Senior Data Engineer

Widen the Net Limited
City of London
8 months ago
Applications closed

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Senior Data Engineer / Data Analytics Engineer - Full Remote Working from anywhere in the UK

SQL+Python+ETL+ Apache Airflow


Our client is a global leading and fast growing high tech company:

-Over 6,500 employees across 20+ offices;

-300 Million+ active users on some of the platforms they developed;

-Cutting edge AR and VR technologies, 3D printing, etc.


They are looking for a senior Data Engineer to join their FinTech team!


You will develop scalable data pipelines, ensure data quality, and support business decision-making with high-quality datasets.


-Work across technology stack: SQL, Python, ETL, Big Query, Spark, Hadoop, Git, Apache Airflow, Data Architecture, Data Warehousing

-Design and develop scalable ETL pipelines to automate data processes and optimize delivery

-Implement and manage data warehousing solutions, ensuring data integrity through rigorous testing and validation

-Lead, plan and execute workflow migration and data orchestration using Apache Airflow

-Focus on data engineering and data analytics


Requirements:

-5+ years of experience in SQL

-5+ years of development in Python

-MUST have strong experience in Apache Airflow

-Experience with ETL tools, data architecture, and data warehousing solutions

-Strong communication skills


This contract is £450 per day inside IR35

6 month contract with likely extensions into 2027

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