bayesian Inference, Time Series Analysis, Frequentist Inference, High Performance Computing, Statistical Modelling
Tj McKinley Bayesian inference, Statistical modelling
Stefan Siegert Spatial statistics, Physical modelling, Software engineering, Machine learning, Bayesian inference, Time series analysis, Statistical modelling, Emulation / uncertainty quantification, Frequentist inference
Danny Williamson Decision theory, Optimisation, Machine learning, Bayesian inference, Statistical modelling, Emulation / uncertainty quantification