Senior ML Engineer

DeepRec.ai
Liverpool
2 weeks ago
Applications closed

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Staff Engineer (ML-Native / Software Engineering)

We're searching for aSenior AI Engineerto lead a growing AI team within our clients'AI & Automation Centre of Excellence. You’ll be responsible for productizing ML models, managing MLOps infrastructure, and deploying cutting-edge AI solutions at scale. 🌍


💼What’s in it for you?

Tech Stack:Python, React, C++, LLMs, NLP, MLOps, LangChain, Terraform, Docker, Cloud ☁

Impact:Oversee 30-40 production models, drive AI strategy, and shape their AI-first future

Leadership:Manage & scale an expert team, balancing hands-on work with leadership

Hybrid Flexibility:London/Brighton HQ (only once per month on-site, expenses covered!)

💡What we’re looking for:

🚀Strong AI/ML expertise– experience in LLMs, NLP, agentic AI, and deep learning frameworks like PyTorch & TensorFlow

🚀MLOps & DevOps knowledge– GitHub, Terraform, orchestration tools, cloud deployment & CI/CD pipelines

🚀Experience managing multiple production AI models– handling 30-40 models, scaling, and optimizing performance

🚀Leadership & mentoring skills– ability to manage and grow a high-performing AI team

🚀Cross-functional collaboration– working with data engineers, DevOps, and product teams to bring AI solutions to life

🚀R&D mindset– comfortable exploring the latest in AI automation, agentic frameworks (LangGraph), and real-world AI deployment

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