Semi-online Scheduling: A Survey
Debasis Dwibedy, Rakesh Mohanty

TL;DR
This survey reviews the development of semi-online scheduling algorithms, highlighting key results, techniques, and open problems in parallel machine models with additional information like job sizes and sequences.
Contribution
It provides a comprehensive, chronological overview of semi-online scheduling algorithms, their competitive analysis, and classification based on extra piece of information (EPI).
Findings
Summarizes 15 well-known semi-online algorithms.
Highlights key competitive analysis results over time.
Identifies open challenges and future research directions.
Abstract
In online scheduling, jobs are available one by one and each job must be scheduled irrevocably before the availability of the next job. Semi-online scheduling is a relaxed variant of online scheduling, where an additional memory in terms of buffer or an Extra Piece of Information(EPI) is provided along with input data. The EPI may include one or more of the parameter(s) such as size of the largest job, total size of all jobs, arrival sequence of the jobs, optimum makespan value or range of job's processing time. A semi-online scheduling algorithm was first introduced in 1997 by Kellerer et al. They envisioned semi-online scheduling as a practically significant model and obtained improved results for -identical machine setting. This paper surveys scholarly contributions in the design of semi-online scheduling algorithms in parallel machine models such as identical and uniformly…
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