


Saudi Arabia uses artificial intelligence to accelerate sustainable development plans
Announced at the 2nd Global Artificial Intelligence Summit in Saudi Arabia, the first project under the agreement will be in partnership with the Saudi Arabian Ministry of Energy. SDAIA, the Ministry of Energy and IBM will use artificial intelligence technology to detect, map and ultimately reduce carbon emissions across the Kingdom.
Dr. Majid Al-Tuwaijri, CEO of the National Center for Artificial Intelligence, said: “This agreement with IBM will help create opportunities to address the circular carbon economy, petrochemicals and Key challenges in the industrial sector, by developing innovative solutions in the field of data and artificial intelligence, and exchanging shared experiences and investment opportunities in this key area to support the goals of Vision 2030."
This Agreement will leverage IBM's expertise in technologies such as artificial intelligence. This will play a key role in promoting the adoption of a circular carbon economy and achieving the goals announced during the Saudi Green Initiative.
The management of greenhouse gas emissions is critical to Saudi Arabia’s goal of achieving net zero. Using multiple satellites and different types of imaging technology, an artificial intelligence model will be trained to identify and pinpoint different forms of gas across the country. By doing so, this will help identify problems earlier and better, something traditional measurement methods cannot.
As part of the overall agreement, IBM will work with SDAIA to identify high-value applications of artificial intelligence and machine learning to solve challenges for public and private sector organizations in the Kingdom, with a focus on supporting the Kingdom’s sustainable development and industrialization goals.
Saudi Arabia is currently undergoing a major transformation plan to become a global logistics hub and industrial powerhouse. It has also set a target to achieve net-zero emissions by 2060 and support global efforts to reduce emissions.
New cities and infrastructure being built in Saudi Arabia, such as NEOM (Saudi Arabia plans to spend about one trillion US dollars to build a 120-kilometer-long "zero-carbon super city" NEOM in Saudi Arabia. NEOM is expected to accommodate 5 million people and will have multi-story vertical buildings with high-speed trains running under the buildings, vertical farming, stadiums and marinas, using 100% renewable energy), all with sustainability in mind Designed for development goals.
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