Data Engineer

Stackstudio Digital.
Norwich
2 days ago
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Role / Job Title:Data Engineer
Work Location:Norwich-3 Days (Flexible)
Duration of Assignment: 6 Months
The Role
  • Hands on experience to Design & Develop a ETL pipelines in aws Glue for ingesting data from sql server or other sources
  • Hands on experience on PySpark & Python
  • Experience of implementing change data capture pipelines using aws dms for near-real time or batch ingestion
  • Experience of developing incremental loads Glue job pipelines
  • Experience of building or using reusable glue templates
  • Strong SQL skills (joins, subqueries, window functions)
  • Knowledge in dbt coding for data pipelines/Data warehousing
  • Work with business architects and business teams to define data models and ingestion strategies
  • Participate in sprint planning, code reviews, and deployment pipelines (CI/CD)
Your Responsibilities
Solution & Data Model Design
  • Hands on experience to Design & Develop a ETL pipelines in aws Glue for ingesting data from sql server or other sources
  • Hands on experience on PySpark & Python
  • Experience of implementing change data capture pipelines using aws dms for near-real time or batch ingestion
  • E...

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