THERMAL-AWARE SCHEDULING OF BATCH JOBS IN GEOGRAPHICALLY DISTRIBUTED DATA CENTERS
CLICK HERE TO VIEW THE OUTPUT
ABSTRACT:
Decreasing
the soaring energy cost is imperative in large data centers. Meanwhile, limited
computational resources need to be fairly allocated among different
organizations. Latency is another major concern for resource management.
Nevertheless, energy cost, resource allocation fairness, and latency are
important but often contradicting metrics on scheduling data center workloads. Moreover,
with the ever-increasing power density, data center operation must be
judiciously optimized to prevent server overheating. In this paper, we explore
the benefit of electricity price variations across time and locations. We study
the problem of scheduling batch jobs to multiple geographically-distributed
data centers. We propose a provably-efficient online scheduling
algorithm—GreFar—which optimizes the energy cost and fairness among different
organizations subject to queuing delay constraints, while satisfying the maximum
server inlet temperature constraints. GreFar does not require any statistical
information of workload arrivals or electricity prices. We prove that it can
minimize the cost arbitrarily close to that of the optimal offline algorithm
with future information. Moreover, we compare the performance of GreFar with
ones of a similar algorithm, referred to as T-unaware, that is not able to
consider the server inlet temperature in the scheduling process. We prove that
GreFar is able to save up to 16 percent of energy-fairness cost with respect to
T-unaware.
EXISTING SYSTEM:
T-unaware.
EXISTING SYSTEM:
Better
energy efficiency of servers and lower electricity prices are both important in
reducing the energy cost. Given the heterogeneity of servers in terms of energy
efficiency and the diversity of electricity prices over geographically distributed
data centers and over time, the key idea is to preferentially shift power draw
to energy efficient servers and to places and times offering cheaper electricity
prices. Moreover, with the ever-increasing power density generating an
excessive amount of heat.
DISADVANTAGES OF
EXISTING SYSTEM:
v
Thermal management in data centers is
becoming imperatively important for preventing server overheating that could
potentially induce server damages and huge economic losses.
v
Reducing energy cost by means of overloading
servers in data centers where the electricity price is low may not be a viable
solution, since this may result in a higher server temperature that imposes
serious concerns for system reliability.
PROPOSED SYSTEM:
We
propose a practical yet provably-efficient online scheduling algorithm “GreFar”
to solve this problem. Our algorithm does not require any prior knowledge of
the system statistics (which can even be non-stationary) or any Recommended for
prediction on future job arrivals and server availability. Moreover, it is
computationally efficient and easy to implement in large practical systems.
GreFar constructs and solves an online optimal problem based on the current job
queue lengths, server availability and temperature, and electricity prices; the
solution is proven to offer close to the offline optimal performance with
future information. More precisely, given a cost-delay parameter V 0, GreFar is Oð1=V
Þ-optimal with respect to the average (energy-fairness) cost against the offline
optimal algorithm while bounding the queue length by OðV Þ. Without considering
fairness, the energy-fairness cost solely represents the energy cost, while
with fairness taken into account, it is an affine
combination of energy cost and fairness score (which is
obtained through a fairness function).
ADVANTAGES OF PROPOSED
SYSTEM:
v
Optimally distributing the workloads to
facilitate heat recirculation and avoid overheating has to be incorporated in
data center operation.
v
Our algorithm is associated with two
control parameters, i.e., cost-delay parameter and energy-fairness parameter,
which can be appropriately tuned to provide a desired performance tradeoff
among energy, fairness and queuing delay.
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 : C# .Net
•
Data Base : SQL
Server 2005
•
Tool : VISUAL STUDIO 2008.
REFERENCE:
Marco Polverini,
Antonio Cianfrani, Shaolei Ren, Member, IEEE, 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
No comments:
Post a Comment