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Utilizing artificial intelligence to uncover the Kingdom’s ancient stone structures

KAUST ·

KAUST researchers are using AI to analyze satellite imagery for the automated detection of ancient stone structures in northwest Saudi Arabia, including mustatils (rectangular structures dating to the late 6th millennium BCE) and ruins in circular and triangular shapes. They developed a deep learning algorithm trained on manually identified datasets to isolate similar features over a wide area. The tool converts detected pixels into geodetic coordinates using GPS, assembling them into an online map and database. Why it matters: This project exemplifies computational archaeology, speeding up archaeological discoveries, promoting cultural heritage, and providing a methodology useful to other sectors of the economy.

WEP 2015: Unearthing the history of Mada’in Saleh

KAUST ·

Dr. Laila Nehme, a French archaeologist from CNRS, visited KAUST as part of the Winter Enrichment Program (WEP) to discuss her work on Mada’in Saleh, also known as Al-Hijr or Hegra. Nehme co-directs the Saudi-French Archaeological Project and specializes in Nabatean epigraphy, studying the daily life of the ancient Nabateans through unearthed remains. Her team, working with the Saudi Commission for Tourism and Antiquities, is beginning its third four-year program to study the site. Why it matters: The research sheds light on the historical significance of Mada’in Saleh, a UNESCO World Heritage Site, and the Nabatean civilization's southernmost settlement, enhancing our understanding of the region's rich cultural heritage.

Problems in network archaeology: root finding and broadcasting

MBZUAI ·

This article discusses a talk by Gábor Lugosi on "network archaeology," specifically the problems of root finding and broadcasting in large networks. The talk addresses discovering the past of dynamically growing networks when only a present-day snapshot is observed. Lugosi's research interests include machine learning theory, nonparametric statistics, and random structures. Why it matters: Understanding the evolution and origins of networks is crucial for various applications, including analyzing social networks, biological systems, and the spread of information.

UAE launches AI project to digitally preserve national history - Gulf News

The National ·

The UAE has launched a new AI-powered project dedicated to digitally preserving its national history and cultural heritage. This initiative aims to digitize, catalog, and make accessible a vast collection of historical documents, artifacts, and oral traditions. The project seeks to create a comprehensive digital archive to ensure the longevity and accessibility of the nation's cultural memory for future generations. Why it matters: This initiative demonstrates a significant application of AI by the UAE government for cultural preservation and national identity, setting a precedent for leveraging advanced technology in the digital humanities.