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Professor of Statistical Genetics
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Senior Postdoctoral Research Associate
I am broadly interested in theory-driven deep learning applications.
Currently I'm working on improving generative models, particularly diffusion models, under the manifold hypothesis.
I completed my PhD at the Faculty of Computer Science at the Technion focused on deep learning and statistical methods for high-resolution medical images and molecular measurements. I then worked as a postdoctoral research assistant where I found myself drawn towards generative models due their strong theoretical backing. This led me to develop a new class of generative models -- Generative Topological Networks -- which I will continue to explore alongside other generative approaches.
For the most up-to-date information, best to visit: https://alonalj.github.io/ or find me on linkedin.
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Research Software Engineer
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Postdoctoral Researcher
I am an ERC-funded postdoctoral researcher in the Department of Statistics at the University of Oxford, working with Prof. Pier Palamara. I recently completed my DPhil in Genomic Medicine and Statistics, jointly supervised by Prof. Simon Myers and Prof. Pier Palamara. My research focuses on developing Bayesian methods for statistical and population genetics, with applications to ancestry decomposition and genome-wide association studies. Prior to this, I earned my bachelor’s and master’s degrees in Electrical Engineering from IIT Bombay, India.
Loya, H., Kalantzis, G., Cooper, F. et al. A scalable variational inference approach for increased mixed-model association power. Nat Genet 57, 461–468 (2025). https://doi.org/10.1038/s41588-024-02044-7
Dupont, E., Loya, H., Alizadeh, M., Goliński, A., Teh, Y. W., & Doucet, A. (2022). Coin++: Neural compression across modalities. arXiv preprint
https://arxiv.org/abs/2201.12904
Bezeljak, U., Loya, H., Kaczmarek, B., Saunders, T. E., & Loose, M. (2020). Stochastic activation and bistability in a Rab GTPase regulatory network. Proceedings of the National Academy of Sciences, 117(12), 6540-6549.
Loya, H., Poduval, P., Anand, D., Kumar, N., & Sethi, A. (2020). Uncertainty estimation in cancer survival prediction. arXiv preprint
https://arxiv.org/abs/2003.08573
Email: hrushikesh.loya@stats.ox.ac.uk
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Pioneer Fellow
I make Machine Learning, Causal Inference & Bayesian Optimisation work in the real world.
2017 BA Philosophy, Politics, Economics @ University of Exeter, UK
2019 PhD Computer Science (incomplete), graduated MSc Computer Science @ Syracuse University, USA
2022 Spotify Research UK (during PhD at UCL)
2024 PhD Foundational Artificial Intelligence (Google Deepmind Scholar, £125k) @ University College London, UK
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Email: jakob.zeitler [-at-] ox.ac.uk
Office: Stats 1.07 & Big Data Institute, Floor 0
Office: Stats 1.07 & Big Data Institute, Floor 0
Project Manager
Working between both the Department of Statistics and Mathematical Institute on projects contributing to the Research Excellence Framework submission.
Leading and supporting on projects to troubleshoot and improve PSS operations and workflows.
Email: tessa.bonilha@maths.ox.ac.uk
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