Data Engineer

IO Associates
London
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Location:

Hampshire / Hybrid

Salary:

£40k-60k per annum (DOE) + benefits
We're seeking a talented Data Engineer to design, build, and optimize robust analytics pipelines supporting sophisticated, mission-critical systems in the national security sector. You'll work on real-time and batch data processing, transforming, filtering, and routing complex data streams, and deploying containerized applications to Kubernetes clusters.
Key Responsibilities:
Develop, maintain, and optimize analytics pipelines using

Go or Python .
Process streaming and batch data to deliver actionable insights.
Deploy containerized applications via

Docker ,

Helm , and CI/CD pipelines.
Monitor, troubleshoot, and improve deployed data systems.
Break down requirements into actionable tasks in an

Agile Scrum team .
Follow test-driven development and write secure, maintainable code.
Must-have Skills:
Go or Python programming
Data analytics / real-time processing experience
Kubernetes & Helm
Docker & container orchestration
AWS (EKS, EC2, S3)
Agile development experience
Nice-to-have:
AI/ML fundamentals
Redis, Rust, or Robot Framework
Messaging systems (Kafka, NATS, Qpid)
Linux networking knowledge

TPBN1_UKTJ

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