Data Engineer - SC Cleared. Stevenage/Hybrid £80k

Akkodis
Stevenage
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer (Strong SQL, ETL, Python) - SC Cleared OR EligibleStevenage (Hybrid) 2-3 days onsiteUp to £80,000High-impact programme - Revolutionary platformI am looking for a Security-Cleared Data Engineer to take the reins on a range of highly ambitious Data Migration projects supporting a range of truly high-impact programmes across the UK.This is a unique opportunity to work on cutting-edge cloud, software, and infrastructure projects that shape the future of technology in both public and private sectors. You'll be part of a collaborative team delivering scalable, next-generation digital ecosystems.

What you'll be doing?As a Data Engineer within our Centre of Excellence, you will play a critical role in delivering complex data migration and data engineering projects for our clients. This position focuses on the planning, execution, and optimisation of data migrations-from legacy platforms to modern cloud-based environments-ensuring accuracy, consistency, security, and continuity throughout the processKey Responsibilities

  • Analyse existing data structures and understand business and technical requirements for migration initiatives.

  • Design and deliver robust data migration strategies and ETL solutions.

  • Develop automated data extraction, transformation, and loading (ETL) processes using industry-standard tools and scripts...

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