Parallel/Distributed Tabu Search for Scheduling Microprocessor Tasks in Hybrid Flowshop
By: Adam Janiak, Damian Kowalczyk, Maciej Lichtenstein
Potential Business Impact:
Makes factory jobs finish faster using smart computer rules.
The paper deals with the makespan minimization in the hybrid flow shop scheduling problem with multiprocessor tasks. The hybrid flow shop (HFS) generalizes the classical flow shop processor configuration by replacing each processor (processing stage) by some number of identical parallel processors. Similarly, the multiprocessor tasks generalize the classical assumption, by allowing a task to require more than one processor simultaneously for its processing. In this work we present the algorithm for solving the problem based on the tabu search technique. The proposed algorithm uses parallel and distributed mechanisms for neighborhood evaluation and well balances heterogeneous network environment.
Similar Papers
Optimal Multi-Constrained Workflow Scheduling for Cyber-Physical Systems in the Edge-Cloud Continuum
Networking and Internet Architecture
Makes smart devices work faster together.
Byzantine-Resilient Distributed Computation via Task Replication and Local Computations
Information Theory
Makes computers work together even with bad helpers.
Designing Co-operation in Systems of Hierarchical, Multi-objective Schedulers for Stream Processing
Distributed, Parallel, and Cluster Computing
Lets computers handle huge data faster.