Geospatial Data Scientist

Oceyon
Greater London
1 month ago
Applications closed

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Job Description

About the job


Location: London/Cambridge or Europe

Position: Full-time

Team: Technology

Starting date: February/March 2026


About Oceyon

Oceyon AG is a Swiss-based maritime exploration company dedicated to the compliant, technology-driven recovery of high-value underwater assets, while contributing to maritime archaeology and ocean conservation. We operate at the intersection of history, innovation, and compliance, working with governments, cargo owners, and cultural institutions to ensure every mission is legally and ethically executed.


Role Overview

We are seeking a motivated and talented Geoscpatial Data Scientist to join our growing technology team. This role is ideal for a junior data scientist / AI engineer with 2–3 years of experience, a strong technical foundation, and the ambition to contribute to cutting-edge technology development.

The ideal candidate combines data science expertise, software engineering capability, and a geoscience mindset, enabling them to analyse complex datasets, build AI/ML models, and support the further development of our proprietary algorithms. This role offers a unique opportunity to shape our technical roadmap and collaborate closely with senior engineers and domain specialists.<...

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