Task Scheduling Optimization from a Tensor Network Perspective.

CoRR(2023)

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摘要
We present a novel method for task optimization in industrial plants using quantum-inspired tensor network technology. This method allows us to obtain the best possible combination of tasks on a set of machines with a set of constraints without having to evaluate all possible combinations. We will simulate a quantum system with all possible combinations, perform an imaginary time evolution and a series of projections to satisfy the constraints. We improve its scalability by means of a compression method, an iterative algorithm, and a genetic algorithm, and show the results obtained on simulated cases.
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