Senior Backend Developer (Python, Django, IA)

Oscar Technology
Uxbridge
2 weeks ago
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Senior Backend Developer (Python, Django, Industrial Automation) | £60,- £70, (DOE) | Uxbridge | Fully on-site

Our client uses AI and ML to develop custom AI solutions,automate processes and enhance data analytics across various industries. They need someone to join their team that'll be responsible for the development of new software products and enhancements of existing product. You'll be working on software immediately following an R&D phase, so you'll be there at the start of implimentation.

Requirements:

Python (Django) 3 years of experience Machine learning/AI background Experience with assisted queries Open Platform Communications Architecture, an understanding of industrial automation systems

Ideal:

Background: Industrial/Waterplants/Chemical Plants/Power Plants etc. Saas environment Multiplatform sensed piece of kit Experience with Agile or Scrum software development methodologies

This is a fully onsite role, moving to 3 days in office after around six months.

Does this sound of interest, please apply below!

Senior Backend Developer (Python, Django, Industrial Automation) | £60,- £70, (DOE) | Uxbridge| Fully on-site

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