Advanced Data Fellowship

Build technical data capability and transform junior data analysts into data specialists.
Part of our
courses.

Advanced Data Fellowship

Build technical data capability and transform junior data analysts into data specialists.
Part of our
courses.

Key info

Level 4-6 Degree apprenticeship
BSC (Hons) Digital and Technology Solutions (Data Analytics)
Fully funded by the Levy.

Duration

3 years and 2 months delivery, plus 1 month assessment

Entry requirements

  • Right to work in the UK
  • Lived in the UK or EEA continuously for the past 3 years
  • Not previously studied the course content
  • Not undertaking any other qualification during apprenticeship
  • Able to apply learning to role
Fully-funded
Eligible for full Levy funding
Price £37000. Read our UK Apprenticeship Levy FAQ.

Course overview

Take your data team’s analytical and programming skills to the next level with this innovative degree-level apprenticeship. Learners will deepen their technical expertise in designing data storage solutions, utilising machine learning, and automating data flows.

Skills gained

Python
Machine learning
Data strategy and governance
Data infrastructure

Business outcomes

Increase efficiencies and drive cost savings

Enable teams to design, develop and integrate technological software and data storage solutions to deliver against business needs.

Power data-driven decision making

Help teams leverage advanced applied statistics and machine learning algorithms to provide actionable insights.

Support digital and data transformation initiatives

Build highly strategic data teams, who can ensure data strategy is developed in line with business strategy and objectives.

Curriculum

Data Analysis Essentials

Month 1

Foundations of a Data Analyst

  • Starting out with Python
  • Data analytics lifecycle
  • Loading and inspecting data
  • Data sources and their impact on analysis
  • Applying data analysis

Month 2

Foundations of data management

  • Data legislation and GDPR
  • Privacy by design
  • Organisational data policy
  • Principles of data accuracy and quality in Python

Visualising and integrating data with Python

Month 3

Visualising your data for stakeholders

  • Stakeholder and project management
  • Defining customer requirements
  • Managing communication strategies
  • Principles of UX

Month 4

Integrating your data for business impact

  • Database designs
  • Entity relationship diagrams
  • Database manipulation
  • Using joins to expand the data landscape

Month 5

Data hackathon and end point assessment (EPA) preparation session

Working together on a challenge that allows apprentices to use the skills they’ve learned so far.


Working session to learn more about the EPA, practice for your interview, and work on your evidence.

Levelling up data analysis with statistics & AI

Month 6

Data integration and analysis techniques

  • Starting with SQL
  • AI for data analysis
  • Responsible AI
  • Integrating data within organisational data architecture in Python

Month 7

Advanced analytics and statistical methods

  • Useful statistics
  • Sampling
  • Standard deviation and standardising
  • Probability
  • Hypothesis testing with Python

Month 8

Statistics hackathon and end point assessment (EPA) preparation session

  • Working together on a challenge that allows you to use the skills you’ve learned so far.
  • Working session to learn more about the EPA, practice for your interview, and work on your evidence.

Machine Learning and Predictive Analytics

Month 9

Predicting the future with time series forecasting

  • Time series data
  • Identifying trends and patterns
  • Decompose
  • Training forecast models
  • Making and evaluating future predictions

Month 10

Introduction to machine learning

  • Supervised vs. unsupervised
  • Training models and clustering models
  • Interpreting clustering models
  • Creating insights

Month 11

Machine learning hackathon

  • Working together on a challenge that allows you to use the skills you’ve learned so far.

End point assessment preparation

Month 12

End point assessment (EPA) preparation

  • Working session to learn more about the EPA, practice for your interview, and work on your evidence.

Data infrastructure, governance & engineering

Months 1-3

Creating efficient and secure data infrastructure

  • Design simple data solutions
  • Considerations of networking and security in storage and flow of data
  • Evaluate data storage solutions, including SQL and NoSQL
  • Save costs through additional efficiency and security

Months 4-6

Accelerating data solutions with DevOps principles

  • Deepen understanding of a software system frequently used
  • Create software
  • Deploy software
  • Use software to add efficiency to data analysis or processing

Months 7-9

Driving business value with data engineering

  • Design and implement data solutions
  • Role of data storage in automation and analytics
  • Design a data engineering solution
  • Use solutions to enable decision-making and quality analytics

Data strategy

Months 10-12

Advancing data strategy and governance

  • Align data projects and technology to strategic goals
  • Understanding governance for data strategy and analytics
  • How technology can more efficiently and effectively drive business value

Data strategy

Months 1-3

Managing data transformation projects

  • Plan a project
  • Refine your approach to managing risk, stakeholders and budgets
  • Refine your communication skills
  • Gaining buy-in to kick off and independently lead on value-add projects

Data science

Months 4-6

Enhancing decision making with statistics

  • Design an experiment
  • Test a hypothesis
  • Effectively communicate results
  • Communication and visualisation techniques
  • Insight for more robust decision-making and risk mitigation

Months 7-9

Leveraging machine learning to improve efficiency

  • Find a problem that machine learning could solve
  • Develop your knowledge of machine learning methodology and algorithms
  • Train a machine learning model
  • Produce insight at larger scales, handling big data for more efficient and effective decision-making

Capstone project

Months 10-12

Capstone project

  • Produce a work-based portfolio combining prior learning
  • Create (or significantly improve) a data product and write it up throughout these final 3 months

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Weekly delivery model

Structured learning

~ 3-4 hours

40%

Asynchronous learning

Online, self-paced content that sets the foundation of skills for the module

Live workshops

Instructor-led, interactive workshops that dives deeper and reinforces the asynchronous content

Group coaching

Structured coach & peer support on project deliverables

Coach support

Includes tutoring, progress reviews, and other individual/group support

Applying learning in role

~ 4-5 hours

60%

Project & applied learning

Structured and unstructured application of learning to apprentices’ roles

Approx

7-8

hours per week

Why our approach works

Measurable Impact

Track quantifiable return on learning investment through business efficiencies, productivity and cost-savings.

Applied learning

We deliver project-based learning in a real-world context, personalised to each learner, to drive deep skill retention.

Guided by experts

Learners receive 1-to-1 coaching from industry experts, regular group coaching and community collaboration.

Transform careers

Everyone in your team has future-focused potential and deserves equitable access to economic opportunity.

Multiverse’s programme enables us to increase our data skills and take our data maturity to a whole new level: equipping staff across the School with the data skills they need to thrive in their careers and to support our students.

Danny Attias
Chief Information and Digital Officer at London Business School
Read the case study

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