DeepMind's AlphaFold 2 Explained! AI Breakthrough in Protein Folding! What we know (& what we don't)
Yannic Kilcher Yannic Kilcher
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 Published On Dec 1, 2020

#deepmind #biology #ai

This is Biology's AlexNet moment! DeepMind solves a 50-year old problem in Protein Folding Prediction. AlphaFold 2 improves over DeepMind's 2018 AlphaFold system with a new architecture and massively outperforms all competition. In this Video, we take a look at how AlphaFold 1 works and what we can gather about AlphaFold 2 from the little information that's out there.

OUTLINE:
0:00 - Intro & Overview
3:10 - Proteins & Protein Folding
14:20 - AlphaFold 1 Overview
18:20 - Optimizing a differentiable geometric model at inference
25:40 - Learning the Spatial Graph Distance Matrix
31:20 - Multiple Sequence Alignment of Evolutionarily Similar Sequences
39:40 - Distance Matrix Output Results
43:45 - Guessing AlphaFold 2 (it's Transformers)
53:30 - Conclusion & Comments

AlphaFold 2 Blog: https://deepmind.com/blog/article/alp...
AlphaFold 1 Blog: https://deepmind.com/blog/article/Alp...
AlphaFold 1 Paper: https://www.nature.com/articles/s4158...
MSA Reference: https://arxiv.org/abs/1211.1281
CASP14 Challenge: https://predictioncenter.org/casp14/i...
CASP14 Result Bar Chart: https://www.predictioncenter.org/casp...

Paper Title: High Accuracy Protein Structure Prediction Using Deep Learning

Abstract:
Proteins are essential to life, supporting practically all its functions. They are large complex molecules, made up of chains of amino acids, and what a protein does largely depends on its unique 3D structure. Figuring out what shapes proteins fold into is known as the “protein folding problem”, and has stood as a grand challenge in biology for the past 50 years. In a major scientific advance, the latest version of our AI system AlphaFold has been recognised as a solution to this grand challenge by the organisers of the biennial Critical Assessment of protein Structure Prediction (CASP). This breakthrough demonstrates the impact AI can have on scientific discovery and its potential to dramatically accelerate progress in some of the most fundamental fields that explain and shape our world.

Authors: John Jumper, Richard Evans, Alexander Pritzel, Tim Green, Michael Figurnov, Kathryn Tunyasuvunakool, Olaf Ronneberger, Russ Bates, Augustin Žídek, Alex Bridgland, Clemens Meyer, Simon A A Kohl, Anna Potapenko, Andrew J Ballard, Andrew Cowie, Bernardino Romera-Paredes, Stanislav Nikolov, Rishub Jain, Jonas Adler, Trevor Back, Stig Petersen, David Reiman, Martin Steinegger, Michalina Pacholska, David Silver, Oriol Vinyals, Andrew W Senior, Koray Kavukcuoglu, Pushmeet Kohli, Demis Hassabis.

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