Assessor / Trainer - Data Technician and Business Analyst

Nottingham
1 month ago
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KM Recruitment is a specialist UK wide recruiter for the Skills and Employability Sectors
Job Title: Assessor / Trainer - Data Technician and Business Analyst
Location: Home/Field based - Must be flexible with travel
Salary: £55,000 + expenses + Much More
Type: Full Time, Permanent
KM are working closely with a private training organisation who have an exciting period of growth ahead. They are looking to build their team of Specialist Trainers for the delivery of Data Technician and Business Analyst Apprenticeships.
The successful candidate will be home based, and deliver engaging workshops / masterclasses to cohorts of learners working towards Apprenticeship Standards in Data Technician (Level 3) and Business Analyst (Level 4) – via a blended learning approach (face-to-face and remote).
Essential Criteria;

  • Must hold a Level 3 Teaching qualification: AET/PTLLS or above/equivalent.
  • Ideally hold a recognised Assessor award: D32/33, A1, CAVA or TAQA.
  • Hold own Maths and English GCSEs or Level 2 equivalents, and IT Functional Skills at Level 2 (minimum) or equivalent digital literacy.
  • Ideally hold a data-related qualification/certificate, or extensive Data industry competency.
  • Current / recent experience of delivering Apprenticeships Standards in Data Technician Levels 3 and Business Analyst Level 4 – similar
  • Experience of training on a range of Excel, SQL, Power BI and RStudio courses
  • A good understanding of Big Data, machine learning and statistics from an analytics perspective.
  • Experience of supporting learners both face-to-face and remote.
  • Full, clean UK driving licence and access to own vehicle.
  • Must be flexible with UK wide travel when required.
    Please note:
    KM Recruitment receive a high number of applications for each role advertised and although we would like to, we are not always able to deliver feedback to unsuccessful candidates. If you have not been contacted within 4 days, then unfortunately your application has been unsuccessful. Thank you for your interest and keep an eye on our website for future opportunities

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Assessor / Trainer - Data Technician and Business Analyst

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