PRINCIPAL DATA ENGINEER - AZURE, DATA

Adecco
Stretford
1 year ago
Applications closed

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Principal Data Engineer

Principal Data Engineer...

Principal Data Engineer...

Principal Data Engineer

Principal Data Engineer

Principal Data Engineer

Principal Data Engineer Opportunity - Northwest England / Hybrid working / £50,000 - £60,000 (depending on experience) + attractive benefits.Are you an experienced Principal Data Engineer looking to work for a global leader in professional services? Our client, a prestigious and highly-regarded organisation, is seeking a talented individual to join their team. If you're passionate about data engineering and ready to take on complex projects, then this is the role for you!Key Skills: *Solid background in Data Engineering, with expertise in designing, implementing, and analysing data.*Strong proficiency in T-SQL and other query languages, DMBS (database management system).*Programming skills in R, Python, or Spark, and experience with object-oriented languages.*Highly analytical mindset, with a technical, engineering, mathematical, or scientific degree.*Excellent communication skills, collaborating with stakeholders, regulatory authorities, and management.Your Role: As a Principal Data Engineer, you'll be integral in leading innovative data-centric products, predictive analysis work, and designing automated solutions. You'll be responsible for continuously improving data across all areas while keeping up with regulatory frameworks. Your technical leadership will be impactful, providing guidance to your team.Desired Expertise: Experience with data integration, data warehousing, and pipeline development.Knowledge of Microsoft Azure and unde...

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