Proposal and Development of a Reconfigurable Parallel Job Scheduling Algorithm

Size: px
Start display at page:

Download "Proposal and Development of a Reconfigurable Parallel Job Scheduling Algorithm"

Transcription

1 Proposal and Development of a Reconfigurable Parallel Job Scheduling Algorithm Luís Fabrício Wanderley Góes, Carlos Augusto Paiva da Silva Martins Graduate Program in Electrical Engineering PUC Minas {lfwgoes,capsm}@pucminas.br Abstract. In parallel computers, jobs and user requirements change dynamically, creating a great challenge to parallel job schedulers. Parallel job scheduling consists in the decision on how to allocate jobs to a parallel computer along the time. Thus, a parallel job scheduling algorithm, ideally, needs a flexible behavior to adapt to the workload and environment variations. We showed that a fixed behavior parallel job scheduling algorithm cannot provide the best performance for all workloads and parallel computers. So, we proposed an algorithm that is capable to dynamically change its structure (configuration) and consequently its behavior, according to environment and workload variations. Particularly in this research, we used concepts of reconfiguration in a specific class of parallel job scheduling called gang scheduling. Our results showed that the performance of our algorithm (Reconfigurable Gang Scheduling Algorithm - RGSA) was around 40% (upper bound) better than the other fixed gang scheduling algorithms. 1. Introduction Nowadays, the service quality requirements of users and institutions increased. Thus, computer systems that provide many services (particularly, parallel computers) need to be highly utilized and provide a short response time for users jobs. Parallel job schedulers should match both requirements and workload (jobs) with resource availability (processors, memory etc.) in order to maximize the system s performance. The main problem is that workload, requirements and resources may change continuously and parallel computers use job scheduling algorithms with a fixed behavior, which treat all these situations in the same way. In order to deal with this problem, many works have been developed to make job scheduling algorithms more flexible and adaptable [1], [4], [6], [14]. Up to now, a poorly explored solution is the use of reconfiguration in parallel job scheduling algorithms. Reconfigurable computing emerged as a paradigm to fill in the gap between hardware and software, reaching better performance than software and more flexibility than hardware [2], [3], [4], [16]. The reconfigurable devices including FPGAs (Field Programmable Gate Arrays) contain an array of computing elements or constructive blocks, whose functionalities are determined through the programming of configuration bits. Thus, an FPGA can implement different behaviors not established at design time. Because of this, reconfigurable devices (hardware) are improving the solutions for problems from different areas [2], [3], [4], [16].

2 Our main hypothesis is: a parallel job scheduling algorithm with a fixed (inflexible) behavior cannot be the best one for all situations. To verify our hypothesis, we propose a set of experiments to show that the use of a fixed behavior algorithm is not efficient. Thus, we propose a solution to our problem that provides the required flexibility to a parallel job scheduling algorithm. We use reconfiguration concepts, or extend the concepts used in reconfigurable devices to the algorithm level. With this feature, a parallel job scheduling algorithm can assume different configurations, according to input parameters such as: performance metrics (utilization, mean response time of jobs etc.) and workload characteristics (mean execution time of jobs, mean parallelism degree of jobs etc.). Also, a reconfiguration causes the algorithm to assume a good configuration for a particular situation considering the system s state at a given moment. According to a deep bibliographic revision presented in [14], we found researches that apply reconfiguration in software, but we did not find a previous research that used it on algorithms. In [9], we used a first approach to build a reconfigurable algorithm of a static parallel job scheduling algorithm. We improved this first approach to reach our present stage. 2. Reconfigurable Parallel Job Scheduling Algorithm Among parallel job scheduling algorithms, we remark gang scheduling algorithms. They have been intensely studied in the last decade [1], [5], [14], and demonstrated many advantages over other parallel job scheduling algorithms, for instance, they: provide interactive response time for short jobs, through preemption; prevent long jobs from monopolizing processors; maximize the system s utilization etc [1], [4], [6], [14]. In this research, we proposed a model of a gang scheduling algorithm which is composed of at least four parts: a packing scheme, a re-packing scheme, a queue policy and a multiprogramming level [14]. (a) Figure 1. (a) Reconfigurable Algorithm Architecture; (b) The Frameset of the Basic Layer of RGSA. A reconfigurable algorithm is composed of constructive blocks and frames, which makes possible to change its behavior by altering its configuration (structure). It is organized in three layers: the Basic Layer (BL), the Reconfigurable Layer (RL) and the Configuration Control Layer (CCL), as shown in Fig.1 (a). The BL is a frameset composed of data structures (for storage) and frames (action and control). An action (b)

3 frame represents a part or phase of an algorithm, while a control frame controls a specific characteristic of a data structure. The RL is a configuration or an instance of the BL, in which every frame is filled out with one compatible building block at a certain moment. A building block is a possible implementation of a frame. The CCL is responsible for selecting and loading the building blocks that fill out the frames at a given moment. Those decisions may be made based upon: input parameters, dynamic workload information, commands from the operating system, user s choice etc. To deal with the reconfiguration overhead, we have three important aspects: the CCL layer update, the selection of a configuration and the configuration loading. In the experimental results presented in [14], we showed that the configuration loading overhead can be neglect when compared to the high performance gains provided by reconfigurable algorithms. But the selection of the best configuration is not a trivial task and presents a tradeoff between performance and complexity. The CCL design, which deals with the selection process, is a key problem that can be done using artificial intelligence and statistic techniques to analyze past information and to predict which configuration should be used. To design a reconfigurable algorithm, we must execute the following steps: i) to choose a set of traditional algorithms to solve a certain problem; ii) to identify the common parts (functionalities and data structures); iii) to model each part of the algorithm as a frame; iv) to identify and specify possible constructive blocks per frame; v) to create the CCL layer. In our proposed solution, called Reconfigurable Gang Scheduling Algorithm (RGSA), as show in Fig. 1 (b), each part is a different frame with constructive blocks. The Packing Schemes Frame may be filled out with different packing schemes based on capacity: first fit or best fit. The Re-Packing Schemes Frame may be filled out with the slot unification and/or alternative scheduling re-packing schemes. The Queue Policies Frame can use the First Come First Served (FCFS) or Short Job First (SJF) policies. Finally, the Multiprogramming Levels Frame can be filled out with the Unlimited or Limited Multiprogramming Level Constructive Blocks. In our RGSA, the CCL is implemented as a selection structure that selects the best configuration according to some workload parameters: execution time, parallelism degree, predominance degree and performance metric. The CCL evaluates these parameters and dynamically reconfigures RGSA to the best configuration. 3. Experimental Results In this research, we defined, proposed, developed, implemented and analyzed the performance of RGSA. Moreover, we developed a simulation library called JSDESLib [15] and a cluster simulation tool called ClusterSim [7] [8] to provide our experimental environment. To validate our hypothesis, to simulate and to analyze RGSA [6] [14], we compared each frame of RGSA with 12 traditional and proposed gang scheduling algorithms using 12 different workloads (with 10 simulation seeds) in a 16-node cluster, which was a total of 1440 simulations. In the RGSA frames analysis, we can remark (Fig. 2(a)): i) Packing Schemes Frame.: Considering all metrics, on average, both packing schemes (first fit and best fit) presented an equivalent performance. It suggests that other constructive blocks may be used; ii) Re-Packing Schemes Frame.: Considering all metrics, on average, both re-

4 packing schemes (slot unification and alternative scheduling) presented an equivalent performance. It suggests that other constructive blocks may be used or developed; iii) Multiprogramming Levels Frame.: Considering utilization and simulation time metrics, the unlimited multiprogramming level presented a better performance to homogenous workloads, and the limited one to the heterogeneous workloads. For reaction time and slowdown metrics, the unlimited multiprogramming level presented best performance in all cases. Finally, considering the response time metric, on average, the limited multiprogramming level was the best; iv) Queue Policies Frame.: Considering the utilization and simulation time metrics, the SJF policy was always better than the FCFS. For reaction time and slowdown metrics, on average, the SJF policy presented a better performance, but in some specific cases FCFS was better than the other. Finally, considering the response time metric, the SJF policy presented a better performance to homogenous workloads and the FCFS to the heterogeneous workload. [5], [6], [14]. Figure 2. (a) Mean utilization considering each frame; (b) RGSA speedup over other gang scheduling algorithms. One of the most important results is shown in Fig. 2 (b), in which the performance of RGSA, on average, has an upper bound of 40% better than the other gang scheduling algorithms for all tested workloads. These results show that a parallel job scheduling algorithm with a fixed behavior cannot be the best in all situations and the use or reconfiguration can lead to a high speedup. Considering the slowdown and reaction time metrics, RGSA performance gain is near 100% better than 8 different algorithms. If we consider only the utilization metric, the speedup of RGSA over Alg05 increases from 18.83% to 42.32%. In this case, Alg05 (the best on average) would be worse than Alg03, which is considered the worst algorithm. In our specific case, the longest simulation took about seconds (3 hours and 36 minutes). So we got to reduce the simulation time in 40% (1 hour and 26 minutes) using RGSA. But in real systems, a workload may execute for a week. In that case, a reduction of 40% would mean to reduce the workload execution time in 3 days. 4. Conclusions In this paper, we summarized the main results and contributions obtained in the master thesis [14]. The most important contributions were: i) the proposal and performance analysis of RGSA, which showed that the use of reconfiguration can provide a flexible behavior to a scheduling algorithm and lead the parallel computer to a high performance; ii) to show that a fixed behavior parallel job scheduling algorithm cannot be the best one for all situations;

5 More information 1, results, tools and documentation about this research are available on: References [1] Feitelson, D., Rudolph, L., Schwiegelshohn, U., Sevcik K., Wong, P., Theory and Practice in Parallel Job Scheduling, 3rd Workshop on Job Scheduling Strategies for Parallel Processing, pp. 1-34, [2] Dehon, A., The Density Advantage of Configurable Computing, IEEE Computer, Vol. 33, [3] Martins, C. A. P. S., Ordonez, E. D. M., Corrêa, J. B. T., Carvalho, M. B., Computação Reconfigurável: Conceitos, Tendências e Aplicações, Jornada de Atualização em Informática, [4] Wiseman, Y., Feitelson, D., Paired Gang Scheduling, IEEE Transactions Parallel & Distributed Systems, pp , [5] Góes, L. F. W., Martins, C. A. P. S., Escalonamento Paralelo de Tarefas: Conceitos, Simulação e Análise de Desempenho, WSCAD, pp , [6] Góes, L. F. W., Martins, C. A. P. S., Reconfigurable Gang Scheduling Algorithm, 10th Workshop on Job Scheduling Strategies for Parallel Processing, LNCS, 34-45, [7] Pousa, C. V., Ramos, L. E. S., Góes, L. F. W., Martins, C. A. P. S., Extending ClusterSim with Message-Passing and Distributed Shared Memory Modules, ISHPCSE, Kluwer Publishers, [8] Góes, L. F. W., Ramos, L. E. S., Martins, C. A. P. S., ClusterSim: A Java Parallel Discrete Event Simulation Tool for Cluster Computing, IEEE International Conference on Cluster Computing, [9] Góes, L. F. W., Martins, C. A. P. S., RJSSim: A Reconfigurable Job Scheduling Simulator for Parallel Processing Learning, 33rd ASEE/IEEE Frontiers in Education Conference, pp. F3C3-8, [10] Pousa, C. V., Góes, L. F. W., Ramos, L. E. S., Penha, D. O., Martins, C. A. P. S., A Comparative Performance Analysis of Parallel Algorithm Models, 3rd CSiTeA, Rio de Janeiro, [11] Góes, L. F. W., Ramos, L. E. S., Martins, C. A. P. S., Performance Analysis of Parallel Programs using Prober as a Single Aid Tool. IEEE 14th SBAC-PAD, pp , [12] Góes, L. F. W., Ramos, L. E. S., Martins, C. A. P. S., Parallel Image Filtering Using WPVM in a Windows Multicomputer. 2nd CSiTeA, Foz do Iguaçu, [13] Ramos, L. E. S., Góes, L. F. W., Martins, C. A. P. S., Teaching And Learning Parallel Processing Through Performance Analysis Using Prober. 32nd IEEE Frontiers in Education Conference, [14] Góes, L. F. W., Martins, C. A. P. S., Proposal and Development of a Reconfigurable Parallel Job Scheduling Algorithm, Master Thesis, PUC Minas, May, [15] Góes, L. F. W., et. all, JSDESLib: A Library for the Development of Discrete-Event Simulation Tools of Parallel Systems, Workshop on Java for Parallel Computing, IPDPS, (to be published) [16] Pousa, C. V., Góes, L. F. W., Martins, C. A. P. S., Reconfigurable Object Consistency Model, Workshop on Advances in Parallel Computational Models, IPDPS, (to be published) 1 This work started as an undergraduate research, in which the author won the best paper award in technology area in PUC Minas. This master thesis resulted in three open source software tools (Prober [11], ClusterSim [5],[7],[8] and JSDESLib [15]), the publication of two book chapters [5],[7], papers in some national and international conferences [8], [9], [10], [11], [12], [13], [15] and a paper in JSSPP [6], the world s best conference in parallel job scheduling and the 19 th conference ranked in CiteSeer. Other researches applied the concepts of reconfigurable algorithms in different problems [16].

Contributions to Gang Scheduling

Contributions to Gang Scheduling CHAPTER 7 Contributions to Gang Scheduling In this Chapter, we present two techniques to improve Gang Scheduling policies by adopting the ideas of this Thesis. The first one, Performance- Driven Gang Scheduling,

More information

A Job Self-Scheduling Policy for HPC Infrastructures

A Job Self-Scheduling Policy for HPC Infrastructures A Job Self-Scheduling Policy for HPC Infrastructures F. Guim, J. Corbalan Barcelona Supercomputing Center {francesc.guim,julita.corbalan}@bsc.edu Abstract. The number of distributed high performance computing

More information

A Performance Study of Load Balancing Strategies for Approximate String Matching on an MPI Heterogeneous System Environment

A Performance Study of Load Balancing Strategies for Approximate String Matching on an MPI Heterogeneous System Environment A Performance Study of Load Balancing Strategies for Approximate String Matching on an MPI Heterogeneous System Environment Panagiotis D. Michailidis and Konstantinos G. Margaritis Parallel and Distributed

More information

Reconfigurable Architecture Requirements for Co-Designed Virtual Machines

Reconfigurable Architecture Requirements for Co-Designed Virtual Machines Reconfigurable Architecture Requirements for Co-Designed Virtual Machines Kenneth B. Kent University of New Brunswick Faculty of Computer Science Fredericton, New Brunswick, Canada ken@unb.ca Micaela Serra

More information

Grid Computing Approach for Dynamic Load Balancing

Grid Computing Approach for Dynamic Load Balancing International Journal of Computer Sciences and Engineering Open Access Review Paper Volume-4, Issue-1 E-ISSN: 2347-2693 Grid Computing Approach for Dynamic Load Balancing Kapil B. Morey 1*, Sachin B. Jadhav

More information

Load Balancing on a Non-dedicated Heterogeneous Network of Workstations

Load Balancing on a Non-dedicated Heterogeneous Network of Workstations Load Balancing on a Non-dedicated Heterogeneous Network of Workstations Dr. Maurice Eggen Nathan Franklin Department of Computer Science Trinity University San Antonio, Texas 78212 Dr. Roger Eggen Department

More information

A General Framework for Tracking Objects in a Multi-Camera Environment

A General Framework for Tracking Objects in a Multi-Camera Environment A General Framework for Tracking Objects in a Multi-Camera Environment Karlene Nguyen, Gavin Yeung, Soheil Ghiasi, Majid Sarrafzadeh {karlene, gavin, soheil, majid}@cs.ucla.edu Abstract We present a framework

More information

Resource Allocation Schemes for Gang Scheduling

Resource Allocation Schemes for Gang Scheduling Resource Allocation Schemes for Gang Scheduling B. B. Zhou School of Computing and Mathematics Deakin University Geelong, VIC 327, Australia D. Walsh R. P. Brent Department of Computer Science Australian

More information

Lightweight Service-Based Software Architecture

Lightweight Service-Based Software Architecture Lightweight Service-Based Software Architecture Mikko Polojärvi and Jukka Riekki Intelligent Systems Group and Infotech Oulu University of Oulu, Oulu, Finland {mikko.polojarvi,jukka.riekki}@ee.oulu.fi

More information

C-Meter: A Framework for Performance Analysis of Computing Clouds

C-Meter: A Framework for Performance Analysis of Computing Clouds C-Meter: A Framework for Performance Analysis of Computing Clouds Nezih Yigitbasi, Alexandru Iosup, and Dick Epema {M.N.Yigitbasi, D.H.J.Epema, A.Iosup}@tudelft.nl Delft University of Technology Simon

More information

International Workshop on Field Programmable Logic and Applications, FPL '99

International Workshop on Field Programmable Logic and Applications, FPL '99 International Workshop on Field Programmable Logic and Applications, FPL '99 DRIVE: An Interpretive Simulation and Visualization Environment for Dynamically Reconægurable Systems? Kiran Bondalapati and

More information

Load Balancing Scheduling with Shortest Load First

Load Balancing Scheduling with Shortest Load First , pp. 171-178 http://dx.doi.org/10.14257/ijgdc.2015.8.4.17 Load Balancing Scheduling with Shortest Load First Ranjan Kumar Mondal 1, Enakshmi Nandi 2 and Debabrata Sarddar 3 1 Department of Computer Science

More information

FPGA area allocation for parallel C applications

FPGA area allocation for parallel C applications 1 FPGA area allocation for parallel C applications Vlad-Mihai Sima, Elena Moscu Panainte, Koen Bertels Computer Engineering Faculty of Electrical Engineering, Mathematics and Computer Science Delft University

More information

Keywords: Dynamic Load Balancing, Process Migration, Load Indices, Threshold Level, Response Time, Process Age.

Keywords: Dynamic Load Balancing, Process Migration, Load Indices, Threshold Level, Response Time, Process Age. Volume 3, Issue 10, October 2013 ISSN: 2277 128X International Journal of Advanced Research in Computer Science and Software Engineering Research Paper Available online at: www.ijarcsse.com Load Measurement

More information

Scheduling Algorithms in MapReduce Distributed Mind

Scheduling Algorithms in MapReduce Distributed Mind Scheduling Algorithms in MapReduce Distributed Mind Karthik Kotian, Jason A Smith, Ye Zhang Schedule Overview of topic (review) Hypothesis Research paper 1 Research paper 2 Research paper 3 Project software

More information

159.735. Final Report. Cluster Scheduling. Submitted by: Priti Lohani 04244354

159.735. Final Report. Cluster Scheduling. Submitted by: Priti Lohani 04244354 159.735 Final Report Cluster Scheduling Submitted by: Priti Lohani 04244354 1 Table of contents: 159.735... 1 Final Report... 1 Cluster Scheduling... 1 Table of contents:... 2 1. Introduction:... 3 1.1

More information

Fair Scheduling Algorithm with Dynamic Load Balancing Using In Grid Computing

Fair Scheduling Algorithm with Dynamic Load Balancing Using In Grid Computing Research Inventy: International Journal Of Engineering And Science Vol.2, Issue 10 (April 2013), Pp 53-57 Issn(e): 2278-4721, Issn(p):2319-6483, Www.Researchinventy.Com Fair Scheduling Algorithm with Dynamic

More information

EFFICIENT SCHEDULING STRATEGY USING COMMUNICATION AWARE SCHEDULING FOR PARALLEL JOBS IN CLUSTERS

EFFICIENT SCHEDULING STRATEGY USING COMMUNICATION AWARE SCHEDULING FOR PARALLEL JOBS IN CLUSTERS EFFICIENT SCHEDULING STRATEGY USING COMMUNICATION AWARE SCHEDULING FOR PARALLEL JOBS IN CLUSTERS A.Neela madheswari 1 and R.S.D.Wahida Banu 2 1 Department of Information Technology, KMEA Engineering College,

More information

How To Compare Load Sharing And Job Scheduling In A Network Of Workstations

How To Compare Load Sharing And Job Scheduling In A Network Of Workstations A COMPARISON OF LOAD SHARING AND JOB SCHEDULING IN A NETWORK OF WORKSTATIONS HELEN D. KARATZA Department of Informatics Aristotle University of Thessaloniki 546 Thessaloniki, GREECE Email: karatza@csd.auth.gr

More information

Real Time Network Server Monitoring using Smartphone with Dynamic Load Balancing

Real Time Network Server Monitoring using Smartphone with Dynamic Load Balancing www.ijcsi.org 227 Real Time Network Server Monitoring using Smartphone with Dynamic Load Balancing Dhuha Basheer Abdullah 1, Zeena Abdulgafar Thanoon 2, 1 Computer Science Department, Mosul University,

More information

C-Meter: A Framework for Performance Analysis of Computing Clouds

C-Meter: A Framework for Performance Analysis of Computing Clouds 9th IEEE/ACM International Symposium on Cluster Computing and the Grid C-Meter: A Framework for Performance Analysis of Computing Clouds Nezih Yigitbasi, Alexandru Iosup, and Dick Epema Delft University

More information

Figure 1. The cloud scales: Amazon EC2 growth [2].

Figure 1. The cloud scales: Amazon EC2 growth [2]. - Chung-Cheng Li and Kuochen Wang Department of Computer Science National Chiao Tung University Hsinchu, Taiwan 300 shinji10343@hotmail.com, kwang@cs.nctu.edu.tw Abstract One of the most important issues

More information

Task Scheduling in Hadoop

Task Scheduling in Hadoop Task Scheduling in Hadoop Sagar Mamdapure Munira Ginwala Neha Papat SAE,Kondhwa SAE,Kondhwa SAE,Kondhwa Abstract Hadoop is widely used for storing large datasets and processing them efficiently under distributed

More information

Benefits of Global Grid Computing for Job Scheduling

Benefits of Global Grid Computing for Job Scheduling Benefits of Global Grid Computing for Job Scheduling Carsten Ernemann, Volker Hamscher, Ramin Yahyapour Computer Engineering Institute Otto-Hahn-Str. 4, 44221 Dortmund, Germany Email: {carsten.ernemann,

More information

MEASURING PERFORMANCE OF DYNAMIC LOAD BALANCING ALGORITHMS IN DISTRIBUTED COMPUTING APPLICATIONS

MEASURING PERFORMANCE OF DYNAMIC LOAD BALANCING ALGORITHMS IN DISTRIBUTED COMPUTING APPLICATIONS MEASURING PERFORMANCE OF DYNAMIC LOAD BALANCING ALGORITHMS IN DISTRIBUTED COMPUTING APPLICATIONS Priyesh Kanungo 1 Professor and Senior Systems Engineer (Computer Centre), School of Computer Science and

More information

Self-Tuning Job Scheduling Strategies for the Resource Management of HPC Systems and Computational Grids

Self-Tuning Job Scheduling Strategies for the Resource Management of HPC Systems and Computational Grids Self-Tuning Job Scheduling Strategies for the Resource Management of HPC Systems and Computational Grids Dissertation von Achim Streit Schriftliche Arbeit zur Erlangung des Grades eines Doktors der Naturwissenschaften

More information

BACKFILLING STRATEGIES FOR SCHEDULING STREAMS OF JOBS ON COMPUTATIONAL FARMS

BACKFILLING STRATEGIES FOR SCHEDULING STREAMS OF JOBS ON COMPUTATIONAL FARMS BACKFILLING STRATEGIES FOR SCHEDULING STREAMS OF JOBS ON COMPUTATIONAL FARMS A.D.Techiouba, G.Capannini, Ranieri Baraglia, D.Puppin, M.Pasquali ISTI,CNR Via Moruzzi, 1 Pisa, Italy techioub@cli.di.unipi.it

More information

On the Placement of Management and Control Functionality in Software Defined Networks

On the Placement of Management and Control Functionality in Software Defined Networks On the Placement of Management and Control Functionality in Software Defined Networks D.Tuncer et al. Department of Electronic & Electrical Engineering University College London, UK ManSDN/NfV 13 November

More information

Performance Modeling and Analysis of a Database Server with Write-Heavy Workload

Performance Modeling and Analysis of a Database Server with Write-Heavy Workload Performance Modeling and Analysis of a Database Server with Write-Heavy Workload Manfred Dellkrantz, Maria Kihl 2, and Anders Robertsson Department of Automatic Control, Lund University 2 Department of

More information

Networking Virtualization Using FPGAs

Networking Virtualization Using FPGAs Networking Virtualization Using FPGAs Russell Tessier, Deepak Unnikrishnan, Dong Yin, and Lixin Gao Reconfigurable Computing Group Department of Electrical and Computer Engineering University of Massachusetts,

More information

The Impact of Migration on Parallel Job. The Pennsylvania State University. University Park PA 16802. fyyzhang, anandg@cse.psu.edu. P. O.

The Impact of Migration on Parallel Job. The Pennsylvania State University. University Park PA 16802. fyyzhang, anandg@cse.psu.edu. P. O. The Impact of Migration on Parallel Job Scheduling for Distributed Systems Y. Zhang 1,H.Franke 2, J. E. Moreira 2, and A. Sivasubramaniam 1 1 Department of Computer Science & Engineering The Pennsylvania

More information

Adaptive Processor Allocation for Moldable Jobs in Computational Grid

Adaptive Processor Allocation for Moldable Jobs in Computational Grid 10 International Journal of Grid and High Performance Computing, 1(1), 10-21, January-March 2009 Adaptive Processor Allocation for Moldable Jobs in Computational Grid Kuo-Chan Huang, National Taichung

More information

Motivation: Smartphone Market

Motivation: Smartphone Market Motivation: Smartphone Market Smartphone Systems External Display Device Display Smartphone Systems Smartphone-like system Main Camera Front-facing Camera Central Processing Unit Device Display Graphics

More information

Scheduling Allowance Adaptability in Load Balancing technique for Distributed Systems

Scheduling Allowance Adaptability in Load Balancing technique for Distributed Systems Scheduling Allowance Adaptability in Load Balancing technique for Distributed Systems G.Rajina #1, P.Nagaraju #2 #1 M.Tech, Computer Science Engineering, TallaPadmavathi Engineering College, Warangal,

More information

CHAPTER 5 WLDMA: A NEW LOAD BALANCING STRATEGY FOR WAN ENVIRONMENT

CHAPTER 5 WLDMA: A NEW LOAD BALANCING STRATEGY FOR WAN ENVIRONMENT 81 CHAPTER 5 WLDMA: A NEW LOAD BALANCING STRATEGY FOR WAN ENVIRONMENT 5.1 INTRODUCTION Distributed Web servers on the Internet require high scalability and availability to provide efficient services to

More information

Group Based Load Balancing Algorithm in Cloud Computing Virtualization

Group Based Load Balancing Algorithm in Cloud Computing Virtualization Group Based Load Balancing Algorithm in Cloud Computing Virtualization Rishi Bhardwaj, 2 Sangeeta Mittal, Student, 2 Assistant Professor, Department of Computer Science, Jaypee Institute of Information

More information

Heterogeneous Workload Consolidation for Efficient Management of Data Centers in Cloud Computing

Heterogeneous Workload Consolidation for Efficient Management of Data Centers in Cloud Computing Heterogeneous Workload Consolidation for Efficient Management of Data Centers in Cloud Computing Deep Mann ME (Software Engineering) Computer Science and Engineering Department Thapar University Patiala-147004

More information

A STUDY OF THE BEHAVIOUR OF THE MOBILE AGENT IN THE NETWORK MANAGEMENT SYSTEMS

A STUDY OF THE BEHAVIOUR OF THE MOBILE AGENT IN THE NETWORK MANAGEMENT SYSTEMS A STUDY OF THE BEHAVIOUR OF THE MOBILE AGENT IN THE NETWORK MANAGEMENT SYSTEMS Tarag Fahad, Sufian Yousef & Caroline Strange School of Design and Communication Systems, Anglia Polytechnic University Victoria

More information

Parallel Computing. Benson Muite. benson.muite@ut.ee http://math.ut.ee/ benson. https://courses.cs.ut.ee/2014/paralleel/fall/main/homepage

Parallel Computing. Benson Muite. benson.muite@ut.ee http://math.ut.ee/ benson. https://courses.cs.ut.ee/2014/paralleel/fall/main/homepage Parallel Computing Benson Muite benson.muite@ut.ee http://math.ut.ee/ benson https://courses.cs.ut.ee/2014/paralleel/fall/main/homepage 3 November 2014 Hadoop, Review Hadoop Hadoop History Hadoop Framework

More information

A Multi-criteria Class-based Job Scheduler for Large Computing Farms

A Multi-criteria Class-based Job Scheduler for Large Computing Farms A Multi-criteria Class-based Job Scheduler for Large Computing Farms R. Baraglia 1, P. Dazzi 1, and R. Ferrini 1 1 ISTI A. Faedo, CNR, Pisa, Italy Abstract In this paper we propose a new multi-criteria

More information

Evaluation of Job-Scheduling Strategies for Grid Computing

Evaluation of Job-Scheduling Strategies for Grid Computing Evaluation of Job-Scheduling Strategies for Grid Computing Volker Hamscher 1, Uwe Schwiegelshohn 1, Achim Streit 2, and Ramin Yahyapour 1 1 Computer Engineering Institute, University of Dortmund, 44221

More information

Effects of Job Placement on Scheduling Performance

Effects of Job Placement on Scheduling Performance Castellón, Septiembre 2008 393 Effects of Job Placement on Scheduling Performance Jose Antonio Pascual 1, Jose Miguel-Alonso 1 Abstract This paper studies the influence that job placement may have on scheduling

More information

Dynamic Load Balancing of Virtual Machines using QEMU-KVM

Dynamic Load Balancing of Virtual Machines using QEMU-KVM Dynamic Load Balancing of Virtual Machines using QEMU-KVM Akshay Chandak Krishnakant Jaju Technology, College of Engineering, Pune. Maharashtra, India. Akshay Kanfade Pushkar Lohiya Technology, College

More information

Job Scheduling in a Distributed System Using Backfilling with Inaccurate Runtime Computations

Job Scheduling in a Distributed System Using Backfilling with Inaccurate Runtime Computations 2010 International Conference on Complex, Intelligent and Software Intensive Systems Job Scheduling in a Distributed System Using Backfilling with Inaccurate Runtime Computations Sofia K. Dimitriadou Department

More information

Hardware Task Scheduling and Placement in Operating Systems for Dynamically Reconfigurable SoC

Hardware Task Scheduling and Placement in Operating Systems for Dynamically Reconfigurable SoC Hardware Task Scheduling and Placement in Operating Systems for Dynamically Reconfigurable SoC Yuan-Hsiu Chen and Pao-Ann Hsiung National Chung Cheng University, Chiayi, Taiwan 621, ROC. pahsiung@cs.ccu.edu.tw

More information

FAULT TOLERANCE FOR MULTIPROCESSOR SYSTEMS VIA TIME REDUNDANT TASK SCHEDULING

FAULT TOLERANCE FOR MULTIPROCESSOR SYSTEMS VIA TIME REDUNDANT TASK SCHEDULING FAULT TOLERANCE FOR MULTIPROCESSOR SYSTEMS VIA TIME REDUNDANT TASK SCHEDULING Hussain Al-Asaad and Alireza Sarvi Department of Electrical & Computer Engineering University of California Davis, CA, U.S.A.

More information

Keywords Distributed Computing, On Demand Resources, Cloud Computing, Virtualization, Server Consolidation, Load Balancing

Keywords Distributed Computing, On Demand Resources, Cloud Computing, Virtualization, Server Consolidation, Load Balancing Volume 5, Issue 1, January 2015 ISSN: 2277 128X International Journal of Advanced Research in Computer Science and Software Engineering Research Paper Available online at: www.ijarcsse.com Survey on Load

More information

Chapter 7 Memory Management

Chapter 7 Memory Management Operating Systems: Internals and Design Principles Chapter 7 Memory Management Eighth Edition William Stallings Frame Page Segment A fixed-length block of main memory. A fixed-length block of data that

More information

IMPROVED PROXIMITY AWARE LOAD BALANCING FOR HETEROGENEOUS NODES

IMPROVED PROXIMITY AWARE LOAD BALANCING FOR HETEROGENEOUS NODES www.ijecs.in International Journal Of Engineering And Computer Science ISSN:2319-7242 Volume 2 Issue 6 June, 2013 Page No. 1914-1919 IMPROVED PROXIMITY AWARE LOAD BALANCING FOR HETEROGENEOUS NODES Ms.

More information

Scalability and Classifications

Scalability and Classifications Scalability and Classifications 1 Types of Parallel Computers MIMD and SIMD classifications shared and distributed memory multicomputers distributed shared memory computers 2 Network Topologies static

More information

Preserving Message Integrity in Dynamic Process Migration

Preserving Message Integrity in Dynamic Process Migration Preserving Message Integrity in Dynamic Process Migration E. Heymann, F. Tinetti, E. Luque Universidad Autónoma de Barcelona Departamento de Informática 8193 - Bellaterra, Barcelona, Spain e-mail: e.heymann@cc.uab.es

More information

Efficient Load Balancing using VM Migration by QEMU-KVM

Efficient Load Balancing using VM Migration by QEMU-KVM International Journal of Computer Science and Telecommunications [Volume 5, Issue 8, August 2014] 49 ISSN 2047-3338 Efficient Load Balancing using VM Migration by QEMU-KVM Sharang Telkikar 1, Shreyas Talele

More information

GEDAE TM - A Graphical Programming and Autocode Generation Tool for Signal Processor Applications

GEDAE TM - A Graphical Programming and Autocode Generation Tool for Signal Processor Applications GEDAE TM - A Graphical Programming and Autocode Generation Tool for Signal Processor Applications Harris Z. Zebrowitz Lockheed Martin Advanced Technology Laboratories 1 Federal Street Camden, NJ 08102

More information

Latency in High Performance Trading Systems Feb 2010

Latency in High Performance Trading Systems Feb 2010 Latency in High Performance Trading Systems Feb 2010 Stephen Gibbs Automated Trading Group Overview Review the architecture of a typical automated trading system Review the major sources of latency, many

More information

Experimental Evaluation of Horizontal and Vertical Scalability of Cluster-Based Application Servers for Transactional Workloads

Experimental Evaluation of Horizontal and Vertical Scalability of Cluster-Based Application Servers for Transactional Workloads 8th WSEAS International Conference on APPLIED INFORMATICS AND MUNICATIONS (AIC 8) Rhodes, Greece, August 2-22, 28 Experimental Evaluation of Horizontal and Vertical Scalability of Cluster-Based Application

More information

Architectures and Platforms

Architectures and Platforms Hardware/Software Codesign Arch&Platf. - 1 Architectures and Platforms 1. Architecture Selection: The Basic Trade-Offs 2. General Purpose vs. Application-Specific Processors 3. Processor Specialisation

More information

Reconfigurable Low Area Complexity Filter Bank Architecture for Software Defined Radio

Reconfigurable Low Area Complexity Filter Bank Architecture for Software Defined Radio Reconfigurable Low Area Complexity Filter Bank Architecture for Software Defined Radio 1 Anuradha S. Deshmukh, 2 Prof. M. N. Thakare, 3 Prof.G.D.Korde 1 M.Tech (VLSI) III rd sem Student, 2 Assistant Professor(Selection

More information

How To Balance A Web Server With Remaining Capacity

How To Balance A Web Server With Remaining Capacity Remaining Capacity Based Load Balancing Architecture for Heterogeneous Web Server System Tsang-Long Pao Dept. Computer Science and Engineering Tatung University Taipei, ROC Jian-Bo Chen Dept. Computer

More information

Cloud Storage Solution for WSN Based on Internet Innovation Union

Cloud Storage Solution for WSN Based on Internet Innovation Union Cloud Storage Solution for WSN Based on Internet Innovation Union Tongrang Fan 1, Xuan Zhang 1, Feng Gao 1 1 School of Information Science and Technology, Shijiazhuang Tiedao University, Shijiazhuang,

More information

MAXIMIZING RESTORABLE THROUGHPUT IN MPLS NETWORKS

MAXIMIZING RESTORABLE THROUGHPUT IN MPLS NETWORKS MAXIMIZING RESTORABLE THROUGHPUT IN MPLS NETWORKS 1 M.LAKSHMI, 2 N.LAKSHMI 1 Assitant Professor, Dept.of.Computer science, MCC college.pattukottai. 2 Research Scholar, Dept.of.Computer science, MCC college.pattukottai.

More information

Stream Processing on GPUs Using Distributed Multimedia Middleware

Stream Processing on GPUs Using Distributed Multimedia Middleware Stream Processing on GPUs Using Distributed Multimedia Middleware Michael Repplinger 1,2, and Philipp Slusallek 1,2 1 Computer Graphics Lab, Saarland University, Saarbrücken, Germany 2 German Research

More information

A Study on the Game Programming Education Based on Educational Game Engine at School

A Study on the Game Programming Education Based on Educational Game Engine at School Journal of Education and Learning; Vol. 1, No. 2; 2012 ISSN 1927-5250 E-ISSN 1927-5269 Published by Canadian Center of Science and Education A Study on the Game Programming Education Based on Educational

More information

Adaptive Task Scheduling for Multi Job MapReduce

Adaptive Task Scheduling for Multi Job MapReduce Adaptive Task Scheduling for MultiJob MapReduce Environments Jordà Polo, David de Nadal, David Carrera, Yolanda Becerra, Vicenç Beltran, Jordi Torres and Eduard Ayguadé Barcelona Supercomputing Center

More information

Lightweight Monitoring of Label Switched Paths for Bandwidth Management

Lightweight Monitoring of Label Switched Paths for Bandwidth Management Lightweight ing of Label Switched Paths for Bandwidth Management P. Vilà, J.L. Marzo, E. Calle, L. Carrillo Institut d Informàtica i Aplicacions Universitat de Girona Girona (Spain) { perev marzo eusebi

More information

A Hybrid Load Balancing Policy underlying Cloud Computing Environment

A Hybrid Load Balancing Policy underlying Cloud Computing Environment A Hybrid Load Balancing Policy underlying Cloud Computing Environment S.C. WANG, S.C. TSENG, S.S. WANG*, K.Q. YAN* Chaoyang University of Technology 168, Jifeng E. Rd., Wufeng District, Taichung 41349

More information

General Overview of Shared-Memory Multiprocessor Systems

General Overview of Shared-Memory Multiprocessor Systems CHAPTER 2 General Overview of Shared-Memory Multiprocessor Systems Abstract The performance of a multiprocessor system is determined by all of its components: architecture, operating system, programming

More information

Load Balancing on a Grid Using Data Characteristics

Load Balancing on a Grid Using Data Characteristics Load Balancing on a Grid Using Data Characteristics Jonathan White and Dale R. Thompson Computer Science and Computer Engineering Department University of Arkansas Fayetteville, AR 72701, USA {jlw09, drt}@uark.edu

More information

New Metrics for Scheduling Jobs on a Cluster of Virtual Machines

New Metrics for Scheduling Jobs on a Cluster of Virtual Machines New Metrics for Scheduling Jobs on a Cluster of Machines Yanbin Liu, Norman Bobroff, Liana Fong, Seetharami Seelam IBM T. J. Watson Research Center {ygliu,bobroff,llfong,sseelam}@us.ibm.com Javier Delgado

More information

In: Proceedings of RECPAD 2002-12th Portuguese Conference on Pattern Recognition June 27th- 28th, 2002 Aveiro, Portugal

In: Proceedings of RECPAD 2002-12th Portuguese Conference on Pattern Recognition June 27th- 28th, 2002 Aveiro, Portugal Paper Title: Generic Framework for Video Analysis Authors: Luís Filipe Tavares INESC Porto lft@inescporto.pt Luís Teixeira INESC Porto, Universidade Católica Portuguesa lmt@inescporto.pt Luís Corte-Real

More information

Designing and Embodiment of Software that Creates Middle Ware for Resource Management in Embedded System

Designing and Embodiment of Software that Creates Middle Ware for Resource Management in Embedded System , pp.97-108 http://dx.doi.org/10.14257/ijseia.2014.8.6.08 Designing and Embodiment of Software that Creates Middle Ware for Resource Management in Embedded System Suk Hwan Moon and Cheol sick Lee Department

More information

STUDY AND SIMULATION OF A DISTRIBUTED REAL-TIME FAULT-TOLERANCE WEB MONITORING SYSTEM

STUDY AND SIMULATION OF A DISTRIBUTED REAL-TIME FAULT-TOLERANCE WEB MONITORING SYSTEM STUDY AND SIMULATION OF A DISTRIBUTED REAL-TIME FAULT-TOLERANCE WEB MONITORING SYSTEM Albert M. K. Cheng, Shaohong Fang Department of Computer Science University of Houston Houston, TX, 77204, USA http://www.cs.uh.edu

More information

Distributed and Dynamic Load Balancing in Cloud Data Center

Distributed and Dynamic Load Balancing in Cloud Data Center Available Online at www.ijcsmc.com International Journal of Computer Science and Mobile Computing A Monthly Journal of Computer Science and Information Technology IJCSMC, Vol. 4, Issue. 5, May 2015, pg.233

More information

Hectiling: An Integration of Fine and Coarse Grained Load Balancing Strategies 1

Hectiling: An Integration of Fine and Coarse Grained Load Balancing Strategies 1 Copyright 1998 IEEE. Published in the Proceedings of HPDC 7 98, 28 31 July 1998 at Chicago, Illinois. Personal use of this material is permitted. However, permission to reprint/republish this material

More information

The Association of System Performance Professionals

The Association of System Performance Professionals The Association of System Performance Professionals The Computer Measurement Group, commonly called CMG, is a not for profit, worldwide organization of data processing professionals committed to the measurement

More information

B-bleaching: Agile Overtraining Avoidance in the WiSARD Weightless Neural Classifier

B-bleaching: Agile Overtraining Avoidance in the WiSARD Weightless Neural Classifier B-bleaching: Agile Overtraining Avoidance in the WiSARD Weightless Neural Classifier Danilo S. Carvalho 1,HugoC.C.Carneiro 1,FelipeM.G.França 1, Priscila M. V. Lima 2 1- Universidade Federal do Rio de

More information

Towards a Resource Aware Scheduler in Hadoop

Towards a Resource Aware Scheduler in Hadoop Towards a Resource Aware Scheduler in Hadoop Mark Yong, Nitin Garegrat, Shiwali Mohan Computer Science and Engineering, University of Michigan, Ann Arbor December 21, 2009 Abstract Hadoop-MapReduce is

More information

Analysis and Comparison of CPU Scheduling Algorithms

Analysis and Comparison of CPU Scheduling Algorithms Analysis and Comparison of CPU Scheduling Algorithms Pushpraj Singh 1, Vinod Singh 2, Anjani Pandey 3 1,2,3 Assistant Professor, VITS Engineering College Satna (MP), India Abstract Scheduling is a fundamental

More information

KEYWORDS. Control Systems, Urban Affairs, Transportation, Telecommunications, Distributed Processors. ABSTRACT

KEYWORDS. Control Systems, Urban Affairs, Transportation, Telecommunications, Distributed Processors. ABSTRACT TRAFFIC TELEMATICS SOFTWARE ENVIRONMENT E. Peytchev, A. Bargiela. Real Time Telemetry Systems - Simulation and Modelling Group, Department of Computing The Nottingham Trent University, Burton Street, Nottingham,

More information

A Comparison of General Approaches to Multiprocessor Scheduling

A Comparison of General Approaches to Multiprocessor Scheduling A Comparison of General Approaches to Multiprocessor Scheduling Jing-Chiou Liou AT&T Laboratories Middletown, NJ 0778, USA jing@jolt.mt.att.com Michael A. Palis Department of Computer Science Rutgers University

More information

Advances in Smart Systems Research : ISSN 2050-8662 : http://nimbusvault.net/publications/koala/assr/ Vol. 3. No. 3 : pp.

Advances in Smart Systems Research : ISSN 2050-8662 : http://nimbusvault.net/publications/koala/assr/ Vol. 3. No. 3 : pp. Advances in Smart Systems Research : ISSN 2050-8662 : http://nimbusvault.net/publications/koala/assr/ Vol. 3. No. 3 : pp.49-54 : isrp13-005 Optimized Communications on Cloud Computer Processor by Using

More information

Xeon+FPGA Platform for the Data Center

Xeon+FPGA Platform for the Data Center Xeon+FPGA Platform for the Data Center ISCA/CARL 2015 PK Gupta, Director of Cloud Platform Technology, DCG/CPG Overview Data Center and Workloads Xeon+FPGA Accelerator Platform Applications and Eco-system

More information

Masters in Information Technology

Masters in Information Technology Computer - Information Technology MSc & MPhil - 2015/6 - July 2015 Masters in Information Technology Programme Requirements Taught Element, and PG Diploma in Information Technology: 120 credits: IS5101

More information

Key Words: Dynamic Load Balancing, and Distributed System

Key Words: Dynamic Load Balancing, and Distributed System DYNAMIC ROTATING LOAD BALANCING ALGORITHM IN DISTRIBUTED SYSTEMS ROSE SULEIMAN AL DAHOUD ALI ISSA OTOUM Al-Zaytoonah University Al-Zaytoonah University Neelain University rosesuleiman@yahoo.com aldahoud@alzaytoonah.edu.jo

More information

Optimizing Shared Resource Contention in HPC Clusters

Optimizing Shared Resource Contention in HPC Clusters Optimizing Shared Resource Contention in HPC Clusters Sergey Blagodurov Simon Fraser University Alexandra Fedorova Simon Fraser University Abstract Contention for shared resources in HPC clusters occurs

More information

Multilevel Communication Aware Approach for Load Balancing

Multilevel Communication Aware Approach for Load Balancing Multilevel Communication Aware Approach for Load Balancing 1 Dipti Patel, 2 Ashil Patel Department of Information Technology, L.D. College of Engineering, Gujarat Technological University, Ahmedabad 1

More information

Efficient DNS based Load Balancing for Bursty Web Application Traffic

Efficient DNS based Load Balancing for Bursty Web Application Traffic ISSN Volume 1, No.1, September October 2012 International Journal of Science the and Internet. Applied However, Information this trend leads Technology to sudden burst of Available Online at http://warse.org/pdfs/ijmcis01112012.pdf

More information

Sla Aware Load Balancing Algorithm Using Join-Idle Queue for Virtual Machines in Cloud Computing

Sla Aware Load Balancing Algorithm Using Join-Idle Queue for Virtual Machines in Cloud Computing Sla Aware Load Balancing Using Join-Idle Queue for Virtual Machines in Cloud Computing Mehak Choudhary M.Tech Student [CSE], Dept. of CSE, SKIET, Kurukshetra University, Haryana, India ABSTRACT: Cloud

More information

Best Practises for LabVIEW FPGA Design Flow. uk.ni.com ireland.ni.com

Best Practises for LabVIEW FPGA Design Flow. uk.ni.com ireland.ni.com Best Practises for LabVIEW FPGA Design Flow 1 Agenda Overall Application Design Flow Host, Real-Time and FPGA LabVIEW FPGA Architecture Development FPGA Design Flow Common FPGA Architectures Testing and

More information

Analysis and Research of Cloud Computing System to Comparison of Several Cloud Computing Platforms

Analysis and Research of Cloud Computing System to Comparison of Several Cloud Computing Platforms Volume 1, Issue 1 ISSN: 2320-5288 International Journal of Engineering Technology & Management Research Journal homepage: www.ijetmr.org Analysis and Research of Cloud Computing System to Comparison of

More information

A Robust Dynamic Load-balancing Scheme for Data Parallel Application on Message Passing Architecture

A Robust Dynamic Load-balancing Scheme for Data Parallel Application on Message Passing Architecture A Robust Dynamic Load-balancing Scheme for Data Parallel Application on Message Passing Architecture Yangsuk Kee Department of Computer Engineering Seoul National University Seoul, 151-742, Korea Soonhoi

More information

Peter J. Denning, Naval Postgraduate School, Monterey, California

Peter J. Denning, Naval Postgraduate School, Monterey, California VIRTUAL MEMORY Peter J. Denning, Naval Postgraduate School, Monterey, California January 2008 Rev 6/5/08 Abstract: Virtual memory is the simulation of a storage space so large that users do not need to

More information

RESOURCE CO-ALLOCATION ALGORITHMS IN DISTRIBUTED JOB BATCH SCHEDULING Victor V. Toporkov, Alexander Bobchenkov, Dmitry Yemelyanov and Anna Toporkova

RESOURCE CO-ALLOCATION ALGORITHMS IN DISTRIBUTED JOB BATCH SCHEDULING Victor V. Toporkov, Alexander Bobchenkov, Dmitry Yemelyanov and Anna Toporkova RESOURCE CO-ALLOCATION ALGORITHMS IN DISTRIBUTED JOB BATCH SCHEDULING Victor V. Toporkov, Alexander Bobchenkov, Dmitry Yemelyanov and Anna Toporkova Summary In this work, we present slot selection algorithms

More information

Efficient Parallel Execution of Sequence Similarity Analysis Via Dynamic Load Balancing

Efficient Parallel Execution of Sequence Similarity Analysis Via Dynamic Load Balancing Efficient Parallel Execution of Sequence Similarity Analysis Via Dynamic Load Balancing James D. Jackson Philip J. Hatcher Department of Computer Science Kingsbury Hall University of New Hampshire Durham,

More information

A Framework for End-to-End Proactive Network Management

A Framework for End-to-End Proactive Network Management A Framework for End-to-End Proactive Network Management S. Hariri, Y. Kim, P. Varshney, Department of Electrical Engineering and Computer Science Syracuse University, Syracuse, NY 13244 {hariri, yhkim,varshey}@cat.syr.edu

More information

packet retransmitting based on dynamic route table technology, as shown in fig. 2 and 3.

packet retransmitting based on dynamic route table technology, as shown in fig. 2 and 3. Implementation of an Emulation Environment for Large Scale Network Security Experiments Cui Yimin, Liu Li, Jin Qi, Kuang Xiaohui National Key Laboratory of Science and Technology on Information System

More information

Seeking Opportunities for Hardware Acceleration in Big Data Analytics

Seeking Opportunities for Hardware Acceleration in Big Data Analytics Seeking Opportunities for Hardware Acceleration in Big Data Analytics Paul Chow High-Performance Reconfigurable Computing Group Department of Electrical and Computer Engineering University of Toronto Who

More information

Analysis of Job Scheduling Algorithms in Cloud Computing

Analysis of Job Scheduling Algorithms in Cloud Computing Analysis of Job Scheduling s in Cloud Computing Rajveer Kaur 1, Supriya Kinger 2 1 Research Fellow, Department of Computer Science and Engineering, SGGSWU, Fatehgarh Sahib, India, Punjab (140406) 2 Asst.Professor,

More information

Index Terms : Load rebalance, distributed file systems, clouds, movement cost, load imbalance, chunk.

Index Terms : Load rebalance, distributed file systems, clouds, movement cost, load imbalance, chunk. Load Rebalancing for Distributed File Systems in Clouds. Smita Salunkhe, S. S. Sannakki Department of Computer Science and Engineering KLS Gogte Institute of Technology, Belgaum, Karnataka, India Affiliated

More information

{emery,browne}@cs.utexas.edu ABSTRACT. Keywords scalable, load distribution, load balancing, work stealing

{emery,browne}@cs.utexas.edu ABSTRACT. Keywords scalable, load distribution, load balancing, work stealing Scalable Load Distribution and Load Balancing for Dynamic Parallel Programs E. Berger and J. C. Browne Department of Computer Science University of Texas at Austin Austin, Texas 78701 USA 01-512-471-{9734,9579}

More information

PERFORMANCE COMPARISON OF COMMON OBJECT REQUEST BROKER ARCHITECTURE(CORBA) VS JAVA MESSAGING SERVICE(JMS) BY TEAM SCALABLE

PERFORMANCE COMPARISON OF COMMON OBJECT REQUEST BROKER ARCHITECTURE(CORBA) VS JAVA MESSAGING SERVICE(JMS) BY TEAM SCALABLE PERFORMANCE COMPARISON OF COMMON OBJECT REQUEST BROKER ARCHITECTURE(CORBA) VS JAVA MESSAGING SERVICE(JMS) BY TEAM SCALABLE TIGRAN HAKOBYAN SUJAL PATEL VANDANA MURALI INTRODUCTION Common Object Request

More information