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Main Authors: Pan, Yu, Sun, Jianxin, Yu, Hongfeng, Bai, Geng, Ge, Yufeng, Luck, Joe, Awada, Tala
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2401.13672
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author Pan, Yu
Sun, Jianxin
Yu, Hongfeng
Bai, Geng
Ge, Yufeng
Luck, Joe
Awada, Tala
author_facet Pan, Yu
Sun, Jianxin
Yu, Hongfeng
Bai, Geng
Ge, Yufeng
Luck, Joe
Awada, Tala
contents Modern agriculture faces grand challenges to meet increased demands for food, fuel, feed, and fiber with population growth under the constraints of climate change and dwindling natural resources. Data innovation is urgently required to secure and improve the productivity, sustainability, and resilience of our agroecosystems. As various sensors and Internet of Things (IoT) instrumentation become more available, affordable, reliable, and stable, it has become possible to conduct data collection, integration, and analysis at multiple temporal and spatial scales, in real-time, and with high resolutions. At the same time, the sheer amount of data poses a great challenge to data storage and analysis, and the \textit{de facto} data management and analysis practices adopted by scientists have become increasingly inefficient. Additionally, the data generated from different disciplines, such as genomics, phenomics, environment, agronomy, and socioeconomic, can be highly heterogeneous. That is, datasets across disciplines often do not share the same ontology, modality, or format. All of the above make it necessary to design a new data management infrastructure that implements the principles of Findable, Accessible, Interoperable, and Reusable (FAIR). In this paper, we propose Agriculture Data Management and Analytics (ADMA), which satisfies the FAIR principles. Our new data management infrastructure is intelligent by supporting semantic data management across disciplines, interactive by providing various data management/analysis portals such as web GUI, command line, and API, scalable by utilizing the power of high-performance computing (HPC), extensible by allowing users to load their own data analysis tools, trackable by keeping track of different operations on each file, and open by using a rich set of mature open source technologies.
format Preprint
id arxiv_https___arxiv_org_abs_2401_13672
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Transforming Agriculture with Intelligent Data Management and Insights
Pan, Yu
Sun, Jianxin
Yu, Hongfeng
Bai, Geng
Ge, Yufeng
Luck, Joe
Awada, Tala
Databases
Artificial Intelligence
Information Retrieval
Modern agriculture faces grand challenges to meet increased demands for food, fuel, feed, and fiber with population growth under the constraints of climate change and dwindling natural resources. Data innovation is urgently required to secure and improve the productivity, sustainability, and resilience of our agroecosystems. As various sensors and Internet of Things (IoT) instrumentation become more available, affordable, reliable, and stable, it has become possible to conduct data collection, integration, and analysis at multiple temporal and spatial scales, in real-time, and with high resolutions. At the same time, the sheer amount of data poses a great challenge to data storage and analysis, and the \textit{de facto} data management and analysis practices adopted by scientists have become increasingly inefficient. Additionally, the data generated from different disciplines, such as genomics, phenomics, environment, agronomy, and socioeconomic, can be highly heterogeneous. That is, datasets across disciplines often do not share the same ontology, modality, or format. All of the above make it necessary to design a new data management infrastructure that implements the principles of Findable, Accessible, Interoperable, and Reusable (FAIR). In this paper, we propose Agriculture Data Management and Analytics (ADMA), which satisfies the FAIR principles. Our new data management infrastructure is intelligent by supporting semantic data management across disciplines, interactive by providing various data management/analysis portals such as web GUI, command line, and API, scalable by utilizing the power of high-performance computing (HPC), extensible by allowing users to load their own data analysis tools, trackable by keeping track of different operations on each file, and open by using a rich set of mature open source technologies.
title Transforming Agriculture with Intelligent Data Management and Insights
topic Databases
Artificial Intelligence
Information Retrieval
url https://arxiv.org/abs/2401.13672