808 research outputs found
A Taxonomy of Workflow Management Systems for Grid Computing
With the advent of Grid and application technologies, scientists and
engineers are building more and more complex applications to manage and process
large data sets, and execute scientific experiments on distributed resources.
Such application scenarios require means for composing and executing complex
workflows. Therefore, many efforts have been made towards the development of
workflow management systems for Grid computing. In this paper, we propose a
taxonomy that characterizes and classifies various approaches for building and
executing workflows on Grids. We also survey several representative Grid
workflow systems developed by various projects world-wide to demonstrate the
comprehensiveness of the taxonomy. The taxonomy not only highlights the design
and engineering similarities and differences of state-of-the-art in Grid
workflow systems, but also identifies the areas that need further research.Comment: 29 pages, 15 figure
An efficient scheduling method for grid systems based on a hierarchical stochastic petri net
This paper addresses the problem of resource scheduling in a grid computing environment. One of the main goals of grid computing is to share system resources among geographically dispersed users, and schedule resource requests in an efficient manner. Grid computing resources are distributed, heterogeneous, dynamic, and autonomous, which makes resource scheduling a complex problem. This paper proposes a new approach to resource scheduling in grid computing environments, the hierarchical stochastic Petri net (HSPN). The HSPN optimizes grid resource sharing, by categorizing resource requests in three layers, where each layer has special functions for receiving subtasks from, and delivering data to, the layer above or below. We compare the HSPN performance with the Min-min and Max-min resource scheduling algorithms. Our results show that the HSPN performs better than Max-min, but slightly underperforms Min-min
A WOA-based optimization approach for task scheduling in cloud Computing systems
Task scheduling in cloud computing can directly
affect the resource usage and operational cost of a system. To
improve the efficiency of task executions in a cloud, various
metaheuristic algorithms, as well as their variations, have been
proposed to optimize the scheduling. In this work, for the
first time, we apply the latest metaheuristics WOA (the whale
optimization algorithm) for cloud task scheduling with a multiobjective optimization model, aiming at improving the performance of a cloud system with given computing resources. On that
basis, we propose an advanced approach called IWC (Improved
WOA for Cloud task scheduling) to further improve the optimal
solution search capability of the WOA-based method. We present
the detailed implementation of IWC and our simulation-based
experiments show that the proposed IWC has better convergence
speed and accuracy in searching for the optimal task scheduling
plans, compared to the current metaheuristic algorithms. Moreover, it can also achieve better performance on system resource
utilization, in the presence of both small and large-scale tasks
A genetic algorithm enhanced automatic data flow management solution for facilitating data intensive applications in the cloud
National Basic Research Program (973) of China and Science and Technology Commission of Shanghai Municipalit
Recent advances in petri nets and concurrency
CEUR Workshop Proceeding
Scheduling in Grid Computing Environment
Scheduling in Grid computing has been active area of research since its
beginning. However, beginners find very difficult to understand related
concepts due to a large learning curve of Grid computing. Thus, there is a need
of concise understanding of scheduling in Grid computing area. This paper
strives to present concise understanding of scheduling and related
understanding of Grid computing system. The paper describes overall picture of
Grid computing and discusses important sub-systems that enable Grid computing
possible. Moreover, the paper also discusses concepts of resource scheduling
and application scheduling and also presents classification of scheduling
algorithms. Furthermore, the paper also presents methodology used for
evaluating scheduling algorithms including both real system and simulation
based approaches. The presented work on scheduling in Grid containing concise
understandings of scheduling system, scheduling algorithm, and scheduling
methodology would be very useful to users and researchersComment: Fourth International Conference on Advanced Computing & Communication
Technologies (ACCT), 201
Intelligent Business Process Optimization for the Service Industry
The company's sustainable competitive advantage derives from its capacity to create value for customers and to adapt the operational practices to changing situations. Business processes are the heart of each company. Therefore process excellence has become a key issue. This book introduces a novel approach focusing on the autonomous optimization of business processes by applying sophisticated machine learning techniques such as Relational Reinforcement Learning and Particle Swarm Optimization
- …