Data Engineer

Oliver Bernard
Southampton
2 days ago
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Data Engineer

Remote


OB has partnered with a household fashion name from the UK high street, to find a number ofData Engineersto join their team based out of London.


We’re on the look for people who are passionate about designing, building, and maintaining scalable data pipelines. You’ll work with cutting-edge technologies, collaborate with cross-functional teams, and play a key role in optimising their data infrastructure.


Requirements:


  • Strong experience in Python, SQL, and big data technologies (Hadoop, Spark, NoSQL)
  • Hands-on experience with cloud platforms (AWS, GCP, Azure)
  • Proficiency in data processing frameworks like PySpark
  • A problem-solver who thrives in a fast-paced environment
  • Excellent communication skills to collaborate with technical and non-technical stakeholders


Salary: Up to £50k per year, plus profit related bonus scheme.


Unfortunately, this job does not offer sponsorship.


If you're interested in applying, or would like to hear more - please submit your CV through this advert or drop me over an email:


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