首页> 外国专利> Perform preemptive identification and reduction of risk of failure in computational systems by training a machine learning module

Perform preemptive identification and reduction of risk of failure in computational systems by training a machine learning module

机译:通过培训机器学习模块来执行抢先识别和降低计算系统中的失败风险

摘要

A machine learning module is trained by receiving inputs comprising attributes of a computing environment, where the attributes affect a likelihood of failure in the computing environment. In response to an event occurring in the computing environment, a risk score that indicates a predicted likelihood of failure in the computing environment is generated via forward propagation through a plurality of layers of the machine learning module. A margin of error is calculated based on comparing the generated risk score to an expected risk score, where the expected risk score indicates an expected likelihood of failure in the computing environment corresponding to the event. An adjustment is made of weights of links that interconnect nodes of the plurality of layers via back propagation to reduce the margin of error, to improve the predicted likelihood of failure in the computing environment.
机译:通过接收包含计算环境的属性的输入来训练机器学习模块,其中属性会影响计算环境中的失败的可能性。 响应于计算环境中发生的事件,通过前向传播通过机器学习模块的多个层来生成指示计算环境中的预测失败可能性的风险评分。 基于将生成的风险分数与预期风险评分进行比较,其中预期风险评分的预期风险评分指示对应于事件的计算环境中的预期可能性的预期风险分数的余量。 调整由链路的权重由反向传播互连多个层的节点以降低误差的余量,以改善计算环境中的预测失败的可能性。

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