Complexity of Scheduling Few Types of Jobs on Related and Unrelated Machines
September 24, 2020 Β· Declared Dead Β· π Journal of Scheduling
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Authors
Martin KouteckΓ½, Johannes Zink
arXiv ID
2009.11840
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CC,
math.OC
Citations
12
Venue
Journal of Scheduling
Last Checked
3 months ago
Abstract
The task of scheduling jobs to machines while minimizing the total makespan, the sum of weighted completion times, or a norm of the load vector, are among the oldest and most fundamental tasks in combinatorial optimization. Since all of these problems are in general NP-hard, much attention has been given to the regime where there is only a small number $k$ of job types, but possibly the number of jobs $n$ is large; this is the few job types, high-multiplicity regime. Despite many positive results, the hardness boundary of this regime was not understood until now. We show that makespan minimization on uniformly related machines ($Q|HM|C_{\max}$) is NP-hard already with $6$ job types, and that the related Cutting Stock problem is NP-hard already with $8$ item types. For the more general unrelated machines model ($R|HM|C_{\max}$), we show that if either the largest job size $p_{\max}$, or the number of jobs $n$ are polynomially bounded in the instance size $|I|$, there are algorithms with complexity $|I|^{\textrm{poly}(k)}$. Our main result is that this is unlikely to be improved, because $Q||C_{\max}$ is W[1]-hard parameterized by $k$ already when $n$, $p_{\max}$, and the numbers describing the speeds are polynomial in $|I|$; the same holds for $R|HM|C_{\max}$ (without speeds) when the job sizes matrix has rank $2$. Our positive and negative results also extend to the objectives $\ell_2$-norm minimization of the load vector and, partially, sum of weighted completion times $\sum w_j C_j$. Along the way, we answer affirmatively the question whether makespan minimization on identical machines ($P||C_{\max}$) is fixed-parameter tractable parameterized by $k$, extending our understanding of this fundamental problem. Together with our hardness results for $Q||C_{\max}$ this implies that the complexity of $P|HM|C_{\max}$ is the only remaining open case.
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