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

An Advanced Cloud Data Streaming Framework for Optimized Container Resource Allocation, Job Scheduling, And Security Enhancement

View through CrossRef
In the realm of cloud data streaming, the central concerns are Container resource allocation and job scheduling. Cloud infrastructure relies on container virtualization to facilitate construction and migration processes. Previous models have employed migration techniques to manage cloud container allocation and resource scheduling, but these come at the cost of increased response time and network traffic. To address these challenges, a novel approach is introduced, the Reduced Optimal Migration model (ROM). This model selectively triggers migration processes based on recommendations, optimizing resource allocation through a Machine Learning (ML) Algorithm. Job scheduling is enhanced through a dedicated Task Scheduling Algorithm. For robust data security during migration, a security-based technique is implemented in the 'Security-based Container Scheduling Model,' which ensures data integrity and safeguards against attacks. This system operates seamlessly online and offline, utilizing Edge Computing. During offline periods, defensive containers maintain data security until the system owner restores online connectivity. This holistic framework proves highly effective in resolving complex issues associated with large-scale optimization of resource allocation, migration, and security. Empirical results confirm its efficiency and security enhancements. The proposed work introduces an advanced cloud data streaming framework that optimizes container resource allocation and job scheduling while enhancing security during migration. It proves effective in addressing the challenges inherent in large-scale cloud data streaming processes.
Title: An Advanced Cloud Data Streaming Framework for Optimized Container Resource Allocation, Job Scheduling, And Security Enhancement
Description:
In the realm of cloud data streaming, the central concerns are Container resource allocation and job scheduling.
Cloud infrastructure relies on container virtualization to facilitate construction and migration processes.
Previous models have employed migration techniques to manage cloud container allocation and resource scheduling, but these come at the cost of increased response time and network traffic.
To address these challenges, a novel approach is introduced, the Reduced Optimal Migration model (ROM).
This model selectively triggers migration processes based on recommendations, optimizing resource allocation through a Machine Learning (ML) Algorithm.
Job scheduling is enhanced through a dedicated Task Scheduling Algorithm.
For robust data security during migration, a security-based technique is implemented in the 'Security-based Container Scheduling Model,' which ensures data integrity and safeguards against attacks.
This system operates seamlessly online and offline, utilizing Edge Computing.
During offline periods, defensive containers maintain data security until the system owner restores online connectivity.
This holistic framework proves highly effective in resolving complex issues associated with large-scale optimization of resource allocation, migration, and security.
Empirical results confirm its efficiency and security enhancements.
The proposed work introduces an advanced cloud data streaming framework that optimizes container resource allocation and job scheduling while enhancing security during migration.
It proves effective in addressing the challenges inherent in large-scale cloud data streaming processes.

Related Results

Work Values
Work Values
Research has identified TV series and, also more recently social media, as different actors in vocational socialization, providing individuals with career-related information (Levi...
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...
[RETRACTED] Rhino XL Male Enhancement v1
[RETRACTED] Rhino XL Male Enhancement v1
[RETRACTED]Rhino XL Reviews, NY USA: Studies show that testosterone levels in males decrease constantly with growing age. There are also many other problems that males face due ...
Container Security in Cloud Environments
Container Security in Cloud Environments
A bstract: The widespread adoption of containers in modern software applications has introduced new challenges to se...
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...
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Cloud computing has become a critical component of modern IT infrastructure, offering businesses scalability, flexibility, and cost efficiency. Unoptimized cloud migration strategi...
Job Standardization and Employee Voice
Job Standardization and Employee Voice
An organization expects its employees to comply with job standardization to improve its production efficiency, while also expecting them to make suggestions to improve their job pe...
[RETRACTED] Keanu Reeves CBD Gummies v1
[RETRACTED] Keanu Reeves CBD Gummies v1
[RETRACTED]Keanu Reeves CBD Gummies ==❱❱ Huge Discounts:[HURRY UP ] Absolute Keanu Reeves CBD Gummies (Available)Order Online Only!! ❰❰= https://www.facebook.com/Keanu-Reeves-CBD-G...

Back to Top