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SHEQ Data Analyst

FCC Environment
Doncaster
4 days ago
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Are you looking for the right role for you? Then look no further

SHEQ Data Analyst

Salary

£34,520 - £43,151 per annum (plus benefits)
Hours

37.5 hours per week, Monday to Friday
Location & Postcode

Homebased (there will be times when visits to the Doncaster Office are required)

As a SHEQ Data Analyst at FCC Environment, you will support Health, Safety, Environment and Quality (SHEQ) initiatives by enabling data-driven decisions. You will be expected to manage our SHEQ software platforms, collect and analyse data, and produce actionable insights that drive continuous improvement in SHEQ performance across the business.

This vacancy is for a full-time position, working 5 days per week.

Our promise to you

  • Competitive salary
  • 25 days annual leave (full-time working) plus Bank Holidays
  • Pension scheme
  • Life insurance
  • Discretionary bonus scheme
  • On-the-job training and progression
  • Recognition scheme
  • Travel reimbursement
  • Refer a friend
  • Flexible benefits including high street savings, cycle to work scheme, Gymflex membership, holiday purchase and many more (where applicable)
  • Access to an Employee Assistance Programme and the Best Doctors Service via our Wellbeing Platform

    What will you be doing?

  • Managing the companys SHEQ management software and associated reporting systems
  • Collecting, analysing, and interpreting SHEQ data for reporting and decision-making
  • Ensuring the accuracy, consistency and completeness of data across all systems
  • Developing dashboards and reports using tools such as Power BI
  • Identifying patterns, trends, and correlations in SHEQ data to provide insights
  • Supporting the business with SHEQ data requests and training staff on software use
  • Ensuring compliance with data protection and information security regulations (including GDPR)
  • Supporting SHEQ improvement projects and risk mitigation strategies with data-driven insights

    What are we looking for?

    Essential:

  • A degree in computer science, mathematics, statistics, or a related discipline
  • Proficiency in Python, R, SQL and data visualisation software (e.g. Power BI)
  • Experience with data collection, cleaning and management practices
  • The ability to interpret complex data sets and present findings clearly to non-technical audiences
  • Strong communication skills and the ability to collaborate across teams

    Desirable:

  • Experience with advanced analysis (machine learning, predictive modelling)
  • Professional certifications (Microsoft, Google, IBM, Python or equivalent)
  • Previous SHEQ experience or qualifications (IOSH, IEMA, NEBOSH)
  • Project management skills and experience of working in multidisciplinary teams

    About Us

    We are FCC Environment, one of the nations leading waste and resource management companies. Committed to sustainability, we strive to minimise the amount of waste that ends up in landfill by transforming it into valuable resources wherever possible.

    We operate over 200 facilities in England, Scotland and Wales and employ around 4,200 people.

    The profile of the UK's recycling and waste management industry has never been higher. We need people who are up for the challenge to help us tackle climate change. We need people with ideas. We need you. Together, we will meet the UKs waste management and energy recovery needs.

    FCC Environment is an equal opportunities employer, we value diversity, and we are strongly committed to providing equal employment opportunities for all employees and applicants for employment.

    How to apply

    So, if you want to advance your career as a SHEQ Data Analyst, please apply via the button shown.
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