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Data Analytics Engineer

IO
Romsey
6 days ago
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Role: Data Analytics Engineer


Location: Romsey/Hybrid


Salary: £40-60k (DOE) + Generous Benefits package


Must have an active SC to start, and be willing to undergo the eDV clearance process.


iO Associates have a new role available for a Data Analytics Engineer with an R&D client specialising in Defence and National Security programmes.


The role itself will be working on cutting‑edge tech across AI/ML, Cyber, Cloud, DevOps/SRE and Platform Engineering, helping solve some of the most unique and impactful challenges in the industry.


The role focuses on:



  • Building high-performance data analytics in Go or Python
  • Handling real-time streaming data and batch pipelines
  • Deploying containerised solutions to Kubernetes
  • Working with AWS (EKS, EC2, S3) and Docker
  • Writing clean, secure, test‑driven code in an agile team

Bonus experience (not essential): AI/ML concepts, Redis, Rust, Kafka/NATS, Robot Framework, Linux networking.


You'd be based out of their Romsey site 3 days per week (2 remote).


Due to the nature of the work, the role requires eligibility for DV clearance, but you can start on SC clearance.


The salary on offer is between £40k-£60k (DOE) with a healthy benefits package.


If this role is of interest, apply to the link for consideration


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