Data Engineer

Billericay
2 weeks ago
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We are seeking a dedicated and detail-oriented Data Engineer for our Analytics department. The successful candidate will have the opportunity to harness and refine data to optimise performance within the Energy & Natural Resources industry.

Client Details

My client is a fast-growth external maintenance business and biodiversity expert committed to enhancing and improving the physical environment.

We have a strong commitment to sustainability, using technology and data to nurture environments and enable our customers to deliver on their environmental promises.,

Description

The successful Data Engineer will be responsible for but not limited to:

Work on the redesign of our platform solution and data platform solution on Azure.
Advanced Scripting & Automation: Utilise Terraform and PySpark to optimise our data platform
Data Strategy: Work closely with our consultants to implement our data strategy.
Recommend ways to improve data reliability, efficiency and quality
Recommend different ways to constantly improve data reliability and qualityProfile

The successful Data Engineer should have:

A degree in Computer Science, Engineering, Mathematics, or a related field
Proven experience as a Data Engineer
Familiarity SQL T-SQL ETL.
Familiar with cloud services I.E, Azure, Data Factory, Azure Synapse Analytics,
An understanding of FabricJob Offer

The successful Data Engineer will be able to enjoy:

A competitive salary within the range of £50,000 - £55,000 PA
Generous holiday leave package
A collaborative and innovative company culture within the Energy & Natural Resources industry
Opportunities for personal development and growth
Remote working available, 1 day a month in the office, subsidised travel.We encourage all interested candidates, who are excited to make a substantial impact within the Energy & Natural Resources sector, to apply for this amazing role

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