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Data Analyst

M Group Highways
Bowerhill
3 days ago
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About The Role
Right across infrastructure, there’s a requirement to not only maintain, but also renew and reimagine. Whatever stage you’re at in your career, with us you’ll have an opportunity to grow and develop. Delivering essential infrastructure services for life, while being safety first, and client and customer centric in a friendly, fun and respectful environment where you are encouraged to thrive. 
Where will you be working?
M Group Highways
At M Group Highways, we’re supporting the safe transportation and movement of people across the UK.  
We don’t just build roads and bridges- we’re building a better future, creating lasting social value that gives back to the communities in which we work.
You’ll be joining our Highways maintenance team, as the UK’s number one highway maintenance contractor, our teams use the latest innovations to create effective solutions. We offer a range of services including planned and reactive maintenance and highway improvement schemes.  
Want to come and be a part of it?
What will you be doing?
You'll be responsible for managing key local systems used on the Wiltshire Highways Contract along with collecting, cleansing, and analysing data to identify trends and provide our business and clients with valuable insight to support the delivery and improvement of operational Service Delivery.
This may include developing me...

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