Data Analyst

Ipsum
Kendal
6 days ago
Create job alert
Overview

Responsible for coding site surveyed CCTV pipe inspections to OS19X standards in office using Wincan VX

Location: Chesterfield - Office based role

Employment type: Full Time, Permanent

Working Hours: Monday to Friday, 37.5 hours per week


What’s In It For You
  • 20 days annual leave plus bank holidays
  • Option to buy up to 5 additional holidays
  • Group Personal Pension Plan
  • Career development & progression with the opportunity to earn professional qualifications
  • 24/7 access to a virtual GP and Mental health support & counselling services
  • Cycle to Work scheme
  • Discount club - supermarkets, phone bills, gyms & more !
  • Life assurance cover
  • Long service recognition
  • Enhanced Maternity Pay
  • Paid volunteering opportunities in your community

About The Role

Responsible for coding site surveyed CCTV pipe inspections to OS19X standards in office using Wincan VX, carrying out quality control procedures on site coded surveys and feeding back to operatives using WRC accepted methods, ensuring that all information supplied to both colleagues and clients is accurate, of a good quality and available in a timely manner.

Data compliance activities to ensure the efficient and effective transitions through the processing stages using relevant software applications including CCTV data systems and Microsoft Excel, and GIS software (Mapinfo, InfoAsset).


As a Data Technician you will

Principle Accountabilities:


Operational Administration
  • Receiving works from site
  • Maintaining records to update job status
  • Carrying out validation procedures
  • Working in conjunction with the operational side of the business
  • Preparing presentation of deliverables including reports
  • Using a range of software, including Microsoft Excel and industry specific applications

General Administration
  • Maintaining records
  • Filing
  • Updating confidential commercial information
  • Data entry

Assisting in the planning and preparation of site work
  • Using software applications to produce plans
  • Producing schedules
  • Following client specifications and guidance

Analysis
  • Contribute to analysis and performance reporting requirements
  • Use CCTV software as required
  • Use GIS software as required

About You

A Level 3 or higher IT-related qualification is desirable, along with some knowledge of data analysis and processing principles. Experience with data analysis, general office administration, interpreting maps and plans, and using OS19 would also be beneficial.


Our commitment to Equal Opportunities

We’re proud to be an equal opportunities employer. We welcome applications from all backgrounds and experiences, and we’re committed to building a diverse and inclusive workforce.


Before applying, please review our Privacy Policy to understand how we process your data in line with GDPR.


Next steps

If you’re interested in this opportunity, please apply or reach out to the Talent Team for more info!


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