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On Multidimensional Packing Problems
Author(s) -
Chandra Chekuri,
Sanjeev Khanna
Publication year - 2004
Publication title -
siam journal on computing
Language(s) - English
Resource type - Book series
SCImago Journal Rank - 1.533
H-Index - 122
eISSN - 1095-7111
pISSN - 0097-5397
ISBN - 0-89871-434-6
DOI - 10.1137/s0097539799356265
Subject(s) - bin packing problem , multiprocessor scheduling , knapsack problem , mathematical optimization , scheduling (production processes) , packing problems , set packing , mathematics , job shop scheduling , schedule , bounded function , computer science , cutting stock problem , integer programming , bin , algorithm , optimization problem , flow shop scheduling , mathematical analysis , set (abstract data type) , programming language , operating system
We study the approximability of multidimensional generalizations of three classical packing problems: multiprocessor scheduling, bin packing, and the knapsack problem. Specifically, we study the vector scheduling problem, its dual problem, namely, the vector bin packing problem, and a class of packing integer programs. The vector scheduling problem is to schedule n d-dimensional tasks on m machines such that the maximum load over all dimensions and all machines is minimized. The vector bin packing problem, on the other hand, seeks to minimize the number of bins needed to schedule all n tasks such that the maximum load on any dimension across all bins is bounded by a fixed quantity, say, 1. Such problems naturally arise when scheduling tasks that have multiple resource requirements. Finally, packing integer programs capture a core problem that directly relates to both vector scheduling and vector bin packing, namely, the problem of packing a maximum number of vectors in a single bin of unit height. We obtain a variety of new algorithmic as well as inapproximability results for these three problems.

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