Scalable Cosmic AI Inference using Cloud Serverless Computing
Mills Staylor, Amirreza Dolatpour Fathkouhi, Md Khairul Islam, Kaleigh O'Hara, Ryan Ghiles Goudjil, Geoffrey Fox, Judy Fox

TL;DR
This paper presents CAI, a cloud serverless framework that enables scalable, efficient, and cost-effective astronomical image inference using pre-trained models, significantly reducing processing time and resource requirements.
Contribution
The introduction of CAI, a novel serverless cloud-based inference framework that integrates foundation models for large-scale astronomical data processing.
Findings
Achieved 12.6 GB dataset inference in 28 seconds
Demonstrated scalability across user devices, HPC, and cloud
Maintained near-constant inference times with increasing data sizes
Abstract
Large-scale astronomical image data processing and prediction are essential for astronomers, providing crucial insights into celestial objects, the universe's history, and its evolution. While modern deep learning models offer high predictive accuracy, they often demand substantial computational resources, making them resource-intensive and limiting accessibility. We introduce the Cloud-based Astronomy Inference (CAI) framework to address these challenges. This scalable solution integrates pre-trained foundation models with serverless cloud infrastructure through a Function-as-a-Service (FaaS). CAI enables efficient and scalable inference on astronomical images without extensive hardware. Using a foundation model for redshift prediction as a case study, our extensive experiments cover user devices, HPC (High-Performance Computing) servers, and Cloud. Using redshift prediction with the…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Astronomical Observations and Instrumentation · Big Data and Digital Economy
