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Linear Relaxation Techniques for Task Management in Uncertain Settings

机译:不确定环境下任务管理的线性松弛技术

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In this paper, we consider the problem of assisting a busy user in managing her workload of pending tasks. We assume that our user is typically oversubscribed, and is invariably juggling multiple concurrent streams of tasks (or work flows) of varying importance and urgency. There is uncertainty with respect to the duration of a pending task as well as the amount of follow-on work that may be generated as a result of executing the task. The user's goal is to be as productive as possible; i.e., to execute tasks that realize the maximum cumulative payoff. This is achieved by enabling the assistant to provide advice about where and how to shed load when all tasks cannot be done.rnA simple temporal problem with uncertainty and preferences (called an STPPU) provides a natural framework for representing the user's current set of tasks. However, current STPPU solution techniques are inadequate as a basis for generating advice in this context, since they are applicable only in the restrictive case where all pending tasks can be accomplished within time constraints and our principal concern is support in oversubscribed circumstances. We present two techniques that are based on linear relaxation for solving the this oversubscribed problem. Given an ordering of tasks, these algorithms identify which tasks to ignore, which to compress and by how much, to maximize quality. We show experimentally that our approaches perform significantly better than techniques adapted from prior research in oversubscribed scheduling.
机译:在本文中,我们考虑了协助忙碌的用户管理其待处理任务的工作量的问题。我们假设我们的用户通常被超额认购,并且总是在兼顾重要性和紧迫性不同的多个并发任务(或工作流程)流。关于待执行任务的持续时间以及由于执行任务而可能产生的后续工作的数量存在不确定性。用户的目标是尽可能提高生产力;即执行能够实现最大累积收益的任务。这是通过使助手能够在无法完成所有任务时提供有关在何处以及如何减轻负载的建议来实现的。具有不确定性和偏好的简单时间问题(称为STPPU)为代表用户当前的任务集提供了自然的框架。但是,当前的STPPU解决方案技术不足以在此情况下生成建议,因为它们仅适用于在所有情况下都可以在时间限制内完成且我们主要关注的是在超额预定情况下提供支持的限制性情况下。我们提出了两种基于线性松弛的技术来解决此超额订购的问题。给定任务的顺序,这些算法可以识别要忽略的任务,要压缩的任务以及压缩的数量,以最大程度地提高质量。我们通过实验表明,我们的方法在超额预定计划方面的性能明显优于先前研究的技术。

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