Engineering Manager - Machine Learning (Competitive + Equity) at Fast-scaling AI logistics platform

Jack & Jill
City of London
3 months ago
Applications closed

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Engineering Manager - Machine Learning (Competitive + Equity) at Fast-scaling AI logistics platform

Lead the evolution of an AI platform, overseeing a talented ML engineering team. You will scale AI/ML capabilities, architect systems for real-world automation, and bridge technical and commercial considerations. This role involves defining ML Ops strategy and mentoring engineers, building foundational AI advantage for a global logistics intelligence platform.


Location: London, UK


Salary: Competitive + Equity


What you will do

  • Lead and scale machine learning teams to deliver cutting‑edge AI solutions.
  • Own the architecture, infrastructure, and pipelines for robust ML capabilities.
  • Collaborate with Product and Engineering leadership to embed AI deeply into the platform.

The ideal candidate

  • 5+ years of engineering experience with a strong focus on ML/AI and data infrastructure, plus 2+ years of technical leadership in fast‑scaling startups.
  • Expertise in architecting ML pipelines, LLM integrations, data lakes, and real‑time data processing.
  • Track record of hiring, developing, and inspiring high‑performing ML and Data teams.

To apply, speak to Jack, our AI recruiter. Visit the website, click "Speak with Jack", and log in with your LinkedIn profile. Talk to Jack for 20 minutes so he can understand your experience and ambitions. If the hiring manager would like to meet you, Jack will make the introduction.


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