Lorenzo Pacchiardi

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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.
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! :tada:
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! :champagne:

selected publications

  1. arXiv
    Leaving the barn door open for Clever Hans: Simple features predict LLM benchmark answers
    Lorenzo Pacchiardi ,  Marko Tesic ,  Lucy G. Cheke ,  and  José Hernández-Orallo
    arXiv preprint arXiv:2410.11672, 2024
  2. arXiv
    100 instances is all you need: predicting the success of a new LLM on unseen data by testing on a few instances
    Lorenzo Pacchiardi ,  Lucy G. Cheke ,  and  José Hernández-Orallo
    arXiv preprint arXiv:2409.03563, 2024
  3. ICLR 2024
    How to Catch an AI Liar: Lie Detection in Black-Box LLMs by Asking Unrelated Questions
    Lorenzo Pacchiardi ,  Alex J Chan ,  Sören Mindermann ,  Ilan Moscovitz ,  Alexa Y Pan ,  Yarin Gal ,  Owain Evans ,  and  Jan Brauner
    The Twelfth International Conference on Learning Representations, 2024
  4. JMLR
    Probabilistic Forecasting with Generative Networks via Scoring Rule Minimization
    Lorenzo Pacchiardi ,  Rilwan Adewoyin ,  Peter Dueben ,  and  Ritabrata Dutta
    Journal of Machine Learning Research, 2024
  5. JMLR
    Score Matched Neural Exponential Families for Likelihood-Free Inference
    Lorenzo Pacchiardi ,  and  Ritabrata Dutta
    Journal of Machine Learning Research, 2022