Snowflake Data Engineer

Huddersfield
6 months ago
Applications closed

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Senior Data Engineer (2 days onsite in London)

Snowflake Data Engineer - £60,000-£80,000

My client is looking for a skilled Data Engineer with expertise in Snowflake to join their team. You will build and manage data pipelines, ensure integration of data into Snowflake and implement data government strategies.

The company has had substantial expansion and received large investment in recent years. Therefore, this is a great opportunity to work in a fast-paced, technology driven business and work alongside experienced colleagues at all different levels.

Requirements:

-Snowflake

-Cloud-based platform experience

-Experience building data pipelines in Snowflake

-Stakeholder management

Please Note: This is role for UK residents only. This role does not offer Sponsorship. You must have the right to work in the UK with no restrictions. Some of our roles may be subject to successful background checks including a DBS and Credit Check.

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