| | --- |
| | license: cc-by-4.0 |
| | task_categories: |
| | - summarization |
| | language: |
| | - en |
| | tags: |
| | - science |
| | - agriculture |
| | - academic |
| | size_categories: |
| | - 10M<n<100M |
| | --- |
| | ```Documents:``` 4,209 |
| | ```Pages:``` 206 |
| | ```Tokens:``` 999,716 |
| |
|
| | # A Curated Research Corpus for Agricultural Advisory AI Applications |
| | This dataset represents a comprehensive collection of 65,550 agricultural research publications from [CIRAD](https://www.cirad.fr/en), |
| | specifically processed and structured for Large Language Model (LLM) applications in agricultural advisory services. |
| |
|
| | With a total of ```343,498,673``` tokens, this corpus provides a vast and detailed knowledge base, enabling advanced AI models to generate accurate, |
| | context-aware responses for research, decision-making, and innovation in agriculture. |
| | Whether for automated knowledge retrieval, chatbot development, or scientific analysis, this dataset serves as a robust foundation for AI-driven advancements in the agricultural domain. |
| |
|
| | Each document has been systematically processed using [GROBID](https://grobid.readthedocs.io/en/latest/Introduction/) to extract |
| | structured content while preserving critical scientific context, metadata, and domain-specific agricultural knowledge. Morever, chunking |
| | methods that preserver the semantic coherence have been applied. More specifically, documents are split |
| | into chunks based on a fixed number of tokens and a portion of tokens at the end of each chunk |
| | overlaps with the beginning of the next chunk. This implementation Preserves contextual continuity between chunks, |
| | which improves the model's understanding of the document's flow and can lead to better predictions and is useful |
| | for tasks that rely on context spread over multiple chunks, such as question answering or summarization |
| | ([Chunking Methods](https://scio.atlassian.net/wiki/spaces/CiGi/pages/221675526/Chunking+methods)). |
| | The corpus covers diverse agricultural topics including crop management, pest control, climate adaptation, and farming systems, |
| | with particular emphasis on small-scale producer contexts in low and middle-income countries. |
| | This machine-readable dataset is specifically curated to enhance the accuracy and contextual relevance of |
| | AI-generated agricultural advisories through Retrieval-Augmented Generation (RAG) frameworks, |
| | ensuring that advanced agricultural science can effectively benefit those at the heart of agriculture. |
| |
|
| | ### Data Sources and RAG Pipeline |
| | The dataset is sourced from [GARDIAN](https://gardian.bigdata.cgiar.org/), |
| | a comprehensive hub for agri-food data and publications. Utilizing its robust API, |
| | the GAIA-CIGI pipeline has systematically discovered and gathered all open-access reports and publications |
| | from the various CGIAR centers. Each document has been converted into a structured, machine-readable format using [GROBID](https://grobid.readthedocs.io/en/latest/Introduction/), |
| | a specialized tool for extracting the structure of scientific publications. A complete description of the system architecture can be found [here](https://scio.atlassian.net/wiki/spaces/CiGi/pages/45711361/Pipeline+Architecture) |
| |
|
| | ### Document Structure |
| | ``` |
| | { |
| | "metadata": { |
| | "gardian_id": "", |
| | "source": "", |
| | "url": "", |
| | "id": "" |
| | }, |
| | "keywords":["keywords"], |
| | "sieverID": "", |
| | "content": "", |
| | "images":[], |
| | "tables":[] |
| | } |
| | ``` |
| |
|
| | ### Property Description |
| | <ol> |
| | <li>"metadata" (object, required): Contains information related to the document's metadata. |
| | <ol> |
| | <li>"gardian_id" (string): an identifier for the document within the GARDIAN ecosystem.</li> |
| | <li>"source" (string): the source or origin of the document.</li> |
| | <li>"url" (string): the url of the downloaded document.</li> |
| | <li>"id" (string): internal identifier of the document generated by hashing the URL string.</li> |
| | </ol> |
| | </li> |
| | <li>"keywords" (list of strings): the keyword list as obtained from origin index metadata.</li> |
| | <li>"sieverID" (string, required): internal identifier of the document.</li> |
| | <li>"content" (string): The useful textual content of the publication as retrieved using GROBID and PDFbox.</li> |
| | <li>"images" (list of strings): It containes the keys of the extracted images by PDFbox. To access the image create the following URL https://cigi-images.s3.us-east-2.amazonaws.com/{image_key}</li> |
| | <li>"tables" (list of strings): It containes the keys of the extracted datatables by Tabula. To access the datatables create the following URL https://cigi-tables.s3.us-east-2.amazonaws.com/{tables_key}</li> |
| | </ol> |
| | |
| | ### Acknowledgement |
| | This dataset was developed for the [Generative AI for Agriculture (GAIA)](https://www.ifpri.org/project/generative-ai-for-agriculture-gaia/) project, funded by the Gates Foundation and the UK International Development from the UK government, in collaboration between [CGIAR](https://www.cgiar.org/) |
| | and [SCiO](https://scio.systems/) |