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Luca Ambrogioni
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Luca Ambrogioni
@LucaAmb
Ass. prof. of Machine Learning. PI of Generative Memory Lab (@DondersInst). Generative diffusion and statistical physics. AI realist.
Nijmegen, Nederland
Joined July 2011
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    Luca Ambrogioni
    @LucaAmb
    May 11
    1/?) As promised to Sander Dieleman (@sedielem), we’re finally excited to share: Towards Closing the Autoregressive Gap in Language Modeling via Entropy-Gated Continuous Bitstream Diffusion We show that continuous diffusion can achieve very strong language modeling performance
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    Luca Ambrogioni
    @LucaAmb
    Apr 26, 2024
    Diffusion models can be reformulated as equilibrium thermodynamical systems.
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    119K
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    Luca Ambrogioni
    @LucaAmb
    Nov 22, 2020
    There are a handful of books that I re-read periodically every year and always learn something new. This is one of them. I highly recommend this to all ML/AI people who want to understand what statistics is.
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    Luca Ambrogioni
    @LucaAmb
    Mar 15, 2022
    Deep learning works, symbolic models don't. It's that simple. If you want more symbolic models, then work hard and make them work. That's what NN people did, even when nobody believed in their research
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    Luca Ambrogioni
    @LucaAmb
    Sep 1, 2025
    1/2) I am very happy to finally share something I have been working on and off for the past year: "The Information Dynamics of Generative Diffusion" This paper connects the entropy production, divergence of vector fields and spontaneous symmetry breaking in a unified framework
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    Luca Ambrogioni
    @LucaAmb
    Oct 2, 2023
    Modern Hopfield networks are related to transformers, but did you know that they are mathematically equivalent to generative diffusion models? Happy to share: "In search of dispersed memories: Generative diffusion models are associative memory networks" arxiv.org/abs/2309.17290
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    132K
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    Luca Ambrogioni
    @LucaAmb
    Oct 27, 2023
    Happy to share: "The statistical thermodynamics of generative diffusion models" arxiv.org/abs/2310.17467 I describe diff. models in terms of Boltzmann distributions, order parameters and equations of state. hase transitions and critical scaling in the generative process!
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    88K
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    Luca Ambrogioni
    @LucaAmb
    Jun 24, 2024
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    Anthony Bonato
    @Anthony_Bonato
    Jun 23, 2024
    What one thing in mathematics blew your mind when you first learned it?
    53K
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    Luca Ambrogioni
    @LucaAmb
    Nov 27, 2024
    FLow matching in a nutshell.
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    Luca Ambrogioni
    @LucaAmb
    Sep 26, 2025
    1/2) Have you have noticed that the forward process in a diffusion model looks a lot like the reparameterization trick in VAEs? It turns out that there is a deep connection! Curious? Watch our new vedio in the Generative Memory Lab channels (link below)
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    Luca Ambrogioni
    @LucaAmb
    Apr 29, 2025
    1/4) I am very happy to share our latest work on the information theory of generative diffusion: "Entropic Time Schedulers for Generative Diffusion Models" We find that the conditional entropy offers a natural data-dependent notion of time.
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    Luca Ambrogioni
    @LucaAmb
    May 20, 2024
    Did you know that the latent geometry of generative diffusion models can be extracted from the spectrum of eigenvalues of its Jacobi matrices? Paper: arxiv.org/pdf/2212.12611
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    Luca Ambrogioni
    @LucaAmb
    Oct 9, 2024
    The work of John Hopfield is 100% statistical physics. Calling him a 'computer scientist' is just ignorance.
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    Gabriel Peyré
    @gabrielpeyre
    Jul 11, 2023
    Hopfield networks are recurrent networks minimizing an Ising-type energy parameterized by its weights. Learning weights means encoding patterns of +1/-1 as local minimizers. en.wikipedia.org/wiki/Hopfield_…
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    Luca Ambrogioni
    @LucaAmb
    May 18, 2024
    Memorization is generative diffusion models can be seen as a disordered phase transition!
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    57K

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