Senio and Mid Level Data Engineers

iO Associates
england
2 weeks ago
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Data Engineer Role - Remote - UK Based

We're working with afast-growing, down-to-earth Microsoft Partnerthat's looking for aSenior and Mid Level Data Engineerto join their team. If you're passionate about data and want to help businesses make smarter decisions usingAzure-based solutions, this could be your next move!

What You'll Be Doing

Designing and building high-quality data solutions to meet customer needs. Helping organisations create, manage, and optimize their data. Developing cloud-native data products and data lake solutions. Engineering cloud-based data lakes to connect and leverage internal and external data. Providing technical support through prototyping, testing, and deployment. Contributing to best practices and documentation for data platforms. Continuously improving development standards and processes.

What You Need to Have

Solid experience with core Azure tech: Data Factory, Databricks, Data Lake, Azure SQL, Synapse, Data Catalog, Purview. Strong Python and SQL skills for data engineering. Familiarity with Azure databases like Synapse EDW, SQL Managed Instance, and Azure SQL. Hands-on experience with CI/CD, DevOps, and IaC tools like Bicep and Terraform. Comfortable working in Agile/Scrum teams and using Azure DevOps.

Nice-to-Have Skills

C# development experience. NoSQL database experience (Cosmos DB, MongoDB). Knowledge of AI/Machine Learning workflows at scale. Experience with Microsoft Fabric and Power BI (DAX, Power Query, etc.). Understanding of Azure infrastructure (ARM, Policy, Log Analytics).

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