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Data Architect

Tachbrook
1 day ago
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Data Architect

£75,000 - £80,000 - + Benefits & pension

Central London - Hybrid working, office working 2 days per week

This is a great opportunity for a talented Data Architect / Senior Data Engineer ready to step up into a Data Architect role for a well established, market leading company. Reporting into the Head of Data Engineering & Data Platforms, you'll join an ambitious Data Engineering team who are designing and building robust, scalable foundations that power data driven decision making - using the latest tech. This is a hands on role with great scope for growth and impact.

You will bring solid experience:

Designing and building robust data pipelines to bring internal and external raw data sources into AWS cloud-based storage and processing platforms
Defining and designing scalable, future-ready solutions that deliver strong and flexible data architecture that supports across the business
Developing and executing a migration plan for legacy data into Snowflake, ensuring a smooth and efficient transition
Working in a modern Dev/ DataOps culture

The tech stack will include: AWS, Fivetran, DBT, Snowflake, Power BI, Sifflet, Postgres SQL, SQL Server, Datavault

On offer is a salary up £80,000 (depending on experience), plus benefits and a generous pension

If this is you, please apply. I look forward to talking through your CV, career ambitions and this great opportunity in more detail

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