The LIGO and Virgo gravitational-wave observatories have detected many exciting events over the past five years. As the rate of detections grows with detector sensitivity, this poses a growing computational challenge for data analysis. With this in mind, in this work we apply deep learning techniques to perform fast likelihood-free Bayesian inference for gravitational waves. We train a neural-network conditional density estimator to model posterior probability distributions over the full 15-dimensional space of binary black hole system parameters, given detector strain data from multiple detectors. We use the method of normalizing flows---specifically, a neural spline normalizing flow---which allows for rapid sampling and density estimation...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
Multi-messenger Astrophysics is an emerging multidisciplinary field that demands fast data analysis....
The properties of black hole and neutron-star binaries are extracted from gravitational waves (GW) s...
Gravitational waves from compact binaries measured by the LIGO and Virgo detectors are routinely ana...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
Deep learning techniques for gravitational-wave parameter estimation haveemerged as a fast alternati...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH)...
Fast, highly accurate, and reliable inference of the sky origin of gravitational waves would enable ...
We combine amortized neural posterior estimation with importance sampling for fast and accurate grav...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
With the improving sensitivity of the global network of gravitational-wave detectors, we expect to o...
In the 2030s, a new era of gravitational-wave (GW) observations will dawn as multiple space-based GW...
We present a convolutional neural network, designed in the auto-encoder configuration that can detec...
Compact binary systems emit gravitational radiation which is potentially detectable by current Earth...
A new era of gravitational wave (GW) astronomy has begun with the recent detections by LIGO. However...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
Multi-messenger Astrophysics is an emerging multidisciplinary field that demands fast data analysis....
The properties of black hole and neutron-star binaries are extracted from gravitational waves (GW) s...
Gravitational waves from compact binaries measured by the LIGO and Virgo detectors are routinely ana...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
Deep learning techniques for gravitational-wave parameter estimation haveemerged as a fast alternati...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH)...
Fast, highly accurate, and reliable inference of the sky origin of gravitational waves would enable ...
We combine amortized neural posterior estimation with importance sampling for fast and accurate grav...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
With the improving sensitivity of the global network of gravitational-wave detectors, we expect to o...
In the 2030s, a new era of gravitational-wave (GW) observations will dawn as multiple space-based GW...
We present a convolutional neural network, designed in the auto-encoder configuration that can detec...
Compact binary systems emit gravitational radiation which is potentially detectable by current Earth...
A new era of gravitational wave (GW) astronomy has begun with the recent detections by LIGO. However...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
Multi-messenger Astrophysics is an emerging multidisciplinary field that demands fast data analysis....
The properties of black hole and neutron-star binaries are extracted from gravitational waves (GW) s...