Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories
Digital Innovation Initiative at ILRI, in collaboration with partners, is integrating Artificial Intelligence (AI) into Meghdoot to enhance its efficiency and accuracy. A pilot project has tested AI models, such as Random Forest regression, Naive Bayesian, and Stacked Models, alongside OpenAI prompt...
| Main Authors: | , |
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| Format: | Informe técnico |
| Language: | Inglés |
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International Livestock Research Institute
2024
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| Online Access: | https://hdl.handle.net/10568/172636 |
| _version_ | 1855524711388151808 |
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| author | Dhulipala, Ram Singh, Kanika |
| author_browse | Dhulipala, Ram Singh, Kanika |
| author_facet | Dhulipala, Ram Singh, Kanika |
| author_sort | Dhulipala, Ram |
| collection | Repository of Agricultural Research Outputs (CGSpace) |
| description | Digital Innovation Initiative at ILRI, in collaboration with partners, is integrating Artificial Intelligence (AI) into Meghdoot to enhance its efficiency and accuracy. A pilot project has tested AI models, such as Random Forest regression, Naive Bayesian, and Stacked Models, alongside OpenAI prompt engineering. Conducted at three locations in India, the pilot has demonstrated promising results. Efforts are underway to refine machine learning models, incorporate expert knowledge, and explore techniques like noisy labels to improve advisory quality. A web-based platform has also been developed to automate advisory generation, allowing users to select parameters like location, crop type, and AI model. The system generates personalized advisories using historical, observed, and forecasted weather data. It provides both AI-generated and traditional advisories, along with weather forecasts and SMS summaries for easy dissemination. Moving forward, the goal is to integrate this AI-powered advisory system into Meghdoot, scaling it nationwide to improve agricultural decision-making, enhance sustainability, and increase resilience among farmers. |
| format | Informe técnico |
| id | CGSpace172636 |
| institution | CGIAR Consortium |
| language | Inglés |
| publishDate | 2024 |
| publishDateRange | 2024 |
| publishDateSort | 2024 |
| publisher | International Livestock Research Institute |
| publisherStr | International Livestock Research Institute |
| record_format | dspace |
| spelling | CGSpace1726362025-02-01T02:06:27Z Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories Dhulipala, Ram Singh, Kanika agriculture climate change food security Digital Innovation Initiative at ILRI, in collaboration with partners, is integrating Artificial Intelligence (AI) into Meghdoot to enhance its efficiency and accuracy. A pilot project has tested AI models, such as Random Forest regression, Naive Bayesian, and Stacked Models, alongside OpenAI prompt engineering. Conducted at three locations in India, the pilot has demonstrated promising results. Efforts are underway to refine machine learning models, incorporate expert knowledge, and explore techniques like noisy labels to improve advisory quality. A web-based platform has also been developed to automate advisory generation, allowing users to select parameters like location, crop type, and AI model. The system generates personalized advisories using historical, observed, and forecasted weather data. It provides both AI-generated and traditional advisories, along with weather forecasts and SMS summaries for easy dissemination. Moving forward, the goal is to integrate this AI-powered advisory system into Meghdoot, scaling it nationwide to improve agricultural decision-making, enhance sustainability, and increase resilience among farmers. 2024-12-29 2025-01-31T09:34:44Z 2025-01-31T09:34:44Z Report https://hdl.handle.net/10568/172636 en Open Access application/pdf International Livestock Research Institute Dhulipala, R. and Singh, K.2024. Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories. Progress Report. Nairobi, Kenya: ILRI. |
| spellingShingle | agriculture climate change food security Dhulipala, Ram Singh, Kanika Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories |
| title | Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories |
| title_full | Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories |
| title_fullStr | Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories |
| title_full_unstemmed | Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories |
| title_short | Enhancing Meghdoot: Integrating AI for Smarter Agricultural Advisories |
| title_sort | enhancing meghdoot integrating ai for smarter agricultural advisories |
| topic | agriculture climate change food security |
| url | https://hdl.handle.net/10568/172636 |
| work_keys_str_mv | AT dhulipalaram enhancingmeghdootintegratingaiforsmarteragriculturaladvisories AT singhkanika enhancingmeghdootintegratingaiforsmarteragriculturaladvisories |