Overview
A study of cost and performance of the application of cloud computing to Astronomy 1
The performance of three workflow applications with different I/O, memory and CPU requirements are investigated on Amazon EC2 and the performance of cloud are compared with that of a typical HPC (Abe in NCSA).
The goal is to determine which type of scientific workflow applications are cheaply and efficiently run on the Amazon EC2 cloud.
Also the application of cloud computing to the generation of an atlas of periodograms for the 210,000 light curves is described.
Part I - Performance of three workflow applications
Summary
- For CPU-bound applications, virtualization overhead on Amazon EC2 is generally small.
- The resources offered by EC2 are generally less powerful than those available in HPC. Particularly for I/O-bound applications.
- Amazon EC2 offers no cost benefit over locally hosted storage, but does eliminate local maintenance and energy costs, and does offer high-quality, reliable storage.
- As a result, commercial clouds may not be best suited for large-scale computations c.
Cloud platform
- Cloud platform: Amazon EC2 (http://aws.amazon.com/ec2/)
- Workflow a applications
Three different workflow applications are chosen.- Montage (http://montage.ipac.caltech.edu) from astronomy: 10,429 tasks, read 4.2 GB of input data, and produced 7.9 GB of output data.
I/O-bound because it spends more than 95% of its time waiting on I/O operations - Broadband (http://scec.usc.edu/research/cme) from seismology: 320 tasks, read 6 GB of input data, and produced 160 MB of output data.
Memory-limited because more than 75% of its runtime is consumed by tasks requiring more than 1 GB of physical memory. - Epigenome (http://epigenome.usc.edu) from biochemistry: 81 tasks, read 1.8 GB of input data, and produced 300 MB of output data.
CPU-bound because it spends 99% of its runtime in the CPU and only 1% on I/O and other activities.
- Montage (http://montage.ipac.caltech.edu) from astronomy: 10,429 tasks, read 4.2 GB of input data, and produced 7.9 GB of output data.
- Methods
The experiments were all run on single nodes to provide an unbiased comparison of the performance of workflows on Amazon EC2 and Abe.
Cloud performance
- Montage (I/O-bound)
The processing times on abe.lustre are nearly three times faster than the fastest EC2 machines b. - Broadband (Memory-bound)
The processing advantage of the parallel file system largely disappears. And abe.local's performance is only 1% better than cl.xlarge.
For memory-intensive application, Amazon EC2 can achieve nearly the same performance as Abe. - Epigenome (CPU-bound)
The parallel file system in Abe provides no processsing advantage for Epigenome. The machines with the most cores gave the best performance for CPU-bound application.
Issues/Gaps
- Storage Cost: Cost to store VM images in S3 and cost of storing input data in EBS.
The table summarizes the monthly storage costApplication
Input Volume
Monthly Storage Cost
Montage
4.3 GB
$0.66
Broadband
4.1 GB
$0.66
Epigenome
1.8 GB
$0.26
- Transfer cost: AmazonEC2 charges $0.10 per GB for transter into the cloud and $0.17 per GB for transfer out of the cloud.
The data size and transfer costs are summarized in the tables below.
Data transfer size per workflow on Amazon EC2Costs of transferring data into and out the EC2 cloudApplication
Input
Output
Logs
Montage
4,291 MB
7,970 MB
40 MB
Broadband
4,109 MB
159 MB
5.5 MB
Epigenome
1,843 MB
299 MB
3.3 MB
Application
Input
Output
Logs
Total
Montage
$0.42
$1.32
$<0.01
$1.75
Broadband
$0.40
$0.03
$<0.01
$0.43
Epigenome
$0.18
$0.05
$<0.01
$0.23
- Cost effectiveness study
Cost calculations based on processing reqeusts for 36,000 mosaic of 2MASS images (Total size 10TB) of size 4 sq deg over a period of three years (typical workload for image mosaic service).
Results show that Amazon EC2 is much less attractive than a local service for I/O-bound application due to the high costs of data storage in Amazon EC2.
Part II - Application to calculation of periodograms
Generation of a science product: an atlas of periodograms for the 210,000 light curves released by the NASA Kepler Mission.
|
|
Result |
---|---|---|
Runtimes |
Tasks |
631,992 |
|
Mean Task Runtime |
6.34 sec |
|
Jobs |
25,401 |
|
Mean Job Runtime |
2.62 min |
|
Total CPU Time |
1,113 hr |
|
Total Wall Time |
26.8 hr |
Inputs |
Input Files |
210,664 |
|
Mean Input Size |
0.084 MB |
|
Total Input Size |
17.3 GB |
Outputs |
Output Files |
1,263,984 |
|
Mean Output Size |
0.124 MB |
|
Total Output Size |
76.52 GB |
Cost |
Compute Cost |
$291.58 |
|
Transfer Cost |
$11.48 |
|
Total Cost |
$303.06 |
Seeking Supernovae in the Clouds: A Performance Study 2
Summary
Nearby Supernova Factory(SNfactory) experiment measures the expansion history of the Universe to explore the nature of Dark Energy with Type Ia supernovae. SNfactory is a pipeline of serial processes executing various image processing algorithms in parallel on ~10TBs of data. SNfactory is ported to Amazon Web Services environment.
Cloud platform
- Cloud Platform: Amazon Web Services
- EC2 32-bit highCPU medium instances (c1.mediu: 2 virtual cores, 2.5 ECU each)
- 80-core runs were used.
- Design: Port the environment into EC2 first, then decide the location of data and the size of compute resource.
- Setup virtual cluster in EC2. Create EBS volume for shared file system.
- Data size:
- Raw data: 10TB
- Processed data: 20TB
Cloud performance
- EBS vs S3
- In the 80-core experiment, a run of processing took ~7 hours for EBS variants and only 3 hours for S3.
- Output data loading time into S3 is an order of magnitude smaller than into EBS.
- Cost: data transfers between EC2 and S3 are free d. S3 storage is better than EBS for SNfactory.
- Input data and application data will be stored in EBS and output data will be writen to S3.
Issues/Gaps
- Need to replicate HPC cluster environment in EC2 or the application must be modified.
- Mean rate of failure is higher in EC2 than in traditional cluster environments which needs to be handled.
- Inability to acquire all of the VMI requested because insufficient resources are available, so need to modify the application to adapt this.
- Transient errors.
Application of Cloud computing to the creation of image mosaic and management of their provenance 3
Summary
Workflow
Data
Cloud platform
Cloud performance
Issues/Gaps
Scientific workflow applications on Amazon EC2 4
Summary
Workflow
Data
Cloud platform
Cloud performance
Issues/Gaps
References
- Berriman, G.B. et al. Sixth IEEE International Conference on e-Science, 1-7 (2010)
- Jackson, K.R. et al. Proc. ACM Int. Symp. HPDC, 421-429 (2010)
- Berriman, G.B. et al. SPIE Conference 7740: Software and Cyberinfrastructure for Astronomy (2010)
- Juve, G. et al. Cloud Computing Workshop in Conjunction with e-Science Oxford, UK: IEEE (2009)
- Juve, G. et al. SC(2010)
- Wiley, K. et al. Publications of the Astronomical Society of the Pacific 123 366-380 (2011)
- Gaudet, S. et al. Proc SPIE (2010)
- Ramakrishnan, L. et al. Wands '10 (2010)
- Simmhan, Y. et al. ADVCOMP 09' (2009)
Notes and other links
a. Workflow: loosely coupled parallel applications that consist of a set of computational tasks linked by data- and control-flow dependencies.
b. A parallel file system and high-speed interconnect would make dramatic performance upgrades. Recently Amazon released a new resource type including a 10Gb interconnect.
c. There is a movement towards providing academic clouds, such as FutureGrid or Magellan.
d. Only true for intra-zone transfer (before July 1st, 2011). Also the request for data transfer is not free.