Virtual Machine Scheduling Management on Cloud Computing Using Artificial Bee Colony

Size: px
Start display at page:

Download "Virtual Machine Scheduling Management on Cloud Computing Using Artificial Bee Colony"

Transcription

1 , March 12-14, 2014, Hog Kog Virtual Machie Schedulig Maagemet o Cloud Computig Usig Artificial Bee Coloy B. Kruekaew ad W. Kimpa Abstract Resource schedulig maagemet desig o Cloud computig is a importat problem. Schedulig model, cost, quality of service, time, ad coditios of the request for access to services are factors to be focused. A good task scheduler should adapt its schedulig strategy to the chagig eviromet ad load balacig Cloud task schedulig policy. Therefore, i this paper, Artificial Bee Coloy (ABC) is applied to optimize the schedulig of Virtual Machie (VM) o Cloud computig. The mai cotributio of work is to aalyze the differece of VM load balacig algorithm ad to reduce the makespa of data processig time. The schedulig strategy was simulated usig CloudSim tools. Experimetal results idicated that the combiatio of the proposed ABC algorithm, schedulig based o the size of tasks, ad the Logest Job First (LJF) schedulig algorithm performed a good performace schedulig strategy i chagig eviromet ad balacig work load which ca reduce the makespa of data processig time. Idex Terms Artificial Bee Coloy, Cloud Computig, Schedulig Maagemet, Virtualizatio Machie R I. INTRODUCTION ECENTLY, iteret commuicatio has become oe of the most importat factors i daily life activities. Cosequetly, iteret is the ceter of data sharig. Due to the large amout of icreasig users, the data is ofte chaged or modified. This causes the heavy task schedulig for computers while less services ca be processed to serve umerous users. However, this problem ca be solved by usig ew techology of Cloud computig which focuses o etworkig ad computig, storage, ad data service resources. Cloud computig is a emergig cocept of iformatio techology service. It cosists of both ifrastructure as well as the applicatio services ad focuses o types of users requiremets. The users ca idetify their eeds through the software i Cloud. Cloud computig [1], [2] is a termiology used i describig various computig cocepts that ivolve a large umber of computers coected through a real-time commuicatio etwork such as the iteret. Cloud computig is the result of evolutio ad adoptio of existig techologies ad paradigms. Its goal is to allow the users to Mauscript received November 21, 2013; revised December 3, B. Kruekaew is with the Departmet of Computer Sciece, Faculty of Sciece, Kig Mogkut s Istitute of Techology Ladkrabag (KMITL), Chalogkrug Rd., Ladkrabag, Bagkok, 10520, Thailad ( s @kmitl.ac.th). W. Kimpa is with the Departmet of Computer Sciece, Faculty of Sciece, Kig Mogkut s Istitute of Techology Ladkrabag (KMITL), Chalogkrug Rd., Ladkrabag, Bagkok, 10520, Thailad ( kwarag@kmitl.ac.th). take advatages from these techologies without the requiremets of deep kowledge or expertise. The Cloud aims to reduce costs ad to provide the ease of resource maagemet. Virtualizatio is the priciple techology for Cloud computig. It provides the agility i operatios, ad reduces cost by icreasig ifrastructure utilizatio. O the other had, Cloud computig automates the process through which the users ca utilize resources o-demad. Virtualizatio [3], [4] is critical to Cloud computig because it delivers services by providig a platform for optimizig complex Iformatio Techology resources i a scalable maer. The mai aim of the virtualizatio is a ability to ru the multiple VMs o a sigle machie by sharig all the resources that belog to the hardware. The problem of load balacig services occurs whe the services from the users make a request to access to the same server while other servers have o request from the services. This pheomeo is called distributed load imbalace system. I this situatio, it ca be solved by schedulig the tasks or the services before usig the system. Therefore, a good task scheduler ca icrease the performace of resource utilizatio ad ca reduce the makespa of assiged tasks which is called distributed load balace system. Task schedulig i distributio system such as Cloud is used for balacig work load. It requires some coditios for example, stability of the system, makespa of work, ability to adapt to the eviromet chagig, ad etc. Those coditios i task maagemet are similar to the behaviors of Artificial Bee Coloy algorithm (ABC algorithm). ABC is ispired by the behavior of a hoey bee coloy i ectar collectio. Bee coloy based o the social behavior has the ability to adapt to the eviromet chagig. The suggestio for ehacig the performace of cloud task schedulig is to reduce the makespa of a give task set ad icreate performace of resource utilizatio by usig improved ABC algorithm. It ca be used to solve the problem ad the appropriate value ca be foud. Moreover, it has the ability to adapt to the eviromet chagig [5]- [7]. The structure of this paper is orgaized as follows: the sectio II presets a overview of the related work. The Artificial Bee Coloy is preseted i sectio III. Sectio IV presets Artificial Bee Coloy ispired schedulig ad load balacig algorithm. Sectio V is the experimetal results ad discussio. Fially the coclusio ad future work are preseted i sectio VI.

2 , March 12-14, 2014, Hog Kog II. RELATED WORK Schedulig ad load balacig techiques are crucial for implemetig the efficiet parallel ad distributed applicatios i makig the appropriate use of parallel ad distributed system. Task schedulig ca icrease the efficiecy of Cloud computig if it is able to work uder the reasoable resources [4], [8], [9]. Li et al. [10] proposed the tree structure method i order to solve Job-Shop Schedulig i supportig the eeds of a complex ad flexibility to Job-Shop Schedulig problem. It also appropriately maaged the specific features of model maagemet ad schedulig algorithm by usig Reusable Scheme ad Multi-Aget system. Later, Fag et al. [11] preseted task schedulig i Cloud computig cosiderig the requiremets of the users ad load balace i Cloud eviromet whe the users icrease ad chage the eviromet. The schedulig strategy was simulated by usig CloudSim toolkit package. Calheiros et al. [12], [13] developed the CloudSim simulatio for modelig ad simulatio of virtualized Cloud-based dataceter eviromets, icludig dedicated maagemet iterface for VMs, memory, storage, ad badwidth. Simulatio-based approaches ca evaluate Cloud computig system ad applicatio behaviors offerig sigificat beefits. Modal et al. [14] proposed troubleshoot of load balace i Cloud computig usig Stochastic Hill Climbig. I 2011, Hsu et al. [9] preseted a focus o eergy efficiecy i dataceter by cosiderig the task schedulig to physical server ad reducig eergy i the system. The criterio used to measure the performace of a eergy loss was to prepare computer exceeds the requiremet of the job. Experimet strategies for allocatig server to a sequece of jobs were a largest machie first heuristic, a best fit method, ad a mixed method. The experimet results idicated that all three algorithms waste less eergy cosumptio i overprovisio. I 2010, Hu et al. [15] itroduced the schedulig strategy o load balacig of VM resource i Cloud computig eviromet by adoptig a tree structure usig Geetic algorithm for schedulig. It cosidered previous data ad the curret state of work i advace to the performace behavior of the system which ca solve the problem of load imbalace i Cloud computig. I 2012, Wei et al. [16] preseted Geetic algorithm for schedulig i Cloud computig to icrease the system performace. Li et al. [17] proposed a Load Balacig At Coloy Optimizatio (LBACO) Algorithm. ACO was use to schedule o load balacig ad reduce makespa i Cloud. Karaboga et al., i 2012 [7], preseted ABC algorithm which was used to solve the problem ad fid the most appropriate value withi eviromet chagig. ABC algorithm based o the swarm-based optimizatio algorithm ad it is used to solve the optimizatio problems i searchig, electrical egieerig, data miig, ad etc. I the same year, Bitam et al. [18] proposed Bee Life algorithm which was used for schedulig i Cloud computig. Bee Life algorithm is ispired by the behavior ad reproductio of bee to fid food source. The algorithm evaluated the performace of the resources ad it has the aim to reduce time ad complexity of work. Miza et al. [19] preseted job schedulig i Hybrid cloud by modifyig Bee Life algorithm ad Greedy algorithm to achieve a affirmative respose from the ed users ad utilize the resources. III. ARTIFICIAL BEE COLONY ALGORITHM Artificial Bee Coloy (ABC) algorithm was proposed by Karaboga [5], [6], [20], [21]. It is the method to fid the appropriate value. This method is ispired by the foragig behavior of hoey bees. I ABC model, there are three kids of hoey bee to search food sources, which iclude scout bees search for food source radomly, employed bees search aroud the food source ad share food iformatio to the olooker bees, ad olooker bees calculate the fitess ad select the best food source. I the ature, bees ca exted themselves over log distaces i multiple directios. After scout bees fid the food source ad retur to the hive, they compare the quality of food source ad go to the dace floor to perform a dace kow as waggle dace. The waggle dace is the commuicatio of bees to shares the iformatio about directio of the food source, distace from the hive, ad the ectar amout of the food source. While sharig iformatio, bees evaluate the ectar quality ad eergy waste. After sharig iformatio o the dace floor, olooker bees select the best food source ad the scout bees will retur to the food source to brig ectar back to the hive. A pseudo code of ABC algorithm is described i Fig. 1. Fig. 1. Basic of ABC algorithm. IV. ARTIFICIAL BEE COLONY INSPIRED SCHEDULING AND LOAD BALANCING ALGORITHM Cloud computig provides a dyamic resource pool of VM accordig to differet requiremets from the users or the system. The routig of services which request to the diverse servers, deped o the Cloud maagemet policies based o load of idividual server. Schedulig maagemet o Cloud computig is differet degrees of loads o each ad every VM. This may lead to differet load amog the VMs. Load balacig techiques are effective i reducig the makespa ad respose time.

3 , March 12-14, 2014, Hog Kog Let VM = {VM 1, VM 2, VM 3,, VM N } is a set of N virtual machies ad Task = {task 1, task 2, task 3,, task K } is a set of K task to be scheduled ad processed i VM. All the machies are urelated but are paralleled. Schedulig is o-preemptive which meas that the processig of the tasks o VMs caot be iterrupted. The flowchart of the VM schedulig ad load balacig usig ABC algorithm is show i Fig. 2. capacity j = pe_um j pe_mips j + vm_bw j (2) Where capacity j is a capacity of VM j, pe_um j (processig elemet) is the umber processor i VM j, pe_mips j is millio istructios per secod of each processor i VM j, ad vm_bw j is the etwork badwidth ability of VM j. C. Select m Sites for Neighborhood Search Scout bees with the highest fitess are chose as Selected Bee ad the sites visitig by them are chose from eighborhood of m VMs. D. Recruit Bees for Selected Site Sed more bees to eighborhood of the best e VM, the evaluate the fitess based o (3). fit ij = i=1 task_legth i + IputFile_legth Evaluate capacity of VM j (capacity j ) (3) Where IputFile_legth is the legth of the task before executio. E. Select the Best Fitess Bees from Each Patch ad Assig Task to VM j For each roud, the bee with the best fitess will be chose to assig task i VM j. F. Calculate Load Balace After submittig tasks to the uder loaded VM j, the curret workload of all available VMs ca be calculated by usig the iformatio that received from the dataceter. Thus, Stadard Deviatio (S.D.) is calculated i order to measure the deviatios of load o VMs. Stadard deviatio of load ca be defied as (4): S. D. = 1 (X j=0 j X ) 2 (4) Fig. 2. Flowchart of the VM schedulig ad load balacig usig ABC algorithm. A. Iitialize Populatio At the begiig, the iitial scout bees are placed radomly i VMs o Cloud computig ad is the umber of scout bees. B. Evaluate the Fitess of the Populatio Fitess is calculated based o (1). fit ij = i=1 task_legth ij Evaluate capacity of VM j (capacity j ) Where fit ij is the fitess of the bees populatio of i i VM j or capacity of VM j with bee umber of i. task_legth is the legth of the task that has bee submitted i VM j ad capacity j is the capacity of VM j calculatig based o (2). (1) Processig time of a VM: X j = Mea of processig time of all VMs: X = k i=1 task_legth i (5) capacity j j=1 X j Where S. D. is Stadard deviatio of load, is umber of all VM. X j is processig time of VM j which ca be calculated based o (5) ad X is mea processig time of N virtual machies which ca be calculated based o (6). If the S.D. of the loaded VM is less tha or equal to the mea, the the system is i a balace state. O the other had, if the S.D. is higher tha the mea, the the system is i a imbalace state. (6)

4 , March 12-14, 2014, Hog Kog V. EXPERIMENTAL RESULTS A. Implemetatio Eviromet Accordig to the algorithm described above, the simulatio usig CloudSim Tools will be addressed. The experimets cosist of 10 dataceters ad tasks uder the simulatio platform. The parameters settig o the CloudSim is show i Table I. TABLE I PARAMETERS SETTING OF CLOUD SIMULATOR Type Parameter Value Dataceter Number of Dataceter 10 Number of Host 5 Virtual Machie (VM) Type of Maager Space_shared, Time_shared Number of PE per Host 2-4 Badwidth 2000 Host Memory (MB a ) Dataceter Cost (The cost of usig processig i this resource) Total umber of VMs MIPS b of PE c Number of PE per VM 1 VM Memory (MB) Badwidth (Bit) 1000 Type of Maager Time_shared Task Total umber of Tasks Legth of Task (MI d ) Number of PE per requiremet 1 Type of Maager Space_shared a MB = Megabyte, b PE = Processig Elemet, c MIPS (Millio Istructios Per Secod) is a measure of the processig speed of the computer, MI d is Millio Istructio. B. Parameters Settig of ABC Algorithm The parameters settig of improved ABC algorithm is show i Table II. TABLE II PARAMETERS SETTING OF IMPROVED ABC ALGORITHM Symbol Parameter Value Number of scout bees 1000 m Number of sites selected out of 5 visited site e Number of best site out of m select site 1 ep Number of bees recruited for best e site 800 sp Number of bees recruited for other (m-e) selected sites 200 C. Experimetal Results The evaluatio of the performace of the proposed method ca be described ad compared with the schedulig algorithm as the followigs: - First Come First Serve (FCFS) is cosiderig the sequece of arrival of the job. - Shortest Job First (SJF) is cosiderig the size of the job by selectig the shortest job first. - Logest Job First (LJF) is cosiderig the size of the job by selectig the logest job first. 10 There are two experimets; the first experimet is the compariso of the average makespa with the umber of requests chagig, the secod phase is the compariso of the average makespa with the umber of VMs chagig. I the first experimet, the compariso of the average makespa with the umber of requests chagig from the differet schedulig algorithm is performed. The umber of VMs is fixed as 50 VMs ad the umber of requests gradually icreased betwee tasks. The x axis shows the effect o performace of icreased requests as show i Fig. 3. Fig. 3. Compariso of average makespa amog FCFS, LJF, SJF, ABC_FCFS, ABC_LJF, ad ABC_SJF algorithm based o the fixed Number of VMs ad the icreased umber of the requests. Fig. 3 shows the average makespa of the schedulig usig improved ABC algorithm with FCFS, LJF, ad SJF (ABC_FCFS, ABC_LJF, ad ABC_SJF), comparig with the origial schedulig (FCFS, LJF, ad SJF) which was based o 50 fixed VMs ad the umber of icreasig requests. The experimetal results idicated that, while the umber of requests was icreasig, the average makespa cosequetly icreased. It ca be cocluded that ABC_LJF performed the effective results i the optimal schedulig o the loaded system. I the secod experimet, the compariso of the average makespa with the umber of VMs chagig from the differet schedulig algorithm is performed. The umber of tasks was fixed as 500 tasks ad gradually icreased the umber of VMs from 30 to 210 VMs. The x axis shows the effect o performace i icreasig the system size (VMs). Fig. 4 shows the average makespa of the schedulig usig ABC_FCFS, ABC_LJF, ad ABC_SJF comparig with FCFS, LJF, ad SJF which was based o the fixed umber of tasks ad the umber of icreasig VMs. It ca be cocluded that ABC_LJF performed better tha all methods ad its performace is more promiet i scalability.

5 , March 12-14, 2014, Hog Kog Fig. 4. Compariso of average makespa betwee FCFS, LJF, SJF, ABC_FCFS, ABC_LJF, ad ABC_SJF algorithm based o the fixed umber of the requests ad the icreased umber of VMs. VI. CONCLUSION AND FUTURE WORK This paper presets ABC optimizatio algorithm which ca solve the Virtual machie schedulig maagemet uder the evirometal chagig of the umber of VMs ad requests o Cloud computig. Eve i chagig eviromet, Cloud computig eeds to be operated i a stable system. Therefore, ABC algorithm is suitable for Cloud computig eviromet because the algorithm is able to effectively utilize the icreased system resources ad reduce makespa. The experimetal results illustrated that the proposed methods of ABC_LJF performed effective results tha all methods ad its performace is more promiet i scalability. Uder the circumstace of icreasig or decreasig the umber of servers, the load balacig algorithm should be doe by usig ABC_LJF algorithm i order to maitai system stability ad schedulig ad to prevet the system crash. For further studies, the preemptive Virtual machie scheduler operatig with idepedet ad heterogeeous tasks o Cloud computig will be focused. applicatios, i Artificial Itelligece Review 2012, Spriger Sciece Busiess Media B.V. 2012, March [8] S. T. Maguluri, R. Srikat, ad L. Yig, Stochastic models of load balacig ad schedulig i cloud computig clusters, i Proc. IEEE Ifocom, 2012, pp [9] Y. C. Hsu, P. Liu, ad J. J. Wu, Job sequece schedulig for cloud computig, i It. Cof. o Cloud ad Service Computig (CSC 2011), 2011, Dec. 2011, pp [10] N. Li, Z. Hog, ad H. Xiaotig, Dyamic itegratio mechaism for job-shop schedulig model base usig Multi-aget, i 2009 It. Cof. o Iformatio Maagemet, Iovatio Maagemet ad Idustrial Egieerig, 2009, vol. 4, Dec. 2009, pp [11] Y. Fag, F. Wag, ad J. Ge, A task schedulig algorithm based o load balacig i cloud computig, i Web Iformatio Systems ad Miig, Lecture Notes i Computer Sciece 2010, Vol. 6318, 2010, pp [12] R. N. Calheiros, R.Raja, C. A. F. D. Rose, ad R. Buyya, CloudSim: a toolkit for modelig ad simulatio of cloud computig eviromets ad evaluatio of resource provisioig algorithms, Software : Practice ad Experiece, Vol. 41, No.1, Ja. 2011, pp [13] R. N. Calheiros, R.Raja, C. A. F. D. Rose, ad R. Buyya, CloudSim: A ovel framework for modelig ad simulatio of cloud computig ifrastructures ad services, arxiv preprit arxiv: , [14] B. Modal, K. Dasgupta, ad P. Dutta, Load balacig i cloud computig usig Stochastic Hill Climbimg-A soft computig approach, i Procedia Tachology, vol. 4, 2011, pp [15] J. Hu, J. Gu, G. Su, ad T. Zhao, A schedulig strategy o load balacig of virtual machie resources i cloud computig eviromet, i 3rd It. Symp. o Parallel Architectures, Algorithms ad Programmig(PAAP), 2010, Dec. 2010, pp [16] Y. Wei, ad L. Tia. Research o cloud desig resources schedulig based o geetic algorithm, i 2012 It. Cof. o Systems ad Iformatics (ICSAI 2012), 2012, May 2012, pp [17] K. Li, G. Xu, G. Zhao, Y. Dog, ad D. Wag, Cloud task schedulig based o load balacig At Coloy Optimizatio, i 6 th Aual ChiaGrid Cof., 2011, Aug. 2011, pp [18] S. Bitam, Bees life algorithm for job schedulig i cloud computig, i Cof. o Computig ad Iformatio Techology (ICCIT 2012), 2012, pp [19] T. Miza, S. M. R. A. Masud, ad R. Latip, Modified bees life algorithm for job schedulig i hybrid cloud, i It. Joural of Egieerig ad Techology(IJET), 2012, vol. 2, o.6, Jue 2012, pp [20] D. Karaboga, A Idea based o hoey bee swarm for umerical optimizatio, i Techical Report TR06, Erciyes Uiversity, Egieerig Faculty, Computer Egieerig Departmet, [21] D.T. Pham, A. Ghabarzadeh, E. Koc, S. Otri, S. Rahim, ad M. Zaidi, "The Bees Algorithm-A ovel tool for complex optimisatio problems," i Proc. of IPROMS 2006 Cof., 2006, pp REFERENCES [1] K. Tag, J. M. Zhag, ad C. H. Feg, Applicatio cetric lifecycle framework i cloud, IEEE 8th It. Cof. o e-busiess Egieerig (ICEBE), 2011, Oct. 2011, pp [2] M. Armbrust, A. Fox, R. Griffith, A. D. Joseph, R. Katz, A. Kowiski, G. Lee, D. Patterso, A. Rabki, I. Stoica, ad M. Zaharia, A view of cloud computig, i Commuicatios of the acm, vol. 53, o. 4, April 2010, pp [3] K. Dutta, A smart job schedulig system for cloud computig service providers ad users: modelig ad simulatio, i 1st It l Cof. o Recet Advaces i Iformatio Techology RAIT-2012, [4] S.Sidhu, ad S. Mukherjee, Efficiet task schedulig algorithms for cloud computig eviromet, i High Performace Architecture ad Grid Computig, Commuicatios i Computer ad Iformatio Sciece, 2011, vol. 169, 2011, pp [5] D. Karaboga, ad B. Basturk, Artificial Bee Coloy (ABC) optimizatio algorithm for solvig costraied optimizatio problems, i IFSA 2007, LNAI 4529, 2007, pp [6] D. Karaboga, ad B. Basturk, O the performace of artificial bee coloy (ABC) algorithm, i Applied Soft Computig, 2008, pp [7] D. Karaboga, B. Gorkemli, C. Ozturk, ad N. Karaboga, A comprehesive survey: artificial bee coloy (ABC) algorithm ad

(VCP-310) 1-800-418-6789

(VCP-310) 1-800-418-6789 Maual VMware Lesso 1: Uderstadig the VMware Product Lie I this lesso, you will first lear what virtualizatio is. Next, you ll explore the products offered by VMware that provide virtualizatio services.

More information

Modified Line Search Method for Global Optimization

Modified Line Search Method for Global Optimization Modified Lie Search Method for Global Optimizatio Cria Grosa ad Ajith Abraham Ceter of Excellece for Quatifiable Quality of Service Norwegia Uiversity of Sciece ad Techology Trodheim, Norway {cria, ajith}@q2s.tu.o

More information

Comparative Analysis of Round Robin VM Load Balancing With Modified Round Robin VM Load Balancing Algorithms in Cloud Computing

Comparative Analysis of Round Robin VM Load Balancing With Modified Round Robin VM Load Balancing Algorithms in Cloud Computing Iteratioal Joural of Egieerig, Maagemet & Scieces (IJEMS) Comparative Aalysis of Roud Robi Balacig With Modified Roud Robi Balacig s i Cloud Computig Areeba Samee, D.K Budhwat Abstract Cloud computig is

More information

A model of Virtual Resource Scheduling in Cloud Computing and Its

A model of Virtual Resource Scheduling in Cloud Computing and Its A model of Virtual Resource Schedulig i Cloud Computig ad Its Solutio usig EDAs 1 Jiafeg Zhao, 2 Wehua Zeg, 3 Miu Liu, 4 Guagmig Li 1, First Author, 3 Cogitive Sciece Departmet, Xiame Uiversity, Xiame,

More information

Evaluating Model for B2C E- commerce Enterprise Development Based on DEA

Evaluating Model for B2C E- commerce Enterprise Development Based on DEA , pp.180-184 http://dx.doi.org/10.14257/astl.2014.53.39 Evaluatig Model for B2C E- commerce Eterprise Developmet Based o DEA Weli Geg, Jig Ta Computer ad iformatio egieerig Istitute, Harbi Uiversity of

More information

Reliability Analysis in HPC clusters

Reliability Analysis in HPC clusters Reliability Aalysis i HPC clusters Narasimha Raju, Gottumukkala, Yuda Liu, Chokchai Box Leagsuksu 1, Raja Nassar, Stephe Scott 2 College of Egieerig & Sciece, Louisiaa ech Uiversity Oak Ridge Natioal Lab

More information

*The most important feature of MRP as compared with ordinary inventory control analysis is its time phasing feature.

*The most important feature of MRP as compared with ordinary inventory control analysis is its time phasing feature. Itegrated Productio ad Ivetory Cotrol System MRP ad MRP II Framework of Maufacturig System Ivetory cotrol, productio schedulig, capacity plaig ad fiacial ad busiess decisios i a productio system are iterrelated.

More information

Chatpun Khamyat Department of Industrial Engineering, Kasetsart University, Bangkok, Thailand ocpky@hotmail.com

Chatpun Khamyat Department of Industrial Engineering, Kasetsart University, Bangkok, Thailand ocpky@hotmail.com SOLVING THE OIL DELIVERY TRUCKS ROUTING PROBLEM WITH MODIFY MULTI-TRAVELING SALESMAN PROBLEM APPROACH CASE STUDY: THE SME'S OIL LOGISTIC COMPANY IN BANGKOK THAILAND Chatpu Khamyat Departmet of Idustrial

More information

Optimize your Network. In the Courier, Express and Parcel market ADDING CREDIBILITY

Optimize your Network. In the Courier, Express and Parcel market ADDING CREDIBILITY Optimize your Network I the Courier, Express ad Parcel market ADDING CREDIBILITY Meetig today s challeges ad tomorrow s demads Aswers to your key etwork challeges ORTEC kows the highly competitive Courier,

More information

Analyzing Longitudinal Data from Complex Surveys Using SUDAAN

Analyzing Longitudinal Data from Complex Surveys Using SUDAAN Aalyzig Logitudial Data from Complex Surveys Usig SUDAAN Darryl Creel Statistics ad Epidemiology, RTI Iteratioal, 312 Trotter Farm Drive, Rockville, MD, 20850 Abstract SUDAAN: Software for the Statistical

More information

COMPARISON OF THE EFFICIENCY OF S-CONTROL CHART AND EWMA-S 2 CONTROL CHART FOR THE CHANGES IN A PROCESS

COMPARISON OF THE EFFICIENCY OF S-CONTROL CHART AND EWMA-S 2 CONTROL CHART FOR THE CHANGES IN A PROCESS COMPARISON OF THE EFFICIENCY OF S-CONTROL CHART AND EWMA-S CONTROL CHART FOR THE CHANGES IN A PROCESS Supraee Lisawadi Departmet of Mathematics ad Statistics, Faculty of Sciece ad Techoology, Thammasat

More information

C.Yaashuwanth Department of Electrical and Electronics Engineering, Anna University Chennai, Chennai 600 025, India..

C.Yaashuwanth Department of Electrical and Electronics Engineering, Anna University Chennai, Chennai 600 025, India.. (IJCSIS) Iteratioal Joural of Computer Sciece ad Iformatio Security, A New Schedulig Algorithms for Real Time Tasks C.Yaashuwath Departmet of Electrical ad Electroics Egieerig, Aa Uiversity Cheai, Cheai

More information

Data Analysis and Statistical Behaviors of Stock Market Fluctuations

Data Analysis and Statistical Behaviors of Stock Market Fluctuations 44 JOURNAL OF COMPUTERS, VOL. 3, NO. 0, OCTOBER 2008 Data Aalysis ad Statistical Behaviors of Stock Market Fluctuatios Ju Wag Departmet of Mathematics, Beijig Jiaotog Uiversity, Beijig 00044, Chia Email:

More information

Domain 1: Designing a SQL Server Instance and a Database Solution

Domain 1: Designing a SQL Server Instance and a Database Solution Maual SQL Server 2008 Desig, Optimize ad Maitai (70-450) 1-800-418-6789 Domai 1: Desigig a SQL Server Istace ad a Database Solutio Desigig for CPU, Memory ad Storage Capacity Requiremets Whe desigig a

More information

Towards Efficient Load Balancing and Green it Mechanisms in Cloud Environment

Towards Efficient Load Balancing and Green it Mechanisms in Cloud Environment World Applied Scieces Joural 29 (Data Miig ad Soft Computig Techiques): 159-165, 2014 ISSN 1818-4952 IDOSI Publicatios, 2014 DOI: 10.5829/idosi.wasj.2014.29.dmsct.30 Towards Efficiet Load Balacig ad Gree

More information

Recovery time guaranteed heuristic routing for improving computation complexity in survivable WDM networks

Recovery time guaranteed heuristic routing for improving computation complexity in survivable WDM networks Computer Commuicatios 30 (2007) 1331 1336 wwwelseviercom/locate/comcom Recovery time guarateed heuristic routig for improvig computatio complexity i survivable WDM etworks Lei Guo * College of Iformatio

More information

I. Chi-squared Distributions

I. Chi-squared Distributions 1 M 358K Supplemet to Chapter 23: CHI-SQUARED DISTRIBUTIONS, T-DISTRIBUTIONS, AND DEGREES OF FREEDOM To uderstad t-distributios, we first eed to look at aother family of distributios, the chi-squared distributios.

More information

INVESTMENT PERFORMANCE COUNCIL (IPC)

INVESTMENT PERFORMANCE COUNCIL (IPC) INVESTMENT PEFOMANCE COUNCIL (IPC) INVITATION TO COMMENT: Global Ivestmet Performace Stadards (GIPS ) Guidace Statemet o Calculatio Methodology The Associatio for Ivestmet Maagemet ad esearch (AIM) seeks

More information

Optimization of Large Data in Cloud computing using Replication Methods

Optimization of Large Data in Cloud computing using Replication Methods Optimizatio of Large Data i Cloud computig usig Replicatio Methods Vijaya -Kumar-C, Dr. G.A. Ramachadhra Computer Sciece ad Techology, Sri Krishadevaraya Uiversity Aatapuramu, AdhraPradesh, Idia Abstract-Cloud

More information

LOAD BALANCING IN PUBLIC CLOUD COMBINING THE CONCEPTS OF DATA MINING AND NETWORKING

LOAD BALANCING IN PUBLIC CLOUD COMBINING THE CONCEPTS OF DATA MINING AND NETWORKING LOAD BALACIG I PUBLIC CLOUD COMBIIG THE COCEPTS OF DATA MIIG AD ETWORKIG Priyaka R M. Tech Studet, Dept. of Computer Sciece ad Egieerig, AIET, Karataka, Idia Abstract Load balacig i the cloud computig

More information

International Journal on Emerging Technologies 1(2): 48-56(2010) ISSN : 0975-8364

International Journal on Emerging Technologies 1(2): 48-56(2010) ISSN : 0975-8364 e t Iteratioal Joural o Emergig Techologies (): 48-56(00) ISSN : 0975-864 Dyamic load balacig i distributed ad high performace parallel eterprise computig by embeddig MPI ad ope MP Sadip S. Chauha, Sadip

More information

Application and research of fuzzy clustering analysis algorithm under micro-lecture English teaching mode

Application and research of fuzzy clustering analysis algorithm under micro-lecture English teaching mode SHS Web of Cofereces 25, shscof/20162501018 Applicatio ad research of fuzzy clusterig aalysis algorithm uder micro-lecture Eglish teachig mode Yig Shi, Wei Dog, Chuyi Lou & Ya Dig Qihuagdao Istitute of

More information

ODBC. Getting Started With Sage Timberline Office ODBC

ODBC. Getting Started With Sage Timberline Office ODBC ODBC Gettig Started With Sage Timberlie Office ODBC NOTICE This documet ad the Sage Timberlie Office software may be used oly i accordace with the accompayig Sage Timberlie Office Ed User Licese Agreemet.

More information

A Method for Trust Quantificationin Cloud Computing Environments

A Method for Trust Quantificationin Cloud Computing Environments A Method for rust Quatificatioi Cloud Computig Eviromets Xiaohui Li,3, Jigsha He 2*,Bi Zhao 2, Jig Fag 2, Yixua Zhag 2, Hogxig Liag 4 College of Computer Sciece ad echology, Beiig Uiversity of echology

More information

IT Support. 020 8269 6878 n www.premierchoiceinternet.com n support@premierchoiceinternet.com. 30 Day FREE Trial. IT Support from 8p/user

IT Support. 020 8269 6878 n www.premierchoiceinternet.com n support@premierchoiceinternet.com. 30 Day FREE Trial. IT Support from 8p/user IT Support IT Support Premier Choice Iteret has bee providig reliable, proactive & affordable IT Support solutios to compaies based i Lodo ad the South East of Eglad sice 2002. Our goal is to provide our

More information

A Churn-prevented Bandwidth Allocation Algorithm for Dynamic Demands In IaaS Cloud

A Churn-prevented Bandwidth Allocation Algorithm for Dynamic Demands In IaaS Cloud A Chur-preveted Badwidth Allocatio Algorithm for Dyamic Demads I IaaS Cloud Jilei Yag, Hui Xie ad Jiayu Li Departmet of Computer Sciece ad Techology, Tsighua Uiversity, Beijig, P.R. Chia Tsighua Natioal

More information

Patentability of Computer Software and Business Methods

Patentability of Computer Software and Business Methods WIPO-MOST Itermediate Traiig Course o Practical Itellectual Property Issues i Busiess November 10 to 14, 2003 Patetability of Computer Software ad Busiess Methods Tomoko Miyamoto Patet Law Sectio Patet

More information

Multi-server Optimal Bandwidth Monitoring for QoS based Multimedia Delivery Anup Basu, Irene Cheng and Yinzhe Yu

Multi-server Optimal Bandwidth Monitoring for QoS based Multimedia Delivery Anup Basu, Irene Cheng and Yinzhe Yu Multi-server Optimal Badwidth Moitorig for QoS based Multimedia Delivery Aup Basu, Iree Cheg ad Yizhe Yu Departmet of Computig Sciece U. of Alberta Architecture Applicatio Layer Request receptio -coectio

More information

INVESTMENT PERFORMANCE COUNCIL (IPC) Guidance Statement on Calculation Methodology

INVESTMENT PERFORMANCE COUNCIL (IPC) Guidance Statement on Calculation Methodology Adoptio Date: 4 March 2004 Effective Date: 1 Jue 2004 Retroactive Applicatio: No Public Commet Period: Aug Nov 2002 INVESTMENT PERFORMANCE COUNCIL (IPC) Preface Guidace Statemet o Calculatio Methodology

More information

STUDENTS PARTICIPATION IN ONLINE LEARNING IN BUSINESS COURSES AT UNIVERSITAS TERBUKA, INDONESIA. Maya Maria, Universitas Terbuka, Indonesia

STUDENTS PARTICIPATION IN ONLINE LEARNING IN BUSINESS COURSES AT UNIVERSITAS TERBUKA, INDONESIA. Maya Maria, Universitas Terbuka, Indonesia STUDENTS PARTICIPATION IN ONLINE LEARNING IN BUSINESS COURSES AT UNIVERSITAS TERBUKA, INDONESIA Maya Maria, Uiversitas Terbuka, Idoesia Co-author: Amiuddi Zuhairi, Uiversitas Terbuka, Idoesia Kuria Edah

More information

1. Introduction. Scheduling Theory

1. Introduction. Scheduling Theory . Itroductio. Itroductio As a idepedet brach of Operatioal Research, Schedulig Theory appeared i the begiig of the 50s. I additio to computer systems ad maufacturig, schedulig theory ca be applied to may

More information

PROCEEDINGS OF THE YEREVAN STATE UNIVERSITY AN ALTERNATIVE MODEL FOR BONUS-MALUS SYSTEM

PROCEEDINGS OF THE YEREVAN STATE UNIVERSITY AN ALTERNATIVE MODEL FOR BONUS-MALUS SYSTEM PROCEEDINGS OF THE YEREVAN STATE UNIVERSITY Physical ad Mathematical Scieces 2015, 1, p. 15 19 M a t h e m a t i c s AN ALTERNATIVE MODEL FOR BONUS-MALUS SYSTEM A. G. GULYAN Chair of Actuarial Mathematics

More information

ADAPTIVE NETWORKS SAFETY CONTROL ON FUZZY LOGIC

ADAPTIVE NETWORKS SAFETY CONTROL ON FUZZY LOGIC 8 th Iteratioal Coferece o DEVELOPMENT AND APPLICATION SYSTEMS S u c e a v a, R o m a i a, M a y 25 27, 2 6 ADAPTIVE NETWORKS SAFETY CONTROL ON FUZZY LOGIC Vadim MUKHIN 1, Elea PAVLENKO 2 Natioal Techical

More information

Open Access Non-operating Urban Infrastructure Project Management Maturity Model on Agent Construction Based on the Evolutionary Algorithm

Open Access Non-operating Urban Infrastructure Project Management Maturity Model on Agent Construction Based on the Evolutionary Algorithm Sed Orders for Reprits to reprits@bethamsciece.ae 112 The Ope Costructio ad Buildig Techology Joural, 2015, 9, 112-116 Ope Access No-operatig Urba Ifrastructure Project Maagemet Maturity Model o Aget Costructio

More information

Measures of Spread and Boxplots Discrete Math, Section 9.4

Measures of Spread and Boxplots Discrete Math, Section 9.4 Measures of Spread ad Boxplots Discrete Math, Sectio 9.4 We start with a example: Example 1: Comparig Mea ad Media Compute the mea ad media of each data set: S 1 = {4, 6, 8, 10, 1, 14, 16} S = {4, 7, 9,

More information

Study on the application of the software phase-locked loop in tracking and filtering of pulse signal

Study on the application of the software phase-locked loop in tracking and filtering of pulse signal Advaced Sciece ad Techology Letters, pp.31-35 http://dx.doi.org/10.14257/astl.2014.78.06 Study o the applicatio of the software phase-locked loop i trackig ad filterig of pulse sigal Sog Wei Xia 1 (College

More information

A guide to School Employees' Well-Being

A guide to School Employees' Well-Being A guide to School Employees' Well-Beig Backgroud The public school systems i the Uited States employ more tha 6.7 millio people. This large workforce is charged with oe of the atio s critical tasks to

More information

Hypergeometric Distributions

Hypergeometric Distributions 7.4 Hypergeometric Distributios Whe choosig the startig lie-up for a game, a coach obviously has to choose a differet player for each positio. Similarly, whe a uio elects delegates for a covetio or you

More information

Skytron Asset Manager

Skytron Asset Manager Skytro Asset Maager Meet Asset Maager Skytro Asset Maager is a wireless, pateted RFID asset trackig techology specifically desiged for hospital facilities to deliver istat ROI withi a easy to istall, fully

More information

How to read A Mutual Fund shareholder report

How to read A Mutual Fund shareholder report Ivestor BulletI How to read A Mutual Fud shareholder report The SEC s Office of Ivestor Educatio ad Advocacy is issuig this Ivestor Bulleti to educate idividual ivestors about mutual fud shareholder reports.

More information

DAME - Microsoft Excel add-in for solving multicriteria decision problems with scenarios Radomir Perzina 1, Jaroslav Ramik 2

DAME - Microsoft Excel add-in for solving multicriteria decision problems with scenarios Radomir Perzina 1, Jaroslav Ramik 2 Itroductio DAME - Microsoft Excel add-i for solvig multicriteria decisio problems with scearios Radomir Perzia, Jaroslav Ramik 2 Abstract. The mai goal of every ecoomic aget is to make a good decisio,

More information

Heterogeneous Vehicle Routing Problem with profits Dynamic solving by Clustering Genetic Algorithm

Heterogeneous Vehicle Routing Problem with profits Dynamic solving by Clustering Genetic Algorithm IJCSI Iteratioal Joural of Computer Sciece Issues, Vol. 10, Issue 4, No 1, July 2013 ISSN (Prit): 1694-0814 ISSN (Olie): 1694-0784 www.ijcsi.org 247 Heterogeeous Vehicle Routig Problem with profits Dyamic

More information

Determining the sample size

Determining the sample size Determiig the sample size Oe of the most commo questios ay statisticia gets asked is How large a sample size do I eed? Researchers are ofte surprised to fid out that the aswer depeds o a umber of factors

More information

optimise your investment in Microsoft technology. Microsoft Consulting Services from CIBER

optimise your investment in Microsoft technology. Microsoft Consulting Services from CIBER optimise your ivestmet i Microsoft techology. Microsoft Cosultig Services from Microsoft Cosultig Services from MICROSOFT CONSULTING SERVICES ca help with ay stage i the lifecycle of adoptig Microsoft

More information

LEASE-PURCHASE DECISION

LEASE-PURCHASE DECISION Public Procuremet Practice STANDARD The decisio to lease or purchase should be cosidered o a case-by case evaluatio of comparative costs ad other factors. 1 Procuremet should coduct a cost/ beefit aalysis

More information

Automatic Tuning for FOREX Trading System Using Fuzzy Time Series

Automatic Tuning for FOREX Trading System Using Fuzzy Time Series utomatic Tuig for FOREX Tradig System Usig Fuzzy Time Series Kraimo Maeesilp ad Pitihate Soorasa bstract Efficiecy of the automatic currecy tradig system is time depedet due to usig fixed parameters which

More information

Clustering Algorithm Analysis of Web Users with Dissimilarity and SOM Neural Networks

Clustering Algorithm Analysis of Web Users with Dissimilarity and SOM Neural Networks JONAL OF SOFTWARE, VOL. 7, NO., NOVEMBER 533 Clusterig Algorithm Aalysis of Web Users with Dissimilarity ad SOM Neal Networks Xiao Qiag School of Ecoomics ad maagemet, Lazhou Jiaotog Uiversity, Lazhou;

More information

COMPUSOFT, An international journal of advanced computer technology, 3 (3), March-2014 (Volume-III, Issue-III)

COMPUSOFT, An international journal of advanced computer technology, 3 (3), March-2014 (Volume-III, Issue-III) COMPUSOFT, A iteratioal joural of advaced computer techology, 3 (3), March-2014 (Volume-III, Issue-III) ISSN:2320-0790 Adaptive Workload Maagemet for Efficiet Eergy Utilizatio o Cloud M.Prabakara 1, M.

More information

TruStore: The storage. system that grows with you. Machine Tools / Power Tools Laser Technology / Electronics Medical Technology

TruStore: The storage. system that grows with you. Machine Tools / Power Tools Laser Technology / Electronics Medical Technology TruStore: The storage system that grows with you Machie Tools / Power Tools Laser Techology / Electroics Medical Techology Everythig from a sigle source. Cotets Everythig from a sigle source. 2 TruStore

More information

Domain 1 - Describe Cisco VoIP Implementations

Domain 1 - Describe Cisco VoIP Implementations Maual ONT (642-8) 1-800-418-6789 Domai 1 - Describe Cisco VoIP Implemetatios Advatages of VoIP Over Traditioal Switches Voice over IP etworks have may advatages over traditioal circuit switched voice etworks.

More information

Locating Performance Monitoring Mobile Agents in Scalable Active Networks

Locating Performance Monitoring Mobile Agents in Scalable Active Networks Locatig Performace Moitorig Mobile Agets i Scalable Active Networks Amir Hossei Hadad, Mehdi Dehgha, ad Hossei Pedram Amirkabir Uiversity, Computer Sciece Faculty, Tehra, Ira a_haddad@itrc.ac.ir, {dehgha,

More information

Optimal Adaptive Bandwidth Monitoring for QoS Based Retrieval

Optimal Adaptive Bandwidth Monitoring for QoS Based Retrieval 1 Optimal Adaptive Badwidth Moitorig for QoS Based Retrieval Yizhe Yu, Iree Cheg ad Aup Basu (Seior Member) Departmet of Computig Sciece Uiversity of Alberta Edmoto, AB, T6G E8, CAADA {yizhe, aup, li}@cs.ualberta.ca

More information

Domain 1 Components of the Cisco Unified Communications Architecture

Domain 1 Components of the Cisco Unified Communications Architecture Maual CCNA Domai 1 Compoets of the Cisco Uified Commuicatios Architecture Uified Commuicatios (UC) Eviromet Cisco has itroduced what they call the Uified Commuicatios Eviromet which is used to separate

More information

Subject CT5 Contingencies Core Technical Syllabus

Subject CT5 Contingencies Core Technical Syllabus Subject CT5 Cotigecies Core Techical Syllabus for the 2015 exams 1 Jue 2014 Aim The aim of the Cotigecies subject is to provide a groudig i the mathematical techiques which ca be used to model ad value

More information

CHAPTER 7: Central Limit Theorem: CLT for Averages (Means)

CHAPTER 7: Central Limit Theorem: CLT for Averages (Means) CHAPTER 7: Cetral Limit Theorem: CLT for Averages (Meas) X = the umber obtaied whe rollig oe six sided die oce. If we roll a six sided die oce, the mea of the probability distributio is X P(X = x) Simulatio:

More information

JOURNAL OF SOFTWARE, VOL. 8, NO. 2, FEBRUARY 2013 481

JOURNAL OF SOFTWARE, VOL. 8, NO. 2, FEBRUARY 2013 481 480 JOURNAL OF SOFTWARE, VOL. 8, NO. 2, FEBRUARY 2013 Surve o Resource Allocatio Polic ad Job Schedulig Algorithms of Cloud Computig 1 Lu Huag Software School of Xiame Uiversit, Xiame, Chia Email: bagbag_4391@qq.com

More information

SaaS Resource Management Model and Architecture Research

SaaS Resource Management Model and Architecture Research Sed Orders for Reprits to reprits@bethamsciece.ae The Ope Cyberetics & Systemics Joural, 2015, 9, 433-442 433 SaaS Resource Maagemet Model ad Architecture Research Ope Access Zhag Xiaodog 1,2,*, Zha Deche

More information

Ideate, Inc. Training Solutions to Give you the Leading Edge

Ideate, Inc. Training Solutions to Give you the Leading Edge Ideate, Ic. Traiig News 2014v1 Ideate, Ic. Traiig Solutios to Give you the Leadig Edge New Packages For All Your Traiig Needs! Bill Johso Seior MEP - Applicatio Specialist Revit MEP Fudametals Ad More!

More information

Research Article Sign Data Derivative Recovery

Research Article Sign Data Derivative Recovery Iteratioal Scholarly Research Network ISRN Applied Mathematics Volume 0, Article ID 63070, 7 pages doi:0.540/0/63070 Research Article Sig Data Derivative Recovery L. M. Housto, G. A. Glass, ad A. D. Dymikov

More information

COMPUTING EFFICIENCY METRICS FOR SYNERGIC INTELLIGENT TRANSPORTATION SYSTEMS

COMPUTING EFFICIENCY METRICS FOR SYNERGIC INTELLIGENT TRANSPORTATION SYSTEMS Trasport ad Teleuicatio Vol, No 4, 200 Trasport ad Teleuicatio, 200, Volume, No 4, 66 74 Trasport ad Teleuicatio Istitute, Lomoosova, Riga, LV-09, Latvia COMPUTING EFFICIENCY METRICS FOR SYNERGIC INTELLIGENT

More information

Hypothesis testing. Null and alternative hypotheses

Hypothesis testing. Null and alternative hypotheses Hypothesis testig Aother importat use of samplig distributios is to test hypotheses about populatio parameters, e.g. mea, proportio, regressio coefficiets, etc. For example, it is possible to stipulate

More information

Output Analysis (2, Chapters 10 &11 Law)

Output Analysis (2, Chapters 10 &11 Law) B. Maddah ENMG 6 Simulatio 05/0/07 Output Aalysis (, Chapters 10 &11 Law) Comparig alterative system cofiguratio Sice the output of a simulatio is radom, the comparig differet systems via simulatio should

More information

hp calculators HP 12C Statistics - average and standard deviation Average and standard deviation concepts HP12C average and standard deviation

hp calculators HP 12C Statistics - average and standard deviation Average and standard deviation concepts HP12C average and standard deviation HP 1C Statistics - average ad stadard deviatio Average ad stadard deviatio cocepts HP1C average ad stadard deviatio Practice calculatig averages ad stadard deviatios with oe or two variables HP 1C Statistics

More information

Performance Analysis over Software Router vs. Hardware Router: A Practical Approach. Edward Guillen, Ana María Sossa and Edith Paola Estupiñán

Performance Analysis over Software Router vs. Hardware Router: A Practical Approach. Edward Guillen, Ana María Sossa and Edith Paola Estupiñán Proceedigs of the World Cogress o Egieerig ad Computer Sciece 0 Vol II WCECS 0, October 4-6, 0, Sa Fracisco, USA Performace Aalysis over Software Router vs. Hardware Router: A Practical Approach Edward

More information

Chapter 1 INTRODUCTION TO MAINTENANCE AND REPLACEMENT MODELS

Chapter 1 INTRODUCTION TO MAINTENANCE AND REPLACEMENT MODELS 1 Chapter 1 INTRODUCTION TO MAINTENANCE AND REPLACEMENT MODELS 2 Chapter 1 INTRODUCTION TO MAINTENANCE AND REPLACEMENT MODELS 1.0 MAINTENANCE Maiteace is a routie ad recurrig activity of keepig a particular

More information

June 3, 1999. Voice over IP

June 3, 1999. Voice over IP Jue 3, 1999 Voice over IP This applicatio ote discusses the Hypercom solutio for providig ed-to-ed Iteret protocol (IP) coectivity i a ew or existig Hypercom Hybrid Trasport Mechaism (HTM) etwork, reducig

More information

Installment Joint Life Insurance Actuarial Models with the Stochastic Interest Rate

Installment Joint Life Insurance Actuarial Models with the Stochastic Interest Rate Iteratioal Coferece o Maagemet Sciece ad Maagemet Iovatio (MSMI 4) Istallmet Joit Life Isurace ctuarial Models with the Stochastic Iterest Rate Nia-Nia JI a,*, Yue LI, Dog-Hui WNG College of Sciece, Harbi

More information

CONTROL CHART BASED ON A MULTIPLICATIVE-BINOMIAL DISTRIBUTION

CONTROL CHART BASED ON A MULTIPLICATIVE-BINOMIAL DISTRIBUTION www.arpapress.com/volumes/vol8issue2/ijrras_8_2_04.pdf CONTROL CHART BASED ON A MULTIPLICATIVE-BINOMIAL DISTRIBUTION Elsayed A. E. Habib Departmet of Statistics ad Mathematics, Faculty of Commerce, Beha

More information

CHAPTER 3 THE TIME VALUE OF MONEY

CHAPTER 3 THE TIME VALUE OF MONEY CHAPTER 3 THE TIME VALUE OF MONEY OVERVIEW A dollar i the had today is worth more tha a dollar to be received i the future because, if you had it ow, you could ivest that dollar ad ear iterest. Of all

More information

Research Method (I) --Knowledge on Sampling (Simple Random Sampling)

Research Method (I) --Knowledge on Sampling (Simple Random Sampling) Research Method (I) --Kowledge o Samplig (Simple Radom Samplig) 1. Itroductio to samplig 1.1 Defiitio of samplig Samplig ca be defied as selectig part of the elemets i a populatio. It results i the fact

More information

Matrix Model of Trust Management in P2P Networks

Matrix Model of Trust Management in P2P Networks Matrix Model of Trust Maagemet i P2P Networks Miroslav Novotý, Filip Zavoral Faculty of Mathematics ad Physics Charles Uiversity Prague, Czech Republic miroslav.ovoty@mff.cui.cz Abstract The trust maagemet

More information

An Optimization Approach for Utilizing Cloud Services for Mobile Devices in Cloud Environment

An Optimization Approach for Utilizing Cloud Services for Mobile Devices in Cloud Environment INFORMATICA, 2015, Vol. 26, No. 1, 89 110 89 2015 Vilius Uiversity DOI: http://dx.doi.org/10.15388/iformatica.2015.40 A Optimizatio Approach for Utilizig Cloud Services for Mobile Devices i Cloud Eviromet

More information

The analysis of the Cournot oligopoly model considering the subjective motive in the strategy selection

The analysis of the Cournot oligopoly model considering the subjective motive in the strategy selection The aalysis of the Courot oligopoly model cosiderig the subjective motive i the strategy selectio Shigehito Furuyama Teruhisa Nakai Departmet of Systems Maagemet Egieerig Faculty of Egieerig Kasai Uiversity

More information

ContactPro Desktop for Multi-Media Contact Center

ContactPro Desktop for Multi-Media Contact Center CotactPro Desktop for Multi-Media Cotact Ceter CCT CotactPro (CP) is the perfect solutio for the aget desktop i a Avaya multimedia call ceter eviromet. CotactPro empowers agets to efficietly serve customers

More information

A Balanced Scorecard

A Balanced Scorecard A Balaced Scorecard with VISION A Visio Iteratioal White Paper Visio Iteratioal A/S Aarhusgade 88, DK-2100 Copehage, Demark Phoe +45 35430086 Fax +45 35434646 www.balaced-scorecard.com 1 1. Itroductio

More information

Systems Design Project: Indoor Location of Wireless Devices

Systems Design Project: Indoor Location of Wireless Devices Systems Desig Project: Idoor Locatio of Wireless Devices Prepared By: Bria Murphy Seior Systems Sciece ad Egieerig Washigto Uiversity i St. Louis Phoe: (805) 698-5295 Email: bcm1@cec.wustl.edu Supervised

More information

Configuring Additional Active Directory Server Roles

Configuring Additional Active Directory Server Roles Maual Upgradig your MCSE o Server 2003 to Server 2008 (70-649) 1-800-418-6789 Cofigurig Additioal Active Directory Server Roles Active Directory Lightweight Directory Services Backgroud ad Cofiguratio

More information

Neolane Reporting. Neolane v6.1

Neolane Reporting. Neolane v6.1 Neolae Reportig Neolae v6.1 This documet, ad the software it describes, are provided subject to a Licese Agreemet ad may ot be used or copied outside of the provisios of the Licese Agreemet. No part of

More information

Convention Paper 6764

Convention Paper 6764 Audio Egieerig Society Covetio Paper 6764 Preseted at the 10th Covetio 006 May 0 3 Paris, Frace This covetio paper has bee reproduced from the author's advace mauscript, without editig, correctios, or

More information

France caters to innovative companies and offers the best research tax credit in Europe

France caters to innovative companies and offers the best research tax credit in Europe 1/5 The Frech Govermet has three objectives : > improve Frace s fiscal competitiveess > cosolidate R&D activities > make Frace a attractive coutry for iovatio Tax icetives have become a key elemet of public

More information

Baan Service Master Data Management

Baan Service Master Data Management Baa Service Master Data Maagemet Module Procedure UP069A US Documetiformatio Documet Documet code : UP069A US Documet group : User Documetatio Documet title : Master Data Maagemet Applicatio/Package :

More information

A Combined Continuous/Binary Genetic Algorithm for Microstrip Antenna Design

A Combined Continuous/Binary Genetic Algorithm for Microstrip Antenna Design A Combied Cotiuous/Biary Geetic Algorithm for Microstrip Atea Desig Rady L. Haupt The Pesylvaia State Uiversity Applied Research Laboratory P. O. Box 30 State College, PA 16804-0030 haupt@ieee.org Abstract:

More information

Trustwave Leverages OEM Partnerships to Deepen SIEM Market Penetration

Trustwave Leverages OEM Partnerships to Deepen SIEM Market Penetration Trustwave Leverages OEM Parterships to Deepe SIEM Market Peetratio Accelerated lauch of ew security appliaces delivers reveue growth with assist from UNICOM Egieerig ad Dell OEM Solutios Itroductio Trustwave

More information

Journal of Chemical and Pharmaceutical Research, 2015, 7(3):1184-1190. Research Article

Journal of Chemical and Pharmaceutical Research, 2015, 7(3):1184-1190. Research Article Available olie www.ocpr.com Joural of Chemical ad Pharmaceutical Research, 15, 7(3):1184-119 Research Article ISSN : 975-7384 CODEN(USA) : JCPRC5 Iformatio systems' buildig of small ad medium eterprises

More information

A Guide to Better Postal Services Procurement. A GUIDE TO better POSTAL SERVICES PROCUREMENT

A Guide to Better Postal Services Procurement. A GUIDE TO better POSTAL SERVICES PROCUREMENT A Guide to Better Postal Services Procuremet A GUIDE TO better POSTAL SERVICES PROCUREMENT itroductio The NAO has published a report aimed at improvig the procuremet of postal services i the public sector

More information

Supply Chain Management

Supply Chain Management Supply Chai Maagemet LOA Uiversity October 9, 205 Distributio D Distributio Authorized to Departmet of Defese ad U.S. DoD Cotractors Oly Aim High Fly - Fight - Wi Who am I? Dr. William A Cuigham PhD Ecoomics

More information

WHAT IS YOUR PRIORITY?

WHAT IS YOUR PRIORITY? MOVE AHEAD The uderlyig priciples of soud ivestmet should ot alter from decade to decade, but the applicatio of these priciples must be adapted to sigificat chages i the fiacial mechaisms ad climate. BENJAMIN

More information

SECTION 1.5 : SUMMATION NOTATION + WORK WITH SEQUENCES

SECTION 1.5 : SUMMATION NOTATION + WORK WITH SEQUENCES SECTION 1.5 : SUMMATION NOTATION + WORK WITH SEQUENCES Read Sectio 1.5 (pages 5 9) Overview I Sectio 1.5 we lear to work with summatio otatio ad formulas. We will also itroduce a brief overview of sequeces,

More information

In nite Sequences. Dr. Philippe B. Laval Kennesaw State University. October 9, 2008

In nite Sequences. Dr. Philippe B. Laval Kennesaw State University. October 9, 2008 I ite Sequeces Dr. Philippe B. Laval Keesaw State Uiversity October 9, 2008 Abstract This had out is a itroductio to i ite sequeces. mai de itios ad presets some elemetary results. It gives the I ite Sequeces

More information

Security Functions and Purposes of Network Devices and Technologies (SY0-301) 1-800-418-6789. Firewalls. Audiobooks

Security Functions and Purposes of Network Devices and Technologies (SY0-301) 1-800-418-6789. Firewalls. Audiobooks Maual Security+ Domai 1 Network Security Every etwork is uique, ad architecturally defied physically by its equipmet ad coectios, ad logically through the applicatios, services, ad idustries it serves.

More information

Capacity of Wireless Networks with Heterogeneous Traffic

Capacity of Wireless Networks with Heterogeneous Traffic Capacity of Wireless Networks with Heterogeeous Traffic Migyue Ji, Zheg Wag, Hamid R. Sadjadpour, J.J. Garcia-Lua-Aceves Departmet of Electrical Egieerig ad Computer Egieerig Uiversity of Califoria, Sata

More information

Platform Solution. White Paper. Transaction Based Pricing in BPO: In Tune with Changing Times

Platform Solution. White Paper. Transaction Based Pricing in BPO: In Tune with Changing Times Platform Solutio White Paper Trasactio Based Pricig i BPO: I Tue with Chagig Times About the Author(s) Raj Agrawal Curret Desigatio Raj heads the Platform Solutios Uit at TCS. I his career spaig over 19

More information

Research Article Allocating Freight Empty Cars in Railway Networks with Dynamic Demands

Research Article Allocating Freight Empty Cars in Railway Networks with Dynamic Demands Discrete Dyamics i Nature ad Society, Article ID 349341, 12 pages http://dx.doi.org/10.1155/2014/349341 Research Article Allocatig Freight Empty Cars i Railway Networks with Dyamic Demads Ce Zhao, Lixig

More information

Securing the Virtualized Data Center with Next-Generation Firewalls

Securing the Virtualized Data Center with Next-Generation Firewalls Securig the Virtualized Data Ceter with Next-Geeratio Firewalls November 2012 Palo Alto Networks: Securig the Virtualized Data Ceter with Next-Geeratio Firewalls Table of Cotets Executive Summary 3 Evolutio

More information

CS100: Introduction to Computer Science

CS100: Introduction to Computer Science Course Iformatio CS100: Itroductio to Computer Sciece Lecture 1: Itroductio (Survey, Pictures) Istructor: Xiaoya Li Lecture: Mo. & Wed. 11:00am 12:15pm Room: Kedade Hall 305 Labs: Wed or Thu 1:00pm 2:50pm

More information

Designing Incentives for Online Question and Answer Forums

Designing Incentives for Online Question and Answer Forums Desigig Icetives for Olie Questio ad Aswer Forums Shaili Jai School of Egieerig ad Applied Scieces Harvard Uiversity Cambridge, MA 0238 USA shailij@eecs.harvard.edu Yilig Che School of Egieerig ad Applied

More information

Domain 1: Identifying Cause of and Resolving Desktop Application Issues Identifying and Resolving New Software Installation Issues

Domain 1: Identifying Cause of and Resolving Desktop Application Issues Identifying and Resolving New Software Installation Issues Maual Widows 7 Eterprise Desktop Support Techicia (70-685) 1-800-418-6789 Domai 1: Idetifyig Cause of ad Resolvig Desktop Applicatio Issues Idetifyig ad Resolvig New Software Istallatio Issues This sectio

More information

CREATIVE MARKETING PROJECT 2016

CREATIVE MARKETING PROJECT 2016 CREATIVE MARKETING PROJECT 2016 The Creative Marketig Project is a chapter project that develops i chapter members a aalytical ad creative approach to the marketig process, actively egages chapter members

More information

On the Capacity of Hybrid Wireless Networks

On the Capacity of Hybrid Wireless Networks O the Capacity of Hybrid ireless Networks Beyua Liu,ZheLiu +,DoTowsley Departmet of Computer Sciece Uiversity of Massachusetts Amherst, MA 0002 + IBM T.J. atso Research Ceter P.O. Box 704 Yorktow Heights,

More information

Enhancing Oracle Business Intelligence with cubus EV How users of Oracle BI on Essbase cubes can benefit from cubus outperform EV Analytics (cubus EV)

Enhancing Oracle Business Intelligence with cubus EV How users of Oracle BI on Essbase cubes can benefit from cubus outperform EV Analytics (cubus EV) Ehacig Oracle Busiess Itelligece with cubus EV How users of Oracle BI o Essbase cubes ca beefit from cubus outperform EV Aalytics (cubus EV) CONTENT 01 cubus EV as a ehacemet to Oracle BI o Essbase 02

More information