10,029 research outputs found
Project scheduling under undertainty ā survey and research potentials.
The vast majority of the research efforts in project scheduling assume complete information about the scheduling problem to be solved and a static deterministic environment within which the pre-computed baseline schedule will be executed. However, in the real world, project activities are subject to considerable uncertainty, that is gradually resolved during project execution. In this survey we review the fundamental approaches for scheduling under uncertainty: reactive scheduling, stochastic project scheduling, stochastic GERT network scheduling, fuzzy project scheduling, robust (proactive) scheduling and sensitivity analysis. We discuss the potentials of these approaches for scheduling projects under uncertainty.Management; Project management; Robustness; Scheduling; Stability;
Scheduling Storms and Streams in the Cloud
Motivated by emerging big streaming data processing paradigms (e.g., Twitter
Storm, Streaming MapReduce), we investigate the problem of scheduling graphs
over a large cluster of servers. Each graph is a job, where nodes represent
compute tasks and edges indicate data-flows between these compute tasks. Jobs
(graphs) arrive randomly over time, and upon completion, leave the system. When
a job arrives, the scheduler needs to partition the graph and distribute it
over the servers to satisfy load balancing and cost considerations.
Specifically, neighboring compute tasks in the graph that are mapped to
different servers incur load on the network; thus a mapping of the jobs among
the servers incurs a cost that is proportional to the number of "broken edges".
We propose a low complexity randomized scheduling algorithm that, without
service preemptions, stabilizes the system with graph arrivals/departures; more
importantly, it allows a smooth trade-off between minimizing average
partitioning cost and average queue lengths. Interestingly, to avoid service
preemptions, our approach does not rely on a Gibbs sampler; instead, we show
that the corresponding limiting invariant measure has an interpretation
stemming from a loss system.Comment: 14 page
Taxonomic classification of planning decisions in health care: a review of the state of the art in OR/MS
We provide a structured overview of the typical decisions to be made in resource capacity planning and control in health care, and a review of relevant OR/MS articles for each planning decision. The contribution of this paper is twofold. First, to position the planning decisions, a taxonomy is presented. This taxonomy provides health care managers and OR/MS researchers with a method to identify, break down and classify planning and control decisions. Second, following the taxonomy, for six health care services, we provide an exhaustive specification of planning and control decisions in resource capacity planning and control. For each planning and control decision, we structurally review the key OR/MS articles and the OR/MS methods and techniques that are applied in the literature to support decision making
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