advertisement
Science News
from research organizations

Machine learning models quantum devices

A novel algorithm allows for efficient and accurate verification of quantum devices

Date:
December 22, 2021
Source:
University of Tokyo
Summary:
Technologies that take advantage of novel quantum mechanical behaviors are likely to become commonplace in the near future. These may include devices that use quantum information as input and output data, which require careful verification due to inherent uncertainties. The verification is more challenging if the device is time dependent when the output depends on past inputs. For the first time, researchers using machine learning dramatically improved the efficiency of verification for time-dependent quantum devices by incorporating a certain memory effect present in these systems.
Share:
advertisement

FULL STORY

Technologies that take advantage of novel quantum mechanical behaviors are likely to become commonplace in the near future. These may include devices that use quantum information as input and output data, which require careful verification due to inherent uncertainties. The verification is more challenging if the device is time dependent when the output depends on past inputs. For the first time, researchers using machine learning dramatically improved the efficiency of verification for time-dependent quantum devices by incorporating a certain memory effect present in these systems.

量子计算机科学成为头条新闻press, but these machines are considered by most experts to still be in their infancy. A quantum internet, however, may be a little closer to the present. This would offer significant security advantages over our current internet, amongst other things. But even this will rely on technologies that have yet to see the light of day outside the lab. While many fundamentals of the devices that can create our quantum internet may have been worked out, there are many engineering challenges in order to realize these as products. But much research is underway to create tools for the design of quantum devices.

Postdoctoral researcher Quoc Hoan Tran and Associate Professor Kohei Nakajima from the Graduate School of Information Science and Technology at the University of Tokyo have pioneered just such a tool, which they think could make verifying the behavior of quantum devices a more efficient and precise undertaking than it is at present. Their contribution is an algorithm that can reconstruct the workings of a time-dependent quantum device by simply learning the relationship between the quantum inputs and outputs. This approach is actually commonplace when exploring a classical physical system, but quantum information is generally tricky to store, which usually makes it impossible.

“这项技术来描述量子系统的基础on its inputs and outputs is called quantum process tomography," said Tran. "However, many researchers now report that their quantum systems exhibit some kind of memory effect where present states are affected by previous ones. This means that a simple inspection of input and output states cannot describe the time-dependent nature of the system. You could model the system repeatedly after every change in time, but this would be extremely computationally inefficient. Our aim was to embrace this memory effect and use it to our advantage rather than use brute force to overcome it."

Tran and Nakajima turned to machine learning and a technique called quantum reservoir computing to build their novel algorithm. This learns patterns of inputs and outputs that change over time in a quantum system and effectively guesses how these patterns will change, even in situations the algorithm has not yet witnessed. As it does not need to know the inner workings of a quantum system as a more empirical method might, but only the inputs and outputs, the team's algorithm can be simpler and produce results faster as well.

"At present, our algorithm can emulate a certain kind of quantum system, but hypothetical devices may vary widely in their processing ability and have different memory effects. So the next stage of research will be to broaden the capabilities of our algorithms, essentially making something more general purpose and thus more useful," said Tran. "I am excited by what quantum machine learning methods could do, by the hypothetical devices they might lead to."

This work is supported by MEXT Quantum Leap Flagship Program (MEXT Q-LEAP) Grant

Nos. JPMXS0118067394 and JPMXS0120319794.

advertisement

Story Source:

Materialsprovided byUniversity of Tokyo.Note: Content may be edited for style and length.


Journal Reference:

  1. Quoc Hoan Tran, Kohei Nakajima.Learning Temporal Quantum Tomography.Physical Review Letters, 2021; 127 (26) DOI:10.1103/PhysRevLett.127.260401

Cite This Page:

东京大学。全“机器学习模型tum devices: A novel algorithm allows for efficient and accurate verification of quantum devices." ScienceDaily. ScienceDaily, 22 December 2021. /releases/2021/12/211222084030.htm>.
东京大学。(2021, December 22). Machine learning models quantum devices: A novel algorithm allows for efficient and accurate verification of quantum devices.ScienceDaily. Retrieved September 6, 2023 from www.koonmotors.com/releases/2021/12/211222084030.htm
东京大学。全“机器学习模型tum devices: A novel algorithm allows for efficient and accurate verification of quantum devices." ScienceDaily. www.koonmotors.com/releases/2021/12/211222084030.htm (accessed September 6, 2023).

Explore More
from ScienceDaily

RELATED STORIES