Principal Data Engineer...

Harnham
London
9 months ago
Applications closed

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Job Description PRINCIPAL DATA ENGINEER LONDON BASED
£90,000-100,000 PER ANNUM This retailer are searching for a new
Principal Data Engineer to take responsibility for the development
of the company's cloud platform in Azure. You will also build new
Data Pipelines using Python and SQL. THE COMPANY This fast-growing
international company is seeking a Principal Data Engineer to join
their growing Data and Analytics team. They are currently active in
over 30 countries and are looking to grow even more. THE ROLE
Joining a growing team, you will take responsibility for the
direction and development of the internal data platform. You will
liaise with stakeholders across the business and help impact future
decisions across the company. - Monitor and maintain existing
pipelines using Python. - Work and maintain in the company's cloud
database on Azure - Implement best coding practices. SKILLS AND
EXPERIENCE - Strong experience in building data pipelines using
Python. - A commercial understanding in Azure, and how to use them.

  • Experience in product testing using CI/CD. THE BENEFITS - Private
    Healthcare - Gym membership - Generous pension schemes HOW TO APPLY
    Please register your interest by sending your CV to Cameron Webb
    via the apply link on this page.

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