On the Transfer of Knowledge in Quantum Algorithms
- URL: http://arxiv.org/abs/2501.14120v1
- Date: Thu, 23 Jan 2025 22:21:32 GMT
- Title: On the Transfer of Knowledge in Quantum Algorithms
- Authors: Esther Villar-Rodriguez, Eneko Osaba, Izaskun Oregi, Sebastián V. Romero, Julián Ferreiro-Vélez,
- Abstract summary: This paper explores the integration of transfer of knowledge techniques, traditionally used in classical artificial intelligence, into quantum computing.
Our findings suggest that leveraging the transfer of knowledge can enhance the efficiency and effectiveness of quantum algorithms.
- Score: 0.3774866290142281
- License:
- Abstract: The field of quantum computing is generating significant anticipation within the scientific and industrial communities due to its potential to revolutionize computing paradigms. Recognizing this potential, this paper explores the integration of transfer of knowledge techniques, traditionally used in classical artificial intelligence, into quantum computing. We present a comprehensive classification of the transfer models, focusing on Transfer Learning and Transfer Optimization. Additionally, we analyze relevant schemes in quantum computing that can benefit from knowledge sharing, and we delve into the potential synergies, supported by theoretical insights and initial experimental results. Our findings suggest that leveraging the transfer of knowledge can enhance the efficiency and effectiveness of quantum algorithms, particularly in the context of hybrid solvers. This approach not only accelerates the optimization process but also reduces the computational burden on quantum processors, making it a valuable tool for advancing quantum computing technologies.
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