Senior Data Engineer

Cognify Search
Southampton
1 year ago
Applications closed

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Senior Data Engineer

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Senior Data Engineer, SQL, RDBMS, AWS, Python, Mainly Remote

Senior Data Engineer


Join a Microsoft Gold Partner helping businesses visualise and optimise their data with cutting-edge Azure-based solutions!


Salary: £60,000 - £75,000

Benefits: Bonus, Life Assurance, Buy Additional Leave and Private Medical.

Industry: Data Consultancy

Workplace: Flexible Hybrid (1 day a week in office - UK based)


Are you passionate about building data platforms that empower organisations to make data-driven decisions? Do you want to work in a collaborative environment where mentorship is key to rapid career progression?


As aSenior Data Engineer, you'll become a key player in building data platforms and data products using theMicrosoft Azure stack. You’ll collaborate with clients to deliver tailored solutions, integratingAzure Data Factory,Synapse,Databricks,DevOps,Microsoft Fabric,Azure Data Lake, andPower BI. This role involves building robust ETL pipelines and delivering effective data visualisation solutions.


What You’ll Need:

  • Experience working with theMicrosoft Azure stack
  • Hands-on experience in buildingETL pipelinesanddata platforms
  • Proficiency withSQLandPySpark
  • Strong experience withAzure Data Factory,Synapse,Databricks, andPower BI


Why Work Here:

  • Flat structurewith a mentorship program: Be assigned a director who will guide you through their structured career progression plan, ensuring you canmove up the tiersquickly
  • Work with a talented team in asupportive, growth-oriented environment
  • Join a company that prioritises work-life balance offering remote working for those in the UK
  • An opportunity to work with a variety of well known clients building cutting edge data solutions
  • Well known in the industry for their training and technical expertise


Please note: Our client does not sponsor visas, and we cannot consider candidates who require relocation. Must be based in the UK

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