

At ofi, we’re shaping the future of food, working closely with farming communities worldwide to source and produce high-quality cocoa, coffee, dairy, nuts, and spices. With operations across ~50 countries, we combine global scale with deep local roots to deliver trusted, traceable ingredients while creating positive impact for people and planet.
As one of the world’s leading cocoa processors, we connect farmers to global markets through transparent, deforestation-monitored supply chains and long-term sustainability programs, helping build a better future for cocoa and the communities behind it.
Our purpose to be the change for good food and a healthy future guides everything we do. Here, you’ll find driven minds, open collaboration, curiosity to innovate, and a shared commitment. Whoever we’re with, whatever we’re doing, we always make it real.
Cocoa is one of the most important agricultural commodities in West Africa, with Côte d’Ivoire producing more than 40% of the world’s supply. Accurate mapping of cocoa farms is essential for improving supply-chain transparency, supporting zero-deforestation commitments, and ensuring sustainable sourcing. However, cocoa landscapes are highly heterogeneous, complex, and often difficult to distinguish from other tree crops using traditional machine learning approaches. The need for high-resolution spatially explicit cocoa maps that generalize across ecological zones has never been greater.
Remote sensing has long supported commodity-crop monitoring, but conventional methods such as random forests or standard deep learning classifiers require large amounts of labelled data and often struggle to capture fine-scale structural variations in cocoa agroforestry systems. Recent advances in retrieval-augmented generation (RAG) offer a promising new direction. RAG enables models to dynamically retrieve relevant training examples, auxiliary information, or contextual embeddings during inference, improving classification accuracy and generalization, particularly when class boundaries are ambiguous.
In this internship, the student will explore how RAG-enhanced machine learning can improve cocoa farm mapping compared to existing traditional approaches. The student will have access to a large, proprietary database of georeferenced cocoa farms in Côte d’Ivoire provided by ofi, enabling the development, evaluation, and validation of next-generation cocoa-mapping models.
This internship will address the following core questions:
During the internship you will:
This internship is ideal for a student who:
ofi is an equal opportunity employer and values diversity. All qualified applicants will receive consideration for employment without regard to racial or ethnic origin, color, age, religion or belief, sex, nationality, disability, sexual orientation, gender identity, gender expression, genetic information, or any other characteristic protected by applicable law.
Applicants are requested to complete all required steps in the application process including providing a resume/CV in order to be considered for open roles.