International audienceWe are now witnessing an unprecedented growth of data that needs to be processed at always increasing rates in order to extract valuable insights. Big Data streaming analytics tools have been developed to cope with the online dimension of data processing: they enable real-time handling of live data sources by means of stateful aggregations (operators). Current state-of-art frameworks (e.g. Apache Flink [1]) enable each operator to work in isolation by creating data copies, at the expense of increased memory utilization. In this paper, we explore the feasibility of deduplication techniques to address the challenge of reducing memory footprint for window-based stream processing without significant impact on performance. ...
With the increasing number of connected devices, it becomes essential to find novel data management ...
International audienceThe Semantic Web technologies are being increasingly used for exploiting relat...
International audienceKey grouping is a technique used by stream processing frameworks to simplify t...
International audienceWe are now witnessing an unprecedented growth of data that needs to be process...
We are now witnessing an unprecedented growth of data that needs to be processed at always increasin...
International audienceBig Data applications are rapidly moving from a batch-oriented execution model...
First-generation streaming systems did not pay much attention to state management via ACID transacti...
Modern distributed stream processors predominantly rely on LSM-based key-value stores to manage the ...
Data-stream management systems have for long been considered as a promising architecture for fast da...
Big Data applications are rapidly moving from a batch-oriented execution model to a streaming execut...
Cataloged from PDF version of article.Stream processing applications process high volume, continuous...
International audienceThe visual analysis of large multidimensional spatiotem-poral datasets poses c...
International audienceOver the past decade, given the higher number of data sources (e.g., Cloud app...
Transactional database systems and data stream management systems have been thoroughly investigated ...
Relational algebra and SQL have been a standard in declarative analytics for decades. Yet, at web-sc...
With the increasing number of connected devices, it becomes essential to find novel data management ...
International audienceThe Semantic Web technologies are being increasingly used for exploiting relat...
International audienceKey grouping is a technique used by stream processing frameworks to simplify t...
International audienceWe are now witnessing an unprecedented growth of data that needs to be process...
We are now witnessing an unprecedented growth of data that needs to be processed at always increasin...
International audienceBig Data applications are rapidly moving from a batch-oriented execution model...
First-generation streaming systems did not pay much attention to state management via ACID transacti...
Modern distributed stream processors predominantly rely on LSM-based key-value stores to manage the ...
Data-stream management systems have for long been considered as a promising architecture for fast da...
Big Data applications are rapidly moving from a batch-oriented execution model to a streaming execut...
Cataloged from PDF version of article.Stream processing applications process high volume, continuous...
International audienceThe visual analysis of large multidimensional spatiotem-poral datasets poses c...
International audienceOver the past decade, given the higher number of data sources (e.g., Cloud app...
Transactional database systems and data stream management systems have been thoroughly investigated ...
Relational algebra and SQL have been a standard in declarative analytics for decades. Yet, at web-sc...
With the increasing number of connected devices, it becomes essential to find novel data management ...
International audienceThe Semantic Web technologies are being increasingly used for exploiting relat...
International audienceKey grouping is a technique used by stream processing frameworks to simplify t...