Data Engineer - Newcastle - £65,000

Newcastle upon Tyne
1 year ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer - Newcastle - £65,000

I am working with a well-established consultancy in Newcastle who are looking for a Data Engineer to join them and play a pivotal role on a current client project. You will work closely with another Data Engineer who is currently working on the project and will be responsible for developing robust ETL solutions.

You will join a company who although have a close-knit family feel operate on a remote basis and are continuing with their expansion plans heading into 2025. You will work closely with other members of the project teams such as business analysts, project managers and developers and will be tasked on delivering solutions for the client in a timely manner. Working within a cloud environment you will use your experience with the Azure tech stack to help the client better us their data and to help to deliver key insights to the business.

Some of the responsibilities for the role include

Design and develop robust data pipelines and ETL processes
Create queries to extract data from various sources and fine tune queries to ensure optimal performance of ETL processes
Design and create data models and provide analysis on current data architecture providing ideas for improvement
Carry out some basic reporting using BI tools to provide stakeholders with performance against key KPIsTo be successful in this role you will have.

Experience creating ETL solutions using Azure Data Factory
Strong SQL experience for extracting data from sources as well as experience tuning queries and database structures
Data modelling experience
Experience creating custom visualisations with tools such as Power BI would be beneficialThe client are looking for someone on a remote basis, but who could travel to the company HQ in Newcastle to be involved in monthly socials. They are offering a starting salary of up to £65,000 with a comprehensive benefits package that includes:

Performance related bonus scheme
25 days annual leave
5% matched pension contribution
Paid certifications
Various healthcare benefitsThis is just a brief overview of the role. For the full information, simply apply to the role with your CV, and I will call you to discuss further. My client is looking to begin the interview process ASAP, so don't miss out, APPLY now!

Tenth Revolution Group are the go-to recruiter for Power BI and Azure Data Platform roles in the UK offering more opportunities across the country than any other recruitment agency. We're the proud sponsor and supporter of SQLBits, Power Platform World Tour, the London Power BI User Group, Newcastle Power BI User Group and Newcastle Data Platform and Cloud User Group. We are the global leaders in Microsoft recruitment

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