Login / Signup

Quantum generative adversarial learning in a superconducting quantum circuit.

Ling HuShu-Hao WuWeizhou CaiYuwei MaXianghao MuYuan XuHaiyan WangYipu SongDong-Ling DengChang-Ling ZouLuyan Sun
Published in: Science advances (2019)
Generative adversarial learning is one of the most exciting recent breakthroughs in machine learning. It has shown splendid performance in a variety of challenging tasks such as image and video generation. More recently, a quantum version of generative adversarial learning has been theoretically proposed and shown to have the potential of exhibiting an exponential advantage over its classical counterpart. Here, we report the first proof-of-principle experimental demonstration of quantum generative adversarial learning in a superconducting quantum circuit. We demonstrate that, after several rounds of adversarial learning, a quantum-state generator can be trained to replicate the statistics of the quantum data output from a quantum channel simulator, with a high fidelity (98.8% on average) so that the discriminator cannot distinguish between the true and the generated data. Our results pave the way for experimentally exploring the intriguing long-sought-after quantum advantages in machine learning tasks with noisy intermediate-scale quantum devices.
Keyphrases
  • molecular dynamics
  • machine learning
  • energy transfer
  • monte carlo
  • working memory
  • big data
  • electronic health record
  • artificial intelligence
  • data analysis
  • psychometric properties
  • virtual reality