AI Tech Lead - Agentic AI, LangGraph, ML, Python, CI/CD, LLM's, Early-Stage Startup, UK Remote

WMtech
London
4 days ago
Applications closed

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Job Description AI Tech Lead – Agentic AI, LangGraph, ML, Python, CI/CD, LLM’s, Early-Stage Startup, UK RemoteAbout the RoleA mission-driven, early-stage startup is looking for an AI Tech Lead to join its growing team. This is a hands-on leadership role where you’ll help shape a cutting-edge AI platform designed to drive real-world behaviour change and improve human performance and wellbeing.Backed by strong funding, this product-focused team of senior engineers operates in a low-ego, high-collaboration culture. The platform's first focus is on employee wellbeing in high-stress industries—and the mission is just getting started.You’ll lead a cross-functional team of backend and machine learning engineers, guiding architecture, mentoring team members, and staying close to the code. This is a rare opportunity to build both product and team in a fast-moving environment with purpose at its core.What You’ll DoLead and mentor a senior engineering team working across backend, ML, and infrastructure.Play key role in design, development, and deployment AI applications using LLM's, Agentic framework, and other related technologiesOwn technical direction for core systems, focusing on scalability, performance, and reliability.Wr...

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