Collection and analysis of distributed (cloud) computing workloads allows for a deeper understanding of user and system behavior and is necessary for efficient operation of infrastructures and applications. The availability of such workload data is however often limited as most cloud infrastructures are commercially operated and monitoring data is considered proprietary or falls under GPDR regulations. This work investigates the generation of synthetic workloads using Generative Adversarial Networks and addresses a current need for more data and better tools for workload generation. Resource utilization measurements such as the utilization rates of Content Delivery Network (CDN) caches are generated and a comparative evaluation pipeline usi...
The complexity of resource usage and power consumption on cloud-based applications makes the underst...
Cloud storage systems are currently very popular with many companies offering services, including wo...
Virtualized data centers are hosting virtual machines (VMs) running enterprise applications with tim...
Collection and analysis of distributed (cloud) computing workloads allows for a deeper understanding...
In this paper we study the applicability of generative adversarial networks (GANs) for the descripti...
Multivariate time series generation is a promising method for sharing sensitive data in numerous med...
Load modeling is one of the crucial tasks for improving smart grids’ energy efficiency. Among many a...
The availability of large datasets is crucial for the development of new power system applications a...
The objective of the work package "Data Collection, Visualization and Analysis" of RECAP is to provi...
International audienceCloud computing allows for elasticity as users can dynamically benefit from ne...
Cloud computing has emerged to change the way computing is offered and used. Instead of having all t...
Automating any resource allocation technique allows implementation of elastic cloud services by prov...
Analyzing behavioral patterns of workloads is critical to understanding Cloud computing environments...
In this paper, we propose CLOUDGEN workflow that produces synthetic workloads for Infrastructure and...
There is no standard approach to compare the success ofdifferent neural network architectures utiliz...
The complexity of resource usage and power consumption on cloud-based applications makes the underst...
Cloud storage systems are currently very popular with many companies offering services, including wo...
Virtualized data centers are hosting virtual machines (VMs) running enterprise applications with tim...
Collection and analysis of distributed (cloud) computing workloads allows for a deeper understanding...
In this paper we study the applicability of generative adversarial networks (GANs) for the descripti...
Multivariate time series generation is a promising method for sharing sensitive data in numerous med...
Load modeling is one of the crucial tasks for improving smart grids’ energy efficiency. Among many a...
The availability of large datasets is crucial for the development of new power system applications a...
The objective of the work package "Data Collection, Visualization and Analysis" of RECAP is to provi...
International audienceCloud computing allows for elasticity as users can dynamically benefit from ne...
Cloud computing has emerged to change the way computing is offered and used. Instead of having all t...
Automating any resource allocation technique allows implementation of elastic cloud services by prov...
Analyzing behavioral patterns of workloads is critical to understanding Cloud computing environments...
In this paper, we propose CLOUDGEN workflow that produces synthetic workloads for Infrastructure and...
There is no standard approach to compare the success ofdifferent neural network architectures utiliz...
The complexity of resource usage and power consumption on cloud-based applications makes the underst...
Cloud storage systems are currently very popular with many companies offering services, including wo...
Virtualized data centers are hosting virtual machines (VMs) running enterprise applications with tim...