Senior Data Engineering Consultant — Shape Data Platforms

WorksHub
Edinburgh
1 month ago
Applications closed

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Overview

Senior Consultant - Data Engineering, BCM, FS

Edinburgh, UnitedKingdom

Posted about 2 months ago

This is a job posted by our partner Jooble

Below is a snippet of the job description. To read the full text, please click on the "Apply Now" link.

Challenges Faced in Establishing Effective Delivery of Value Across the Business

Some hands-on coding experience with SQL, Python or Scala would be advantageous but not compulsory.

Relevant experience in Data Platform Technologies (knowledge of any or all including...

108 E 16th Street, New York, NY 10003


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