Senior Data Engineer (2 days onsite in London)

City of Westminster
2 months ago
Applications closed

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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Role: Senior Data Engineer (Snowflake, SQL, Python)

Day rate: £600pd-£650pd (Inside IR35)

Contract: 3 months initial

We are currently recruiting for a Senior Data Engineer to contribute to the design and development of a new Snowflake-based data platform, helping decide which technologies and architectures best serve our client's long-term goals. You will design, build, and maintain reliable data pipelines and integrations using Snowflake, Python, SQL, and C#.

Skills and experience required:

Strong proficiency in SQL, Python, and C# (including query optimisation and performance tuning).
Experience with data modelling, ETL pipelines, and data integration.
Proven ability to work directly with stakeholders and data users to understand problems and deliver effective solutions
Strong analytical and problem-solving skills with a structured, methodical approach.
Excellent communication and collaboration abilities.
Building or migrating to Snowflake (or other cloud-based) data platforms.

This is a role that will require 2 days per week onsite in Westminster, London. Please consider this when applying for the role.

If you are interested in the role and would like to apply, please click on the link for immediate consideration

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