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Senior Data Engineer - up to ÂŁ100k ID37553

Humand Talent
London
6 months ago
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Senior Data Engineer

Senior Data Engineer

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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer - 12 month FTC

Job Description

Ready to Level Up Your Career? 🚀


This role is all aboutyou– growing your skills, taking on exciting challenges, and making a real impact every day!


Why You’ll Love This Role:


✅Learn & Grow– Work with cutting-edge AWS tools like Redshift, S3, and Kafka. Build ETL pipelines and refine data models while expanding your skillset.


💡Make an Impact– Turn raw data into insights that shape key business decisions. Your workmatters!


👥Step into Leadership– Mentor junior team members, share your expertise, and build skills for future management roles.


📊Exciting & Varied Work– From creating engaging dashboards in Tableau to integrating diverse data sources, no two days are the same!


💼Supportive Culture– Enjoy flexible hybrid working, free gym access, chef-prepared meals, and generous holidays to maintain a healthy work-life balance.


What You’ll Do:

🔹 Build & optimizedata modelsfor batch & real-time processing

🔹 Design and maintainrobust ETL pipelines

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