Javascript must be enabled to continue!
Cooperative Co-Evolution and MapReduce
View through CrossRef
Real-word large-scale optimisation problems often result in local optima due to their large search space and complex objective function. Hence, traditional evolutionary algorithms (EAs) are not suitable for these problems. Distributed EA, such as a cooperative co-evolutionary algorithm (CCEA), can solve these problems efficiently. It can decompose a large-scale problem into smaller sub-problems and evolve them independently. Further, the CCEA population diversity avoids local optima. Besides, MapReduce, an open-source platform, provides a ready-to-use distributed, scalable, and fault-tolerant infrastructure to parallelise the developed algorithm using the map and reduce features. The CCEA can be distributed and executed in parallel using the MapReduce model to solve large-scale optimisations in less computing time. The effectiveness of CCEA, together with the MapReduce, has been proven in the literature for large-scale optimisations. This article presents the cooperative co-evolution, MapReduce model, and associated techniques suitable for large-scale optimisation problems.
Title: Cooperative Co-Evolution and MapReduce
Description:
Real-word large-scale optimisation problems often result in local optima due to their large search space and complex objective function.
Hence, traditional evolutionary algorithms (EAs) are not suitable for these problems.
Distributed EA, such as a cooperative co-evolutionary algorithm (CCEA), can solve these problems efficiently.
It can decompose a large-scale problem into smaller sub-problems and evolve them independently.
Further, the CCEA population diversity avoids local optima.
Besides, MapReduce, an open-source platform, provides a ready-to-use distributed, scalable, and fault-tolerant infrastructure to parallelise the developed algorithm using the map and reduce features.
The CCEA can be distributed and executed in parallel using the MapReduce model to solve large-scale optimisations in less computing time.
The effectiveness of CCEA, together with the MapReduce, has been proven in the literature for large-scale optimisations.
This article presents the cooperative co-evolution, MapReduce model, and associated techniques suitable for large-scale optimisation problems.
Related Results
Multi-constraint scheduling of MapReduce workloads
Multi-constraint scheduling of MapReduce workloads
In recent years there has been an extraordinary growth of large-scale data processing and related technologies in both, industry and academic communities. This trend is mostly driv...
Optimizing data management for MapReduce applications on large-scale distributed infrastructures
Optimizing data management for MapReduce applications on large-scale distributed infrastructures
Optimisation de la gestion des données pour les applications MapReduce sur des infrastructures distribuées à grande échelle
Les applications data-intensive sont lar...
Improving MapReduce Performance on Clusters
Improving MapReduce Performance on Clusters
Amélioration des performances de MapReduce sur grappe de calcul
Beaucoup de disciplines scientifiques s'appuient désormais sur l'analyse et la fouille de masses gig...
Pembelajaran Matematika dengan Pendekatan Cooperative Learning Ditinjau dari Prestasi Belajar, Motivasi, dan Akhlak Mulia Siswa
Pembelajaran Matematika dengan Pendekatan Cooperative Learning Ditinjau dari Prestasi Belajar, Motivasi, dan Akhlak Mulia Siswa
Penelitian ini bertujuan untuk mendeskripsikan keefektifan pembelajaran matematika dengan pendekatan cooperative learning tipe Student Teams-Achievement Divisions (STAD) dan cooper...
Efficient parallel implementation of the SHRiMP sequence alignment tool using MapReduce
Efficient parallel implementation of the SHRiMP sequence alignment tool using MapReduce
With the advent of ultra high-throughput DNA sequencing technologies used in Next-Generation Sequencing (NGS) machines, we are facing a daunting new era in petabyte scale bioinform...
The Level of Member Satisfaction and Its Influence on Member Participation In The Rimbun Jaya 3 Producer Cooperative In Way Harong Village, Waylima District, Pesawaran Regency
The Level of Member Satisfaction and Its Influence on Member Participation In The Rimbun Jaya 3 Producer Cooperative In Way Harong Village, Waylima District, Pesawaran Regency
Cooperatives play a vital role in improving the welfare of their members by providing various economic benefits and promoting collective participation. Member satisfaction create...
OPTIMIZATION OF WORK LOAD USING MAP REDUCE FRAMEWORK: Review Study
OPTIMIZATION OF WORK LOAD USING MAP REDUCE FRAMEWORK: Review Study
The term Optimize is “to make perfect”. It’s means choosing the best element from some set of available alternatives. Within the past few years, organizations in diverse industries...
Developing a Program to Strengthen Cooperative Learning Management Competencies of University Lecturers in Nanning
Developing a Program to Strengthen Cooperative Learning Management Competencies of University Lecturers in Nanning
The objectives of this research were: 1) to explore existing situations, desirable situations, and the need to develop cooperative learning management competencies of university le...

