Using Reinforcement Learning to Guide Graph State Generation for Photonic Quantum Computers
Photonic quantum computer (PQC) is an emerging and promising quantum computing paradigm that has gained momentum in recent years. In PQC, which leverages the measurement-based quantum computing (MBQC) model, computations are executed by performing measurements on photons in graph states (i.e., sets...
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Zusammenfassung: | Photonic quantum computer (PQC) is an emerging and promising quantum
computing paradigm that has gained momentum in recent years. In PQC, which
leverages the measurement-based quantum computing (MBQC) model, computations
are executed by performing measurements on photons in graph states (i.e., sets
of entangled photons) that are generated before measurements. The graph state
in PQC is generated deterministically by quantum emitters. The generation
process is achieved by applying a sequence of quantum gates to quantum
emitters. In this process, i) the time required to complete the process, ii)
the number of quantum emitters used, and iii) the number of CZ gates performed
between emitters greatly affect the fidelity of the generated graph state.
However, prior work for determining the generation sequence only focuses on
optimizing the number of quantum emitters. Moreover, identifying the optimal
generation sequence has vast search space. To this end, we propose RLGS, a
novel compilation framework to identify optimal generation sequences that
optimize the three metrics. Experimental results show that RLGS achieves an
average reduction in generation time of 31.1%, 49.6%, and 57.5% for small,
medium, and large graph states compared to the baseline. |
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DOI: | 10.48550/arxiv.2412.01038 |