
My PhD thesis "Modelling Cross-lingual Transfer For Semantic Parsing" is finally submitted! 🎉🎉🎉 #NLProc
CDT in Data Science
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@EdiDataScience
EPSRC Centre for Doctoral Training in Data Science. Training PhDs in machine learning, databases, stats+opt, & analysis of unstructured data at Edinburgh Uni

My PhD thesis "Modelling Cross-lingual Transfer For Semantic Parsing" is finally submitted! 🎉🎉🎉 #NLProc

Excited to be in 🎊New Orleans🎊 this week for #NeurIPS2023! Ping me to chat Bayesian optimisation, transfer learning or ML and climate. Or if you know any good runs nearby! And if you're interested in the above topics you should stop by our poster on Saturday!






Finding yourself repeatedly training your ML model because you’ve collected more data? Not sure what to do with the hyperparameters? We investigated for you! Check out the paper arxiv.org/abs/2306.16916 with the wonderful Huibin Shen, @FrancoisAubet, David Salinas and @kleiaaro




Is domain adaptation ready for the use of automatic machine learning methods? I’m presenting our paper “Better Practices for Domain Adaptation” in the @automl_conf in poster sessions today 16:00 and tomorrow 10:45, and giving a best paper talk today at 17:30! #AutoML2023

Meta-Calibration: Learning of Model Calibration Using Differentiable Expected Calibration Error Ondrej Bohdal, Yongxin Yang, Timothy Hospedales. Action editor: Yingzhen Li. openreview.net/forum?id=R2hUu… #calibration #prediction #optimise








📢✨ New journal publication alert! ✨📢 @OBohdal, @tmh31 , Phil @OxfordTVG , and I @FazlBarez have dissected a crucial issue: lack of #AIFairness. Our analysis reveals how unfair AI can fuel social stress and unrest over time. 🧵 Here are the main insights: [1/4]



Hello from ICML'23! We will be presenting our joint work with @OBohdal, @tmh31, @mrd_rodrigues: Impact of Noise on Calibration and Generalisation of Neural Networks at the Spurious Correlations, Invariance, and Stability Workshop: arxiv.org/abs/2306.17630

