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Lead Data Engineer

HOK Consulting - Technical Recruitment Consultancy
Birmingham
1 week ago
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Overview

We’re seeking a hands-on Lead Data Engineer to design, build, and optimize scalable data pipelines for global banking projects. You’ll lead a team, drive best practices, and ensure data quality, reliability, and compliance.

Location

Hybrid (3 days/week in Birmingham, UK)

Duration

Long-term Contract

Visa

Only UK/ILR/dependent visas (No Students or PSW, No Sponsorship available)

Key Skills & Experience
  • Strong SQL/NoSQL, data warehousing, and big data (Hadoop, Spark) expertise
  • Proficient in Python, Java, or Scala with solid OOP principles
  • Skilled in ETL tools and orchestration frameworks (Airflow, NiFi)
  • Experience with cloud platforms (AWS, Azure, or GCP)
  • Strong understanding of data governance and compliance
Responsibilities
  • Lead and mentor data engineering teams
  • Design and maintain scalable, secure data architectures
  • Develop and optimize ETL processes
  • Collaborate with cross-functional teams to deliver data-driven solutions
Seniority level
  • Mid-Senior level
Employment type
  • Contract
Job function
  • Information Technology
Industries
  • IT System Data Services
  • Data Infrastructure and Analytics
  • Information Services


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