steveazzolin / gdl_tutorial_turinginstLinks
Material for the hands-on tutorial on Graph Deep Learning held at the Alan Turing Institute
☆57Updated last year
Alternatives and similar repositories for gdl_tutorial_turinginst
Users that are interested in gdl_tutorial_turinginst are comparing it to the libraries listed below
Sorting:
- ☆61Updated last year
- TopoBench is a Python library designed to standardize benchmarking and accelerate research in Topological Deep Learning☆184Updated this week
- This repository holds my paper implementations made for my studies and my content production☆36Updated 11 months ago
- here you can find the material used for our Tutorials☆103Updated 3 years ago
- GRAPL: A computational library for nonparametric structural causal modelling, analysis and inference☆83Updated 9 months ago
- Representation Learning on Topological Domains☆89Updated this week
- Active Bayesian Causal Inference (Neurips'22)☆58Updated last year
- Causal Inference in Python☆44Updated this week
- Advanced Topics in Artificial Intelligence, NUS CS6208, 2023☆327Updated 2 years ago
- Notes, exercises and other materials related to causal inference, causal discovery and causal ML.☆152Updated 3 weeks ago
- [Experimental] Causal graphs that are networkx-compliant for the py-why ecosystem.☆58Updated this week
- Code and Content for Manning Publication on Graph Neural Networks☆97Updated 7 months ago
- A paper describing the implementation of PySR and SymbolicRegression.jl☆59Updated last year
- A statistical toolkit for scientific discovery using machine learning☆80Updated last year
- Implementations of methods proposed in the paper "Conformal Prediction Sets for Graph Neural Networks"☆15Updated 2 years ago
- Computing on Topological Domains☆241Updated this week
- ☆48Updated 8 months ago
- ☆176Updated 2 years ago
- A resource list for causality in statistics, data science and physics☆266Updated last week
- Uncertainty and causal emergence in complex networks☆119Updated 4 years ago
- Neural Tangent Kernel (NTK) module for the scikit-learn library☆25Updated last year
- Here are the notebooks for the Gaussian Processes and Bayesian Optimization course. The notebooks can be executed in Google Colab.☆27Updated last year
- A package for statistically rigorous scientific discovery using machine learning. Implements prediction-powered inference.☆260Updated last month
- Interpret text data using LLMs (scikit-learn compatible).☆170Updated 2 weeks ago
- Topological Deep Learning☆293Updated last week
- Mapper implementation (Topological Data Analysis) in Python☆63Updated 7 years ago
- Full Stack Graph Machine Learning: Theory, Practice, Tools and Techniques☆77Updated 8 months ago
- GPU-accelerated Next-Generation Network Analytics and Graph Learning for Time Series Data on Complex Networks.☆52Updated this week
- ☆35Updated last year
- Reconstructing shared causal drivers from noisy time series☆57Updated 11 months ago