Optics corrections in the LHC are based on a response matrix between available correctors and observables. Supervised learning has been applied to optics correction in the LHC demonstrating promising results on simulations and demonstrating the ability to reach acceptably low $\beta$-beating. A comparison of different algorithms to the traditional response matrix approach is given, and it is followed by the presentation of further possible concepts to obtain optics corrections using machine learning (ML)
The Large Hadron Collider is a indescribably complicated system with numerous intertwined systems, e...
The use of machine learning is increasing at the LHC experiments including both the ATLAS and LHCb c...
Most of the computing resources pledged to the LHCb experiment at CERN are necessary to the producti...
The field of artificial intelligence is driven by the goal to provide machines with human-like intel...
The present research in high energy physics as well as in the nuclear physics requires the use of mo...
Machine learning techniques have been used extensively in several domains of Science and Engineering...
Machine learning entails a broad range of techniques that have been widely used in Science and Engin...
A review of machine learning for Higgs boson physics at the LHC at both ATLAS and CMS). It includes ...
Optical proximity correction (OPC) is a critical step in semiconductor manufacturing due to its high...
The Machine learning toolbox brings significant advantages to optics. Machine learning is effective...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
LHC Optics Measurements and Corrections (OMC) require efficient on-line software applications to acq...
Optics stability during all phases of operation is crucial for the LHC. The optical properties of th...
Machine Learning (ML) techniques are widely used in science and industry to discover relevant inform...
The use of machine learning techniques for classification is well established. They are applied wide...
The Large Hadron Collider is a indescribably complicated system with numerous intertwined systems, e...
The use of machine learning is increasing at the LHC experiments including both the ATLAS and LHCb c...
Most of the computing resources pledged to the LHCb experiment at CERN are necessary to the producti...
The field of artificial intelligence is driven by the goal to provide machines with human-like intel...
The present research in high energy physics as well as in the nuclear physics requires the use of mo...
Machine learning techniques have been used extensively in several domains of Science and Engineering...
Machine learning entails a broad range of techniques that have been widely used in Science and Engin...
A review of machine learning for Higgs boson physics at the LHC at both ATLAS and CMS). It includes ...
Optical proximity correction (OPC) is a critical step in semiconductor manufacturing due to its high...
The Machine learning toolbox brings significant advantages to optics. Machine learning is effective...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
LHC Optics Measurements and Corrections (OMC) require efficient on-line software applications to acq...
Optics stability during all phases of operation is crucial for the LHC. The optical properties of th...
Machine Learning (ML) techniques are widely used in science and industry to discover relevant inform...
The use of machine learning techniques for classification is well established. They are applied wide...
The Large Hadron Collider is a indescribably complicated system with numerous intertwined systems, e...
The use of machine learning is increasing at the LHC experiments including both the ATLAS and LHCb c...
Most of the computing resources pledged to the LHCb experiment at CERN are necessary to the producti...