Data Analyst Coach / Mentor

Versende Ltd
London
6 months ago
Applications closed

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Job Title: Data Analyst Coach / Mentor

Job ID: 11922

Location: UK Remote / Home Based

Job Type: Permanent

Salary: £45-55k

Industry: Education


Teaching and Assessing Data Analytics: Level 4


Company:

One of the UKs leading Apprenticeship Training Providers are currently recruiting for a Data Analyst Coach / Mentor to join their data delivery team.


This is a full time, permanent position which is fully remote & home based.


They believe in people-powered transformation because they know that all transformation starts with people. They’re a professional learning organisation that upskills people, uplifts cultures and future‑proofs organisations in a fast‑moving world. They design and deliver interactive learning experiences in data, people, business analysis and marketing including work-readiness programmes, apprenticeships and professional qualifications, many of which maximise UK Government future skills funding.


What you’ll do:

On this apprenticeship, our learners develop the tools and techniques to execute detailed investigations and analysis, where they will be able to identify the right solution to meet their employer’s needs. They gain the British Computer Society’s (BCS) Data Analyst qualification, and BCS Diploma Data Analysis Tools and Concepts.

You will support the apprentice in creating a portfolio that shows their ability to carry out these tasks at the correct level for the qualification:

  • Collect data to/from a range of systems.
  • Follow data and security standards, policies and procedures to activities.
  • Carry out database queries across tables to extract data for analysis
  • Use a range of techniques to identify and predict trends and patterns in data.
  • Help with data quality checking and cleansing.
  • Summarise, present and make recommendations from the results of data analysis.
  • You will be accountable for:
  • Caseload Management-plan and organise monthly learner visits, support your learners to ensure they progress and achieve, and use Avado systems effectively to monitor and record your learners’ journey.
  • Stakeholder engagement- you will work closely with our clients direct through apprenticeship program leads and line managers, and our own internal delivery team and account managers
  • Managing delivery KPI’s and escalating issues timely.


Experience required:

  • Significant Data Analyst industry experience
  • Passion and excitement to upskill apprentices
  • A commitment to developing learners and passing on your exceptional knowledge to the next generation of Data Analysts


Desirable Qualifications:

  • Degree level in Technical subject
  • Dell EMC Data Science Associate Certificate
  • BCS Diploma in Data Analysis Concepts
  • Experience of coaching and teaching
  • Assessor qualifications (A1, TAQA, CAVA, or D32,D33)
  • Familiarity of apprenticeship standards and end point assessment processes
  • Knowledge of BCS qualification portfolio
  • It would be desirable if you also have Data Technician industry experience too
  • Experience of using e-portfolio systems to capture evidence of learning
  • Supporting learners to embed maths and English
  • A passion for delivering training, coaching, and supporting learner development


If this sounds like a good match, then please get in touch ASAP as remote interviews are taking place immediately.

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