Artificial Intelligence Engineer

Aspire Life Sciences Search
London
3 weeks ago
Applications closed

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Job Description

We're looking for AI engineers who want to build production-ready AI solutions that tackle real-world challenges in life sciences, from RAG chatbots to agentic AI systems supporting evidence-driven projects. You will design, develop, and deploy AI systems that have measurable impact, influence patient access to treatments, and support decision-making in healthcare.

Our client is a fast-growing life sciences technology company with offices in the UK and Europe. They specialise in applying AI to accelerate patient access to treatments through practical, evidence-driven solutions. The company values collaboration, innovation, and creating a culture where employees can grow and make a tangible impact in healthcare.

Key responsibilities


  • Design, develop, and deploy AI systems with a focus on RAG chatbots and agentic AI.
  • Lead real-world evidence projects, ensuring AI solutions are reliable, measurable, and impactful.
  • Implement data pipelines, retraining workflows, and monitoring to maintain model performance.
  • Design evaluation metrics to assess accuracy, latency, UX quality, safety, and real-world utility.
  • Collaborate with product, software, and platform teams to deliver scalable, production-ready AI solutions.
  • Champion software engineering best practices, including code reviews, testing, CI/CD, and reproducibility...

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