As data collections become larger and larger, users are faced with increasing bottlenecks in their data analysis. More data means more time to prepare and to load the data into the database before executing the desired queries. Many applications already avoid using database systems, e.g., scientific data analysis and social networks, due to the complexity and the increased data-to-query time, i.e., the time between getting the data and retrieving its first useful results. For many applications data collections keep growing fast, even on a daily basis, and this data deluge will only increase in the future, where it is expected to have much more data than what we can move or store, let alone analyze. We here present the design and roadmap of ...
The Resource Description Framework (RDF) data presentation model and the SPARQL query language have ...
Thesis (Ph.D.)--University of Washington, 2012More so than ever before, large datasets are being col...
Column-oriented RDBMSs, which support traditional read-heavy analytics workloads, employ a specific ...
As data collections become larger and larger, data loading evolves to a major bottleneck. Many appli...
As data collections become larger and larger, users are faced with increasing bottlenecks in their d...
Database systems deliver impressive performance for large classes of workloads as the result of deca...
Modern big data workflows, found in e.g., machine learning use cases, often involve iterations of cy...
Database management systems (DBMS) provide incredible flexibility and performance when it comes to ...
Traditional databases incur a significant data-to-query delay due to the requirement to load data in...
There is a clear need nowadays for extremely large data processing. This is especially true in the ...
Modern applications accumulate data at an exponentially increasing rate and traditional database sys...
When addressing the problem of ``big'' data volume, preparation costs are one of the key challenges:...
Modern database systems have to process huge amounts of data and should provide results with low lat...
The rise of unstructured, semi structured and structured data making the data exploration task more ...
Nowadays scientists receive increasingly large volumes of data daily. These volumes and accompanying...
The Resource Description Framework (RDF) data presentation model and the SPARQL query language have ...
Thesis (Ph.D.)--University of Washington, 2012More so than ever before, large datasets are being col...
Column-oriented RDBMSs, which support traditional read-heavy analytics workloads, employ a specific ...
As data collections become larger and larger, data loading evolves to a major bottleneck. Many appli...
As data collections become larger and larger, users are faced with increasing bottlenecks in their d...
Database systems deliver impressive performance for large classes of workloads as the result of deca...
Modern big data workflows, found in e.g., machine learning use cases, often involve iterations of cy...
Database management systems (DBMS) provide incredible flexibility and performance when it comes to ...
Traditional databases incur a significant data-to-query delay due to the requirement to load data in...
There is a clear need nowadays for extremely large data processing. This is especially true in the ...
Modern applications accumulate data at an exponentially increasing rate and traditional database sys...
When addressing the problem of ``big'' data volume, preparation costs are one of the key challenges:...
Modern database systems have to process huge amounts of data and should provide results with low lat...
The rise of unstructured, semi structured and structured data making the data exploration task more ...
Nowadays scientists receive increasingly large volumes of data daily. These volumes and accompanying...
The Resource Description Framework (RDF) data presentation model and the SPARQL query language have ...
Thesis (Ph.D.)--University of Washington, 2012More so than ever before, large datasets are being col...
Column-oriented RDBMSs, which support traditional read-heavy analytics workloads, employ a specific ...