Dynamic Placement of Virtual Machines for Managing SLA ViolationsNORMAN BOBROFF, ANDRZEJ KOCHUT, KIRK BEATYSOME SLIDE CONTENT ADAPTED FROM ALEXANDER NUSPRESENTED BY JON LOGAN
Motivation
Virtual machines are becoming more and more popular throughout our datacenters
Servers use electricity Electricity can be expensive!
How do we minimize the number of utilized machines, while meeting our SLA obligations?
Usage patterns of machines are NOT static, and generally change dynamically
Goals
Maximize utilization of active machines Minimize Service Level Agreement (SLA) violations Minimize number of active machines
Power off unused machines to conserve cost (electricity)
Essentially, minimize cost while meeting SLA guarantees
Static Allocation
All machines are taken offline, and historical usage is used to determine ideal placement
Happens very infrequently (~weeks or months) Must interrupt service to relocate Utilization is not consistent in many cases!
Demand may vary significantly within the period between allocations
Dynamic Allocation
VMs are seamlessly migrated between machines based on predicted demand
Is done rather frequently (~minutes, hours) Live migration
Minimal (~ms) service disruptions during migration Allows for allocations to more closely follow
demand
Live Migration
Moves a VM image between machines without service interruption
The paper cites a ~45 second transition time VM must be serialized and transferred over the
network Artificially limits our reallocation period
Can’t reallocate faster than we can migrate!
Service Level Agreement
Essentially is a contract between the provider and the customer that states that resources R will be available X% of the time Violations cost money! X is usually high (ex. 95%)
VMs do not necessarily use this entire resource allocation at all times, but it must be available should they choose to use it Ex. VM may be doing batch processing, and only do substantial work
between 12:00AM and 1:00AM
Static vs Dynamic Usages
Workloads are not static! Try to predict the usage of the VM in a
time T Reallocate machines to be able to meet
that predicted usage Need to be within a certain percentile to
meet SLA requirements Capacity savings is simply
Static Allocation - (Predicted Usage + Error Factor)
Repeat this process every time T
What Workloads Are Best For Dynamic Allocation?
Not all Workloads are created equal Some tend to be better than others
Constant workloads = bad! A workload is an ideal candidate for dynamic
allocation if It has strong variability AND It has strong autocorrelation combined with periodic
behavior Essentially, you need to have a decent degree of
variability, and be able to reasonably predict its usage
Workload 3a
Strongly variable – good Autocorrelation ~0.8 – good Weak periodic behavior – bad
Verdict – Good Large variability offers significant
potential for optimization Strong autocorrelation makes it possible
to obtain a low-error predication
Workload 3b
Weakly variable - bad Decaying autocorrelation - bad Weak periodic behavior – bad
Verdict – Bad Low variability makes potential gain low Weak autocorrelation and no periodic
component make it difficult to predict demand
Workload 3c
Strongly variable – good Strong Autocorrelation– good Strong periodic behavior – good
Verdict – Very Good An ideal case for dynamic
allocation
Potential Gain
Demand forecast algorithm
Determine the periods in demand using ‘common sense’ aided by periodogram (e.g.time-of-day,day of week,…)
Decompose the process into deterministic periodic and residual components Di + ri
Estimate the deterministic part using averaging of multiple smoothed historical periods
Fit Auto Regressive Moving Average (ARMA) model to the residual process
Use the combined components for demand predictionUi = Di + ri
Management Algorithm
Goal is to minimize time averaged number of active servers without violating the SLA agreement
Machines that are not utilized to handle VMs are powered off or put in a low power state Will be reactivated if/when required (minimally, the next period)
The time to power on & migrate must be less than the period T Responsible for actual migrations of machines Placing of VMs is essentially a version of the bin packing problem
NP hard! We use an approximation, using first-fit
Management Algorithm
Measure – Measure usage Forecast – Predict usage for the next window Remap – Relocate machines if necessary
Preform this (MFR) at regular intervals Designed to try to predict the “best we can do”
Management Algorithm Overview
Key Terms
N – virtual machines M – physical machines Cm – Maximum capacity of physical machine fn
i, k – forcast value for resource demand of VM n at interval i+k
R – migration interval Cp(u, o2) – (1-p)-percentile of Gaussian distribution with
mean u and variance o2
Management Algorithm
Management Algorithm (2)
Management Algorithm (3)
Management Algorithm (4)
Simulations
Simulated using traces gathered from hundreds of production servers using various applications
Traces contain CPU, memory, storage, and network We are only focusing on CPU usage
Samples were collected every 15 minutes The simulated study
Verifies that the MFR meets SLA targets Quantifies the reduction of SLA violations Quantifies the number of saved machines Explores the relationship between the remapping interval and the gain from
dynamic management Performs measurements to determine properties of a practical infrastructure with
respect to migration of VMs
Overflows vs Number of PMs
Number of Machines vs Overflow Desired
Significantly reduces number of machines active
Performance degrades as the migration interval increases
Essentially, the prediction is the max usage predicted within the range
Limitations
The paper only looks at one resource utilization In this case, CPU utilization In the real world, you have numerous resources to handle
allocations for Memory, CPU, IO, Network, etc.
Assumes bandwidth between machines is free & unrestricted Relocating some VMs in some cases may not be worth the cost of
relocating the image Their study size is small
Only 6 physical machines What if different VMs have different SLA requirements? What if your PMs had differing hardware?
Conclusion
Based on the simulated data, it significantly reduces cost to execute virtual machines
Relies on an ideal case of VMs Predictable and volatile usage
Algorithm could be optimized to reduce the number of VM relocations, or to more optimally schedule
Simulation is too small The paper claims a 44% average savings in the number of
active PMs