Litcius/Paper detail

Cloud architecture for plant phenotyping research

Olivier Debauche, Sidi Ahmed Mahmoudi, Nicolas De Cock, Saïd Mahmoudi, Pierre Manneback, Frédéric Lebeau

2020Concurrency and Computation Practice and Experience19 citationsDOIOpen Access PDF

Abstract

Summary Digital phenotyping is an emergent science mainly based on imagery techniques. The tremendous amount of data generated needs important cloud computing for their processing. The coupling of recent advance of distributed databases and cloud computing offers new possibilities of big data management and data sharing for the scientific research. In this paper, we present a solution combining a lambda architecture built around Apache Druid and a hosting platform leaning on Apache Mesos. Lambda architecture has already proved its performance and robustness. However, the capacity of ingesting and requesting of the database is essential and can constitute a bottleneck for the architecture, in particular, for in terms of availability and response time of data. We focused our experimentation on the response time of different databases to choose the most adapted for our phenotyping architecture. Apache Druid has shown its ability to respond to typical queries of phenotyping applications in times generally inferior to the second.

Topics & Concepts

BottleneckCloud computingArchitectureComputer scienceRobustness (evolution)Distributed computingBig dataDatabaseComputer architectureData scienceData miningOperating systemEmbedded systemBiologyBiochemistryArtVisual artsGeneCloud Computing and Resource ManagementScientific Computing and Data ManagementSmart Agriculture and AI