Quantum Artificial Intelligence Prediction Using Generative Adversarial Networks

Authors

  • T.R Ganeshbabu
  • R Praveena

DOI:

https://doi.org/10.65000/vvrhkm21

Keywords:

Quantum GAN, Quantum Variational GAN, Quantum-enhanced GAN, Quantum Wasserstein GAN, Foresight, Quantum Artificial Intelligence, Generative Adversarial Networks, Quantum Data Generation, Quantum Data Manipulation, Quantum Information Processing

Abstract

There has been a significant change in QAI with the introduction of Quantum Generative Adversarial Networks (QGAN), Quantum Variational GAN (QVGAN), Quantum-enhanced GAN (QEGAN), and Quantum Wasserstein GAN (QWGAN). QGAN brings the power of GANs into the quantum world, paving the way for the creation of quantum data distributions that can then be used to facilitate both quantum data augmentation and synthesis. QVGAN optimizes the parameters of quantum circuits by drawing on variational concepts to improve quantum generative modeling. QEGAN utilizes quantum hardware to speed up adversarial training, which in turn speeds up the production of quantum data. Aligning the distribution of quantum data is QWGAN's main goal, since this helps quantum datasets converge. Collectively, these quantum GAN variations open new possibilities for QAI by facilitating the production, manipulation, and alignment of quantum data distributions. QGANs and variations can break through classical barriers and push forward quantum data-driven applications in fields as diverse as quantum chemistry, quantum machine learning, and quantum cryptography by harnessing the power of quantum computing. QGAN variants' quantum benefits highlight their importance in pushing the limits of quantum information processing. 

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Published

31-05-2024

How to Cite

Ganeshbabu, T., & Praveena, R. (2024). Quantum Artificial Intelligence Prediction Using Generative Adversarial Networks. International Journal of Modern Computation, Information and Communication Technology, 7(1), 18-25. https://doi.org/10.65000/vvrhkm21