Lorenzo Pacchiardi
Research Associate, University of Cambridge
I am a Research Associate at the Leverhulme Centre for the Future of Intelligence at the University of Cambridge. I lead a research project (funded by Open Philanthropy) on developing a benchmark for measuring the ability of LLMs to perform data science tasks. I am more broadly interested in predictability and cognitive-oriented evaluation of AI systems, and I closely collaborate with Prof José Hernández-Orallo and Dr Lucy Cheke.
I previously worked on detecting lying in large language models with Dr Owain Evans and on technical standards for AI for the EU AI Act at the Future of Life Institute. I am deeply interested in AI policy (particularly at the EU level).
I obtained a PhD in Statistics and Machine Learning at Oxford, during which I worked on Bayesian simulation-based inference, generative models and probabilistic forecasting (with applications to meteorology). My supervisors were Prof. Ritabrata Dutta (Uni. Warwick) and Prof. Geoff Nicholls (Uni. Oxford).
Before my PhD studies, I obtained a Bachelor’s degree in Physical Engineering from Politecnico di Torino (Italy) and an MSc in Physics of Complex Systems from Politecnico di Torino and Université Paris-Sud, France. I carried out my MSc thesis at LightOn, a machine learning startup in Paris.
news
Oct 15, 2024 | We have two new preprints on arXiv! One on predicting the performance of LLMs on individual instances, the other one on predicting the answers of LLM benchmarks from simple features. |
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Oct 01, 2024 | I have obtained a grant from Open Philanthropy on building a benchmark for measuring the ability of LLMs to perform data science tasks! 🤓 📊 |
Sep 21, 2024 | Our paper Generalised Bayesian Likelihood-Free Inference (on which I worked during my PhD studies) is now published at the Electronic Journal of Statistics! |
Apr 17, 2024 | We’ve launched academicjobsitaly.com, a portal to search academic jobs in Italy, boasting automated notifications for new openings! 🇮🇹 |
Mar 05, 2024 | Our paper introducing a method to train generative networks for probabilistic forecasting using scoring rules has been published in Journal of Machine Learning Research! |