Azure Data Engineer

Opus Recruitment Solutions
Liverpool
1 day ago
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Azure Data Engineer | Outside IR35 | £400 - £450 | 6 months | Hybrid Liverpool

You’ll be designing, developing, and managing data pipelines across Azure, primarily using Azure Data Factory to integrate multiple data sources and deliver streamlined workflows into Azure SQL. A strong grasp of Python will be essential as you'll be transforming, cleansing, and validating complex datasets to ensure they’re accurate, efficient, and ready for analytics and product teams to leverage.

This position plays a key role in supporting ongoing modernisation efforts by strengthening the way data is collected, processed, and made available across the business.

Responsibilities
Build, maintain, and improve scalable ETL/ELT pipelines using Azure Data Factory
Model, manage, and optimise datasets within Azure SQL
Use Python and Pandas for data preparation, transformation, and quality checks
Work closely with engineering, product, and analytics teams to understand data requirements and deliver robust solutions
Maintain high standards around data integrity, reliability, and performance
Contribute to modernising data tools, workflows, and overall data infrastructureWhat We’re Looking For
Strong hands-on experience with Azure Data Factory and cloud-based data orchestration
Solid Azure SQL knowledge, including schema design and performance tuning
Proficiency in Python, with practical experience using Pandas for data manipulation
Comfortable delivering in environments where onboarding is minimal and pace is high
Background working with product-led or digitally focused teams is beneficial
Able to start immediatelyIf this is a role that suits your skillset, can work onsite 2 days per week and immediately available then please apply for the job advert directly or reach out to myself at (url removed).

Azure Data Engineer | Outside IR35 | £400 - £450 | 6 months | Hybrid Liverpool

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