Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Workflow Scheduling Based on Mobile Cloud Computing Machine Learning

View through CrossRef
In recent years, cloud workflow task scheduling has always been an important research topic in the business world. Cloud workflow task scheduling means that the workflow tasks submitted by users are allocated to appropriate computing resources for execution, and the corresponding fees are paid in real time according to the usage of resources. For most ordinary users, they are mainly concerned with the two service quality indicators of workflow task completion time and execution cost. Therefore, how cloud service providers design a scheduling algorithm to optimize task completion time and cost is a very important issue. This paper proposes research on workflow scheduling based on mobile cloud computing machine learning, and this paper conducts research by using literature research methods, experimental analysis methods, and other methods. This article has deeply studied mobile cloud computing, machine learning, task scheduling, and other related theories, and a workflow task scheduling system model was established based on mobile cloud computing machine learning from different algorithms used in processing task completion time, task service costs, task scheduling, and resource usage The situation and the influence of different tasks on the experimental results are analyzed in many aspects. The algorithm in this paper speeds up the scheduling time by about 7% under a different number of tasks and reduces the scheduling cost by about 2% compared with other algorithms. The algorithm in this paper has been obviously optimized in time scheduling and task scheduling.
Title: Workflow Scheduling Based on Mobile Cloud Computing Machine Learning
Description:
In recent years, cloud workflow task scheduling has always been an important research topic in the business world.
Cloud workflow task scheduling means that the workflow tasks submitted by users are allocated to appropriate computing resources for execution, and the corresponding fees are paid in real time according to the usage of resources.
For most ordinary users, they are mainly concerned with the two service quality indicators of workflow task completion time and execution cost.
Therefore, how cloud service providers design a scheduling algorithm to optimize task completion time and cost is a very important issue.
This paper proposes research on workflow scheduling based on mobile cloud computing machine learning, and this paper conducts research by using literature research methods, experimental analysis methods, and other methods.
This article has deeply studied mobile cloud computing, machine learning, task scheduling, and other related theories, and a workflow task scheduling system model was established based on mobile cloud computing machine learning from different algorithms used in processing task completion time, task service costs, task scheduling, and resource usage The situation and the influence of different tasks on the experimental results are analyzed in many aspects.
The algorithm in this paper speeds up the scheduling time by about 7% under a different number of tasks and reduces the scheduling cost by about 2% compared with other algorithms.
The algorithm in this paper has been obviously optimized in time scheduling and task scheduling.

Related Results

CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
“Cloud Computing – Navigating the Digital Sky” is an extensive guide designed to provide a thorough understanding of cloud computing, an essential technology in today’s digital age...
EDQWS: an enhanced divide and conquer algorithm for workflow scheduling in cloud
EDQWS: an enhanced divide and conquer algorithm for workflow scheduling in cloud
AbstractA workflow is an effective way for modeling complex applications and serves as a means for scientists and researchers to better understand the details of applications. Clou...
Scheduling under Open stack – The Current State and Future Enhancements
Scheduling under Open stack – The Current State and Future Enhancements
Cloud computing is being heavily used for implementing different kinds of applications. Many of the client applications are being migrated to cloud for the reasons of cost and e...
THE ROLE OF CLOUD COMPUTING IN SCALING E-COMMERCE BUSINESSES
THE ROLE OF CLOUD COMPUTING IN SCALING E-COMMERCE BUSINESSES
In the rapidly evolving digital landscape, e-commerce has emerged as a cornerstone of global trade, necessitating robust, scalable solutions to accommodate increasing consumer dema...
THE IMPACT OF CLOUD COMPUTING ON CONSTRUCTION PROJECT DELIVERY ABUJA NIGERIA
THE IMPACT OF CLOUD COMPUTING ON CONSTRUCTION PROJECT DELIVERY ABUJA NIGERIA
Cloud computing is the delivery of computing services, such as storage, processing power, and software applications, via the internet. Cloud computing offers various advantages and...
Hybrid Cloud Scheduling Method for Cloud Bursting
Hybrid Cloud Scheduling Method for Cloud Bursting
In the paper, we consider the hybrid cloud model used for cloud bursting, when the computational capacity of the private cloud provider is insufficient to deal with the peak number...
Mobile phone usage for m‐learning: comparing heavy and light mobile phone users
Mobile phone usage for m‐learning: comparing heavy and light mobile phone users
PurposeMobile technologies offer the opportunity to embed learning in a natural environment. The objective of the study is to examine how the usage of mobile phones for m‐learning ...
Learning Approaches to Dynamic Workflow Scheduling based on Genetic Programming and Deep Reinforcement Learning
Learning Approaches to Dynamic Workflow Scheduling based on Genetic Programming and Deep Reinforcement Learning
<p><strong>Dynamic workflow scheduling (DWS) in cloud computing is a critical yet challenging problem, involving assigning numerous workflow tasks to heterogeneous virt...

Back to Top