Saudi Supreme Court urges sighting Shawwal crescent on Saturday evening

Supreme Court is calling on Muslims throughout Saudi Arabia to look out for the crescent moon of Shawwal on Saturday evening. (File/Reuters)
Supreme Court is calling on Muslims throughout Saudi Arabia to look out for the crescent moon of Shawwal on Saturday evening. (File/Reuters)
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Updated 27 March 2025
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Saudi Supreme Court urges sighting Shawwal crescent on Saturday evening

Supreme Court is calling on Muslims throughout Saudi Arabia to look out for the crescent moon of Shawwal on Saturday evening.
  • Supreme Court called on anyone who sights the crescent moon the naked eye or through binoculars to report to the nearest court and register their testimony

RIYADH: The Supreme Court is calling on Muslims throughout Saudi Arabia to look out for the crescent moon of Shawwal on Saturday evening, Ramadan 29, 1446, which corresponds to March 29, 2025.

In an announcement on Thursday, the Supreme Court called on anyone who sights the crescent moon the naked eye or through binoculars to report to the nearest court and register their testimony.

The announcement read: “The Supreme Court calls on all Muslims throughout the Kingdom to sight the Shawwal crescent moon on Saturday evening. The Supreme Court requests that anyone who sights it with the naked eye or through binoculars report to the nearest court and register their testimony, or contact the nearest center for assistance in reaching the nearest court. The Supreme Court hopes that those who are able to see it will pay attention to this matter and join the committees formed in the all regions for this purpose, seeking reward and recompense for their participation, as it promotes cooperation in righteousness and piety and benefits all Muslims.”

The sighting of the Shawwal crescent moon marks the end of the fasting month of Ramadan that this year began on March 1.


Saudi researchers develop AI system for camel herders

Saudi researchers develop AI system for camel herders
Updated 14 November 2025
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Saudi researchers develop AI system for camel herders

Saudi researchers develop AI system for camel herders
  • AI-powered drone system can recognize and track camels from the air 
  • Prof. Basem Shihada and his team at KAUST developed the low-cost system

RIYADH: A research team at King Abdullah University of Science and Technology has created a low-cost, AI-powered drone system that can recognize and track camels from the air.

The system promises an affordable option for camel herders to continue one of Saudi Arabia’s oldest labors and for scientists to learn more about camel migration patterns and habits, according to a KAUST press release.

Created by Professor Basem Shihada and his labmates, the system uses inexpensive commercial drones and cameras to enable camel herders to track their camels in real time without relying on expensive GPS collars or satellite connections.

The team used a single drone-mounted camera to capture aerial footage of small camel herds in Saudi Arabia, then trained their AI model using machine learning. The model revealed new insights into the animals’ behaviors.

“We found their migration patterns were not random but showed identifiable patterns,” said KAUST scientist Chun Pong Lau, who was also involved in the project.

The release added that camels, especially elders, showed coordinated grazing migration, covering long distances throughout the day, but always returned to their herder by sunset. They also showed high sensitivity to the drone’s sound, which is why the KAUST scientists kept the drone at least 120 meters above the ground.

For centuries, camels have been central to Arabian life by providing transport, food and a cultural link to the desert. Today, they contribute more than SR2 billion ($534 million) annually to the Saudi economy through industries such as food, textiles and tourism.

However, herding remains a challenge, with camels roaming up to 50 km a day across isolated terrain. This mobility often leads to road accidents, overgrazing and loss of livestock.

As a next step, Shihada and his colleagues plan to collect video of larger camel herds of more heterogeneous sizes and colors to train their AI system for higher performance.