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Data Engineer (Databricks Champion)

TechYard
Sheffield
3 months ago
Applications closed

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Data Engineer – Databricks


About the Role

We’re looking for a Databricks Champion to design, build, and optimize data pipelines using Databricks. You’ll work with clients and internal teams to deliver scalable, efficient data solutions tailored to business needs.


Key Responsibilities

  • Develop ETL/ELT pipelines with Databricks and Delta Lake
  • Integrate and process data from diverse sources
  • Collaborate with data scientists, architects, and analysts
  • Optimize performance and manage Databricks clusters
  • Build cloud-native solutions (Azure preferred, AWS/GCP also welcome)
  • Implement data governance and quality best practices
  • Automate workflows and maintain CI/CD pipelines
  • Document architecture and processes


What We’re Looking For


Required:

  • 5+ years in data engineering with hands-on Databricks experience
  • Databricks Champion Status (Solution Architect / Partner)
  • Proficient in Databricks, Delta Lake, Spark, Python, SQL
  • Cloud experience (Azure preferred, AWS/GCP a plus)
  • Strong problem-solving and communication skills
  • Databricks Champion

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