首页> 外国专利> CAUSAL ATTENTION-BASED MULTI-STREAM RNN FOR COMPUTER SYSTEM METRIC PREDICTION AND INFLUENTIAL EVENTS IDENTIFICATION BASED ON METRIC AND EVENT LOGS

CAUSAL ATTENTION-BASED MULTI-STREAM RNN FOR COMPUTER SYSTEM METRIC PREDICTION AND INFLUENTIAL EVENTS IDENTIFICATION BASED ON METRIC AND EVENT LOGS

机译:基于因果注意的多流RNN用于计算机系统度量预测和基于度量和事件日志的影响事件识别

摘要

A method for system metric prediction and influential events identification by concurrently employing metric logs and event logs is presented. The method includes concurrently modeling multivariate metric series and individual events in event series by a multi-stream recurrent neural network (RNN) to improve prediction of future metrics, where the multi-stream RNN includes a series of RNNs, one RNN for each metric and one RNN for each event sequence and modeling causality relations between the multivariate metric series and the individual events in the event series by employing an attention mechanism to identify target events most responsible for fluctuations of one or more target metrics.
机译:提出了一种同时使用度量日志和事件日志进行系统度量预测和影响事件识别的方法。该方法包括通过多流递归神经网络(RNN)对多变量度量序列和事件序列中的单个事件进行并行建模,以改进对未来度量的预测,其中多流RNN包括一系列RNN,每个指标对应一个RNN,每个事件序列对应一个RNN,并通过使用注意机制识别对一个或多个目标指标波动最负责的目标事件,对多变量指标序列和事件序列中的单个事件之间的因果关系建模。

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