Python Developer

Oho Group
Southend-on-Sea
1 year ago
Applications closed

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Python Developer (Modelling)

A start-up Health Technology company are looking to hire a Mid Level Python Developer to join their modelling team. In this role, you will have a high impact on the business, playing a critical part in architecting and building out their core platform.
This is a hugely exciting opportunity to work at a high-growth start-up that are estimated to become one of the next Tech Unicorns. They have a great collaborative culture, with exceptional developers looking to take their company to the next level.

Python Developer requirements:

  • Exceptional Python development skills with experience writing production quality code in large Python projects
  • Experience in designing and implementing complex algorithms
  • Ability to understand and apply complex numerical concepts
  • Testing modelling focused software to ensure quality and maintainability
  • 2 + years experience in a commercial setting

Nice to haves:

  • Experience in deployment, release cycles, or CI/CD
  • AWS
  • Exposure to Data Science and Machine Learning

Python Developer Offer:

  • £45,000-£75,000 (Salary review every 6 months)
  • Hybrid Working (London)
  • Share options.
  • Private Healthcare
  • Generous leave, research and development time.
  • Flexible hours.
  • Fast Progression

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