Visual modeling method and device for neural network model

A technology of neural network model and modeling method, applied in the direction of biological neural network model, etc., to achieve the effect of visual construction

Active Publication Date: 2021-09-03
SHANDONG INSPUR SCI RES INST CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

For users who do not understand the program code and deep learning framework, they can only check whether the neural network model has errors based on visual graphics such as decision trees. If there are errors, the program code needs to be re-inspected, etc.

Method used

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  • Visual modeling method and device for neural network model
  • Visual modeling method and device for neural network model
  • Visual modeling method and device for neural network model

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Embodiment approach

[0098] The operation on at least one visualized directed arc includes: drawing the visualized directed arc between any two visualized controls in the visualized area, or deleting the drawn visualized directed arc. An implementation of this process: for two visual controls that have dependencies, for example, the output data of the object / instance corresponding to visual control A is the input data of the object / instance corresponding to visual control B, then visual control A is used as The starting point draws a line segment with an arrow, and the shoulder end of the line segment with an arrow points to the visual control B; when it is necessary to release the dependency between the visual control A and the visual control B, delete the belt between the visual control A and the visual control B. The line segment of the arrow.

[0099] In one embodiment of the present invention, in order to determine the node set, the above method further includes: defining the node set V, V={v...

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Abstract

The present invention provides a visual modeling method and device for a neural network model, by constructing a mapping relationship between each operation method in the deep learning framework and each object / instance, and constructing a corresponding visual control for each object / instance, and inputting and outputting The relationship is mapped to a visual directed arc. When an operation on at least one visual control is received, the node set is determined according to the object / instance corresponding to each visual control and the mapping relationship; when at least one visual directed arc is received During the operation, according to each of the visualized directed arcs and the input-output relationship of the operation, the set of dependencies is determined; when a modeling request is received, the pre-built source code file is initialized; based on the deep learning framework and the initialized The source code file uses the node set and dependency set to generate the corresponding neural network model. The solution provided by the invention realizes the visual construction of the neural network model.

Description

technical field [0001] The invention relates to the field of computer technology, in particular to a visual modeling method and device of a neural network model. Background technique [0002] The self-learning function of the neural network model makes it have extensive and attractive prospects in the fields of system identification, pattern recognition, and intelligent control. However, the current way to build neural network models is to write program codes for business processes based on deep learning frameworks and programming languages ​​supported by deep learning frameworks, and convert them into corresponding neural network models according to the written program codes and deep learning frameworks. . At present, the construction process of this neural network model can only be understood by users after the neural network model is converted into a visual graph such as a decision tree. For users who do not understand the program code and deep learning framework, they ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06N3/02
CPCG06N3/02
Inventor 高岩段成德姜凯
Owner SHANDONG INSPUR SCI RES INST CO LTD
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