This is a crash course in classical and quantum ML at the 3rd Summer School and Internship Programme at CTP BUE, Egypt.
https://www.youtube.com/watch?v=Voaq3Fz6dc0&list=PLA4uYJ1jShPmbTydLHUOF4PBJdUs8DNvq&index=1
Folder Codes
contains all the python notebook that used to create the matirals in the lectures.
Folder Animation
contains the animation used in the slides and lost when it converted to pdf.
The course covers basics of classical and quantum machine learning methods as
Lecture_1.pdf
Overview about recent classical and quantum machine learning algorithms in HEP.Lecture_2.pdf
Introduction to ML, linear and non-linear regression models.Lecture_3.pdf
Ensemble learning, decision trees, boosted decision tress and random forest.Lecture_4.pdf
Introduction to deep learning and feed forward deep neural network.Lecture_5.pdf
Convolution based neural network for image recognition.Lecture_6.pdf
Introduction to quantum machine learning, quantum gates, quantum feature map, data encoding and VQCs.