Construction Data Analyst

V7 Recruitment
Westhoughton
3 weeks ago
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Our client are a highly reputable main contractor who work on construction projects across the North West.  They are looking for a Data Analyst to join their team!

In return they are offering:
Competitive salary
28 days holiday + bank holidays
Pension matched at 6%
Life Assurance 
Free gym 
Regular social events Ideal candidate:
Strong analytical skills 
Exceptional communication and report writing skills 
Attention to detail
Experience working in construction may be beneficial but is not essential
Hardworking and proactive individual
Used to working independently and on own initiative  
Duties will include:
Analysing construction programme data and delivery outcomes.
Providing accurate and thorough data extraction.
Collating data and summarising in dashboards.
Delivering findings to senior management team.To apply for this role please submit a copy of your CV.

V7 Recruitment is an equal opportunities employer and does not discriminate on the grounds of age, disability, gender, gender reassignment, marriage or civil partnership, pregnancy or maternity, race, religion or belief, sex, or sexual orientation. All applications will be considered solely on merit and suitability for the role.
Please note that by applying for this position you are giving consent for V7 Recruitment to process and store your personal data in line with our Privacy Policy. We may contact you about this and other suitable opportunities. You can request your data to be removed at any time by contacting us

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