Predictive VM placement algorithm for resource optimization: leveraging deep learning forecasting and resource relationship modeling
Rajni Garg,
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Indu Arora,
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Anu Gupta
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et al.
International Journal of Computers and Applications,
Journal Year:
2025,
Volume and Issue:
unknown, P. 1 - 14
Published: Feb. 28, 2025
The
growing
demand
for
cloud
computing
has
made
it
imperative
to
optimize
the
utilization
of
resources.
Resource
optimization
can
be
improved
through
Virtual
Machine
(VM)
Placement.
In
order
effectively
placement
VMs,
becomes
necessary
anticipate
future
resource
demand.
However,
accurate
forecasting
is
a
major
challenge
due
dynamic
nature
applications.
Furthermore,
if
VMs
are
placed
on
same
server,
lead
contention,
especially
when
they
compete
This
contention
adversely
affect
performance
and
potentially
increase
cost
users,
as
well
energy
consumption
by
infrastructure.
work
proposes
model
named
Predictive
Disparity-based
Placement
(PDVMP)
which
aims
enhance
VM
decision.
integrates
techniques
grounded
in
Deep
Learning
estimating
needs
VMs.
estimation
incorporated
decision
ensure
long-term
sustainability
destination
server.
Moreover,
used
current
research
balances
execution
packing
multiple
that
exhibit
complementary
physical
PDVMP
tested
against
benchmark
policies
using
real
workload
traces
bitBrains
datacenter.
results
show
proposed
approach
improves
while
reducing
both
bottlenecks
consumption.
experimentation
shows
an
improvement
Energy
Performance
Metric
ranging
from
49.3%
62.97%.
Language: Английский
RAP-Optimizer: Resource-Aware Predictive Model for Cost Optimization of Cloud AIaaS Applications
Kaushik Sathupadi,
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Ramya Avula,
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Arunkumar Velayutham
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et al.
Electronics,
Journal Year:
2024,
Volume and Issue:
13(22), P. 4462 - 4462
Published: Nov. 14, 2024
Artificial
Intelligence
(AI)
applications
are
rapidly
growing,
and
more
joining
the
market
competition.
As
a
result,
AI-as-a-service
(AIaaS)
model
is
experiencing
rapid
growth.
Many
of
these
AIaaS-based
not
properly
optimized
initially.
Once
they
start
large
volume
traffic,
different
challenges
revealing
themselves.
One
maintaining
profit
margin
for
sustainability
AIaaS
application-based
business
model,
which
depends
on
proper
utilization
computing
resources.
This
paper
introduces
resource
award
predictive
(RAP)
cost
optimization
called
RAP-Optimizer.
It
developed
by
combining
deep
neural
network
(DNN)
with
simulated
annealing
algorithm.
designed
to
reduce
underutilization
minimize
number
active
hosts
in
cloud
environments.
dynamically
allocates
resources
handles
API
requests
efficiently.
The
RAP-Optimizer
reduces
physical
an
average
5
per
day,
leading
45%
decrease
server
costs.
impact
was
observed
over
12-month
period.
observational
data
show
significant
improvement
utilization.
effectively
operational
costs
from
USD
2600
1250
month.
Furthermore,
increases
179%,
600
1675
inclusion
dynamic
dropout
control
(DDC)
algorithm
DNN
training
process
mitigates
overfitting,
achieving
97.48%
validation
accuracy
loss
2.82%.
These
results
indicate
that
enhances
management
cost-efficiency
applications,
making
it
valuable
solution
modern
Language: Английский