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Anson McCade | Data Engineer

Anson McCade
Edinburgh
9 months ago
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Data Engineer

Contract Length: 2 months (with potential for extension)

Location: Fully remote

Start Date: Ideally 6th January


Role Overview:

We are seeking an experienced Data Engineer to deliver a proof-of-concept project. The role involves working on the Databricks component of the data platform, handling end-to-end processes from data ingestion to consumption.


Key Details:

• Collaborate closely with a Solution Architect for guidance and design implementation.

• Demonstrate expertise in Databricks and data platform solutions.

• Prior experience delivering proof-of-concept projects is highly desirable.

• Public sector experience is a bonus but not essential.


Key Requirements:

• Strong Databricks expertise.

• Proven ability to handle end-to-end data workflows, from ingestion to consumption.

• Previous success in delivering proof-of-concept projects.


For more information please apply below or contact me directly.


Contact:

Email:

LinkedIn: Shay Campbell | LinkedIn

Reference: AMC/SCA/DTE

Data Engineer

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