Cloud computing systems face the substantial challenge of the Long Tail problem: a small subset of straggling tasks significantly impede parallel jobs completion. This behavior results in longer service response times and degraded system utilization. Speculative execution, which create task replicas at runtime, is a typical method deployed in large-scale distributed systems to tolerate stragglers. This approach defines stragglers by specifying a static threshold value, which calculates the temporal difference between an individual task and the average task progression for a job. However, specifying static threshold debilitates speculation effectiveness as it fails to consider the intrinsic diversity of job timing constraints within modern d...
The ability of servers to effectively execute tasks within Cloud datacenters varies due to heterogen...
Increased complexity and scale of virtualized distributed systems has resulted in the manifestation ...
International audienceBig Data systems (e.g., Google MapReduce, Apache Hadoop, Apache Spark) rely in...
Cloud computing systems face the substantial challenge of the Long Tail problem: a small subset of s...
Cloud computing systems face the substantial challenge of the Long Tail problem: a small subset of s...
Modern Cloud computing systems are massive in scale, featuring environments that can execute highly ...
Modern Cloud computing systems are massive in scale, featuring environments that can execute highly ...
Copyright is held by author/owner(s). In cloud computing jobs consisting of many tasks run in parall...
Task stragglers hinder effective parallel job execution in Cloud datacenters, resulting in late-timi...
Increased complexity and scale of virtualized distributed systems has resulted in the manifestation ...
In order to satisfy increasing demands for Cloud services, modern computing systems are often massiv...
Task stragglers hinder effective parallel job execution in Cloud datacenters, resulting in late-timi...
Task stragglers dramatically impede parallel job execution of data-intensive computing in Cloud Data...
A common performance problem in large-scale cloud systems is dealing with straggler tasks that are s...
A common performance problem in large-scale cloud systems is dealing with straggler tasks that are s...
The ability of servers to effectively execute tasks within Cloud datacenters varies due to heterogen...
Increased complexity and scale of virtualized distributed systems has resulted in the manifestation ...
International audienceBig Data systems (e.g., Google MapReduce, Apache Hadoop, Apache Spark) rely in...
Cloud computing systems face the substantial challenge of the Long Tail problem: a small subset of s...
Cloud computing systems face the substantial challenge of the Long Tail problem: a small subset of s...
Modern Cloud computing systems are massive in scale, featuring environments that can execute highly ...
Modern Cloud computing systems are massive in scale, featuring environments that can execute highly ...
Copyright is held by author/owner(s). In cloud computing jobs consisting of many tasks run in parall...
Task stragglers hinder effective parallel job execution in Cloud datacenters, resulting in late-timi...
Increased complexity and scale of virtualized distributed systems has resulted in the manifestation ...
In order to satisfy increasing demands for Cloud services, modern computing systems are often massiv...
Task stragglers hinder effective parallel job execution in Cloud datacenters, resulting in late-timi...
Task stragglers dramatically impede parallel job execution of data-intensive computing in Cloud Data...
A common performance problem in large-scale cloud systems is dealing with straggler tasks that are s...
A common performance problem in large-scale cloud systems is dealing with straggler tasks that are s...
The ability of servers to effectively execute tasks within Cloud datacenters varies due to heterogen...
Increased complexity and scale of virtualized distributed systems has resulted in the manifestation ...
International audienceBig Data systems (e.g., Google MapReduce, Apache Hadoop, Apache Spark) rely in...