Experimental single-setting quantum state tomography
Roman Stricker, Michael Meth, Lukas Postler, Claire Edmunds, Chris, Ferrie, Rainer Blatt, Philipp Schindler, Thomas Monz, Richard Kueng and, Martin Ringbauer

TL;DR
This paper presents a scalable quantum state tomography method using a single measurement setting with SIC POVMs, combined with classical shadows, enabling efficient, real-time, and high-dimensional quantum state characterization on ion trap devices.
Contribution
The authors introduce a practical SIC POVM-based quantum state tomography approach that reduces measurement complexity and integrates with classical shadows for faster, scalable quantum state analysis.
Findings
Successfully implemented SIC POVM measurements on an ion trap device.
Demonstrated real-time tomography of 8-qubit entangled states.
Enabled efficient entanglement studies with fewer measurements.
Abstract
Quantum computers solve ever more complex tasks using steadily growing system sizes. Characterizing these quantum systems is vital, yet becoming increasingly challenging. The gold-standard is quantum state tomography (QST), capable of fully reconstructing a quantum state without prior knowledge. Measurement and classical computing costs, however, increase exponentially in the system size - a bottleneck given the scale of existing and near-term quantum devices. Here, we demonstrate a scalable and practical QST approach that uses a single measurement setting, namely symmetric informationally complete (SIC) positive operator-valued measures (POVM). We implement these nonorthogonal measurements on an ion trap device by utilizing more energy levels in each ion - without ancilla qubits. More precisely, we locally map the SIC POVM to orthogonal states embedded in a higher-dimensional system,…
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