Azure Data Tech Lead

TN United Kingdom
London
1 month ago
Applications closed

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Databricks Tech Lead

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Data Engineer - Remote (UK ONLY) - Outside IR35

Senior Data Engineering Consultant

Senior Data Engineering Consultant

Senior Data Engineering Consultant

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  • Solid Hands-on experience withAzure Databricks - Pyspark coding and Spark SQL coding- Must have
  • Solid Hands-on experience withDelta Lake House with Delta tables- Must have
  • Solid Hands-on experience withData warehousing- Must have
  • Solid Hands-on experience withAzure Data Factory- Must have
  • CI/CD PipelinesIntegrations - Must have
  • Lead all the technical conversations with client and team coordination
  • 10+ Years of experience with Data Projects
  • London Insurance market data experience

Responsibilities:

  1. Hands-on experience in Azure data platform architecture and developing data engineering pipelines
  2. Experience in working with both SQL and NoSQL databases
  3. Strong knowledge and experience in data lake and delta lake-based data platform development using Azure Databricks and Azure Synapse Analytics
  4. Strong experience with at least one of the programming languages: Python, PySpark, Scala, R
  5. Able to develop CI/CD pipelines for automated build and deploy
  6. Should be able to contribute to technical solutions and must be able to translate functional/technical into code, unit test and deliver to customer
  7. Experience with different database technologies (e.g., SQL database(s), Azure SQL)
  8. Strong Analytical & problem-solving skills
  9. Development, code review, unit testing
  10. Insurance knowledge will be an added advantage

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