Distributed Stream Processing systems are becoming an increasingly essential part of Big Data processing platforms as users grow ever more reliant on their ability to provide fast access to new results. As such, making timely decisions based on these results is dependent on a system’s ability to tolerate failure. Typically, these systems achieve fault tolerance and the ability to recover automatically from partial failures by implementing checkpoint and rollback recovery. However, owing to the statistical probability of partial failures occurring in these distributed environments and the variability of workloads upon which jobs are expected to operate, static configurations will often not meet Quality of Service constraints with low overhea...
Fault tolerance is a key requirement in large-scale distributed stream processing engines (SPEs), es...
143 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2010.Stream processing emerged as ...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
Distributed Stream Processing systems are becoming an increasingly essential part of Big Data proces...
Major advances in the fault tolerance of distributed stream processing systems provided the systems ...
Fault tolerance is a property which needs deeper consideration when dealing with streaming jobs requ...
We present a collaborative, self-configuring high availability (HA) approach for stream processing t...
Distributed Stream Processing systems have become an essential part of big data processing platforms...
We present a replication-based approach to fault-tolerant distributed stream processing in the face ...
Stream processing lies in the backbone of modern businesses, being employed for mission critical app...
As users of “big data ” applications expect fresh results, we witness a new breed of stream processi...
We present SGuard, a new fault-tolerance technique for dis-tributed stream processing engines (SPEs)...
We present SGuard, a new fault-tolerance technique for dis-tributed stream processing engines (SPEs)...
A growing number of applications require continuous pro-cessing of high-throughput data streams, e.g...
The examiner of cloud computing systems in the last few years observes that there is a trend of the ...
Fault tolerance is a key requirement in large-scale distributed stream processing engines (SPEs), es...
143 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2010.Stream processing emerged as ...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
Distributed Stream Processing systems are becoming an increasingly essential part of Big Data proces...
Major advances in the fault tolerance of distributed stream processing systems provided the systems ...
Fault tolerance is a property which needs deeper consideration when dealing with streaming jobs requ...
We present a collaborative, self-configuring high availability (HA) approach for stream processing t...
Distributed Stream Processing systems have become an essential part of big data processing platforms...
We present a replication-based approach to fault-tolerant distributed stream processing in the face ...
Stream processing lies in the backbone of modern businesses, being employed for mission critical app...
As users of “big data ” applications expect fresh results, we witness a new breed of stream processi...
We present SGuard, a new fault-tolerance technique for dis-tributed stream processing engines (SPEs)...
We present SGuard, a new fault-tolerance technique for dis-tributed stream processing engines (SPEs)...
A growing number of applications require continuous pro-cessing of high-throughput data streams, e.g...
The examiner of cloud computing systems in the last few years observes that there is a trend of the ...
Fault tolerance is a key requirement in large-scale distributed stream processing engines (SPEs), es...
143 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2010.Stream processing emerged as ...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...