Data Analyst Trainer

QA Higher Education
Manchester
2 days ago
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About The Role

Data Analyst Trainer


Home based/travel to site if required


Job Summary

Teaching Data Apprenticeship programmes at Level 3 & 4 as part of our programme delivery, aimed at empowering individuals and organisations to unlock the power of data. You’ll design and deliver cutting‑edge training programs in database design and visualisations using industry standard software. Finally, you’ll get the opportunity to collaborate with subject matter experts to develop and refine learning content that empowers learners to excel in the evolving data landscape.


Role Responsibilities

  • Craft and deliver immersive and cutting‑edge experiences across the Data Science curriculum, captivating learners from diverse backgrounds and organisations.
  • Collaborate and innovate with subject matter experts to develop dynamic and engaging courses and other high‑impact learning assets that drive growth. Provide in‑depth expert knowledge in your specialist area, offering insights cross‑functionally when required.
  • Champion quality and innovation by upholding the highest standards of excellence and drive innovation as a key ambassador for our renowned training programs.
  • Fuel your growth by taking ownership of your professional development, ensuring your expertise remains relevant and cutting‑edge in the ever evolving field of data science – 3 days of free training on any of our courses available.

Your Experience/Skills

  • Experience in using data tools such as: PowerBi, Tableau, Data Storytelling, SQL
  • Proficient in the use of programming languages: Python, SQL
  • Experience in using and good knowledge of: Data manipulation & visualisations, Data modelling, Data architecture and cloud, Data analytics and statistics
  • Desirable knowledge of apprenticeships and work‑based learning
  • Desirable knowledge of the Ofsted Common Inspection Framework
  • Desirable industry experience with teaching/ coaching experience
  • Passion for lifelong learning and development as a profession

About Us

QA, we believe the future belongs to organisations that are able to learn, master and apply new skills at pace and scale. As the largest tech training company in the UK and the fastest‑growing in the US, we partner with 96% of the FTSE and most of the Fortune 500. We have served over 4,000 customers and 1+ million learners since 1985.


We believe skills alone aren’t enough, but need to be applied back to the business in order to effect change. We do this through tailored learning programmes that connect learning across an organisation’s siloes, create continuity for learners, and feature collaborative, cohort‑based modalities to apply skills at pace and at scale. Our unique end‑to‑end learning solution draws from deep expertise across apprenticeships and instructor‑led training, and self‑paced learning.


QA is headquartered in London and New York. Learn more at QA.com


Safeguarding Statement

QA is committed to safeguarding and promoting the welfare of children, young people and adults with care and support needs. We hold the expectation that all staff share this commitment in creating a safe and inclusive environment and as an organization, we comply with relevant legislation and best practices in safeguarding and safe recruitment.


Responsibilities and Screening

This post is exempt from the Rehabilitation of Offenders Act 1974 and a comprehensive screening process will be undertaken on successful applicants including:



  • an enhanced disclosure check
  • Child Barring list check
  • qualification checks
  • online checks
  • medical fitness
  • identity and right to work

All applicants will be required to provide two references covering the previous three years and a Criminal Declaration form must be completed and returned ahead of interview.


Next Steps

If this is what you’re looking for, here are the next steps:


Hit the apply button and register on our QA website to fill out our quick and easy application form – we'll be in touch with the next steps if successful.


#LifeatQA #QA #theresnoplacelikeqa #LI‑VK1 #hiring


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