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Aether: leveraging linear programming for optimal cloud computing in genomics.

Citation
Luber, J. M., et al. “Aether: Leveraging Linear Programming For Optimal Cloud Computing In Genomics.”. Bioinformatics (Oxford, England), pp. 1565-1567.
Center Joslin Diabetes Center
Author Jacob M Luber, Braden T Tierney, Evan M Cofer, Chirag J Patel, Aleksandar D Kostic
Abstract

Motivation: Across biology, we are seeing rapid developments in scale of data production without a corresponding increase in data analysis capabilities.

Results: Here, we present Aether (http://aether.kosticlab.org), an intuitive, easy-to-use, cost-effective and scalable framework that uses linear programming to optimally bid on and deploy combinations of underutilized cloud computing resources. Our approach simultaneously minimizes the cost of data analysis and provides an easy transition from users' existing HPC pipelines.

Availability and implementation: Data utilized are available at https://pubs.broadinstitute.org/diabimmune and with EBI SRA accession ERP005989. Source code is available at (https://github.com/kosticlab/aether). Examples, documentation and a tutorial are available at http://aether.kosticlab.org.

Contact: chirag_patel@hms.harvard.edu or aleksandar.kostic@joslin.harvard.edu.

Supplementary information: Supplementary data are available at Bioinformatics online.

Year of Publication
2018
Journal
Bioinformatics (Oxford, England)
Volume
34
Issue
9
Number of Pages
1565-1567
Date Published
12/2018
ISSN Number
1367-4811
DOI
10.1093/bioinformatics/btx787
Alternate Journal
Bioinformatics
PMID
29228186
PMCID
PMC5925767
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