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Great work by Manuel Ruiz-Botella. Congratulations!!
102 organic chemists shown real vs AI-generated molecules. Couldn't tell them apart — 62% accuracy ≈ random. That's CoCoGraph: graph diffusion with 100% chemical validity, 534K params vs 4.6M for comparable models. Constraints in the math, not the model. www.nature.com/articles/s42...
Because chemical validity is satisfied by construction, #CoCoGraph needs much fewer parameters than the state of the art and it can focus on learning subtle chemical patterns, leading to generation of molecules that are more realistic than existing models
Can we design generative #AI models capable of creating new molecules, much in the same way that other generative models generate text or images? In a new paper in @natmachintell.nature.com, we introduce #CoCoGraph, which does just that Online: dx.doi.org/10.1038/s422... PDF: rdcu.be/fgNIA
Can we design generative #AI models capable of creating new molecules, much in the same way that other generative models generate text or images? In a new paper in @natmachintell.nature.com, we introduce #CoCoGraph, which does just that Online: dx.doi.org/10.1038/s422... PDF: rdcu.be/fgNIA
#CoCoGraph is a collaborative constrained graph diffusion model for the generation of realistic synthetic molecules. Unlike previous generative models for molecules, we use ideas from graph theory to guarantee that all generated molecules are chemically valid
A new AI tool can generate millions of chemically valid molecules, offering a faster and more efficient approach to exploring potential compounds for drug development and materials science. doi.org/hb2mwd
To verify this, we implemented and analyzed the results of a Turing-like test, where experts were asked to distinguish between real and generated molecules
A collaborative constrained graph diffusion model for the generation of realistic synthetic molecules [new] ...that ensures generated novel molecules are valid and highly realistic.
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ChemEmbed: a deep learning framework for metabolite identification using enhanced MS/MS data and multidimensional molecular embeddings url: academic.oup.com/bib/article/...
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SEES Lab
SEES Lab
SEES Lab
SEES Lab
Serge Parel
SEES Lab
SEES Lab
Science X / Phys.org
AI x Bio Discovery
Oscar Yanes
The collaborative constrained graph diffusion model CoCoGraph generates novel molecules that are guaranteed to be valid and more realistic than state-of-the-art outputs, while achieving faster perform...
www.nature.com
A collaborative constrained graph diffusion model for the generation of realistic synthetic molecules - Nature Machine Intelligence