Junior Data Engineer | Cambridge | Med-Tech

Cambridge
3 weeks ago
Applications closed

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Junior Data Engineer / BI Analyst – HealthTech Scale-Up | Up to £45K + EMI Options

We're working with an early-stage healthtech startup building a next-generation telehealth platform. 

They're now in the late trial phase with thousands of real patients across multiple UK regions, and are preparing for scale-up and geographic expansion.

The Role This is an opportunity for a junior data engineer or data-savvy analyst to work directly with rich, high-dimensional patient data. You’ll be helping the team understand user behavior, optimise care flows, and bring clarity to complex datasets.

Structuring, cleaning, and modelling data
Running ad hoc and scheduled queries to understand client base and 
Supporting visualisations and insight delivery
Helping to build internal BI tools and pipelinesYou’ll be working in a tight-knit team of engineers with backgrounds in software, electronics, and cloud infrastructure.

About You
1–3 years’ experience in a data-heavy role
Strong grasp of data modelling and basic information theory
Able to turn messy, confusing data into something clear and insightful
Confident with SQL (Postgres), Python (Jupyter), and basic data visualisation
A natural systems thinker — you enjoy solving complex puzzles and building scalable insight engines
Bonus if you’ve worked with consumer health, medical, or segmentation dataBenefits: 

📈 EMI scheme available
🌍 Remote-friendly, UK-based
🚀 Small, mission-led team
🧠 High impact in an unusual, novel tech stack

Apply now to be part of a mission that’s redefining how healthcare is delivered in the UK and beyond

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