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Data Analytics Engineer

Roke
Romsey
2 weeks ago
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Be part of a growing, highly trusted supplier into the national security domain, delivering mission‑critical solutions that help keep the nation safe, secure and prosperous. Roke works on leading‑edge technology solutions including AI/DS, cyber, cloud, DevOps/SRE and platform engineering.


Key responsibilities

  • Write high‑performance analytic code to transform, filter and route numerous streaming data feeds in a variety of formats.
  • Deploy containerised code to Kubernetes clusters using continuous integration/deployment processes.
  • Maintain and develop existing streaming and batch analytics written in Go and Python.
  • Help the Scrum team decompose user requests and key results into epics and stories.
  • Write clean, secure code following a test‑driven approach.
  • Monitor and maintain deployed systems for issues and make necessary updates.

Required skills

  • Understanding of agile development processes.
  • Understanding of agile engineering techniques.

Preferred skills

  • Familiarity with basic AI/ML concepts.
  • Docker (including the use of Docker stacks).

Where you’ll work

ROMSEY – Located within beautiful Hampshire countryside, close to the picturesque New Forest District and not far from a superb stretch of the south coast. This is no corporate concrete jungle; it is a manor house site, with ample parking, an on‑site gym and a driveway full of daffodils in the spring.


Eligibility

Due to the nature of this role, you must be eligible to achieve DV clearance.


Application instructions

Click apply, submitting an up‑to‑date CV. We look forward to hearing from you.


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