Message boards : Rosetta@home Science : A diffusion model for protein design
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| ![View the profile of [VENETO] boboviz Profile](https://boinc.bakerlab.org/rosetta/img/head_20.png) [VENETO] boboviz Send message Joined: 1 Dec 05 Posts: 2124 Credit: 12,432,615 RAC: 1,727   | 
 A diffusion model for protein design A team led by Baker Lab scientists Joseph Watson, David Juergens, Nate Bennett, Brian Trippe, and Jason Yim has created a powerful new way to design proteins by combining structure prediction networks and generative diffusion models. The team demonstrated extremely high computational success and tested hundreds of A.I.-generated proteins in the lab, finding that many may be useful as medications, vaccines, or even new nanomaterials.The software tool DALL-E produces high-quality images that have never existed before using something called a diffusion model, which is a machine-learning algorithm that specializes in adding and removing noise. Diffusion models for image generation begin with grainy bits of static and gradually remove noise until a clear picture is formed. Additional pieces of software guide this de-noising process so that the new images end up matching what was asked for. | 
| ![View the profile of [VENETO] boboviz Profile](https://boinc.bakerlab.org/rosetta/img/head_20.png) [VENETO] boboviz Send message Joined: 1 Dec 05 Posts: 2124 Credit: 12,432,615 RAC: 1,727   | 
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            Rosetta@home Science : 
        A diffusion model for protein design
    
 
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