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High-fidelity spin qubit operation and algorithmic initialization above 1 K.

Jonathan Yue HuangRocky Y SuWee Han LimMengKe FengBarnaby van StraatenBrandon SeverinWill GilbertNard Dumoulin StuyckTuomo TanttuSantiago SerranoJesús D CifuentesIngvild HansenAmanda E SeedhouseEnsar VahapogluRoss C C LeonNikolay V AbrosimovHans-Joachim PohlMichael L W ThewaltFay E HudsonChristopher C EscottNatalia AresStephen D BartlettAndrea MorelloAndre SaraivaArne LauchtAndrew S DzurakChih-Hwan Yang
Published in: Nature (2024)
The encoding of qubits in semiconductor spin carriers has been recognized as a promising approach to a commercial quantum computer that can be lithographically produced and integrated at scale 1-10 . However, the operation of the large number of qubits required for advantageous quantum applications 11-13 will produce a thermal load exceeding the available cooling power of cryostats at millikelvin temperatures. As the scale-up accelerates, it becomes imperative to establish fault-tolerant operation above 1 K, at which the cooling power is orders of magnitude higher 14-18 . Here we tune up and operate spin qubits in silicon above 1 K, with fidelities in the range required for fault-tolerant operations at these temperatures 19-21 . We design an algorithmic initialization protocol to prepare a pure two-qubit state even when the thermal energy is substantially above the qubit energies and incorporate radiofrequency readout to achieve fidelities up to 99.34% for both readout and initialization. We also demonstrate single-qubit Clifford gate fidelities up to 99.85% and a two-qubit gate fidelity of 98.92%. These advances overcome the fundamental limitation that the thermal energy must be well below the qubit energies for the high-fidelity operation to be possible, surmounting a main obstacle in the pathway to scalable and fault-tolerant quantum computation.
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