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Data Engineer

ABS Group Events Limited T/A ABS Talent
London
1 week ago
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Data Engineer to join a growing data team. Youll work across servers and their central data lake, developing and maintaining pipelines that support reporting, analytics, and AI-driven initiatives.
Key Responsibilities
Build and maintain scalable data pipelines into the central data lake.
Work with tools such as Alteryx to automate and optimise workflows.
Write efficient SQL queries for data extraction, transformation, and reporting.
Develop in Python , including exposure to AI/ML libraries where appropriate.
Collaborate with colleagues to improve data quality, governance, and availability.
Support delivery of data to business users in a secure and efficient way.
Requirements
Strong experience with SQL (across common RDBMS platforms).
Solid knowledge of Python for data engineering tasks; interest in AI/ML.
Hands-on experience with Alteryx or similar workflow/ETL tools.
Experience with servers and managing data in a data lake environment.
Good communication skills and ability to work with both technical and business users.
Working Pattern
Based at Whitefield office .
Hybrid working available otherwise open minded depending on project needs but majority in the office is a must.

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