As modern large scale systems are built with a large number of independent small servers, it is becoming more important to orchestrate and leverage a large number of distributed buffer cache memory seamlessly. Several previous studies showed that with large scale distributed caching facilities, traditional resource scheduling policies often fail to exhibit high cache hit ratio and to achieve good system load balance. A scheduling policy that solely considers system load results in low cache hit ratio, and a scheduling policy that puts more emphasis on cache hit ratio than load balance suffers from system load imbalance. To maximize the overall system throughput, distributed caching facilities should balance the workloads and also leverage c...
Today’s world is flooded with vast amounts of digital information coming from innumerable sources. M...
Abstract—Load balancing techniques (e.g. work stealing) are important to obtain the best performance...
A well-known problem when executing data-intensive workloads with such frameworks as MapReduce is th...
It is becoming more important to leverage a large number of distributed cache memory seamlessly in m...
In distributed query processing systems where caching infrastructure is distributed and scales with ...
In modern query processing systems, the caching facilities are distributed and scale with the number...
Abstract. Leveraging data in distributed caches for large scale query process-ing applications is be...
In distributed query processing systems, load balancing plays an important role in maximizing system...
Leveraging data in distributed caches for large scale query processing applications is becoming more...
With the advent of cloud computing model, distributed caches have become the cornerstone for buildin...
Many scientific experiments are performed using scientific workflows, which are becoming more and mo...
Best Paper AwardInternational audienceMany scientific experiments are performed using scientific wor...
With the advent of cloud computing model, distributed caches have become the cornerstone for buildin...
Computational task DAGs are executed on parallel computers by a task scheduling algorithm. Intellige...
International audienceMany scientific experiments today are performed using scientific workflows, wh...
Today’s world is flooded with vast amounts of digital information coming from innumerable sources. M...
Abstract—Load balancing techniques (e.g. work stealing) are important to obtain the best performance...
A well-known problem when executing data-intensive workloads with such frameworks as MapReduce is th...
It is becoming more important to leverage a large number of distributed cache memory seamlessly in m...
In distributed query processing systems where caching infrastructure is distributed and scales with ...
In modern query processing systems, the caching facilities are distributed and scale with the number...
Abstract. Leveraging data in distributed caches for large scale query process-ing applications is be...
In distributed query processing systems, load balancing plays an important role in maximizing system...
Leveraging data in distributed caches for large scale query processing applications is becoming more...
With the advent of cloud computing model, distributed caches have become the cornerstone for buildin...
Many scientific experiments are performed using scientific workflows, which are becoming more and mo...
Best Paper AwardInternational audienceMany scientific experiments are performed using scientific wor...
With the advent of cloud computing model, distributed caches have become the cornerstone for buildin...
Computational task DAGs are executed on parallel computers by a task scheduling algorithm. Intellige...
International audienceMany scientific experiments today are performed using scientific workflows, wh...
Today’s world is flooded with vast amounts of digital information coming from innumerable sources. M...
Abstract—Load balancing techniques (e.g. work stealing) are important to obtain the best performance...
A well-known problem when executing data-intensive workloads with such frameworks as MapReduce is th...