Senior Data Engineer

J&T Business Consulting
Manchester
4 days ago
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J&T Recruitment has been exclusively retained by a rapidly growing technology company in Manchester to hire a Senior Data Engineer. This role will focus on building large-scale data infrastructure supporting advanced analytics and machine learning initiatives.


Salary

£95,000 – £135,000 base + bonus + benefits


Responsibilities

  • Design and maintain scalable data pipelines
  • Build and optimize data warehouses and lake architectures
  • Implement ETL/ELT pipelines for high-volume datasets
  • Collaborate with analytics and ML teams
  • Improve data platform performance and reliability

Requirements

  • 5+ years of experience in Data Engineering
  • Strong Python or Scala
  • Experience with Spark, Airflow, or Kafka
  • Strong SQL and data modelling experience
  • Cloud experience (AWS, GCP, or Azure)

Benefits

  • Competitive salary and bonus
  • Hybrid working environment
  • Opportunity to work on modern data platform architecture

Interview Process (3 Stages)

  • Recruiter Introduction – 30 minutes (Initial call via J&T Recruitment discussing experience with data platforms and cloud infrastructure.)
  • Technical Data Engineering Interview – 75 minutes (SQL, data modeling, and pipeline architecture discussion.)
  • Final Engineering Interview – 60 minutes (Data platform design discussion with senior engineers and team fit evaluation.)


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