Senior Machine Learning Engineer

Premier Group
Leeds
1 month ago
Applications closed

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Senior Machine Learning Engineer

Security & Cyber

Fully Remote – London Based

£100,000-£130,000


I'm currently working with a global, well-established Cybersecurity business in London who are looking for aSenior Machine Learning Engineerwith experience in Security or Cyber to join their team on a fully remote basis!


The company have been going since 2018 and quickly developed into one of the fastest growing Cybersecurity companies with over 5 sites worldwide. They essentially utilise the latest technologies to build Cloud Security & SaaS platforms, develop AI-native software that their clients use to increase security presence, process and integrations for them and their customers.


Over time they have invested in their AI capabilities and now have dedicated AI teams for various forms of security like customer detection and security compliance. They are now looking to grow the ML team with a number of hires across these teams this year! It’s a great chance to join a reputable company within the industry, who received over $250m in series investment in 2024 and continue to grow at a rapid rate!


The offices are based in London, but this role is fully remote – although all candidates need to be based in the UK.


Senior Machine Learning Engineer

  • Lead the development of ML models or behavioural modelling and cyber-attack prevention.
  • Work on AI implementation projects as the company pushes the boundaries with AI processes within Security.
  • Maintain existing platforms and products and make improvements where needed.
  • Work closely with customer to understand their needs and security threats.
  • Collaborate extensively with different cross-functional teams – Product, Infrastructure, Data.
  • Mentor Junior Developers where needed and be the beacon of support for the ML team.


Technical Requirements

  • Have experience working in Security and/or Cyber environments.
  • Proven experience working as a Machine Learning Engineer.
  • Strong understanding of ML modelling and MLOps.
  • Confident with Python and ideally comes from a Development background.
  • Tech Stack:Machine Learning, LLMs, MLOps, Python, TensorFlow, Pytorch, SQL, AWS.


Salary & Benefits

  • Salary: £100,000-£130,000.
  • 15% Bonus – Stocks & Share Options.
  • 25 days holiday + Bank Holidays.
  • Private Medical Insurance.
  • Self-Development Tools & Perks.


If this role is of interest, then please apply and I can give you a call.


Tim Stock

|

https://www.linkedin.com/in/tim-stock-160177159/

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