Near Term Quantum
Near-term quantum computing research focuses on developing and applying quantum algorithms and machine learning models on currently available noisy quantum hardware. Key areas include variational quantum algorithms (VQAs), particularly for optimization and machine learning tasks, with research exploring improved gradient estimation methods, AI-assisted circuit compilation, and novel quantum neural network architectures like equivariant convolutional circuits and hybrid classical-quantum models. These efforts aim to overcome limitations imposed by noise and limited qubit numbers, ultimately seeking to demonstrate practical quantum advantages in fields such as drug discovery, materials science, and machine learning.
Papers
October 31, 2024
October 21, 2024
August 10, 2024
July 30, 2024
July 5, 2024
June 12, 2024
May 16, 2024
February 1, 2024
December 21, 2023
November 27, 2023
October 1, 2023
September 20, 2023
September 19, 2023
July 3, 2023
November 23, 2022
November 16, 2022
November 1, 2022
October 31, 2022