SQL and Data Engineer

Edinburgh
3 months ago
Applications closed

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SQL and Data Engineer - Edinburgh, Hybrid

We are looking for an SQL expert who is also codes in C#/.Net for an Edinburgh (hybrid) role focussed strongly on Data Engineering. The company is a scale-up B2B Fintech with huge runway and funding; they need to scale the product to meet growing demand. The role will be split between traditional support and Agile development across the Microsoft tech stack.

What is in it for you:

Flexible hybrid working with 2 days a week into the Edinburgh office

Salary up to £60,000 (dependant on experience)

Share options and real ownership

25 days holiday + birthday off

Autonomy to make an impact and shape your career path

The role:

Communicate with customers to problem solve and troubleshoot

Help with large data migrations and code to integrate

Build new tools for customers that are bespoke to their integration

Use SQL and C#/.Net to optimise and build new features

Key skills:

Extensive SQL(T-SQL) skills

Document processes, SQL scripts, and workflows

Strong C#/.Net Dev skillset - Build, maintain and optimise customer-facing reports and internal dashboards

Azure experience with SQL / App Services and Storage

Interested in knowing more? Please apply with your most up-to-date CV for consideration.

Bright Purple is an equal opportunities employer: we are proud to work with clients who share our values of diversity and inclusion in our industry

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