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Senior Data Engineer

Loop Recruitment
Cheshire East
6 days ago
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🚀 Senior/Lead Data Engineer


📍 Cheshire (Office Based - free Gym, parking and lunch)

💰 Up to £110,000 + Private Medical + 8% Pension + up to 3 x pay rises per year!!



Are you a passionate Data Engineer ready to architect a world-class data infrastructure in a fast-growing SaaS company? Loop Recruitment is seeking a talented Senior/Lead Data Engineer to drive innovation, champion best practices, and shape the future of data-driven decision-making.


What You’ll Bring

🔥2+ years as a Senior/Lead Data Engineer (managing re-architecture projects)

⚙️Expertise in SQL, Python, and data engineering best practices (testing, CI/CD)

🚀Hands-on experience building scalable data pipelines in a modern cloud environment (dbt, AWS Glue, Lake Formation, Spark, Redshift)

💡Firm understanding of data modelling, ELT design patterns, governance & security

📈Ability to thrive independently, taking ownership of complex, ambiguous problems

🗣️Excellent communication to build strong relationships and align stakeholders

🤓 A genuine enthusiasm for data, best practices, and emerging technologies.


Why Join Us?

🚀 Be part of a fast-growing SaaS scale-up with huge ambitions.

🌎 Shape products that truly impact customers globally.

🤝 Work in a collaborative, product-first culture


Apply now and become a key player driving data-driven innovation!

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