PROBABILISTIC
CONSOLIDATION OF VIRTUAL MACHINES IN SELF-ORGANIZING CLOUD DATA CENTERS
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ABSTRACT:
Power efficiency is one of
the main issues that will drive the design of data centers, especially of those
devoted to provide Cloud computing services. In virtualized data centers, consolidation
of Virtual Machines (VMs) on the minimum number of physical servers has been
recognized as a very efficient approach, as this allows unloaded servers to be switched
off or used to accommodate more load, which is clearly a cheaper alternative to
buy more resources. The consolidation problem must be solved on multiple dimensions,
since in modern data centers CPU is not the only critical resource: depending
on the characteristics of the workload other resources, for example, RAM and
bandwidth, can become the bottleneck. The problem is so complex that centralized
and deterministic solutions are practically useless in large data centers with
hundreds or thousands of servers. This paper presents ecoCloud, a
selforganizing and adaptive approach for the consolidation of VMs on two
resources, namely CPU and RAM. Decisions on the assignment and migration of VMs
are driven by probabilistic processes and are based exclusively on local
information, which makes the approach very simple to implement. Both a fluid-like
mathematical model and experiments on a real data center show that the approach
rapidly consolidates the workload, and CPU-bound and RAM-bound VMs are
balanced, so that both resources are exploited efficiently.
EXISTING SYSTEM:
In the past few years
important results have been achieved in terms of energy consumption reduction, especially
by improving the efficiency of cooling and power supplying facilities in data
centers. The Power Usage Effectiveness (PUE) index, defined as the ratio of the
overall power entering the data center and the power devoted to computing
facilities, had typical values between 2 and 3 only a few years ago, while now
big Cloud companies have reached values lower than 1.1. However, much space
remains for the optimization of the computing facilities themselves. It has
been estimated that most of the time servers operate at 10-50 percent of their
full capacity [2], [3]. This low utilization is also caused by the intrinsic variability
of VMs’ workload: the data center is planned to sustain the peaks of load,
while for long periods of time (for example, during nights and weekends), the
load is much lower [4], [5]. Since an active but idle server consumes between
50 and 70 percent of the power consumed when it is fully utilized [6], a large
amount of energy is used even at low utilization.
DISADVANTAGES OF
EXISTING SYSTEM:
·
It is power consuming.
· Large amount of energy is used even at low
utilization.
PROBLEM STATEMENT:
The ever increasing demand
for computing resources has led companies and resource providers to build large
warehouse-sized data centers, which require a significant amount of power to be
operated and hence consume a lot of energy.
SCOPE:
The optimal assignment of VM’s to reduce the power consumption.
PROPOSED SYSTEM:
We presented ecoCloud, an approach for consolidating
VMs on a single computing resource, i.e., the CPU. Here, the approach is
extended to the multidimension problem, and is presented for the specific case
in which VMs are consolidated with respect to two resources: CPU and RAM. With
ecoCloud, VMs are consolidated using two types of probabilistic procedures, for
the assignment and the migration of VMs. Both procedures aim at increasing the utilization
of servers and consolidating the workload dynamically, with the twofold
objective of saving electrical costs and respecting the Service Level
Agreements stipulated with users. All this is done by demanding the key decisions
to single servers, while the data center manager is only requested to properly
combine such local decisions. The approach is partly inspired by the ant
algorithms used first by Deneubourg et al. [9], and subsequently by a wide research
community, to model the behavior of ant colonies and solve many complex
distributed problems. The characteristics inherited by such algorithms make
ecoCloud novel and different from other solutions. Among such characteristics:
1) the use of the swarm intelligence paradigm, which allows a complex problem
to be solved by combining simple operations performed by many autonomous actors
(the single servers in our case); 2) the use of probabilistic procedures,
inspired by those that model the operations of real ants; and 3) the
self-organizing behavior of system, which ensures that the assignment of VMs to
servers dynamically adapts to the varying workload.
ADVANTAGES OF PROPOSED
SYSTEM:
·
Efficient CPU usage.
·
It reduces power consumption.
· Efficient
resource utilization.
SYSTEM
ARCHITECTURE:
SYSTEM CONFIGURATION:-
HARDWARE REQUIREMENTS:-
ü Processor - Pentium –IV
ü Speed - 1.1 Ghz
ü RAM - 512 MB(min)
ü Hard
Disk - 40 GB
ü Key
Board - Standard Windows Keyboard
ü Mouse - Two or Three Button Mouse
ü Monitor - LCD/LED
SOFTWARE
REQUIREMENTS:
•
Operating system : Windows XP
•
Coding Language : Java
•
Data Base : MySQL
•
Tool : Net Beans IDE
REFERENCE:
Carlo Mastroianni, Michela Meo 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.
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