Machine learning has emerged as a popular and powerful approach for solving problems in astrophysics. We review applications of machine learning techniques for the analysis of ground-based gravitational-wave (GW) detector data. Examples include techniques for improving the sensitivity of Advanced Laser Interferometer GW Observatory and Advanced Virgo GW searches, methods for fast measurements of the astrophysical parameters of GW sources, and algorithms for reduction and characterization of non-astrophysical detector noise. These applications demonstrate how machine learning techniques may be harnessed to enhance the science that is possible with current and future GW detectors
Gravitational waves, predicted by Albert Einstein in 1916 and first directly observed in 2015, are a...
Gravitational waves, predicted by Albert Einstein in 1916 and first directly observed in 2015, are a...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. ...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
Machine learning has emerged as a popular and powerful approach for solving problems in astrophysics...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
Most of the data collected by Gravitational Wave (GW) interferometers are essentially backgroun...
The sensitivity of searches for astrophysical transients in data from the Laser Interferometer Gravi...
Presentation delivered at the Banff International Research Station (BIRS) for Mathematical Innovatio...
Gravitational waves, predicted by Albert Einstein in 1916 and first directly observed in 2015, are a...
Gravitational waves, predicted by Albert Einstein in 1916 and first directly observed in 2015, are a...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. ...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
International audienceMachine learning has emerged as a popular and powerful approach for solving pr...
Machine learning has emerged as a popular and powerful approach for solving problems in astrophysics...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
Most of the data collected by Gravitational Wave (GW) interferometers are essentially backgroun...
The sensitivity of searches for astrophysical transients in data from the Laser Interferometer Gravi...
Presentation delivered at the Banff International Research Station (BIRS) for Mathematical Innovatio...
Gravitational waves, predicted by Albert Einstein in 1916 and first directly observed in 2015, are a...
Gravitational waves, predicted by Albert Einstein in 1916 and first directly observed in 2015, are a...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. ...