Big Data processing, especially with the increasing proliferation of Internet of Things (IoT) technologies and convergence of IoT, edge and cloud computing technologies, involves handling massive and complex data sets on heterogeneous resources and incorporating different tools, frameworks, and processes to help organizations make sense of their data collected from various sources. This set of operations, referred to as Big Data workflows, requires taking advantage of Cloud infrastructures’ elasticity for scalability. In this article, we present the design and prototype implementation of a Big Data workflow approach based on the use of software container technologies, message-oriented middleware (MOM), and a domain-specific language (DSL) t...
Interest in processing big data has increased rapidly to gain insights that can transform businesses...
Dataflow-style workflows offer a simple, high-level programming model for flexible prototyping of sc...
International audienceIn this paper, we try to provide a synthetic and comprehensive state of the ar...
Big Data processing, especially with the increasing proliferation of Internet of Things (IoT) techno...
Big Data processing, especially with the increasing proliferation of Internet of Things (IoT) techno...
Big Data workflows are composed of multiple orchestration steps that perform different data analytic...
As part of extracting value from data, a variety of heterogeneous data sources, tools, processes nee...
The emergence of the Edge computing paradigm has shifted data processing from centralised infrastruc...
The emergence of the edge computing paradigm has shifted data processing from centralised infrastruc...
The development of the Edge computing paradigm shifts data processing from centralised infrastructur...
This study presents a lightweight representational state transfer-based cloud workflow system to con...
Big data processing relies today on complex middleware stacks, comprised of high-level languages, pr...
With the advent of cloud computing, resizable scalable infrastructures for data processing is now av...
Abstract: Changes is the natural phenomenon which we have to accept everywhere in our life. Let’s em...
Interest in processing big data has increased rapidly to gain insights that can transform businesses...
Dataflow-style workflows offer a simple, high-level programming model for flexible prototyping of sc...
International audienceIn this paper, we try to provide a synthetic and comprehensive state of the ar...
Big Data processing, especially with the increasing proliferation of Internet of Things (IoT) techno...
Big Data processing, especially with the increasing proliferation of Internet of Things (IoT) techno...
Big Data workflows are composed of multiple orchestration steps that perform different data analytic...
As part of extracting value from data, a variety of heterogeneous data sources, tools, processes nee...
The emergence of the Edge computing paradigm has shifted data processing from centralised infrastruc...
The emergence of the edge computing paradigm has shifted data processing from centralised infrastruc...
The development of the Edge computing paradigm shifts data processing from centralised infrastructur...
This study presents a lightweight representational state transfer-based cloud workflow system to con...
Big data processing relies today on complex middleware stacks, comprised of high-level languages, pr...
With the advent of cloud computing, resizable scalable infrastructures for data processing is now av...
Abstract: Changes is the natural phenomenon which we have to accept everywhere in our life. Let’s em...
Interest in processing big data has increased rapidly to gain insights that can transform businesses...
Dataflow-style workflows offer a simple, high-level programming model for flexible prototyping of sc...
International audienceIn this paper, we try to provide a synthetic and comprehensive state of the ar...