Large-scale software systems are currently designed as distributed entities and deployed in cloud data centers. To overcome the limitations inherent to this type of deployments, applications are increasingly being supplemented with components instantiated closer to the edges of networks – a paradigm known as edge computing. The problem of how to efficiently orchestrate combined edge-cloud applications is however incompletely understood, and a wide range of techniques for resource and application management are currently in use. This paper investigates the problem of reliable resource provisioning in joint edge-cloud environments and surveys technologies, mechanisms, and methods that can be used to improve the reliability of distributed appl...
Today, the edge-cloud computing paradigm starts to gain increasing popularity, aiming to enable shor...
International audienceThe explosion of data volumes generated by an increasing number of application...
This paper illustrates the effort to integrate a machine learning-based framework which can predict ...
With the proliferation of smart devices, it is increasingly important to exploit their computing, ne...
Mobile Edge Clouds (MECs) are platforms that complement today's centralized clouds by distributing c...
Publisher Copyright: © 2022, The Author(s).The maturity of machine learning (ML) development and the...
Edge computing has emerged as a paradigm for local computing/processing tasks, reducing the distance...
Processing IoT applications directly in the cloud may not be the most efficient solution for each Io...
Cloud-edge computing is a promising paradigm that can address the challenges of latency, bandwidth, ...
The widespread adoption of the Internet of Things and latency-critical applications has fueled the b...
The surge in data traffic is challenging for network infrastructure owners coping with stringent ser...
The proliferation of the Internet of Things (IoT) has incentivised extending cloud resources to the ...
Cloud resource allocation is a critical challenge in cloud computing. Traditional resource allocatio...
This paper illustrates the effort to integrate a machine learning-based framework which can predict ...
Edge computing is promoted to meet increasing performance needs of data-driven services using comput...
Today, the edge-cloud computing paradigm starts to gain increasing popularity, aiming to enable shor...
International audienceThe explosion of data volumes generated by an increasing number of application...
This paper illustrates the effort to integrate a machine learning-based framework which can predict ...
With the proliferation of smart devices, it is increasingly important to exploit their computing, ne...
Mobile Edge Clouds (MECs) are platforms that complement today's centralized clouds by distributing c...
Publisher Copyright: © 2022, The Author(s).The maturity of machine learning (ML) development and the...
Edge computing has emerged as a paradigm for local computing/processing tasks, reducing the distance...
Processing IoT applications directly in the cloud may not be the most efficient solution for each Io...
Cloud-edge computing is a promising paradigm that can address the challenges of latency, bandwidth, ...
The widespread adoption of the Internet of Things and latency-critical applications has fueled the b...
The surge in data traffic is challenging for network infrastructure owners coping with stringent ser...
The proliferation of the Internet of Things (IoT) has incentivised extending cloud resources to the ...
Cloud resource allocation is a critical challenge in cloud computing. Traditional resource allocatio...
This paper illustrates the effort to integrate a machine learning-based framework which can predict ...
Edge computing is promoted to meet increasing performance needs of data-driven services using comput...
Today, the edge-cloud computing paradigm starts to gain increasing popularity, aiming to enable shor...
International audienceThe explosion of data volumes generated by an increasing number of application...
This paper illustrates the effort to integrate a machine learning-based framework which can predict ...