Data Engineer

Sanderson Government & Defence
Hampshire
1 day ago
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Data Analytics Engineer

NS Business

SC clearance required


Applicants must be a sole British citizen due to the nature of the work being within NS


Be part of a growing and highly trusted supplier into the NS domain working to keep the nation safe, secure and prosperous.


Key Responsibilities:


  • Design and implement high-efficiency analytics code to process, filter, and route diverse real-time data streams
  • Deploy containerized applications to Kubernetes environments using automated CI/CD pipelines
  • Enhance and maintain existing solutions, including both real-time and batch processing components developed in Go and Python.
  • Collaborate with the scrum team to break down user requirements and objectives
  • Develop clean, secure, and well-tested code, adhering to test-driven development principles.
  • Monitor and optimize deployed systems, proactively addressing issues and applying necessary updates to ensure reliability.


Required Skills:

• Understanding of agile development processes

• Understanding of agile engineering techniques

• Go or Python

• Kubernetes

• Helm

• AWS (EKS. EC2, S3)

• Docker (including the use of docker stacks)


Preferred Skills

• Familiarity with basic AI/ML concepts

• Redis keystore

• Rust

• Robot testing framework

• Message brokering systems (e.g. NATS, qpid, Kafka)

• Linux networking

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