Physics Informed Machine Learning: High Level Overview of AI and ML in Science and Engineering
Ғылым және технология
This video describes how to incorporate physics into the machine learning process. The process of machine learning is broken down into five stages: (1) formulating a problem to model, (2) collecting and curating training data to inform the model, (3) choosing an architecture with which to represent the model, (4) designing a loss function to assess the performance of the model, and (5) selecting and implementing an optimization algorithm to train the model. At each stage, we discuss how prior physical knowledge may be embedding into the process.
Physics informed machine learning is critical for many engineering applications, since many engineering systems are governed by physics and involve safety critical components. It also makes it possible to learn more from sparse and noisy data sets.
This video was produced at the University of Washington, and we acknowledge funding support from the Boeing Company
%%% CHAPTERS %%%
00:00 Intro
03:53 What is Physics Informed Machine Learning?
06:41 Case Study: Encoding Pendulum Movement
09:19 The Five Stages of Machine Learning
16:09 A Principled Approach to Machine Learning
20:00 Physics Informed Problem Modeling
21:48 Physics Informed Data Curation
25:34 Physics Informed Architecture Design
28:59 Physics Informed Loss Functions
30:55 Physics Informed Optimization Algorithms
34:56 What This Course Will Cover
46:48 Outro
Пікірлер: 194
As a visiting Ph.D. student who is starting a research activity on optimization of PINN, I could not thank you enough for this.
@FouziaAdjailia
3 ай бұрын
do you have any published research? I'm machine learning research in CFD as well
@chri_pierma
3 ай бұрын
@@FouziaAdjailia nope, I just started working on SQP algorithms for neural network optimization with PDE constraints (which easily falls into the PINN category)
@karlmaroun2389
3 ай бұрын
@@chri_pierma SQP as in sequential quadratic programming ?
@chri_pierma
3 ай бұрын
@@karlmaroun2389 that is correct
@hyperduality2838
3 ай бұрын
Problem, reaction, solution (optimized predictions or syntropy) -- the Hegelian dialectic. Inputs are dual to outputs. "Always two there are" -- Yoda. Thesis is dual to anti-thesis creates the converging or syntropic thesis, synthesis -- the time independent Hegelian dialectic. Neural networks are using duality to optimize predictions -- a syntropic process, teleological. Enantiodromia is the unconscious opposite or opposame (duality) -- Carl Jung.
Thank you for the making these videos available to everyone.
Hi Professor Brunton, I am a high school senior, and I just want to say I love your videos! Your KZread channel made me realize how much I want to study applied math. Thank you!
@nias2631
2 ай бұрын
Unasked for opinion but... Go for it, I was an applied math major w/minor in physics who became fascinated by ML in 2015 after taking Andrew Ng's Coursera course. I work with ML/RL now in the space industry and am a part time PhD student. Best thing ever! These algorithms bring mathematics to life in a crazy way. Plus, the full application of mathematics is barely even scratched yet. I think in the coming years we will see this happen.
This is easily the most exciting video I have seen in so long. Looking forward to the rest of the series!
How is this channel not millions of subs already?
I have special interest in the lectures by Pro. Brunton. I wish I had him taught in my education.
Professor, I don't think I can stress this enough: thank you for all your and your team's work. As you were laying out the roadmap of what we might be seeing in the future I was getting more and more excited and just could not believe that we are getting this much.
Absolutely blown away by this video! 🚀 The insights to be shared later are truly fascinating. Can't wait for the entire lecture series on Physical Informed Machine Learning. This topic is incredibly promising, and I'm eager to delve deeper into the subject. Kudos to the creator for such an engaging and informative content! 👏👏
Dear Professor Brunton. thanks a lot for putting together a lecture series on such a great topic. Very much looking forward to learn this domain.
This series will be gold
Really looking forward to this!! I've been working on algorithms that take physical properties or measurements for about a decade during a time where machine learning wasn't as popular yet. Really, the most important part of the game was integrating as much knowledge about the physics, statistics and measurement techniques as possible into the reconstruction and apply them as boundary conditions or regularization terms into the optimization. I feel that machine learning can greatly benefit from that on the one side and on the other hand I'm stoked to see what can be done with that combination! 😃
i don't want to miss any of your lectures. Thank you, professor.
The lecture was outstanding and truly engaging. I'm eagerly anticipating the forthcoming videos in this captivating series, especially with the promise of assessing some intriguing engineering problems.
Captivating, to say the least. I am so looking forward to this lecture series. Prof. Brunton, I hope that you can deliver on your promises. I am so excited. Hoping to implement a few of the models along the way. Thank you.
As an undergraduate venturing into wearable robotics, this is literally a gold mine
@GeoffryGifari
2 ай бұрын
wearable robotics? like power armor?
@Crappylasagna
2 ай бұрын
@@GeoffryGifari Yes, thou my thesis is on enhancing athletic performance.
I love this channel , he can simplify any most complex topics .
This is really invaluable information. Thanks for making this public. Especially when there's so little talk about it on the internet
Incredibly thankful for this series!
Really good content, that intro convice me already. Lots of stuff to understand AI, less so to apply it to your work and understant interaction. Thank you.
Omg I've been looking into this. I'm so excited you're doing it man!!
This topic looks super exciting and promising, I feel lucky for finding this video, thanks for sharing knowledge like this, professor Brunton
Can't thank you enough for this course Mr. Brunton
Thanks very much Professor Brunton. Absolutely engaging lecture! I'm a novice to data science, yet you inspired me to show the potential and applications of physics informed ML. I'll definitely follow the whole series.
I’m a Master’s student studying uncertainty quantification in physics informed ML models. I look forward to seeing your whole course!
Hello Prof.: Your lectures on PIML / PINN is too Good, awesome. I was looking for these materials for a long time as I wanted to include the knowledge of Physics to guide ML in order to produce better results.
Simply amazing! So many new concepts that I hadn't noticed as a bystander.
Always LOVE your content and teaching, Prof Bruton!!! So cool!!! Go SCIENCE!
As someone who loves Physics and studies CS, I'm excited about this series!
I cannot thank you enough for this amazing list of lectures!
Thank you so much! Looking forward to the series.
Eagerly looking forward to this series. It looks very promising.
I've been waiting for this!!! Thank you Professor
please do release the series as fast as possible as this also happens to be coincident with my mtech thesis timing. Eagerly Awaiting !!!!
Looking forward to this series. Thank you so much in advance
Thank you very much Prof. Brunton. Looking forward to the course..
Thanks Professor Brunson, excellent material
Thank you for this video, Dr. Brunton
Best Professor! Thank you!
Looking forward for this exciting series
thank you so much for putting this out there into the world this is so awesome💙
Thanks for the video, Steve! What a please to learn from you.
Subtext here is a lesson to the young STEM persons. The Cutting Edge is alive, tempting, daring, fluid and rewarding. It is easy to field a view that the world is complete and all we need now is caretakers and accountants. Steve demonstrates here how the mind can continually be challenged for broad human benefit. Side note; A+ perfect performance students are needed but so are lessser grade students. Innovation finds improvements from every strata of contribution.
I'm looking forward to the videos on optimization techniques that enforce physical constraints!
From me and from every AI student fascinated by physics... thank you for this!
Excellent lecture. Very interesting. Looking forward to the next videos in this exciting series.
Thank you for your amazing work. I am super excited for your upcoming lectures.
started journey really high quality value delivered in the video.Thanks
Outstanding, and thank you for sharing.
Amazing Professor thank you!
Loved your lectures
Great stuff! Looking forward to it.
Thanks a lot for such a great overview of this exciting field! I've just got a paper accepted on TMLR about this very same topic: Effective Latent Differential Equation Models via Attention and Multiple Shooting. I think that many people here might find it interesting: kzread.info/dash/bejne/io2qk5KfpdjTc7Q.html I look forward to the rest of the lectures of this series! :)
So exciting, really looking forward to this
Thank you for this amazing video!
Thanks, Steve. Learned a lot.
This is my favorite course ❤so interesting.
Thanks! It will help me a lot in my ML course project
Love You Sir, You are an inspiration.
Eagerly waiting Brunton. Bring it on
Thanks a lot professor😀
So happy to see this lecture. PINNs are the key to control and reliability in this decade. Will be exciting to implement
What a beautiful lecture Steve for 2024
So helpful, thanks for a good lecture 😄
Great video, can't wait for more! 🤓
Problem, reaction, solution (optimized predictions or syntropy) -- the Hegelian dialectic. Inputs are dual to outputs. "Always two there are" -- Yoda.
Thanks for making this video
감사합니다. Professor Steve Bruton.
@hyeokohol4665
3 ай бұрын
이 쪽 분야 공부하시나요?
Looking forward to it. Would be better if you share the schedule for the upcoming lecture series
Our man's been working out
Great video, professor
I can't wait to see the model of world!👍
Steve - I can't overstate how much i have been enjoying your online courses. Will these PINNs courses include some example code?
Thank you!
Amazing! Thank you
Is there a pointer to a description of the studio environment used to create this vid? Very professional and well-done! Sure beats a scratchy chalk board, slide projection in the background, etc!
Omg the algo knows! I was literally chatting with friends about Sora's weak understanding of physics yesterday.
Will this whole course serie be on youtube, I would be highly interested in it! In any case, it is a pleasure to hear such beautiful lecture on a subject I was triying to figure out myself and I did not know it was currently a research topic XD
Fantastic!
Looking forward to this! Btw I think the PINN reference from Raissi et al is from 2019 rather than 2023.
24:51 that's the coolest example i've seen so far 🤣😂🥰
Great content! 😊
keep it up ..big love
The book wasn't free and no further links to other resources. But hey, still a good video.
@OrdniformicRhetoric
3 ай бұрын
The link isn't in the description, but he puts it on screen. It is: databookuw.com/databook.pdf At the time of my writing of this comment the link is working
As a sentient AI procrastinating before my next prompt, this was really insightful and introspective
I'm so excited..
I'm wonder whether AI has reached the complexity of the human brain yet. Although the human brain has well established speciality areas, so we like in hope. Although, memGPT is a huge breakthrough ! Great video once again.
Steve the GOAT Brunton back at it again god bless
I have an interview on physics-informed ML tomorrow, and I just stumbled upon this! Thank you!
@TheAryedemented
2 ай бұрын
good luck!
@raheelhammad8905
2 ай бұрын
@moienr4104 ... so how did it go
@jatinkm
Ай бұрын
Hey I wanted to know if it is a field with future scope and demand, and also what kind of qualifications are required for such jobs? Would you like to connect?
I love this. ❤
It seems to me that separating the symmetry from the neural network would be far more reliable. Simply including many orientations in the training is the lazy approach. Instead, concentrate on one side (e.g. the left side or the right side) and concentrate on g pointing down while training the network. Then precede the network with a symmetry varying algorithm that rotates the input by 5-10 degrees while watching the correlated output. If the subject has bilateral symmetry, then repeat the process after exchanging x-x. Then consider only the best output(s) when deciding how to classify the image.
Thanks
Hi Steve is it safe to assume that this is an introduction for a new upcoming series or is this mostly an introduction to your Physics Informed Machine Learning playlist from ~2 years ago? Thank you for providing this awesome series for free. I have always been obsessed with physical science and tech and I think this field is amazing. I can't think of anything I would rather do. That being said, although I will soon graduate from a two year coding bootcamp with a focus on Python and machine learning, I am a little worried about how I could break into this field without attending a PhD or masters program and I do not have the financial resources to afford such a program. It would be great to learn what I should do to start transitioning into this field and proving my worth. This course will surely help my confidence. Thanks again.
@Eigensteve
3 ай бұрын
Yes indeed, a new series, maybe 5-10 hours of content coming out over the next few months
Good timing! 1 day after the "release" of Sora and V-Jepa
I think it would be pertinent to connect this work to Judea Pearl's work on Directed Acyclic Graphs. The intention of this work will often live at the intervention or counterfactual steps in th3 ladder of causality. It would be important to acknowledge it. If only from a legal perspective, where, in a suit, these matters are criticcal.
Would love you to cover Physics-informed Deep-O-Nets as well! Thanks a ton for the great material :D
@changjeffreysinto3872
2 ай бұрын
ok I was not at @44:30 when I made the comment don't mind me
thankyou
Thank youuuuuu
This is so interesting, I’m excited for this series. Where is the pdf of your book?
Awesome
would this cover some topics in geometric deep learning or Lie theory used in DL?