This is an open access article, that can be obtained from the link below- Copyright @ 2006 Wiley-BlackwellThe computing-intensive data mining (DM) process calls for the support of a heterogeneous computing system, which consists of multiple computers with different configurations connected by a high-speed large-area network for increased computational power and resources. The DM process can be described as a multi-phase pipeline process, and in each phase there could be many optional methods. This makes the workflow for DM very complex and it can be modeled only by a directed acyclic graph (DAG). A heterogeneous computing system needs an effective and efficient scheduling framework, which orchestrates all the computing hardware to perform m...
The aim of this paper is to provide a description of machine learning based scheduling approach for ...
Consider directed acyclic graph ( DAG) scheduling for a large heterogeneous system, which consists o...
Abstract:- In this paper, we propose a new solution for dynamic task scheduling in distributed envir...
This is an open access article that can be obtained from the links below - Copyright @ 2006 Springer...
The computing-intensive data mining for inherently Internet-wide distributed data, referred to as Di...
This paper presents a three-stage algorithm for resource-aware scheduling of computational jobs in a...
Abstract:- Distributed data mining plays a crucial role in knowledge discovery in very large databas...
Abstract: Today’s multi-computer systems are heterogeneous in nature, i.e., the machines they are co...
This paper presents an algorithm for resource-aware scheduling of computational jobs in a large-scal...
Resource allocation in heterogeneous environment where machines provide different computational capa...
Fog computing (FC) is an emerging paradigm that extends computation, communication, and storage faci...
Efficient application scheduling is critical for achieving high performance in heterogeneous computi...
The use of information technology (IT) in scientific investigations is now commonplace, due largely ...
National audienceEffective scheduling is crucial for task-based applications to achieve high perform...
Heterogeneous distributed computing environments are well suited to meet the fast increasing computa...
The aim of this paper is to provide a description of machine learning based scheduling approach for ...
Consider directed acyclic graph ( DAG) scheduling for a large heterogeneous system, which consists o...
Abstract:- In this paper, we propose a new solution for dynamic task scheduling in distributed envir...
This is an open access article that can be obtained from the links below - Copyright @ 2006 Springer...
The computing-intensive data mining for inherently Internet-wide distributed data, referred to as Di...
This paper presents a three-stage algorithm for resource-aware scheduling of computational jobs in a...
Abstract:- Distributed data mining plays a crucial role in knowledge discovery in very large databas...
Abstract: Today’s multi-computer systems are heterogeneous in nature, i.e., the machines they are co...
This paper presents an algorithm for resource-aware scheduling of computational jobs in a large-scal...
Resource allocation in heterogeneous environment where machines provide different computational capa...
Fog computing (FC) is an emerging paradigm that extends computation, communication, and storage faci...
Efficient application scheduling is critical for achieving high performance in heterogeneous computi...
The use of information technology (IT) in scientific investigations is now commonplace, due largely ...
National audienceEffective scheduling is crucial for task-based applications to achieve high perform...
Heterogeneous distributed computing environments are well suited to meet the fast increasing computa...
The aim of this paper is to provide a description of machine learning based scheduling approach for ...
Consider directed acyclic graph ( DAG) scheduling for a large heterogeneous system, which consists o...
Abstract:- In this paper, we propose a new solution for dynamic task scheduling in distributed envir...