NLP-based operator work order intelligent processing method and system

An intelligent processing system and intelligent processing technology, applied in data processing applications, neural learning methods, business and other directions, can solve problems such as low work order processing efficiency, increased repetitive workload, invalid workload, etc., to improve efficiency and quality, The effect of reducing ineffective workload and reducing manual input

Pending Publication Date: 2022-03-22
FUJIAN NEWLAND SOFTWARE ENGINEERING CO LTD
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0003] 1. Customer service personnel receive tens of thousands of complaint work orders every day, and there are various types of problems. Different types of problems require different technical personnel to assist in handling them; 2. Operation and maintenance personnel need to judge the validity of work orders and return invalid work orders , the customer service personnel need to re-fill the work order and submit it again, which increases the manual input of work order preprocessing and generates a large amount of invalid workload, resulting in prolonged work order processing time and low work order processing efficiency; 3. Operation and maintenance personnel based on their own experience Sending orders, wrong dispatching orders will lead to problems that cannot be resolved, and need to be returned for re-dispatching orders, which increases the work order processing process and the invalid processing time of operation and maintenance personnel, and reduces the efficiency of work order processing; 4. Manually query faults Handling manuals for question comparison, for scenario questions with a high monthly frequency, repeated queries and answers are required, increasing the workload of repetition

Method used

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  • NLP-based operator work order intelligent processing method and system
  • NLP-based operator work order intelligent processing method and system
  • NLP-based operator work order intelligent processing method and system

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Embodiment Construction

[0049] The general idea of ​​the technical solution in the embodiment of the present application is as follows: data cleaning is performed on a large amount of work order data to obtain structured work order data to generate a work order data set, and then use the work order data set to predict the work order prediction model and work order The transfer model and work order reply model are trained, and finally the trained work order prediction model, work order transfer model and work order reply model are used to automatically transfer the pending work orders to improve the efficiency of work order processing.

[0050] Please refer to Figure 1 to Figure 2 As shown, a preferred embodiment of an NLP-based operator work order intelligent processing method of the present invention includes the following steps:

[0051]Step S10, obtaining a large amount of work order data, and performing batch data cleaning on each work order data to obtain a work order data set;

[0052] Step S...

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PUM

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Abstract

The invention provides an NLP-based operator work order intelligent processing method and system in the technical field of intelligent operation and maintenance, and the method comprises the steps: S10, obtaining a large amount of work order data, and carrying out the data cleaning of each piece of work order data, and obtaining a work order data set; step S20, creating a work order pre-judgment model, a work order transfer model and a work order reply model, and training each model by using the work order data set; step S30, issuing the trained work order pre-judgment model, work order transfer model and work order reply model; step S40, acquiring a to-be-processed work order, performing data cleaning on the to-be-processed work order, inputting the to-be-processed work order into the work order pre-judgment model to perform work order classification, and generating a classification result; step S50, inputting the to-be-processed work order into a work order transfer model based on the classification result so as to transfer the to-be-processed work order; and step S60, intelligently processing the work order to be processed through the work order reply model. The method has the advantage that the work order processing efficiency is greatly improved.

Description

technical field [0001] The invention relates to the technical field of intelligent operation and maintenance, in particular to a method and system for intelligently processing operator work orders based on NLP. Background technique [0002] With the continuous increase of information, new challenges have been brought to the operation and maintenance work, especially the operation and maintenance of operators. After receiving the complained work order, the operator's customer service personnel need to forward the work order to the corresponding operation and maintenance personnel. The operation and maintenance personnel will judge the validity of the work order, return the invalid work order, dispatch the valid work order, and Manually query the troubleshooting manual. However, the operation and maintenance of traditional operators has the following problems: [0003] 1. Customer service personnel receive tens of thousands of complaint work orders every day, and there are v...

Claims

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Application Information

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IPC IPC(8): G06Q30/00G06Q30/02G06N3/08G06N3/04G06K9/62
CPCG06Q30/016G06Q30/0282G06N3/08G06N3/045G06F18/241G06F18/24323G06F18/214
Inventor 闫二乐陈浩李霖林诚汉陈立峰林俊德
Owner FUJIAN NEWLAND SOFTWARE ENGINEERING CO LTD
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