4.5 Article

Slack extender mechanism for greening dependent-tasks scheduling on DVFS-enabled computing platforms

Related references

Note: Only part of the references are listed.
Article Computer Science, Artificial Intelligence

An adaptive fault detector strategy for scientific workflow scheduling based on improved differential evolution algorithm in cloud

Mani Alaei et al.

Summary: The research aims to develop an adaptive fault detection strategy based on the Improved Differential Evolution algorithm in cloud computing to minimize energy consumption, makespan, total cost, and tolerate faults while scheduling scientific workflows. The proposed method utilizes an adaptive network-based fuzzy inference system prediction model to proactively control resource load fluctuation and applies a reactive fault tolerance technique for processor failures. Experimental results showed significant improvements in scheduling performance, fault tolerance, makespan, energy consumption, task fault ratio, and total cost compared to existing techniques.

APPLIED SOFT COMPUTING (2021)

Article Computer Science, Information Systems

Energy-aware scheduling using slack reclamation for cluster systems

Ashish Kumar Maurya et al.

CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS (2020)

Article Computer Science, Theory & Methods

A smart energy and reliability aware scheduling algorithm for workflow execution in DVFS-enabled cloud environment

Hadeer A. Hassan et al.

FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE (2020)

Article Computer Science, Hardware & Architecture

Toward energy-efficient cloud computing: a survey of dynamic power management and heuristics-based optimization techniques

Nagma Khattar et al.

JOURNAL OF SUPERCOMPUTING (2019)

Article Computer Science, Artificial Intelligence

EATSDCD: A green energy-aware scheduling algorithm for parallel task-based application using clustering, duplication and DVFS technique in cloud datacenters

Behnam Barzegar et al.

JOURNAL OF INTELLIGENT & FUZZY SYSTEMS (2019)

Article Computer Science, Theory & Methods

An energy-efficient, QoS-aware and cost-effective scheduling approach for real-time workflow applications in cloud computing systems utilizing DVFS and approximate computations

Georgios L. Stavrinides et al.

FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE (2019)

Article Computer Science, Theory & Methods

Minimizing energy consumption with reliability goal on heterogeneous embedded systems

Hongzhi Xu et al.

JOURNAL OF PARALLEL AND DISTRIBUTED COMPUTING (2019)

Article Computer Science, Information Systems

An Efficient Fault-Tolerant Scheduling Approach with Energy Minimization for Hard Real-Time Embedded Systems

Barkahoum Kada et al.

CYBERNETICS AND INFORMATION TECHNOLOGIES (2019)

Article Computer Science, Theory & Methods

Dynamic energy-aware scheduling for parallel task-based application in cloud computing

Fredy Juarez et al.

FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE (2018)

Article Computer Science, Hardware & Architecture

Soft error-aware energy-efficient task scheduling for workflow applications in DVFS-enabled cloud

Tingming Wu et al.

JOURNAL OF SYSTEMS ARCHITECTURE (2018)

Article Computer Science, Interdisciplinary Applications

Energy-aware scheduling algorithm for time-constrained workflow tasks in DVFS-enabled cloud environment

Monire Safari et al.

SIMULATION MODELLING PRACTICE AND THEORY (2018)

Article Computer Science, Hardware & Architecture

PL-DVFS: combining Power-aware List-based scheduling algorithm with DVFS technique for real-time tasks in Cloud Computing

Monireh Safari et al.

JOURNAL OF SUPERCOMPUTING (2018)

Proceedings Paper Computer Science, Theory & Methods

Energy-Aware Scheduling of Real-Time Workflow Applications in Clouds Utilizing DVFS and Approximate Computations

Georgios L. Stavrinides et al.

2018 IEEE 6TH INTERNATIONAL CONFERENCE ON FUTURE INTERNET OF THINGS AND CLOUD (FICLOUD 2018) (2018)

Article Computer Science, Theory & Methods

Slack allocation algorithm for energy minimization in cluster systems

Yikun Hu et al.

FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE (2017)

Article Computer Science, Theory & Methods

Energy-Efficient Scheduling Algorithms for Real-Time Parallel Applications on Heterogeneous Distributed Embedded Systems

Guoqi Xie et al.

IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS (2017)

Article Computer Science, Information Systems

Time and Energy Optimization Algorithms for the Static Scheduling of Multiple Workflows in Heterogeneous Computing System

Junqiang Jiang et al.

JOURNAL OF GRID COMPUTING (2017)

Article Computer Science, Theory & Methods

Lower-bound complexity algorithm for task scheduling on heterogeneous grid

Asmaa Atef et al.

COMPUTING (2017)

Proceedings Paper Computer Science, Hardware & Architecture

Executing Large Scale Scientific Workflow Ensembles in Public Clouds

Qingye Jiang et al.

2015 44TH INTERNATIONAL CONFERENCE ON PARALLEL PROCESSING (ICPP) (2015)

Proceedings Paper Computer Science, Hardware & Architecture

An Efficient Energy Scheduling Algorithm for Workflow Tasks in Hybrids and DVFS-enabled Cloud Environment

Zhuo Tang et al.

2014 SIXTH INTERNATIONAL SYMPOSIUM ON PARALLEL ARCHITECTURES, ALGORITHMS AND PROGRAMMING (PAAP) (2014)

Article Computer Science, Theory & Methods

Energy-aware parallel task scheduling in a cluster

Lizhe Wang et al.

FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE (2013)

Article Computer Science, Hardware & Architecture

EAD and PEBD: Two Energy-Aware Duplication Scheduling Algorithms for Parallel Tasks on Homogeneous Clusters

Ziliang Zong et al.

IEEE TRANSACTIONS ON COMPUTERS (2011)

Article Computer Science, Theory & Methods

Some observations on optimal frequency selection in DVFS-based energy consumption minimization

Nikzad Babaii Rizvandi et al.

JOURNAL OF PARALLEL AND DISTRIBUTED COMPUTING (2011)

Article Computer Science, Theory & Methods

A high performance, low complexity algorithm for compile-time task scheduling in heterogeneous systems

T Hagras et al.

PARALLEL COMPUTING (2005)