Using 'shallow shadows' to uncover quantum properties

It would be difficult to understand the inner workings of a complex machine without ever opening it up, but this is the challenge scientists face when exploring quantum systems. Traditional methods of looking into these systems often require immense resources, making them impractical for large-scale applications.
Researchers at UC San Diego, in collaboration with colleagues from IBM Quantum, Harvard and UC Berkeley, have developed a novel approach to this problem called "robust shallow shadows." This technique allows scientists to extract essential information from quantum systems more efficiently and accurately, even in the presence of real-world noise and imperfections. The research is in the journal Nature Communications.
Imagine casting shadows of an object from various angles and then using those shadows to reconstruct the object. By using algorithms, researchers can enhance sample efficiency and incorporate noise-mitigation techniques to produce clearer, more detailed "shadows" to characterize quantum states.
"By improving measurement techniques, our approach contributes to the broader effort of making quantum computing more reliable and accessible," says corresponding author Associate Professor of Âé¶¹ÒùÔºics Yi-Zhuang You.
Experimental validation on a superconducting quantum processor demonstrates that, despite realistic noise, this approach outperforms traditional single-qubit measurement techniques in accurately predicting diverse quantum state properties, such as fidelity and entanglement entropy.
More information: Hong-Ye Hu et al, Demonstration of robust and efficient quantum property learning with shallow shadows, Nature Communications (2025).
Journal information: Nature Communications
Provided by University of California - San Diego