A multi-resource cloud job scheduling method based on deep Q-network algorithm
A job scheduling and multi-resource technology, applied in the field of multi-resource cloud job scheduling based on the DeepQ-network algorithm, can solve the problem that virtual machine data cannot fully represent resources and job status
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[0026] The present invention will be further described below in conjunction with the drawings.
[0027] A multi-resource cloud job scheduling method based on the Deep Q-network algorithm, such as figure 1 As shown, the steps include: collecting current configuration information of resources and job demand information through a cloud environment; the current configuration information of the resources and job demand information are respectively represented by matrix images, and the cells include cells and the same color cells The grid represents the same job, the rectangle formed by the same color cell includes M×N cells, M represents the number of resources, and N represents the time step; according to the matrix image, the deep learning method is used to obtain high-level semantic information; Describe high-level semantic information, and use reinforcement learning methods to complete real-time resource scheduling planning.
[0028] The method of the present invention collects the...
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