Artificial Intelligence Engineer

MBN Solutions
united kingdom of great britain and northern ireland, uk
2 months ago
Applications closed

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Senior AI Engineer, Healthcare (Agentic AI), Remote or Hybrid, €80k to €100k plus equity


Are you an experienced AI Engineer with a track record of shipping production code in startups?


Do you want to work on AI that directly improves how healthcare is delivered?


Imagine clinics and hospitals running on AI agents that cut admin time and let doctors focus on patients. That is exactly what this ambitious young startup is building.


Who are they

They’re a venture-backed AI startup with deep roots in both medicine and AI research. Founded by a former Meta Brain team engineer and a medical specialist, they’ve already launched agentic AI products into live clinics and are now scaling up to production.


They raised funding late last year, kept the team lean, and are now ready to expand. The team currently includes a CTO, an AI Engineer and a Junior Engineer, with strong support from top-tier VCs and angels. They’re looking for two Senior AI Engineers to help build secure, scalable, compliant AI systems that integrate with clinical workflows. With plans to raise their next round in Q3 2026, you’ll be joining at a pivotal moment where your impact will shape the company’s trajectory.


What are we looking for

The ideal candidate is a strong communicator who can work independently and bring real depth on the infrastructure and deployment side. You should be able to separate noise from signal, evaluate information quickly and explain your thinking clearly. Most importantly, you prioritise business value over building tech for the sake of it.


You will have

  • 5 plus years building and deploying production systems in startups or fast paced environments
  • Strong Python coding experience
  • Experience with Azure or GCP
  • Knowledge of distributed systems, microservices and event driven architectures
  • Solid system design and security principles


You will stand out if you

  • Have strong communication skills and can explain technical decisions clearly
  • Can work independently and manage uncertainty in an early stage environment
  • Are strong on the infrastructure and deployment side
  • Can separate noise from signal and evaluate information quickly
  • Focus on business value rather than building tech for the sake of it


Bonus points for

  • AI or ML production experience including MLOps and model deployment
  • Go, Docker, Kubernetes, infra as code
  • Experience with healthcare standards such as FHIR, HL7 and DICOM


What you will get

  • €80k to €100k base salary, with equity available for exceptional candidates
  • Fully remote setup, with the option to work from Germany if you prefer
  • The chance to build mission critical AI in healthcare and see your work used by clinicians and patients


Interested

If you are excited by building agentic AI in one of the highest stakes industries, hit apply now or reach out directly:

Email:

Call:

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