Grisha Weintraub, N. Hadar, E. Gudes, S. Dolev, O. Birk
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Analyzing large-scale genomic data with cloud data lakes
In recent years there is huge influx of genomic data and a growing need for its analysis, yet existing genomic databases do not allow easy accessibility. We developed a pipeline that continuously pre-processes raw human genetic data. The data is then stored in a cloud data lake and can be accessed via a simple and intuitive web service and API.