| 1. Graph Definition.mp4 | 23.9 MB | ||
| 1. Graph Definition.srt | 6.2 KB | ||
| 1. Graph Embedding Problem Statement.mp4 | 23.5 MB | ||
| 1. Graph Embedding Problem Statement.srt | 5.3 KB | ||
| 1. Review on Convolution Operation.mp4 | 43.3 MB | ||
| 1. Review on Convolution Operation.srt | 7.6 KB | ||
| 1. Review on Popular GNN Embedding Methods.mp4 | 39.9 MB | ||
| 1. Review on Popular GNN Embedding Methods.srt | 10.9 KB | ||
| 1.1 Why Graph Neural Network is important [ YOUTUBE ].html | 102.4 B | ||
| 10. Workshop - SGC (Part A).mp4 | 150.8 MB | ||
| 10. Workshop - SGC (Part A).srt | 20.6 KB | ||
| 10.1 Workshop - SGC.py | 3.4 KB | ||
| 11. Workshop - SGC (Part B).mp4 | 181 MB | ||
| 11. Workshop - SGC (Part B).srt | 20.8 KB | ||
| 12. Graph Convolution Network (GCN).mp4 | 109.9 MB | ||
| 12. Graph Convolution Network (GCN).srt | 23.9 KB | ||
| 12.1 Detailed explanation of GCN paper [ YOUTUBE ].html | 102.4 B | ||
| 12.2 SemiGCN.pdf | 853.4 KB | ||
| 13. Graph Attention Network.mp4 | 44.1 MB | ||
| 13. Graph Attention Network.srt | 9.5 KB | ||
| 13.1 Detailed explanation of GAT paper [ YOUTUBE ].html | 102.4 B | ||
| 13.2 GAT.pdf | 1.6 MB | ||
| 2. DeepWalk Algorithm.mp4 | 37.5 MB | ||
| 2. DeepWalk Algorithm.srt | 10.2 KB | ||
| 2. Graph Convolution (Signal Processing Point of View) Part A.mp4 | 90.7 MB | ||
| 2. Graph Convolution (Signal Processing Point of View) Part A.srt | 19.9 KB | ||
| 2. Storing Graph Information.mp4 | 29.2 MB | ||
| 2. Storing Graph Information.srt | 7.1 KB | ||
| 2. Transductive vs Inductive Embedding Methods.mp4 | 11.6 MB | ||
| 2. Transductive vs Inductive Embedding Methods.srt | 2.8 KB | ||
| 2.1 DeppWalk.pdf | 801.7 KB | ||
| 2.1 ICASP 2020 Tutorial on Graph Convolution.html | 102.4 B | ||
| 3. Graph Convolution (Signal Processing Point of View) Part B.mp4 | 46.9 MB | ||
| 3. Graph Convolution (Signal Processing Point of View) Part B.srt | 11 KB | ||
| 3. Graph Degree and Laplacian of Graph.mp4 | 42.8 MB | ||
| 3. Graph Degree and Laplacian of Graph.srt | 7.8 KB | ||
| 3. GraphSAGE.mp4 | 45.7 MB | ||
| 3. GraphSAGE.srt | 11 KB | ||
| 3. Workshop - RandomWalk using karateclub library.mp4 | 243.8 MB | ||
| 3. Workshop - RandomWalk using karateclub library.srt | 29.3 KB | ||
| 3.1 GraphSAGE.pdf | 964.8 KB | ||
| 3.1 ICASP 2020 Tutorial on Graph Convolution.html | 102.4 B | ||
| 3.1 Workshop - DeepWalk_Karateclub.py | 1.7 KB | ||
| 4. Definition of Learning in Graph Representation Learning.mp4 | 30.9 MB | ||
| 4. Definition of Learning in Graph Representation Learning.srt | 7.4 KB | ||
| 4. Message Passing Framework.mp4 | 28.9 MB | ||
| 4. Message Passing Framework.srt | 6.2 KB | ||
| 4. Node2Vec Algorithm.mp4 | 16.9 MB | ||
| 4. Node2Vec Algorithm.srt | 4.1 KB | ||
| 4.1 A Literature Review on Graph Neural Networks [ YOUTUBE ].html | 102.4 B | ||
| 4.1 n2vec.pdf | 781.4 KB | ||
| 5. Drawback in existing graph learning models.mp4 | 10.9 MB | ||
| 5. Drawback in existing graph learning models.srt | 1.9 KB | ||
| 5. Workshop - Node2Vec Using Karateclub.mp4 | 136.1 MB | ||
| 5. Workshop - Node2Vec Using Karateclub.srt | 12.6 KB | ||
| 5.1 Workshop - Node2Vec Using Karateclub.py | 2.6 KB | ||
| 6. Workshop - Node2Vec Using Pytorch Geometric (Part A).mp4 | 142.6 MB | ||
| 6. Workshop - Node2Vec Using Pytorch Geometric (Part A).srt | 19.8 KB | ||
| 6. Workshop - Using Torch and Torch Geometric for defining a graph.mp4 | 218.7 MB | ||
| 6. Workshop - Using Torch and Torch Geometric for defining a graph.srt | 26.3 KB | ||
| 6.1 Workshop - Node2Vec_TorchGeo.py | 2.9 KB | ||
| 6.1 Workshop - Using Torch and Torch Geometric for defining a graph.py | 1.9 KB | ||
| 7. Workshop - Node2Vec Using Pytorch Geometric (Part B).mp4 | 167.6 MB | ||
| 7. Workshop - Node2Vec Using Pytorch Geometric (Part B).srt | 18.4 KB | ||
| 8. GNN Motivation.mp4 | 25.7 MB | ||
| 8. GNN Motivation.srt | 5.2 KB | ||
| 9. Simplifying Graph Convolution Network.mp4 | 41.2 MB | ||
| 9. Simplifying Graph Convolution Network.srt | 11.3 KB | ||
| 9.1 SGC.pdf | 1.4 MB | ||
| Bonus Resources.txt | 307.2 B | ||
| Get Bonus Downloads Here.url | 204.8 B | ||
| ▲ 71 total files | |||
Graph Neural Network
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 26 lectures (4h 29m) | Size: 1.73 GB
From Graph Representation Learning to Graph Neural Network (Complete Introductory Course to GNN)
What you'll learn:
Graph Representation Learning
Graph Neural Network (GNN)
Graph Analysis
Graph Embedding
DeepWalk
Node2Vec
Graph Convolution Network (GCN)
Graph Attention Network (GAT)
Simplifying Graph Convolution (SGC)
Inductive and Transudative Learning
GraphSAGE
Pytorch Geometric
Convolution
Requirements
Introductory background on machine learning and deep learning
Introductory background on signal processing and data analysis
Algebra
Python
Description
In recent years, Graph Neural Network (GNN) has gained increasing popularity in various domains due to its great expressive power and outstanding performance. Graph structures allow us to capture data with complex structures and relationships, and GNN provides us the opportunity to study and model this complex data representation for tasks such as classification, clustering, link prediction, and robust representation.
While the first motivation of GNN's roots traces back to 1997, it was only a few years ago (around 2017), that deep learning on graphs started to attract a lot of attention.
| torrent name | size | uploader | age | seed | leech |
|---|---|---|---|---|---|
|
Udemy - Extreme Hacking Labs - Attacco e Difesa in una Sola VM![NEW] (03-2026) Posted by
JackieALF in Other
|
1.61 GB | JackieALF | 1 week | 30 | 15 |
| 699.7 MB | freecoursewb | 1 week | 4 | 1 | |
| 1.4 GB | freecoursewb | 1 week | 31 | 7 | |
| 1 GB | freecoursewb | 1 week | 23 | 9 | |
|
Udemy - Peptides - Cosmetics, Biology, Microbiology and Biotechnology Posted by
freecoursewb in Other
|
376.2 MB | freecoursewb | 1 week | 13 | 2 |
All Comments