Data Engineer

iO Associates
London
1 week ago
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Data Engineer I - QuantumBlack, AI by McKinsey

Our client is looking for a hands‑on Data Engineer to join their tight‑knit Data Engineering team and play a key role in shaping our enterprise data platform. This is a high‑impact position where you’ll design, build, and optimise data pipelines that power analytics, reporting, and operational systems across the business. You’ll work closely with Data & BI teams to improve performance, ensure data quality and governance, and help teams unlock real value from data at scale!


Base pay range

Up to £60,000 D.O.E


Location

Remote (Occasional visits to London or Cheltenham)


What you’ll do

  • Build and optimise ETL/ELT pipelines ingesting data from multiple business systems.
  • Own and optimise our Data Warehouse / Lakehouse (performance, scalability, cost).
  • Automate workflows, validation, and monitoring using Dataform, BigQuery, and orchestration tools.
  • Experience with cloud data platforms (BigQuery, Snowflake, Redshift, Azure Synapse).
  • Python for data transformation, automation and scripting.
  • Salary up to £60,000 D.O.E
  • Private medical cover
  • And more!

Our client has a 2‑stage interview process and for the right candidate they will interview early next week!


If this role sounds interesting, then please apply with your updated CV to


Seniority level
  • Entry level

Employment type
  • Full‑time

Job function
  • Information Technology

Industries
  • Data Infrastructure and Analytics


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