首页> 外国专利> USING MACHINE-LEARNING METHODS TO FACILITATE EXPERIMENTAL EVALUATION OF MODIFICATIONS TO A COMPUTATIONAL ENVIRONMENT WITHIN A DISTRIBUTED SYSTEM

USING MACHINE-LEARNING METHODS TO FACILITATE EXPERIMENTAL EVALUATION OF MODIFICATIONS TO A COMPUTATIONAL ENVIRONMENT WITHIN A DISTRIBUTED SYSTEM

机译:使用机器学习方法促进对分布式系统内的计算环境的修改实验评估

摘要

The present disclosure provides an experimentation framework for a computational environment in a distributed system. A machine-learning model may be created that predicts at least one output produced by the computational environment based on at least one input provided to the computational environment. During an evaluation time period that is subsequent to at least one modification being made to the computational environment, at least one modified output produced by the computational environment may be determined. The machine-learning model may be used to calculate at least one predicted output that would have been produced by the computational environment during the evaluation time period if the at least one modification had not been made. A determination may also be made about how the at least one modification affected the computational environment based on a comparison of the at least one modified output and the at least one predicted output.
机译:本公开提供了一种用于分布式系统中的计算环境的实验框架。可以创建一种机器学习模型,其基于提供给计算环境的至少一个输入预测由计算环境产生的至少一个输出。在对计算环境的至少一个修改之后的评估时间段期间,可以确定由计算环境产生的至少一个修改的输出。如果未进行至少一个修改,则机器学习模型可用于计算在评估时间段期间通过计算环境产生的至少一个预测输出。还可以根据至少一个修改如何基于至少一个修改的输出和至少一个预测输出的比较来影响所述至少一个修改如何影响计算环境。

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