Completed
Lectures on Deepsets, Graph Neural Network and Transformers... (Lecture 3) by Sanmay Ganguly
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Statistical Methods and Machine Learning in High Energy Physics - 2023
Automatically move to the next video in the Classroom when playback concludes
- 1 Lectures on Deepsets, Graph Neural Network and Transformers... (Lecture 1) by Sanmay Ganguly
- 2 Lectures on Deepsets, Graph Neural Network and Transformers... (Lecture 2) by Sanmay Ganguly
- 3 Lectures on Deepsets, Graph Neural Network and Transformers... (Lecture 3) by Sanmay Ganguly
- 4 Lectures on Deepsets, Graph Neural Network and Transformers with.....(Lecture-5) by Sanmay Ganguly
- 5 Statistics for Data Analysis with Exercises Case 2: Normalization Error (Lecture-4) Tommaso Dorigo
- 6 Lectures on Deepsets, Graph Neural Network and Transformers with appl..(Lecture-6) by Sanmay Ganguly
- 7 Differentiable Programming for End-to-end Optimization of Experiments (Lecture-5) by Tommaso Dorigo
- 8 Lectures on Deepsets, Graph Neural Network and Transformers with App..(Lecture-7) by Sanmay Ganguly
- 9 Machine Learning for LHC Theory (Lecture 1) by Tilman Plehn
- 10 Differentiable Programming for End-to-end Optimization of Experiments (Lecture 6) by Tommaso Dorigo
- 11 (Lecture 1) by Elham E Khoda & Aishik Ghosh
- 12 Differentiable Programming for End-to-End Optimization of Experiments (Lecture 7) by Tommaso Dorigo
- 13 Lectures on Deepsets, Graph Neural Network and Transformers.. (Lecture 9) by Sanmay Ganguly
- 14 Neural Simulation-Based Inference (Lecture 1) by Elham E Khoda & Aishik Ghosh
- 15 Neural Simulation-based Inference (Lecture 2) by Elham E Khoda & Aishik Ghosh
- 16 Neural Simulation-based Inference (Lecture 5) by Elham E Khoda & Aishik Ghosh
- 17 Generative Models by Elham E Khoda & Aishik Ghosh
- 18 Generative Models by Elham E Khoda & Aishik Ghosh
- 19 Generative Models Application by Elham E Khoda & Aishik Ghosh
- 20 Machine Learning in High Energy Physics by Michael Kagan
- 21 Anomaly Detection with Autoencoder by Tanmoy Modak
- 22 Project Presentation (Session 2)
- 23 Machine-Learned Symmetries by Konstantin Matchev
- 24 Machine Learning for LHC Theory (Lecture 2) by Tilman Plehn
- 25 ML4Higgs: success and Future Prospects by Nick Smith
- 26 Statistics For Data Analysis with Exercises (Lecture 1) by Tommaso Dorigo
- 27 Point Estimation Combining Measurements and Fitting (Lecture 2) by Tommaso Dorigo
- 28 Exercise with Root (Lecture 3) by Tommaso Dorigo
- 29 Bread and Butter ML in HEP by Elham E Khoda & Aishik Ghosh
- 30 Lectures on Deepsets, Graph Neural Network and Transformers... (Lecture 4) by Sanmay Ganguly