Machine Learning Engineer

SR2 | Socially Responsible Recruitment | Certified B Corporation
Liverpool
4 months ago
Applications closed

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Machine Learning Engineer / MLOps Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer - Remote (EU ±4h) - Up to £75,000


I’m partnered with a fast-growing conversational AI startup that’s redefining how people interact with personal chatbots. Their mission? To create intelligent, intuitive digital companions that genuinely feel human.


As they expand their engineering team, they’re looking for a Machine Learning Engineer who’s passionate about building high-performing, scalable AI systems — not just models, but end-to-end products that people love using.


What you’ll be doing:

  • Designing and developing cutting-edge ML systems that power next-gen chat experiences
  • Collaborating with product, UX, and engineering teams to bring new features to life
  • Building with modern frameworks like Python, TypeScript, Next.js, Supabase, and Tailwind
  • Keeping the AI stack performant, reliable, and ever-evolving
  • Staying ahead of emerging ML trends and applying them to real-world product impact


What you’ll bring:

  • Strong experience across ML systems and algorithms
  • Solid technical grounding in Next.js, TypeScript, Tailwind, and Supabase
  • Experience with APIs, RESTful design, and data modeling
  • A collaborative mindset and genuine curiosity for AI innovation


Why join?

  • 💻 100% remote (EU ±4h)
  • 🕒 Work when you’re most productive — minimal meetings, maximum output
  • 💰 Competitive salary + equity
  • 🌍 Inclusive, mission-led culture
  • 📚 Annual learning stipend + clear growth path
  • ✈️ Regular team retreats & optional Mexico City office


If you’re excited by the idea of shaping the future of personal AI and want to work somewhere that values creativity, autonomy, and impact — this could be the one.


Drop me a message if you’d like to learn more — I’d love to share what makes this opportunity stand out.


Machine Learning Engineer - Remote (EU ±4h) - Up to £75,000

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