Xcede
Job title:
Machine Learning Engineer – LLMs
Company
Xcede
Job description
Machine Learning Engineer (LLMs)Up to £90,000 SalarySurrey office x2 days per monthOVERVIEWXcede’s Data-driven Insurance client with an excellent Data Science, ML Engineering and MLOps team is hiring for a Machine Learning Engineer to join their AI unit. The organisation have been building commercially successful Data Science products for years, and are now pushing further into Generative AI with 6 LLM based projects in production across the company.In this role you will be responsible for building and deploying production level ML models for a breadth of interesting commercial projects. The role is end to end focused. Your responsibilities as a Machine Learning Engineer will include but not be limited to:
- Developing and deploying predictive models and algorithms for commercial projects with a particular focus on LLMs and RAGs.
- Collaborate with cross-functional commercial and business teams, to understand business requirements and identify opportunities for deploying statistical models.
- Building production level Machine Learning models and be hands on in deployment.
- Evaluating and select appropriate machine learning techniques and algorithms for solving commercial challenges.
YOUR SKILLS & EXPERIENCEA successful Machine Learning Engineer will have the following:
- Have a number of years of commercial experience in a Data Science role building statistical & machine learning models.
- Have built and deployed machine learning models in production.
- Excellent use of Python
- Particular experience in NLP, LLMs, and RAGs are highly prized given the focus on these projects.
- CI/CD & MLOps experience is valued
- Databricks experience is valued
If this role interests you and you would like to find out more, please apply here or contact us via [email protected] (feel free to include a CV for review).
Expected salary
£80000 – 90000 per year
Location
Surrey
Job date
Thu, 18 Jul 2024 05:42:05 GMT
To help us track our recruitment effort, please indicate in your email/cover letter where (jobsnear.net) you saw this job posting.