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WO2022110974A1 - Method and apparatus for training data analysis model, and storage medium - Google Patents

Method and apparatus for training data analysis model, and storage medium Download PDF

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Publication number
WO2022110974A1
WO2022110974A1 PCT/CN2021/117741 CN2021117741W WO2022110974A1 WO 2022110974 A1 WO2022110974 A1 WO 2022110974A1 CN 2021117741 W CN2021117741 W CN 2021117741W WO 2022110974 A1 WO2022110974 A1 WO 2022110974A1
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Prior art keywords
data analysis
information
analysis model
nfv
training
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PCT/CN2021/117741
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French (fr)
Chinese (zh)
Inventor
夏海涛
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华为技术有限公司
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Publication of WO2022110974A1 publication Critical patent/WO2022110974A1/en

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    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L41/00Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
    • H04L41/08Configuration management of networks or network elements
    • H04L41/0893Assignment of logical groups to network elements
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
    • G06N20/00Machine learning
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L41/00Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
    • H04L41/14Network analysis or design
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L41/00Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
    • H04L41/14Network analysis or design
    • H04L41/145Network analysis or design involving simulating, designing, planning or modelling of a network

Definitions

  • the present application relates to the field of communication technologies, and in particular, to a training method, device and storage medium for a data analysis model.
  • the Management Data Analytics (MDA) entity refers to management services that use management analytics data in network and service management.
  • Raw performance data for network functions can be analyzed together with other management data (eg, alarm data, configuration data) and form management analysis data for one or more network functions, sub-networks, or network slices/sub-network slice instances.
  • MDA provides the ability to process and analyze raw data related to network and service events and status to provide analytical reports to support necessary operations for network and service management.
  • MDA can integrate artificial intelligence (AI) and/or machine learning (ML) capabilities to bring intelligence and automation to network service management and orchestration.
  • AI artificial intelligence
  • ML machine learning
  • the MDA entity collects relevant network information, and analyzes the collected network information according to the built-in data analysis model corresponding to the analysis topic (such as the analysis model implemented by AI algorithm) to obtain the analysis result. , and return the analysis results to the Network Functions Virtualization Orchestrator (NFVO) that initiated the topic analysis, that is, the service consumer, to enhance NFVO to make closed-loop decisions in the Network Function Virtualization (NFV) management domain Ability.
  • NFVO Network Functions Virtualization Orchestrator
  • the data analysis models used by different analysis topics are different, and the training of data analysis models corresponding to different analysis topics needs to derive various associations required for data analysis from scratch, and the model training efficiency is low. .
  • the MDA entity pre-trains a basic data analysis model according to the configuration data of the NFV object, so that the MDA entity receives the data carrying the network service (Network Service).
  • Network Service Network Service
  • NS network Service
  • the target data analysis model corresponding to the specified analysis topic can be further trained on the basis of the basic data analysis model, that is, the target data analysis models corresponding to different analysis topics are in
  • the pre-trained basic data analysis model can be reused during training, which can improve the training efficiency of the data analysis model.
  • an embodiment of the present application provides a training method for a data analysis model, which is used in an MDA entity, and the method includes:
  • the pre-trained basic data analysis model is trained to obtain the target data analysis model corresponding to the specified analysis topic.
  • the basic data analysis model is obtained by training the original model according to the configuration data of the NFV object.
  • the NFV object is managed by NFV Managed objects within the domain.
  • the MDA entity is pre-trained to complete a basic data analysis model, and on the basis of the basic data analysis model, the MDA entity receives the notification information that carries the information required by the specified analysis topic related to the NS, Further training completes the target data analysis model corresponding to the specified analysis topic, that is, the basic data analysis model is reused by the topic-specific target data analysis model during model training, avoiding the training of data analysis models corresponding to different analysis topics in related technologies.
  • the training time of the data analysis model is shortened and the model training efficiency is improved.
  • a basic data analysis model is used to indicate an attribute of an NFV object and an association relationship between the NFV object.
  • the basic data analysis model pre-trained by the MDA entity can maintain the attributes of the NFV objects and the association relationship between the NFV objects.
  • the method further includes: performing an analysis on the original model according to the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object.
  • the basic data analysis model is obtained by training.
  • the MDA entity takes the information model of the NFV object in the design state (that is, the descriptor template information of the NFV object) and the information model of the NFV object in the running state (that is, the image information after the instantiation of the NFV object) as the basic data Analyze the input data of model training, so as to train a basic data analysis model irrelevant to the analysis topic, so as to enhance the ability of the MDA entity to dynamically obtain the association relationship between NFV objects in the NFV management domain, and improve the subsequent analysis model based on the basic data. Efficiency of training the target data analysis model.
  • the descriptor template information includes network service descriptor (Network Service Descriptor, NSD) template information and/or virtualization Network function descriptor (Virtualized Network Function Descriptor, VNFD) template information; and/or, the image information includes NS instance image information and/or Virtualized Network Function (Virtualized Network Function, VNF) instance image information.
  • NSD Network Service Descriptor
  • VNFD Virtualized Network Function Descriptor
  • the input data for training the basic data analysis model may further include at least one of NSD template information, VNFD template information, NS instance mirroring information, and VNF instance mirroring information, which further ensures the training effect of the basic data analysis model.
  • the method further includes: during the training process of the basic data analysis model, establishing NSD template information and members of the NS The relationship between the object's descriptor template information.
  • the MDA entity trains the basic data analysis model, and establishes an association relationship between the NSD template information and the descriptor template information of the member objects of the NS, so that the The trained basic data analysis model can indicate relatively static associations between object classes, which further improves the efficiency of subsequent training of the target data analysis model based on the basic data analysis model.
  • the method further includes: in the training process of the basic data analysis model, establishing NS instance mirror information and NS instance image information The association relationship between the mirror information of the member object instance.
  • the MDA entity performs basic data analysis model training, and establishes an association relationship between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance, so that pre-training
  • the completed basic data analysis model can indicate relatively dynamic associations between object instances, which further improves the efficiency of subsequent training of the target data analysis model based on the basic data analysis model.
  • the method further includes:
  • the basic data analysis model is updated according to the modified NS instance image information and/or the modified VNF instance image information.
  • the MDA entity in the running state after the NS and/or VNF are instantiated, updates the basic data analysis model according to the modified NS instance image information and/or the modified VNF instance image information, so as to dynamically Adjust the basic data analysis model.
  • the method further includes:
  • the information required for the NS resource utilization analysis is input into the target data analysis model corresponding to the NS resource utilization analysis theme, and a third analysis result is output, and the third analysis result includes an indication of the resource utilization of the NS.
  • the specified analysis topic includes but is not limited to NS alarm event analysis topic, NS health degree analysis Either the topic or the NS resource utilization analysis topic, realizes the effective analysis of the data under the specified analysis topic, and ensures the accuracy of the data analysis.
  • an embodiment of the present application provides a training device for a data analysis model, which is used in an MDA entity, and the device includes:
  • a receiving unit configured to receive a notification message, where the notification message carries the information required by the specified analysis topic related to the NS;
  • the processing unit is used to train the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic.
  • the basic data analysis model is obtained by training the original model according to the configuration data of the NFV object, NFV objects are managed objects in the NFV management domain.
  • the basic data analysis model is used to indicate the attributes of the NFV object and the association relationship between the NFV objects.
  • the processing unit is further configured to:
  • the original model is trained to obtain a basic data analysis model.
  • the descriptor template information includes NSD template information and/or VNFD template information; and/or, the mirroring information includes NS Instance image information and/or VNF instance image information.
  • the processing unit is further configured to:
  • the association relationship between the NSD template information and the descriptor template information of the member objects of the NS is established.
  • the processing unit is further configured to:
  • the processing unit is further configured to:
  • the basic data analysis model is updated according to the modified NS instance image information and/or the modified VNF instance image information.
  • the processing unit is further configured to:
  • the information required for the NS resource utilization analysis is input into the target data analysis model corresponding to the NS resource utilization analysis theme, and a third analysis result is output, and the third analysis result includes an indication of the resource utilization of the NS.
  • embodiments of the present application provide a data analysis model training apparatus for use in an MDA entity, the apparatus comprising: a processor; a memory for storing executable instructions of the processor; wherein the processor is configured A training method for a data analysis model provided for implementing the first aspect or any one of the possible implementation manners of the first aspect when executing an instruction.
  • embodiments of the present application provide a computer program product, comprising computer-readable codes, or a non-volatile computer-readable storage medium carrying computer-readable codes, when the computer-readable codes are stored in an electronic
  • the processor in the electronic device executes the data analysis model training method provided by the first aspect or any one of the possible implementations of the first aspect.
  • embodiments of the present application provide a non-volatile computer-readable storage medium on which computer program instructions are stored, and when the computer program instructions are executed by a processor, the first aspect or the first aspect is implemented.
  • the training method of the data analysis model provided by any possible implementation.
  • FIG. 1 shows a schematic diagram of the basic framework of 5G network automation in the related art.
  • FIG. 2 shows a schematic structural diagram of an MDA entity provided by an exemplary embodiment of the present application.
  • FIG. 3 shows a flowchart of a training method for a data analysis model provided by an exemplary embodiment of the present application.
  • FIG. 4 shows a flowchart of the training and use process of the data analysis model provided by an exemplary embodiment of the present application.
  • FIG. 5 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
  • FIG. 6 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
  • FIG. 7 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
  • FIG. 8 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
  • FIG. 9 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
  • FIG. 10 shows a flowchart of the training and use process of the data analysis model provided by another exemplary embodiment of the present application.
  • FIG. 11 shows a block diagram of an apparatus for training a data analysis model provided by an exemplary embodiment of the present application.
  • NWDAF Network Data Analytics Function
  • the basic principle of network function automation includes: the NWDAF entity 10 subscribes the input data required for network data analysis to the network function (or service) entity of the surrounding control plane, and the analysis algorithm is executed by the NWDAF entity 10 itself (usually, the analysis algorithm is considered as artificial intelligence algorithm), distribute the analysis results to other network function (or service) entities, such as Operation Administration and Maintenance (OAM) entity 11, Application Function (AF) entity 12, network function (Network Function, NF) entity 13.
  • OAM Operation Administration and Maintenance
  • AF Application Function
  • NF Network Function
  • PCF Policy Control Function
  • MDAS Management Data Analytics Service
  • NWDAF Network-based Management Data Analytics Service
  • the core function of MDAS is to manage data analysis. According to the built-in artificial intelligence and/or machine learning data analysis of this function
  • the model analyzes the collected network information related to a specific analysis topic, returns the analysis result to the service consumer who initiated the analysis of the specific topic, and assists it in closed-loop decision-making on the management level.
  • the data analysis model Before calling the data analysis model, the data analysis model also needs to be trained.
  • the goal of the training process of the data analysis model is not to provide analysis results for the topic to be analyzed at the moment, but to make the data analysis model provide analysis results that are more accurate and more in line with the expectations of service consumers in subsequent use, and enhance the data through training input data. Analytical accuracy of the analytical model.
  • there are many studies on the input/output information of management data analysis but there are few studies on the input/output information flow in the training process of the data analysis model.
  • MDA Management Data Analytics
  • the input data set used in the training process of the data analysis model usually includes historical performance data, alarm data and configuration data generated by the network. Regardless of whether it is historically generated or real-time collected performance data or alarm data, these data are used as incremental input information to reinforce the original model in the training of the data analysis model, that is, the data are processed based on probability statistics or knowledge.
  • the training and analysis of the model is based on the original model to add new relationships of managed objects or relationships of management events. For the model training of different analysis topics, the set of performance or alarm events subscribed by MDA entities from the NFV management domain is also different.
  • the establishment of the original model mainly depends on the configuration data of managed objects, and performance data or alarm data are usually attached to these managed objects.
  • the alarm data "The IP address of the virtual machine A is unreachable" is attached to the managed object virtual machine A.
  • the embodiment of the present application provides a training method for the data analysis model
  • the MDA entity pre-trains a basic data analysis model, and on the basis of the basic data analysis model, the MDA entity receives the notification information that carries the information required by the designated analysis topic related to the NS , and further train to complete the target data analysis model corresponding to the specified analysis topic, that is, the basic data analysis model is reused by the topic-specific target data analysis model during model training, avoiding the training of data analysis models corresponding to different analysis topics in related technologies. It is necessary to derive various associations required for data analysis from scratch, which shortens the training time of the data analysis model and improves the model training efficiency.
  • the information model of the NFV object in the design state including the descriptor template information of the NFV object.
  • the descriptor template information of the NFV object in the NFV management domain includes, but is not limited to: at least one of NSD template information, VNFD template information, and Virtualization Resource Descriptor (VR Descriptor) template information.
  • NSD template information used to describe the virtualized resources used by the NS and define the behavior requirements of the NS during the deployment and operation phases. Usually based on the descriptor definitions of the constituent members of the NS (eg, VNFs).
  • VNFD template information It is used to describe the virtualized resources used by the VNF and define the behavior requirements of the VNF during the deployment and operation phases. The description of the requirements of the VNF for virtualized resources can be mapped to the descriptor definitions of the virtualized resources.
  • the VNFD template information includes descriptor template information of virtual computing resources, virtual storage resources, virtual links, connection points or other virtual network resources. This embodiment of the present application does not limit this.
  • Virtualization resource descriptor template information used to describe the characteristics of a single virtualized resource.
  • the virtualized resource descriptor template information includes description information of virtual computing resources, virtual storage resources, virtual network resources and/or the virtualized resource descriptor. Description information of the demand of the physical resources on the underlying physical resources.
  • the information model of the NFV object in the running state including the image information after the instantiation of the NFV object, and the image information includes but is not limited to: VNF instance image information (VNFInfo) and/or NS instance image information (NSInfo).
  • VNFInfo VNF instance image information
  • NSInfo NS instance image information
  • VNF instance image information The image information of the VNF instance after the VNF is instantiated.
  • the VNF instance image information includes basic information of the VNF instance in the running state for lifecycle management.
  • NS instance image information The image information of the NS instance after NS is instantiated.
  • the NS instance image information includes basic information when the NS instance performs life cycle management in the running state.
  • FIG. 2 shows a schematic structural diagram of an MDA entity provided by an exemplary embodiment of the present application.
  • the MDA entity includes: a processor 21, a receiver 22, a transmitter 23, a memory 24, and a bus 25.
  • the processor 21 includes one or more processing cores, and the processor 21 executes various functional applications and information processing by running software programs and modules.
  • the receiver 22 and the transmitter 23 can be implemented as a communication component, which can be a communication chip, and the communication chip can include a receiving module, a transmitting module, a modulation and demodulation module, etc., for modulating and demodulating the information, and This information is received or transmitted via wireless signals.
  • a communication component which can be a communication chip
  • the communication chip can include a receiving module, a transmitting module, a modulation and demodulation module, etc., for modulating and demodulating the information, and This information is received or transmitted via wireless signals.
  • the memory 24 is connected to the processor 21 through a bus 25 .
  • the memory 54 stores program instructions and data necessary for the terminal.
  • the processor 51 is configured to execute the program instructions and data in the memory 54 to implement the functions of each step in each method embodiment of the present application.
  • the processor 21 controls the receiver 22 to implement the following step 401 and the implicit receiving function of the MDA entity side in each step by running at least one program instruction in the memory 24; the processor 21 runs at least one program instruction in the memory 24. , the transmitter 23 is controlled to implement the sending function on the MDA entity side implicit in each step of the embodiment of the present application.
  • memory 24 may be implemented by any type of volatile or non-volatile storage device or combination thereof, such as static anytime access memory (SRAM), electrically erasable programmable read only memory (EEPROM), erasable Except programmable read only memory (EPROM), programmable read only memory (PROM), read only memory (ROM), magnetic memory, flash memory, magnetic disk or optical disk.
  • SRAM static anytime access memory
  • EEPROM electrically erasable programmable read only memory
  • EPROM erasable except programmable read only memory
  • PROM programmable read only memory
  • ROM read only memory
  • magnetic memory flash memory
  • flash memory magnetic disk or optical disk.
  • Figure 2 only shows a simplified design of the MDA entity.
  • the MDA entity may include any number of transmitters, receivers, processors, controllers, memories, communication units, etc., and all MDA entities that can implement the present application are within the protection scope of the present application .
  • FIG. 3 shows a flowchart of a training method for a data analysis model provided by an exemplary embodiment of the present application, and the method is used in the MDA entity shown in FIG. 2 .
  • the method includes the following steps.
  • Step 301 Receive a notification message, where the notification message carries information required for a specified analysis topic related to the NS.
  • the MDA entity receives notification messages that carry the information required for the specified analysis topic related to the NS.
  • the MDA entity subscribes the target entity to the information required by the specified analysis topic related to the NS; the target entity sends a notification message carrying the information required by the specified analysis topic related to the NS to the MDA entity.
  • the MDA entity receives the notification message.
  • the target entity includes NFVO, Virtualised Network Function Manager (Virtualised Network Function Manager, VNFM), Virtualised Infrastructure Manager (Virtualised Infrastructure Manager, VIM), Container Infrastructure Service Management (Container Infrastructure Service Management, CISM) ) any of the entities.
  • VNFM Virtualised Network Function Manager
  • VIM Virtualised Infrastructure Manager
  • VIM Container Infrastructure Service Management
  • CISM Container Infrastructure Service Management
  • the specified analysis topic includes any one of an NS alarm event analysis topic, an NS health degree analysis topic, and an NS resource utilization analysis topic.
  • the information required for the specified analysis topic is the input data to be trained, that is, the input data required for training the target data analysis model corresponding to the specified analysis topic.
  • the specified analysis topic is an NS alarm event analysis topic, and the information required by the specified analysis topic includes NS-related performance data and/or alarm data.
  • Step 302 According to the notification information, the pre-trained basic data analysis model is trained to obtain the target data analysis model corresponding to the specified analysis topic.
  • the basic data analysis model is obtained by training the original model according to the configuration data of the NFV object. It is the managed object in the NFV management domain.
  • the MDA entity obtains the information required by the NS-related designated analysis topic carried in the notification information, and retrains the pre-trained basic data analysis model according to the information required by the NS-related designated analysis topic, and obtains the corresponding data of the designated analysis topic.
  • Target data analysis model obtains the information required by the NS-related designated analysis topic carried in the notification information, and retrains the pre-trained basic data analysis model according to the information required by the NS-related designated analysis topic, and obtains the corresponding data of the designated analysis topic.
  • the MDA entity pre-trains the basic data analysis model before training the basic data analysis model to obtain the target data analysis model, that is, the MDA entity trains the original model according to the configuration data of the NFV object.
  • NFV objects are managed objects in the NFV management domain.
  • the configuration data of the NFV object is used to indicate the configuration of the NFV object.
  • the original model is the initialized model.
  • the basic data analysis model is a general model obtained by pre-training the original model based on the configuration data of the NFV object. This basic data analysis model is independent of the subject of analysis.
  • the basic data analysis model is an AI model or an ML model. This embodiment of the present application does not limit this.
  • the target data analysis model is a data analysis model obtained by retraining the basic data analysis model based on the information required by the designated analysis topic related to the NS.
  • the target data analysis model is related to the analysis topic.
  • a target data analysis model is a model that has the ability to perform data analysis on the information needed to analyze the subject.
  • the target data analysis model is used to convert the information required by the input analysis subject into data analysis results.
  • the target data analysis model is used to represent the correlation between the information needed to analyze the subject and the results of the data analysis.
  • the target data analysis model is a preset mathematical model, and the target data analysis model includes model coefficients between the information required for analyzing the subject and the data analysis result.
  • the MDA entity After the MDA entity has trained and completed the target data analysis model corresponding to the specified analysis topic, after acquiring the information required by the specified analysis topic to be analyzed, the information required by the specified analysis topic is input into the target data analysis. model, and output the data analysis results.
  • the training and use process of the data analysis model includes but is not limited to the following steps: 1.
  • the MDA entity obtains the configuration data of the NFV object to be trained, and configures the NFV object
  • the data is input into the original model; 2.
  • the basic data analysis model is obtained by pre-training the original model; 3.
  • the training sample set is obtained, and the training sample set includes the designated analysis topic to be trained carried in the notification message received by the MDA entity
  • To obtain the required information input the training sample set into the basic data analysis model; 4.
  • After training the target data analysis model 5.
  • the MDA entity receives the information required by the specified analysis topic to be analyzed, input the information required by the specified analysis topic into the trained target data analysis model; 6.
  • the embodiment of the present application completes a basic data analysis model by pre-training the MDA entity.
  • the MDA entity carries the information required by the designated analysis topic related to the NS through the received
  • the target data analysis model corresponding to the specified analysis topic is further trained, that is, the basic data analysis model is reused by the topic-specific target data analysis model during model training, avoiding the data corresponding to different analysis topics in related technologies.
  • the analysis model training needs to derive various associations required for data analysis from scratch, which shortens the training time of the data analysis model and improves the model training efficiency.
  • the MDA entity trains the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic, it needs to train the original model according to the configuration data of the NFV object to obtain the basic data analysis.
  • Model In a possible implementation manner, the MDA entity trains the original model according to the configuration data of the NFV object to obtain a basic data analysis model.
  • the model is trained to obtain a basic data analysis model.
  • the information model of the NFV object in the design state includes descriptor template information of the NFV object, and the information model of the NFV object in the running state includes image information after the NFV object is instantiated. That is, based on the above embodiment, before step 301, the training method of the data analysis model further includes the following steps, as shown in FIG. 5:
  • Step 501 According to the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object, the original model is trained to obtain a basic data analysis model.
  • the MDA entity receives the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object, and trains the original model according to the descriptor template information of the NFV object and/or the image information after the instantiation of the NFV object.
  • Basic data analysis model The MDA entity receives the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object, and trains the original model according to the descriptor template information of the NFV object and/or the image information after the instantiation of the NFV object.
  • the descriptor template information includes NSD template information and/or VNFD template information; and/or, the image information includes NS instance image information and/or VNF instance image information.
  • the basic data analysis model is used to indicate the attributes of the NFV object and the association relationship between the NFV objects.
  • the attributes of the NFV object include attributes in NSD template information, attributes in VNFD template information, attributes in NS instance image template information, and attributes in VNF instance image information.
  • the attributes in the NSD template information include NSD identifier, provider, NSD name, NSD version, auto-scale rule used by NS, Deployment Flavor used by NS, and at least one of the security signature. A sort of.
  • the attributes in the VNFD template information include at least one of the VNFD identifier, the VNF provider, the VNF product name, the VNF software version, the VNFD version, the auto-scale rule used by the VNF, and the deployment template used by the VNF. kind.
  • the attributes in the NS instance image template information include at least one of the NS instance identifier, the NS instance name, the NS instance state, the performance indicators monitored by the NS instance, the NSD used by the NS instance, and the deployment template.
  • the attributes in the VNF instance image template information include at least one of the VNF instance identifier, the VNF instance name, the VNF instance state, the performance indicators monitored by the VNF instance, the VNFD used by the VNF instance, and the connection information with the VIM.
  • the association relationship between the NFV objects includes the association relationship between the upper and lower layer NFV objects in the vertical direction and/or the association relationship between the NFV objects connected at the same layer in the horizontal direction.
  • the virtual machine port alarm of the member object "VNF_1" in the NS instance is strongly correlated with the unreachable alarm of the member object "VL_1", that is, the basic data analysis model is used to indicate the virtual machine port of the member object "VNF_1" and the member object" VL_1" has an association relationship.
  • the training process of the basic data analysis model includes but is not limited to the following stages:
  • the first stage the onboard stage of the NSD and/or VNF data package (package), the MDA entity performs basic data analysis model training based on the NSD template information and/or VNFD template information, and creates a relatively static model in the training of the basic data analysis model.
  • Object class associations The first stage: the onboard stage of the NSD and/or VNF data package (package), the MDA entity performs basic data analysis model training based on the NSD template information and/or VNFD template information, and creates a relatively static model in the training of the basic data analysis model.
  • the second stage the NS and/or VNF instantiation stage, the MDA entity performs basic data analysis model training based on the NS instance image information and/or VNF instance image information, and creates relatively dynamic object instance associations in the basic data analysis model training.
  • the third stage In the running state after the instantiation of NS and/or VNF, the MDA entity analyzes the data in the basic data analysis model according to the NS instance image information modified during the NS update process and/or the modified VNF instance image information. The association relationship of the object instance is updated.
  • the first stage is the stage of uploading NSD and/or VNF data packets.
  • the training process of the basic data analysis model includes but is not limited to the following steps, as shown in Figure 6:
  • step 601 the operations support system (OSS)/business support system (BSS) initiates an NSD onboard process to the NFVO, and the specified NSD is listed in the NFV management domain.
  • OSS operations support system
  • BSS business support system
  • Step 602 the NFVO imports the NSD template information on the shelves into the MDA entity.
  • NFVO sends the NSD template information to the MDA entity as the input data for training the basic data analysis model.
  • NFVO imports the listed NSD template information into the MDA entity, including but not limited to the following two possible implementations:
  • the NSD import process adopts an on-path process, that is, along with the NSD listing process in step 601, the OSS/BSS directly imports the NSD template information into the MDA entity through NFVO.
  • the NFVO sends a model training input request to the MDA entity, where the model training input request carries the information of the NSD template to be imported.
  • Step 603 the MDA entity performs basic data analysis model training according to the imported NSD template information, and establishes an association relationship between the NSD template information and the descriptor template information of the member objects of the NS.
  • MDA trains the basic data analysis model according to the imported NSD template information.
  • the MDA entity establishes the association relationship between the NSD template information and the descriptor template information of the member objects of the NS. That is, the trained basic data analysis model is used to indicate the association relationship between the NSD template information and the descriptor template information of the member objects of the NS.
  • the MDA entity establishes an association relationship between the NSD template information and the descriptor template information of the member object of the NS, and the attribute of the member object of the NS corresponds to the attribute of the NSD template information.
  • the MDA entity establishes an inclusion relationship between the NS object class and the object class corresponding to the descriptor template information of the member objects of the NS. That is, the trained basic data analysis model is used to indicate the inclusion relationship between the NS object class and the object class corresponding to the descriptor template information of the member objects of the NS.
  • the attribute of the object class of the member object corresponds to the attribute of the descriptor template information of the member object.
  • the object class of the member object includes: the object class of the member nesting NS of the NS, the object class of the member VNF, the object class of the member PNF, the object class of the Service Access Point (SAP), the NS At least one of the object class of the external virtual link and the object class of the used VNF forwarding graph.
  • SAP Service Access Point
  • the descriptor template information includes VNFD template information
  • the above steps 601 to 603 can be replaced and implemented as the following steps: OSS/BSS initiates a VNF data package listing process to NFVO, and puts them on the shelf in the NFV management domain The specified VNF packet.
  • NFVO imports the listed VNFD template information into the MDA entity.
  • the MDA entity performs basic data analysis model training based on the imported VNFD template information.
  • the descriptor template information includes NSD template information and VNFD template information
  • the above steps 601 to 603 can be replaced and implemented as the following steps: OSS/BSS initiates the NSD listing process to NFVO, and the NFV manages The specified NSD is listed in the domain. NFVO imports the listed NSD template information into the MDA entity. The OSS/BSS initiates the VNF data package listing process to the NFVO, and the specified VNF data package is listed in the NFV management domain. NFVO imports the listed VNFD template information into the MDA entity.
  • the MDA entity performs basic data analysis model training according to the imported NSD template information and VNFD template information, and establishes the association relationship between the NSD template information and the descriptor template information of the member objects of the NS.
  • the descriptor template information includes VNFD template information, or, when including NSD template information and VNFD template information, the training process of the corresponding basic data analysis model can be referred to by analogy with the relevant descriptions in the above embodiments, which will not be repeated here. .
  • the second stage is the NS and/or VNF instantiation stage.
  • the training process of the basic data analysis model includes but is not limited to the following steps, as shown in Figure 7 :
  • Step 701 the OSS/BSS initiates a process of creating an NS instance identifier to the NFVO, and creates an identifier of the NS instance and the NS instance image information corresponding to the NS instance.
  • Step 702 NFVO imports the created NS instance image information into the MDA entity.
  • NFVO sends the NS instance image information to the MDA entity as the input data for training the basic data analysis model.
  • NFVO imports the created NS instance image information into the MDA entity, including but not limited to the following two possible implementations:
  • the process of importing the NS instance image information adopts an on-path process, that is, along with the NS instance identifier creation process in step 701, the OSS/BSS directly imports the NS instance image information into the MDA entity through NFVO.
  • the NFVO sends a model training input request to the MDA entity, where the model training input request carries the image information of the NS instance to be imported.
  • Step 703 the NFVO initiates a process of creating a VNF instance identifier to the VNFM, and creates an identifier of the VNF instance and the VNF instance image information corresponding to the VNF instance.
  • Step 704 the VNFM imports the created VNF instance image information into the MDA entity.
  • the VNFM sends the VNF instance image information to the MDA entity as the input data for training the basic data analysis model.
  • the VNFM imports the created VNF instance image information into the MDA entity, including but not limited to the following two possible implementations:
  • the process of importing VNF instance image information adopts an on-path process, that is, along with the VNF instance identifier creation process in step 703, the NFVO directly imports the VNF instance image information into the MDA entity through the VNFM.
  • the VNFM sends a model training input request to the MDA entity, where the model training input request carries the image information of the VNF instance to be imported.
  • the import process of the NS instance image information introduced in steps 701 to 702 and the import process of the VNF instance image information introduced in steps 703 to 704 can be executed in parallel, or the NS instance image information can be executed first
  • the import process of the VNF instance image information is performed after the import process of the VNF instance image information.
  • the import process of the VNF instance image information information can also be performed first and then the import process of the NS instance image information information process is performed. This embodiment does not limit the execution order.
  • Step 705 the MDA entity performs basic data analysis model training according to the imported NS instance mirror information and VNF instance mirror information, and establishes an association relationship between the NS instance mirror information and the mirror information of member object instances of the NS instance.
  • the MDA entity performs basic data analysis model training according to the imported NS instance image information and VNF instance image information. During the training process of the basic data analysis model, the MDA entity establishes the relationship between the NS instance image information and the image information of the member object instances of the NS instance. association relationship. That is, the trained basic data analysis model is used to indicate the association relationship between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance.
  • the MDA entity establishes an association relationship between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance, and the attributes of the member object instances of the NS instance correspond to the attributes in the mirror template information of the NS instance.
  • the MDA entity establishes an inclusion relationship between the NS instance and the object instance corresponding to the descriptor template information of the member objects of the NS. That is, the trained basic data analysis model is used to indicate the inclusion relationship between the NS instance and the object instance corresponding to the descriptor template information of the member object of the NS.
  • the attribute of the object instance of the member object corresponds to the attribute of the mirror information of the member object instance.
  • the object instance of the member object includes: at least one of the member nested NS instance, the member VNF instance, the member PNF instance, the SAP instance, the virtual link instance outside the NS, and the used VNF forwarding graph instance that constitute the NS instance. kind. This embodiment of the present application does not limit this.
  • the image information includes the image information of the NS instance
  • the above steps 701 to 705 can be replaced by the following steps: OSS/BSS initiates a process of creating an NS instance identifier to NFVO, and the identifier of the NS instance and the identifier of the NS instance are created.
  • NFVO imports the created NS instance image information into the MDA entity.
  • the MDA entity conducts basic data analysis model training according to the imported NS instance mirror information, and establishes an association relationship between the NS instance mirror information and the mirror information of the member object instances of the NS instance.
  • the image information includes VNF instance image information
  • the above steps 701 to 705 can be replaced and implemented as the following steps: NFVO initiates a VNF instance identifier creation process to the VNFM, and creates the VNF instance identifier and the VNF instance identifier. Information about the VNF instance image corresponding to the instance.
  • the VNFM imports the created VNF instance image information into the MDA entity.
  • the MDA entity performs basic data analysis model training based on the imported VNF instance image information.
  • the training process of the corresponding basic data analysis model when the mirroring information includes the mirroring information of the NS instance or the mirroring information of the VNF instance can be referred to the relevant description in the above embodiment by analogy, and details are not repeated here.
  • the third stage is the running state after the NS and/or VNF are instantiated.
  • the training process of the basic data analysis model includes but is not limited to the following Several steps, as shown in Figure 8:
  • Step 801 the OSS/BSS initiates an NS update process to the NFVO.
  • the OSS/BSS sends a request message to the NFVO, where the request message carries the NS update type, and the NS update type is used to instruct to modify the image information of the VNF instance that constitutes the NS instance.
  • Step 802 the NFVO initiates a VNF instance information modification process to the VNFM, and modifies the specified VNF instance image information.
  • the NFVO After receiving the request message carrying the NS update type, the NFVO initiates the VNF instance information modification process to the VNFM, and modifies the VNF instance image information indicated by the NS update type to obtain the modified VNF instance image information.
  • Step 803 the VNFM imports the modified VNF instance image information into the MDA entity.
  • the VNFM sends the modified VNF instance image information to the MDA entity as the input data of the basic data analysis model training to instruct the basic data analysis model to be updated.
  • the VNFM imports the modified VNF instance image information into the MDA entity, including but not limited to the following two possible implementations:
  • the process of importing the modified VNF instance image information adopts an on-path process, that is, along with the VNF instance information modification process in step 802, the NFVO directly imports the modified VNF instance image information into the MDA entity through the VNFM .
  • the VNFM sends a model training input request to the MDA entity, where the model training input request carries the modified VNF instance image information.
  • Step 804 the MDA entity updates the basic data analysis model according to the modified VNF instance image information.
  • the MDA entity updates the basic data analysis model according to the modified VNF instance image information to obtain the updated basic data analysis model.
  • the MDA entity training the basic data analysis model according to the VNF instance image information refer to the related description of the MDA entity training the basic data analysis model according to the VNF instance image information, and will not be repeated here.
  • the above steps 801 to 804 can also be replaced and implemented as the following steps: the OSS/BSS initiates an NS update process to the NFVO to modify the NS instance image information.
  • NFVO imports the modified NS instance image information into the MDA entity.
  • the MDA entity updates the basic data analysis model according to the modified NS instance image information.
  • the above steps 801 to 804 can also be replaced and implemented as the following steps: the OSS/BSS initiates an NS update process to the NFVO.
  • the NFVO initiates the VNF instance information modification process to the VNFM to modify the specified VNF instance image information.
  • the VNFM imports the modified VNF instance image information into the MDA entity.
  • OSS/BSS initiates the NS update process to NFVO to modify the NS instance image information.
  • NFVO imports the modified NS instance image information into the MDA entity.
  • the MDA entity updates the basic data analysis model according to the modified NS instance image information and the modified VNF instance image information.
  • the MDA entity updates the basic data analysis model according to the modified NS instance image information, or the MDA entity updates the basic data analysis model according to the modified NS instance image information and the modified VNF instance image information.
  • update process reference can be made to the relevant descriptions in the foregoing embodiments by analogy, and details are not repeated here.
  • FIG. 9 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application, and the method is used for the MDA entity shown in FIG. 2 . middle.
  • the method includes the following steps.
  • Step 901 the MDA entity subscribes to the NFVO for the information required by the specified analysis topic related to the NS.
  • the information required for the specified analysis topic related to the NS includes information related to the specified NS instance.
  • the information required when specifying an analysis topic as an NS alarm event analysis topic includes NS-related performance data and/or alarm data.
  • Step 902 the NFVO sends a notification message to the MDA entity that carries the information required by the specified analysis topic related to the NS.
  • the NFVO sends a notification message to the MDA entity, which carries the information required for the specified analysis topic related to the NS.
  • the above steps 901 and 902 are replaced by the following steps: the MDA entity subscribes to the VNFM for the information required by the specified analysis topic related to the NS.
  • the VNFM sends a notification message to the MDA entity that carries the information required for the specified analysis topic related to the NS.
  • the information required for the specified analysis topic related to the NS includes information related to all member VNF instances of the specified NS instance.
  • the above-mentioned steps 901 and 902 are replaced by the following steps: the MDA entity subscribes to the VIM for information required by the specified analysis topic related to the NS.
  • the VIM sends a notification message to the MDA entity that carries the information needed for the specified analysis topic related to the NS.
  • the information required for the specified analysis topic related to the NS includes information related to virtualized resources used by all member VNF instances and virtual link instances of the specified NS instance.
  • the above steps 901 and 902 are replaced by the following steps: the MDA entity subscribes to the CISM entity for information required by the specified analysis topic related to the NS.
  • the CISM entity sends a notification message to the MDA entity that carries the information required for the specified analysis topic related to the NS.
  • the information required for the specified analysis topic related to the NS includes information related to the managed container infrastructure object (Managed Container Infrastructure Object, MCIO) used by all the member VNF instances of the specified NS instance. information.
  • managed container infrastructure object Managed Container Infrastructure Object, MCIO
  • Step 903 the MDA entity receives a notification message that carries the information required for the specified analysis topic related to the NS.
  • the MDA entity receives a notification message that carries the information required for the specified analysis topic related to the NS.
  • Step 904 the MDA entity trains the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic.
  • the basic data analysis model is the above-trained basic data analysis model.
  • the MDA entity establishes an association relationship between NFV objects and/or an association relationship between management events according to the notification message, and expands the basic data analysis model based on the established association relationship to form a target data analysis model.
  • the analysis topic is specified as the NS alarm event analysis topic
  • the MDA entity receives the notification message carrying the NS-related alarm data, and analyzes the received multiple alarm data to determine the virtual machine of the member object "VNF_1" in the NS instance.
  • the port alarm is strongly correlated with the unreachable alarm of the member object "VL_2", thus establishing the correlation between the virtual machine port alarm of the member object "VNF_1" in the NS instance and the member object "VL_2". does not have this relationship.
  • the MDA entity trains the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic, and then invokes the trained target data analysis model for data analysis.
  • the use process of the target data analysis model includes but is not limited to the following steps, as shown in FIG. 10 :
  • Step 1001 Obtain information required by a specified analysis topic to be analyzed.
  • the MDA entity obtains the information required for the specified analysis subject to be analyzed.
  • the specified analysis topic includes any one of an NS alarm event analysis topic, an NS health degree analysis topic, and an NS resource utilization analysis topic.
  • the specified analysis topic is an NS alarm event analysis topic, and the information required by the specified analysis topic includes NS-related performance data and/or alarm data.
  • Step 1002 Input the information required by the designated analysis topic into the target data analysis model, and output the data analysis result.
  • the MDA entity inputs the information required by the specified analysis subject into the target data analysis model, and outputs the data analysis result.
  • the MDA entity inputs the NS-related performance data and/or alarm data into the target data analysis model corresponding to the NS alarm event analysis topic, and outputs a first analysis result, where the first analysis result includes The underlying alarm and/or root cause of the NS failure.
  • the performance data and/or alarm data related to the NS includes performance data and/or alarm data related to the NS and its constituent components/infrastructure resources.
  • NS-related performance data and/or alarm data are provided in NFVO.
  • NFVO sends NS related performance data and/or alarm data to the MDA entity for data analysis.
  • the MDA entity invokes the target data analysis model corresponding to the NS alarm event analysis topic, performs data analysis on the NS-related performance data and/or alarm data, and outputs the first analysis result, where the first analysis result includes the fundamental alarm and/or the NS failure. or root cause.
  • the MDA entity returns the first analysis result to NFVO.
  • the NFVO confirms the first analysis result, and groups the NS-related performance data and/or alarm data corresponding to the first analysis result.
  • the MDA entity inputs the information required for NS health degree analysis into a target data analysis model corresponding to the subject of NS health degree analysis, and outputs a second analysis result, where the second analysis result includes NS health status and the description information corresponding to the health status.
  • the information required for NS health degree analysis includes NS status, NS fault management (Fault Management, FM)/performance management (Performance Management, PM) information, VNF indicators, and configuration information related to the analyzed NS. At least one, which is not limited in this embodiment of the present application.
  • the NFVO decided to request the MDA entity to analyze the health of the NS in its management domain.
  • the NFVO sends a data analysis request to the MDA entity, where the data analysis request is used to instruct the MDA entity to perform health analysis on the specified NS.
  • the MDA entity interacts with other NFV-MANO functional entities such as NFVO, VNFM and/or VIM to gather information required for NS health analysis.
  • the MDA entity invokes the target data analysis model corresponding to the NS health degree analysis topic, and performs data analysis and output on the information required for the NS health degree analysis to obtain a second analysis result.
  • the second analysis result includes the health state of the NS and the corresponding health state. Description information.
  • the health status of the NS is used to indicate whether the NS is healthy or unhealthy.
  • the MDA entity returns the second analysis result to NFVO.
  • the NFVO receives the second analysis result, and obtains the operating status of the NS.
  • the MDA entity inputs the information required for the NS resource utilization analysis into the target data analysis model corresponding to the subject of the NS resource utilization analysis, and outputs a third analysis result, which is the third analysis result. Include an indication of resource utilization of the NS.
  • the information required for the NS resource utilization analysis includes virtual computing-related measurement information of each constituent VNF of the NS, network data volume-related measurement information of the SAP belonging to the NS, and network data of the external CPs belonging to the NS that form the VNF. At least one of quantity-related measurement information, an indicator of the NS constituting the VNF. This embodiment of the present application does not limit this.
  • the NFVO decided to perform data analysis on the resource utilization of NS.
  • the NFVO sends a data analysis request to the MDA entity, where the data analysis request is used to instruct the MDA entity to perform resource utilization analysis on the specified NS.
  • the MDA interacts with the corresponding NFV-MANO functional entities to collect the information required for NS resource utilization analysis over a period of time.
  • the MDA entity invokes the target data analysis model corresponding to the NS resource utilization analysis theme, and performs data analysis and output on the information required for the NS resource utilization analysis to obtain a third analysis result.
  • the third analysis result includes an indication of the resource utilization of the NS .
  • the third analysis result includes resource utilization of at least one type of NS resources and corresponding suggestion information, so as to solve the resource utilization problem determined in the analysis report.
  • the types of NS resources include at least one of computing resources, storage resources, and network resources.
  • the MDA entity returns the analysis results to NFVO.
  • NFVO obtains the resource utilization of NS over a period of time.
  • the embodiment of the present application does not limit the type of the specified analysis topic and the information content required for the specified analysis topic.
  • the basic data analysis model dynamically maintains the attributes of the NFV object and the association relationship between the NFV objects based on the configuration data of the NFV object.
  • further training is performed to complete the analysis theme-specific data analysis model by collecting the analysis theme-specific NS-related performance data and/or alarm data.
  • the information model of the NFV object in the design state (that is, the descriptor template information of the NFV object) and the information model of the NFV object in the running state (that is, the mirror information after the instantiation of the NFV object) are used as basic data through the MDA entity.
  • the input data of model training is analyzed, and the basic data analysis model irrelevant to the analysis topic is obtained by training, so as to enhance the ability of the MDA entity to dynamically obtain the association relationship between NFV objects in the NFV management domain, and further improve the subsequent training target data analysis model. efficiency.
  • FIG. 11 shows a block diagram of an apparatus for training a data analysis model provided by an exemplary embodiment of the present application.
  • the training device of the data analysis model can be implemented by software, hardware or a combination of the two to become all or a part of the MDA entity shown in FIG. 2 .
  • the training device for the data analysis model may include: a receiving unit 1110 and a processing unit 1120 .
  • the receiving unit 1110 is used to realize the functions of the above steps 301, 903 and 1001 and the receiving function of the MDA entity side implicit in each step;
  • the processing unit 1120 is configured to implement the functions of the above steps 302, 501, 603, 705, 804, 904 and 1002 and the processing functions on the MDA entity side implicit in each step.
  • An embodiment of the present application provides a training device for a data analysis model, which is used in an MDA entity.
  • the device includes: a processor and a memory for storing instructions executable by the processor; wherein, when the processor is configured to execute the instructions Implement the methods described above to be performed by the MDA entity.
  • Embodiments of the present application provide a computer program product, including computer-readable codes, or a non-volatile computer-readable storage medium carrying computer-readable codes, when the computer-readable codes are executed in a processor of an electronic device , the processor in the electronic device executes the above-mentioned method executed by the MDA entity.
  • Embodiments of the present application provide a non-volatile computer-readable storage medium on which computer program instructions are stored.
  • the computer program instructions are executed by a processor, the above-mentioned method executed by an MDA entity is implemented.
  • a computer-readable storage medium may be a tangible device that can hold and store instructions for use by the instruction execution device.
  • the computer-readable storage medium may be, for example, but not limited to, an electrical storage device, a magnetic storage device, an optical storage device, an electromagnetic storage device, a semiconductor storage device, or any suitable combination of the foregoing.
  • Computer-readable storage media include: portable computer disks, hard disks, random access memory (RAM), read only memory (ROM), erasable programmable read-only memory (Electrically Programmable Read-Only-Memory, EPROM or flash memory), static random access memory (Static Random-Access Memory, SRAM), portable compact disk read-only memory (Compact Disc Read-Only Memory, CD - ROM), Digital Video Disc (DVD), memory sticks, floppy disks, mechanically encoded devices, such as punch cards or raised structures in grooves on which instructions are stored, and any suitable combination of the foregoing .
  • RAM random access memory
  • ROM read only memory
  • EPROM erasable programmable read-only memory
  • EPROM Errically Programmable Read-Only-Memory
  • SRAM static random access memory
  • portable compact disk read-only memory Compact Disc Read-Only Memory
  • CD - ROM Compact Disc Read-Only Memory
  • DVD Digital Video Disc
  • memory sticks floppy disks
  • Computer readable program instructions or code described herein may be downloaded to various computing/processing devices from a computer readable storage medium, or to an external computer or external storage device over a network such as the Internet, a local area network, a wide area network and/or a wireless network.
  • the network may include copper transmission cables, fiber optic transmission, wireless transmission, routers, firewalls, switches, gateway computers, and/or edge servers.
  • a network adapter card or network interface in each computing/processing device receives computer-readable program instructions from a network and forwards the computer-readable program instructions for storage in a computer-readable storage medium in each computing/processing device .
  • the computer program instructions used to perform the operations of the present application may be assembly instructions, Instruction Set Architecture (ISA) instructions, machine instructions, machine-related instructions, microcode, firmware instructions, state setting data, or in one or more source or object code written in any combination of programming languages, including object-oriented programming languages such as Smalltalk, C++, etc., and conventional procedural programming languages such as the "C" language or similar programming languages.
  • the computer readable program instructions may execute entirely on the user's computer, partly on the user's computer, as a stand-alone software package, partly on the user's computer and partly on a remote computer, or entirely on the remote computer or server implement.
  • the remote computer may be connected to the user's computer through any kind of network—including a Local Area Network (LAN) or a Wide Area Network (WAN)—or, may be connected to an external computer (eg, use an internet service provider to connect via the internet).
  • electronic circuits such as programmable logic circuits, Field-Programmable Gate Arrays (FPGA), or Programmable Logic Arrays (Programmable Logic Arrays), are personalized by utilizing state information of computer-readable program instructions.
  • Logic Array, PLA the electronic circuit can execute computer readable program instructions to implement various aspects of the present application.
  • These computer readable program instructions may be provided to a processor of a general purpose computer, special purpose computer or other programmable data processing apparatus to produce a machine that causes the instructions when executed by the processor of the computer or other programmable data processing apparatus , resulting in means for implementing the functions/acts specified in one or more blocks of the flowchart and/or block diagrams.
  • These computer readable program instructions can also be stored in a computer readable storage medium, these instructions cause a computer, programmable data processing apparatus and/or other equipment to operate in a specific manner, so that the computer readable medium on which the instructions are stored includes An article of manufacture comprising instructions for implementing various aspects of the functions/acts specified in one or more blocks of the flowchart and/or block diagrams.
  • Computer readable program instructions can also be loaded onto a computer, other programmable data processing apparatus, or other equipment to cause a series of operational steps to be performed on the computer, other programmable data processing apparatus, or other equipment to produce a computer-implemented process , thereby causing instructions executing on a computer, other programmable data processing apparatus, or other device to implement the functions/acts specified in one or more blocks of the flowcharts and/or block diagrams.
  • each block in the flowchart or block diagrams may represent a module, segment, or portion of instructions, which comprises one or more functions for implementing the specified logical function(s) executable instructions.
  • the functions noted in the blocks may occur out of the order noted in the figures. For example, two blocks in succession may, in fact, be executed substantially concurrently, or the blocks may sometimes be executed in the reverse order, depending upon the functionality involved.
  • each block of the block diagrams and/or flowchart illustrations, and combinations of blocks in the block diagrams and/or flowchart illustrations can be implemented in hardware (eg, circuits or ASICs (Application) that perform the corresponding functions or actions. Specific Integrated Circuit, application-specific integrated circuit)), or can be implemented by a combination of hardware and software, such as firmware.

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Abstract

The present application relates to the technical field of communications, and in particular, to a method and apparatus for training a data analysis model, and a storage medium. The method is applied to an MDA entity. The method comprises: receiving a notification message, the notification message carrying information required for a specified analysis topic related to an NS; and training a pre-trained basic data analysis model according to the notification message, to obtain a target data analysis model corresponding to the specified analysis topic, the basic data analysis model being obtained by training an original model according to configuration data of an NFV object. In embodiments of the present application, an MDA entity pre-trains a basic data analysis model, such that the basic data analysis model is reused during model training of a topic-specific target data analysis model, thereby shortening the duration of data analysis model training and increasing the model training efficiency.

Description

数据分析模型的训练方法、装置及存储介质Training method, device and storage medium for data analysis model
本申请要求于2020年11月27日提交中国专利局、申请号为202011358153.5、申请名称为“数据分析模型的训练方法、装置及存储介质”的中国专利申请的优先权,其全部内容通过引用结合在本申请中。This application claims the priority of the Chinese patent application with the application number 202011358153.5 and the application title "Data Analysis Model Training Method, Device and Storage Medium" filed with the China Patent Office on November 27, 2020, the entire contents of which are incorporated by reference in this application.
技术领域technical field
本申请涉及通信技术领域,尤其涉及一种数据分析模型的训练方法、装置及存储介质。The present application relates to the field of communication technologies, and in particular, to a training method, device and storage medium for a data analysis model.
背景技术Background technique
管理数据分析(Management Data Analytics,MDA)实体是指在网络和服务管理中使用管理分析数据的管理服务。网络功能的原始性能数据可以与其他管理数据(例如,告警数据、配置数据)一起分析,并形成一个或多个网络功能、子网络或网络切片/子网切片实例的管理分析数据。MDA提供了处理和分析与网络和服务事件及状态相关的原始数据的能力,以提供分析报告,以支持网络和服务管理的必要操作。The Management Data Analytics (MDA) entity refers to management services that use management analytics data in network and service management. Raw performance data for network functions can be analyzed together with other management data (eg, alarm data, configuration data) and form management analysis data for one or more network functions, sub-networks, or network slices/sub-network slice instances. MDA provides the ability to process and analyze raw data related to network and service events and status to provide analytical reports to support necessary operations for network and service management.
目前,MDA可以集成人工智能(Artificial Intelligence,AI)和/或机器学习(Machine Learning,ML)的功能为网络服务管理和编排带来智能化和自动化。比如,面向特定的分析主题,MDA实体采集相关的网络信息,根据内置的与该分析主题对应的数据分析模型(比如采用AI算法实现的分析模型),对采集到的网络信息进行分析得到分析结果,并将分析结果返回给发起主题分析的网络功能虚拟化编排器(Network Functions Virtualization Orchestrator,NFVO)即服务消费者,以增强NFVO在网络功能虚拟化(Network Function Virtualization,NFV)管理域内做闭环决策的能力。Currently, MDA can integrate artificial intelligence (AI) and/or machine learning (ML) capabilities to bring intelligence and automation to network service management and orchestration. For example, for a specific analysis topic, the MDA entity collects relevant network information, and analyzes the collected network information according to the built-in data analysis model corresponding to the analysis topic (such as the analysis model implemented by AI algorithm) to obtain the analysis result. , and return the analysis results to the Network Functions Virtualization Orchestrator (NFVO) that initiated the topic analysis, that is, the service consumer, to enhance NFVO to make closed-loop decisions in the Network Function Virtualization (NFV) management domain Ability.
在上述方法中,不同分析主题所采用的数据分析模型是不同的,而不同分析主题各自对应的数据分析模型训练均需从零开始衍生数据分析所需的各种关联关系,模型训练效率较低。In the above method, the data analysis models used by different analysis topics are different, and the training of data analysis models corresponding to different analysis topics needs to derive various associations required for data analysis from scratch, and the model training efficiency is low. .
发明内容SUMMARY OF THE INVENTION
有鉴于此,提出了一种数据分析模型的训练方法、装置及存储介质,MDA实体根据NFV对象的配置数据预先训练完成一个基本数据分析模型,使得MDA实体接收到携带有与网络服务(Network Service,NS)相关的指定分析主题所需的信息的通知信息后,可以在该基本数据分析模型的基础上进一步训练指定分析主题对应的目标数据分析模型,即不同分析主题对应的目标数据分析模型在训练时均可复用预先训练完成的基本数据分析模型,这样可以提高数据分析模型的训练效率。In view of this, a training method, device and storage medium for a data analysis model are proposed. The MDA entity pre-trains a basic data analysis model according to the configuration data of the NFV object, so that the MDA entity receives the data carrying the network service (Network Service). , NS) related to the notification information of the information required by the specified analysis topic, the target data analysis model corresponding to the specified analysis topic can be further trained on the basis of the basic data analysis model, that is, the target data analysis models corresponding to different analysis topics are in The pre-trained basic data analysis model can be reused during training, which can improve the training efficiency of the data analysis model.
第一方面,本申请的实施例提供了一种数据分析模型的训练方法,用于MDA实体中,该方法包括:In the first aspect, an embodiment of the present application provides a training method for a data analysis model, which is used in an MDA entity, and the method includes:
接收通知消息,通知消息携带有与NS相关的指定分析主题所需的信息;Receive a notification message, which carries the information required by the specified analysis topic related to the NS;
根据通知信息,对预先训练完成的基本数据分析模型进行训练得到指定分析主题对应的目标数据分析模型,基本数据分析模型是根据NFV对象的配置数据对原始模型进行训练得到的,NFV对象为NFV管理域内的被管理对象。According to the notification information, the pre-trained basic data analysis model is trained to obtain the target data analysis model corresponding to the specified analysis topic. The basic data analysis model is obtained by training the original model according to the configuration data of the NFV object. The NFV object is managed by NFV Managed objects within the domain.
在该实现方式中,MDA实体预先训练完成一个基本数据分析模型,在该基本数据分析模型的基础上,MDA实体通过接收到的携带有与NS相关的指定分析主题所需的信息的通知信息,进一步训练完成指定分析主题对应的目标数据分析模型,即基本数据分析模型被主题特定的目标数据分析模型在模型训练时进行复用,避免了相关技术中不同分析主题各自对应的数据分析模型训练均需从零开始衍生数据分析所需的各种关联关系的情况,缩短了数据分析模型训练的时长,提高了模型训练效率。In this implementation, the MDA entity is pre-trained to complete a basic data analysis model, and on the basis of the basic data analysis model, the MDA entity receives the notification information that carries the information required by the specified analysis topic related to the NS, Further training completes the target data analysis model corresponding to the specified analysis topic, that is, the basic data analysis model is reused by the topic-specific target data analysis model during model training, avoiding the training of data analysis models corresponding to different analysis topics in related technologies. When it is necessary to derive various associations required for data analysis from scratch, the training time of the data analysis model is shortened and the model training efficiency is improved.
结合第一方面,在第一方面的第一种可能的实现方式中,基本数据分析模型用于指示NFV对象的属性和NFV对象之间的关联关系。With reference to the first aspect, in a first possible implementation manner of the first aspect, a basic data analysis model is used to indicate an attribute of an NFV object and an association relationship between the NFV object.
在该实现方式中,MDA实体预先训练完成的基本数据分析模型可以维护NFV对象的属性和NFV对象之间的关联关系。In this implementation manner, the basic data analysis model pre-trained by the MDA entity can maintain the attributes of the NFV objects and the association relationship between the NFV objects.
结合第一方面,在第一方面的第二种可能的实现方式中,该方法还包括:根据导入的NFV对象的描述符模板信息和/或NFV对象实例化后的镜像信息,对原始模型进行训练得到基本数据分析模型。With reference to the first aspect, in a second possible implementation manner of the first aspect, the method further includes: performing an analysis on the original model according to the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object. The basic data analysis model is obtained by training.
在该实现方式中,MDA实体将NFV对象在设计态的信息模型(即NFV对象的描述符模板信息)和NFV对象在运行态的信息模型(即NFV对象实例化后的镜像信息)作为基础数据分析模型训练的输入数据,从而训练得到与分析主题无关的基本数据分析模型,以增强MDA实体动态获得NFV管理域中NFV对象之间的关联关系的能力,并提高后续基于该基本数据分析模型进一步训练目标数据分析模型的效率。In this implementation, the MDA entity takes the information model of the NFV object in the design state (that is, the descriptor template information of the NFV object) and the information model of the NFV object in the running state (that is, the image information after the instantiation of the NFV object) as the basic data Analyze the input data of model training, so as to train a basic data analysis model irrelevant to the analysis topic, so as to enhance the ability of the MDA entity to dynamically obtain the association relationship between NFV objects in the NFV management domain, and improve the subsequent analysis model based on the basic data. Efficiency of training the target data analysis model.
结合第一方面的第二种可能的实现方式,在第一方面的第三种可能的实现方式中,描述符模板信息包括网络服务描述符(Network Service Descriptor,NSD)模板信息和/或虚拟化网络功能描述符(Virtualized Network Function Descriptor,VNFD)模板信息;和/或,镜像信息包括NS实例镜像信息和/或虚拟化网络功能(Virtualized Network Function,VNF)实例镜像信息。With reference to the second possible implementation manner of the first aspect, in the third possible implementation manner of the first aspect, the descriptor template information includes network service descriptor (Network Service Descriptor, NSD) template information and/or virtualization Network function descriptor (Virtualized Network Function Descriptor, VNFD) template information; and/or, the image information includes NS instance image information and/or Virtualized Network Function (Virtualized Network Function, VNF) instance image information.
在该实现方式中,基础数据分析模型训练的输入数据还可以包括NSD模板信息、VNFD模板信息、NS实例镜像信息和VNF实例镜像信息中的至少一个,进一步保证了基本数据分析模型的训练效果。In this implementation, the input data for training the basic data analysis model may further include at least one of NSD template information, VNFD template information, NS instance mirroring information, and VNF instance mirroring information, which further ensures the training effect of the basic data analysis model.
结合第一方面的第三种可能的实现方式,在第一方面的第四种可能的实现方式中,该方法还包括:在基本数据分析模型的训练过程中,建立NSD模板信息和NS的成员对象的描述符模板信息之间的关联关系。In combination with the third possible implementation manner of the first aspect, in the fourth possible implementation manner of the first aspect, the method further includes: during the training process of the basic data analysis model, establishing NSD template information and members of the NS The relationship between the object's descriptor template information.
在该实现方式中,在NSD和/或VNF数据包的上架阶段,MDA实体进行基本数据分析模型的训练,建立NSD模板信息和NS的成员对象的描述符模板信 息之间的关联关系,使得预先训练完成的基本数据分析模型可以指示相对静态的对象类之间的关联关系,进一步提高了后续基于该基本数据分析模型训练目标数据分析模型的效率。In this implementation, in the stage of putting NSD and/or VNF data packets on the shelf, the MDA entity trains the basic data analysis model, and establishes an association relationship between the NSD template information and the descriptor template information of the member objects of the NS, so that the The trained basic data analysis model can indicate relatively static associations between object classes, which further improves the efficiency of subsequent training of the target data analysis model based on the basic data analysis model.
结合第一方面的第三种可能的实现方式,在第一方面的第五种可能的实现方式中,该方法还包括:在基本数据分析模型的训练过程中,建立NS实例镜像信息和NS实例的成员对象实例的镜像信息之间的关联关系。With reference to the third possible implementation manner of the first aspect, in the fifth possible implementation manner of the first aspect, the method further includes: in the training process of the basic data analysis model, establishing NS instance mirror information and NS instance image information The association relationship between the mirror information of the member object instance.
在该实现方式中,在NS和/或VNF实例化阶段,MDA实体进行基本数据分析模型的训练,建立NS实例镜像信息和NS实例的成员对象实例的镜像信息之间的关联关系,使得预先训练完成的基本数据分析模型可以指示相对动态的对象实例之间的关联关系,进一步提高了后续基于该基本数据分析模型训练目标数据分析模型的效率。In this implementation, in the NS and/or VNF instantiation stage, the MDA entity performs basic data analysis model training, and establishes an association relationship between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance, so that pre-training The completed basic data analysis model can indicate relatively dynamic associations between object instances, which further improves the efficiency of subsequent training of the target data analysis model based on the basic data analysis model.
结合第一方面的第三种可能的实现方式,在第一方面的第六种可能的实现方式中,该方法还包括:With reference to the third possible implementation manner of the first aspect, in the sixth possible implementation manner of the first aspect, the method further includes:
根据修改后的NS实例镜像信息和/或修改后的VNF实例镜像信息,对基本数据分析模型进行更新。The basic data analysis model is updated according to the modified NS instance image information and/or the modified VNF instance image information.
在该实现方式中,在NS和/或VNF实例化后的运行态阶段,MDA实体根据修改后的NS实例镜像信息和/或修改后的VNF实例镜像信息对基本数据分析模型进行更新,以便动态调整基本数据分析模型。In this implementation, in the running state after the NS and/or VNF are instantiated, the MDA entity updates the basic data analysis model according to the modified NS instance image information and/or the modified VNF instance image information, so as to dynamically Adjust the basic data analysis model.
结合第一方面及第一方面的任意一种可能的实现方式,在第一方面的第七种可能的实现方式中,该方法还包括:In combination with the first aspect and any possible implementation manner of the first aspect, in a seventh possible implementation manner of the first aspect, the method further includes:
将NS相关的性能数据和/或告警数据输入至与NS告警事件分析主题对应的目标数据分析模型中,输出得到第一分析结果,第一分析结果包括NS故障的根本告警和/或根本原因;或者,Input the NS-related performance data and/or alarm data into the target data analysis model corresponding to the NS alarm event analysis theme, and output to obtain a first analysis result, where the first analysis result includes the fundamental alarm and/or the root cause of the NS failure; or,
将NS健康度分析所需的信息输入至与NS健康度分析主题对应的目标数据分析模型中,输出得到第二分析结果,第二分析结果包括NS的健康状态和健康状态对应的说明信息;或者,Input the information required for the NS health degree analysis into the target data analysis model corresponding to the NS health degree analysis subject, and output the second analysis result, where the second analysis result includes the health state of the NS and the description information corresponding to the health state; or ,
将NS资源利用率分析所需的信息输入至与NS资源利用率分析主题对应的目标数据分析模型中,输出得到第三分析结果,第三分析结果包括对NS的资源利用情况的指示。The information required for the NS resource utilization analysis is input into the target data analysis model corresponding to the NS resource utilization analysis theme, and a third analysis result is output, and the third analysis result includes an indication of the resource utilization of the NS.
在该实现方式中,关于MDA实体调用指定分析主题对应的目标数据分析模型进行数据分析的过程提供了三种可能的实现方式,指定分析主题包括但不限于NS告警事件分析主题、NS健康度分析主题和NS资源利用率分析主题中的任意一种,实现了在指定分析主题下对数据的有效分析,保证了数据分析的准确度。In this implementation, three possible implementations are provided for the process of MDA entity invoking the target data analysis model corresponding to the specified analysis topic for data analysis. The specified analysis topic includes but is not limited to NS alarm event analysis topic, NS health degree analysis Either the topic or the NS resource utilization analysis topic, realizes the effective analysis of the data under the specified analysis topic, and ensures the accuracy of the data analysis.
第二方面,本申请的实施例提供了一种数据分析模型的训练装置,用于MDA实体中,所述装置包括:In a second aspect, an embodiment of the present application provides a training device for a data analysis model, which is used in an MDA entity, and the device includes:
接收单元,用于接收通知消息,通知消息携带有与NS相关的指定分析主题所需的信息;a receiving unit, configured to receive a notification message, where the notification message carries the information required by the specified analysis topic related to the NS;
处理单元,用于根据通知信息,对预先训练完成的基本数据分析模型进 行训练得到指定分析主题对应的目标数据分析模型,基本数据分析模型是根据NFV对象的配置数据对原始模型进行训练得到的,NFV对象为NFV管理域内的被管理对象。The processing unit is used to train the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic. The basic data analysis model is obtained by training the original model according to the configuration data of the NFV object, NFV objects are managed objects in the NFV management domain.
结合第二方面,在第二方面的第一种可能的实现方式中,基本数据分析模型用于指示NFV对象的属性和NFV对象之间的关联关系。With reference to the second aspect, in a first possible implementation manner of the second aspect, the basic data analysis model is used to indicate the attributes of the NFV object and the association relationship between the NFV objects.
结合第二方面,在第二方面的第二种可能的实现方式中,该处理单元还用于:With reference to the second aspect, in a second possible implementation manner of the second aspect, the processing unit is further configured to:
根据导入的NFV对象的描述符模板信息和/或NFV对象实例化后的镜像信息,对原始模型进行训练得到基本数据分析模型。According to the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object, the original model is trained to obtain a basic data analysis model.
结合第二方面的第二种可能的实现方式,在第二方面的第三种可能的实现方式中,描述符模板信息包括NSD模板信息和/或VNFD模板信息;和/或,镜像信息包括NS实例镜像信息和/或VNF实例镜像信息。With reference to the second possible implementation manner of the second aspect, in a third possible implementation manner of the second aspect, the descriptor template information includes NSD template information and/or VNFD template information; and/or, the mirroring information includes NS Instance image information and/or VNF instance image information.
结合第二方面的第三种可能的实现方式,在第二方面的第四种可能的实现方式中,该处理单元还用于:With reference to the third possible implementation manner of the second aspect, in the fourth possible implementation manner of the second aspect, the processing unit is further configured to:
在基本数据分析模型的训练过程中,建立NSD模板信息和NS的成员对象的描述符模板信息之间的关联关系。During the training process of the basic data analysis model, the association relationship between the NSD template information and the descriptor template information of the member objects of the NS is established.
结合第二方面的第三种可能的实现方式,在第二方面的第五种可能的实现方式中,该处理单元还用于:With reference to the third possible implementation manner of the second aspect, in a fifth possible implementation manner of the second aspect, the processing unit is further configured to:
在基本数据分析模型的训练过程中,建立NS实例镜像信息和NS实例的成员对象实例的镜像信息之间的关联关系。In the training process of the basic data analysis model, an association relationship between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance is established.
结合第二方面的第三种可能的实现方式,在第二方面的第六种可能的实现方式中,该处理单元还用于:With reference to the third possible implementation manner of the second aspect, in the sixth possible implementation manner of the second aspect, the processing unit is further configured to:
根据修改后的NS实例镜像信息和/或修改后的VNF实例镜像信息,对基本数据分析模型进行更新。The basic data analysis model is updated according to the modified NS instance image information and/or the modified VNF instance image information.
结合第二方面及第二方面的任意一种可能的实现方式,在第二方面的第七种可能的实现方式中,该处理单元还用于:In combination with the second aspect and any possible implementation manner of the second aspect, in a seventh possible implementation manner of the second aspect, the processing unit is further configured to:
将NS相关的性能数据和/或告警数据输入至与NS告警事件分析主题对应的目标数据分析模型中,输出得到第一分析结果,第一分析结果包括NS故障的根本告警和/或根本原因;或者,Input the NS-related performance data and/or alarm data into the target data analysis model corresponding to the NS alarm event analysis theme, and output to obtain a first analysis result, where the first analysis result includes the fundamental alarm and/or the root cause of the NS failure; or,
将NS健康度分析所需的信息输入至与NS健康度分析主题对应的目标数据分析模型中,输出得到第二分析结果,第二分析结果包括NS的健康状态和健康状态对应的说明信息;或者,Input the information required for the NS health degree analysis into the target data analysis model corresponding to the NS health degree analysis subject, and output the second analysis result, where the second analysis result includes the health state of the NS and the description information corresponding to the health state; or ,
将NS资源利用率分析所需的信息输入至与NS资源利用率分析主题对应的目标数据分析模型中,输出得到第三分析结果,第三分析结果包括对NS的资源利用情况的指示。The information required for the NS resource utilization analysis is input into the target data analysis model corresponding to the NS resource utilization analysis theme, and a third analysis result is output, and the third analysis result includes an indication of the resource utilization of the NS.
第三方面,本申请的实施例提供了一种数据分析模型的训练装置,用于MDA实体中,该装置包括:处理器;用于存储处理器可执行指令的存储器;其中,处理器被配置为执行指令时实现上述第一方面或第一方面中的任意一种可能的实现方式所提供的数据分析模型的训练方法。In a third aspect, embodiments of the present application provide a data analysis model training apparatus for use in an MDA entity, the apparatus comprising: a processor; a memory for storing executable instructions of the processor; wherein the processor is configured A training method for a data analysis model provided for implementing the first aspect or any one of the possible implementation manners of the first aspect when executing an instruction.
第四方面,本申请的实施例提供了一种计算机程序产品,包括计算机可读代码,或者承载有计算机可读代码的非易失性计算机可读存储介质,当所述计算机可读代码在电子设备中运行时,所述电子设备中的处理器执行上述第一方面或第一方面中的任意一种可能的实现方式所提供的数据分析模型的训练方法。In a fourth aspect, embodiments of the present application provide a computer program product, comprising computer-readable codes, or a non-volatile computer-readable storage medium carrying computer-readable codes, when the computer-readable codes are stored in an electronic When running in the device, the processor in the electronic device executes the data analysis model training method provided by the first aspect or any one of the possible implementations of the first aspect.
第五方面,本申请的实施例提供了一种非易失性计算机可读存储介质,其上存储有计算机程序指令,计算机程序指令被处理器执行时实现上述第一方面或第一方面中的任意一种可能的实现方式所提供的数据分析模型的训练方法。In a fifth aspect, embodiments of the present application provide a non-volatile computer-readable storage medium on which computer program instructions are stored, and when the computer program instructions are executed by a processor, the first aspect or the first aspect is implemented. The training method of the data analysis model provided by any possible implementation.
附图说明Description of drawings
图1示出了相关技术中5G网络自动化基本框架的示意图。FIG. 1 shows a schematic diagram of the basic framework of 5G network automation in the related art.
图2示出了本申请一个示例性实施例提供的MDA实体的结构示意图。FIG. 2 shows a schematic structural diagram of an MDA entity provided by an exemplary embodiment of the present application.
图3示出了本申请一个示例性实施例提供的数据分析模型的训练方法的流程图。FIG. 3 shows a flowchart of a training method for a data analysis model provided by an exemplary embodiment of the present application.
图4示出了本申请一个示例性实施例提供的数据分析模型的训练和使用过程的流程图。FIG. 4 shows a flowchart of the training and use process of the data analysis model provided by an exemplary embodiment of the present application.
图5示出了本申请另一个示例性实施例提供的数据分析模型的训练方法的流程图。FIG. 5 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
图6示出了本申请另一个示例性实施例提供的数据分析模型的训练方法的流程图。FIG. 6 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
图7示出了本申请另一个示例性实施例提供的数据分析模型的训练方法的流程图。FIG. 7 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
图8示出了本申请另一个示例性实施例提供的数据分析模型的训练方法的流程图。FIG. 8 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
图9示出了本申请另一个示例性实施例提供的数据分析模型的训练方法的流程图。FIG. 9 shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application.
图10示出了本申请另一个示例性实施例提供的数据分析模型的训练和使用过程的流程图。FIG. 10 shows a flowchart of the training and use process of the data analysis model provided by another exemplary embodiment of the present application.
图11示出了本申请一个示例性实施例提供的数据分析模型的训练装置的框图。FIG. 11 shows a block diagram of an apparatus for training a data analysis model provided by an exemplary embodiment of the present application.
具体实施方式Detailed ways
以下将参考附图详细说明本申请的各种示例性实施例、特征和方面。附图中相同的附图标记表示功能相同或相似的元件。尽管在附图中示出了实施例的各种方面,但是除非特别指出,不必按比例绘制附图。Various exemplary embodiments, features and aspects of the present application will be described in detail below with reference to the accompanying drawings. The same reference numbers in the figures denote elements that have the same or similar functions. While various aspects of the embodiments are shown in the drawings, the drawings are not necessarily drawn to scale unless otherwise indicated.
在这里专用的词“示例性”意为“用作例子、实施例或说明性”。这里作为“示例性”所说明的任何实施例不必解释为优于或好于其它实施例。The word "exemplary" is used exclusively herein to mean "serving as an example, embodiment, or illustration." Any embodiment described herein as "exemplary" is not necessarily to be construed as preferred or advantageous over other embodiments.
另外,为了更好的说明本申请,在下文的具体实施方式中给出了众多的 具体细节。本领域技术人员应当理解,没有某些具体细节,本申请同样可以实施。在一些实例中,对于本领域技术人员熟知的方法、手段、元件和电路未作详细描述,以便于凸显本申请的主旨。In addition, in order to better illustrate the present application, numerous specific details are given in the following detailed description. It should be understood by those skilled in the art that the present application may be practiced without certain specific details. In some instances, methods, means, components and circuits well known to those skilled in the art have not been described in detail so as not to obscure the subject matter of the present application.
面向第五代移动通信技术(5th generation mobile networks,5G)的网络功能自动化的研究中,在5G核心网服务化架构(Service Based Architecture,SBA)中引入了网络数据分析功能(Network Data Analytics Function,NWDAF),如图1所示。网络功能自动化的基本原理包括:NWDAF实体10向周边控制面的网络功能(或服务)实体订阅网络数据分析所需的输入数据,经过NWDAF实体10本身的分析算法的执行(通常认为该分析算法为人工智能算法),将分析得到的结果分发给其他的网络功能(或服务)实体,比如操作维护管理(Operation Administration and Maintenance,OAM)实体11、应用功能(Application Function,AF)实体12、网络功能(Network Function,NF)实体13。又比如,策略控制功能(Policy Control Function,PCF)实体,以帮助其实现更高阶的策略下发与执行。相关技术中的用例描述和分析侧重于NWDAF实体的输入数据和输出数据,NWDAF实体内的分析算法不在标准化的范围内。In the research of network function automation for 5th generation mobile networks (5G), the network data analysis function (Network Data Analytics Function, SBA) is introduced into the 5G core network service-based architecture (SBA). NWDAF), as shown in Figure 1. The basic principle of network function automation includes: the NWDAF entity 10 subscribes the input data required for network data analysis to the network function (or service) entity of the surrounding control plane, and the analysis algorithm is executed by the NWDAF entity 10 itself (usually, the analysis algorithm is considered as artificial intelligence algorithm), distribute the analysis results to other network function (or service) entities, such as Operation Administration and Maintenance (OAM) entity 11, Application Function (AF) entity 12, network function (Network Function, NF) entity 13. Another example is the Policy Control Function (PCF) entity to help it achieve higher-order policy issuance and execution. The use case description and analysis in the related art focus on the input data and output data of the NWDAF entity, and the analysis algorithms within the NWDAF entity are not within the scope of standardization.
目前在5G管理面引入了管理数据分析服务(Management Data Analytics Service,MDAS),其功能与NWDAF相似,MDAS的核心功能是管理数据分析,根据该功能内置的人工智能和/或机器学习的数据分析模型,对采集到的特定分析主题相关的网络信息进行分析,将分析结果返回至发起该特定主题分析的服务消费者,协助其进行管理面的闭环决策。Currently, the Management Data Analytics Service (MDAS) has been introduced in the 5G management plane. Its function is similar to that of NWDAF. The core function of MDAS is to manage data analysis. According to the built-in artificial intelligence and/or machine learning data analysis of this function The model analyzes the collected network information related to a specific analysis topic, returns the analysis result to the service consumer who initiated the analysis of the specific topic, and assists it in closed-loop decision-making on the management level.
在调用数据分析模型之前,还需要对数据分析模型进行训练。数据分析模型的训练过程的目标不是为当下待分析的主题提供分析结果,而是为了使数据分析模型在后续使用时更准确、更符合服务消费者预期地提供分析结果,通过训练输入数据增强数据分析模型的分析准确度。相关技术中对管理数据分析的输入/输出信息研究较多,而对数据分析模型训练过程中的输入/输出信息流研究很少。Before calling the data analysis model, the data analysis model also needs to be trained. The goal of the training process of the data analysis model is not to provide analysis results for the topic to be analyzed at the moment, but to make the data analysis model provide analysis results that are more accurate and more in line with the expectations of service consumers in subsequent use, and enhance the data through training input data. Analytical accuracy of the analytical model. In the related art, there are many studies on the input/output information of management data analysis, but there are few studies on the input/output information flow in the training process of the data analysis model.
目前在NFV管理域中引入了管理数据分析(Management Data Analytics,MDA)的功能,其功能与MDAS相似,通过NFVO实体(即MDA功能的消费者)和MDA实体的数据分析过程的交互来增强NFVO在NFV管理域内做闭环决策的能力。At present, the function of Management Data Analytics (MDA) has been introduced into the NFV management domain, and its function is similar to that of MDAS. NFVO is enhanced by the interaction of the NFVO entity (that is, the consumer of the MDA function) and the data analysis process of the MDA entity. The ability to make closed-loop decisions within the NFV management domain.
相关技术中,对数据分析模型训练过程中采用的输入数据集通常包括由网络产生的历史的性能数据、告警数据和配置数据。而不论是历史产生的还是实时采集的性能数据或告警数据,这些数据在数据分析模型训练中都是作为一种增量的输入信息对原始模型进行加固,即对这些数据进行基于概率统计或知识模型的训练分析,在原始模型基础上增加新的被管理对象的关联关系或管理事件的关联关系。而对于不同的分析主题的模型训练,MDA实体从NFV管理域中订阅的性能或告警事件的集合也各不相同。In the related art, the input data set used in the training process of the data analysis model usually includes historical performance data, alarm data and configuration data generated by the network. Regardless of whether it is historically generated or real-time collected performance data or alarm data, these data are used as incremental input information to reinforce the original model in the training of the data analysis model, that is, the data are processed based on probability statistics or knowledge. The training and analysis of the model is based on the original model to add new relationships of managed objects or relationships of management events. For the model training of different analysis topics, the set of performance or alarm events subscribed by MDA entities from the NFV management domain is also different.
原始模型的建立主要依赖于被管理对象的配置数据,而性能数据或告警 数据通常也附着在这些被管理对象上。比如,告警数据“虚拟机A的IP地址不可达”附着在被管理对象虚拟机A上。The establishment of the original model mainly depends on the configuration data of managed objects, and performance data or alarm data are usually attached to these managed objects. For example, the alarm data "The IP address of the virtual machine A is unreachable" is attached to the managed object virtual machine A.
为了提高数据分析模型的训练效率,缩短模型训练时长,避免不同分析主题的数据分析模型训练从零开始衍生数据分析所需的各种关联关系,本申请实施例提供了一种数据分析模型的训练方法、装置及存储介质,MDA实体预先训练完成一个基本数据分析模型,在该基本数据分析模型的基础上,MDA实体通过接收到的携带有与NS相关的指定分析主题所需的信息的通知信息,进一步训练完成指定分析主题对应的目标数据分析模型,即基本数据分析模型被主题特定的目标数据分析模型在模型训练时进行复用,避免了相关技术中不同分析主题各自对应的数据分析模型训练均需从零开始衍生数据分析所需的各种关联关系的情况,缩短了数据分析模型训练的时长,提高了模型训练效率。In order to improve the training efficiency of the data analysis model, shorten the model training time, and avoid the data analysis model training of different analysis topics to derive various associations required for data analysis from scratch, the embodiment of the present application provides a training method for the data analysis model In the method, device and storage medium, the MDA entity pre-trains a basic data analysis model, and on the basis of the basic data analysis model, the MDA entity receives the notification information that carries the information required by the designated analysis topic related to the NS , and further train to complete the target data analysis model corresponding to the specified analysis topic, that is, the basic data analysis model is reused by the topic-specific target data analysis model during model training, avoiding the training of data analysis models corresponding to different analysis topics in related technologies. It is necessary to derive various associations required for data analysis from scratch, which shortens the training time of the data analysis model and improves the model training efficiency.
为了方便理解,下面对本申请实施例中涉及的名词进行解释。For the convenience of understanding, the terms involved in the embodiments of the present application are explained below.
NFV对象在设计态的信息模型:包括NFV对象的描述符模板信息。可选地,在NFV管理域中NFV对象的描述符模板信息包括但不限于:NSD模板信息、VNFD模板信息、虚拟化资源描述符(VR Descriptor)模板信息中的至少一种。The information model of the NFV object in the design state: including the descriptor template information of the NFV object. Optionally, the descriptor template information of the NFV object in the NFV management domain includes, but is not limited to: at least one of NSD template information, VNFD template information, and Virtualization Resource Descriptor (VR Descriptor) template information.
NSD模板信息:用于对NS使用的虚拟化资源进行描述,以及NS在部署和运行阶段的行为需求进行定义。通常建立在NS的组成成员(例如,VNF)的描述符定义的基础上。NSD template information: used to describe the virtualized resources used by the NS and define the behavior requirements of the NS during the deployment and operation phases. Usually based on the descriptor definitions of the constituent members of the NS (eg, VNFs).
VNFD模板信息:用于对VNF使用的虚拟化资源进行描述,以及VNF在部署和运行阶段的行为需求进行定义。VNF对虚拟化资源的需求描述可以映射至虚拟化资源的描述符定义,比如,VNFD模板信息包括虚拟计算资源、虚拟存储资源、虚拟链路、连接点或者其他虚拟网络资源的描述符模板信息。本申请实施例对此不加以限定。VNFD template information: It is used to describe the virtualized resources used by the VNF and define the behavior requirements of the VNF during the deployment and operation phases. The description of the requirements of the VNF for virtualized resources can be mapped to the descriptor definitions of the virtualized resources. For example, the VNFD template information includes descriptor template information of virtual computing resources, virtual storage resources, virtual links, connection points or other virtual network resources. This embodiment of the present application does not limit this.
虚拟化资源描述符模板信息:用于对单个虚拟化资源的特征进行描述,比如,虚拟化资源描述符模板信息包括对虚拟计算资源、虚拟存储资源、虚拟网络资源的描述信息和/或该虚拟化资源对底层物理资源的需求描述信息。Virtualization resource descriptor template information: used to describe the characteristics of a single virtualized resource. For example, the virtualized resource descriptor template information includes description information of virtual computing resources, virtual storage resources, virtual network resources and/or the virtualized resource descriptor. Description information of the demand of the physical resources on the underlying physical resources.
NFV对象在运行态的信息模型:包括NFV对象实例化后的镜像信息,镜像信息包括但不限于:VNF实例镜像信息(VNFInfo)和/或NS实例镜像信息(NSInfo)。The information model of the NFV object in the running state: including the image information after the instantiation of the NFV object, and the image information includes but is not limited to: VNF instance image information (VNFInfo) and/or NS instance image information (NSInfo).
VNF实例镜像信息:为VNF实例化后的VNF实例镜像信息。可选地,VNF实例镜像信息包括VNF实例在运行态进行生命周期管理时的基本信息。VNF instance image information: The image information of the VNF instance after the VNF is instantiated. Optionally, the VNF instance image information includes basic information of the VNF instance in the running state for lifecycle management.
NS实例镜像信息:为NS实例化后的NS实例镜像信息。可选地,NS实例镜像信息包括NS实例在运行态进行生命周期管理时的基本信息。NS instance image information: The image information of the NS instance after NS is instantiated. Optionally, the NS instance image information includes basic information when the NS instance performs life cycle management in the running state.
需要说明的是,本申请实施例所涉及的一部分相关名词可参考3GPP协议或ETSI NFV协议中对应的相关描述,本文对此不再赘述。It should be noted that, for some related terms involved in the embodiments of the present application, reference may be made to the corresponding related descriptions in the 3GPP protocol or the ETSI NFV protocol, which will not be repeated herein.
请参考图2,其示出了本申请一个示例性实施例提供的MDA实体的结构示 意图,该MDA实体包括:处理器21、接收器22、发射器23、存储器24和总线25。Please refer to FIG. 2 , which shows a schematic structural diagram of an MDA entity provided by an exemplary embodiment of the present application. The MDA entity includes: a processor 21, a receiver 22, a transmitter 23, a memory 24, and a bus 25.
处理器21包括一个或者一个以上处理核心,处理器21通过运行软件程序以及模块,从而执行各种功能应用以及信息处理。The processor 21 includes one or more processing cores, and the processor 21 executes various functional applications and information processing by running software programs and modules.
接收器22和发射器23可以实现为一个通信组件,该通信组件可以是一块通信芯片,通信芯片中可以包括接收模块、发射模块和调制解调模块等,用于对信息进行调制解调,并通过无线信号接收或发送该信息。The receiver 22 and the transmitter 23 can be implemented as a communication component, which can be a communication chip, and the communication chip can include a receiving module, a transmitting module, a modulation and demodulation module, etc., for modulating and demodulating the information, and This information is received or transmitted via wireless signals.
存储器24通过总线25与处理器21相连。存储器54存储有终端必要的程序指令和数据。The memory 24 is connected to the processor 21 through a bus 25 . The memory 54 stores program instructions and data necessary for the terminal.
处理器51用于执行存储器54中的程序指令和数据以实现本申请各个方法实施例中各个步骤的功能。The processor 51 is configured to execute the program instructions and data in the memory 54 to implement the functions of each step in each method embodiment of the present application.
处理器21通过运行存储器24中的至少一个程序指令,控制接收器22实现下述步骤401以及各个步骤中隐含的MDA实体侧的接收功能;处理器21通过运行存储器24中的至少一个程序指令,控制发射器23来实现本申请实施例各个步骤中隐含的MDA实体侧的发送功能。The processor 21 controls the receiver 22 to implement the following step 401 and the implicit receiving function of the MDA entity side in each step by running at least one program instruction in the memory 24; the processor 21 runs at least one program instruction in the memory 24. , the transmitter 23 is controlled to implement the sending function on the MDA entity side implicit in each step of the embodiment of the present application.
此外,存储器24可以由任何类型的易失性或非易失性存储设备或者它们的组合实现,如静态随时存取存储器(SRAM),电可擦除可编程只读存储器(EEPROM),可擦除可编程只读存储器(EPROM),可编程只读存储器(PROM),只读存储器(ROM),磁存储器,快闪存储器,磁盘或光盘。Additionally, memory 24 may be implemented by any type of volatile or non-volatile storage device or combination thereof, such as static anytime access memory (SRAM), electrically erasable programmable read only memory (EEPROM), erasable Except programmable read only memory (EPROM), programmable read only memory (PROM), read only memory (ROM), magnetic memory, flash memory, magnetic disk or optical disk.
可以理解的是,图2仅仅示出了MDA实体的简化设计。在其他的实施例中,MDA实体可以包含任意数量的发射器,接收器,处理器,控制器,存储器,通信单元等,而所有可以实现本申请的MDA实体都在本申请的保护范围之内。It will be appreciated that Figure 2 only shows a simplified design of the MDA entity. In other embodiments, the MDA entity may include any number of transmitters, receivers, processors, controllers, memories, communication units, etc., and all MDA entities that can implement the present application are within the protection scope of the present application .
请参考图3,其示出了本申请一个示例性实施例提供的数据分析模型的训练方法的流程图,该方法用于图2所示的MDA实体中。该方法包括以下几个步骤。Please refer to FIG. 3 , which shows a flowchart of a training method for a data analysis model provided by an exemplary embodiment of the present application, and the method is used in the MDA entity shown in FIG. 2 . The method includes the following steps.
步骤301,接收通知消息,通知消息携带有与NS相关的指定分析主题所需的信息。Step 301: Receive a notification message, where the notification message carries information required for a specified analysis topic related to the NS.
MDA实体接收通知消息,通知消息携带有与NS相关的指定分析主题所需的信息。The MDA entity receives notification messages that carry the information required for the specified analysis topic related to the NS.
可选地,面向指定分析主题,MDA实体向目标实体订阅与NS相关的指定分析主题所需的信息;目标实体向MDA实体发送携带有与NS相关的指定分析主题所需的信息的通知消息。对应的,MDA实体接收该通知消息。Optionally, for the specified analysis topic, the MDA entity subscribes the target entity to the information required by the specified analysis topic related to the NS; the target entity sends a notification message carrying the information required by the specified analysis topic related to the NS to the MDA entity. Correspondingly, the MDA entity receives the notification message.
可选地,目标实体包括NFVO、虚拟网络功能管理器(Virtualised Network Function Manager,VNFM)、虚拟化基础设施管理器(Virtualised Infrastructure Manager,VIM)、容器基础设施服务管理功能(Container Infrastructure Service Management,CISM)实体中的任意一种。Optionally, the target entity includes NFVO, Virtualised Network Function Manager (Virtualised Network Function Manager, VNFM), Virtualised Infrastructure Manager (Virtualised Infrastructure Manager, VIM), Container Infrastructure Service Management (Container Infrastructure Service Management, CISM) ) any of the entities.
可选地,指定分析主题包括NS告警事件分析主题、NS健康度分析主题和NS资源利用率分析主题中的任意一种。Optionally, the specified analysis topic includes any one of an NS alarm event analysis topic, an NS health degree analysis topic, and an NS resource utilization analysis topic.
其中,指定分析主题所需的信息为待训练的输入数据,即为该指定分析主题对应的目标数据分析模型训练时所需的输入数据。比如,指定分析主题为NS告警事件分析主题,该指定分析主题所需的信息包括NS相关的性能数据和/或告警数据。The information required for the specified analysis topic is the input data to be trained, that is, the input data required for training the target data analysis model corresponding to the specified analysis topic. For example, the specified analysis topic is an NS alarm event analysis topic, and the information required by the specified analysis topic includes NS-related performance data and/or alarm data.
需要说明的是,本申请实施例对指定分析主题的类型和指定分析主题所需的信息内容不加以限定。It should be noted that the embodiments of the present application do not limit the type of the specified analysis topic and the information content required for the specified analysis topic.
步骤302,根据通知信息,对预先训练完成的基本数据分析模型进行训练得到指定分析主题对应的目标数据分析模型,基本数据分析模型是根据NFV对象的配置数据对原始模型进行训练得到的,NFV对象为NFV管理域内的被管理对象。Step 302: According to the notification information, the pre-trained basic data analysis model is trained to obtain the target data analysis model corresponding to the specified analysis topic. The basic data analysis model is obtained by training the original model according to the configuration data of the NFV object. It is the managed object in the NFV management domain.
MDA实体获取通知信息中携带的与NS相关的指定分析主题所需的信息,根据NS相关的指定分析主题所需的信息对预先训练完成的基本数据分析模型进行再训练,得到指定分析主题对应的目标数据分析模型。The MDA entity obtains the information required by the NS-related designated analysis topic carried in the notification information, and retrains the pre-trained basic data analysis model according to the information required by the NS-related designated analysis topic, and obtains the corresponding data of the designated analysis topic. Target data analysis model.
其中,MDA实体在对基本数据分析模型进行训练得到目标数据分析模型之前,预先对基本数据分析模型进行训练,即MDA实体根据NFV对象的配置数据对原始模型进行训练得到的基本数据分析模型,其中NFV对象为NFV管理域内的被管理对象。Among them, the MDA entity pre-trains the basic data analysis model before training the basic data analysis model to obtain the target data analysis model, that is, the MDA entity trains the original model according to the configuration data of the NFV object. NFV objects are managed objects in the NFV management domain.
其中,NFV对象的配置数据用于指示该NFV对象的配置情况。原始模型为初始化的模型。The configuration data of the NFV object is used to indicate the configuration of the NFV object. The original model is the initialized model.
基本数据分析模型为基于NFV对象的配置数据对原始模型进行预训练得到的通用模型。该基本数据分析模型与分析主题无关。The basic data analysis model is a general model obtained by pre-training the original model based on the configuration data of the NFV object. This basic data analysis model is independent of the subject of analysis.
可选地,基本数据分析模型为AI模型或者ML模型。本申请实施例对此不加以限定。Optionally, the basic data analysis model is an AI model or an ML model. This embodiment of the present application does not limit this.
其中,目标数据分析模型为基于与NS相关的指定分析主题所需的信息对基本数据分析模型进行再训练得到的数据分析模型。该目标数据分析模型与分析主题相关。The target data analysis model is a data analysis model obtained by retraining the basic data analysis model based on the information required by the designated analysis topic related to the NS. The target data analysis model is related to the analysis topic.
目标数据分析模型是具有对分析主题所需的信息进行数据分析能力的模型。目标数据分析模型用于将输入的分析主题所需的信息转化为数据分析结果。目标数据分析模型用于表示分析主题所需的信息与数据分析结果之间的相关关系。A target data analysis model is a model that has the ability to perform data analysis on the information needed to analyze the subject. The target data analysis model is used to convert the information required by the input analysis subject into data analysis results. The target data analysis model is used to represent the correlation between the information needed to analyze the subject and the results of the data analysis.
目标数据分析模型为预设的数学模型,该目标数据分析模型包括分析主题所需的信息与数据分析结果之间的模型系数。The target data analysis model is a preset mathematical model, and the target data analysis model includes model coefficients between the information required for analyzing the subject and the data analysis result.
可选地,MDA实体在训练完成指定分析主题对应的目标数据分析模型之后,在获取到待分析的指定分析主题所需的信息后,将该指定分析主题所需的信息输入至该目标数据分析模型,输出得到数据分析结果。Optionally, after the MDA entity has trained and completed the target data analysis model corresponding to the specified analysis topic, after acquiring the information required by the specified analysis topic to be analyzed, the information required by the specified analysis topic is input into the target data analysis. model, and output the data analysis results.
在一个示意性的例子中,如图4所示,数据分析模型的训练和使用过程包括但不限于以下几个步骤:1、MDA实体获取待训练的NFV对象的配置数据,将NFV对象的配置数据输入至原始模型中;2、对原始模型进行预训练得到基本数据分析模型;3、获取训练样本集,该训练样本集包括MDA实体接收到的 通知消息中所携带的待训练的指定分析主题所需的信息,将训练样本集输入至基本数据分析模型中;4、对基本数据分析模型进行再训练得到目标数据分析模型。在训练完成目标数据分析模型后,5、当MDA实体接收到待分析的指定分析主题所需的信息,将该指定分析主题所需的信息输入至训练完成的目标数据分析模型中;6、输出得到数据分析结果。In a schematic example, as shown in Figure 4, the training and use process of the data analysis model includes but is not limited to the following steps: 1. The MDA entity obtains the configuration data of the NFV object to be trained, and configures the NFV object The data is input into the original model; 2. The basic data analysis model is obtained by pre-training the original model; 3. The training sample set is obtained, and the training sample set includes the designated analysis topic to be trained carried in the notification message received by the MDA entity To obtain the required information, input the training sample set into the basic data analysis model; 4. Retrain the basic data analysis model to obtain the target data analysis model. After training the target data analysis model, 5. When the MDA entity receives the information required by the specified analysis topic to be analyzed, input the information required by the specified analysis topic into the trained target data analysis model; 6. Output Get data analysis results.
综上所述,本申请实施例通过MDA实体预先训练完成一个基本数据分析模型,在该基本数据分析模型的基础上,MDA实体通过接收到的携带有与NS相关的指定分析主题所需的信息的通知信息,进一步训练完成指定分析主题对应的目标数据分析模型,即基本数据分析模型被主题特定的目标数据分析模型在模型训练时进行复用,避免了相关技术中不同分析主题各自对应的数据分析模型训练均需从零开始衍生数据分析所需的各种关联关系的情况,缩短了数据分析模型训练的时长,提高了模型训练效率。To sum up, the embodiment of the present application completes a basic data analysis model by pre-training the MDA entity. On the basis of the basic data analysis model, the MDA entity carries the information required by the designated analysis topic related to the NS through the received The target data analysis model corresponding to the specified analysis topic is further trained, that is, the basic data analysis model is reused by the topic-specific target data analysis model during model training, avoiding the data corresponding to different analysis topics in related technologies. The analysis model training needs to derive various associations required for data analysis from scratch, which shortens the training time of the data analysis model and improves the model training efficiency.
需要说明的是,MDA实体根据通知信息,对预先训练完成的基本数据分析模型进行训练得到指定分析主题对应的目标数据分析模型之前,需要根据NFV对象的配置数据对原始模型进行训练得到基本数据分析模型。在一种可能的实现方式中,MDA实体根据NFV对象的配置数据对原始模型进行训练得到基本数据分析模型包括:MDA实体根据NFV对象在设计态的信息模型和在运行态的信息模型,对原始模型进行训练得到基本数据分析模型。其中,NFV对象在设计态的信息模型包括NFV对象的描述符模板信息,其中NFV对象在运行态的信息模型包括NFV对象实例化后的镜像信息。即基于上述实施例,在步骤301之前,数据分析模型的训练方法还包括如下步骤,如图5所示:It should be noted that, before the MDA entity trains the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic, it needs to train the original model according to the configuration data of the NFV object to obtain the basic data analysis. Model. In a possible implementation manner, the MDA entity trains the original model according to the configuration data of the NFV object to obtain a basic data analysis model. The model is trained to obtain a basic data analysis model. The information model of the NFV object in the design state includes descriptor template information of the NFV object, and the information model of the NFV object in the running state includes image information after the NFV object is instantiated. That is, based on the above embodiment, before step 301, the training method of the data analysis model further includes the following steps, as shown in FIG. 5:
步骤501,根据导入的NFV对象的描述符模板信息和/或NFV对象实例化后的镜像信息,对原始模型进行训练得到基本数据分析模型。Step 501: According to the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object, the original model is trained to obtain a basic data analysis model.
MDA实体接收导入的NFV对象的描述符模板信息和/或NFV对象实例化后的镜像信息,根据NFV对象的描述符模板信息和/或NFV对象实例化后的镜像信息,对原始模型进行训练得到基本数据分析模型。The MDA entity receives the descriptor template information of the imported NFV object and/or the image information after the instantiation of the NFV object, and trains the original model according to the descriptor template information of the NFV object and/or the image information after the instantiation of the NFV object. Basic data analysis model.
可选地,描述符模板信息包括NSD模板信息和/或VNFD模板信息;和/或,镜像信息包括NS实例镜像信息和/或VNF实例镜像信息。Optionally, the descriptor template information includes NSD template information and/or VNFD template information; and/or, the image information includes NS instance image information and/or VNF instance image information.
其中,基本数据分析模型用于指示NFV对象的属性和NFV对象之间的关联关系。Among them, the basic data analysis model is used to indicate the attributes of the NFV object and the association relationship between the NFV objects.
可选地,NFV对象的属性包括NSD模板信息中的属性、VNFD模板信息中的属性、NS实例镜像模板信息中的属性、VNF实例镜像信息中的属性。Optionally, the attributes of the NFV object include attributes in NSD template information, attributes in VNFD template information, attributes in NS instance image template information, and attributes in VNF instance image information.
示意性的,NSD模板信息中的属性包括NSD标识、提供商、NSD名称、NSD版本、NS使用的自动伸缩(auto-scale)规则、NS使用的部署模板(Deployment Flavor)、安全签名中的至少一种。Illustratively, the attributes in the NSD template information include NSD identifier, provider, NSD name, NSD version, auto-scale rule used by NS, Deployment Flavor used by NS, and at least one of the security signature. A sort of.
示意性的,VNFD模板信息中的属性包括VNFD标识、VNF提供商、VNF产品名称、VNF软件版本、VNFD版本、VNF使用的自动伸缩(auto-scale)规则和VNF使用的部署模板中的至少一种。Illustratively, the attributes in the VNFD template information include at least one of the VNFD identifier, the VNF provider, the VNF product name, the VNF software version, the VNFD version, the auto-scale rule used by the VNF, and the deployment template used by the VNF. kind.
示意性的,NS实例镜像模板信息中的属性包括NS实例标识、NS实例名称、NS实例状态、NS实例监控的性能指标、NS实例使用的NSD和部署模板中的至少一种。Illustratively, the attributes in the NS instance image template information include at least one of the NS instance identifier, the NS instance name, the NS instance state, the performance indicators monitored by the NS instance, the NSD used by the NS instance, and the deployment template.
示意性的,VNF实例镜像模板信息中的属性包括VNF实例标识、VNF实例名称、VNF实例状态、VNF实例监控的性能指标、VNF实例使用的VNFD和与VIM的连接信息中的至少一种。Illustratively, the attributes in the VNF instance image template information include at least one of the VNF instance identifier, the VNF instance name, the VNF instance state, the performance indicators monitored by the VNF instance, the VNFD used by the VNF instance, and the connection information with the VIM.
需要说明的是,本申请实施例对NFV对象的属性的类型不加以限定。It should be noted that the embodiments of the present application do not limit the types of attributes of the NFV object.
可选地,NFV对象之间的关联关系包括垂直方向上下层NFV对象之间的关联关系和/或水平方向同层连接的NFV对象之间的关联关系。比如,NS实例中的成员对象“VNF_1”的虚拟机端口告警和成员对象“VL_1”的不可达告警强相关,即基本数据分析模型用于指示成员对象“VNF_1”的虚拟机端口和成员对象“VL_1”之间存在关联关系。Optionally, the association relationship between the NFV objects includes the association relationship between the upper and lower layer NFV objects in the vertical direction and/or the association relationship between the NFV objects connected at the same layer in the horizontal direction. For example, the virtual machine port alarm of the member object "VNF_1" in the NS instance is strongly correlated with the unreachable alarm of the member object "VL_1", that is, the basic data analysis model is used to indicate the virtual machine port of the member object "VNF_1" and the member object" VL_1" has an association relationship.
需要说明的是,描述符模板信息、镜像信息、原始模型和基本数据分析模型的相关定义可参考上述实施例中的相关描述,在此不再赘述。It should be noted that, for relevant definitions of descriptor template information, mirror information, original model and basic data analysis model, reference may be made to the relevant descriptions in the foregoing embodiments, which will not be repeated here.
可选地,基本数据分析模型的训练过程包括但不限于如下几个阶段:Optionally, the training process of the basic data analysis model includes but is not limited to the following stages:
第一阶段:NSD和/或VNF数据包(package)的上架(onboard)阶段,MDA实体基于NSD模板信息和/或VNFD模板信息进行基本数据分析模型训练,创建基本数据分析模型训练中相对静态的对象类的关联关系。The first stage: the onboard stage of the NSD and/or VNF data package (package), the MDA entity performs basic data analysis model training based on the NSD template information and/or VNFD template information, and creates a relatively static model in the training of the basic data analysis model. Object class associations.
第二阶段:NS和/或VNF实例化阶段,MDA实体基于NS实例镜像信息和/或VNF实例镜像信息进行基本数据分析模型训练,创建基本数据分析模型训练中相对动态的对象实例的关联关系。The second stage: the NS and/or VNF instantiation stage, the MDA entity performs basic data analysis model training based on the NS instance image information and/or VNF instance image information, and creates relatively dynamic object instance associations in the basic data analysis model training.
第三阶段:在NS和/或VNF实例化后的运行态阶段,MDA实体根据在NS更新过程中修改的NS实例镜像信息和/或修改后的VNF实例镜像信息,对基本数据分析模型中的对象实例的关联关系进行更新。The third stage: In the running state after the instantiation of NS and/or VNF, the MDA entity analyzes the data in the basic data analysis model according to the NS instance image information modified during the NS update process and/or the modified VNF instance image information. The association relationship of the object instance is updated.
下面为了方便说明,通过几个示例性实施例对上述的三种阶段依次进行介绍说明。In the following, for the convenience of description, the above three stages are introduced and described in sequence through several exemplary embodiments.
第一阶段即NSD和/或VNF数据包的上架阶段,以描述符模板信息包括NSD模板信息为例,基础数据分析模型的训练过程包括但不限于如下几个步骤,如图6所示:The first stage is the stage of uploading NSD and/or VNF data packets. Taking the descriptor template information including NSD template information as an example, the training process of the basic data analysis model includes but is not limited to the following steps, as shown in Figure 6:
步骤601,运营支撑系统Operations support system,OSS)/商务支撑系统(Business support system,BSS)向NFVO发起NSD上架(onboard)过程,在NFV管理域中上架指定的NSD。In step 601, the operations support system (OSS)/business support system (BSS) initiates an NSD onboard process to the NFVO, and the specified NSD is listed in the NFV management domain.
步骤602,NFVO将上架的NSD模板信息导入MDA实体。Step 602, the NFVO imports the NSD template information on the shelves into the MDA entity.
即NFVO向MDA实体发送NSD模板信息,作为基本数据分析模型训练的输入数据。That is, NFVO sends the NSD template information to the MDA entity as the input data for training the basic data analysis model.
可选地,NFVO将上架的NSD模板信息导入MDA实体,包括但不限于以下两种可能的实现方式:Optionally, NFVO imports the listed NSD template information into the MDA entity, including but not limited to the following two possible implementations:
在一种可能的实现方式中,NSD导入过程采用随路过程,即伴随步骤601 的NSD上架过程,由OSS/BSS通过NFVO直接将NSD模板信息导入MDA实体。In a possible implementation manner, the NSD import process adopts an on-path process, that is, along with the NSD listing process in step 601, the OSS/BSS directly imports the NSD template information into the MDA entity through NFVO.
在另一种可能的实现方式中,NFVO发送模型训练输入请求至MDA实体,该模型训练输入请求中携带待导入的NSD模板信息。In another possible implementation manner, the NFVO sends a model training input request to the MDA entity, where the model training input request carries the information of the NSD template to be imported.
步骤603,MDA实体根据导入的NSD模板信息进行基本数据分析模型训练,建立NSD模板信息和NS的成员对象的描述符模板信息之间的关联关系。 Step 603, the MDA entity performs basic data analysis model training according to the imported NSD template information, and establishes an association relationship between the NSD template information and the descriptor template information of the member objects of the NS.
MDA根据导入的NSD模板信息进行基本数据分析模型训练,在基本数据分析模型的训练过程中,MDA实体建立NSD模板信息和NS的成员对象的描述符模板信息之间的关联关系。即训练完成的基本数据分析模型用于指示NSD模板信息和NS的成员对象的描述符模板信息之间的关联关系。MDA trains the basic data analysis model according to the imported NSD template information. During the training of the basic data analysis model, the MDA entity establishes the association relationship between the NSD template information and the descriptor template information of the member objects of the NS. That is, the trained basic data analysis model is used to indicate the association relationship between the NSD template information and the descriptor template information of the member objects of the NS.
可选地,MDA实体建立NSD模板信息和NS的成员对象的描述符模板信息之间的关联关系,NS的成员对象的属性与NSD模板信息的属性相对应。Optionally, the MDA entity establishes an association relationship between the NSD template information and the descriptor template information of the member object of the NS, and the attribute of the member object of the NS corresponds to the attribute of the NSD template information.
可选地,在基本数据分析模型的训练过程中,MDA实体建立NS对象类和NS的成员对象的描述符模板信息所对应的对象类之间的包含关系。即训练完成的基本数据分析模型用于指示NS对象类和NS的成员对象的描述符模板信息所对应的对象类之间的包含关系。Optionally, in the training process of the basic data analysis model, the MDA entity establishes an inclusion relationship between the NS object class and the object class corresponding to the descriptor template information of the member objects of the NS. That is, the trained basic data analysis model is used to indicate the inclusion relationship between the NS object class and the object class corresponding to the descriptor template information of the member objects of the NS.
其中,成员对象的对象类的属性与该成员对象的描述符模板信息的属性相对应。The attribute of the object class of the member object corresponds to the attribute of the descriptor template information of the member object.
示意性的,成员对象的对象类包括:组成NS的成员嵌套NS的对象类、成员VNF的对象类、成员PNF的对象类、服务接入点(Service Access Point,SAP)的对象类、NS外部的虚拟链路的对象类、使用的VNF转发图的对象类中的至少一种。本申请实施例对此不加以限定。Illustratively, the object class of the member object includes: the object class of the member nesting NS of the NS, the object class of the member VNF, the object class of the member PNF, the object class of the Service Access Point (SAP), the NS At least one of the object class of the external virtual link and the object class of the used VNF forwarding graph. This embodiment of the present application does not limit this.
在一种可能的实现方式中,描述符模板信息包括VNFD模板信息,上述步骤601至步骤603可以被替换实现成为如下步骤:OSS/BSS向NFVO发起VNF数据包上架过程,在NFV管理域中上架指定的VNF数据包。NFVO将上架的VNFD模板信息导入MDA实体。MDA实体根据导入的VNFD模板信息进行基本数据分析模型训练。In a possible implementation manner, the descriptor template information includes VNFD template information, and the above steps 601 to 603 can be replaced and implemented as the following steps: OSS/BSS initiates a VNF data package listing process to NFVO, and puts them on the shelf in the NFV management domain The specified VNF packet. NFVO imports the listed VNFD template information into the MDA entity. The MDA entity performs basic data analysis model training based on the imported VNFD template information.
在另一种可能的实现方式中,描述符模板信息包括NSD模板信息和VNFD模板信息,上述步骤601至步骤603可以被替换实现成为如下步骤:OSS/BSS向NFVO发起NSD上架过程,在NFV管理域中上架指定的NSD。NFVO将上架的NSD模板信息导入MDA实体。OSS/BSS向NFVO发起VNF数据包上架过程,在NFV管理域中上架指定的VNF数据包。NFVO将上架的VNFD模板信息导入MDA实体。MDA实体根据导入的NSD模板信息和VNFD模板信息进行基本数据分析模型训练,建立NSD模板信息和NS的成员对象的描述符模板信息之间的关联关系。需要说明的是,描述符模板信息包括VNFD模板信息,或者,包括NSD模板信息和VNFD模板信息时对应的基础数据分析模型的训练过程可以类比参考上述实施例中的相关描述,在此不再赘述。In another possible implementation, the descriptor template information includes NSD template information and VNFD template information, and the above steps 601 to 603 can be replaced and implemented as the following steps: OSS/BSS initiates the NSD listing process to NFVO, and the NFV manages The specified NSD is listed in the domain. NFVO imports the listed NSD template information into the MDA entity. The OSS/BSS initiates the VNF data package listing process to the NFVO, and the specified VNF data package is listed in the NFV management domain. NFVO imports the listed VNFD template information into the MDA entity. The MDA entity performs basic data analysis model training according to the imported NSD template information and VNFD template information, and establishes the association relationship between the NSD template information and the descriptor template information of the member objects of the NS. It should be noted that the descriptor template information includes VNFD template information, or, when including NSD template information and VNFD template information, the training process of the corresponding basic data analysis model can be referred to by analogy with the relevant descriptions in the above embodiments, which will not be repeated here. .
第二阶段即NS和/或VNF实例化阶段,以镜像信息包括NS实例镜像信息和VNF实例镜像信息为例,基础数据分析模型的训练过程包括但不限于如下几 个步骤,如图7所示:The second stage is the NS and/or VNF instantiation stage. Taking the image information including NS instance image information and VNF instance image information as an example, the training process of the basic data analysis model includes but is not limited to the following steps, as shown in Figure 7 :
步骤701,OSS/BSS向NFVO发起NS实例标识创建过程,创建NS实例的标识和该NS实例对应的NS实例镜像信息。Step 701, the OSS/BSS initiates a process of creating an NS instance identifier to the NFVO, and creates an identifier of the NS instance and the NS instance image information corresponding to the NS instance.
步骤702,NFVO将创建的NS实例镜像信息导入MDA实体。Step 702, NFVO imports the created NS instance image information into the MDA entity.
即NFVO向MDA实体发送NS实例镜像信息,作为基本数据分析模型训练的输入数据。That is, NFVO sends the NS instance image information to the MDA entity as the input data for training the basic data analysis model.
可选地,NFVO将创建的NS实例镜像信息导入MDA实体,包括但不限于以下两种可能的实现方式:Optionally, NFVO imports the created NS instance image information into the MDA entity, including but not limited to the following two possible implementations:
在一种可能的实现方式中,NS实例镜像信息导入过程采用随路过程,即伴随步骤701的NS实例标识创建过程,由OSS/BSS通过NFVO直接将NS实例镜像信息导入MDA实体。In a possible implementation manner, the process of importing the NS instance image information adopts an on-path process, that is, along with the NS instance identifier creation process in step 701, the OSS/BSS directly imports the NS instance image information into the MDA entity through NFVO.
在另一种可能的实现方式中,NFVO发送模型训练输入请求至MDA实体,该模型训练输入请求中携带待导入的NS实例镜像信息。In another possible implementation manner, the NFVO sends a model training input request to the MDA entity, where the model training input request carries the image information of the NS instance to be imported.
步骤703,NFVO向VNFM发起VNF实例标识创建过程,创建VNF实例的标识和该VNF实例对应的VNF实例镜像信息。Step 703, the NFVO initiates a process of creating a VNF instance identifier to the VNFM, and creates an identifier of the VNF instance and the VNF instance image information corresponding to the VNF instance.
步骤704,VNFM将创建的VNF实例镜像信息导入MDA实体。Step 704, the VNFM imports the created VNF instance image information into the MDA entity.
即VNFM向MDA实体发送VNF实例镜像信息,作为基本数据分析模型训练的输入数据。That is, the VNFM sends the VNF instance image information to the MDA entity as the input data for training the basic data analysis model.
可选地,VNFM将创建的VNF实例镜像信息导入MDA实体,包括但不限于以下两种可能的实现方式:Optionally, the VNFM imports the created VNF instance image information into the MDA entity, including but not limited to the following two possible implementations:
在一种可能的实现方式中,VNF实例镜像信息导入过程采用随路过程,即伴随步骤703的VNF实例标识创建过程,由NFVO通过VNFM直接将VNF实例镜像信息导入MDA实体。In a possible implementation manner, the process of importing VNF instance image information adopts an on-path process, that is, along with the VNF instance identifier creation process in step 703, the NFVO directly imports the VNF instance image information into the MDA entity through the VNFM.
在另一种可能的实现方式中,VNFM发送模型训练输入请求至MDA实体,该模型训练输入请求中携带待导入的VNF实例镜像信息。In another possible implementation manner, the VNFM sends a model training input request to the MDA entity, where the model training input request carries the image information of the VNF instance to be imported.
需要说明的是,步骤701至步骤702所介绍的NS实例镜像信息的导入过程,与步骤703至步骤704所介绍的VNF实例镜像信息的导入过程,可以并列执行,也可以先执行NS实例镜像信息的导入过程再执行VNF实例镜像信息的导入过程,还可以先执行VNF实例镜像信息的导入过程再执行NS实例镜像信息的导入过程,本实施例对执行顺序不加以限定。It should be noted that the import process of the NS instance image information introduced in steps 701 to 702 and the import process of the VNF instance image information introduced in steps 703 to 704 can be executed in parallel, or the NS instance image information can be executed first The import process of the VNF instance image information is performed after the import process of the VNF instance image information. The import process of the VNF instance image information information can also be performed first and then the import process of the NS instance image information information process is performed. This embodiment does not limit the execution order.
步骤705,MDA实体根据导入的NS实例镜像信息和VNF实例镜像信息进行基本数据分析模型训练,建立NS实例镜像信息和NS实例的成员对象实例的镜像信息之间的关联关系。 Step 705, the MDA entity performs basic data analysis model training according to the imported NS instance mirror information and VNF instance mirror information, and establishes an association relationship between the NS instance mirror information and the mirror information of member object instances of the NS instance.
MDA实体根据导入的NS实例镜像信息和VNF实例镜像信息进行基本数据分析模型训练,在基本数据分析模型的训练过程中,MDA实体建立NS实例镜像信息和NS实例的成员对象实例的镜像信息之间的关联关系。即训练完成的基本数据分析模型用于指示NS实例镜像信息和NS实例的成员对象实例的镜像信息之间的关联关系。The MDA entity performs basic data analysis model training according to the imported NS instance image information and VNF instance image information. During the training process of the basic data analysis model, the MDA entity establishes the relationship between the NS instance image information and the image information of the member object instances of the NS instance. association relationship. That is, the trained basic data analysis model is used to indicate the association relationship between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance.
可选地,MDA实体建立NS实例镜像信息和NS实例的成员对象实例的镜像 信息之间的关联关系,NS实例的成员对象实例的属性与NS实例镜像模板信息中的属性相对应。Optionally, the MDA entity establishes an association relationship between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance, and the attributes of the member object instances of the NS instance correspond to the attributes in the mirror template information of the NS instance.
可选地,在基本数据分析模型的训练过程中,MDA实体建立NS实例和NS的成员对象的描述符模板信息所对应的对象实例之间的包含关系。即训练完成的基本数据分析模型用于指示NS实例和NS的成员对象的描述符模板信息所对应的对象实例之间的包含关系。Optionally, in the training process of the basic data analysis model, the MDA entity establishes an inclusion relationship between the NS instance and the object instance corresponding to the descriptor template information of the member objects of the NS. That is, the trained basic data analysis model is used to indicate the inclusion relationship between the NS instance and the object instance corresponding to the descriptor template information of the member object of the NS.
其中,成员对象的对象实例的属性与该成员对象实例的镜像信息的属性相对应。The attribute of the object instance of the member object corresponds to the attribute of the mirror information of the member object instance.
示意性的,成员对象的对象实例包括:组成NS实例的成员嵌套NS实例、成员VNF实例、成员PNF实例、SAP实例、NS外部的虚拟链路实例、使用的VNF转发图实例中的至少一种。本申请实施例对此不加以限定。Illustratively, the object instance of the member object includes: at least one of the member nested NS instance, the member VNF instance, the member PNF instance, the SAP instance, the virtual link instance outside the NS, and the used VNF forwarding graph instance that constitute the NS instance. kind. This embodiment of the present application does not limit this.
在一种可能的实现方式中,镜像信息包括NS实例镜像信息,上述步骤701至步骤705可以被替换实现成为如下步骤:OSS/BSS向NFVO发起NS实例标识创建过程,创建NS实例的标识和该NS实例对应的NS实例镜像信息。NFVO将创建的NS实例镜像信息导入MDA实体。MDA实体根据导入的NS实例镜像信息进行基本数据分析模型训练,建立NS实例镜像信息和NS实例的成员对象实例的镜像信息之间的关联关系。In a possible implementation manner, the image information includes the image information of the NS instance, and the above steps 701 to 705 can be replaced by the following steps: OSS/BSS initiates a process of creating an NS instance identifier to NFVO, and the identifier of the NS instance and the identifier of the NS instance are created. NS instance image information corresponding to the NS instance. NFVO imports the created NS instance image information into the MDA entity. The MDA entity conducts basic data analysis model training according to the imported NS instance mirror information, and establishes an association relationship between the NS instance mirror information and the mirror information of the member object instances of the NS instance.
在另一种可能的实现方式中,镜像信息包括VNF实例镜像信息,上述步骤701至步骤705可以被替换实现成为如下步骤:NFVO向VNFM发起VNF实例标识创建过程,创建VNF实例的标识和该VNF实例对应的VNF实例镜像信息。VNFM将创建的VNF实例镜像信息导入MDA实体。MDA实体根据导入的VNF实例镜像信息进行基本数据分析模型训练。In another possible implementation manner, the image information includes VNF instance image information, and the above steps 701 to 705 can be replaced and implemented as the following steps: NFVO initiates a VNF instance identifier creation process to the VNFM, and creates the VNF instance identifier and the VNF instance identifier. Information about the VNF instance image corresponding to the instance. The VNFM imports the created VNF instance image information into the MDA entity. The MDA entity performs basic data analysis model training based on the imported VNF instance image information.
需要说明的是,镜像信息包括NS实例镜像信息或VNF实例镜像信息时对应的基础数据分析模型的训练过程可以类比参考上述实施例中的相关描述,在此不再赘述。It should be noted that the training process of the corresponding basic data analysis model when the mirroring information includes the mirroring information of the NS instance or the mirroring information of the VNF instance can be referred to the relevant description in the above embodiment by analogy, and details are not repeated here.
第三阶段即在NS和/或VNF实例化后的运行态阶段,以NFV对象实例更新过程中修改实例的镜像信息为VNF实例镜像信息为例,基础数据分析模型的训练过程包括但不限于如下几个步骤,如图8所示:The third stage is the running state after the NS and/or VNF are instantiated. Taking the image information of the modified instance as the VNF instance image information during the update process of the NFV object instance as an example, the training process of the basic data analysis model includes but is not limited to the following Several steps, as shown in Figure 8:
步骤801,OSS/BSS向NFVO发起NS更新过程。Step 801, the OSS/BSS initiates an NS update process to the NFVO.
可选地,OSS/BSS向NFVO发送请求消息,该请求消息中携带NS更新类型,NS更新类型用于指示修改组成该NS实例的VNF实例镜像信息。Optionally, the OSS/BSS sends a request message to the NFVO, where the request message carries the NS update type, and the NS update type is used to instruct to modify the image information of the VNF instance that constitutes the NS instance.
步骤802,NFVO向VNFM发起VNF实例信息修改过程,修改指定的VNF实例镜像信息。Step 802, the NFVO initiates a VNF instance information modification process to the VNFM, and modifies the specified VNF instance image information.
NFVO接收携带有NS更新类型的请求消息后,向VNFM发起VNF实例信息修改过程,对该NS更新类型所指示的VNF实例镜像信息进行修改,得到修改后的VNF实例镜像信息。After receiving the request message carrying the NS update type, the NFVO initiates the VNF instance information modification process to the VNFM, and modifies the VNF instance image information indicated by the NS update type to obtain the modified VNF instance image information.
步骤803,VNFM将修改后的VNF实例镜像信息导入MDA实体。Step 803, the VNFM imports the modified VNF instance image information into the MDA entity.
即VNFM向MDA实体发送修改的VNF实例镜像信息,作为基本数据分析模 型训练的输入数据,以指示对基本数据分析模型进行更新。That is, the VNFM sends the modified VNF instance image information to the MDA entity as the input data of the basic data analysis model training to instruct the basic data analysis model to be updated.
可选地,VNFM将修改的VNF实例镜像信息导入MDA实体,包括但不限于以下两种可能的实现方式:Optionally, the VNFM imports the modified VNF instance image information into the MDA entity, including but not limited to the following two possible implementations:
在一种可能的实现方式中,修改后的VNF实例镜像信息导入过程采用随路过程,即伴随步骤802的VNF实例信息修改过程,由NFVO通过VNFM直接将修改后的VNF实例镜像信息导入MDA实体。In a possible implementation manner, the process of importing the modified VNF instance image information adopts an on-path process, that is, along with the VNF instance information modification process in step 802, the NFVO directly imports the modified VNF instance image information into the MDA entity through the VNFM .
在另一种可能的实现方式中,VNFM发送模型训练输入请求至MDA实体,该模型训练输入请求中携带修改后的VNF实例镜像信息。In another possible implementation manner, the VNFM sends a model training input request to the MDA entity, where the model training input request carries the modified VNF instance image information.
步骤804,MDA实体根据修改后的VNF实例镜像信息对基本数据分析模型进行更新。 Step 804, the MDA entity updates the basic data analysis model according to the modified VNF instance image information.
MDA实体根据修改后的VNF实例镜像信息对基本数据分析模型进行更新,得到更新后的基本数据分析模型。相关细节可类比参考MDA实体根据VNF实例镜像信息对基本数据分析模型进行训练的相关描述,在此不再赘述。The MDA entity updates the basic data analysis model according to the modified VNF instance image information to obtain the updated basic data analysis model. For related details, refer to the related description of the MDA entity training the basic data analysis model according to the VNF instance image information, and will not be repeated here.
在一种可能的实现方式中,上述步骤801至步骤804还可以被替换实现成为如下步骤:OSS/BSS向NFVO发起NS更新过程,修改NS实例镜像信息。NFVO将修改后的NS实例镜像信息导入MDA实体。MDA实体根据修改后的NS实例镜像信息对基本数据分析模型进行更新。在另一种可能的实现方式中,上述步骤801至步骤804还可以被替换实现成为如下步骤:OSS/BSS向NFVO发起NS更新过程。NFVO向VNFM发起VNF实例信息修改过程,修改指定的VNF实例镜像信息。VNFM将修改后的VNF实例镜像信息导入MDA实体。OSS/BSS向NFVO发起NS更新过程,修改NS实例镜像信息。NFVO将修改后的NS实例镜像信息导入MDA实体。MDA实体根据修改后的NS实例镜像信息和修改后的VNF实例镜像信息对基本数据分析模型进行更新。In a possible implementation manner, the above steps 801 to 804 can also be replaced and implemented as the following steps: the OSS/BSS initiates an NS update process to the NFVO to modify the NS instance image information. NFVO imports the modified NS instance image information into the MDA entity. The MDA entity updates the basic data analysis model according to the modified NS instance image information. In another possible implementation manner, the above steps 801 to 804 can also be replaced and implemented as the following steps: the OSS/BSS initiates an NS update process to the NFVO. The NFVO initiates the VNF instance information modification process to the VNFM to modify the specified VNF instance image information. The VNFM imports the modified VNF instance image information into the MDA entity. OSS/BSS initiates the NS update process to NFVO to modify the NS instance image information. NFVO imports the modified NS instance image information into the MDA entity. The MDA entity updates the basic data analysis model according to the modified NS instance image information and the modified VNF instance image information.
需要说明的是,MDA实体根据修改后的NS实例镜像信息对基本数据分析模型进行更新的过程,或者,MDA实体根据修改后的NS实例镜像信息和修改后的VNF实例镜像信息对基本数据分析模型进行更新的过程可以类比参考上述实施例中的相关描述,在此不再赘述。It should be noted that the MDA entity updates the basic data analysis model according to the modified NS instance image information, or the MDA entity updates the basic data analysis model according to the modified NS instance image information and the modified VNF instance image information. For the update process, reference can be made to the relevant descriptions in the foregoing embodiments by analogy, and details are not repeated here.
基于上述训练好的基本数据分析模型,请参考图9,其示出了本申请另一个示例性实施例提供的数据分析模型的训练方法的流程图,该方法用于图2所示的MDA实体中。该方法包括以下几个步骤。Based on the above trained basic data analysis model, please refer to FIG. 9 , which shows a flowchart of a training method for a data analysis model provided by another exemplary embodiment of the present application, and the method is used for the MDA entity shown in FIG. 2 . middle. The method includes the following steps.
步骤901,MDA实体向NFVO订阅与NS相关的指定分析主题所需的信息。Step 901, the MDA entity subscribes to the NFVO for the information required by the specified analysis topic related to the NS.
可选地,与NS相关的指定分析主题所需的信息包括指定NS实例相关的信息。比如,指定分析主题为NS告警事件分析主题时所需的信息包括NS相关的性能数据和/或告警数据。Optionally, the information required for the specified analysis topic related to the NS includes information related to the specified NS instance. For example, the information required when specifying an analysis topic as an NS alarm event analysis topic includes NS-related performance data and/or alarm data.
步骤902,NFVO向MDA实体发送携带有与NS相关的指定分析主题所需的信息的通知消息。Step 902, the NFVO sends a notification message to the MDA entity that carries the information required by the specified analysis topic related to the NS.
NFVO向MDA实体发送通知消息,该通知消息携带有与NS相关的指定分析主题所需的信息。The NFVO sends a notification message to the MDA entity, which carries the information required for the specified analysis topic related to the NS.
在一种可能的实现方式中,上述步骤901和步骤902被替换实现成为如下步骤:MDA实体向VNFM订阅与NS相关的指定分析主题所需的信息。VNFM向MDA实体发送携带有与NS相关的指定分析主题所需的信息的通知消息。In a possible implementation manner, the above steps 901 and 902 are replaced by the following steps: the MDA entity subscribes to the VNFM for the information required by the specified analysis topic related to the NS. The VNFM sends a notification message to the MDA entity that carries the information required for the specified analysis topic related to the NS.
可选地,在该实现方式中,与NS相关的指定分析主题所需的信息包括指定NS实例的所有成员VNF实例相关的信息。Optionally, in this implementation manner, the information required for the specified analysis topic related to the NS includes information related to all member VNF instances of the specified NS instance.
在另一种可能的实现方式中,上述步骤901和步骤902被替换实现成为如下步骤:MDA实体向VIM订阅与NS相关的指定分析主题所需的信息。VIM向MDA实体发送携带有与NS相关的指定分析主题所需的信息的通知消息。In another possible implementation manner, the above-mentioned steps 901 and 902 are replaced by the following steps: the MDA entity subscribes to the VIM for information required by the specified analysis topic related to the NS. The VIM sends a notification message to the MDA entity that carries the information needed for the specified analysis topic related to the NS.
可选地,在该实现方式中,与NS相关的指定分析主题所需的信息包括指定NS实例的所有成员VNF实例和虚拟链路实例所使用的虚拟化资源相关的信息。Optionally, in this implementation manner, the information required for the specified analysis topic related to the NS includes information related to virtualized resources used by all member VNF instances and virtual link instances of the specified NS instance.
在另一种可能的实现方式中,上述步骤901和步骤902被替换实现成为如下步骤:MDA实体向CISM实体订阅与NS相关的指定分析主题所需的信息。CISM实体向MDA实体发送携带有与NS相关的指定分析主题所需的信息的通知消息。In another possible implementation manner, the above steps 901 and 902 are replaced by the following steps: the MDA entity subscribes to the CISM entity for information required by the specified analysis topic related to the NS. The CISM entity sends a notification message to the MDA entity that carries the information required for the specified analysis topic related to the NS.
可选地,在该实现方式中,与NS相关的指定分析主题所需的信息包括指定NS实例的所有成员VNF实例所使用的被管理的容器基础设施对象(Managed Container Infrastructure Object,MCIO)相关的信息。Optionally, in this implementation manner, the information required for the specified analysis topic related to the NS includes information related to the managed container infrastructure object (Managed Container Infrastructure Object, MCIO) used by all the member VNF instances of the specified NS instance. information.
步骤903,MDA实体接收携带有与NS相关的指定分析主题所需的信息的通知消息。 Step 903, the MDA entity receives a notification message that carries the information required for the specified analysis topic related to the NS.
MDA实体接收通知消息,该通知消息携带有与NS相关的指定分析主题所需的信息。The MDA entity receives a notification message that carries the information required for the specified analysis topic related to the NS.
步骤904,MDA实体根据通知信息,对预先训练完成的基本数据分析模型进行训练得到指定分析主题对应的目标数据分析模型。 Step 904, the MDA entity trains the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic.
其中,基本数据分析模型为上述训练好的基本数据分析模型。The basic data analysis model is the above-trained basic data analysis model.
可选地,MDA实体根据通知消息,建立NFV对象之间的关联关系和/或管理事件之间的关联关系,基于建立的关联关系扩展基本数据分析模型,形成目标数据分析模型。比如,指定分析主题为NS告警事件分析主题,MDA实体接收携带有NS相关的告警数据的通知消息,通过对接收到多个告警数据进行分析,确定NS实例中的成员对象“VNF_1”的虚拟机端口告警和成员对象“VL_2”的不可达告警强相关,从而建立起NS实例中的成员对象“VNF_1”的虚拟机端口告警和成员对象“VL_2”之间的关联关系,而在基本数据分析模型中不具备这个关联关系。Optionally, the MDA entity establishes an association relationship between NFV objects and/or an association relationship between management events according to the notification message, and expands the basic data analysis model based on the established association relationship to form a target data analysis model. For example, if the analysis topic is specified as the NS alarm event analysis topic, the MDA entity receives the notification message carrying the NS-related alarm data, and analyzes the received multiple alarm data to determine the virtual machine of the member object "VNF_1" in the NS instance. The port alarm is strongly correlated with the unreachable alarm of the member object "VL_2", thus establishing the correlation between the virtual machine port alarm of the member object "VNF_1" in the NS instance and the member object "VL_2". does not have this relationship.
在一种可能的实现方式中,MDA实体根据通知信息,对预先训练完成的基本数据分析模型进行训练得到指定分析主题对应的目标数据分析模型之后,调用训练好的目标数据分析模型进行数据分析。基于上述实施例,步骤302或者步骤904之后,目标数据分析模型的使用过程包括但不限于如下步骤,如图10所示:In a possible implementation manner, the MDA entity trains the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic, and then invokes the trained target data analysis model for data analysis. Based on the above embodiment, after step 302 or step 904, the use process of the target data analysis model includes but is not limited to the following steps, as shown in FIG. 10 :
步骤1001,获取待分析的指定分析主题所需的信息。Step 1001: Obtain information required by a specified analysis topic to be analyzed.
MDA实体获取待分析的指定分析主题所需的信息。可选地,指定分析主题包括NS告警事件分析主题、NS健康度分析主题和NS资源利用率分析主题中的任意一种。比如,指定分析主题为NS告警事件分析主题,该指定分析主题所需的信息包括NS相关的性能数据和/或告警数据。The MDA entity obtains the information required for the specified analysis subject to be analyzed. Optionally, the specified analysis topic includes any one of an NS alarm event analysis topic, an NS health degree analysis topic, and an NS resource utilization analysis topic. For example, the specified analysis topic is an NS alarm event analysis topic, and the information required by the specified analysis topic includes NS-related performance data and/or alarm data.
步骤1002,将该指定分析主题所需的信息输入至该目标数据分析模型,输出得到数据分析结果。Step 1002: Input the information required by the designated analysis topic into the target data analysis model, and output the data analysis result.
MDA实体将该指定分析主题所需的信息输入至该目标数据分析模型,输出得到数据分析结果。The MDA entity inputs the information required by the specified analysis subject into the target data analysis model, and outputs the data analysis result.
在一种可能的实现方式中,MDA实体将NS相关的性能数据和/或告警数据输入至与NS告警事件分析主题对应的目标数据分析模型中,输出得到第一分析结果,第一分析结果包括NS故障的根本告警和/或根本原因。In a possible implementation manner, the MDA entity inputs the NS-related performance data and/or alarm data into the target data analysis model corresponding to the NS alarm event analysis topic, and outputs a first analysis result, where the first analysis result includes The underlying alarm and/or root cause of the NS failure.
可选地,NS相关的性能数据和/或告警数据包括NS及其组成组件/基础设施资源相关的性能数据和/或告警数据。NFVO中提供了NS相关的性能数据和/或告警数据。NFVO向MDA实体发送NS相关的性能数据和/或告警数据,以进行数据分析。MDA实体调用与NS告警事件分析主题对应的目标数据分析模型,对NS相关的性能数据和/或告警数据进行数据分析,输出得到第一分析结果,第一分析结果包括NS故障的根本告警和/或根本原因。Optionally, the performance data and/or alarm data related to the NS includes performance data and/or alarm data related to the NS and its constituent components/infrastructure resources. NS-related performance data and/or alarm data are provided in NFVO. NFVO sends NS related performance data and/or alarm data to the MDA entity for data analysis. The MDA entity invokes the target data analysis model corresponding to the NS alarm event analysis topic, performs data analysis on the NS-related performance data and/or alarm data, and outputs the first analysis result, where the first analysis result includes the fundamental alarm and/or the NS failure. or root cause.
可选地,MDA实体将第一分析结果返回至NFVO。NFVO确认第一分析结果,并将NS相关的性能数据和/或告警数据与第一分析结果对应地分组。Optionally, the MDA entity returns the first analysis result to NFVO. The NFVO confirms the first analysis result, and groups the NS-related performance data and/or alarm data corresponding to the first analysis result.
在另一种可能的实现方式中,MDA实体将NS健康度分析所需的信息输入至与NS健康度分析主题对应的目标数据分析模型中,输出得到第二分析结果,第二分析结果包括NS的健康状态和健康状态对应的说明信息。In another possible implementation manner, the MDA entity inputs the information required for NS health degree analysis into a target data analysis model corresponding to the subject of NS health degree analysis, and outputs a second analysis result, where the second analysis result includes NS health status and the description information corresponding to the health status.
可选地,NS健康度分析所需的信息包括NS状态、NS的故障管理(Fault Management,FM)/性能管理(Performance Management,PM)信息、VNF指标、与分析的NS相关的配置信息中的至少一种,本申请实施例对此不加以限定。Optionally, the information required for NS health degree analysis includes NS status, NS fault management (Fault Management, FM)/performance management (Performance Management, PM) information, VNF indicators, and configuration information related to the analyzed NS. At least one, which is not limited in this embodiment of the present application.
NFVO决定请求MDA实体分析其管理域中NS的运行状况。NFVO向MDA实体发送数据分析请求,该数据分析请求用于指示MDA实体对指定的NS进行健康分析。MDA实体与其他的NFV-MANO功能实体(如NFVO、VNFM和/或VIM)进行交互,以收集NS健康分析所需的信息。MDA实体调用与NS健康度分析主题对应的目标数据分析模型,对NS健康度分析所需的信息进行数据分析输出得到第二分析结果,第二分析结果包括该NS的健康状态和健康状态对应的说明信息。其中,NS的健康状态用于指示NS是健康的或者不健康的。NFVO decided to request the MDA entity to analyze the health of the NS in its management domain. The NFVO sends a data analysis request to the MDA entity, where the data analysis request is used to instruct the MDA entity to perform health analysis on the specified NS. The MDA entity interacts with other NFV-MANO functional entities such as NFVO, VNFM and/or VIM to gather information required for NS health analysis. The MDA entity invokes the target data analysis model corresponding to the NS health degree analysis topic, and performs data analysis and output on the information required for the NS health degree analysis to obtain a second analysis result. The second analysis result includes the health state of the NS and the corresponding health state. Description information. The health status of the NS is used to indicate whether the NS is healthy or unhealthy.
可选地,MDA实体将第二分析结果返回至NFVO。NFVO接收第二分析结果,获取该NS的运行状况。Optionally, the MDA entity returns the second analysis result to NFVO. The NFVO receives the second analysis result, and obtains the operating status of the NS.
在另一种可能的实现方式中,MDA实体将NS资源利用率分析所需的信息输入至与NS资源利用率分析主题对应的目标数据分析模型中,输出得到第三分析结果,第三分析结果包括对NS的资源利用情况的指示。In another possible implementation manner, the MDA entity inputs the information required for the NS resource utilization analysis into the target data analysis model corresponding to the subject of the NS resource utilization analysis, and outputs a third analysis result, which is the third analysis result. Include an indication of resource utilization of the NS.
可选地,NS资源利用率分析所需的信息包括NS的每个组成VNF的虚拟计算相关测量信息、属于NS的SAP的网络数据量相关测量信息,属于NS的组成VNF的外部CP的网络数据量相关测量信息、NS的组成VNF的指示符中的至少一个。本申请实施例对此不加以限定。Optionally, the information required for the NS resource utilization analysis includes virtual computing-related measurement information of each constituent VNF of the NS, network data volume-related measurement information of the SAP belonging to the NS, and network data of the external CPs belonging to the NS that form the VNF. At least one of quantity-related measurement information, an indicator of the NS constituting the VNF. This embodiment of the present application does not limit this.
NFVO决定对NS的资源利用率进行数据分析。NFVO向MDA实体发送数据分析请求,该数据分析请求用于指示MDA实体对指定的NS进行资源利用率分析。MDA与相应的NFV-MANO功能实体进行交互,以收集在一段时间内进行NS资源利用率分析所需的信息。MDA实体调用与NS资源利用率分析主题对应的目标数据分析模型,对NS资源利用率分析所需的信息进行数据分析输出得到第三分析结果,第三分析结果包括对NS的资源利用情况的指示。NFVO decided to perform data analysis on the resource utilization of NS. The NFVO sends a data analysis request to the MDA entity, where the data analysis request is used to instruct the MDA entity to perform resource utilization analysis on the specified NS. The MDA interacts with the corresponding NFV-MANO functional entities to collect the information required for NS resource utilization analysis over a period of time. The MDA entity invokes the target data analysis model corresponding to the NS resource utilization analysis theme, and performs data analysis and output on the information required for the NS resource utilization analysis to obtain a third analysis result. The third analysis result includes an indication of the resource utilization of the NS .
可选地,第三分析结果包括至少一类NS资源的资源利用率和对应的建议信息,以解决分析报告中确定的资源利用率问题。比如,NS资源的类型包括计算资源、存储资源和网络资源中的至少一种。Optionally, the third analysis result includes resource utilization of at least one type of NS resources and corresponding suggestion information, so as to solve the resource utilization problem determined in the analysis report. For example, the types of NS resources include at least one of computing resources, storage resources, and network resources.
可选地,MDA实体将分析结果返回至NFVO。NFVO获取一段时间内NS的资源利用率。Optionally, the MDA entity returns the analysis results to NFVO. NFVO obtains the resource utilization of NS over a period of time.
需要说明的是,本申请实施例对指定分析主题的类型以及指定分析主题所需的信息内容不加以限定。It should be noted that, the embodiment of the present application does not limit the type of the specified analysis topic and the information content required for the specified analysis topic.
综上所述,本申请实施例提供的数据分析模型的训练方法,基本数据分析模型基于NFV对象的配置数据动态维护NFV对象的属性和NFV对象之间的关联关系。在基本数据分析模型的基础上,通过采集分析主题特定的NS相关的性能数据和/或告警数据来进一步训练完成分析主题特定的数据分析模型。To sum up, in the training method of the data analysis model provided by the embodiment of the present application, the basic data analysis model dynamically maintains the attributes of the NFV object and the association relationship between the NFV objects based on the configuration data of the NFV object. On the basis of the basic data analysis model, further training is performed to complete the analysis theme-specific data analysis model by collecting the analysis theme-specific NS-related performance data and/or alarm data.
本申请实施例还通过MDA实体将NFV对象在设计态的信息模型(即NFV对象的描述符模板信息)和NFV对象在运行态的信息模型(即NFV对象实例化后的镜像信息)作为基础数据分析模型训练的输入数据,从而训练得到与分析主题无关的基本数据分析模型,以增强MDA实体动态获得NFV管理域中NFV对象之间的关联关系的能力,并进一步提高后续训练目标数据分析模型的效率。In this embodiment of the present application, the information model of the NFV object in the design state (that is, the descriptor template information of the NFV object) and the information model of the NFV object in the running state (that is, the mirror information after the instantiation of the NFV object) are used as basic data through the MDA entity. The input data of model training is analyzed, and the basic data analysis model irrelevant to the analysis topic is obtained by training, so as to enhance the ability of the MDA entity to dynamically obtain the association relationship between NFV objects in the NFV management domain, and further improve the subsequent training target data analysis model. efficiency.
请参考图11,其示出了本申请一个示例性实施例提供的数据分析模型的训练装置的框图。该数据分析模型的训练装置可以通过软件、硬件或者两者的结合实现成为图2所示的MDA实体的全部或者一部分。该数据分析模型的训练装置可以包括:接收单元1110和处理单元1120。Please refer to FIG. 11 , which shows a block diagram of an apparatus for training a data analysis model provided by an exemplary embodiment of the present application. The training device of the data analysis model can be implemented by software, hardware or a combination of the two to become all or a part of the MDA entity shown in FIG. 2 . The training device for the data analysis model may include: a receiving unit 1110 and a processing unit 1120 .
接收单元1110,用于实现上述步骤301、903、1001的功能以及各个步骤中隐含的MDA实体侧的接收功能;The receiving unit 1110 is used to realize the functions of the above steps 301, 903 and 1001 and the receiving function of the MDA entity side implicit in each step;
处理单元1120,用于实现上述步骤302、501、603、705、804、904和1002的功能以及各个步骤中隐含的MDA实体侧的处理功能。The processing unit 1120 is configured to implement the functions of the above steps 302, 501, 603, 705, 804, 904 and 1002 and the processing functions on the MDA entity side implicit in each step.
相关细节可结合参考图3至图10所述的方法实施例,在此不再赘述。Relevant details can be combined with the method embodiments described with reference to FIG. 3 to FIG. 10 , and details are not repeated here.
本申请的实施例提供了一种数据分析模型的训练装置,用于MDA实体中, 该装置包括:处理器以及用于存储处理器可执行指令的存储器;其中,处理器被配置为执行指令时实现上述由MDA实体执行的方法。An embodiment of the present application provides a training device for a data analysis model, which is used in an MDA entity. The device includes: a processor and a memory for storing instructions executable by the processor; wherein, when the processor is configured to execute the instructions Implement the methods described above to be performed by the MDA entity.
本申请的实施例提供了一种计算机程序产品,包括计算机可读代码,或者承载有计算机可读代码的非易失性计算机可读存储介质,当计算机可读代码在电子设备的处理器中运行时,电子设备中的处理器执行上述由MDA实体执行的方法。Embodiments of the present application provide a computer program product, including computer-readable codes, or a non-volatile computer-readable storage medium carrying computer-readable codes, when the computer-readable codes are executed in a processor of an electronic device , the processor in the electronic device executes the above-mentioned method executed by the MDA entity.
本申请的实施例提供了一种非易失性计算机可读存储介质,其上存储有计算机程序指令,计算机程序指令被处理器执行时实现上述由MDA实体执行的方法。Embodiments of the present application provide a non-volatile computer-readable storage medium on which computer program instructions are stored. When the computer program instructions are executed by a processor, the above-mentioned method executed by an MDA entity is implemented.
计算机可读存储介质可以是可以保持和存储由指令执行设备使用的指令的有形设备。计算机可读存储介质例如可以是――但不限于――电存储设备、磁存储设备、光存储设备、电磁存储设备、半导体存储设备或者上述的任意合适的组合。计算机可读存储介质的更具体的例子(非穷举的列表)包括:便携式计算机盘、硬盘、随机存取存储器(Random Access Memory,RAM)、只读存储器(Read Only Memory,ROM)、可擦式可编程只读存储器(Electrically Programmable Read-Only-Memory,EPROM或闪存)、静态随机存取存储器(Static Random-Access Memory,SRAM)、便携式压缩盘只读存储器(Compact Disc Read-Only Memory,CD-ROM)、数字多功能盘(Digital Video Disc,DVD)、记忆棒、软盘、机械编码设备、例如其上存储有指令的打孔卡或凹槽内凸起结构、以及上述的任意合适的组合。A computer-readable storage medium may be a tangible device that can hold and store instructions for use by the instruction execution device. The computer-readable storage medium may be, for example, but not limited to, an electrical storage device, a magnetic storage device, an optical storage device, an electromagnetic storage device, a semiconductor storage device, or any suitable combination of the foregoing. More specific examples (a non-exhaustive list) of computer-readable storage media include: portable computer disks, hard disks, random access memory (RAM), read only memory (ROM), erasable programmable read-only memory (Electrically Programmable Read-Only-Memory, EPROM or flash memory), static random access memory (Static Random-Access Memory, SRAM), portable compact disk read-only memory (Compact Disc Read-Only Memory, CD - ROM), Digital Video Disc (DVD), memory sticks, floppy disks, mechanically encoded devices, such as punch cards or raised structures in grooves on which instructions are stored, and any suitable combination of the foregoing .
这里所描述的计算机可读程序指令或代码可以从计算机可读存储介质下载到各个计算/处理设备,或者通过网络、例如因特网、局域网、广域网和/或无线网下载到外部计算机或外部存储设备。网络可以包括铜传输电缆、光纤传输、无线传输、路由器、防火墙、交换机、网关计算机和/或边缘服务器。每个计算/处理设备中的网络适配卡或者网络接口从网络接收计算机可读程序指令,并转发该计算机可读程序指令,以供存储在各个计算/处理设备中的计算机可读存储介质中。Computer readable program instructions or code described herein may be downloaded to various computing/processing devices from a computer readable storage medium, or to an external computer or external storage device over a network such as the Internet, a local area network, a wide area network and/or a wireless network. The network may include copper transmission cables, fiber optic transmission, wireless transmission, routers, firewalls, switches, gateway computers, and/or edge servers. A network adapter card or network interface in each computing/processing device receives computer-readable program instructions from a network and forwards the computer-readable program instructions for storage in a computer-readable storage medium in each computing/processing device .
用于执行本申请操作的计算机程序指令可以是汇编指令、指令集架构(Instruction Set Architecture,ISA)指令、机器指令、机器相关指令、微代码、固件指令、状态设置数据、或者以一种或多种编程语言的任意组合编写的源代码或目标代码,所述编程语言包括面向对象的编程语言—诸如Smalltalk、C++等,以及常规的过程式编程语言—诸如“C”语言或类似的编程语言。计算机可读程序指令可以完全地在用户计算机上执行、部分地在用户计算机上执行、作为一个独立的软件包执行、部分在用户计算机上部分在远程计算机上执行、或者完全在远程计算机或服务器上执行。在涉及远程计算机的情形中,远程计算机可以通过任意种类的网络—包括局域网(Local Area Network,LAN)或广域网(Wide Area Network,WAN)—连接到用户计算机,或者,可以连接到外部计算机(例如利用因特网服务提供商来通过因特网连接)。在一些实施例中,通过利用计算机可读程序指令的状态信息来个性化定制电子电路,例如 可编程逻辑电路、现场可编程门阵列(Field-Programmable Gate Array,FPGA)或可编程逻辑阵列(Programmable Logic Array,PLA),该电子电路可以执行计算机可读程序指令,从而实现本申请的各个方面。The computer program instructions used to perform the operations of the present application may be assembly instructions, Instruction Set Architecture (ISA) instructions, machine instructions, machine-related instructions, microcode, firmware instructions, state setting data, or in one or more source or object code written in any combination of programming languages, including object-oriented programming languages such as Smalltalk, C++, etc., and conventional procedural programming languages such as the "C" language or similar programming languages. The computer readable program instructions may execute entirely on the user's computer, partly on the user's computer, as a stand-alone software package, partly on the user's computer and partly on a remote computer, or entirely on the remote computer or server implement. In the case of a remote computer, the remote computer may be connected to the user's computer through any kind of network—including a Local Area Network (LAN) or a Wide Area Network (WAN)—or, may be connected to an external computer (eg, use an internet service provider to connect via the internet). In some embodiments, electronic circuits, such as programmable logic circuits, Field-Programmable Gate Arrays (FPGA), or Programmable Logic Arrays (Programmable Logic Arrays), are personalized by utilizing state information of computer-readable program instructions. Logic Array, PLA), the electronic circuit can execute computer readable program instructions to implement various aspects of the present application.
这里参照根据本申请实施例的方法、装置(系统)和计算机程序产品的流程图和/或框图描述了本申请的各个方面。应当理解,流程图和/或框图的每个方框以及流程图和/或框图中各方框的组合,都可以由计算机可读程序指令实现。Aspects of the present application are described herein with reference to flowchart illustrations and/or block diagrams of methods, apparatus (systems) and computer program products according to embodiments of the present application. It will be understood that each block of the flowchart illustrations and/or block diagrams, and combinations of blocks in the flowchart illustrations and/or block diagrams, can be implemented by computer readable program instructions.
这些计算机可读程序指令可以提供给通用计算机、专用计算机或其它可编程数据处理装置的处理器,从而生产出一种机器,使得这些指令在通过计算机或其它可编程数据处理装置的处理器执行时,产生了实现流程图和/或框图中的一个或多个方框中规定的功能/动作的装置。也可以把这些计算机可读程序指令存储在计算机可读存储介质中,这些指令使得计算机、可编程数据处理装置和/或其他设备以特定方式工作,从而,存储有指令的计算机可读介质则包括一个制造品,其包括实现流程图和/或框图中的一个或多个方框中规定的功能/动作的各个方面的指令。These computer readable program instructions may be provided to a processor of a general purpose computer, special purpose computer or other programmable data processing apparatus to produce a machine that causes the instructions when executed by the processor of the computer or other programmable data processing apparatus , resulting in means for implementing the functions/acts specified in one or more blocks of the flowchart and/or block diagrams. These computer readable program instructions can also be stored in a computer readable storage medium, these instructions cause a computer, programmable data processing apparatus and/or other equipment to operate in a specific manner, so that the computer readable medium on which the instructions are stored includes An article of manufacture comprising instructions for implementing various aspects of the functions/acts specified in one or more blocks of the flowchart and/or block diagrams.
也可以把计算机可读程序指令加载到计算机、其它可编程数据处理装置、或其它设备上,使得在计算机、其它可编程数据处理装置或其它设备上执行一系列操作步骤,以产生计算机实现的过程,从而使得在计算机、其它可编程数据处理装置、或其它设备上执行的指令实现流程图和/或框图中的一个或多个方框中规定的功能/动作。Computer readable program instructions can also be loaded onto a computer, other programmable data processing apparatus, or other equipment to cause a series of operational steps to be performed on the computer, other programmable data processing apparatus, or other equipment to produce a computer-implemented process , thereby causing instructions executing on a computer, other programmable data processing apparatus, or other device to implement the functions/acts specified in one or more blocks of the flowcharts and/or block diagrams.
附图中的流程图和框图显示了根据本申请的多个实施例的装置、系统、方法和计算机程序产品的可能实现的体系架构、功能和操作。在这点上,流程图或框图中的每个方框可以代表一个模块、程序段或指令的一部分,所述模块、程序段或指令的一部分包含一个或多个用于实现规定的逻辑功能的可执行指令。在有些作为替换的实现中,方框中所标注的功能也可以以不同于附图中所标注的顺序发生。例如,两个连续的方框实际上可以基本并行地执行,它们有时也可以按相反的顺序执行,这依所涉及的功能而定。The flowchart and block diagrams in the Figures illustrate the architecture, functionality, and operation of possible implementations of apparatuses, systems, methods and computer program products according to various embodiments of the present application. In this regard, each block in the flowchart or block diagrams may represent a module, segment, or portion of instructions, which comprises one or more functions for implementing the specified logical function(s) executable instructions. In some alternative implementations, the functions noted in the blocks may occur out of the order noted in the figures. For example, two blocks in succession may, in fact, be executed substantially concurrently, or the blocks may sometimes be executed in the reverse order, depending upon the functionality involved.
也要注意的是,框图和/或流程图中的每个方框、以及框图和/或流程图中的方框的组合,可以用执行相应的功能或动作的硬件(例如电路或ASIC(Application Specific Integrated Circuit,专用集成电路))来实现,或者可以用硬件和软件的组合,如固件等来实现。It is also noted that each block of the block diagrams and/or flowchart illustrations, and combinations of blocks in the block diagrams and/or flowchart illustrations, can be implemented in hardware (eg, circuits or ASICs (Application) that perform the corresponding functions or actions. Specific Integrated Circuit, application-specific integrated circuit)), or can be implemented by a combination of hardware and software, such as firmware.
尽管在此结合各实施例对本申请进行了描述,然而,在实施所要求保护的本申请过程中,本领域技术人员通过查看所述附图、公开内容、以及所附权利要求书,可理解并实现所述公开实施例的其它变化。在权利要求中,“包括”(comprising)一词不排除其他组成部分或步骤,“一”或“一个”不排除多个的情况。单个处理器或其它单元可以实现权利要求中列举的若干项功能。相互不同的从属权利要求中记载了某些措施,但这并不表示这些措施不能组合起来产生良好的效果。Although the application is described herein in conjunction with the various embodiments, those skilled in the art will understand and understand from a review of the drawings, the disclosure, and the appended claims in practicing the claimed application. Other variations of the disclosed embodiments are implemented. In the claims, the word "comprising" does not exclude other components or steps, and "a" or "an" does not exclude a plurality. A single processor or other unit may fulfill the functions of several items recited in the claims. The mere fact that certain measures are recited in mutually different dependent claims does not indicate that these measures cannot be combined to advantage.
以上已经描述了本申请的各实施例,上述说明是示例性的,并非穷尽性的,并且也不限于所披露的各实施例。在不偏离所说明的各实施例的范围和精神的情况下,对于本技术领域的普通技术人员来说许多修改和变更都是显而易见的。本文中所用术语的选择,旨在最好地解释各实施例的原理、实际应用或对市场中的技术的改进,或者使本技术领域的其它普通技术人员能理解本文披露的各实施例。Various embodiments of the present application have been described above, and the foregoing descriptions are exemplary, not exhaustive, and not limiting of the disclosed embodiments. Numerous modifications and variations will be apparent to those of ordinary skill in the art without departing from the scope and spirit of the described embodiments. The terminology used herein was chosen to best explain the principles of the various embodiments, the practical application or improvement over the technology in the marketplace, or to enable others of ordinary skill in the art to understand the various embodiments disclosed herein.

Claims (18)

  1. 一种数据分析模型的训练方法,其特征在于,用于管理数据分析MDA实体中,所述方法包括:A training method for a data analysis model, characterized in that it is used to manage a data analysis MDA entity, the method comprising:
    接收通知消息,所述通知消息携带有与网络服务NS相关的指定分析主题所需的信息;receiving a notification message carrying information required for a specified analysis topic related to the network service NS;
    根据所述通知信息,对预先训练完成的基本数据分析模型进行训练得到所述指定分析主题对应的目标数据分析模型,所述基本数据分析模型是根据网络功能虚拟化NFV对象的配置数据对原始模型进行训练得到的,所述NFV对象为所述NFV管理域内的被管理对象。According to the notification information, the pre-trained basic data analysis model is trained to obtain the target data analysis model corresponding to the specified analysis topic, and the basic data analysis model is based on the configuration data of the network function virtualization NFV object. Obtained through training, the NFV object is a managed object in the NFV management domain.
  2. 根据权利要求1所述的方法,其特征在于,所述基本数据分析模型用于指示所述NFV对象的属性和所述NFV对象之间的关联关系。The method according to claim 1, wherein the basic data analysis model is used to indicate an attribute of the NFV object and an association relationship between the NFV object.
  3. 根据权利要求1所述的方法,其特征在于,所述方法还包括:The method according to claim 1, wherein the method further comprises:
    根据导入的所述NFV对象的描述符模板信息和/或所述NFV对象实例化后的镜像信息,对所述原始模型进行训练得到所述基本数据分析模型。According to the imported descriptor template information of the NFV object and/or the image information after the instantiation of the NFV object, the original model is trained to obtain the basic data analysis model.
  4. 根据权利要求3所述的方法,其特征在于,The method of claim 3, wherein:
    所述描述符模板信息包括网络服务描述符NSD模板信息和/或虚拟化网络功能描述符VNFD模板信息;和/或,The descriptor template information includes network service descriptor NSD template information and/or virtualized network function descriptor VNFD template information; and/or,
    所述镜像信息包括NS实例镜像信息和/或虚拟化网络功能VNF实例镜像信息。The image information includes NS instance image information and/or virtualized network function VNF instance image information.
  5. 根据权利要求4所述的方法,其特征在于,所述方法还包括:The method according to claim 4, wherein the method further comprises:
    在所述基本数据分析模型的训练过程中,建立所述NSD模板信息和所述NS的成员对象的描述符模板信息之间的关联关系。During the training process of the basic data analysis model, an association relationship between the NSD template information and the descriptor template information of the member objects of the NS is established.
  6. 根据权利要求4所述的方法,其特征在于,所述方法还包括:The method according to claim 4, wherein the method further comprises:
    在所述基本数据分析模型的训练过程中,建立所述NS实例镜像信息和所述NS实例的成员对象实例的镜像信息之间的关联关系。During the training process of the basic data analysis model, an association relationship is established between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance.
  7. 根据权利要求4所述的方法,其特征在于,所述方法还包括:The method according to claim 4, wherein the method further comprises:
    根据修改后的所述NS实例镜像信息和/或修改后的所述VNF实例镜像信息,对所述基本数据分析模型进行更新。The basic data analysis model is updated according to the modified image information of the NS instance and/or the modified image information of the VNF instance.
  8. 根据权利要求1至7任一所述的方法,其特征在于,所述方法还包括:The method according to any one of claims 1 to 7, wherein the method further comprises:
    将NS相关的性能数据和/或告警数据输入至与NS告警事件分析主题对应的所述目标数据分析模型中,输出得到第一分析结果,所述第一分析结果包括所述NS故障的根本告警和/或根本原因;或者,Input NS-related performance data and/or alarm data into the target data analysis model corresponding to the NS alarm event analysis theme, and output to obtain a first analysis result, where the first analysis result includes the fundamental alarm of the NS failure and/or root cause; or,
    将NS健康度分析所需的信息输入至与NS健康度分析主题对应的所述目标数据分析模型中,输出得到第二分析结果,所述第二分析结果包括所述NS的健康状态和所述健康状态对应的说明信息;或者,Input the information required for NS health degree analysis into the target data analysis model corresponding to the NS health degree analysis subject, and output a second analysis result, where the second analysis result includes the health state of the NS and the Description information corresponding to the health status; or,
    将NS资源利用率分析所需的信息输入至与NS资源利用率分析主题对应的所述目标数据分析模型中,输出得到第三分析结果,所述第三分析结果包括对所述NS的资源利用情况的指示。Input the information required for the NS resource utilization analysis into the target data analysis model corresponding to the NS resource utilization analysis theme, and output a third analysis result, where the third analysis result includes the resource utilization of the NS indication of the situation.
  9. 一种数据分析模型的训练装置,其特征在于,用于管理数据分析MDA实体中,所述装置包括:A training device for a data analysis model, characterized in that it is used to manage a data analysis MDA entity, the device comprising:
    接收单元,用于接收通知消息,所述通知消息携带有与网络服务NS相关的指定分析主题所需的信息;a receiving unit, configured to receive a notification message, the notification message carrying information required for a specified analysis topic related to the network service NS;
    处理单元,用于根据所述通知信息,对预先训练完成的基本数据分析模型进行训练得到所述指定分析主题对应的目标数据分析模型,所述基本数据分析模型是根据网络功能虚拟化NFV对象的配置数据对原始模型进行训练得到的,所述NFV对象为所述NFV管理域内的被管理对象。The processing unit is configured to train the pre-trained basic data analysis model according to the notification information to obtain the target data analysis model corresponding to the specified analysis topic, and the basic data analysis model is a virtualized NFV object according to the network function. The configuration data is obtained by training the original model, and the NFV object is a managed object in the NFV management domain.
  10. 根据权利要求9所述的装置,其特征在于,所述基本数据分析模型用于指示所述NFV对象的属性和所述NFV对象之间的关联关系。The apparatus according to claim 9, wherein the basic data analysis model is used to indicate an attribute of the NFV object and an association relationship between the NFV object.
  11. 根据权利要求9所述的装置,其特征在于,所述处理单元还用于:The apparatus according to claim 9, wherein the processing unit is further configured to:
    根据导入的所述NFV对象的描述符模板信息和/或所述NFV对象实例化后的镜像信息,对所述原始模型进行训练得到所述基本数据分析模型。According to the imported descriptor template information of the NFV object and/or the image information after the instantiation of the NFV object, the basic data analysis model is obtained by training the original model.
  12. 根据权利要求11所述的装置,其特征在于,The device of claim 11, wherein:
    所述描述符模板信息包括网络服务描述符NSD模板信息和/或虚拟化网络功能描述符VNFD模板信息;和/或,The descriptor template information includes network service descriptor NSD template information and/or virtualized network function descriptor VNFD template information; and/or,
    所述镜像信息包括NS实例镜像信息和/或虚拟化网络功能VNF实例镜像信息。The image information includes NS instance image information and/or virtualized network function VNF instance image information.
  13. 根据权利要求12所述的装置,其特征在于,所述处理单元还用于:The apparatus according to claim 12, wherein the processing unit is further configured to:
    在所述基本数据分析模型的训练过程中,建立所述NSD模板信息和所述NS的成员对象的描述符模板信息之间的关联关系。During the training process of the basic data analysis model, an association relationship between the NSD template information and the descriptor template information of the member objects of the NS is established.
  14. 根据权利要求12所述的装置,其特征在于,所述处理单元还用于:The apparatus according to claim 12, wherein the processing unit is further configured to:
    在所述基本数据分析模型的训练过程中,建立所述NS实例镜像信息和所述NS实例的成员对象实例的镜像信息之间的关联关系。During the training process of the basic data analysis model, an association relationship is established between the mirror information of the NS instance and the mirror information of the member object instances of the NS instance.
  15. 根据权利要求12所述的装置,其特征在于,所述处理单元还用于:The apparatus according to claim 12, wherein the processing unit is further configured to:
    根据修改后的所述NS实例镜像信息和/或修改后的所述VNF实例镜像信 息,对所述基本数据分析模型进行更新。The basic data analysis model is updated according to the modified NS instance image information and/or the modified VNF instance image information.
  16. 根据权利要求9至15任一所述的装置,其特征在于,所述处理单元还用于:The device according to any one of claims 9 to 15, wherein the processing unit is further configured to:
    将NS相关的性能数据和/或告警数据输入至与NS告警事件分析主题对应的所述目标数据分析模型中,输出得到第一分析结果,所述第一分析结果包括所述NS故障的根本告警和/或根本原因;或者,Input NS-related performance data and/or alarm data into the target data analysis model corresponding to the NS alarm event analysis theme, and output to obtain a first analysis result, where the first analysis result includes the fundamental alarm of the NS failure and/or root cause; or,
    将NS健康度分析所需的信息输入至与NS健康度分析主题对应的所述目标数据分析模型中,输出得到第二分析结果,所述第二分析结果包括所述NS的健康状态和所述健康状态对应的说明信息;或者,Input the information required for the NS health degree analysis into the target data analysis model corresponding to the NS health degree analysis subject, and output a second analysis result, where the second analysis result includes the health state of the NS and the Description information corresponding to the health status; or,
    将NS资源利用率分析所需的信息输入至与NS资源利用率分析主题对应的所述目标数据分析模型中,输出得到第三分析结果,所述第三分析结果包括对所述NS的资源利用情况的指示。Input the information required for NS resource utilization analysis into the target data analysis model corresponding to the NS resource utilization analysis theme, and output to obtain a third analysis result, where the third analysis result includes the resource utilization of the NS indication of the situation.
  17. 一种数据分析模型训练的装置,其特征在于,用于管理数据分析MDA实体中,所述装置包括:A device for data analysis model training, characterized in that it is used to manage a data analysis MDA entity, the device comprising:
    处理器;processor;
    用于存储处理器可执行指令的存储器;memory for storing processor-executable instructions;
    其中,所述处理器被配置为执行所述指令时实现权利要求1-8任意一项所述的方法。Wherein, the processor is configured to implement the method of any one of claims 1-8 when executing the instructions.
  18. 一种非易失性计算机可读存储介质,其上存储有计算机程序指令,其特征在于,所述计算机程序指令被处理器执行时实现权利要求1至8中任意一项所述的方法。A non-volatile computer-readable storage medium on which computer program instructions are stored, characterized in that, when the computer program instructions are executed by a processor, the method described in any one of claims 1 to 8 is implemented.
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