AlphaFold and the Grand Challenge to solve protein folding
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- čas přidán 28. 05. 2024
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AlphaFold is DeepMinds latest breakthrough addressing the protein folding problem. Using an advanced Deep Learning architecture that achieves end-to-end learning of protein structures, this work is arguably one of the most influential papers of this decade and is likely to spark enormous advanced in computational biology and protein design. This video covers the entire architecture of the model as well as training principles that led to the incredible results of AlphaFold2!
AlphaFold Nature paper: www.nature.com/articles/s4158...
AlphaFold Codebase: github.com/deepmind/alphafold
Work from the Baker lab: www.bakerlab.org/
Fabian Fuchs' amazing blog on equivariance: fabianfuchsml.github.io/alpha...
Ongoing Open Source effort to reproduce AlphaFold: github.com/lucidrains/alphafold2
::Chapters::
00:00 Intro
02:28 The Protein Folding Problem
05:29 AlphaFold1 revisited
06:10 Multiple Sequence Alignments (MSA)
08:10 Distograms
12:29 AlphaFold2
14:52 The Evoformer
19:07 The Structure Module
28:13 Zooming out: looking at the future - Věda a technologie
The sheer effort you put in your videos is mind blowing.
I can stop it do it
Where do you go man!!! We need you to wrap our heads around Chat GPT 3,45,6,7,8,9,10... Not to mention, Bard, LamBda, LLama and others.
Come back to your channel.
After going through most of the CZcams videos on this topic. This one was one of the best out of all. Very clear and crisp explanation. Thank you ❤
A simple man here. Xander posts a video and I click it.
I just love that you actually go into the inner workings and important details of these papers in a coherent manner, and not just reading paper line by line and just repeating the information. Thanks for starting to make these videos again.
Quick correction: AF2 deals with the protein structure prediction problem, not the protein folding problem.
Aah yes you're correct, my bad! Too bad CZcams won't let you edit an existing video...
What is the difference?
@@mipsee5967 essentially "protein folding" means the whole process from a linear aminoacidic sequence to the final 3D structure. This involves a lot of intermediate states that cannot be predicted by AF2. Instead, "Structure prediction problem" is the challenge to predict only the final and functional 3D structure knowing the aminoacidic sequence, that's what AF2 does.
@@antiregime88 Oh I see, thanks a lot man
Thank you for explaining a complex architecture in such simple terms. Great work!
Wow, you're uploading again! Great to see you!
Please continue making videos. Your channel is great.
Hey Xander, Toffe video man!! Leuk om iemand vanuit Belgie tegen te komen in de online data science en machine learning world! Ga zo door en super bedankt voor je inzet voor deze mooie video!!
I love how this explains the reasoning behind all the steps. Most content just explains what and how, not why
Gives a great overview before attempting to read the paper. Saved me a lot of work. Many thanks.
Probably the best AlphaFold2 explained!
Great video! Thanks for breaking down to the very details, it's indeed mind-blowing
I just really enjoyed the video! Both the video perse, and the conntent was wonderful! Keep doing them :)
Tears coming to my eyes! thank you so much. have to present the paper soon and got this... soooo many new terms for me as I have no idea about AI, ML, advanced computer language knowledge and this is helping so much I can't say. Haven't finished watching yet but going well. New subscriber. 😊
Great Work ! Your video is a real effort to give accessible the meaning of this paper !
Superb video, best one on AlphaFold 2 I have encountered by far!
Thanks for all that detail! It would have been interesting to hear a bit more about the potential applications of this technology at the start of the video
Great video! Congratulations 👏
The most educational informative video that I've ever watched on CZcams, bravo! I wonder what is your background?
I love it :) So happy that channel exists
thank you sir! appreciate the effort that went into this video
What a time to be alive!
2.0
My dude is back, Amazing and well made video, Absolutely love watching your content
I’m saying the same thing! Nice to see him back.
Thank you for making this amazing video!!
best explanation of alphafold!!! congrats and thank you!!!
One of the best a science communication CZcams channels ever!
The video I dreamed about!! Thanks!!
Excellent video! Thank you very much
Very informative! Thank you so much!
glad to see you back :D
Excellent videos as always ♥
Very cool explanation with respect towards the scientific community's efforts as a whole
Just found your channel. Amazing stuff
Incredible work!
Very interesting. It looks like Nature is alive -very much alive.
Great presentation, thanks!
This is so good! Thank you!
Amazing presentation
Excellent explanation.
Excellent video!
Thanks for the video!
Amazing video. Thank you
Still the best on AlphaFold I’ve listened to
deeply appreciate your work from japan
Amazing. Thank you 👏♥️
Why has this amazing channel stopped making new videos?
extremely amazing, thanks for creating this incredible vedio
This is so useful, thank you! A little confused about what a pair representation actually is though, still. Is each i,j value the average distance between any residues i and j found within any of the known sequence-structure proteins from PDB? Or is it something else?
where have you been? It is nice to see you again
Great content! Thank you
Nice! Vid!! It would be perfect with some form of "concept indexing".
great video ❤️
Great explanation. Is Alphafold2 recommended to modeling small peptides (5-40 aa)?
Best CZcams Channel ever.
This is such an informative video. Thanks Xander. When are you doing a video on MuZero and AlphaTensor
I like your videos, please make a video on meta learning:social cognition and consciousness in brain and machines
The original machine had a base plate of prefabulated amulite, surmounted by a malleable logarithmic casing in such a way that the two spurving bearings were in a direct line with the panametric fan.
can you explain the concept of 'state' used in reinforcement learning as there are lot of misunderstanding regarding its defintion
Hi Xander, what software are you using to look at MSA?
6:40 - 7:20 where is that amination from, pretty cool. would like to see the full movie.
Thanks a lot for this very helpful video. I did not know that they used quaternions. The backbone frame input of the structure module has the shape (r, 3x3) and (r, 3), which I interpreted as the rotations and translations of each frame. With quaternions being used, what does the backbone frame input of shape (r, 3x3) and (r, 3) contain?
You are right about Leela Chess, it did destroy Stockfish but then stockfish became a NN too and nore or less destroyed Leela! And yes with Go, NN is the best.
Layman trying to figure this out. Im lost but goddam this is amazing
What kind of hardware is alpha2 running on?
Fascinating stuff, although you got me lost after ten minutes or so (I don’t have a clue about programming).
One must stress what you say at the end of the video at 28:20, that although AlohaFold 2.0 can predict native confirmation of an amino acid sequence, there are other contributing factors, and the algorithm isn’t able to answer the why, nor how proteins find their native state out of the vast combinatorial complexity of native confrontation structures. Levinthal’s Paradox.
I admire deep mind but hope that Google recognized and compensated all parties involved.
what is pair representation?
Great stuff! But maybe place your teleprompter somewhere behind the camera 😉
So smart
Man lucidrains is the G.
What about noticing John Moult has spend his ENTIRE LIFE making Casp-XX exist ?
None of this figuring out would have happened without the insight and attention to detail, year after year to make a system for thinking about it all exist !
I don't understand the not biology part, what should I study to be able to understand it ? Computer science ? Statistics ? Mathematics ? I have a biotechnology degree and I don't understand how AI works.
Protein folding has not been solved but they now created the pick axe and hammer to dig the mine.
now i really think my IQ had leveled up
Im not really getting it.
I keep hearing "EvilFormer"...
😀😀 me too
❤️
I didnt know Justin Bieber understands machine learning so well.
You mean James Franco?
TL;DR ACT WHAT YOU PREACH, Xander never even open sourced his "fun side-project", Synesthesia, and is now calling out Deepmind for being late into open sourcing their phenomenal research.
Most entertaining thing is that Xander ( the dude in the video ) couldn't even help himself from open sourcing one of his "fun side-project" ( as he called it ), Neural Synesthesia, but chose to turn it into something profitable. Nothing wrong with this, it only gets me when he *criticizes* the actual brightest people out there who came up with AlphaFold and potentially wanted to monetize it.
"Considered solved ?" Isn't it still didn't solved yet
Are most cryptography in cryptocurrency based on the assumption that it would also take the age of the universe to break it?
We don’t quite consider protein folding to be solved though
It is now solved. Just look into more recent twitter posts. It IS solved.
@@lolerie it clearly works well with extant protein structures, but has anyone yet expressed completely artificial proteins and compared the ezperimentally determined structures of these to the alphafold predictions?
@@jameshammond2846 yes. Proteins from Foldit. Also someone just checked very new PDB structure, it works too.
@@lolerie how do you mean, proteins from foldit? Are the proteins on foldit from trully random sequences?
@@lolerie and working on new PDB structures is impressive, but did these structures have high homology with other structures in the PDB?
if this is early AI we are F**d
Those moustaches man, can't focus on what you're saying.
"Proteins are everwhere" No, proteins are constructed by ribosomes, which have RNA as active center, i.e. proteins are being contructed by ribozymes.
That's exactly what my previous video was about!
Overcomplicated explanation
Oh fold. I thought it said Alpha Food.
Great video!
Great video!