Data Engineer

SR2 | Socially Responsible Recruitment | Certified BCorporation
London
1 year ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

£60,000| Data Engineer | Full Time | Flexible Hybrid |Tech for Good | Azure | Python | Terraform | Data Bricks | C# Yournew company:How would you like to work for an award-winning, techfor good company with the mission to aid local good causes?If youwant to join a team where each member is committed to supportingthe company mission, and where helping people at the heart of theirethos, then this is the place for you! They are a fellow B-Corpcompany, and if you’re not familiar with what that is, itessentially means they hold extremely high social and environmentalstandards, and it is certainly a sign of a great place to work!So,onto the mission of the company… to give a snappy overview – theywant to create sustainable communities, as they understand globalchange must start locally.Which of your skills will be used?-Building up infrastructure and deployment pipelines and buildingnew ETL pipelines.- Maintain and develop data pipelines using AzureData Factory and Databricks.- Building all infrastructure using IaCtooling (they use Terraform), deploying using Azure DevOps CI/CDpipelines.- Tech stack – Python, Azure Data Factory, Databricks,SQL, Terraform, Azure Cloud, C# (Nice to have), Power BI (Nice tohave).Company Benefits:- Up to £60,000.- Flexible Hybrid – Mainlyremote working, with occasional visits to their Bristol office.-Day off on your Birthday- 25 days + Bank holidays- Enhancedmaternity, adoption, and paternity pay- Cycle to work scheme.Whatnext?There are interview spots booked across the next couple ofweeks, so please contact Adam Townsend on to find out more information and to beconsidered.£60,000| Data Engineer | Full Time | Flexible Hybrid |Tech for Good | Azure | Python | Terraform | Data Bricks |C#

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