Accurate particle identification (PID) is one of the most important aspects of the LHCb experiment. Modern machine learning techniques such as neural networks (NNs) are efficiently applied to this problem and are integrated into the LHCb software. In this research, we discuss novel applications of neural network speed-up techniques to achieve faster PID in LHC upgrade conditions. We show that the best results are obtained using variational dropout sparsification, which provides a prediction (feedforward pass) speed increase of up to a factor of sixteen even when compared to a model with shallow networks
Spiking neural networks are an interesting candidate for signal processing at the High-Luminosity LH...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...
One of the most important aspects of data processing at LHC experiments is the particle identificati...
One of the most important aspects of data processing at flavor physics experiments is the particle i...
One of the most important aspects of data processing at flavor physics experiments is the particle i...
One of the most important aspects of data processing at flavor physics experiments is the particle i...
A neural-network based algorithm to identify fake tracks in the LHCb pattern recognition is presente...
Particle identification (PID) plays a crucial role in LHCb analyses. Combining information from LHCb...
One of the most important aspects of data processing at LHC experiments is the particle identificati...
One of the most important aspects of data analysis at the LHC experiments is the particle identifica...
One of the most important aspects of data analysis at the LHC experiments is the particle identifica...
The purpose of this thesis is to apply more recent machine learning algorithms based on neural netwo...
This Masters thesis outlines the application of machine learning techniques, predominantly deep lear...
One of the most challenging data analysis tasks of modern High Energy Physics experiments is the ide...
Spiking neural networks are an interesting candidate for signal processing at the High-Luminosity LH...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...
One of the most important aspects of data processing at LHC experiments is the particle identificati...
One of the most important aspects of data processing at flavor physics experiments is the particle i...
One of the most important aspects of data processing at flavor physics experiments is the particle i...
One of the most important aspects of data processing at flavor physics experiments is the particle i...
A neural-network based algorithm to identify fake tracks in the LHCb pattern recognition is presente...
Particle identification (PID) plays a crucial role in LHCb analyses. Combining information from LHCb...
One of the most important aspects of data processing at LHC experiments is the particle identificati...
One of the most important aspects of data analysis at the LHC experiments is the particle identifica...
One of the most important aspects of data analysis at the LHC experiments is the particle identifica...
The purpose of this thesis is to apply more recent machine learning algorithms based on neural netwo...
This Masters thesis outlines the application of machine learning techniques, predominantly deep lear...
One of the most challenging data analysis tasks of modern High Energy Physics experiments is the ide...
Spiking neural networks are an interesting candidate for signal processing at the High-Luminosity LH...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...
This thesis investigates the use of machine learning techniques to improve the precision of timing m...