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Predicting Time-To-Finish of a Workflow Using Deep Neural Network With Biangular Activation Functions

机译:使用具有双向激活功能的深度神经网络预测工作流程的完成时间

摘要

Techniques are provided for predicting a time-to-finish of at least one workflow in a shared computing environment using a deep neural network with a biangular activation function. An exemplary method comprises: obtaining a specification of an executing workflow of multiple concurrent workflows in a shared computing environment, wherein the specification comprises states of past executions of the executing workflow; obtaining a trained deep neural network, wherein the trained deep neural network is trained to predict one or more future states of the executing workflow using the states of past executions and wherein the trained deep neural network employs a biangular activation function comprising multiple parameters that define a position and a slope associated with two angles of the biangular activation function for a range of input values; and estimating, using the at least one trained deep neural network, a time-to-finish of the executing workflow of the multiple concurrent workflows.
机译:提供了使用具有双角激活功能的深度神经网络来预测共享计算环境中至少一个工作流程完成时间的技术。一种示例性方法包括:获得共享计算环境中多个并发工作流的正在执行的工作流的规范,其中,所述规范包括正在执行的工作流的过去执行的状态;以及获得训练有素的深度神经网络,其中训练有素的深度神经网络使用过去执行的状态来预测执行工作流的一个或多个未来状态,并且其中训练有素的深度神经网络采用包含多个参数的双角激活函数,这些函数定义了对于一系列输入值,与双角激活函数的两个角度相关的位置和斜率;使用至少一个训练有素的深度神经网络,估计多个并发工作流中正在执行的工作流的完成时间。

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