Inference-optimized AI and high performance computing for gravitational wave detection at scale
Pranshu Chaturvedi, Asad Khan, Minyang Tian, E. A. Huerta, Huihuo, Zheng

TL;DR
This paper presents an inference-optimized AI ensemble trained on supercomputers for rapid gravitational wave detection, achieving a 3X speedup while maintaining sensitivity, enabling large-scale analysis of LIGO data.
Contribution
The authors developed an AI ensemble optimized for inference acceleration on supercomputers, enabling rapid processing of extensive gravitational wave data without sacrificing detection accuracy.
Findings
Processed a month of LIGO data in 50 seconds
Achieved 3X inference speedup over traditional models
Detected all known binary black hole mergers in the dataset
Abstract
We introduce an ensemble of artificial intelligence models for gravitational wave detection that we trained in the Summit supercomputer using 32 nodes, equivalent to 192 NVIDIA V100 GPUs, within 2 hours. Once fully trained, we optimized these models for accelerated inference using NVIDIA TensorRT. We deployed our inference-optimized AI ensemble in the ThetaGPU supercomputer at Argonne Leadership Computer Facility to conduct distributed inference. Using the entire ThetaGPU supercomputer, consisting of 20 nodes each of which has 8 NVIDIA A100 Tensor Core GPUs and 2 AMD Rome CPUs, our NVIDIA TensorRT-optimized AI ensemble processed an entire month of advanced LIGO data (including Hanford and Livingston data streams) within 50 seconds. Our inference-optimized AI ensemble retains the same sensitivity of traditional AI models, namely, it identifies all known binary black hole mergers…
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