WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide

The present document provides a comprehensive overview of the development, architecture, and capabilities of the Limpopo Digital Twin Chatbot or Copilot (WaterCopilot). WaterCopilot is an AI-driven virtual assistant designed to enhance data accessibility and support decision-making for water managem...

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Main Authors: Vickneswaran, Keerththanan, Retief, H., Padilha, R., Dickens, Chris, Silva, Paulo, Garcia Andarcia, Mariangel
Format: Informe técnico
Language:Inglés
Published: International Water Management Institute (IWMI). CGIAR Initiative on Digital Innovation 2024
Subjects:
Online Access:https://hdl.handle.net/10568/170224
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author Vickneswaran, Keerththanan
Retief, H.
Padilha, R.
Dickens, Chris
Silva, Paulo
Garcia Andarcia, Mariangel
author_browse Dickens, Chris
Garcia Andarcia, Mariangel
Padilha, R.
Retief, H.
Silva, Paulo
Vickneswaran, Keerththanan
author_facet Vickneswaran, Keerththanan
Retief, H.
Padilha, R.
Dickens, Chris
Silva, Paulo
Garcia Andarcia, Mariangel
author_sort Vickneswaran, Keerththanan
collection Repository of Agricultural Research Outputs (CGSpace)
description The present document provides a comprehensive overview of the development, architecture, and capabilities of the Limpopo Digital Twin Chatbot or Copilot (WaterCopilot). WaterCopilot is an AI-driven virtual assistant designed to enhance data accessibility and support decision-making for water management in the Limpopo River Basin (LRB). It has been developed through collaboration between the International Water Management Institute (IWMI) and Microsoft Research. WaterCopilot integrates advanced natural language processing with real-time data retrieval to address key challenges in water resource management, including fragmented information sources, manual data processing, and delays in response. The document outlines the project's objectives, system architecture, and modular plugin approach, which enables the Copilot to seamlessly connect with various datasets, including real-time environmental data, historical records, and policy documents related to water availability, rainfall patterns, and environmental flow. By leveraging Azure OpenAI services, WaterCopilot interprets user queries and retrieves relevant information. Key features of the Copilot include real-time monitoring of water availability, rainfall patterns, and environmental flow alerts, as well as userfriendly data visualizations and contextual insights. The deployment strategy utilizes Docker containers on AWS infrastructure, ensuring scalability, reliability, and efficient performance of the Copilot. This document also addresses the technical challenges encountered during development, the solutions implemented to create a robust and adaptable system, and outlines future work aimed at further enhancing WaterCopilot's capabilities. This detailed documentation serves as a technical guide to understanding WaterCopilot's capabilities, architecture, and future directions, emphasizing its role in supporting sustainable water management across the LRB.
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spelling CGSpace1702242025-11-07T08:00:29Z WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide Vickneswaran, Keerththanan Retief, H. Padilha, R. Dickens, Chris Silva, Paulo Garcia Andarcia, Mariangel artificial intelligence models water management natural resources management environmental monitoring The present document provides a comprehensive overview of the development, architecture, and capabilities of the Limpopo Digital Twin Chatbot or Copilot (WaterCopilot). WaterCopilot is an AI-driven virtual assistant designed to enhance data accessibility and support decision-making for water management in the Limpopo River Basin (LRB). It has been developed through collaboration between the International Water Management Institute (IWMI) and Microsoft Research. WaterCopilot integrates advanced natural language processing with real-time data retrieval to address key challenges in water resource management, including fragmented information sources, manual data processing, and delays in response. The document outlines the project's objectives, system architecture, and modular plugin approach, which enables the Copilot to seamlessly connect with various datasets, including real-time environmental data, historical records, and policy documents related to water availability, rainfall patterns, and environmental flow. By leveraging Azure OpenAI services, WaterCopilot interprets user queries and retrieves relevant information. Key features of the Copilot include real-time monitoring of water availability, rainfall patterns, and environmental flow alerts, as well as userfriendly data visualizations and contextual insights. The deployment strategy utilizes Docker containers on AWS infrastructure, ensuring scalability, reliability, and efficient performance of the Copilot. This document also addresses the technical challenges encountered during development, the solutions implemented to create a robust and adaptable system, and outlines future work aimed at further enhancing WaterCopilot's capabilities. This detailed documentation serves as a technical guide to understanding WaterCopilot's capabilities, architecture, and future directions, emphasizing its role in supporting sustainable water management across the LRB. 2024-12-30 2025-01-28T14:26:47Z 2025-01-28T14:26:47Z Report https://hdl.handle.net/10568/170224 en Open Access application/pdf International Water Management Institute (IWMI). CGIAR Initiative on Digital Innovation Vickneswaran, K.; Retief, H.; Padilha, R.; Dickens, C.; Silva, P.; Garcia Andarcia, M. 2024. WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide. Colombo, Sri Lanka: International Water Management Institute (IWMI). CGIAR Initiative on Digital Innovation. 23p.
spellingShingle artificial intelligence
models
water management
natural resources management
environmental monitoring
Vickneswaran, Keerththanan
Retief, H.
Padilha, R.
Dickens, Chris
Silva, Paulo
Garcia Andarcia, Mariangel
WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide
title WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide
title_full WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide
title_fullStr WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide
title_full_unstemmed WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide
title_short WaterCopilot: a water management AI virtual assistant for the Limpopo River Basin Digital Twin - technical guide
title_sort watercopilot a water management ai virtual assistant for the limpopo river basin digital twin technical guide
topic artificial intelligence
models
water management
natural resources management
environmental monitoring
url https://hdl.handle.net/10568/170224
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