Talks and presentations

Training and Deploying a Neural Network for Noise Regression in Gravitational Wave Astronomy Permalink

December 02, 2020

Talk, Fast Machine Learning for Science Workshop, Virtual

In gravitational-wave detectors, regression techniques are applied to remove noise artifacts in order to improve the ability to observe and extract information from astrophysics signals. We present a deep learning-based noise regression method called DeepClean that can subtract linear and non-linear noise in gravitational-wave data from the Advanced LIGO detectors. We also discuss our work toward a new computing model in gravitational-wave data analysis where GPU and FPGA acceleration on machine learning inference can be deployed on an as-a-service basis. We use DeepClean as a use-case for exploring such computing models in order to achieve real-time capabilities and overall flexibility such models provide.

Deploying Deep Neural Networks as a Service Using TensorRT and NVIDIA-Docker

March 26, 2018

Tutorial, Deploying Deep Neural Networks as a Service Using TensorRT and NVIDIA-Docker, San Jose, California

Demo on converting trained recurrent and convolutional models from multiple deep learning libraries into accelerated inference runtime engines and exposing them via an inference service