A Tool Of Choice for Bootstrapping High Quality Python Packages
https://morioh.com/p/65db96717d00
The Demo/Documentation: https://pyscaffold.org/
Download Link: https://github.com/pyscaffold/pyscaffold/archive/refs/heads/master.zip
Official Website: https://github.com/pyscaffold/pyscaffold
@Machine_learn
https://morioh.com/p/65db96717d00
The Demo/Documentation: https://pyscaffold.org/
Download Link: https://github.com/pyscaffold/pyscaffold/archive/refs/heads/master.zip
Official Website: https://github.com/pyscaffold/pyscaffold
@Machine_learn
Fresh picks from ArXiv
This week on ArXiv: 1000-layer GNN, solutions to OGB challenge, and theory behind GNN explanations 🤔
If I forgot to mention your paper, please shoot me a message and I will update the post.
Deep GNNs
* Training Graph Neural Networks with 1000 Layers ICML 2021
* Very Deep Graph Neural Networks Via Noise Regularisation with Petar Veličković, Peter Battaglia
Heterophily
* Improving Robustness of Graph Neural Networks with Heterophily-Inspired Designs with Danai Koutra
Knowledge graphs
* Query Embedding on Hyper-relational Knowledge Graphs with Mikhail Galkin
OGB-challenge
* Fast Quantum Property Prediction via Deeper 2D and 3D Graph Networks
* First Place Solution of KDD Cup 2021 & OGB Large-Scale Challenge Graph Prediction Track
Theory
* Towards a Rigorous Theoretical Analysis and Evaluation of GNN Explanations with Marinka Zitnik
* A unifying point of view on expressive power of GNNs
GNNs
* Stability of Graph Convolutional Neural Networks to Stochastic Perturbations with Alejandro Ribeiro
* TD-GEN: Graph Generation With Tree Decomposition
* Unsupervised Resource Allocation with Graph Neural Networks
* Equivariance-bridged SO(2)-Invariant Representation Learning using Graph Convolutional Network
* GemNet: Universal Directional Graph Neural Networks for Molecules with Stephan Günnemann
* Optimizing Graph Transformer Networks with Graph-based Techniques
Survey
* Systematic comparison of graph embedding methods in practical tasks
* Evaluating Modules in Graph Contrastive Learning
* A Survey on Mining and Analysis of Uncertain Graphs
@Machine_learn
This week on ArXiv: 1000-layer GNN, solutions to OGB challenge, and theory behind GNN explanations 🤔
If I forgot to mention your paper, please shoot me a message and I will update the post.
Deep GNNs
* Training Graph Neural Networks with 1000 Layers ICML 2021
* Very Deep Graph Neural Networks Via Noise Regularisation with Petar Veličković, Peter Battaglia
Heterophily
* Improving Robustness of Graph Neural Networks with Heterophily-Inspired Designs with Danai Koutra
Knowledge graphs
* Query Embedding on Hyper-relational Knowledge Graphs with Mikhail Galkin
OGB-challenge
* Fast Quantum Property Prediction via Deeper 2D and 3D Graph Networks
* First Place Solution of KDD Cup 2021 & OGB Large-Scale Challenge Graph Prediction Track
Theory
* Towards a Rigorous Theoretical Analysis and Evaluation of GNN Explanations with Marinka Zitnik
* A unifying point of view on expressive power of GNNs
GNNs
* Stability of Graph Convolutional Neural Networks to Stochastic Perturbations with Alejandro Ribeiro
* TD-GEN: Graph Generation With Tree Decomposition
* Unsupervised Resource Allocation with Graph Neural Networks
* Equivariance-bridged SO(2)-Invariant Representation Learning using Graph Convolutional Network
* GemNet: Universal Directional Graph Neural Networks for Molecules with Stephan Günnemann
* Optimizing Graph Transformer Networks with Graph-based Techniques
Survey
* Systematic comparison of graph embedding methods in practical tasks
* Evaluating Modules in Graph Contrastive Learning
* A Survey on Mining and Analysis of Uncertain Graphs
@Machine_learn
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Facebook's Reverse engineering generative models from a single deepfake image
Github: https://github.com/vishal3477/Reverse_Engineering_GMs
Paper: https://arxiv.org/abs/2106.07873
Facebook's blog: https://ai.facebook.com/blog/reverse-engineering-generative-model-from-a-single-deepfake-image/
Dataset: https://drive.google.com/drive/folders/1ZKQ3t7_Hip9DO6uwljZL4rYAn5viSRhu?usp=sharing
@Machine_learn
Github: https://github.com/vishal3477/Reverse_Engineering_GMs
Paper: https://arxiv.org/abs/2106.07873
Facebook's blog: https://ai.facebook.com/blog/reverse-engineering-generative-model-from-a-single-deepfake-image/
Dataset: https://drive.google.com/drive/folders/1ZKQ3t7_Hip9DO6uwljZL4rYAn5viSRhu?usp=sharing
@Machine_learn
GitHub
GitHub - vishal3477/Reverse_Engineering_GMs: Official Pytorch implementation of paper "Reverse Engineering of Generative Models:…
Official Pytorch implementation of paper "Reverse Engineering of Generative Models: Inferring Model Hyperparameters from Generated Images" - vishal3477/Reverse_Engineering_GMs
👍1
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Amazon, Berkeley release dataset of product images and metadata.
Dataset includes multiple images of 147,702 products, including 360° rotations and 3-D models for thousands of them.
https://www.amazon.science/blog/amazon-berkeley-release-dataset-of-product-images-and-metadata
@Machine_learn
Dataset includes multiple images of 147,702 products, including 360° rotations and 3-D models for thousands of them.
https://www.amazon.science/blog/amazon-berkeley-release-dataset-of-product-images-and-metadata
@Machine_learn
Breast Cancer Wisconsin (Diagnostic) Data Set
Predict whether the cancer is benign or malignant
Here is link of dataset: Link
🔷 Number of instances: 569
🔷 Number of attributes: 32 (ID, diagnosis, 30 real-valued input features)
🔷 Ten real-valued features are computed for each cell nucleus:
a) radius (mean of distances from center to points on the perimeter)
b) texture (standard deviation of gray-scale values)
c) perimeter
d) area
e) smoothness (local variation in radius lengths)
f) compactness (perimeter^2 / area - 1.0)
g) concavity (severity of concave portions of the contour)
h) concave points (number of concave portions of the contour)
i) symmetry
j) fractal dimension ("coastline approximation" - 1)
#dataset
@Machine_learn
Predict whether the cancer is benign or malignant
Here is link of dataset: Link
🔷 Number of instances: 569
🔷 Number of attributes: 32 (ID, diagnosis, 30 real-valued input features)
🔷 Ten real-valued features are computed for each cell nucleus:
a) radius (mean of distances from center to points on the perimeter)
b) texture (standard deviation of gray-scale values)
c) perimeter
d) area
e) smoothness (local variation in radius lengths)
f) compactness (perimeter^2 / area - 1.0)
g) concavity (severity of concave portions of the contour)
h) concave points (number of concave portions of the contour)
i) symmetry
j) fractal dimension ("coastline approximation" - 1)
#dataset
@Machine_learn
Self-Supervised Learning with Swin Transformers
Github: https://github.com/SwinTransformer/Transformer-SSL
Paper: https://arxiv.org/abs/2105.04553v2
@Machine_learn
Github: https://github.com/SwinTransformer/Transformer-SSL
Paper: https://arxiv.org/abs/2105.04553v2
@Machine_learn
SMURF: Self-Teaching Multi-Frame Unsupervised RAFT with Full-Image Warping
Paper:
https://arxiv.org/pdf/2105.07014.pdf
Video:
https://www.youtube.com/watch?v=W7NCbfZp6QE
Code:
https://github.com/google-research/google-research/tree/master/smurf
@Machine_learn
Paper:
https://arxiv.org/pdf/2105.07014.pdf
Video:
https://www.youtube.com/watch?v=W7NCbfZp6QE
Code:
https://github.com/google-research/google-research/tree/master/smurf
@Machine_learn
GIRAFFE: A Closer Look at the Code for CVPR 2021’s Best Paper
[Paper] http://www.cvlibs.net/publications/Niemeyer2021CVPR.pdf
[Source] https://github.com/autonomousvision/giraffe
[Blog] https://autonomousvision.github.io/giraffe/
[Interactive slides] https://m-niemeyer.github.io/slides/#/4
[Collected] https://m-niemeyer.github.io/project-pages/giraffe/index.html
@Machine_learn
[Paper] http://www.cvlibs.net/publications/Niemeyer2021CVPR.pdf
[Source] https://github.com/autonomousvision/giraffe
[Blog] https://autonomousvision.github.io/giraffe/
[Interactive slides] https://m-niemeyer.github.io/slides/#/4
[Collected] https://m-niemeyer.github.io/project-pages/giraffe/index.html
@Machine_learn
Master_Machine_Learning_Algorithms_Discover_how_they_work_by_Jason.pdf
1.1 MB
Jason Brownlee
Master Machine Learning Algorithms Discover How They Work and Implement Them From Scratch
#Ml #book
@Machine_learn
Master Machine Learning Algorithms Discover How They Work and Implement Them From Scratch
#Ml #book
@Machine_learn
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EL-Attention: Memory Efficient Lossless Attention for Generation
Github: https://github.com/microsoft/fastseq
Paper: https://arxiv.org/abs/2105.04779v1
@Machine_learn
Github: https://github.com/microsoft/fastseq
Paper: https://arxiv.org/abs/2105.04779v1
@Machine_learn
GitHub
GitHub - microsoft/fastseq: An efficient implementation of the popular sequence models for text generation, summarization, and…
An efficient implementation of the popular sequence models for text generation, summarization, and translation tasks. https://arxiv.org/pdf/2106.04718.pdf - microsoft/fastseq
Deep Learning Dataset For Passage and Document Retrieval
Github: https://github.com/grill-lab/DL-Hard
Paper: https://arxiv.org/abs/2105.07975v1
@Machine_learn
Github: https://github.com/grill-lab/DL-Hard
Paper: https://arxiv.org/abs/2105.07975v1
@Machine_learn
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Cartoon-StyleGan2 🙃 : Fine-tuning StyleGAN2 for Cartoon Face Generation
Github: https://github.com/happy-jihye/Cartoon-StyleGan2
Paper: https://arxiv.org/abs/2106.12445
Colab: https://colab.research.google.com/github/happy-jihye/Cartoon-StyleGan2/blob/main/Cartoon_StyleGAN2.ipynb
@Machine_learn
Github: https://github.com/happy-jihye/Cartoon-StyleGan2
Paper: https://arxiv.org/abs/2106.12445
Colab: https://colab.research.google.com/github/happy-jihye/Cartoon-StyleGan2/blob/main/Cartoon_StyleGAN2.ipynb
@Machine_learn
🌠 Deepmind's Generally capable agents emerge from open-ended play
Blog : https://deepmind.com/blog/article/generally-capable-agents-emerge-from-open-ended-play
Paper: https://deepmind.com/research/publications/open-ended-learning-leads-to-generally-capable-agents
DeepMind Research: https://github.com/deepmind/deepmind-research
Video: https://www.youtube.com/watch?v=lTmL7jwFfdw&ab_channel=DeepMind
@Machine_learn
Blog : https://deepmind.com/blog/article/generally-capable-agents-emerge-from-open-ended-play
Paper: https://deepmind.com/research/publications/open-ended-learning-leads-to-generally-capable-agents
DeepMind Research: https://github.com/deepmind/deepmind-research
Video: https://www.youtube.com/watch?v=lTmL7jwFfdw&ab_channel=DeepMind
@Machine_learn
A Dataset for Studying Gender Bias in Translation
http://ai.googleblog.com/2021/06/a-dataset-for-studying-gender-bias-in.html
@Machine_learn
http://ai.googleblog.com/2021/06/a-dataset-for-studying-gender-bias-in.html
@Machine_learn
research.google
A Dataset for Studying Gender Bias in Translation
Posted by Romina Stella, Product Manager, Google Translate Advances on neural machine translation (NMT) have enabled more natural and fluid transla...
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10.5445IR1000131732.pdf
74.8 MB
Deep Learning based Vehicle Detection in Aerial Imagery
Sommer, Lars Wilko #2021 #book #DL @Mchine_learn
Sommer, Lars Wilko #2021 #book #DL @Mchine_learn