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Reliability Analysis of An
Energy-Aware RAID System
Shu Yin
Xiao Qin
Auburn University
Presentation Outline
• Motivation;
• Related Work;
• MREED Model;
• Experimental Result;
• Conclusion/Future Work.
2
Mobile Multimedia
Data-Intensive Applications
3
Motivation
Bio- Informatics
3D Graphic Weather Forecast
Cluster System
4
Cluster in Data Center
Problem: Energy Dissipation
EPA Report to Congress on Server and Data Center Energy Efficiency, 2007
5
Problem: Energy Dissipation (cont.)
• Using 2010 Historical Trends Scenario
– Server and Data Centers Consume 120 Billion
kWh per year;
– Assume average commercial end user is
charged 9.46 kWh;
– Disk systems can account for 27% of the
computing energy cost of data centers.
6
• Software- directed Power Management
• Dynamic Power Management
• Redundancy Technique
• Multi- speed Setting
Existing Energy Conservation Techniques
7
Contradictory of Energy Efficiency and
Reliability
8
Example: Disk spin up and down
MREED Model
9
R= RBaseValue
[1]*τ+α*R(f)[2]
[1] E. Pinheiro, W.-D. Weber, and L.A. Barroso. Failure trends in a large disk drive population. Proc.
USENIX Conf. File and Storage Tech., February2007.
[2] IDEMA Standards. Specification of hard disk drive reliability.
R(f)=1.51e-6f2 – 1.09e-5f + 1.39e-2
Baseline Failure Rate Derived from Disk Utilization
Temperature Factor
Coefficient to RBaseValue, α=1 in our research
MREED Model
(Temperature Factor τ[3])
10
Temperature
(˚C)
Acceleration
Factor
De-rating
Factor
Adjusted MTBF
25 1.000 1.00 232.140
26 1.0507 0.95 220.553
30 1.2763 0.78 181.069
34 1.5425 0.65 150.891
38 1.8552 0.54 125.356
42 2.2208 0.45 104.463
46 2.6465 0.38 8.123
[3] G. Cole, “Estimating Drive Reliability in Desktop Computers and Consumer Electronics Systems”
Seagate Personal Storage Group, 2000
MREED Model
(MATHEMATICAL RELIABILITY MODELS FOR ENERGY-EFFICIENT RAID SYSTEMS)
11
MREED Model
(MATHEMATICAL RELIABILITY MODELS FOR ENERGY-EFFICIENT RAID SYSTEMS)
12
Energy-Conservation RAID Technique
Weibull Distribution
Analysis
Access Pattern
Frequency
Temperature
Annual Failure
Rate
System Reliability
System Level Reliability
Weibull Analysis
13
• A Leading Method for Fitting Life Date
• Advantages:
• Accurate
• Small Samples
• Widely Used
MREED Model
(Energy Conservation Techniques- PARAID)
Power-Aware RAID (PARAID)[4] System Structure
[4] Charles Weddle, Mathew Oldhan, Jin Qian, An-I Andy Wang. PARAID- A Gear-Shifting Power-Aware RAID.
USENIX FAST 2007.
14
Soft
state
RAID
Gears
Model Validation
15
•Techniques
• Run the Systems for A Couple of Decades
• The Event Validity Validation Techniques[5]
[5] R.G. Sargent, “Verification and Validation of Simulation Models”, in Proceedings of the 37th conference on
Winter Simulation, ser. WSC’05 Winter Simulation Conference, 2005.
Model Validation
16
•Challenges
• Unable to Monitor PARAID Running for Years
• Sample Size is Small from A Validation
Perspective (e.g. 100 Disks for Five Years)
Model Validation
(DiskSim[6] Simulation)
17
[6] S.W.S John, S. Bucy, Jiri Schindler and G.R. Ganger, “The DiskSim Simulation Environment Version 4.0
Reference Manual”, 2008
Input Trace
(File Level)
File to Block Mapper
Simulate File
(Block Access)
DiskSim
(Block Level)
File to Block Level Converter Outline
Model Validation
(DiskSim Simulation)
18
Diagram of the Storage System Corresponding to the DiskSim RAID-0
Driver 0
Bus 0
CTLR 2
BUS 2
Driver 2
CTLR 3
BUS 3
Driver 3
CTLR 4
BUS 4
Driver 4
CTLR 1
BUS 1
Driver 1
CTLR 0
BUS 0
Driver 0
Model Validation
(Result)
19
Utilization Comparison Between MREED and DiskSim Simulator
Model Validation
(Result)
20
Gear Shifting Comparison Between MREED and DiskSim Simulator
Reliability Evaluation
(Experimental Setup)
21
Disk Type Seagate ST3146855FC
Capacity 146 GB
Cache Size Sata 16MB
Buffer to Host Transfer Rate 4Gb/s (Max)
Total Number of Disks 5
File Size 100 MB
Number of Files 1000
Synthetic Trace Poisson Distribution
Time Period 24 Hours
Interval Time (Time Phase) 1 Hour
Power On Hour Per Year 8760 Hours
Reliability Evaluation
(Disk Utilization Comparison)
22
Disks Utilization Comparison Between PARAID-0 and RAID-0 at A Low Access Rate
(20 Times Per Hour)
23
Disks Utilization Comparison Between PARAID-0 and RAID-0 at A High Access Rate
(80 Times Per Hour)
Reliability Evaluation
(Disk Utilization Comparison)
24
AFR Comparison Between PARAID-0 and RAID-0 at A Low Access Rate
(20 Times Per Hour)
Reliability Evaluation
(AFR Comparison)
25
AFR Comparison Between PARAID-0 and RAID-0 at A High Access Rate
(80 Per Hour)
Reliability Evaluation
(AFR Comparison)
AFR
Future Work
• Extend the MREED Model Power-Aware RAID-5;
– Data Stripping
• Investigate Trade-off Between Reliability & Energy-
Efficiency ;
• Evaluate and Compare an array of energy-saving
techniques with respect to specific application
domains;
26
Conclusion
• A Reliability Model (MREED) for Power-Ware RAID;
• Weibull Distribution Analysis to MREED;
• Validation of MREED;
• Impacts of the Gear-shifting on Reliability of PARAID.
27
Questions

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Reliability Analysis for an Energy-Aware RAID System

  • 1. Reliability Analysis of An Energy-Aware RAID System Shu Yin Xiao Qin Auburn University
  • 2. Presentation Outline • Motivation; • Related Work; • MREED Model; • Experimental Result; • Conclusion/Future Work. 2
  • 3. Mobile Multimedia Data-Intensive Applications 3 Motivation Bio- Informatics 3D Graphic Weather Forecast
  • 5. Problem: Energy Dissipation EPA Report to Congress on Server and Data Center Energy Efficiency, 2007 5
  • 6. Problem: Energy Dissipation (cont.) • Using 2010 Historical Trends Scenario – Server and Data Centers Consume 120 Billion kWh per year; – Assume average commercial end user is charged 9.46 kWh; – Disk systems can account for 27% of the computing energy cost of data centers. 6
  • 7. • Software- directed Power Management • Dynamic Power Management • Redundancy Technique • Multi- speed Setting Existing Energy Conservation Techniques 7
  • 8. Contradictory of Energy Efficiency and Reliability 8 Example: Disk spin up and down
  • 9. MREED Model 9 R= RBaseValue [1]*τ+α*R(f)[2] [1] E. Pinheiro, W.-D. Weber, and L.A. Barroso. Failure trends in a large disk drive population. Proc. USENIX Conf. File and Storage Tech., February2007. [2] IDEMA Standards. Specification of hard disk drive reliability. R(f)=1.51e-6f2 – 1.09e-5f + 1.39e-2 Baseline Failure Rate Derived from Disk Utilization Temperature Factor Coefficient to RBaseValue, α=1 in our research
  • 10. MREED Model (Temperature Factor τ[3]) 10 Temperature (˚C) Acceleration Factor De-rating Factor Adjusted MTBF 25 1.000 1.00 232.140 26 1.0507 0.95 220.553 30 1.2763 0.78 181.069 34 1.5425 0.65 150.891 38 1.8552 0.54 125.356 42 2.2208 0.45 104.463 46 2.6465 0.38 8.123 [3] G. Cole, “Estimating Drive Reliability in Desktop Computers and Consumer Electronics Systems” Seagate Personal Storage Group, 2000
  • 11. MREED Model (MATHEMATICAL RELIABILITY MODELS FOR ENERGY-EFFICIENT RAID SYSTEMS) 11
  • 12. MREED Model (MATHEMATICAL RELIABILITY MODELS FOR ENERGY-EFFICIENT RAID SYSTEMS) 12 Energy-Conservation RAID Technique Weibull Distribution Analysis Access Pattern Frequency Temperature Annual Failure Rate System Reliability System Level Reliability
  • 13. Weibull Analysis 13 • A Leading Method for Fitting Life Date • Advantages: • Accurate • Small Samples • Widely Used
  • 14. MREED Model (Energy Conservation Techniques- PARAID) Power-Aware RAID (PARAID)[4] System Structure [4] Charles Weddle, Mathew Oldhan, Jin Qian, An-I Andy Wang. PARAID- A Gear-Shifting Power-Aware RAID. USENIX FAST 2007. 14 Soft state RAID Gears
  • 15. Model Validation 15 •Techniques • Run the Systems for A Couple of Decades • The Event Validity Validation Techniques[5] [5] R.G. Sargent, “Verification and Validation of Simulation Models”, in Proceedings of the 37th conference on Winter Simulation, ser. WSC’05 Winter Simulation Conference, 2005.
  • 16. Model Validation 16 •Challenges • Unable to Monitor PARAID Running for Years • Sample Size is Small from A Validation Perspective (e.g. 100 Disks for Five Years)
  • 17. Model Validation (DiskSim[6] Simulation) 17 [6] S.W.S John, S. Bucy, Jiri Schindler and G.R. Ganger, “The DiskSim Simulation Environment Version 4.0 Reference Manual”, 2008 Input Trace (File Level) File to Block Mapper Simulate File (Block Access) DiskSim (Block Level) File to Block Level Converter Outline
  • 18. Model Validation (DiskSim Simulation) 18 Diagram of the Storage System Corresponding to the DiskSim RAID-0 Driver 0 Bus 0 CTLR 2 BUS 2 Driver 2 CTLR 3 BUS 3 Driver 3 CTLR 4 BUS 4 Driver 4 CTLR 1 BUS 1 Driver 1 CTLR 0 BUS 0 Driver 0
  • 19. Model Validation (Result) 19 Utilization Comparison Between MREED and DiskSim Simulator
  • 20. Model Validation (Result) 20 Gear Shifting Comparison Between MREED and DiskSim Simulator
  • 21. Reliability Evaluation (Experimental Setup) 21 Disk Type Seagate ST3146855FC Capacity 146 GB Cache Size Sata 16MB Buffer to Host Transfer Rate 4Gb/s (Max) Total Number of Disks 5 File Size 100 MB Number of Files 1000 Synthetic Trace Poisson Distribution Time Period 24 Hours Interval Time (Time Phase) 1 Hour Power On Hour Per Year 8760 Hours
  • 22. Reliability Evaluation (Disk Utilization Comparison) 22 Disks Utilization Comparison Between PARAID-0 and RAID-0 at A Low Access Rate (20 Times Per Hour)
  • 23. 23 Disks Utilization Comparison Between PARAID-0 and RAID-0 at A High Access Rate (80 Times Per Hour) Reliability Evaluation (Disk Utilization Comparison)
  • 24. 24 AFR Comparison Between PARAID-0 and RAID-0 at A Low Access Rate (20 Times Per Hour) Reliability Evaluation (AFR Comparison)
  • 25. 25 AFR Comparison Between PARAID-0 and RAID-0 at A High Access Rate (80 Per Hour) Reliability Evaluation (AFR Comparison) AFR
  • 26. Future Work • Extend the MREED Model Power-Aware RAID-5; – Data Stripping • Investigate Trade-off Between Reliability & Energy- Efficiency ; • Evaluate and Compare an array of energy-saving techniques with respect to specific application domains; 26
  • 27. Conclusion • A Reliability Model (MREED) for Power-Ware RAID; • Weibull Distribution Analysis to MREED; • Validation of MREED; • Impacts of the Gear-shifting on Reliability of PARAID. 27
  • 28.