Approximate and Robust Bounded Job Start Scheduling for Royal Mail Delivery Offices
Dimitrios Letsios, Jeremy T. Bradley, Suraj G, Ruth Misener, Natasha, Page

TL;DR
This paper studies a complex mail delivery scheduling problem, proposing approximation algorithms and robust optimization methods, with practical validation on Royal Mail data, to improve scheduling efficiency under various constraints.
Contribution
It introduces new approximation algorithms for bounded job start scheduling, analyzes their performance, and develops a robust optimization approach for uncertain processing times, validated on real Royal Mail data.
Findings
LPT algorithm is 2-approximate for perfect knowledge.
Improved approximation ratios for specific job classes.
Machine augmentation enhances schedule robustness under uncertainty.
Abstract
Motivated by mail delivery scheduling problems arising in Royal Mail, we study a generalization of the fundamental makespan scheduling P||Cmax problem which we call the bounded job start scheduling problem. Given a set of jobs, each specified by an integer processing time p_j, that have to be executed non-preemptively by a set of m parallel identical machines, the objective is to compute a minimum makespan schedule subject to an upper bound g<=m on the number of jobs that may simultaneously begin per unit of time. With perfect input knowledge, we show that Longest Processing Time First (LPT) algorithm is tightly 2-approximate. After proving that the problem is strongly NP-hard even when g=1, we elaborate on improving the 2-approximation ratio for this case. We distinguish the classes of long and short instances satisfying p_j>=m and p_j<m, respectively, for each job j. We show that LPT…
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