id |
ndltd-NEU--neu-336346
|
record_format |
oai_dc
|
spelling |
ndltd-NEU--neu-3363462021-05-26T05:09:49ZProcessing theta-joins on shared-nothing systemsJoins are essential for many large-scale data analysis tasks, and a variety of join conditions must be supported for many applications such as data-driven science, advertising, marketing, and social networks. Efficient parallel execution of joins is crucial to cope with the large volumes of data being collected and generated in many disciplines.http://hdl.handle.net/2047/d20005009
|
collection |
NDLTD
|
sources |
NDLTD
|
description |
Joins are essential for many large-scale data analysis tasks, and a variety of join conditions must be supported for many applications such as data-driven science, advertising, marketing, and social networks. Efficient parallel execution of joins is crucial to cope with the large volumes of data being collected and generated in many disciplines.
|
title |
Processing theta-joins on shared-nothing systems
|
spellingShingle |
Processing theta-joins on shared-nothing systems
|
title_short |
Processing theta-joins on shared-nothing systems
|
title_full |
Processing theta-joins on shared-nothing systems
|
title_fullStr |
Processing theta-joins on shared-nothing systems
|
title_full_unstemmed |
Processing theta-joins on shared-nothing systems
|
title_sort |
processing theta-joins on shared-nothing systems
|
publishDate |
|
url |
http://hdl.handle.net/2047/d20005009
|
_version_ |
1719406203269808128
|