Discovery in Physics
Contributor(s)
Morik, Katharina (editor)
Rhode, Wolfgang (editor)
Language
EnglishAbstract
Volume 2 covers knowledge discovery in particle and astroparticle physics. Instruments gather petabytes of data and machine learning is used to process the vast amounts of data and to detect relevant examples efficiently. The physical knowledge is encoded in simulations used to train the machine learning models. The interpretation of the learned models serves to expand the physical knowledge resulting in a cycle of theory enhancement.
Keywords
Resource-Constrained Data Analysis; Resource-Aware Machine Learning; Embedded Systems and Machine Learning; Big Data and Machine Learning; Artificial Intelligence; Highly Distributed Data; ML on Small devices Data mining for Ubiquitous System; Software Cyber-physical systems; Machine learning in high-energy physics; Machine learning for knowledge discoveryDOI
10.1515/9783110785968ISBN
9783110785968, 9783110785951, 9783110786132, 9783110785968Publisher
De GruyterPublisher website
https://www.degruyter.com/Publication date and place
Berlin/Boston, 2022Imprint
De GruyterSeries
De Gruyter STEM, Volume 2Classification
Chemistry
Algorithms and data structures
Databases
Computer networking and communications
Artificial intelligence