Novel Markov chain Monte Carlo algorithms for Bayesian inference
The research project “Novel Markov chain Monte Carlo algorithms for Bayesian inference” is an SNSF funded two-month scientific visit by Prof. Ziheng Yang (University College London, UK) to the Bioinformatics Centre of Institute for Computational sciences at ZHAW Wädenswil.
Beschreibung
This project focuses on developing a Rust-language library (crate) that includes an efficient MCMC toolkit for implementing Bayesian phylogenetics methods. Currently, the majority state-of-the-art methods use Bayesian inference but there are still no software packages available in Rust despite its exceptional performance characteristics. Thus, the main objective of this exchange visit is to implement (1) the new ultra-efficient algorithms in the program BPP (by Ziheng Yang), and (2) similar novel MCMC algorithms in Rust as part of the new phylo Rust library crate (by Julia Pecerska). Both implementations are then tested concurrently and in close collaboration.
Eckdaten
Projektleitung
Co-Projektleitung
Prof. Dr. Ziheng Yang (University College London)
Projektteam
Projektpartner
University College London
Projektstatus
abgeschlossen, 03/2025 - 05/2025
Institut/Zentrum
Institut für Computational Life Sciences (ICLS)
Drittmittelgeber
SNF Scientific Exchanges
Projektvolumen
6'500 CHF