The Team You’ll Join
As a cross functional (engineering, product, design, coaching) team of >20, the Train Team work at the heart of Runna’s mission: delivering the best training possible to hundreds of thousands of runners worldwide. From creating and dynamically adjusting optimal, personalised training plans at scale, to analysing performance data to make training adjustment recommendations, to providing insight to users derived from their training and environment - we do it all.
What You’ll Be Doing
You’ll be building AI-powered features that leverage large language models to transform the running experience for users around the world. As part of this work, you’ll be working closely with the engineering, product and coaching teams to build components that use LLMs to interpret, generate and personalise training insights - whether through conversational interfaces, knowledge-based reasoning or dynamic content generation. You’ll be part of the Train team here and we’ll all support you along this exciting journey!
As an AI Engineer your role will include
- Building, testing and delivering new AI-driven features that use LLMs to enhance our personalised training experience, including conversational coaching, dynamic feedback, and content generation for hundreds of thousands of active users
- Working across the full stack of applied LLM engineering - from prompt design and model evaluation, to orchestration, deployment and iteration
- Keeping up to date with developments in the AI space, frontier models, new releases and entrants etc and ensuring we (the whole of engineering) are best utilising the latest approaches, models and strategies
- Designing and refining prompt strategies and retrieval-augmented generation (RAG) pipelines to ensure grounded, accurate and context-aware outputs
- Collaborating with coaches to help translate deep training knowledge into scalable, intelligent systems powered by AI
- Applying a data-driven and experimental approach to model development, evaluation and continuous improvement of LLM-based features - such as designing and implementing robust evaluation frameworks to measure LLM output quality, factuality, usefulness, and safety - both via automation and human feedback
- Experimenting (e.g. A/B tests in production) in order to ensure high quality outcomes
- Writing clean, well-tested Python code and contributing to the backend systems that support model orchestration, inference and integration into user-facing features
What You’ll Bring To The Team
We encourage applications from individuals with a range of experiences and backgrounds. Even if you don’t meet every qualification listed, we’d love to hear from you and are open to tailoring roles to fit the right candidates. Please apply directly below or contact us for more information and to discuss your fit!
- Designing and building AI powered systems - you have solid experience working with LLMs in production