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Browsing by Author "Reporter: HEMMAK, Allaoua"

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    Machine Learning approach for single machine scheduling problems
    (UNIVERSITY of M'SILA, 2022-06-10) BENNAOUI, BOUCHRA; MANNED, MAROUA; Reporter: HEMMAK, Allaoua
    Machine learning approach for single machine scheduling problems This theme aim to design a machine-learning algorithm to tackle a NP-hard single machine scheduling problems with big size. This approach consists on two parts: the firs par “learning” aims to learn the system by supplying the system with a significant number of small size instances solved by an exact method as dynamic programming. The second step consist to design a machine learning approach to tackle some big size instances, as we go along, even these instances supply our system to improve its efficiently. A comparison with chosen metaheuristic is needed to justify the contribution.

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