AI

Rapid search for massive black hole binary coalescences using deep learning

Deep learning method for rapid detection of massive black hole binary coalescences in LISA data, achieving high sensitivity with no false alarms while processing 1-year data in seconds.

AI For Science 创客松——人工智能驱动的科学研究

AI For Scientist.

Clearing the Path to Discovery: Detecting and Denoising Gravitational Waves with Deep Learning

中国物理学会引力与相对论天体物理分会“2023年学术年会”. Website: http://cqutp.org/conferences/gr23/index.php

基于人工智能技术的引力波数据分析前沿

国家天文数据中心·天文信息学与虚拟天文台 2022 年学术年会. Website: https://nadc.china-vo.org/events/cvo2022/

机器学习在引力波数据处理中的应用

东北大学引力波宇宙学与射电天文学研究中心青年学者研讨会 - 特邀报告

Machine Learning in Gravitational Wave Data Analysis

Poster: https://ictp-ap.org/event/60

First machine learning gravitational-wave search mock data challenge

First community-wide machine learning gravitational wave search challenge with 6 algorithms tested on progressively realistic data including real O3a noise. Top ML methods achieve 95% of matched filtering sensitivity for Gaussian noise and 70% for real noise.

Deep neural networks & Gravitational-wave signal recognization

Exploring Gravitational-Wave Detection & Parameter Inference using Deep Learning

Ensemble of deep convolutional neural networks for real-time gravitational wave signal recognition

Ensemble deep learning model combining multiple CNNs successfully detects all O1/O2 BBH events (except GW170818) with zero false alarms on one month of O2 data, demonstrating real-time GW analysis capability.