4.6 Article

Mutation-driven and population grouping PRO algorithm for scheduling budget-constrained workflows in the cloud

Related references

Note: Only part of the references are listed.
Article Computer Science, Information Systems

Weighted double deep Q-network based reinforcement learning for bi-objective multi-workflow scheduling in the cloud

Huifang Li et al.

Summary: This study proposes a reinforcement learning-based algorithm for scheduling multiple workflows to achieve near-optimal solutions in a short period with minimized cost and makespan. The algorithm enhances target value estimation accuracy by introducing an adaptive balancing method and dynamic sensing mechanism, while also utilizing specific agents and scheduling strategies.

CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS (2022)

Article Computer Science, Artificial Intelligence

Improved swarm search algorithm for scheduling budget-constrained workflows in the cloud

Huifang Li et al.

Summary: This paper proposes an improved search algorithm for workflow scheduling in cloud environments. The experimental results show that the proposed algorithm outperforms existing algorithms in terms of solution quality and constraint satisfiability, and can find near-optimal solutions that meet budget constraints in a short period of time.

SOFT COMPUTING (2022)

Article Automation & Control Systems

Scoring and Dynamic Hierarchy-Based NSGA-II for Multiobjective Workflow Scheduling in the Cloud

Huifang Li et al.

Summary: This work presents SDHN algorithm to optimize workflow scheduling and improve resource utilization and quality of service. By utilizing scoring and dynamic hierarchy, it effectively distinguishes different individuals and enhances search efficiency. Adaptive adjustment strategies ensure convergence to near-optimal solutions, and experimental results demonstrate its superiority over existing algorithms.

IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING (2022)

Article Automation & Control Systems

Endpoint Communication Contention-Aware Cloud Workflow Scheduling

Quanwang Wu et al.

Summary: Cloud platforms have become a popular execution environment for workflow applications, leading to high demand for effective scheduling strategies. This article proposes a new scheduling model, ELSH, which considers endpoint communication contention to minimize workflow makespan. Experimental results show that ELSH outperforms traditional algorithms in practice.

IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING (2022)

Article Automation & Control Systems

Self-adaptive Bat Algorithm With Genetic Operations

Jing Bi et al.

Summary: This work proposes an improved self-adaptive bat algorithm with genetic operations (SBAGO) that combines genetic algorithm (GA) and bat algorithm (BA) in a highly integrated way. SBAGO utilizes the search information of BA to perform GA's genetic operations, resulting in improved search performance. Experimental results show that SBAGO outperforms other algorithms in various metrics.

IEEE-CAA JOURNAL OF AUTOMATICA SINICA (2022)

Article Computer Science, Theory & Methods

Multi-Swarm Co-Evolution Based Hybrid Intelligent Optimization for Bi-Objective Multi-Workflow Scheduling in the Cloud

Huifang Li et al.

Summary: This paper proposes a Multi-swarm Co-evolution-based Hybrid Intelligent Optimization (MCHO) algorithm for multiple-workflow scheduling. The algorithm uses a multi-swarm co-evolutionary mechanism, incorporates local and global guiding information, and applies genetic algorithm and simulated annealing strategies to improve the scheduling performance.

IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS (2022)

Article Computer Science, Information Systems

Scheduling Real-Time Parallel Applications in Cloud to Minimize Energy Consumption

Biao Hu et al.

Summary: This article presents an energy-efficient scheduling algorithm to address the cost issue caused by energy consumption in cloud computing platforms. The algorithm optimizes the tradeoff between energy consumption and task execution time to meet real-time requirements.

IEEE TRANSACTIONS ON CLOUD COMPUTING (2022)

Article Computer Science, Artificial Intelligence

A new whale optimizer for workflow scheduling in cloud computing environment

Sounder Rajan Thennarasu et al.

Summary: This paper presents a new framework called whale optimizer algorithm (WOA), aiming to maximize work completion by mimicking the social behavior of humpback whales to meet QoS constraints. The proposed method outperforms other techniques and is applicable for real-time applications.

JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING (2021)

Article Computer Science, Information Systems

Energy-Optimized Partial Computation Offloading in Mobile-Edge Computing With Genetic Simulated-Annealing-Based Particle Swarm Optimization

Jing Bi et al.

Summary: This work proposes a partial computation offloading method to minimize total energy consumption by jointly optimizing task offloading ratio, CPU speeds, bandwidth allocation, and transmission power. The hybrid metaheuristic algorithm GSP achieves joint optimization of computation offloading between cloud data centers and the edge, showing lower energy consumption and faster convergence compared to typical peers in real-life based experiments.

IEEE INTERNET OF THINGS JOURNAL (2021)

Article Computer Science, Hardware & Architecture

PSO plus LOA: hybrid constrained optimization for scheduling scientific workflows in the cloud

Huifang Li et al.

Summary: The proposed hybrid optimization approach, PSO+LOA, aims to minimize the total execution time of scheduling workflows in the cloud under budget constraints. Experimental results show that in most cases, PSO+LOA outperforms existing algorithms, especially for large-scale applications.

JOURNAL OF SUPERCOMPUTING (2021)

Review Automation & Control Systems

A Review on Representative Swarm Intelligence Algorithms for Solving Optimization Problems: Applications and Trends

Jun Tang et al.

Summary: Swarm intelligence algorithms are a subset of artificial intelligence that has gained popularity for solving optimization problems and has been widely utilized in various applications. This review summarizes the most representative swarm intelligence algorithms and their successful applications in engineering fields, providing insights into future trends and prospects for development.

IEEE-CAA JOURNAL OF AUTOMATICA SINICA (2021)

Article Computer Science, Interdisciplinary Applications

Cost and makespan aware workflow scheduling in IaaS clouds using hybrid spider monkey optimization

Naela Rizvi et al.

Summary: In this paper, a Hybrid Spider Monkey Optimization (HSMO) algorithm is proposed for QoS constrained workflow scheduling in the cloud. The algorithm optimizes makespan and cost while meeting budget and deadline constraints, outperforming existing ABC, Bi-Criteria PSO, and BDSD algorithms.

SIMULATION MODELLING PRACTICE AND THEORY (2021)

Article Computer Science, Hardware & Architecture

The Security of Internet of Vehicles Network: Adversarial Examples for Trajectory Mode Detection

Jing Diu et al.

Summary: The increase in the number of vehicles in cities has led to traffic problems, prompting the emergence of Internet of Vehicles (IoV) to address these issues. However, deep learning in IoV is vulnerable to adversarial attacks, posing potential security threats.

IEEE NETWORK (2021)

Article Automation & Control Systems

A multi-layered gravitational search algorithm for function optimization and real-world problems

Yirui Wang et al.

Summary: The gravitational search algorithm (GSA) has been improved with a multi-layered structure called MLGSA, which significantly enhances search performance through hierarchical interactions. MLGSA outperforms existing GSA variants on CEC2017 test functions and real-world optimization problems from CEC2011.

IEEE-CAA JOURNAL OF AUTOMATICA SINICA (2021)

Article Computer Science, Artificial Intelligence

Improved chaotic binary grey wolf optimization algorithm for workflow scheduling in green cloud computing

Ali Mohammadzadeh et al.

Summary: This study proposed an improved version of the grey wolf optimization algorithm, IGWO, to solve workflow scheduling problems in cloud computing. By integrating hill-climbing and chaos theory, the algorithm achieves faster convergence and prevents falling into local optima. Through simulations using CloudSim, the proposed scheme outperforms other scheduling methods in terms of metrics such as power consumption, cost, and makespan.

EVOLUTIONARY INTELLIGENCE (2021)

Article Automation & Control Systems

MOELS: Multiobjective Evolutionary List Scheduling for Cloud Workflows

Quanwang Wu et al.

IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING (2020)

Article Computer Science, Information Systems

A scheduling scheme in the cloud computing environment using deep Q-learning

Zhao Tong et al.

INFORMATION SCIENCES (2020)

Article Computer Science, Information Systems

Budget aware scheduling algorithm for workflow applications in IaaS clouds

K. Chakravarthi et al.

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

Article Automation & Control Systems

Nei-TTE: Intelligent Traffic Time Estimation Based on Fine-Grained Time Derivation of Road Segments for Smart City

Jing Qiu et al.

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS (2020)

Article Computer Science, Theory & Methods

GRP-HEFT: A Budget-Constrained Resource Provisioning Scheme for Workflow Scheduling in IaaS Clouds

Hamid Reza Faragardi et al.

IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS (2020)

Article Computer Science, Artificial Intelligence

A hybrid genetic algorithm for scientific workflow scheduling in cloud environment

Hatem Aziza et al.

NEURAL COMPUTING & APPLICATIONS (2020)

Article Engineering, Electrical & Electronic

Artificial Intelligence Security in 5G Networks: Adversarial Examples for Estimating a Travel Time Task

Jing Qiu et al.

IEEE VEHICULAR TECHNOLOGY MAGAZINE (2020)

Proceedings Paper Computer Science, Hardware & Architecture

Design of a Scheduling Approach for Budget-Deadline Constrained Applications in Heterogeneous Clouds

Naela Rizvi et al.

DISTRIBUTED COMPUTING AND INTERNET TECHNOLOGY (ICDCIT 2020) (2020)

Article Computer Science, Theory & Methods

Budget and Deadline Aware e-Science Workflow Scheduling in Clouds

Vahid Arabnejad et al.

IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS (2019)

Article Automation & Control Systems

Multiobjective Cloud Workflow Scheduling: A Multiple Populations Ant Colony System Approach

Zong-Gan Chen et al.

IEEE TRANSACTIONS ON CYBERNETICS (2019)

Article Automation & Control Systems

Poor and rich optimization algorithm: A new human-based and multi populations algorithm

Seyyed Hamid Samareh Moosavi et al.

ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE (2019)

Article Computer Science, Information Systems

A Workflow Management System for Scalable Data Mining on Clouds

Fabrizio Marozzo et al.

IEEE TRANSACTIONS ON SERVICES COMPUTING (2018)

Article Computer Science, Information Systems

A Cost-Effective Deadline-Constrained Dynamic Scheduling Algorithm for Scientific Workflows in a Cloud Environment

Jyoti Sahni et al.

IEEE TRANSACTIONS ON CLOUD COMPUTING (2018)

Article Computer Science, Information Systems

Fluctuation-Aware and Predictive Workflow Scheduling in Cost-Effective Infrastructure-as-a-Service Clouds

Weiling Li et al.

IEEE ACCESS (2018)

Article Computer Science, Theory & Methods

Low-time complexity budget-deadline constrained workflow scheduling on heterogeneous resources

Hamid Arabnejad et al.

FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE (2016)

Article Computer Science, Information Systems

Adaptive Workflow Scheduling on Cloud Computing Platforms with Iterative Ordinal Optimization

Fan Zhang et al.

IEEE TRANSACTIONS ON CLOUD COMPUTING (2015)

Article Computer Science, Information Systems

Deadline Based Resource Provisioning and Scheduling Algorithm for Scientific Workflows on Clouds

Maria Alejandra Rodriguez et al.

IEEE TRANSACTIONS ON CLOUD COMPUTING (2014)

Article Computer Science, Interdisciplinary Applications

Multi-operator based evolutionary algorithms for solving constrained optimization problems

Saber M. Elsayed et al.

COMPUTERS & OPERATIONS RESEARCH (2011)

Article Computer Science, Information Systems

GSA: A Gravitational Search Algorithm

Esmat Rashedi et al.

INFORMATION SCIENCES (2009)