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Main Authors: Pan, Yu, Sun, Jianxin, Yu, Hongfeng, Luck, Joe, Bai, Geng, Chamara, Nipuna, Ge, Yufeng, Awada, Tala
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.00188
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author Pan, Yu
Sun, Jianxin
Yu, Hongfeng
Luck, Joe
Bai, Geng
Chamara, Nipuna
Ge, Yufeng
Awada, Tala
author_facet Pan, Yu
Sun, Jianxin
Yu, Hongfeng
Luck, Joe
Bai, Geng
Chamara, Nipuna
Ge, Yufeng
Awada, Tala
contents Current agricultural data management and analysis paradigms are to large extent traditional, in which data collecting, curating, integration, loading, storing, sharing and analyzing still involve too much human effort and know-how. The experts, researchers and the farm operators need to understand the data and the whole process of data management pipeline to make fully use of the data. The essential problem of the traditional paradigm is the lack of a layer of orchestrational intelligence which can understand, organize and coordinate the data processing utilities to maximize data management and analysis outcome. The emerging reasoning and tool mastering abilities of large language models (LLM) make it a potentially good fit to this position, which helps a shift from the traditional user-driven paradigm to AI-driven paradigm. In this paper, we propose and explore the idea of a LLM based copilot for autonomous agricultural data management and analysis. Based on our previously developed platform of Agricultural Data Management and Analytics (ADMA), we build a proof-of-concept multi-agent system called ADMA Copilot, which can understand user's intent, makes plans for data processing pipeline and accomplishes tasks automatically, in which three agents: a LLM based controller, an input formatter and an output formatter collaborate together. Different from existing LLM based solutions, by defining a meta-program graph, our work decouples control flow and data flow to enhance the predictability of the behaviour of the agents. Experiments demonstrates the intelligence, autonomy, efficacy, efficiency, extensibility, flexibility and privacy of our system. Comparison is also made between ours and existing systems to show the superiority and potential of our system.
format Preprint
id arxiv_https___arxiv_org_abs_2411_00188
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Building Multi-Agent Copilot towards Autonomous Agricultural Data Management and Analysis
Pan, Yu
Sun, Jianxin
Yu, Hongfeng
Luck, Joe
Bai, Geng
Chamara, Nipuna
Ge, Yufeng
Awada, Tala
Artificial Intelligence
Information Retrieval
Current agricultural data management and analysis paradigms are to large extent traditional, in which data collecting, curating, integration, loading, storing, sharing and analyzing still involve too much human effort and know-how. The experts, researchers and the farm operators need to understand the data and the whole process of data management pipeline to make fully use of the data. The essential problem of the traditional paradigm is the lack of a layer of orchestrational intelligence which can understand, organize and coordinate the data processing utilities to maximize data management and analysis outcome. The emerging reasoning and tool mastering abilities of large language models (LLM) make it a potentially good fit to this position, which helps a shift from the traditional user-driven paradigm to AI-driven paradigm. In this paper, we propose and explore the idea of a LLM based copilot for autonomous agricultural data management and analysis. Based on our previously developed platform of Agricultural Data Management and Analytics (ADMA), we build a proof-of-concept multi-agent system called ADMA Copilot, which can understand user's intent, makes plans for data processing pipeline and accomplishes tasks automatically, in which three agents: a LLM based controller, an input formatter and an output formatter collaborate together. Different from existing LLM based solutions, by defining a meta-program graph, our work decouples control flow and data flow to enhance the predictability of the behaviour of the agents. Experiments demonstrates the intelligence, autonomy, efficacy, efficiency, extensibility, flexibility and privacy of our system. Comparison is also made between ours and existing systems to show the superiority and potential of our system.
title Building Multi-Agent Copilot towards Autonomous Agricultural Data Management and Analysis
topic Artificial Intelligence
Information Retrieval
url https://arxiv.org/abs/2411.00188