Ref: PR/100606_1771587781
Machine Learning Engineer (Python LLM AWS) London / WFH to £90k
Are you a senior Machine Learning Engineer looking for an opportunity to take ownership, working on complex and interesting systems?
You could be progressing your career in a hands-on technical leadership role at a SaaS FinTech; their capital market tools are used by Investment Banks and independent research providers to automate and analyse client service and research consumption, presenting a complete overview of the client relationship made available via the Cloud.
As a Machine Learning Engineer you will lead the Machine Learning activities within the Insights and Data Analytics Team from conception to deployment, creating and scaling high-impact models that solve core product challenges.
You'll define the Machine Learning roadmap from a technical perspective, evaluating model architectures, optimising data pipelines and ensuring that ML features provide actionable insights within the product. This isn't just about training models; it's about building the ML infrastructure that enables the business to iterate and scale with confidence.
There's a modern tech stack, you'll primarily be using Python within an AWS cloud environment, collaborating and providing technical leadership to a small team.
Location / WFH:
You can work from home most of the time, meeting up with colleagues in the London office once a month for team collaboration and meetings.
About you:
What's in it for you:
Apply now to find out more about this Machine Learning Engineer (Python LLM 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.
Contact information
Similar positions
Managed by: Data Team