Quantum-Informed AI Improves Long-Term Turbulence Forecasts While Using Far Less Memory
5 Articles
5 Articles
Quantum AI just got shockingly good at predicting chaos
Researchers have shown that blending quantum computing with AI can dramatically improve predictions of complex, chaotic systems. By letting a quantum computer identify hidden patterns in data, the AI becomes more accurate and stable over time. The method outperformed standard models while using far less memory. This could have big implications for fields like climate science, energy, and medicine.
Quantum-informed AI improves long-term turbulence forecasts while using far less memory
An AI model informed by calculations from a quantum computer can better predict the behavior of a complex physical system over the long term than current best models that use only conventional computers, according to a new study led by UCL (University College London) researchers. The findings, published in the journal Science Advances, could improve models predicting how liquids and gases move and interact (fluid dynamics), used in areas ranging…
The findings, published in the journal 'Science Advances', could improve models that predict how liquids and gases (fluid dynamics) are moved and interacted, used in areas ranging from climate science to transportation, medicine, and energy generation.
Quantum Computing Enhances Accuracy of AI Predictions
In a groundbreaking advancement at the intersection of quantum computing and artificial intelligence, researchers from University College London have devised a quantum-informed AI model that surpasses the predictive capabilities of conventional AI methods in modeling complex physical systems. Specifically, this pioneering work enhances long-term predictions of chaotic fluid dynamics—a domain notorious for its computational intensity and inherent…
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