The last years witnessed a steep rise in data generation worldwide and, consequently, the widespread adoption of software solutions claiming to support data intensive applications. Competitiveness and innovation have strongly benefited from these new platforms and methodologies, and there is a great deal of interest around the new possibilities that Big Data analytics promise to make reality. Many companies currently en- gage in data intensive processes as part of their core businesses; however, fully embracing the data-driven paradigm is still cumbersome, and es- tablishing a production-ready, fine-tuned deployment is time-consuming, expensive, and resource-intensive. This situation calls for novel models and techniques to streamline the p...
In this paper, we try to provide a synthetic and comprehensive state of the art concerning big data ...
The emergence of the Internet of Things (IoT), combined with greater heterogeneity not only online i...
The computational and data handling challenges in big data are immense yet a market is steadily grow...
The last years witnessed a steep rise in data generation worldwide and, consequently, the widespread...
The last years have seen a steep rise in data generation worldwide, with the development and widespr...
Abstract—There is an increasing demand for processing tremendous volumes of data, which promotes the...
The emerging Big Data paradigm has attracted attention from a wide variety of industry sectors, incl...
The easily-accessible computation power offered by cloud infrastructures coupled with the revolution...
Abstract—Today’s lightening fast data generation from massive sources is calling for efficient big d...
The emergence of big data requires powerful computational resources and memory subsystems that can b...
The easily accessible computing power offered by cloud infrastructures, coupled with the "Big Data" ...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
Cloud computing is usually associated with storage and processing on a back-end server that is acces...
In the field of machine learning applied to big data, in this thesis work has been implemented an in...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
In this paper, we try to provide a synthetic and comprehensive state of the art concerning big data ...
The emergence of the Internet of Things (IoT), combined with greater heterogeneity not only online i...
The computational and data handling challenges in big data are immense yet a market is steadily grow...
The last years witnessed a steep rise in data generation worldwide and, consequently, the widespread...
The last years have seen a steep rise in data generation worldwide, with the development and widespr...
Abstract—There is an increasing demand for processing tremendous volumes of data, which promotes the...
The emerging Big Data paradigm has attracted attention from a wide variety of industry sectors, incl...
The easily-accessible computation power offered by cloud infrastructures coupled with the revolution...
Abstract—Today’s lightening fast data generation from massive sources is calling for efficient big d...
The emergence of big data requires powerful computational resources and memory subsystems that can b...
The easily accessible computing power offered by cloud infrastructures, coupled with the "Big Data" ...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
Cloud computing is usually associated with storage and processing on a back-end server that is acces...
In the field of machine learning applied to big data, in this thesis work has been implemented an in...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
In this paper, we try to provide a synthetic and comprehensive state of the art concerning big data ...
The emergence of the Internet of Things (IoT), combined with greater heterogeneity not only online i...
The computational and data handling challenges in big data are immense yet a market is steadily grow...