Statistics for Data Analysis with Exercises - Lecture 3
Offered By: International Centre for Theoretical Sciences via YouTube
Course Description
Overview
Delve into the third lecture of a comprehensive series on Statistics for Data Analysis, presented by Tommaso Dorigo at the International Centre for Theoretical Sciences. Explore advanced statistical methods and their applications in data analysis through practical exercises. Gain insights into techniques crucial for High Energy Physics research, including classification, identification, and estimation strategies used in LHC experiments. Learn how to apply deep machine learning and artificial intelligence frameworks to analyze large-scale datasets. Enhance your skills in programming languages like Python and C++, and familiarize yourself with data analysis tools such as Madgraph, Pythia, Delphes, and ROOT. Benefit from this lecture as part of a broader program aimed at developing human resources in machine learning for High Energy Physics, suitable for PhD students and postdoctoral researchers in theoretical or experimental particle physics and astro-particle physics.
Syllabus
Statistics for Data Analysis with Exercises (Lecture-3) by Tommaso Dorigo
Taught by
International Centre for Theoretical Sciences
Related Courses
Физика как глобальный проектNational Research Nuclear University MEPhI via Coursera Introduction to Quantum Field Theory (Theory of Scalar Fields) - Part 2
IIT Hyderabad via Swayam Deep Learning Pipelines for High Energy Physics Using Apache Spark and Distributed Keras
Databricks via YouTube Helium Dimers and Trimers - From Imaging of Structure to Movies of Ultrafast Dynamics - Reinhard Dorner
Kavli Institute for Theoretical Physics via YouTube Bosons and Multi-Component Fermions Near Unitarity - Ubirajara van Kolck
Kavli Institute for Theoretical Physics via YouTube