At Multiverse, we believe technology should empower everyone to achieve their potential. As an Applied AI Engineer, you'll transform cutting-edge AI research into real-world products that make learning and development smarter, more personalised, and truly impactful for thousands of users. Join us to build intelligent features that shape the future of work and education.
Key Responsibilities
Design & Deliver AI Solutions: Partner with Product, Design, and Data teams to shape and deliver AI-powered features that generate real impact to our learners, value for our customers, and align with Multiverse's mission.
Leverage Large Language Models (LLMs): Design, fine-tune, and integrate LLM-powered solutions for tasks such as content generation, semantic search, summarisation, and personalised learning experiences.
Build & Integrate Models: Develop, fine-tune, and embed machine learning models into production systems using tools like Cursor and Gemini, ensuring they are fast, scalable, and dependable.
Own the End-to-End Lifecycle: Take responsibility for the journey from raw data through experimentation, deployment to users, and continuous iteration.
Measure What Matters: Track the performance, accuracy, and adoption of AI features, and use those insights to drive constant improvement.
Enable Others: Share your expertise and make AI approachable, helping colleagues across teams see how it can enhance their work.
Lead in MLOps & Cloud Infrastructure: Build robust pipelines for model training, deployment, and monitoring using AWS cloud services and modern MLOps best practices.
Champion Innovation: Keep us ahead of the curve by exploring new AI tools, including Cursor and Gemini, and applying them to create exceptional user experiences.
About You
Hands-On AI/ML Expertise: You've built and deployed machine learning models using frameworks like PyTorch, TensorFlow, or scikit-learn.
LLM Expertise: Experienced in working with large language models (e.g., GPT, Claude, Gemini Pro) for production use cases, including prompt engineering, evaluation, and safety & inclusivity considerations.
Strong Engineering Skills: Proficient in Python and TypeScript, with experience building APIs, microservices, and cloud-native applications.
Experience with AI Tools: Familiarity with emerging AI tooling platforms such as Cursor and Gemini is highly desirable.
Cloud & MLOps: Practical experience deploying AI solutions on AWS, with a strong grasp of CI/CD for models, version control, observability, and retraining pipelines.
Data Skills: Skilled at working with structured and unstructured data, applying preprocessing and feature engineering techniques.
User Focus: You can translate complex AI capabilities into product experiences that feel effortless and intuitive.
Collaborative Approach: You work best in creative and cross-functional teams and thrive when building together.
Growth Mindset: You're curious, open to feedback, and excited to share what you learn while contributing to an inclusive, high-performing culture.
Benefits
Time off: 27 days holiday, plus 5 additional days off: 1 life event day, 2 volunteer days, 2 company-wide wellbeing days (M-Powered Weekend) and 8 bank holidays per year
Health & Wellness: Private medical insurance with Bupa, a medical cashback scheme, life insurance, gym membership & wellness resources through Wellhub and access to Spill - all in one mental health support
Hybrid work offering: We collaborate in the office 3 days per week
Work-from-anywhere scheme: You'll have the opportunity to work from anywhere, up to 10 days per year
Team fun: Weekly socials, company wide events and office snacks!
Our Commitment to Diversity, Equity and Inclusion
We're an equal opportunities employer. And proud of it. Every applicant and employee is afforded the same opportunities regardless of race, colour, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender, gender identity or expression, or veteran status. This will never change.
Right to Work
Do you have the right to work in the UK? Unfortunately, at this time we cannot offer sponsorship for this role and we cannot consider overseas applications.
Safeguarding
All posts in Multiverse involve some degree of responsibility for safeguarding. Successful applicants are required to complete a Disclosure Form from the Disclosure and Barring Service ("DBS") for the position. Failure to declare any convictions (that are not subject to DBS filtering) may disqualify a candidate for appointment or result in summary dismissal if the discrepancy comes to light subsequently.