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Frédéric Pinel

Researcher at University of Luxembourg

Publications -  28
Citations -  284

Frédéric Pinel is an academic researcher from University of Luxembourg. The author has contributed to research in topics: Job shop scheduling & Scheduling (computing). The author has an hindex of 8, co-authored 28 publications receiving 257 citations. Previous affiliations of Frédéric Pinel include University of Cádiz.

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Journal ArticleDOI

Solving very large instances of the scheduling of independent tasks problem on the GPU

TL;DR: GraphCell improves state-of-the-art solutions, especially for larger problems, and it provides an alternative to the GPU Min-min heuristic when more accurate solutions are needed, at the expense of an increased runtime.
Journal ArticleDOI

A two-phase heuristic for the energy-efficient scheduling of independent tasks on computational grids

TL;DR: This convergence study suggests how additional energy reduction can be achieved by inserting low power computing nodes to the distributed computer system.
Proceedings ArticleDOI

A two-phase heuristic for the scheduling of independent tasks on computational grids

TL;DR: The sensitivity analysis of a cellular genetic algorithm with local search is used to design a new and simpler heuristic for the problem of scheduling independent tasks that improves the previously known Min-Min heuristic and provides schedules of similar quality to the reference cellular Genetic algorithm in a significantly reduced runtime.
Proceedings ArticleDOI

Memory-Aware Green Scheduling on Multi-core Processors

TL;DR: A memory-aware resource allocation algorithm that minimize energy consumption by reducing contention conflicts and maximizing performance is designed that includes in its objective function the impact of the contention on the application performance.
Proceedings ArticleDOI

Combining Machine Learning and Genetic Algorithms to Solve the Independent Tasks Scheduling Problem

TL;DR: Results show how initializing the population with VS significantly increases the accuracy of the PA-CGA, compared to two other population initialization techniques: random and using a state-of-the-art heuristic.