To run proper Big Data Analytics, small and medium enterprises (SMEs) need to acquire expertise, hardware and software, which often translates to relevant initial investments for activities not directly connected to the company's business. To reduce such investments, the TOREADOR project proposes a Big Data Analytics framework which supports users in devising their own Big Data solutions by keeping the inherent costs at a minimum, and leveraging pre-existent knowledge and expertise. Among the objectives of the TOREADOR framework is supporting developers in parallelizing and deploying their Big Data algorithms, in order to develop their own analytics solutions. This paper describes the Code-Based approach, adopted within the TOREADOR framewo...
Big data analysis imposes new challenges and requirements on programming support. Programming platfo...
Over the past years, frameworks such as MapReduce and Spark have been introduced to ease the task of...
Around year 2005 the hardware industry hit a power wall. It was no longer possible to drastically in...
To run proper Big Data Analytics, small and medium enterprises (SMEs) need to acquire expertise, har...
In order to reduce the initial investments needed by small and medium enterprises (SMEs) to acquire ...
In order to reduce the initial investments needed by small and medium enterprises (SMEs) to acquire ...
In the age of Big Data, scalable algorithm implementations as well as powerful computational resourc...
Due to the initial investments needed by companies to acquire the necessary expertise, hardware and ...
This is an extended version of Modeling Big Data Processing Programs, by Joao Batista de Souza Neto,...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
Abstract. Big data challenges are end-to-end problems. When handling big data it usually has to be p...
The massively increasing amount of often geographically dispersed large quantities of data of experi...
International audienceThis paper proposes a model for specifying data flow-based parallel data proc...
Since advent of information revolution, there have been a lot of interest at big data analytics as w...
In recent years, the world has seen an explosion in the amount of data being generated. Google propo...
Big data analysis imposes new challenges and requirements on programming support. Programming platfo...
Over the past years, frameworks such as MapReduce and Spark have been introduced to ease the task of...
Around year 2005 the hardware industry hit a power wall. It was no longer possible to drastically in...
To run proper Big Data Analytics, small and medium enterprises (SMEs) need to acquire expertise, har...
In order to reduce the initial investments needed by small and medium enterprises (SMEs) to acquire ...
In order to reduce the initial investments needed by small and medium enterprises (SMEs) to acquire ...
In the age of Big Data, scalable algorithm implementations as well as powerful computational resourc...
Due to the initial investments needed by companies to acquire the necessary expertise, hardware and ...
This is an extended version of Modeling Big Data Processing Programs, by Joao Batista de Souza Neto,...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
Abstract. Big data challenges are end-to-end problems. When handling big data it usually has to be p...
The massively increasing amount of often geographically dispersed large quantities of data of experi...
International audienceThis paper proposes a model for specifying data flow-based parallel data proc...
Since advent of information revolution, there have been a lot of interest at big data analytics as w...
In recent years, the world has seen an explosion in the amount of data being generated. Google propo...
Big data analysis imposes new challenges and requirements on programming support. Programming platfo...
Over the past years, frameworks such as MapReduce and Spark have been introduced to ease the task of...
Around year 2005 the hardware industry hit a power wall. It was no longer possible to drastically in...