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Applications of Deep Learning to physics workflows
by
Guiang, Jonathan
, Audenaert, Jeroen
, Villar, Victoria Ashley
, Beveridge, Damon
, Sravan, Niharika
, Pedro, Kevin
, Dax, Maximilian
, Scholberg, Kate
, Yang, Tingjun
, Hakenmueller, Janina
, Chatterjee, Chayan
, Hsu, Shih-Chieh
, Muhammed Saleem Cholayil
, Coughlin, Michael
, Jawahar, Pratik
, Narayan, Gautham
, Norman, Michael
, Andrea Di Luca
, Chatterjee, Deep
, Khoda, Elham E
, Peterson, Joshua
, Ryan Raikman
, Sutton, Patrick
, Batool Safarzadeh Samani
, Desai, Aman
, Naylor, Andrew
, Omer, Rafia
, McLeod, Alistair
, Ricker, George
, Alameda, Jay
, Graham, Matthew
, Farrell, Steven
, Gunny, Alec
, Feng, Yongbin
, Eric Anton Moreno
, Duarte, Javier Mauricio
, Schuy, Alex
, Benoit, Will
, Shivam Raj
, Chen, Andy
, Mo, Geoffrey
, Muthukrishna, Daniel
, Neubauer, Mark
, Robbins, Jared
, Govorkova, Ekaterina
, Liu, Mia
, Kellis, Manolis
, Wen, Linqing
, Pürrer, Michael
, Chou, Chia-Jui
, Agarwal, Manan
, Goodarzi, Pooyan
, Hawks, Ben
, Guo, Weichangfeng
, Fatima Zahra Lahbabi
, Van Tha Bik Lian
, Marx, Ethan
, Shu-Wei Yeh
, Ju, Xiangyang
, Wuerthwein, Frank
, Skliris, Vasileios
, Bhattacharya, Meghna
, Malanchev, Konstantin
, Katsavounidis, Erik
, Soni, Siddharth
, Wang, Xiw
in
Algorithms
/ Artificial intelligence
/ Cloud computing
/ Datasets
/ Deep learning
/ Gravitational waves
/ Machine learning
/ Particle physics
/ Physics
/ Wave physics
/ Workflow
/ Workshops
2023
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Applications of Deep Learning to physics workflows
by
Guiang, Jonathan
, Audenaert, Jeroen
, Villar, Victoria Ashley
, Beveridge, Damon
, Sravan, Niharika
, Pedro, Kevin
, Dax, Maximilian
, Scholberg, Kate
, Yang, Tingjun
, Hakenmueller, Janina
, Chatterjee, Chayan
, Hsu, Shih-Chieh
, Muhammed Saleem Cholayil
, Coughlin, Michael
, Jawahar, Pratik
, Narayan, Gautham
, Norman, Michael
, Andrea Di Luca
, Chatterjee, Deep
, Khoda, Elham E
, Peterson, Joshua
, Ryan Raikman
, Sutton, Patrick
, Batool Safarzadeh Samani
, Desai, Aman
, Naylor, Andrew
, Omer, Rafia
, McLeod, Alistair
, Ricker, George
, Alameda, Jay
, Graham, Matthew
, Farrell, Steven
, Gunny, Alec
, Feng, Yongbin
, Eric Anton Moreno
, Duarte, Javier Mauricio
, Schuy, Alex
, Benoit, Will
, Shivam Raj
, Chen, Andy
, Mo, Geoffrey
, Muthukrishna, Daniel
, Neubauer, Mark
, Robbins, Jared
, Govorkova, Ekaterina
, Liu, Mia
, Kellis, Manolis
, Wen, Linqing
, Pürrer, Michael
, Chou, Chia-Jui
, Agarwal, Manan
, Goodarzi, Pooyan
, Hawks, Ben
, Guo, Weichangfeng
, Fatima Zahra Lahbabi
, Van Tha Bik Lian
, Marx, Ethan
, Shu-Wei Yeh
, Ju, Xiangyang
, Wuerthwein, Frank
, Skliris, Vasileios
, Bhattacharya, Meghna
, Malanchev, Konstantin
, Katsavounidis, Erik
, Soni, Siddharth
, Wang, Xiw
in
Algorithms
/ Artificial intelligence
/ Cloud computing
/ Datasets
/ Deep learning
/ Gravitational waves
/ Machine learning
/ Particle physics
/ Physics
/ Wave physics
/ Workflow
/ Workshops
2023
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Do you wish to request the book?
Applications of Deep Learning to physics workflows
by
Guiang, Jonathan
, Audenaert, Jeroen
, Villar, Victoria Ashley
, Beveridge, Damon
, Sravan, Niharika
, Pedro, Kevin
, Dax, Maximilian
, Scholberg, Kate
, Yang, Tingjun
, Hakenmueller, Janina
, Chatterjee, Chayan
, Hsu, Shih-Chieh
, Muhammed Saleem Cholayil
, Coughlin, Michael
, Jawahar, Pratik
, Narayan, Gautham
, Norman, Michael
, Andrea Di Luca
, Chatterjee, Deep
, Khoda, Elham E
, Peterson, Joshua
, Ryan Raikman
, Sutton, Patrick
, Batool Safarzadeh Samani
, Desai, Aman
, Naylor, Andrew
, Omer, Rafia
, McLeod, Alistair
, Ricker, George
, Alameda, Jay
, Graham, Matthew
, Farrell, Steven
, Gunny, Alec
, Feng, Yongbin
, Eric Anton Moreno
, Duarte, Javier Mauricio
, Schuy, Alex
, Benoit, Will
, Shivam Raj
, Chen, Andy
, Mo, Geoffrey
, Muthukrishna, Daniel
, Neubauer, Mark
, Robbins, Jared
, Govorkova, Ekaterina
, Liu, Mia
, Kellis, Manolis
, Wen, Linqing
, Pürrer, Michael
, Chou, Chia-Jui
, Agarwal, Manan
, Goodarzi, Pooyan
, Hawks, Ben
, Guo, Weichangfeng
, Fatima Zahra Lahbabi
, Van Tha Bik Lian
, Marx, Ethan
, Shu-Wei Yeh
, Ju, Xiangyang
, Wuerthwein, Frank
, Skliris, Vasileios
, Bhattacharya, Meghna
, Malanchev, Konstantin
, Katsavounidis, Erik
, Soni, Siddharth
, Wang, Xiw
in
Algorithms
/ Artificial intelligence
/ Cloud computing
/ Datasets
/ Deep learning
/ Gravitational waves
/ Machine learning
/ Particle physics
/ Physics
/ Wave physics
/ Workflow
/ Workshops
2023
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Paper
Applications of Deep Learning to physics workflows
2023
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Overview
Modern large-scale physics experiments create datasets with sizes and streaming rates that can exceed those from industry leaders such as Google Cloud and Netflix. Fully processing these datasets requires both sufficient compute power and efficient workflows. Recent advances in Machine Learning (ML) and Artificial Intelligence (AI) can either improve or replace existing domain-specific algorithms to increase workflow efficiency. Not only can these algorithms improve the physics performance of current algorithms, but they can often be executed more quickly, especially when run on coprocessors such as GPUs or FPGAs. In the winter of 2023, MIT hosted the Accelerating Physics with ML at MIT workshop, which brought together researchers from gravitational-wave physics, multi-messenger astrophysics, and particle physics to discuss and share current efforts to integrate ML tools into their workflows. The following white paper highlights examples of algorithms and computing frameworks discussed during this workshop and summarizes the expected computing needs for the immediate future of the involved fields.
Publisher
Cornell University Library, arXiv.org
Subject
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