Skip to content

Latest commit

 

History

History
75 lines (55 loc) · 2.75 KB

README.md

File metadata and controls

75 lines (55 loc) · 2.75 KB

SPANStore: Cost-Effective Geo-Replicated Storage Spanning Multiple Cloud Services

This code contains a python implementation of the SPANStore formulations.

See details about SPANStore in our paper.

Licensing

This code is released under the MIT License.

Requirements

Python >= 2.6

CPLEX ILP solver >= 1.2 (The code is only tested with CPLEX 1.2)

Usage

1 . Generate ILP formulation

Following command generates a ILP formulation file (formulation.lp) based on input files and arguments. formulation.lp is solvable by CPLEX solver.

python strong(eventual)_consistency_formulation_generator.py <storage latency matrix> <VM latency matrix> <cloud pricing matrix> <application workload file> <PUT SLO in ms> <GET SLO in ms> <which percentile latency to consider> <# of failures to tolerate>

with the meaning of arguments:

<storage latency matrix>: latency of storage request issued from one data center to another data center. See details in the data folder.

<VM latency matrix>: similar with <storage latency matrix>.

<cloud pricing matrix>: pricing policy of each cloud region. See details in the data folder.

<application workload file>: see details below.

The format of application workload file is as follows:

line 1: averagesize <average object size in kb>
line 2: overallsize <overall object size in kb>
line 3: time <how long does the objects are stored in storage in days>

After line 3, there are N lines with each line indicating the workload of one data center in access set. N is the size of access set.
Each line is in the format:
  <data center index> <# of PUTs from clients> <# of GETs from clients>

See example workload files in test folder.

Note that cloud data centers are indexed and the formulation generator only uses index numbers to indicate data centers. See details in data folder.

As an example, to generate ILP formulation of strong consistency, you can run

python src/strong_consistency_formulation_generator.py data/storage_latency_matrix_percentile data/vm_latency_matrix_percentile data/region_price_index test/workload_test 1000 500 50 2

2 . Solve the ILP using CPLEX

After generating the formulation file, you can solve it using CPLEX solver.

./ilpsolver formulation.lp result

CPLEX solver is not included in this repo.

3 . Parse results

You can parse the results by using the simple parser provided, or write your own parser.

python parse_result_strong.py result parsed_result

The parsed_result will list all variables that is set to 1 in the optimal solution.

Contact

If you have any questions, please contact Zhe Wu.