Abnormity detection early warning method and system
An anomaly detection and model technology, applied in the field of information processing, can solve problems such as poor versatility, false positives and false negatives, and achieve the effects of reducing detection delays, good versatility, and reducing the rule configuration process
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Embodiment 1
[0059] An anomaly detection and early warning method, which is used to monitor whether the index data of business indicators is abnormal. The anomaly detection and early warning method adopts a client 1, a monitoring platform 2, an offline model training module 3, a distributed file system 4, and a distributed message queue system 5 and distributed stream processing system 6 to achieve, figure 1 A schematic diagram of the anomaly detection and early warning method is shown, and the anomaly detection and early warning method includes:
[0060] The client 1 configures the monitored service indicators on the monitoring platform 2, and the monitoring platform 2 stores the configuration information of the service indicators in the database 7; wherein, the monitoring platform 2 can be run on the client software system on terminal 1;
[0061] The monitoring platform 2 triggers the offline model training module 3, the offline model training module 3 trains the model offline and uploa...
Embodiment 2
[0068] This embodiment is a further refinement of Embodiment 1, which provides the specific process of offline model training of the offline model training module 3 . figure 2 A flow chart of the offline model training module 3 offline training model described in this embodiment is shown, including the following steps:
[0069] Step 31: Collect historical data curves of the service indicators, where the historical data curves include historical indicator data values of the service indicators at different times. The historical data curve is used as a sample data set for subsequent training models. The historical data curve can come from various sources, such as the public data set provided by the operation and maintenance platform, or monitoring the enterprise's own data.
[0070] Step 32: Perform preprocessing on the historical data curve to obtain a curve with complete data and / or no abnormal value. The historical data curve is essentially a time series. Considering the ...
Embodiment 3
[0128] This embodiment provides an anomaly detection and early warning system. The abnormal detection and early warning system includes the client 1, the monitoring platform 2, the offline model training module 3, the distributed file system 4, the distributed message queue system 5 and the distributed stream processing system 6 in the first embodiment.
[0129] The client 1 is used to configure monitored service indicators on the monitoring platform 2;
[0130] The monitoring platform 2 is used to store configuration information of the service indicators in a database;
[0131] The monitoring platform 2 is also used to trigger the offline model training module 3;
[0132] The offline model training module 3 is used for offline training model and uploads the trained model to the distributed file system 4, and the model is used to predict the monitoring index;
[0133] The client 1 is also used to push the index data of the business index to the distributed message queue syst...
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