Recently, graph neural networks (GNNs) have been successfully used for a variety of particle reconstruction problems in high energy physics, including particle tracking. The Exa.TrkX pipeline based on GNNs demonstrated promising performance in reconstructing particle tracks in dense environments. It includes five discrete steps: data encoding, graph building, edge filtering, GNN, and track labeling. All steps were written in Python and run on both GPUs and CPUs. In this work, we accelerate the Python implementation of the pipeline through customized and commercial GPU-enabled software libraries, and develop a C++ implementation for inferencing the pipeline. The implementation features an improved, CUDA-enabled fixed-radius nearest neighbor ...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...
Graph Neural Networks (GNNs) have been shown to produce high accuracy performance on track reconstru...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...
The reconstruction of charged particle trajectories is an essential component of high energy physics...
To address the unprecedented scale of HL-LHC data, the Exa.TrkX (previously HEP.TrkX) project has be...
Particle tracking plays a pivotal role in almost all physics analyses at the Large Hadron Collider. ...
The Exa.TrkX project has applied geometric learning concepts such as metric learning and graph neura...
The Exa.TrkX project has applied geometric learning concepts such as metric learning and graph neura...
The Exa.TrkX project has applied geometric learning concepts such as metric learning and graph neura...
Particle tracking is a challenging pattern recognition task at the Large Hadron Collider (LHC) and t...
Abstract The Exa.TrkX project has applied geometric learning concepts such as metric learning and gr...
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 project is investigating a variety o...
<p>Recent work has demonstrated that graph neural networks (GNNs) trained for charged particle...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...
Graph Neural Networks (GNNs) have been shown to produce high accuracy performance on track reconstru...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...
The reconstruction of charged particle trajectories is an essential component of high energy physics...
To address the unprecedented scale of HL-LHC data, the Exa.TrkX (previously HEP.TrkX) project has be...
Particle tracking plays a pivotal role in almost all physics analyses at the Large Hadron Collider. ...
The Exa.TrkX project has applied geometric learning concepts such as metric learning and graph neura...
The Exa.TrkX project has applied geometric learning concepts such as metric learning and graph neura...
The Exa.TrkX project has applied geometric learning concepts such as metric learning and graph neura...
Particle tracking is a challenging pattern recognition task at the Large Hadron Collider (LHC) and t...
Abstract The Exa.TrkX project has applied geometric learning concepts such as metric learning and gr...
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 project is investigating a variety o...
<p>Recent work has demonstrated that graph neural networks (GNNs) trained for charged particle...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...
Graph Neural Networks (GNNs) have been shown to produce high accuracy performance on track reconstru...
The unprecedented increase of complexity and scale of data is expected in the necessary computation ...