Python Engineer (AI)

Healthily
1 month ago
Applications closed

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This role is for a Python Engineer to join our dynamic team, reporting to our Chief Scientist. This role involves maintaining, enhancing, and scaling our suite of Python-based applications, which provide AI functionality for our Health Navigation Platform. If you are passionate about crafting innovative and trustworthy AI systems and enjoy working with modern cloud-based technologies, we’d love to hear from you.


Responsibilities 

Play a pivotal role in building state-of-the art AI systems that will provide self-care solutions to millions of people worldwide 

  • Design, build, and maintain AI systems using Python and related technologies
  • Collaborate with cross-functional teams, including Clinical, Product, and Backend, to implement new features and improvements
  • Write clean and well-documented code adhering to industry best practices and our Health Navigation Platform’s status as a medical device
  • Make informed decisions, to shape our use of AI and the architecture of our systems


Experience 

Essential

  • Expertise in Python for software development
  • Experience in providing services via an API
  • Experience with cloud services such as AWS and Google Cloud Libraries
  • Experience with containerized deployments using Docker
  • Experience in producing well documented, maintainable and reliable code
  • Experience of collaborating with a wide group of stakeholders and able to consider, select and incorporate various perspectives into proposals and solutions
  • Experience with CI/CD systems like CircleCI

Desirable 

  • You have experience of Python for data science
  • You have contributed to an open-source project or maintained your own projects
  • You have developed or made use of Machine Learning models
  • You have made use of LLMs


Knowledge 

Essential 

  • Python
  • Docker
  • Git

Desirable 

  • AWS
  • Use of LLMs (via Hugging Face, Vertex AI, Amazon Bedrock, etc.)
  • Developing basic front ends for Python applications (NiceGUI, Jinja2, JavaScript, etc.)
  • Python libraries such as numpy, pandas, tensorflow

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