Machine Learning Engineer

RevTech
London
1 week ago
Applications closed

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Machine Learning Engineer

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Job Description

Senior Machine Learning Engineer | up to £100k | Agentic AI Platform


Agentic AI platform tackling complex, high-stakes legal problems with speed, accuracy, and control, gearing up for 4x growth in 2026, it has never been a more exciting time to join!


As Senior ML Engineer, you’ll build the production systems that make this possible, ingestion pipelines, graph-based orchestration, and integration of NLP, LLMs, and ML components into reliable, auditable workflows.


You’ll take full ownership of projects, shape the technical direction from the ground up, and grow your career.


Stack: Python, API design, Neo4j, Graph schemas, ML/LLM integration/deployment


What do you need?

  • Strong backend engineering experience with Python
  • Experience building production ML/NLP systems/deploying LLM based features
  • Comfortable with graph-based data models and orchestration


Working setup

Flexible work environment however candidates must be able to come into the office weekly or fortnightly when needed.


Please apply or drop me a message to learn more!

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