The emergence of the Edge computing paradigm has shifted data processing from centralised infrastructures to heterogeneous and geographically distributed infrastructures. Therefore, data processing solutions must consider data locality to reduce the performance penalties from data transfers among remote data centres. Existing Big Data processing solutions provide limited support for handling data locality and are inefficient in processing small and frequent events specific to the Edge environments. This article proposes a novel architecture and a proof-of-concept implementation for software container-centric Big Data workflow orchestration that puts data locality at the forefront. The proposed solution considers the available data locality ...
Big Data applications tackle the challenge of fast handling of large streams of data. Their performa...
The discussion context of this paper is big data processing of MapReduce by volunteer computing in d...
To date, big data applications have focused on the store-and-process paradigm. In this paper we desc...
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...
As part of extracting value from data, a variety of heterogeneous data sources, tools, processes nee...
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...
Container-orchestration systems offer new possibilites to software architects seeking to make their...
Large scale computing infrastructures have been widely developed with the core objective of providin...
The increasing number of Internet of things (IoT) and other connected devices has led to a surge in ...
Big Data workflows are composed of multiple orchestration steps that perform different data analytic...
Big data has revolutionized science and technology leading to the transformation of our societies. H...
The role of data in modern scientific workflows becomes more and more crucial. The unprecedented amo...
Big Data applications tackle the challenge of fast handling of large streams of data. Their performa...
The discussion context of this paper is big data processing of MapReduce by volunteer computing in d...
To date, big data applications have focused on the store-and-process paradigm. In this paper we desc...
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...
As part of extracting value from data, a variety of heterogeneous data sources, tools, processes nee...
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...
Container-orchestration systems offer new possibilites to software architects seeking to make their...
Large scale computing infrastructures have been widely developed with the core objective of providin...
The increasing number of Internet of things (IoT) and other connected devices has led to a surge in ...
Big Data workflows are composed of multiple orchestration steps that perform different data analytic...
Big data has revolutionized science and technology leading to the transformation of our societies. H...
The role of data in modern scientific workflows becomes more and more crucial. The unprecedented amo...
Big Data applications tackle the challenge of fast handling of large streams of data. Their performa...
The discussion context of this paper is big data processing of MapReduce by volunteer computing in d...
To date, big data applications have focused on the store-and-process paradigm. In this paper we desc...