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

Resource Allocation in The Cloud Environment with Supervised Machine learning for Effective Data Transmission

View through CrossRef
Resource allocation in the cloud environment for 5G applications can be explained by referring to the strategic distribution and necessary assignment of computing resources such as virtual machines, storage, and network bandwidth that meet the dynamic demands of applications and services. The framework proposed is on resource allocation in the cloud environment by BRoML for 5G applications. In the proposed BRoML model, the Backtracking Regularized model is incorporated for the effective calculation of the resources in the cloud environment. The optimization is performed for the effective computation of resources in the cloud environment through the computed resources. Using the estimated optimized values, a machine learning model can be trained and tested to classify resource allocation. In this regard, the simulation analysis is compared to BRoML with traditional schemes like SVM and RF. The result shows that BRoML has a higher resource utilization while exhibiting lower latency, higher increased throughput, and a better efficiency score overall. Machine learning techniques and optimization mechanisms give flexibility and intelligence to BRoMl in solving resource allocation issues within cloud computing. These results reinforce the view that BRoML can create a strong impact on the development process of cloud computing with its dynamic, intelligent solution in resource allocation optimization under various scenarios.
Title: Resource Allocation in The Cloud Environment with Supervised Machine learning for Effective Data Transmission
Description:
Resource allocation in the cloud environment for 5G applications can be explained by referring to the strategic distribution and necessary assignment of computing resources such as virtual machines, storage, and network bandwidth that meet the dynamic demands of applications and services.
The framework proposed is on resource allocation in the cloud environment by BRoML for 5G applications.
In the proposed BRoML model, the Backtracking Regularized model is incorporated for the effective calculation of the resources in the cloud environment.
The optimization is performed for the effective computation of resources in the cloud environment through the computed resources.
Using the estimated optimized values, a machine learning model can be trained and tested to classify resource allocation.
In this regard, the simulation analysis is compared to BRoML with traditional schemes like SVM and RF.
The result shows that BRoML has a higher resource utilization while exhibiting lower latency, higher increased throughput, and a better efficiency score overall.
Machine learning techniques and optimization mechanisms give flexibility and intelligence to BRoMl in solving resource allocation issues within cloud computing.
These results reinforce the view that BRoML can create a strong impact on the development process of cloud computing with its dynamic, intelligent solution in resource allocation optimization under various scenarios.

Related Results

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...
Energy‐aware cross‐layer resource allocation in mobile cloud
Energy‐aware cross‐layer resource allocation in mobile cloud
SummaryThis paper proposed an energy‐aware cross‐layer mobile cloud resource allocation approach. In this paper, a hybrid cloud architecture is adopted for provisioning mobile serv...
Resource Allocation in Cloud
Resource Allocation in Cloud
Abstract: A cloud environment is the popular shareable computing environments where large number of clients/users are connected to the common cloud computing environment to access ...
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...
Advanced computational model for energy-efficient resource allocation in cloud computing environments
Advanced computational model for energy-efficient resource allocation in cloud computing environments
Cloud computing uses resource allocation techniques to maximize compute efficiency while preserving energy usage. Energy-efficient models reduce environmental exposure while mainta...
Heuristics for Efficient Resource Allocation in Cloud Computing
Heuristics for Efficient Resource Allocation in Cloud Computing
The resource allocation in cloud computing determines the allocation of computer and network resources of service providers to service requests of users for meeting user service re...
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...
Developing a Cloud Computing Framework for University Libraries
Developing a Cloud Computing Framework for University Libraries
Our understanding of the library context on security challenges on storing research output on the cloud is inadequate and incomplete. Existing research has mostly focused on profit...

Back to Top