Machine Learning Engineer - Hybrid

Arrows
London
9 months ago
Applications closed

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Senior Machine Learning Engineer (Full-Time | London) Join a fast-moving team on a mission to protect the world’s most valuable innovations using cutting-edge AI. You will be building advanced tools that make sense of massive technical datasets from patents to designs and applying large language models in groundbreaking ways, from idea generation to infringement detection. Build, deploy, and scale ML models across a robust AWS-based infrastructure Collaborate across teams to maintain and enhance ML pipelines, services, and data ingestion systems Evaluate and improve LLM output quality, integrate models with backend services Work on everything from data crawling to ML infra to production model serving Partner with engineers to bring innovative ML solutions into the real world Strong problem-solving skills with a proven record of shipping production AI systems (2+ years) ️ Experience deploying and maintaining scalable ML pipelines Ownership mindset - you care about product impact, code quality, and long-term maintainability Bonus Points ~ Built large-scale content indexing systems ~☕ Experience with Python-based backend services Office in Old Street Hybrid flexibility Competitive salary Generous equity package (EMI scheme)

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