Improving Rice Productivity in Indonesia with Artificial Intelligence

@article{Liundi2019ImprovingRP,
  title={Improving Rice Productivity in Indonesia with Artificial Intelligence},
  author={Nicholas Liundi and Aditya Wirya Darma and Rivaldi Gunarso and Harco Leslie Hendric Spits Warnars},
  journal={2019 7th International Conference on Cyber and IT Service Management (CITSM)},
  year={2019},
  volume={7},
  pages={1-5}
}
Indonesia is one of the biggest agriculture countries in the world with one of its major commodities, rice. Despite its vast paddy field and tropical resources, Indonesia still has not achieved food security. This paper explores ideas about how to present artificial intelligence that may increase rice productivity in Indonesia. Current situations of rice cultivation are mentioned start from existing technologies and systems used in Indonesia. Some artificial intelligence concepts are also… Expand

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