Skip to yearly menu bar Skip to main content


Poster
in
Workshop: CODEML: Championing Open-source DEvelopment in Machine Learning

SAGDA: Open-Source Synthetic Agriculture Data for Africa

Abdelghani Belgaid · Oumnia Ennaji

[ ] [ Project Page ]
Fri 18 Jul 2:15 p.m. PDT — 3 p.m. PDT

Abstract:

Data scarcity in African agriculture hampers machine learning (ML) model performance, limiting innovations in precision agriculture. The Synthetic Agriculture Data for Africa (SAGDA) library, a Python-based open-source toolkit, addresses this gap by generating, augmenting, and validating synthetic agricultural datasets. We present SAGDA’s design and development practices, highlighting its core functions: generate, model, augment, validate, visualize, optimize, and simulate, as well as their roles in applications of ML for agriculture. Two use cases are detailed: yield prediction enhanced via data augmentation, and multi-objective NPK (nitrogen, phosphorus, potassium) fertilizer recommendation. We conclude with future plans for expanding SAGDA’s capabilities, underscoring the vital role of open-source, data-driven practices for African agriculture.

Chat is not available.