International audienceNetwork load balancers are important components in data centers to provide scalable services. Workload distribution algorithms are based on heuristics, e.g., Equal-Cost Multi-Path (ECMP), Weighted-Cost Multi-Path (WCMP) or naive machine learning (ML) algorithms, e.g., ridge regression. Advanced ML-based approaches help achieve performance gain in different networking and system problems. However, it is challenging to apply ML algorithms on networking problems in real-life systems. It requires domain knowledge to collect features from low-latency, high-throughput, and scalable networking systems, which are dynamic and heterogenous. This paper proposes Aquarius to bridge the gap between ML and networking systems and demo...
As web pages become more user friendly and interactive we see that objects such as pictures, media f...
International audienceRecent advances in programmable data planes, software-defined networking, and ...
Abstract Machine Learning (ML) has been enjoying an unprecedented surge in applications that solve p...
International audienceNetwork load balancers are important components in data centers to provide sca...
International audienceIn order to dynamically manage and update networking policies in cloud data ce...
International audienceThis paper presents the network load balancing problem, a challenging real-wor...
Data center networks are designed with multi-rooted topologies to provide the large bisection bandwi...
International audienceCloud environments require dynamic and adaptive networking policies. It is pre...
With the development of new communication technologies, the amount of data transmission has increase...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
A common way to maintain the quality of service on systems that are growing rapidly is by increasing...
With the incidence of technology at each and every juncture of human life, there has been an acceler...
Abstract—This paper presents a new approach that uses neural networks to predict the performance of ...
Given work describes load balancing algorithms for external services with unspecified clients used i...
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. T...
As web pages become more user friendly and interactive we see that objects such as pictures, media f...
International audienceRecent advances in programmable data planes, software-defined networking, and ...
Abstract Machine Learning (ML) has been enjoying an unprecedented surge in applications that solve p...
International audienceNetwork load balancers are important components in data centers to provide sca...
International audienceIn order to dynamically manage and update networking policies in cloud data ce...
International audienceThis paper presents the network load balancing problem, a challenging real-wor...
Data center networks are designed with multi-rooted topologies to provide the large bisection bandwi...
International audienceCloud environments require dynamic and adaptive networking policies. It is pre...
With the development of new communication technologies, the amount of data transmission has increase...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
A common way to maintain the quality of service on systems that are growing rapidly is by increasing...
With the incidence of technology at each and every juncture of human life, there has been an acceler...
Abstract—This paper presents a new approach that uses neural networks to predict the performance of ...
Given work describes load balancing algorithms for external services with unspecified clients used i...
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. T...
As web pages become more user friendly and interactive we see that objects such as pictures, media f...
International audienceRecent advances in programmable data planes, software-defined networking, and ...
Abstract Machine Learning (ML) has been enjoying an unprecedented surge in applications that solve p...