Data Engineer

Picture More Ltd
Ipswich
10 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Location: Ipswich (preferred) | Colchester | Norwich | Cambridge (Hybrid - 3 days in office) £50,000 + BonusPermanent | Full-time | Hybrid and flexible working (3 days in office)Bonus scheme and salary review (October 2025)Private healthcareAbout the RoleAs the Cloud Analytics Engineer, you’ll design, build, and optimise cloud-based data pipelines, ETL/ELT processes, and data warehouses. This role involves working with Azure, Fabric, and Power Automate to ensure data is structured, secure, and readily available for analytics.Key Responsibilities * Develop and maintain scalable data pipelines on cloud platforms (Azure, Fabric, Power Automate) * Build and optimise ETL/ELT processes for efficient data transformation and analysis. * Manage and enhance cloud-based data warehouses (Snowflake, Fabric, Azure) * Ensure data security and compliance (GDPR, ISO policies, encryption best practices) * Automate workflows using Azure Data Factory and cloud orchestration tools. * Support and troubleshoot complex data-related issues as part of third line support.Requirements * 3-5 years of experience in cloud-based data engineering * Strong knowledge of Azure, Fabric, and Power Automate * Proficiency in SQL and Python/PySpark for querying and performance optimisation * Experience with ETL/ELT pipelines and cloud data warehousing. * Understanding of data security, compliance, and privacy regulations (...

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