SlideShare a Scribd company logo
1 of 7
Download to read offline
International Journal of UbiComp (IJU), Vol.7, No.3, July 2016
DOI:10.5121/iju.2016.7302 9
A Review on Scheduling in Cloud Computing
Sujitha.A1
, Gunasekar.K2
1
M.E.Scholar, Department of Computer Science & Engineering, Nandha Engineering
College, Erode-638052, Tamil Nadu, India
2
Associate Professor, Department of Computer Science & Engineering, Nandha
Engineering College, Erode-638052, Tamil Nadu, India
ABSTRACT
Cloud computing is the requirement based on clients that this computing which provides software,
infrastructure and platform as a service as per pay for use norm. The scheduling main goal is to achieve
the accuracy and correctness on task completion. The scheduling in cloud environment which enables the
various cloud services to help framework implementation. Thus the far reaching way of different type of
scheduling algorithms in cloud computing environment surveyed which includes the workflow scheduling
and grid scheduling. The survey gives an elaborate idea about grid, cloud, workflow scheduling to
minimize the energy cost, efficiency and throughput of the system.
KEYWORDS
Cloud Computing, Scheduling, Virtualization
1. INTRODUCTION
Cloud computing is also referred as on-demand computing, is a kind of Internet-based computing
that provides resources sharing and data to computers and other devices on demand. It relies on
sharing of resources to achieve integrity and scale of economy, resemble to a utility computing.
Cloud computing has become a highly demanded service due to the benefit of high computing
power, monetary cost, high performance, availability ,scalability along with accessibility. There
was several cloud vendors are experiencing growth rates of 50% per year, but being still in a
stage of inception, it has risk that have to be focused to make cloud computing services more
reliable and user friendly. The figure 1 is about the cloud computing services.
Figure 1 Cloud Computing Services
International Journal of UbiComp (IJU), Vol.7, No.3, July 2016
10
Virtualized resources with an under utilization rate which consume an unsatisfactory amount of
energy compared to the energy consumption of a completely utilized cloud computing. According
to [13], energy consumption of an idle resource is about as 60% or peak power. In cloud
computing, there is a connection between energy consumption and resource utilization. An
effective technique is Task consolidation which is incredibly enabled by virtualization
technologies, which aid the concurrent execution of several tasks, harness resource utilization and
in turn reduce the energy consumption [1].
2. OVERVIEW
2.1 Scheduling
The cloud computing is effective based on the scheduling. Based on various parameters the task
is to be scheduled such as arrival time, system load, execution time and deadline. It makes the
task to finish on time and which guarantee the clients to improve flexibility in cloud and
reliability of systems in cloud. The tasks are uncertain, so scheduling is deployed to overcome the
uncertainty [13].
2.2 Virtualization
Virtualization technology is responsible for the creation, migration and cancellation of virtual
machines [8]. When the task needs space in excess, fluctuation in utilization of resources leads to
migration. Virtualization carries out the load balancing, consolidation, and hot spot mitigation
[11]. It allocates data center resources dynamically based on the demands given by the user and
number of servers is to be reduced to bloom out the green computing. The figure 2 describes the
work of virtualization technology.
Figure 2 the Work of Virtualization Technology
3. LITERATURE SURVEY
A Cloud Gaming System Based on User-Level Virtualization
Author focused on the cloud gaming. Cloud gaming renders an interactive gaming application in
the cloud and streams the scenes as a video sequence to the player over Internet. Author proposed
GCloud, a GPU/CPU hybrid cluster for cloud gaming based on the user-level virtualization
technology. Deployed a performance model to analyze the server-capacity and games’ resource-
consumptions, which sort by type into two games: CPU-critical and memory-io-critical.
hardware
virtualization
virtualized host os
service models
Cloud users
International Journal of UbiComp (IJU), Vol.7, No.3, July 2016
11
Simulation tests evident that both of the First-Fit-like and the Best-Fit-like strategies outrun the
other(s). Test results indicate that GCloud is efficient.
ANGEL: Agent-Based Scheduling for Real-Time Tasks
Author devised a novel agent-based scheduling mechanism [7] in cloud computing environment
to assign real-time tasks and dynamically provision resources. A bidirectional announcement-
bidding mechanism and the collaborative processes employed consist of three phases. The three
phases are basic matching phase, forward announcement-bidding phase and backward
announcement-bidding phase. In a meanwhile, author designs both forward and backward
announcement-bidding phases for calculation rule of the bidding values and two heuristics for
selecting contractors. The bidirectional announcement-bidding mechanism is used to propose an
agent-based dynamic scheduling algorithm named ANGEL for real-time, separate and aperiodic
tasks in clouds. Extensive experiments are conducted on cloudsim platform.
An Energy-Saving Task Scheduling Strategy Based on Vacation Queuing Theory
High energy consumption [15] is one of the major issues of cloud computing systems. Requested
jobs in cloud computing environments have the nature of changeability, and gauge nodes have to
be powered on all the time to await requested tasks. This results in an incredible wastage of
energy. Task scheduling algorithm of an energy-saving based on the vacation queuing model for
cloud computing systems is proposed here. No of computer nodes, total idle energy, the number
of tasks arriving at the system, heuristic task scheduling algorithms, the meta-heuristic task
scheduling algorithms, the queuing theory-based algorithms used here. Simulation results evident
that the proposed algorithm can ensure task performance, while reducing the energy cost of a
cloud computing system effectively.
Exploring Blind Online Scheduling for Mobile cloud
Mobile cloud is a technology through the enabled users will enjoy abundant multimedia
applications in a computing environment. An important issue for the mobile cloud is the
scheduling of massive multimedia flows with heterogeneous QoS guarantee. Multimedia servers
based on the slot information of the users’ requests that occurs on last time, and route all the
multimedia flows according to the first-come first-served rule. Operating time of schedule, User
waiting time, Performance improvement time is used to measure the performance of the system.
Blind online scheduling algorithm (BOSA) [2] is used here. Mobile Cloud Multimedia Services
(MCMS) are the environmental tool. Simulation results shows that the proposed scheme can
efficiently schedule heterogeneous multimedia flows to satisfy dynamic QoS requirements in a
practical mobile cloud.
Temporal Load Balancing with Energy Cost Optimization
A cloud computing service plays a vital role in people’s daily life. These services are encouraged
by infrastructure known as Internet data center (IDC) [1]. As demand for cloud computing
services sounds, energy consumed by IDCs is blown forward. Workload intensity, Queuing delay,
Energy costs are used to measure the performance. Eco-IDC Minimize energy cost algorithm
used here. Eco-IDC Minimize energy cost Service delay avoidance as a result of this technique.
A Hyper-Heuristic Scheduling Algorithm for Cloud
International Journal of UbiComp (IJU), Vol.7, No.3, July 2016
12
Rule-based scheduling algorithms have been used on vast cloud computing systems because they
are simple and easy to implement. There are a lot of areas to improve these algorithms
performance, notably by using heuristic scheduling. A novel heuristic scheduling algorithm is
called hyper-heuristic scheduling algorithm (HHSA) [5] which is used to find better scheduling
solutions for cloud computing systems. Result shows that it reduce the make span of task
scheduling compared with the other scheduling algorithms.
FESTAL: Fault-Tolerant Elastic Scheduling Algorithm for Real-Time Tasks in Virtualized
Clouds
Fault tolerance in clouds receives an attention in both industry and academia mainly for real-time
applications due to their safety critical nature. Researches on the fault-tolerant scheduling [16]
study the virtualization and the elasticity is the two key features of clouds. To address this issue,
author presents a fault-tolerant mechanism which extends the primary-backup model to
incorporate the features of clouds. Host, Time, Task count, Interval time are used to measure the
performance of the system. An efficient fault-tolerant elastic scheduling algorithm FESTAL Non-
Migration-FESTAL (NMFESTAL), Non-Overlapping-FESTAL (NOFESTAL),Elastic First Fit
(EFF). FESTAL is able to achieve both fault tolerance and high performance in terms of resource
utilization.
Virtual Machine Scheduling for Improving Energy Efficiency in IAAS Cloud
Author leveraged a VM scheduling scheme encounter resource constraints, like the physical
server size (CPU, memory, storage, bandwidth, etc.) and capacity of network link to minimize
both the numbers of active PMs and network elements so as to finally reduce energy
consumption. Numbers of VM, Total energy consumption, changing traffic between VM are used
to measure the performance of the system. VM-Mig algorithms [19] are used here.
Evolutionary Multi-Objective Workflow Scheduling in Cloud
An already established workflow scheduling algorithms in classic distributed or heterogeneous
computing environments, it arise some issues in being directly applied to the Cloud
environments. To solve this workflow scheduling problem on an infrastructure as a service
(IAAS) platform, they used an evolutionary multi-objective optimization (EMO)-based algorithm
[6]. Time, Cost, Runtime ratio are used to measure the performance of the system. An
evolutionary multi-objective optimization (EMO)-based algorithm is used. The result of this
paper solves the multi-objective Cloud scheduling problem which minimizes both make span and
cost simultaneously.
Scheduling in Compute Cloud with Multiple Data Banks Using Divisible Load Paradigm
Author leveraged that to design a scheduling strategy for heterogeneous computing resources
with shared data banks is challengeable one [9]. The compute cloud environment is used to
reduce the total processing time. No of processors, processing time, No of workers role are used
to measure the performance. In order to divisible load theory, the scheduling challenge is
formulated as relevant recursive equations and constraints. In that are derived from the continuity
of processing time because retrieval from multiple data banks. The scheduling problem in a
compute cloud is equated as a linear programming problem. One is to utilize the best possible use
of available productive resources, and the other is to solve complex problems by splitting them
into solvable parts.
International Journal of UbiComp (IJU), Vol.7, No.3, July 2016
13
4. comparisons on different scheduling techniques
TITLE ALGORITHM PARAMETER CONCLUSION
A Cloud Gaming System
Based on User-Level
Virtualization
Gcloud, a
GPU/CPU hybrid
cluster
Server number
Total game requests
Balance the gaming-
responsiveness, costs
Temporal Load Balancing
with Energy Cost
Optimization
Eco-IDC Workload intensity
Queuing delay
Energy cost
Energy cost reduction for
IDC -Alleviates
workload drop.
ANGEL: Agent-Based
Scheduling for Real-Time
Tasks
Dynamic
scheduling
Algorithm—
ANGEL
Task count
Task Guarantee ratio
It addresses the issue of
schedulability,
Priority,scalability, real-
time in virtualized cloud
environment .
An Energy-Saving Task
Scheduling Strategy
Based on Vacation
Queuing Theory
 Heuristic-task
scheduling
 Meta-heuristic-
task scheduling
 The queuing
theory
Algorithms
No of computer
nodes
Total idle energy
The number of tasks
arriving at the system
It ensure task performance,
reducing
The energy cost of a cloud
computing system
effectively.
Scheduling in Compute
Cloud with Multiple Data
Banks Using Divisible
Load Paradigm
Scheduling
Algorithm
No of processors
Processing time
No of workers role
It solve
Complex problems by
breaking them into
solvable parts.
Exploring Blind Online
Scheduling for Mobile
cloud
Blind online
scheduling
Algorithm (BOSA)
Operating time of
schedule
User waiting time
Performance
improvement time
It reduce the delay and
Energy among the servers.
A Hyper-Heuristic
Scheduling
Algorithm for Cloud
Hyper-heuristic
scheduling
algorithm (HHSA)
Interaction
Best so far make span
Reduce the make span of
task
Evolutionary Multi-
Objective Workflow
Scheduling in Cloud
Evolutionary multi-
objective
optimization
(EMO)-based
algorithm
Time
Cost
Runtime ratio
Minimizes make span and
cost simultaneously
FESTAL: Fault-Tolerant
Elastic Scheduling
Algorithm for Real-Time
Tasks in Virtualized
Clouds
 FESTAL.
 Non-
Migration-
FESTAL,
 Non-
Overlapping-
FESTAL
Host
Time
Task count
Interval time
Tools:
Cloudsim
FESTAL is able to
Achieve both fault
tolerance and high
performance in terms
Of resource utilization.
Virtual Machine
Scheduling for Improving
Energy Efficiency in
IAAS Cloud
VM-Mig algorithm Number of VM
Total energy
consumption
Changing traffic
between VM
This paper reduces the
Quantity of physical
resources to save energy
Consumption
International Journal of UbiComp (IJU), Vol.7, No.3, July 2016
14
5. CONCLUSION
In cloud computing, there were numerous services are providing on demand service provisioning
is the main feature in IAAS. Scheduling is to provide the service and to reach the end user on
time. Various techniques for efficiently schedule the task are discussed in this paper. So in this
paper, our focus is basically on how effectively schedule the task to finish it off with accuracy
and correctness. We have also discussed process of scheduling and the algorithms. In this paper
various problems are surveyed and their solutions are discussed.
REFERENCES
[1] Jianying Luo, Lei Rao, and Xue Liu “Temporal Load Balancing with Service Delay Guarantees for
Data Center Energy Cost Optimization” , IEEE transactions on parallel and distributed systems,Vol.
25, No. 3, March 2014.
[2] Liang Zhou and Zhen Yang, “Exploring blind online scheduling for mobile cloud multimedia
services”, IEEE Wireless Communications, June 2013.
[3] Xiaomin Zhu, Laurence T. Yang, Huangke Chen, Ji Wang, Shu Yin and Xiaocheng Liu,” Real-Time
Tasks Oriented Energy-Aware Scheduling In Virtualized Clouds”, IEEE Transactions On Cloud
Computing, Vol. 2/April-June 2014.
[4] JRui Zhang, Kui Wu “Online Resource Scheduling Under Concave Pricing for Cloud Computing”,
IEEE Transactions On Parallel And Distributed Systems Vol. 27, No. 4, April 2016.
[5] Chun-Wei Tsai, Wei-Cheng Huang “A Hyper-Heuristic Scheduling Algorithm for Cloud”, IEEE
Transactions On cloud Computing, Vol. 2, No. 2, April-June 2014.
[6] Zhaomeng Zhu, Gongxuan Zhang “Evolutionary Multi-Objective Workflow Scheduling in Cloud”,
IEEE Transactions On Parallel And Distributed Systems, Vol. 27, No. 5, May 2016.
[7] Xiaomin Zhu, Member “ANGEL: Agent-Based Scheduling for Real-Time Tasks in Virtualized
Clouds”, IEEE Transactions On Computers, Vol. 64, No. 12, December 2015.
[8] Chao Zhang “VGASA: Adaptive Scheduling Algorithm of Virtualized GPU Resource in Cloud
Gaming”, IEEE Transactions On Parallel And Distributed Systems, Vol. 25, No. 11, November 2014.
[9] S. Suresh Hao Huang “Scheduling In Compute Cloud With Multiple Data Banks Using Divisible Load
Paradigm”, IEEE Transactions On Aerospace And Electronic Systems, Vol. 51, No. 2 April 2015
October 11, 2014.
[10] Zhaomeng Zhu, Gongxuan Zhang, Miqing Li, and Xiaohui Liu “Evolutionary Multi-Objective
Workflow Scheduling in Cloud”, IEEE Transactions On Parallel And Distributed Systems, Vol. 27,
No. 5, May 2016.
[11] Xue Lin, Yanzhi Wang, Qing Xie,” Task Scheduling with Dynamic Voltage and Frequency Scaling for
Energy Minimization in the Mobile Cloud Computing Environment”, IEEE Transactions On Services
Computing, Vol. 8, No. 2, March/April 2015.
[12] Xingquan Zuo, Guoxiang Zhang, and Wei Tan, “Self-Adaptive Learning PSO-Based Deadline
Constrained Task Scheduling for Hybrid iaas Cloud”, IEEE Transactions On Automation Science And
Engineering, Vol. 11, No. 2, April 2014.
[13] Chunsheng Zhu, Victor C. M. Leung, Laurence T. Yang, and Lei Shu “Collaborative Location-Based
Sleep Scheduling for Wireless Sensor Networks Integrated With Mobile Cloud Computing”, IEEE
Transactions On Computers, Vol. 64, No. 7, July 2015.
International Journal of UbiComp (IJU), Vol.7, No.3, July 2016
15
[14] Maria Alejandra Rodriguez and Rajkumar Buyya “Deadline Based Resource Provisioning and
Scheduling Algorithm for Scientific Workflows on Clouds”, IEEE Transactions On Cloud Computing,
Vol. 2, No. 2, April-June 2014.
[15] Xiang Deng, Di Wu, Junfeng Shen, and Jian He, “Eco-Aware Online Power Management and Load
Scheduling for Green Cloud Datacenters”, IEEE Systems Journal, Vol. 10, No. 1, March 2016.
[16] Ji Wang, Weidong Bao, Xiaomin Zhu, Laurence T. Yang, and Yang Xiang, “FESTAL: Fault-Tolerant
Elastic Scheduling Algorithm for Real-Time Tasks in Virtualized Clouds”, IEEE Systems Journal,
Vol. 10, No. 1, March 2016.
[17] Chun-Wei Tsai and Joel J. P. C. Rodrigues, “Metaheuristic Scheduling for Cloud: A Survey”, IEEE
Systems Journal, Vol. 8, No. 1, March 2014.
[18] Marco Polverini, Antonio Cianfrani, Shaolei Ren and Athanasios V. Vasilakos “Thermal-Aware
Scheduling of Batch Jobs in Geographically Distributed Data Centers” ,IEEE Transactions On Cloud
Computing, Vol. 2, No. 1, January-March 2014.
[19] Dong Jiankang, Wang Hongbo, Li Yang yang, Cheng Shiduan,”Virtual Machine Scheduling For
Improving Energy Efficiency In Iaas Cloud”, China Communications , March 2014.
Carlo Mastroianni, MichelaMeo, and Giuseppe Papuzzo,” Probabilistic Consolidation Of Virtual
Machines In Self-Organizing Cloud Data Centers”, IEEE Transactions On Cloud Computing, Vol. 1,
No. 2, July-December 2013.

More Related Content

Similar to A Review on Scheduling in Cloud Computing

Scheduling Divisible Jobs to Optimize the Computation and Energy Costs
Scheduling Divisible Jobs to Optimize the Computation and Energy CostsScheduling Divisible Jobs to Optimize the Computation and Energy Costs
Scheduling Divisible Jobs to Optimize the Computation and Energy Costsinventionjournals
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGijdpsjournal
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGijdpsjournal
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGijdpsjournal
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING  ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING  ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGijdpsjournal
 
Survey: An Optimized Energy Consumption of Resources in Cloud Data Centers
Survey: An Optimized Energy Consumption of Resources in Cloud Data CentersSurvey: An Optimized Energy Consumption of Resources in Cloud Data Centers
Survey: An Optimized Energy Consumption of Resources in Cloud Data CentersIJCSIS Research Publications
 
An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...
An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...
An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...IJECEIAES
 
IRJET- Load Balancing and Crash Management in IoT Environment
IRJET-  	  Load Balancing and Crash Management in IoT EnvironmentIRJET-  	  Load Balancing and Crash Management in IoT Environment
IRJET- Load Balancing and Crash Management in IoT EnvironmentIRJET Journal
 
ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...
ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...
ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...IAEME Publication
 
An energy optimization with improved QOS approach for adaptive cloud resources
An energy optimization with improved QOS approach for adaptive cloud resources An energy optimization with improved QOS approach for adaptive cloud resources
An energy optimization with improved QOS approach for adaptive cloud resources IJECEIAES
 
A survey paper on an improved scheduling algorithm for task offloading on cloud
A survey paper on an improved scheduling algorithm for task offloading on cloudA survey paper on an improved scheduling algorithm for task offloading on cloud
A survey paper on an improved scheduling algorithm for task offloading on cloudAditya Tornekar
 
AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...
AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...
AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...IJCNCJournal
 
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...ijgca
 
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...ijgca
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDijcax
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDijcax
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDijcax
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDijcax
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDijcax
 

Similar to A Review on Scheduling in Cloud Computing (20)

Scheduling Divisible Jobs to Optimize the Computation and Energy Costs
Scheduling Divisible Jobs to Optimize the Computation and Energy CostsScheduling Divisible Jobs to Optimize the Computation and Energy Costs
Scheduling Divisible Jobs to Optimize the Computation and Energy Costs
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
 
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING  ALGORITHM FOR VIRTUALIZED CLOUD COMPUTINGREAL-TIME ADAPTIVE ENERGY-SCHEDULING  ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
REAL-TIME ADAPTIVE ENERGY-SCHEDULING ALGORITHM FOR VIRTUALIZED CLOUD COMPUTING
 
Survey: An Optimized Energy Consumption of Resources in Cloud Data Centers
Survey: An Optimized Energy Consumption of Resources in Cloud Data CentersSurvey: An Optimized Energy Consumption of Resources in Cloud Data Centers
Survey: An Optimized Energy Consumption of Resources in Cloud Data Centers
 
An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...
An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...
An Energy Aware Resource Utilization Framework to Control Traffic in Cloud Ne...
 
IRJET- Load Balancing and Crash Management in IoT Environment
IRJET-  	  Load Balancing and Crash Management in IoT EnvironmentIRJET-  	  Load Balancing and Crash Management in IoT Environment
IRJET- Load Balancing and Crash Management in IoT Environment
 
ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...
ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...
ENERGY EFFICIENT VIRTUAL MACHINE ASSIGNMENT BASED ON ENERGY CONSUMPTION AND R...
 
D04573033
D04573033D04573033
D04573033
 
An energy optimization with improved QOS approach for adaptive cloud resources
An energy optimization with improved QOS approach for adaptive cloud resources An energy optimization with improved QOS approach for adaptive cloud resources
An energy optimization with improved QOS approach for adaptive cloud resources
 
A survey paper on an improved scheduling algorithm for task offloading on cloud
A survey paper on an improved scheduling algorithm for task offloading on cloudA survey paper on an improved scheduling algorithm for task offloading on cloud
A survey paper on an improved scheduling algorithm for task offloading on cloud
 
AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...
AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...
AUTO RESOURCE MANAGEMENT TO ENHANCE RELIABILITY AND ENERGY CONSUMPTION IN HET...
 
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
 
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
PERFORMANCE FACTORS OF CLOUD COMPUTING DATA CENTERS USING [(M/G/1) : (∞/GDMOD...
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
 
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUDIMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
IMPROVING REAL TIME TASK AND HARNESSING ENERGY USING CSBTS IN VIRTUALIZED CLOUD
 

More from ijujournal

Users Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase IIUsers Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase IIijujournal
 
Users Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase IIUsers Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase IIijujournal
 
October 2023-Top Cited Articles in IJU.pdf
October 2023-Top Cited Articles in IJU.pdfOctober 2023-Top Cited Articles in IJU.pdf
October 2023-Top Cited Articles in IJU.pdfijujournal
 
ACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERS
ACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERSACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERS
ACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERSijujournal
 
A novel integrated approach for handling anomalies in RFID data
A novel integrated approach for handling anomalies in RFID dataA novel integrated approach for handling anomalies in RFID data
A novel integrated approach for handling anomalies in RFID dataijujournal
 
UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...
UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...
UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...ijujournal
 
ENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIES
ENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIESENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIES
ENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIESijujournal
 
HMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCE
HMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCEHMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCE
HMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCEijujournal
 
SERVICE DISCOVERY – A SURVEY AND COMPARISON
SERVICE DISCOVERY – A SURVEY AND COMPARISONSERVICE DISCOVERY – A SURVEY AND COMPARISON
SERVICE DISCOVERY – A SURVEY AND COMPARISONijujournal
 
SIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKS
SIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKSSIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKS
SIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKSijujournal
 
International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)ijujournal
 
PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...
PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...
PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...ijujournal
 
A proposed Novel Approach for Sentiment Analysis and Opinion Mining
A proposed Novel Approach for Sentiment Analysis and Opinion MiningA proposed Novel Approach for Sentiment Analysis and Opinion Mining
A proposed Novel Approach for Sentiment Analysis and Opinion Miningijujournal
 
International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)ijujournal
 
USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...
USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...
USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...ijujournal
 
SECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCS
SECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCSSECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCS
SECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCSijujournal
 
PERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKS
PERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKSPERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKS
PERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKSijujournal
 
PERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLSPERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLSijujournal
 
PERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLSPERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLSijujournal
 
DETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2R
DETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2RDETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2R
DETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2Rijujournal
 

More from ijujournal (20)

Users Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase IIUsers Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase II
 
Users Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase IIUsers Approach on Providing Feedback for Smart Home Devices – Phase II
Users Approach on Providing Feedback for Smart Home Devices – Phase II
 
October 2023-Top Cited Articles in IJU.pdf
October 2023-Top Cited Articles in IJU.pdfOctober 2023-Top Cited Articles in IJU.pdf
October 2023-Top Cited Articles in IJU.pdf
 
ACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERS
ACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERSACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERS
ACCELERATION DETECTION OF LARGE (PROBABLY) PRIME NUMBERS
 
A novel integrated approach for handling anomalies in RFID data
A novel integrated approach for handling anomalies in RFID dataA novel integrated approach for handling anomalies in RFID data
A novel integrated approach for handling anomalies in RFID data
 
UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...
UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...
UBIQUITOUS HEALTHCARE MONITORING SYSTEM USING INTEGRATED TRIAXIAL ACCELEROMET...
 
ENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIES
ENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIESENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIES
ENHANCING INDEPENDENT SENIOR LIVING THROUGH SMART HOME TECHNOLOGIES
 
HMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCE
HMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCEHMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCE
HMR LOG ANALYZER: ANALYZE WEB APPLICATION LOGS OVER HADOOP MAPREDUCE
 
SERVICE DISCOVERY – A SURVEY AND COMPARISON
SERVICE DISCOVERY – A SURVEY AND COMPARISONSERVICE DISCOVERY – A SURVEY AND COMPARISON
SERVICE DISCOVERY – A SURVEY AND COMPARISON
 
SIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKS
SIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKSSIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKS
SIX DEGREES OF SEPARATION TO IMPROVE ROUTING IN OPPORTUNISTIC NETWORKS
 
International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)
 
PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...
PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...
PERVASIVE COMPUTING APPLIED TO THE CARE OF PATIENTS WITH DEMENTIA IN HOMECARE...
 
A proposed Novel Approach for Sentiment Analysis and Opinion Mining
A proposed Novel Approach for Sentiment Analysis and Opinion MiningA proposed Novel Approach for Sentiment Analysis and Opinion Mining
A proposed Novel Approach for Sentiment Analysis and Opinion Mining
 
International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)International Journal of Ubiquitous Computing (IJU)
International Journal of Ubiquitous Computing (IJU)
 
USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...
USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...
USABILITY ENGINEERING OF GAMES: A COMPARATIVE ANALYSIS OF MEASURING EXCITEMEN...
 
SECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCS
SECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCSSECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCS
SECURED SMART SYSTEM DESING IN PERVASIVE COMPUTING ENVIRONMENT USING VCS
 
PERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKS
PERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKSPERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKS
PERFORMANCE COMPARISON OF ROUTING PROTOCOLS IN MOBILE AD HOC NETWORKS
 
PERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLSPERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLS
 
PERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLSPERFORMANCE COMPARISON OF OCR TOOLS
PERFORMANCE COMPARISON OF OCR TOOLS
 
DETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2R
DETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2RDETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2R
DETERMINING THE NETWORK THROUGHPUT AND FLOW RATE USING GSR AND AAL2R
 

Recently uploaded

04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationshipsccctableauusergroup
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改atducpo
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Serviceranjana rawat
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]📊 Markus Baersch
 
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...Sapana Sha
 
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...Pooja Nehwal
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort servicejennyeacort
 
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024thyngster
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptxthyngster
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingNeil Barnes
 
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样vhwb25kk
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPramod Kumar Srivastava
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一F sss
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfgstagge
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfLars Albertsson
 
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...Suhani Kapoor
 
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptxAmazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptxAbdelrhman abooda
 
Call Girls In Mahipalpur O9654467111 Escorts Service
Call Girls In Mahipalpur O9654467111  Escorts ServiceCall Girls In Mahipalpur O9654467111  Escorts Service
Call Girls In Mahipalpur O9654467111 Escorts ServiceSapana Sha
 

Recently uploaded (20)

04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]
 
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
Saket, (-DELHI )+91-9654467111-(=)CHEAP Call Girls in Escorts Service Saket C...
 
Call Girls in Saket 99530🔝 56974 Escort Service
Call Girls in Saket 99530🔝 56974 Escort ServiceCall Girls in Saket 99530🔝 56974 Escort Service
Call Girls in Saket 99530🔝 56974 Escort Service
 
꧁❤ Aerocity Call Girls Service Aerocity Delhi ❤꧂ 9999965857 ☎️ Hard And Sexy ...
꧁❤ Aerocity Call Girls Service Aerocity Delhi ❤꧂ 9999965857 ☎️ Hard And Sexy ...꧁❤ Aerocity Call Girls Service Aerocity Delhi ❤꧂ 9999965857 ☎️ Hard And Sexy ...
꧁❤ Aerocity Call Girls Service Aerocity Delhi ❤꧂ 9999965857 ☎️ Hard And Sexy ...
 
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
 
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data Storytelling
 
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdf
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdf
 
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
 
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptxAmazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
 
Call Girls In Mahipalpur O9654467111 Escorts Service
Call Girls In Mahipalpur O9654467111  Escorts ServiceCall Girls In Mahipalpur O9654467111  Escorts Service
Call Girls In Mahipalpur O9654467111 Escorts Service
 

A Review on Scheduling in Cloud Computing

  • 1. International Journal of UbiComp (IJU), Vol.7, No.3, July 2016 DOI:10.5121/iju.2016.7302 9 A Review on Scheduling in Cloud Computing Sujitha.A1 , Gunasekar.K2 1 M.E.Scholar, Department of Computer Science & Engineering, Nandha Engineering College, Erode-638052, Tamil Nadu, India 2 Associate Professor, Department of Computer Science & Engineering, Nandha Engineering College, Erode-638052, Tamil Nadu, India ABSTRACT Cloud computing is the requirement based on clients that this computing which provides software, infrastructure and platform as a service as per pay for use norm. The scheduling main goal is to achieve the accuracy and correctness on task completion. The scheduling in cloud environment which enables the various cloud services to help framework implementation. Thus the far reaching way of different type of scheduling algorithms in cloud computing environment surveyed which includes the workflow scheduling and grid scheduling. The survey gives an elaborate idea about grid, cloud, workflow scheduling to minimize the energy cost, efficiency and throughput of the system. KEYWORDS Cloud Computing, Scheduling, Virtualization 1. INTRODUCTION Cloud computing is also referred as on-demand computing, is a kind of Internet-based computing that provides resources sharing and data to computers and other devices on demand. It relies on sharing of resources to achieve integrity and scale of economy, resemble to a utility computing. Cloud computing has become a highly demanded service due to the benefit of high computing power, monetary cost, high performance, availability ,scalability along with accessibility. There was several cloud vendors are experiencing growth rates of 50% per year, but being still in a stage of inception, it has risk that have to be focused to make cloud computing services more reliable and user friendly. The figure 1 is about the cloud computing services. Figure 1 Cloud Computing Services
  • 2. International Journal of UbiComp (IJU), Vol.7, No.3, July 2016 10 Virtualized resources with an under utilization rate which consume an unsatisfactory amount of energy compared to the energy consumption of a completely utilized cloud computing. According to [13], energy consumption of an idle resource is about as 60% or peak power. In cloud computing, there is a connection between energy consumption and resource utilization. An effective technique is Task consolidation which is incredibly enabled by virtualization technologies, which aid the concurrent execution of several tasks, harness resource utilization and in turn reduce the energy consumption [1]. 2. OVERVIEW 2.1 Scheduling The cloud computing is effective based on the scheduling. Based on various parameters the task is to be scheduled such as arrival time, system load, execution time and deadline. It makes the task to finish on time and which guarantee the clients to improve flexibility in cloud and reliability of systems in cloud. The tasks are uncertain, so scheduling is deployed to overcome the uncertainty [13]. 2.2 Virtualization Virtualization technology is responsible for the creation, migration and cancellation of virtual machines [8]. When the task needs space in excess, fluctuation in utilization of resources leads to migration. Virtualization carries out the load balancing, consolidation, and hot spot mitigation [11]. It allocates data center resources dynamically based on the demands given by the user and number of servers is to be reduced to bloom out the green computing. The figure 2 describes the work of virtualization technology. Figure 2 the Work of Virtualization Technology 3. LITERATURE SURVEY A Cloud Gaming System Based on User-Level Virtualization Author focused on the cloud gaming. Cloud gaming renders an interactive gaming application in the cloud and streams the scenes as a video sequence to the player over Internet. Author proposed GCloud, a GPU/CPU hybrid cluster for cloud gaming based on the user-level virtualization technology. Deployed a performance model to analyze the server-capacity and games’ resource- consumptions, which sort by type into two games: CPU-critical and memory-io-critical. hardware virtualization virtualized host os service models Cloud users
  • 3. International Journal of UbiComp (IJU), Vol.7, No.3, July 2016 11 Simulation tests evident that both of the First-Fit-like and the Best-Fit-like strategies outrun the other(s). Test results indicate that GCloud is efficient. ANGEL: Agent-Based Scheduling for Real-Time Tasks Author devised a novel agent-based scheduling mechanism [7] in cloud computing environment to assign real-time tasks and dynamically provision resources. A bidirectional announcement- bidding mechanism and the collaborative processes employed consist of three phases. The three phases are basic matching phase, forward announcement-bidding phase and backward announcement-bidding phase. In a meanwhile, author designs both forward and backward announcement-bidding phases for calculation rule of the bidding values and two heuristics for selecting contractors. The bidirectional announcement-bidding mechanism is used to propose an agent-based dynamic scheduling algorithm named ANGEL for real-time, separate and aperiodic tasks in clouds. Extensive experiments are conducted on cloudsim platform. An Energy-Saving Task Scheduling Strategy Based on Vacation Queuing Theory High energy consumption [15] is one of the major issues of cloud computing systems. Requested jobs in cloud computing environments have the nature of changeability, and gauge nodes have to be powered on all the time to await requested tasks. This results in an incredible wastage of energy. Task scheduling algorithm of an energy-saving based on the vacation queuing model for cloud computing systems is proposed here. No of computer nodes, total idle energy, the number of tasks arriving at the system, heuristic task scheduling algorithms, the meta-heuristic task scheduling algorithms, the queuing theory-based algorithms used here. Simulation results evident that the proposed algorithm can ensure task performance, while reducing the energy cost of a cloud computing system effectively. Exploring Blind Online Scheduling for Mobile cloud Mobile cloud is a technology through the enabled users will enjoy abundant multimedia applications in a computing environment. An important issue for the mobile cloud is the scheduling of massive multimedia flows with heterogeneous QoS guarantee. Multimedia servers based on the slot information of the users’ requests that occurs on last time, and route all the multimedia flows according to the first-come first-served rule. Operating time of schedule, User waiting time, Performance improvement time is used to measure the performance of the system. Blind online scheduling algorithm (BOSA) [2] is used here. Mobile Cloud Multimedia Services (MCMS) are the environmental tool. Simulation results shows that the proposed scheme can efficiently schedule heterogeneous multimedia flows to satisfy dynamic QoS requirements in a practical mobile cloud. Temporal Load Balancing with Energy Cost Optimization A cloud computing service plays a vital role in people’s daily life. These services are encouraged by infrastructure known as Internet data center (IDC) [1]. As demand for cloud computing services sounds, energy consumed by IDCs is blown forward. Workload intensity, Queuing delay, Energy costs are used to measure the performance. Eco-IDC Minimize energy cost algorithm used here. Eco-IDC Minimize energy cost Service delay avoidance as a result of this technique. A Hyper-Heuristic Scheduling Algorithm for Cloud
  • 4. International Journal of UbiComp (IJU), Vol.7, No.3, July 2016 12 Rule-based scheduling algorithms have been used on vast cloud computing systems because they are simple and easy to implement. There are a lot of areas to improve these algorithms performance, notably by using heuristic scheduling. A novel heuristic scheduling algorithm is called hyper-heuristic scheduling algorithm (HHSA) [5] which is used to find better scheduling solutions for cloud computing systems. Result shows that it reduce the make span of task scheduling compared with the other scheduling algorithms. FESTAL: Fault-Tolerant Elastic Scheduling Algorithm for Real-Time Tasks in Virtualized Clouds Fault tolerance in clouds receives an attention in both industry and academia mainly for real-time applications due to their safety critical nature. Researches on the fault-tolerant scheduling [16] study the virtualization and the elasticity is the two key features of clouds. To address this issue, author presents a fault-tolerant mechanism which extends the primary-backup model to incorporate the features of clouds. Host, Time, Task count, Interval time are used to measure the performance of the system. An efficient fault-tolerant elastic scheduling algorithm FESTAL Non- Migration-FESTAL (NMFESTAL), Non-Overlapping-FESTAL (NOFESTAL),Elastic First Fit (EFF). FESTAL is able to achieve both fault tolerance and high performance in terms of resource utilization. Virtual Machine Scheduling for Improving Energy Efficiency in IAAS Cloud Author leveraged a VM scheduling scheme encounter resource constraints, like the physical server size (CPU, memory, storage, bandwidth, etc.) and capacity of network link to minimize both the numbers of active PMs and network elements so as to finally reduce energy consumption. Numbers of VM, Total energy consumption, changing traffic between VM are used to measure the performance of the system. VM-Mig algorithms [19] are used here. Evolutionary Multi-Objective Workflow Scheduling in Cloud An already established workflow scheduling algorithms in classic distributed or heterogeneous computing environments, it arise some issues in being directly applied to the Cloud environments. To solve this workflow scheduling problem on an infrastructure as a service (IAAS) platform, they used an evolutionary multi-objective optimization (EMO)-based algorithm [6]. Time, Cost, Runtime ratio are used to measure the performance of the system. An evolutionary multi-objective optimization (EMO)-based algorithm is used. The result of this paper solves the multi-objective Cloud scheduling problem which minimizes both make span and cost simultaneously. Scheduling in Compute Cloud with Multiple Data Banks Using Divisible Load Paradigm Author leveraged that to design a scheduling strategy for heterogeneous computing resources with shared data banks is challengeable one [9]. The compute cloud environment is used to reduce the total processing time. No of processors, processing time, No of workers role are used to measure the performance. In order to divisible load theory, the scheduling challenge is formulated as relevant recursive equations and constraints. In that are derived from the continuity of processing time because retrieval from multiple data banks. The scheduling problem in a compute cloud is equated as a linear programming problem. One is to utilize the best possible use of available productive resources, and the other is to solve complex problems by splitting them into solvable parts.
  • 5. International Journal of UbiComp (IJU), Vol.7, No.3, July 2016 13 4. comparisons on different scheduling techniques TITLE ALGORITHM PARAMETER CONCLUSION A Cloud Gaming System Based on User-Level Virtualization Gcloud, a GPU/CPU hybrid cluster Server number Total game requests Balance the gaming- responsiveness, costs Temporal Load Balancing with Energy Cost Optimization Eco-IDC Workload intensity Queuing delay Energy cost Energy cost reduction for IDC -Alleviates workload drop. ANGEL: Agent-Based Scheduling for Real-Time Tasks Dynamic scheduling Algorithm— ANGEL Task count Task Guarantee ratio It addresses the issue of schedulability, Priority,scalability, real- time in virtualized cloud environment . An Energy-Saving Task Scheduling Strategy Based on Vacation Queuing Theory  Heuristic-task scheduling  Meta-heuristic- task scheduling  The queuing theory Algorithms No of computer nodes Total idle energy The number of tasks arriving at the system It ensure task performance, reducing The energy cost of a cloud computing system effectively. Scheduling in Compute Cloud with Multiple Data Banks Using Divisible Load Paradigm Scheduling Algorithm No of processors Processing time No of workers role It solve Complex problems by breaking them into solvable parts. Exploring Blind Online Scheduling for Mobile cloud Blind online scheduling Algorithm (BOSA) Operating time of schedule User waiting time Performance improvement time It reduce the delay and Energy among the servers. A Hyper-Heuristic Scheduling Algorithm for Cloud Hyper-heuristic scheduling algorithm (HHSA) Interaction Best so far make span Reduce the make span of task Evolutionary Multi- Objective Workflow Scheduling in Cloud Evolutionary multi- objective optimization (EMO)-based algorithm Time Cost Runtime ratio Minimizes make span and cost simultaneously FESTAL: Fault-Tolerant Elastic Scheduling Algorithm for Real-Time Tasks in Virtualized Clouds  FESTAL.  Non- Migration- FESTAL,  Non- Overlapping- FESTAL Host Time Task count Interval time Tools: Cloudsim FESTAL is able to Achieve both fault tolerance and high performance in terms Of resource utilization. Virtual Machine Scheduling for Improving Energy Efficiency in IAAS Cloud VM-Mig algorithm Number of VM Total energy consumption Changing traffic between VM This paper reduces the Quantity of physical resources to save energy Consumption
  • 6. International Journal of UbiComp (IJU), Vol.7, No.3, July 2016 14 5. CONCLUSION In cloud computing, there were numerous services are providing on demand service provisioning is the main feature in IAAS. Scheduling is to provide the service and to reach the end user on time. Various techniques for efficiently schedule the task are discussed in this paper. So in this paper, our focus is basically on how effectively schedule the task to finish it off with accuracy and correctness. We have also discussed process of scheduling and the algorithms. In this paper various problems are surveyed and their solutions are discussed. REFERENCES [1] Jianying Luo, Lei Rao, and Xue Liu “Temporal Load Balancing with Service Delay Guarantees for Data Center Energy Cost Optimization” , IEEE transactions on parallel and distributed systems,Vol. 25, No. 3, March 2014. [2] Liang Zhou and Zhen Yang, “Exploring blind online scheduling for mobile cloud multimedia services”, IEEE Wireless Communications, June 2013. [3] Xiaomin Zhu, Laurence T. Yang, Huangke Chen, Ji Wang, Shu Yin and Xiaocheng Liu,” Real-Time Tasks Oriented Energy-Aware Scheduling In Virtualized Clouds”, IEEE Transactions On Cloud Computing, Vol. 2/April-June 2014. [4] JRui Zhang, Kui Wu “Online Resource Scheduling Under Concave Pricing for Cloud Computing”, IEEE Transactions On Parallel And Distributed Systems Vol. 27, No. 4, April 2016. [5] Chun-Wei Tsai, Wei-Cheng Huang “A Hyper-Heuristic Scheduling Algorithm for Cloud”, IEEE Transactions On cloud Computing, Vol. 2, No. 2, April-June 2014. [6] Zhaomeng Zhu, Gongxuan Zhang “Evolutionary Multi-Objective Workflow Scheduling in Cloud”, IEEE Transactions On Parallel And Distributed Systems, Vol. 27, No. 5, May 2016. [7] Xiaomin Zhu, Member “ANGEL: Agent-Based Scheduling for Real-Time Tasks in Virtualized Clouds”, IEEE Transactions On Computers, Vol. 64, No. 12, December 2015. [8] Chao Zhang “VGASA: Adaptive Scheduling Algorithm of Virtualized GPU Resource in Cloud Gaming”, IEEE Transactions On Parallel And Distributed Systems, Vol. 25, No. 11, November 2014. [9] S. Suresh Hao Huang “Scheduling In Compute Cloud With Multiple Data Banks Using Divisible Load Paradigm”, IEEE Transactions On Aerospace And Electronic Systems, Vol. 51, No. 2 April 2015 October 11, 2014. [10] Zhaomeng Zhu, Gongxuan Zhang, Miqing Li, and Xiaohui Liu “Evolutionary Multi-Objective Workflow Scheduling in Cloud”, IEEE Transactions On Parallel And Distributed Systems, Vol. 27, No. 5, May 2016. [11] Xue Lin, Yanzhi Wang, Qing Xie,” Task Scheduling with Dynamic Voltage and Frequency Scaling for Energy Minimization in the Mobile Cloud Computing Environment”, IEEE Transactions On Services Computing, Vol. 8, No. 2, March/April 2015. [12] Xingquan Zuo, Guoxiang Zhang, and Wei Tan, “Self-Adaptive Learning PSO-Based Deadline Constrained Task Scheduling for Hybrid iaas Cloud”, IEEE Transactions On Automation Science And Engineering, Vol. 11, No. 2, April 2014. [13] Chunsheng Zhu, Victor C. M. Leung, Laurence T. Yang, and Lei Shu “Collaborative Location-Based Sleep Scheduling for Wireless Sensor Networks Integrated With Mobile Cloud Computing”, IEEE Transactions On Computers, Vol. 64, No. 7, July 2015.
  • 7. International Journal of UbiComp (IJU), Vol.7, No.3, July 2016 15 [14] Maria Alejandra Rodriguez and Rajkumar Buyya “Deadline Based Resource Provisioning and Scheduling Algorithm for Scientific Workflows on Clouds”, IEEE Transactions On Cloud Computing, Vol. 2, No. 2, April-June 2014. [15] Xiang Deng, Di Wu, Junfeng Shen, and Jian He, “Eco-Aware Online Power Management and Load Scheduling for Green Cloud Datacenters”, IEEE Systems Journal, Vol. 10, No. 1, March 2016. [16] Ji Wang, Weidong Bao, Xiaomin Zhu, Laurence T. Yang, and Yang Xiang, “FESTAL: Fault-Tolerant Elastic Scheduling Algorithm for Real-Time Tasks in Virtualized Clouds”, IEEE Systems Journal, Vol. 10, No. 1, March 2016. [17] Chun-Wei Tsai and Joel J. P. C. Rodrigues, “Metaheuristic Scheduling for Cloud: A Survey”, IEEE Systems Journal, Vol. 8, No. 1, March 2014. [18] Marco Polverini, Antonio Cianfrani, Shaolei Ren and Athanasios V. Vasilakos “Thermal-Aware Scheduling of Batch Jobs in Geographically Distributed Data Centers” ,IEEE Transactions On Cloud Computing, Vol. 2, No. 1, January-March 2014. [19] Dong Jiankang, Wang Hongbo, Li Yang yang, Cheng Shiduan,”Virtual Machine Scheduling For Improving Energy Efficiency In Iaas Cloud”, China Communications , March 2014. Carlo Mastroianni, MichelaMeo, and Giuseppe Papuzzo,” Probabilistic Consolidation Of Virtual Machines In Self-Organizing Cloud Data Centers”, IEEE Transactions On Cloud Computing, Vol. 1, No. 2, July-December 2013.