Quantum devices are those based on the principles of quantum mechanics, and they perform tasks that are not feasible using classical methods. They are useful in many fields, including climate modeling, finance, and drug discovery. With the growth of Machine Learning, researchers have started using machine learning in quantum devices. However, the efficient scaling and combination of individual quantum devices must be figured out. The biggest problem is functional variability, which results from seemingly identical quantum devices behaving differently because of material flaws at the nanoscale. These imperfections lead to discrepancies between predicted and actual outcomes.
Consequently, a team of researchers from the University of Oxford has used machine learning to solve this limitation. They studied how the flow of electrons in the quantum device influences internal disorder. Then, they developed a physics-based machine learning model and used the way electrons flow through quantum devices to infer the characteristics of internal disorder. This allowed them to formulate a model that could anticipate quantum device behavior with more accuracy.
Then, the researchers tested the model on a quantum dot device. To do this, they applied different voltage settings to the model. They measured the output current and then used these measurements to compare them to the theoretical current without any internal disorder. The model determined the most likely internal disorder arrangement that may cause such differences.
The researchers emphasized that this model can be very useful as it can accurately predict the current values for various voltage settings and provide insights into the variability between quantum devices. This information is very helpful for researchers to create strategies to compensate for material imperfections and to create more accurate models for quantum devices.
The model is significant in narrowing the gap between theory and practice. One of the team’s researchers emphasized that this machine-learning model can help bridge the gap between the idealized world of quantum mechanics and the realistic construction of quantum devices. However, even though the model is very useful, it still has some imperfections. It has limitations in fully capturing the complexity of real-world quantum devices.
In conclusion, this model developed by the Oxford team is significant in overcoming one of the biggest challenges of quantum computing: functional variability caused by nanoscale imperfection. Also, this physics-informed machine learning model has a powerful tool for accounting for the variations. As the researchers are looking to make this system more efficient and tackle the imperfections, the model can be significantly useful in the domain of quantum devices.
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Rachit Ranjan is a consulting intern at MarktechPost . He is currently pursuing his B.Tech from Indian Institute of Technology(IIT) Patna . He is actively shaping his career in the field of Artificial Intelligence and Data Science and is passionate and dedicated for exploring these fields.