In the past few years, we have envisioned an increasing number of businesses start driving by big data analytics, such as Amazon recommendations and Google Advertisements. At the back-end side, the businesses are powered by big data processing platforms to quickly extract information and make decisions. Running on top of a computing cluster, those platforms utilize scheduling algorithms to allocate resources. An efficient scheduler is crucial to the system performance due to limited resources, e.g. CPU and Memory, and a large number of user demands. However, besides requests from clients and current status of the system, it has limited knowledge about execution length of the running jobs, and incoming jobs\u27 resource demands, which make a...
Part 4: Green Computing and Resource ManagementInternational audienceMany companies are increasingly...
This paper presents an algorithm for resource-aware scheduling of computational jobs in a large-scal...
Cloud users want to express their requirements in terms of high-level metrics (e.g. in terms of exec...
In the past few years, we have envisioned an increasing number of businesses start driving by big da...
This paper presents a three-stage algorithm for resource-aware scheduling of computational jobs in a...
International audienceNowadays, when we face with numerous data, when data cannot be classified into...
In job scheduling, the concept of malleability has been explored since many years ago. Research show...
Cloud computing has emerged as one of the paradigm in supplying compute resources to the users. It i...
In today’s batch queue HPC cluster systems, the user submits a job requesting a fixed number of...
Recent rapid expansion of datasets in big data problems has resulted in data sizes that exceed proce...
A well-known problem when executing data-intensive workloads with such frameworks as MapReduce is th...
A long-standing challenge in cluster scheduling is to achieve a high degree of utilization of hetero...
AbstractCloud Computing environment provisions the supply of computing resources on the basis of dem...
Big data has become essential for businesses as it enables companies and organizations to gather ins...
Real-time resource scheduling is an important factor for improving the performance of cluster comput...
Part 4: Green Computing and Resource ManagementInternational audienceMany companies are increasingly...
This paper presents an algorithm for resource-aware scheduling of computational jobs in a large-scal...
Cloud users want to express their requirements in terms of high-level metrics (e.g. in terms of exec...
In the past few years, we have envisioned an increasing number of businesses start driving by big da...
This paper presents a three-stage algorithm for resource-aware scheduling of computational jobs in a...
International audienceNowadays, when we face with numerous data, when data cannot be classified into...
In job scheduling, the concept of malleability has been explored since many years ago. Research show...
Cloud computing has emerged as one of the paradigm in supplying compute resources to the users. It i...
In today’s batch queue HPC cluster systems, the user submits a job requesting a fixed number of...
Recent rapid expansion of datasets in big data problems has resulted in data sizes that exceed proce...
A well-known problem when executing data-intensive workloads with such frameworks as MapReduce is th...
A long-standing challenge in cluster scheduling is to achieve a high degree of utilization of hetero...
AbstractCloud Computing environment provisions the supply of computing resources on the basis of dem...
Big data has become essential for businesses as it enables companies and organizations to gather ins...
Real-time resource scheduling is an important factor for improving the performance of cluster comput...
Part 4: Green Computing and Resource ManagementInternational audienceMany companies are increasingly...
This paper presents an algorithm for resource-aware scheduling of computational jobs in a large-scal...
Cloud users want to express their requirements in terms of high-level metrics (e.g. in terms of exec...