Intelligent task allocation and personnel scheduling method and system for geographic website

A technology of personnel scheduling and task assignment, applied in the field of enterprise information system research, can solve the problems of high decision-making cost and low efficiency, and achieve the effect of improving work efficiency, improving matching accuracy, and optimizing decision-making flexibility

Inactive Publication Date: 2019-11-15
JINAN UNIVERSITY
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0006] The main purpose of the present invention is to overcome the shortcomings and deficiencies of the existing methods, and to provide a method and system for intelligent task assignment and personnel scheduling for geographical outlets, which can use the user big data accumulated by the enterprise, especially when manual experience is required. In the module of business decision-making, extract business logic rules, model the input and output data of this part of the module, and train the deep neural network, so as to use the neural network to replace manual decision-making, and overcome the high cost and low efficiency of manual decision-making. question

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  • Intelligent task allocation and personnel scheduling method and system for geographic website
  • Intelligent task allocation and personnel scheduling method and system for geographic website
  • Intelligent task allocation and personnel scheduling method and system for geographic website

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Embodiment 1

[0043] This embodiment provides a task allocation and scheduling method for salesmen in the fast-selling industry to visit offline outlets. The steps are to first extract relevant data from the information system, extract features, and then use a bipartite graph to represent the relationship between the salesperson and the visited outlets, forming Visit Program Network Diagram. Use the historical business data in the enterprise information system to match the tasks of daily visits to outlets, combined with the current state of the salesmen in the network diagram, and use the deep reinforcement learning method to optimize the matching of visiting tasks and the path of salesmen for historical data and real-time data. The levels are iterated continuously at the same time, and the globally optimal access method and access path are obtained comprehensively. Each step will be described in detail below in conjunction with the accompanying drawings.

[0044] 1. Extract features from ...

Embodiment 2

[0059] An intelligent task allocation and personnel scheduling system for geographical outlets, including:

[0060] The feature extraction module is used to extract features from the basic data and real-time data of the decision-making module of the enterprise information system, and the features include the features of the outlets to be visited, the characteristics of the salesperson, the characteristics of the visiting task, the characteristics of the surrounding environment of the salesperson, etc.;

[0061] The deep reinforcement learning model building block is used to use the bipartite graph to form the relationship between the salesperson and the commercial outlets visited with geographical characteristics to form a visit plan network, and to model the historical records and real-time data of the salesperson's visit outlets to obtain the depth reinforcement learning model;

[0062] The task matching strategy optimization module is used to evaluate the benefits obtained ...

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Abstract

The invention discloses an intelligent visit task allocation and personnel scheduling method and system for websites with certain geographical location characteristics. The intelligent visit task allocation and personnel scheduling method comprises the following steps: respectively extracting features of a physical business website and salesmen from basic data and real-time data of an enterprise information system decision module, and modeling historical data of visited websites of the salesmen; representing the connection between the salesman and the website by using a bipartite graph so as to form a visit plan network graph; planning an optimal visit route according to the information of the environment where the salesman is located; using a reinforcement learning method to assess earnings obtained by the allocation strategy according to a preset reward or punishment generated after the salesman executes a certain action, feeding back the earnings to the deep neural network model, repeatedly updating learning parameters, and determining an optimal task matching strategy; and in the actual visiting process, adopting a reinforcement learning method for calculation, iterating a taskexecution strategy optimization method and a visiting route optimization method continuously at the same time, and comprehensively obtaining a globally optimal visiting mode.

Description

technical field [0001] The invention relates to the research field of enterprise information systems, in particular to a method and system for intelligent task distribution and personnel scheduling for geographic network points. Background technique [0002] Information systems are the brains of business operations. With the expansion of enterprise scale and the gradual deepening of enterprise information construction, the depth of management, data and information volume continue to increase. Therefore, relying entirely on manual management system information and enterprise decision-making, enterprise production is far from reaching high efficiency. In particular, there are many simple and high-frequency empirical decision-making problems in the daily operation of enterprises, and there are also a large number of empirical decision-making modules in the information system. Such problems often consume a lot of manpower and do not require too much brainpower, which increases ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/06G06Q10/04G06N3/08
CPCG06N3/08G06Q10/04G06Q10/06311
Inventor 汤胤廖冬雪黄书强
Owner JINAN UNIVERSITY
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