- Видео 38
- Просмотров 360 429
Intelligent Systems Lab
США
Добавлен 16 сен 2018
This is the channel for the Laboratory for Intelligent Probabilistic Systems (LIPS) at Princeton University. LIPS is led by Prof. Ryan P. Adams in the Department of Computer Science.
Vitruvion: A Generative Model of Parametric CAD Sketches
Vitruvion is a transformer-based model trained to generate parametric computer-aided design (CAD) sketches. It shows promise to augment mechanical design via tasks such as converting hand drawings to CAD models, autocompleting sketches, and inferring intended constraints.
This work was published at ICLR 2022.
Paper: arxiv.org/abs/2109.14124
Website: lips.cs.princeton.edu/vitruvion
Authors: Ari Seff, Wenda Zhou, Nick Richardson, Ryan P. Adams
This work was published at ICLR 2022.
Paper: arxiv.org/abs/2109.14124
Website: lips.cs.princeton.edu/vitruvion
Authors: Ari Seff, Wenda Zhou, Nick Richardson, Ryan P. Adams
Просмотров: 1 669
Видео
COS 302: Practical Multivariate Differentiation
Просмотров 1,2 тыс.3 года назад
Differentiating functions that input and output vectors and matrices.
COS 302: Applications of Matrix Factorization
Просмотров 6 тыс.3 года назад
Matrix factorization is useful for lots of stuff. This video talks about a couple of examples.
COS 302: Gram-Schmidt Orthogonalization
Просмотров 7923 года назад
Gram-Schmidt takes an arbitrary basis and sequentially turns it into an orthonormal basis.
COS 302: Orthogonality and Projection
Просмотров 9113 года назад
Orthogonal vectors and orthogonal projection
COS 302: Norms and Inner Products
Просмотров 2 тыс.3 года назад
Generalizing lengths and dot products.
COS 302: Change of Basis
Просмотров 7073 года назад
Working through the idea of changing basis with linear maps.
COS 302: Linear Independence, Basis, and Rank
Просмотров 1,2 тыс.3 года назад
More on linear algebra basics.
COS 302: Systems of Linear Equations
Просмотров 1,1 тыс.3 года назад
COS 302: Systems of Linear Equations
SketchGraphs: A Large-Scale Dataset for Modeling Relational Geometry in Computer-Aided Design
Просмотров 7 тыс.4 года назад
SketchGraphs: A Large-Scale Dataset for Modeling Relational Geometry in Computer-Aided Design
Useful inequalities and limit theorems
Просмотров 4,9 тыс.4 года назад
Useful inequalities and limit theorems
Some useful probability distributions
Просмотров 7 тыс.4 года назад
Some useful probability distributions
Probability spaces and random variables
Просмотров 47 тыс.4 года назад
Probability spaces and random variables
Probability density and mass functions
Просмотров 59 тыс.4 года назад
Probability density and mass functions
awesome video thanks
👍👍👍👍👍👍👍👍👍👍👍👍👍👍
Incredible waste of time. The video doesn't even attempt to explain why would the vectors of each matrix represent different categories.
excellent explanation, as a data science from a biology background this really helped
Your class is good 🙏🏼
You’re my guardian angel
Does this enable older designers to show the AI an image of their hand-drawn designs and get a STEP or IGES encoded 3D file for use in applications? I am looking for a use case where mixed reality headset cameras can capture image information and process it into a shareable 3D format!
4:37 Say if the p(X=4)=0.5 What is the interpretation of this exact statement? Could it be that the probability of x occurring arbitrarily close to 4 is 50%?
Thank you
You’re my guardian angel
AHH!!! I’ve been trying to find more content from you since you left Talking Machines for years!! So glad I finally found this! I wonder how to fix the squeaky pen 🤔
Very nice intuition video with the perfect amount of math!
Really well explained
I'm wondering about the importance sampling. If I understand correctly, we need both pi(x) and q(x) pdfs to use IM. But shown in the previous video "COS 302: Pseudo-Random Numbers", we can draw samples for any arbitrary pi(x) using the CDF + uniform rand trick. In that case, why wouldn't we use the trick with pi and draw from pi directly? I know there are cases where IM is useful, especially in ML/RL for learning or estimating some expectation from _offline data_ . But I can't see the reason why we choose to _sample_ from q instead of pi when we have both pdfs. What am I missing?
There are two reasons: 1) if you only know pi, computing the CDF still requires an integral, which is what you're trying to avoid, and 2) importance sampling generalizes straightforwardly to multiple dimensions, where as inverse transform sampling is much trickier.
Underrated channel
Great explanation !
Very beautiful. Thank you.
Just brilliant.
Awesome. Thank you.
Excellent explanation!! Thanks
How does this whiteboard works?
it's a glass and image is then flipped
Thanks
Is the ground truth set weighted by a average, max, common, rare, gravity, edges, node distribution or what?
Thank you for the very clear explanation! I never took a stats class, so online resources like this help me survive upper division CS and ME classes. Much needed for fluids labs and speech processing!
Thanks so much, I like how you explain
Thanks so much, nicely explained!
PLEASE use another pen, I can't finish the video. Great explanation anyways!
Thanks a ton!! It wasn’t only intuitive, you explained what is in the book with the exact notations which makes it easier for me to go back and solve problems there.
Amazing lectures!! I assumed that i will flunk my class before I watched these. You somehow make it sound simple. Thanks a lot
I frickin love you man.
These videos are so amazingly awesome!!!
loved it thanks !
Thankyou so much 💯
astonishing video Intelligent Systems Lab. I shattered that thumbs up on your video. Keep up the very good work.
Succinct.
As a data engineer from a non-CS background, it's one of the most helpful materials I found on the internet for linear algebra. It gives a great intuition to understand the math and real-world examples. Huge thanks!
I like your explanation, but the sound of your pen hitting the board is extremely disturbing!
Amazing vid!
True that! Some Jupyter examples would ve made it complete :)
Thanks 👌👌👌👌👌👌👌
this is awesome I just need to find the time to watch all these and take notes
The explanation is simple and elegant, thank you so much for making this brilliant video! I finally understand Bayes Theorem and marginal distribution!
So well done! And the graphic design of 3B1B helps a lot to maintain continuity with Grant's content so that even new viewers aren't disoriented by different visuals.
very good video
Please help me, how can I synchronise the animations with the audio? What I am thinking is that I should give long pauses by using `self.wait()` and then trim the video according to the narration. I suppose this is not the best method, please share your method if you have better one.
I edit in final cut pro and do voiceovers there.
This is a great topic.
This is wonderful. Thanks!