Role: Data Scientist
Contract: Permanent
Salary: Very Competitive
Location: Oxford / London
Security clearance:This role requires eligibility for UK security clearance (BPSS and SC). SC requires 5 years of continuous UK residency. An active SC or DV clearance is a strong advantage. If you are not currently eligible, we will not be able to progress with your application.
A note from the Founders
Oxford Dynamics is at an inflection point.
We operate in some of the most complex and high-stakes environments in the world defence - national security, AI and robotics. The decisions we make now will define not just how fast we grow, but who we become.
You will work closely with the whole team. You will be trusted with judgment calls. You will influence the business. And you will see the impact of your work every day.
If you are excited by ownership, pace and purpose, and by building something that genuinely matters - we would love to hear from you.
Core Remit
You turn messy, real-world sensor and signals data into detection capability that tells an operator what matters - whether that calls for a machine-learning model, a deterministic rule, or a technique no one has tried yet - and you are honest about what the data can and cannot say.
Your Brief
•Build detection capability on real, hard data: electronic intelligence (signals from emitters), maritime vessel-tracking data, and fused multi-source feeds. The kind of data that arrives with gaps, errors, and deliberate manipulation.
•Pick the right technique for the problem - not the fashionable one.Sometimes that’s a machine-learning model; often it’s a deterministic rule, a statistical test, or a physics- or behaviour-based heuristic; sometimes it’s something you invent. We care that it’s correct, explainable, and defensible, not that it counts as “AI”. Novel thinking and new techniques are actively encouraged.
•Engineer the features and signals that make or break detection- the per-event aggregates, rolling-window statistics, and geospatial and temporal patterns that determine whether a rare anomaly is caught or missed.
•Define what “good” looks like for a given intelligence type (an INT) and the threat it serves, then design the techniques that enforce that quality and detect and control drift over time - so a model or rule that was right last month doesn’t quietly rot as the world changes.
•Own the pipelines that get detection from idea to production fast. The goal is to ship and update models and rules at a rate of change that keeps pace with agentic workflows - continuous, automated, and safe, not a release every quarter.
•Own evaluation end to end:design the holdout, read the precision-recall trade-off, calibrate thresholds against how many false alarms an operator can actually tolerate, and say plainly where the signal is real and where it is noise.
•Take exploratory analysis and harden it into scored, reproducible capability that operators and our platform can rely on - moving it from “interesting notebook” to “trusted detection”.
•Ship through our MLOps platform so everything is reproducible, versioned, and auditable - not one-off scripts on your laptop. Someone else should be able to retrain and re-serve what you build.
•Work alongside our engineers and the analysts who understand the operational domain,and translate between the data and the mission - explaining to non-specialists what a technique can and cannot tell them.