Azure Data Engineer

Stackstudio Digital.
Warwick
2 months ago
Applications closed

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Job Title : Azure Data Engineer


Location : Warwick, UK (Office Based)


Job Type : Contract (Inside IR35)


Duration : 6 months


Job Summary

Join Tata Consultancy Services (TCS) as an Azure Data Engineer and play a key role in delivering innovative data solutions for some of the largest brands in the UK and worldwide. You will leverage your expertise in Azure, ADF, and modern data platforms to support high-impact, data-driven projects that make a meaningful difference to our clients and communities.


Key Responsibilities

  • Apply in-depth knowledge of Azure and SQL to develop and maintain robust data solutions.
  • Utilize strong debugging skills to resolve issues efficiently.
  • Design, build, and manage data pipelines using Azure Data Factory (ADF).
  • Collaborate effectively with stakeholders, ensuring clear communication throughout project lifecycles.

Essential Skills

  • Expert-level experience with Azure Data Factory (ADF)
  • Hands-on experience with Snowflake and Databricks
  • Proficiency in Python programming
  • Strong Azure and SQL knowledge
  • Excellent debugging and troubleshooting abilities
  • Good communication skills

Desirable Skills

6 to 8 years of relevant experience in data engineering …


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