I think this video will be a great introduction for those of you who have heards about GNNs but never taken the time to learn what they actually are! It will give you the necessary knowledge so that you can follow more practical, hands-on coding using PyTorch Geometric in subsequent videos:)
@@sumithhh9379 It could become a series with more advanced topics but not sure. I've been working with GNNs through work projects and I felt I had enough knowledge to give a good introduction to the topic and show you how to use PyTorch Geometric to do the most common tasks (graph classification, link pred, node classification).
Was actually waiting for you to make a series on GNNs . Can't wait for you to implement autoencoders/VAEs with more than just the innerproduct decoder.
Hey Aladdin, just wanted to say thank you for this amazing content. Your explanations are clear and helpful and the way that you organize your videos makes me feel like I'm exploring these fascinating concepts right alongside you. All the best, brother.
i really like the explanation of permutation invariance & equivariance, which i didn't understand when I read the textbook. super clear with those plots!
Thanks for the video, I never knew until now what GNNs do exactly. Please do such tutorials and paper implementations more often. I am currently watching your GAN playlist and it helps me a lot. Anything regarding GANs and semantic segmentation is most welcome!
This is very well done. Thank you. One thing that would be great would be explaining what happens when a and b are connected bidirectionally (nondirected) so that when computing a you'd use b and vice versa given t-1, t, t+1...
Please continue this video series. GNN is the future with lot of applications. Please show how to create them from the scratch and how each type of GNN works (graphsage, GCN). Also the temporal GNN for prediction the messages that would be really cool!
I may be a bit shaky on the topic, but i think GNNs are only representation learning/embedding tools and do not perform tasks such as link prediction, node classification directly... These are only performed afterwards using separate neural network architecture. Please let me know if i am wrong, i am currently reading up on the topic and this specific point has led to much confusion on my part.
Thanks a lot for your epxlaination but maybe next time prepare a script because the way you explain makes it look like you are making up stuff on the fly. I know that is not the case but it might give the impression that you don't know what you are talking about. Just an honest feedback.
I think this video will be a great introduction for those of you who have heards about GNNs but never taken the time to learn what they actually are! It will give you the necessary knowledge so that you can follow more practical, hands-on coding using PyTorch Geometric in subsequent videos:)
Are you going to publish a series on GNN and advanced concepts as well?
@@sumithhh9379 It could become a series with more advanced topics but not sure. I've been working with GNNs through work projects and I felt I had enough knowledge to give a good introduction to the topic and show you how to use PyTorch Geometric to do the most common tasks (graph classification, link pred, node classification).
@@AladdinPersson I look forward to the PyTorch Geometric, I recommend using a molecular dataset
A very good video especially the explanation on the computation graph. All the best on your startup’s success.
@AladdinPersson Thanks for this ; Helped the basics. Any part-2 of this?
Was actually waiting for you to make a series on GNNs . Can't wait for you to implement autoencoders/VAEs with more than just the innerproduct decoder.
Great Job! You explained it quite well for someone who just heard the term. We wish more videos like this in the future.
Best explanation on GNNs on youtube right now dude, thank you so much
Hi Aladdin! Just came to drop a like and comment for the YT algorithm. Just love your videos.
Much appreciated
This video is pretty clear and straightforward... a veeeerrry good start for beginners
I've been thinking and researching about GNNs for about a month. This video fit like a glove, great approach to the topic!
Hey Aladdin, just wanted to say thank you for this amazing content. Your explanations are clear and helpful and the way that you organize your videos makes me feel like I'm exploring these fascinating concepts right alongside you. All the best, brother.
i really like the explanation of permutation invariance & equivariance, which i didn't understand when I read the textbook. super clear with those plots!
Thanks for the video, I never knew until now what GNNs do exactly. Please do such tutorials and paper implementations more often. I am currently watching your GAN playlist and it helps me a lot. Anything regarding GANs and semantic segmentation is most welcome!
Bro waited for u for so long and got GNNs, highly excited for the series
This is very well done. Thank you. One thing that would be great would be explaining what happens when a and b are connected bidirectionally (nondirected) so that when computing a you'd use b and vice versa given t-1, t, t+1...
Please continue this video series. GNN is the future with lot of applications. Please show how to create them from the scratch and how each type of GNN works (graphsage, GCN). Also the temporal GNN for prediction the messages that would be really cool!
Finally, legend is back. Love to see you again.
We need a hands-on video😭 love your coding style so much!
Hi Aladdin! YT Notification popped up! Just came to put a comment and like. Love your videos!
26:12 the k is the time step, isn't it? Not the layer.
GNNs are the summer vibe
Way to go. It is so great you can share the learnings from our projects
Great primer for getting a decent understanding of graphs. Thanks
I see the upload. I click on it, leave a like and then watch. Love your videos!
Bro, this is solid.
Hi @Aladdin, can you make a video on BERT and RoBERTa
I may be a bit shaky on the topic, but i think GNNs are only representation learning/embedding tools and do not perform tasks such as link prediction, node classification directly... These are only performed afterwards using separate neural network architecture. Please let me know if i am wrong, i am currently reading up on the topic and this specific point has led to much confusion on my part.
Perfect timing mate 👌.
looking forward to a video on unequal attention scores! thank you.
Did you do the hands on?
Amazing video, thank you so much. !!!!!!
17:05 Color must be purple instead of blue
Can't wait for the coding implementation!
Great explanation.
Please continue doing this
Great video, thanks!
Thanks for sharing this.
I always wanted this!!!
Thank you!
11:21 woohoo! I love puzzles ... no wait that's not a cryptic crossword 😭😭😭😭
thanks, much needed
So where is the video about coding stuff using python's geometric? (doge
Thanks
Thanks a lot for your epxlaination but maybe next time prepare a script because the way you explain makes it look like you are making up stuff on the fly. I know that is not the case but it might give the impression that you don't know what you are talking about. Just an honest feedback.
But I am making stuff up on the fly
If you want I can use a larger beam size but might cause some video delay