Data Engineer

83zero
City of London
3 weeks ago
Applications closed

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Data Engineer - AI Analytics and EdTech Developments

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineering Offering Lead

Salary: £80,000 – £100,000 + benefits

Location: UK-wide (client-site travel required)

Clearance: SC or SC-clearable

Type: Permanent

We’re partnering with a growing consulting business that is expanding its Data & AI practice and looking for a Data Engineering Offering Lead to define, build and lead their modern data engineering capability. This is a strategic, hands-on consulting role focused on designing scalable data platforms, leading client engagements and shaping the firm’s go-to-market data engineering offering.

What you’ll be doing

  • Leading the development of the consulting firm’s Data Engineering offering and go-to-market approach.
  • Working directly with clients to understand data challenges and architect modern, scalable data solutions.
  • Designing and overseeing the build of data pipelines, data platforms, ingestion frameworks and integration patterns.
  • Driving best practices across cloud data engineering, data quality, governance and solution architecture.
  • Supporting pre-sales, proposals and client workshops by shaping technical solutions and delivery approaches.
  • Working closely with Data Science, Visualisation and AI teams to create end-to-end solutions.
  • Mentoring engineers and helping build a high-performing internal capability.
  • Travelling nationally to support client delivery when required.

What you’ll bring

  • Strong experience in modern data engineering across cloud platforms (Azure, AWS or GCP).
  • Hands-on skills in data pipelines, ETL/ELT, distributed processing, APIs and data architecture.
  • Experience with modern tooling (Databricks, Spark, Synapse, Snowflake, BigQuery, Kafka etc.).
  • Excellent client-facing skills with the ability to lead technical and strategic conversations.
  • Consulting experience and confidence working in complex, evolving client environments.
  • Strong understanding of how data engineering underpins analytics, ML and AI solutions.
  • SC clearance or the ability to become SC-cleared.

Interested?

If this sounds like a role you’d excel in, drop me your details for more information and a confidential conversation.

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