KAUST researchers developed a new algorithm for detecting cause and effect in large datasets. The algorithm aims to find underlying models that generate data, helping uncover cause-and-effect dynamics. It could aid researchers across fields like cell biology and genetics by answering questions that typical machine learning cannot. Why it matters: This advancement could equip current machine learning methods with abilities to better deal with abstraction, inference, and concepts such as cause and effect.
A Science Robotics article co-authored by MBZUAI explores the use of AI and robotics to accelerate scientific discovery in chemistry, biology, and materials science. The paper envisions closed-loop labs with AI-designed experiments, robotic execution, and machine learning analysis, potentially cutting discovery timelines. It proposes a framework emphasizing human-machine partnership, modular systems, and AI-driven planning while addressing challenges like data standardization. Why it matters: This research highlights the potential of AI and robotics to transform scientific research in the GCC region and beyond, enabling faster discoveries and democratizing access to advanced lab capabilities.