The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the available computing resources, i.e. affordable software and computing are essential. The development of novel methods for charged particle reconstruction at the HL-LHC incorporating machine learning techniques or based entirely on machine learning is a vibrant area of research. In the past two years, algorithms for track pattern recognition based on graph neural networks (GNNs) have emerged as a particularly promising approach. Previous work mainly aimed at establishing proof of principle. In the present document we describe new algorithms that can handle complex realistic detectors. The new algorithms are implemented in ACTS, a common framework f...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Unprecedented increase of complexity and scale of data is expected in computation necessary for the ...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
To address the unprecedented scale of HL-LHC data, the Exa.TrkX (previously HEP.TrkX) project has be...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
Graph-based techniques and graph neural networks (GNNs) in particular are a promising solution for p...
For the past year, the HEP.TrkX project has been investigating machine learning solutions to LHC par...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Unprecedented increase of complexity and scale of data is expected in computation necessary for the ...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
The physics reach of the HL-LHC will be limited by how efficiently the experiments can use the avail...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
To address the unprecedented scale of HL-LHC data, the Exa.TrkX (previously HEP.TrkX) project has be...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
International audienceIn preparation for the upcoming HL-LHC era, ATLAS is pursuing several methods ...
Graph-based techniques and graph neural networks (GNNs) in particular are a promising solution for p...
For the past year, the HEP.TrkX project has been investigating machine learning solutions to LHC par...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Unprecedented increase of complexity and scale of data is expected in computation necessary for the ...