A core problem affecting distributed data management systems relates to deciding the optimal system configuration in terms of, e.g., computing resources to be allocated. In the cloud computing era, this issue has become a compelling one, since cloud technologies enable elastic resource provisioning, based on dynamic ac- quisition and release of resources according to the "pay-per-use" pricing model. To take advantage of this resource management model, methods enabling the estima- tion of the minimum amount of resources that are required to sustain the application workload, while guaranteeing adequate system performance and availability (as es- tablished, e.g., in a Service Level Agreement - SLA), would be highly desirable. In this cha...
© 2021 Shashikant Shankar IlagerCloud data centres are the backbone infrastructures of modern digita...
Large-scale software systems are currently designed as distributed entities and deployed in cloud da...
Training large, complex machine learning models such as deep neural networks with big data requires ...
A core problem affecting distributed data management systems relates to deciding the optimal system...
Cloud computing providers utilise large-scale data centres to provide computing resource to users’ w...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
Traditional resource management techniques that rely on simple heuristics often fail to achieve pred...
Machine learning (ML) is prevalent in today’s world. Starting from the need to improve artificial in...
Autonomic Computing is a Computer Science and Technologies research area, originated during mid 2000...
Cloud computing has been widely adopted to support various computation services. A fundamental probl...
Software as a Service (SaaS) offers reliable access to software applications to the end users over t...
To achieve elasticity in cloud environment a holistic solution must be considered that measures all ...
Cloud computing is a new Internet infrastructure paradigm where management optimization has become a...
Better resource utilization is a continuous demand for smart computing paradigm. Fog-to-Cloud (F2C) ...
Abstract Automated resource provisioning techniques enable the implementation of elastic services, b...
© 2021 Shashikant Shankar IlagerCloud data centres are the backbone infrastructures of modern digita...
Large-scale software systems are currently designed as distributed entities and deployed in cloud da...
Training large, complex machine learning models such as deep neural networks with big data requires ...
A core problem affecting distributed data management systems relates to deciding the optimal system...
Cloud computing providers utilise large-scale data centres to provide computing resource to users’ w...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
Traditional resource management techniques that rely on simple heuristics often fail to achieve pred...
Machine learning (ML) is prevalent in today’s world. Starting from the need to improve artificial in...
Autonomic Computing is a Computer Science and Technologies research area, originated during mid 2000...
Cloud computing has been widely adopted to support various computation services. A fundamental probl...
Software as a Service (SaaS) offers reliable access to software applications to the end users over t...
To achieve elasticity in cloud environment a holistic solution must be considered that measures all ...
Cloud computing is a new Internet infrastructure paradigm where management optimization has become a...
Better resource utilization is a continuous demand for smart computing paradigm. Fog-to-Cloud (F2C) ...
Abstract Automated resource provisioning techniques enable the implementation of elastic services, b...
© 2021 Shashikant Shankar IlagerCloud data centres are the backbone infrastructures of modern digita...
Large-scale software systems are currently designed as distributed entities and deployed in cloud da...
Training large, complex machine learning models such as deep neural networks with big data requires ...