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Traditional computers can solve some quantum problems


A new study describes how machine learning tools, run on classical computers, can be used to make predictions about quantum systems and thus help researchers solve some of the trickiest physics ... Read More

At The Edge Of Intelligence: How Quantum Algorithms Will Revolutionize AI


The strategic advantage of QML continues to expand its presence in industries that deal with complex, high-dimensional data. Read More

Quantum physics exponentially improves some types of machine learning


It wasn’t entirely clear if quantum computers could improve machine learning in practice, but new experiments and theoretical proofs show that it can. Read More

Wavefunction matching for solving quantum many-body problems


Wavefunction matching for solving quantum many-body problems Date: May 15, 2024 Source: University of Bonn Summary: Strongly interacting systems play an important role in quantum physics and ... Read More

'Quantum AI' algorithms already outpace the fastest supercomputers, study says


Scientists say they have made a breakthrough after developing a quantum computing technique to run machine learning algorithms that outperform state-of-the-art classical computers. The researchers ... Read More

AI learns to solve quantum state of many particles at once


After marvelling at this feat, Giuseppe Carleo of ETH Zurich in Switzerland thought it might be possible to build a similar machine-learning tool to crack one of the knottiest problems in quantum ... Read More


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