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Data Engineer

MBN Solutions
Glasgow
5 months ago
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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer (Consultant / Senior Consultant)

£60,000-£75,000 + Benefits


London, Manchester, Birmingham Locations Available

Looking for your next challenge in Data Engineering? We’re seeking talented professionals to help businesses unlock the power of their data using cutting-edge technologies.

???? Are you passionate about Azure-based data solutions?


???? Do you have expertise in SQL, Python, and modern data platforms?


???? Want to work on high-impact projects with leading organizations?

???? What You’ll Do:


? Design and deliver data solutions using Fabric, Azure Data Factory, and Synapse


? Work with SQL, Python, Spark, Kafka, Snowflake, and more


? Apply best practices in Data Architecture, Governance, and Engineering


? Collaborate with clients to drive real business impact


? Be part of a supportive, high-performing team

???? What We’re Looking For:


?? Strong data engineering experience in Azure


?? Hands-on expertise in SQL, Python, and data pipeline development


?? Familiarity with Agile, DevOps, Git, APIs, and Cloud Data Platforms


?? A team player with problem-solving skills and a consulting mindset


???? Bonus: DP-203 or Fabric Analytics certifications are a plus!

Apply today or DM us to learn more!


#DataEngineer #Hiring #Azure #SQL #Python #DataJobs

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