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Machine Learning Engineer – AI for Advanced Materials – OxfordNoirYarnton, England, United Kingdom
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Machine Learning Engineer – AI for Advanced Materials – Oxford

Noir
  • GB
    Yarnton, England, United Kingdom
  • GB
    Yarnton, England, United Kingdom
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About

Machine Learning Engineer Machine Learning Engineer - AI for Advanced Materials - Oxford / Remote (UK)
(Tech stack: Python, PyTorch, TensorFlow, Scikit-learn, MLflow, Airflow, Docker, Kubernetes, AWS, Azure, GCP, Pandas, NumPy, SciPy, CI/CD, MLOps, Data Visualization, Bayesian Modelling, Probabilistic Programming, Terraform)
Overview We’re looking for a
Machine Learning Engineer
to join a rapidly scaling deep-tech company that’s reinventing how the world designs and makes advanced materials. By combining
artificial intelligence, physics-based simulation, and cutting-edge 3D printing , our client is transforming the way metal components are conceived, tested, and produced — enabling breakthroughs in aerospace, energy, and beyond.
This is a rare chance to apply your ML expertise to problems that have
a tangible, physical impact
— from inventing new alloys to optimising complex manufacturing processes. You’ll collaborate with leading
data scientists, engineers, and materials researchers
to build models that drive real-world innovation. Expect to design, validate, and deploy
state-of-the-art ML pipelines
that move seamlessly from concept to production.
If you thrive in fast-paced, intellectually charged environments where every model could change an industry, you’ll fit right in.
Responsibilities
Collaborate with data scientists, engineers, and materials researchers to design, validate, and deploy ML models and pipelines that move from concept to production.
Develop and maintain scalable ML workflows using the specified tech stack (Python, PyTorch, TensorFlow, Scikit-learn, MLflow, Airflow, Docker, Kubernetes, CI/CD, MLOps).
Apply Bayesian modelling and probabilistic programming techniques where appropriate to quantify uncertainty and improve decision making.
Work with data visualization tools to communicate model results to technical and non-technical stakeholders.
Contribute to the design of AI-enabled simulations and 3D printing workflows in collaboration with materials researchers.
Participate in code reviews, testing, and deployment to ensure reliable production systems.
Qualifications
Experience with Python and a strong background in ML frameworks (PyTorch, TensorFlow, Scikit-learn).
Experience with ML tooling (MLflow, Airflow), containerization (Docker), and orchestration (Kubernetes).
Proficiency with data libraries (Pandas, NumPy, SciPy) and data visualization.
Experience with CI/CD, MLOps, and cloud platforms (Azure, AWS, GCP).
Familiarity with Bayesian modelling and probabilistic programming.
Version control (Git) and Agile methodologies.
Benefits
Competitive salary
with annual performance-based bonuses
Equity options
— share in the company's long-term success
Private healthcare
and comprehensive wellbeing package
Generous pension scheme
(up to 8%)
Dedicated R&D time
to explore new technologies and research ideas
Annual training & conference allowance
of £5,000 for personal development
Flexible and hybrid working
— work where you're most effective
Opportunities for international collaboration
with teams in Europe, Asia, and the US
25 days holiday
plus your birthday off and extra days for long service
Regular team offsites, guest talks, and hack weeks to spark innovation
An open, supportive culture that values curiosity, creativity, and deep technical mastery
Location and Salary Location:
Oxford, UK
Salary:
£45,000-£80,000 (DOE) + Bonus + Equity + Pension + Benefits
Applicants must be based in the UK and have the right to work in the UK, even though remote working is available.
How to apply To apply for this position please send your CV to Lina Savjani at Noir.
NC/LS/MLENG
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  • Yarnton, England, United Kingdom

Languages

  • English
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