Currently available environmental datasets are either manually constructed by professionals or automatically generated from the observations provided by sensing devices. Usually, the former are modelled and recorded with traditional general-purpose relational technologies, whereas the latter require more specific scientific array formats and tools. Declarative data processing technologies are available both for relational and array data, however, the efficient declarative integrated processing of array and relational environmental data is a problem for which a satisfactory solution has still not been provided. Due to the above, an integrated data processing language called MAPAL has been proposed. This paper provides a brief description of ...
Scientific analyses commonly compose multiple single-process programs into a dataflow. An end-to-end...
The exponential amount of geospatial data that has been accumulated in an accelerated pace has inevi...
This master thesis project investigates present non-traditional and established databasetechnologies...
Currently available environmental datasets are either manually constructed by professionals or autom...
In this paper, a novel Apache Spark-based framework for spatial data processing is proposed, which i...
Inquiry using data from remote Earth-observing platforms often confronts a straightforward but parti...
This master's thesis deals with Big data processing in distributed system Apache Spark using tools, ...
Modern geoinformation technologies for collecting and processing data, such as laser scanning or pho...
While cluster computing frameworks are continuously evolving to provide real-time data analysis capa...
Background: Life science is increasingly driven by Big Data analytics, and the MapReduce programming...
Over the past few years, Earth Observation (EO) has been continuously generating much spatiotemporal...
In the geospatial domain we have now reached the point where data volumes we handle have clearly gro...
The vast amount of data being generated each year, especially in the sciences, demands new computing...
Processing big data in real-time is challenging due to scalability, information consistency, and fau...
Data centers routinely archive and distribute large databases of high quality and with rigorous docu...
Scientific analyses commonly compose multiple single-process programs into a dataflow. An end-to-end...
The exponential amount of geospatial data that has been accumulated in an accelerated pace has inevi...
This master thesis project investigates present non-traditional and established databasetechnologies...
Currently available environmental datasets are either manually constructed by professionals or autom...
In this paper, a novel Apache Spark-based framework for spatial data processing is proposed, which i...
Inquiry using data from remote Earth-observing platforms often confronts a straightforward but parti...
This master's thesis deals with Big data processing in distributed system Apache Spark using tools, ...
Modern geoinformation technologies for collecting and processing data, such as laser scanning or pho...
While cluster computing frameworks are continuously evolving to provide real-time data analysis capa...
Background: Life science is increasingly driven by Big Data analytics, and the MapReduce programming...
Over the past few years, Earth Observation (EO) has been continuously generating much spatiotemporal...
In the geospatial domain we have now reached the point where data volumes we handle have clearly gro...
The vast amount of data being generated each year, especially in the sciences, demands new computing...
Processing big data in real-time is challenging due to scalability, information consistency, and fau...
Data centers routinely archive and distribute large databases of high quality and with rigorous docu...
Scientific analyses commonly compose multiple single-process programs into a dataflow. An end-to-end...
The exponential amount of geospatial data that has been accumulated in an accelerated pace has inevi...
This master thesis project investigates present non-traditional and established databasetechnologies...