Artificial Intelligence For High Energy Physics


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Artificial Intelligence For High Energy Physics


Artificial Intelligence For High Energy Physics

Author: Paolo Calafiura

language: en

Publisher: World Scientific

Release Date: 2022-01-05


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The Higgs boson discovery at the Large Hadron Collider in 2012 relied on boosted decision trees. Since then, high energy physics (HEP) has applied modern machine learning (ML) techniques to all stages of the data analysis pipeline, from raw data processing to statistical analysis. The unique requirements of HEP data analysis, the availability of high-quality simulators, the complexity of the data structures (which rarely are image-like), the control of uncertainties expected from scientific measurements, and the exabyte-scale datasets require the development of HEP-specific ML techniques. While these developments proceed at full speed along many paths, the nineteen reviews in this book offer a self-contained, pedagogical introduction to ML models' real-life applications in HEP, written by some of the foremost experts in their area.

The Principles of Deep Learning Theory


The Principles of Deep Learning Theory

Author: Daniel A. Roberts

language: en

Publisher: Cambridge University Press

Release Date: 2022-05-26


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This volume develops an effective theory approach to understanding deep neural networks of practical relevance.

Artificial Intelligence For Science: A Deep Learning Revolution


Artificial Intelligence For Science: A Deep Learning Revolution

Author: Alok Choudhary

language: en

Publisher: World Scientific

Release Date: 2023-03-21


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This unique collection introduces AI, Machine Learning (ML), and deep neural network technologies leading to scientific discovery from the datasets generated both by supercomputer simulation and by modern experimental facilities.Huge quantities of experimental data come from many sources — telescopes, satellites, gene sequencers, accelerators, and electron microscopes, including international facilities such as the Large Hadron Collider (LHC) at CERN in Geneva and the ITER Tokamak in France. These sources generate many petabytes moving to exabytes of data per year. Extracting scientific insights from these data is a major challenge for scientists, for whom the latest AI developments will be essential.The timely handbook benefits professionals, researchers, academics, and students in all fields of science and engineering as well as AI, ML, and neural networks. Further, the vision evident in this book inspires all those who influence or are influenced by scientific progress.


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