A common way to maintain the quality of service on systems that are growing rapidly is by increasing server specifications or by adding servers. The utility of servers can be balanced with the presence of a load balancer to manage server loads. In this paper, we propose a machine learning algorithm that utilizes server resources CPU and memory to forecast the future of resources server loads. We identify the timespan of forecasting should be long enough to avoid dispatcher's lack of information server distribution at runtime. Additionally, server profile pulling, forecasting server resources, and dispatching should be asynchronous with the request listener of the load balancer to minimize response delay. For production use, we recommend tha...
To a large extent, the load balancing algorithm affects the clustering performance of the computer. ...
Run-time management of modern Web-based services requires the integration of several algorithms and ...
Nowadays, service providers' (SPs) need for efficient resource utilization solutions is more de...
A common way to maintain the quality of service on systems that are growing rapidly is by increasing...
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. T...
International audienceThe performance of irregular scientific applications can be easily affected by...
Cloud computing provides various types of computing utilities where clients pay for services dependi...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
A machine learning job comprises a variety of resource-intensive tasks.The loads of executing such t...
Accurate workload prediction and throughput estimation are keys in efficient proactive power and per...
Abstract Automated resource provisioning techniques enable the implementation of elastic services, b...
Load Balancing is the key attribute in distributed systems to ensure fast processing and optimal uti...
Run-time management of modern Web-based services requires the integration of several algorithms and ...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Estimating server load average is one of the methods that can be used to reduce the cost of renting ...
To a large extent, the load balancing algorithm affects the clustering performance of the computer. ...
Run-time management of modern Web-based services requires the integration of several algorithms and ...
Nowadays, service providers' (SPs) need for efficient resource utilization solutions is more de...
A common way to maintain the quality of service on systems that are growing rapidly is by increasing...
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. T...
International audienceThe performance of irregular scientific applications can be easily affected by...
Cloud computing provides various types of computing utilities where clients pay for services dependi...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
A machine learning job comprises a variety of resource-intensive tasks.The loads of executing such t...
Accurate workload prediction and throughput estimation are keys in efficient proactive power and per...
Abstract Automated resource provisioning techniques enable the implementation of elastic services, b...
Load Balancing is the key attribute in distributed systems to ensure fast processing and optimal uti...
Run-time management of modern Web-based services requires the integration of several algorithms and ...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Estimating server load average is one of the methods that can be used to reduce the cost of renting ...
To a large extent, the load balancing algorithm affects the clustering performance of the computer. ...
Run-time management of modern Web-based services requires the integration of several algorithms and ...
Nowadays, service providers' (SPs) need for efficient resource utilization solutions is more de...