Python Developer

Burns Sheehan
London
1 year ago
Applications closed

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Python Developer | Health-Tech AI Start-Up | £70,000 - £75,000 + Benefits


Location:Hybrid (2 days per week in Central London office with flexibility)


About the Company:


Here at BurnsSheehan, we are please to be partnering with an exciting, forward-thinking company within the Health-Tech industry as they look to revolutionise the medical industry. As they continue their growth they are looking for a skilled and passionatePython Developerto join the team.


About the Role:


As thePython Developer, you’ll work both independently and collaboratively with the other Senior Developer to support, build, develop and maintain both backend and data infrastructure for their platform.


Key Responsibilities:


  • Develop and maintain REST APIs using FastAPI, supporting both Front-End and Machine Learning teams.
  • Collaborate with data scientists, front-end engineers, and the CTO to ensure seamless integration and delivery of backend and data infrastructure.
  • Enhance and optimize our AWS-hosted platform, utilizing services such as S3, Lambda, and EC2.
  • Independently drive backend development projects, contributing to both strategic and operational goals.
  • Work closely with the ML team to enable data integration, although productionising ML models is not a primary responsibility.


Qualifications:


  • Strong experience in Python development, particularly in backend engineering.
  • Proficiency in FastAPI or similar frameworks (e.g., Django, Flask).
  • Familiarity with AWS services, including S3, Lambda, and EC2.
  • Ability to work independently, with excellent problem-solving skills and a proactive approach.
  • Experience collaborating with cross-functional teams, including data scientists and front-end developers.


Sound Interesting? Feel free to apply and I will get back to you if relevant...


Python Developer | Health-Tech AI Start-Up | £70,000 - £75,000 + Benefits

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