Python Software Engineer Machine Learning AWS

Client Server
Cambridge
1 week ago
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Python Software Engineer (Machine Learning AWS) Remote UK to £90k

Are you a data savvy Python Software Engineer with experience of implementing ML algorithms into production?

You could be progressing your career in a senior, hands‑on role as part of a friendly and supportive international team at a growing and hugely successful European car insurance tech company as they expand their UK presence.

As a Python Software Engineer you'll join a cross‑functional team, collaborating with Data Scientists and Machine Learning Engineers on complex insurance underwriting and pricing systems. They'll be a range of projects with a focus on implementing Machine Learning algorithms into production systems.

There's a collaborative team Agile environment where you'll participate in technical discussions and have your voice heard; there's also opportunities to mentor other more junior team members if desired.

Location / WFH

The company is a big advocate of flexible working and prides itself on DEI; you can go into the London office as often or as little as desired and can work fully remotely from anywhere in England; you can also work at times that suit you.

About you
  • You are a data savvy Python Software Engineer with advanced coding skills.
  • You have experience across the full lifecycle of ML model development, including into production.
  • You're collaborative, enjoy problem solving and working with others to overcome technical challenges.
  • You have a strong knowledge of AWS.
  • You have a good knowledge of modern software engineering best practices, microservices, TDD / DDD, and common design patterns.
  • Experience with Databricks, PostgreSQL, Amazon Redshift, or MLflow would be great but not essential.
What's in it for you

As a Python Software Engineer (Machine Learning AWS) you will earn a competitive package:

  • Up to £90k salary
  • Enhanced maternity package
  • 25 days holiday plus the ability to buy or sell 5 days a year and an extra "duvet day"
  • Pension, private medical and dental insurance, life assurance, and employee assistance programme
  • Weekly yoga and monthly acupuncture sessions, Headspace membership
  • Diverse, inclusive team environment with a range of support networks
  • Other perks including Perkbox, cycle‑to‑work scheme, and season ticket loan
Apply now

To find out more about this Python Software Engineer (Machine Learning AWS) opportunity.

At Client Server we believe in a diverse workplace that allows people to play to their strengths and continually learn. We're an equal opportunities employer whose people come from all walks of life and will never discriminate based on race, colour, religion, sex, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status. The clients we work with share our values.


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