Lead Software Engineer

Burns Sheehan
London
1 week ago
Applications closed

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Lead Python Developer | MedTech/AI | Up to £100k



Central London - Hybrid - 1-2 days a week onsite


Up to £100,000k


MedTech / Tech for Good


Seed Funded AI Startup


Tech Stack: Python, FAST API, AWS (Serverless)



Join a scaling, tech-driven business where your work will directly impact patient outcomes and reduce healthcare inequalities using the power of AI.


We're partnered with an emerging medical technology innovator on the lookout for aLead Python Software Engineerto design and develop the backbone of AI-driven healthcare solutions. This is your opportunity to join a mission-driven team that’s revolutionizing patient care and clinical workflows with cutting-edge technology.


What You’ll Do:

  • Build robust, scalable backend systems to power advanced machine learning models and real-time data tools.
  • Collaborate with AI and predictive modeling experts to create impactful applications to positively impact the lives of millions of people
  • Drive innovation using Python, FastAPI and AWS infrastructure tools (EC2, S3, RDS, Lambda, etc.), SQL/NoSQL


What We’re Looking For:

  • Experience working with autonomy and taking the lead of backend development
  • Experience improving the scalability and performance of an application with a growing customer base.
  • Expertise in Python and FastAPI, with a track record of developing high-quality APIs.
  • Familiarity with the AWS stack and ideally serverless/lambda architecture



Lead Python Developer | MedTech/AI | Up to £100k

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