Senior Data Engineer - NEC Housing System

Lorien
Portsmouth
4 days ago
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  • Senior Data Engineer
  • Portsmouth - Onsite 1 day a week
  • 6 month contract - 2 year programme
  • Inside of IR35
  • £600 per day

My client is embarking on a major transformation of its Housing Management services - replacing several ageing, disparate systems with a single, modern, cloud-hosted Housing Management System (HMS). This high-impact, strategically backed programme will improve services for more than 15,000 households and establish a strong digital foundation for future change.

We are seeking an experienced Data Lead to own and deliver the entire data migration workstream - a pivotal role in ensuring a smooth transition from the existing NEC Housing system into the new integrated platform. This is a hands-on role suited to someone who has "been through the trenches" of large-scale data migrations in housing or local authority environments.

As the Data Lead, you will:

  • Lead migration from NEC Housing to the new HMS
  • Own the ETL lifecycle - export, transform, cleanse, deduplicate, validate, and load.
  • Analyse existing data structures, working with housing teams to interpret free-text or non-standard data and determine what should move into the target system.

Key Skills and Experience

  • Strong experience as a hands ...

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