AI Product Engineering

AI Product Engineering

What you'll get

Level 6 Degree apprenticeship
BSc Hons Digital and Technology Solutions (AI Product Engineering)
Fully funded by the Levy.

Duration

21 months delivery, plus 3 months assessment

What's included

Applied learning

All of your learning is on-the-job and relevant, so you can drive immediate impact with real-life projects

Global networking community

Gain access to our community of 20,000+ learners and alumni

Guided by experts

Join 1:1 and group sessions with our industry-expert coaches

Personalised for you

Get personalised guidance and support every step of the way

What you'll need

  • 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

Application process

Create an account

Click ‘Get started’ below to start building your profile.

Join a live session

Meet the Multiverse team, find out which programme is right for you and learn how to apply.

Speak to your manager

Discuss the opportunity with them and ask how they can support you.

Complete your application

Tell us about your skills, experience, and why you want to join the programme. We’ll help make sure it’s the right one for you.

More

Free
For individuals
Paid for by your employer when we partner with them

Overview

Designed for software engineers who want to create AI-enabled products, this course covers generative AI integration, automated development, and AI deployment strategies.

Skills you'll gain

AI
Cybersecurity
Cloud
Data engineering
Data governance

Curriculum

Security, Ethics and Governance

Module 1

Unlocking AI potential in product development

  • AI's impact on software engineering
  • AI for requirements and design
  • AI for building and testing
  • AI for deploying and monitoring
  • Defining your people, processes, and tools
  • Identifying and prioritising use cases
  • Developing a business case
  • Governance and security for new AI initiatives
  • Measuring the business value of new AI initiatives

Module 2

AI for programming

  • Introduction to programming with large language models
  • AI as a programming co-pilot
  • Debugging and problem solving with LLMs
  • Reviewing and refactoring code with LLMs
  • Generating testing suites with LLMs
  • AI for documentation and explanation
  • Context engineering and personas
  • Data security and governance when programming with AI
  • Your AI solutions as products

Module 3

Designing and building AI products

  • Architecting AI-enabled solutions
  • The modern AI developer's tech stack
  • AI-assisted technical design and prototyping
  • Implementing the core AI component
  • Advanced AI orchestration with frameworks
  • Managing state and context with MCP (model control plane)
  • Integrating AI components with legacy systems
  • Debugging and testing AI-enabled software
  • Optimising for performance, cost, and quality
  • Efficient, effective, and secure AI usage

Module 4

Driving product quality with AI

  • Factors affecting product quality
  • Estimating and mitigating project risk
  • Principles of software security and resilience
  • Using AI for vulnerability scanning
  • Challenges of testing AI systems
  • AI-generated testing for traditional code
  • Testing and evaluating LLM outputs
  • Ethics and inclusion in quality assurance
  • The business value of quality assurance

Module 5

Crafting data for knowledge-aware AI

  • Introduction to machine learning
  • Data sourcing for AI
  • Data management processes
  • Preparing data for AI retrieval
  • Data chunking and indexing
  • Working with APIs
  • Building retrieval-augmented generation (RAG)
  • Legal and ethical data standards
  • Improving data practices for AI-driven products

Driving Business Value with AI Solutions

Module 6

Product deployment and maintenance: DevOps and MLOps

  • The culture of continuous integration
  • Continuous integration tooling and practice
  • Cloud deployment strategies
  • Containerised deployment with Docker
  • Introduction to MLOps and LLMOps
  • Container orchestration with Kubernetes
  • Monitoring and evaluating live LLMs
  • Ethical and environmental considerations in product deployment
  • Continuous improvement and sharing best practices

Module 7

Championing adoption of AI-driven software

  • Leading internal product strategy
  • Managing change
  • Data-driven decision making
  • Ensuring stakeholder buy-in
  • Creating your product adoption strategy
  • Presenting your product adoption strategy
  • Effective project reporting
  • Evaluating project learnings
  • Creating lasting impact with AI initiatives

Module 8

Capstone project and end point assessment

The capstone project requires learners to deliver a quantifiable generative AI end-product that solves a complex business problem, integrating AI into processes and deploying a live application with continuous monitoring. The project also focuses on providing value through quantifiable ROI, securing organisational change with a data-driven adoption strategy, and addressing ethical implications through responsible AI governance.

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Take your careeer to the next level

Optimise your role

Get better work done faster. No more spending hours on manual tasks with limited impact.

Future-proof your skills

The working world requires a new set of skills and our programmes can help you succeed in today's workplace.

Advance in your field

Advance in your field and receive the promotion or raise you no doubt deserve.

Earn credentials

Earn a nationally recognised qualification that will boost your CV.

Weekly delivery model

Structured learning

~ 3-4 hours

65%

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

Applying learning in role

~ 2-3 hours

35%

Coach support

Includes tutoring, progress reviews, and other support

Group coaching

Structured coach and peer support on project deliverables

Project & applied learning

Structured and unstructured application of learning to apprentices’ roles

Approx

6-7

hours per week

Why our approach works

Applied learning

All of your learning is on-the-job and relevant, so you can drive immediate impact with real-life projects.

Personalised for you

Get personalised guidance and support every step of the way from our team of coaches and Multiverse Atlas, our AI-powered on-demand coach.

Guided by experts

Get 1:1 coaching from our industry experts, as well as group coaching sessions and study groups.

Global networking community

Build connections to last a lifetime as a part of our ever-growing apprentice Community of 20,000+ learners and alumni.