Astronomia ex machina: a history, primer, and outlook on neural networks in astronomy

November 07, 2022 ยท Declared Dead ยท ๐Ÿ› Royal Society Open Science

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Authors Michael J. Smith, James E. Geach arXiv ID 2211.03796 Category astro-ph.IM Cross-listed cs.LG Citations 49 Venue Royal Society Open Science Last Checked 1 month ago
Abstract
In this review, we explore the historical development and future prospects of artificial intelligence (AI) and deep learning in astronomy. We trace the evolution of connectionism in astronomy through its three waves, from the early use of multilayer perceptrons, to the rise of convolutional and recurrent neural networks, and finally to the current era of unsupervised and generative deep learning methods. With the exponential growth of astronomical data, deep learning techniques offer an unprecedented opportunity to uncover valuable insights and tackle previously intractable problems. As we enter the anticipated fourth wave of astronomical connectionism, we argue for the adoption of GPT-like foundation models fine-tuned for astronomical applications. Such models could harness the wealth of high-quality, multimodal astronomical data to serve state-of-the-art downstream tasks. To keep pace with advancements driven by Big Tech, we propose a collaborative, open-source approach within the astronomy community to develop and maintain these foundation models, fostering a symbiotic relationship between AI and astronomy that capitalizes on the unique strengths of both fields.
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