FaST-LMM and Windows Azure Put Genetics Research on Faster Track
- David Heckerman, Microsoft
Although researchers are able to collect, store, and analyze tremendous volumes of data, technological and storage limitations can severely impact the speed at which these data can be analyzed. A new algorithm developed by Microsoft Research, FaST-LMM, runs on Windows Azure in the cloud and expedites analysis time—reducing processing periods from years to just days or hours. An early application of FaST-LMM and Windows Azure helps researchers analyze data for the genetic causes of common diseases.
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David Heckerman
Emeritus Researcher
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