Data Analyst

Goose Green
3 days ago
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VolkerFitzpatrick offers a range and depth of civil engineering, infrastructure and building services. We contribute to vital parts of the nation's life through projects of strategic importance, while delivering those less visible, yet essential, works required by both private and public sectors. We build, renew, maintain highways, airports, railway infrastructure, and commercial, industrial and educational buildings.

A fantastic opportunity has become available for a Data Analyst to work within our technical team to work across a range of projects within our various divisions.

The role of the Data Analyst is to work with the Functional Heads to assist with the collection of the performance data. You will structure the data in SharePoint sites and create the semantic models that allow the creation of the required Power BI reports that are in line with the Functional Heads or Technical Director requirements. Reports are to be produced monthly for review by the Technical Director, Functional Heads, project teams and others within the business.

About you

Ideally you will have 3 + years experience as a Data Analyst and Power BI report writer
Experience within a construction or civil engineering environment would be advantageous
You will hold a degree in a relevant subject or have equivalent on-the-job experience/professional qualificationIf your past experience doesn't match perfectly with every requirement of the job description, we still encourage you to apply. You may be just the right candidate for us.

Why work with us?

VolkerFitzpatrick is under the umbrella of VolkerWessels UK which is a multidisciplinary contractor that delivers innovative engineering solutions across the civil engineering and construction sectors including rail, highways, airport, marine, energy, water, and environmental infrastructure.

By utilising the specialist skills of each business unit within VolkerWessels UK, VolkerFitzpatrick are able to ensure our staff provide unrivalled resources and expertise to our clients.

We offer competitive rewards and benefits, recognising the value we place on our employees.

We offer a range of benefits, including:

Competitive salary
Competitive annual leave and an additional day off on your birthday
Option to buy additional annual leave
Private medical care
Pension
Life Assurance
Cycle to Work scheme
Shopping and restaurants vouchers, rewards, and discounts
Training and development opportunities-comprehensive skills-based training
Family friendly polices including enhanced maternity benefits
Employee Assistance programme
Mental health, physical health, and financial support
24/7 Virtual GP serviceFairness, inclusion and respect

We believe in pushing boundaries in the pursuit of fairness, inclusion and respect. So, our teams can be comfortable that, whatever their background, VolkerWessels UK is a place where they can be themselves and thrive.

If you need support with your application, please contact us at

Additional information

Note for Recruitment Agencies:

Our preference is to hire directly, and we will reach out to our Preferred Supplier List (PSL) agencies if this particular role qualifies for release.

We kindly request that you refrain from sending speculative CVs. In the event of speculative CV submissions, no fees will be applicable, and we kindly ask that all inquiries to be directed

VolkerWessels UK is committed to maintaining healthy, safe and productive working conditions for its entire staff and therefore a drugs & alcohol screening is mandatory for all

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