Logo Crossweb

Log in

No account yet? Forgot password

Przypomnij hasło

close Wypełnij formularz.
Na Twój adres e-mail zostanie wysłane link umożliwiający zmianę hasła.
Send

[AI Alliance Materials] Discrete State-Space Diffusion and Flow Models

ai-alliance-materials-discrete-state-space-diffusion-and-flow-models-maj-2025
Event:
[AI Alliance Materials] Discrete State-Space Diffusion and Flow Models
Event type:
Meetup
Category:
IT
Topic:
Date:
15.05.2025 (thursday)
Time:
16:00
Language:
English
Price:
Free
City:
Registration:
Strona www:
Description:

Unlocking Guidance for Discrete State-Space Diffusion and Flow Models

Many scientific tasks, such as protein engineering and small-molecule drug discovery, can be formulated as conditional generation problems over discrete spaces. This talk introduces a new approach that enables tractable classifier and classifier-free guidance on discrete state-space diffusion and flow models. I will demonstrate how this method can be applied for conditional generation tasks in protein sequence, small-molecule graph, and DNA sequence design.


Speaker

Hunter Nisanoff recently graduated from his PhD in Computational Biology from UC Berkeley where he was advised by Professor Jennifer Listgarten. His research focuses on machine learning methods for protein engineering. Prior to his PhD, Hunter worked at D. E. Shaw Research developing machine learning and simulation-based methods for small-molecule drug discovery.


About the AI Alliance

The AI Alliance is an international community of researchers, developers and organizational leaders committed to support and enhance open innovation across the AI technology landscape to accelerate progress, improve safety, security and trust in AI, and maximize benefits to people and society everywhere. Members of the AI Alliance believe that open innovation is essential to develop and achieve safe and responsible AI that benefit society rather than benefit a select few big players.

Similar events

Profile of employers