For Big Data processing, Apache Spark has been widely accepted. However, when dealing with events or any other spatio-temporal data sets, Spark becomes very inefficient as it does not include any spatial or temporal data types and operators. In this paper we demonstrate our STARK project that adds the required data types and operators, such as spatio-temporal filter and join with various predicates to Spark. Additionally, it includes k nearest neighbor search and a density based clustering operator for data analysis tasks as well as spatial partitioning and indexing techniques for efficient processing. During the demo, programs can be created on real world event data sets using STARK's Scala API or our Pig Latin derivative Piglet in a web ...
The exponential amount of geospatial data that has been accumulated in an accelerated pace has inevi...
none6noThe widespread adoption of sensor-enabled and mobile ubiquitous devices has caused an avalanc...
The rapid growth of spatial data volume and technological trends in storage capacity and processing ...
For Big Data processing, Apache Spark has been widely accepted. However, when dealing with events or...
Nowadays, a vast amount of data is generated and collected every moment and often, this data has a s...
Spatial data processing frameworks in many cases are limited to vector data only. However, an import...
The ever-increasing diffusion rate of mobile devices, able to continuously gather sensing data, crea...
In this paper, a novel Apache Spark-based framework for spatial data processing is proposed, which i...
The types of data available have changed in the last decade. While, historically, data were gathered...
We demonstrate a system of tools for real-time detection of significant clusters of spatial events a...
The types of data available have changed in the last decade. While, historically, data were gathered...
To better assess the relationships between environmental exposures and health outcomes, an appropria...
A spatiotemporally referenced event is a tuple that contains both a spatial reference and a temporal...
In the era of big data, Internet-based geospatial information services such as various LBS apps are ...
With the proliferation of diverse mobile devices and development of platforms like the Web and socia...
The exponential amount of geospatial data that has been accumulated in an accelerated pace has inevi...
none6noThe widespread adoption of sensor-enabled and mobile ubiquitous devices has caused an avalanc...
The rapid growth of spatial data volume and technological trends in storage capacity and processing ...
For Big Data processing, Apache Spark has been widely accepted. However, when dealing with events or...
Nowadays, a vast amount of data is generated and collected every moment and often, this data has a s...
Spatial data processing frameworks in many cases are limited to vector data only. However, an import...
The ever-increasing diffusion rate of mobile devices, able to continuously gather sensing data, crea...
In this paper, a novel Apache Spark-based framework for spatial data processing is proposed, which i...
The types of data available have changed in the last decade. While, historically, data were gathered...
We demonstrate a system of tools for real-time detection of significant clusters of spatial events a...
The types of data available have changed in the last decade. While, historically, data were gathered...
To better assess the relationships between environmental exposures and health outcomes, an appropria...
A spatiotemporally referenced event is a tuple that contains both a spatial reference and a temporal...
In the era of big data, Internet-based geospatial information services such as various LBS apps are ...
With the proliferation of diverse mobile devices and development of platforms like the Web and socia...
The exponential amount of geospatial data that has been accumulated in an accelerated pace has inevi...
none6noThe widespread adoption of sensor-enabled and mobile ubiquitous devices has caused an avalanc...
The rapid growth of spatial data volume and technological trends in storage capacity and processing ...