cost-effective ways to manage and analyze huge amount of genomic data for faster innovation in drug or biologics discovery. To that effect, various alliances among competitive organizations are getting formed, such as the Pistoia Alliance, to collaborate and share a pool of genomic data and build useful search and analysis techniques for the alliance partners. In order to make the development, and management of data and applications cost-effective, a secure cloud computing based platforms are being considered. In this paper we describe an experience report of building such a collaborative platform on Amazon cloud platform. In order to build a scalable genome sequence alignment solution, we have adopted the well-known BLAST framework on Hado...
Background: While next-generation sequencing (NGS) costs have plummeted in recent years, cost and co...
A major bottleneck in biological discovery is now emerging at the computational level. Cloud computi...
Cloud computing is often adopted to process big\ud data for genome analysis due to its elasticity an...
Commercial cloud providers are emerging as a cheap source of temporary computational resources witho...
Abstract. Biobanks store and catalog human biological material that is increasingly being digitized ...
Cloud computing offers exciting new approaches for scientific computing that leverages the hardware ...
Next-generation sequencing (NGS) technologies have made it possible to rapidly sequence the human ge...
Many time-consuming analyses of next -: generation sequencing data can be addressed with modern clou...
In bioinformatics, genomic sequence alignment is a simple method for handling and analysing data, an...
Background Comparative genomics resources, such as ortholog detection tools and repositories are rap...
A major bottleneck in biological discovery is now emerging at the computational level. Cloud computi...
The molecular systems biology community has to deal with an increasingly growing amount of data. A r...
Over the past 20 years, the rise of high-throughput methods in life science has enabled research lab...
Genomic sequence alignment is an important technique to decode genome sequences in bioinformatics. N...
With the evolution of next generation sequencing devices, the cost for obtaining genomic data has si...
Background: While next-generation sequencing (NGS) costs have plummeted in recent years, cost and co...
A major bottleneck in biological discovery is now emerging at the computational level. Cloud computi...
Cloud computing is often adopted to process big\ud data for genome analysis due to its elasticity an...
Commercial cloud providers are emerging as a cheap source of temporary computational resources witho...
Abstract. Biobanks store and catalog human biological material that is increasingly being digitized ...
Cloud computing offers exciting new approaches for scientific computing that leverages the hardware ...
Next-generation sequencing (NGS) technologies have made it possible to rapidly sequence the human ge...
Many time-consuming analyses of next -: generation sequencing data can be addressed with modern clou...
In bioinformatics, genomic sequence alignment is a simple method for handling and analysing data, an...
Background Comparative genomics resources, such as ortholog detection tools and repositories are rap...
A major bottleneck in biological discovery is now emerging at the computational level. Cloud computi...
The molecular systems biology community has to deal with an increasingly growing amount of data. A r...
Over the past 20 years, the rise of high-throughput methods in life science has enabled research lab...
Genomic sequence alignment is an important technique to decode genome sequences in bioinformatics. N...
With the evolution of next generation sequencing devices, the cost for obtaining genomic data has si...
Background: While next-generation sequencing (NGS) costs have plummeted in recent years, cost and co...
A major bottleneck in biological discovery is now emerging at the computational level. Cloud computi...
Cloud computing is often adopted to process big\ud data for genome analysis due to its elasticity an...