Data Engineer

Digital Skills ltd
Manchester
1 week ago
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Manchester - Initially 2-3 days per week in the office, reducing to 1-2 days per month after the first three weeks.

Up to £90 per hour - Inside IR35 (based on a 37.5-hour working week)

A global technology business is seeking an experienced Data Engineer to join a high-performing data team responsible for delivering a scalable, secure, and fully governed data platform. This is an exciting opportunity to work on large-scale systems and help modernise and optimise enterprise data solutions.

The Role

As a Data Engineer, you will play a key role in designing, building, and maintaining high-performance data pipelines and platforms.

You will contribute to replacing Legacy and ad-hoc solutions with modern, scalable architecture that enables high-quality data production and advanced analytics.

Senior-level engineers will also be expected to mentor others, provide architectural guidance, and promote engineering excellence across the team.

Key Responsibilities
  • Design, build, and maintain scalable, secure, and well-governed data pipelines
  • Embed data governance, lineage, retention, monitoring, and alerting into pipelines
  • Ensure high data quality across core datasets with end-to-end ownership
  • Maintain data security, integrity, and compliance in line with best practices
  • Contribute to architectural principles, non-functional requirements, and quality standards
  • Write high-quality, well-tested code following CI/CD and Agile practices
Required Skills & Experience
  • 5+ years' experience building big data pipelines in distributed environments
  • Strong experience with Kafka, Hadoop, Spark and/or Python
  • Strong experience with DBT and Snowflake
  • Experience with Data Vault and dimensional data modelling
  • Strong SQL skills and experience with enterprise data warehouse environments
  • Experience embedding governance, monitoring, lineage, and security into data pipelines
  • Experience working on large-scale, well-governed, compliant systems
  • Solid understanding of CI/CD and Agile methodologies
  • Strong knowledge of cloud platforms (AWS preferred; Azure experience beneficial)
  • Understanding of cloud security best practices
  • Exposure to observability tooling, MySQL, or SQL Server stack beneficial
  • Good understanding of analytics and machine learning fundamentals
  • Excellent written and verbal communication skills


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