A Web Portal for Rice Crops Improvements

High quality models of factors influencing rice crop yield are needed in countries where rice is a staple food. These models can help select optimal rice varieties for expected field conditions. Development of a system to help scientist track and make decisions using this data is challenging. It involves incorporation of complex data structures – genomic, phenotypic, and remote sensing – with computationally intensive statistical modeling.
Team BDSRC present a publication that delivers a web portal design to help researchers to manage and analyze their datasets, apply machine learning to detect how factors taken together influence crop production, and summarize the results to help scientists make decisions based on the learned models. The team developed the system to be easily accessed by the entire team including rice scientist, genetics, and farmers. As such, they developed a system on a server architecture comprised of a SQLite database, a web interface developed in Python, the Celery job scheduler, and statistical computing in R.
International Journal of Web Portals 2018
James W. Baurley, Arif Budiarto, Muhammad Fitra Kacamarga, Bens Pardamean