AI Engineer / Machine Learning Engineer

Marylebone High Street
12 hours ago
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AI Engineer / Machine Learning Engineer.

Excellent salary plus benefits.

London / Hybrid / Remote.

6-12 Months

Competitive daily rate.

We’re now looking for a skilled AI Engineer / Machine Learning Engineer to support the next phase of AI-enabled digital service delivery.

This is an opportunity to design, build and operate intelligent, production-grade AI systems that power digital services which are simpler, clearer and faster and that genuinely meet real user needs at national scale.

You’ll play a key role in developing scalable machine learning and generative AI solutions, embedding them into secure cloud environments, and working closely with multidisciplinary teams to translate complex requirements into reliable, real-world AI capabilities.

Key responsibilities include:

  • Designing, building and deploying scalable machine learning, deep learning and generative AI systems for production digital services.

  • Developing robust data pipelines, model training workflows and inference services across cloud-based environments.

  • Collaborating with data scientists, engineers, product managers, designers and policy stakeholders to deliver end-to-end AI solutions.

  • Implementing AI-enabled capabilities such as intelligent automation, natural language processing, prediction and decision support.

  • Ensuring AI systems are secure, observable, maintainable and aligned with governance, privacy and responsible AI standards.

  • Supporting experimentation, evaluation, monitoring and continuous improvement of models in live production environments.

  • Optimising model performance, scalability, reliability and cost efficiency.

  • Staying current with emerging AI tooling, architectures, frameworks and engineering best practice.

    What We’re Looking For

    Experience & Skills

  • Strong proficiency in Python and modern machine learning frameworks.

  • Proven experience building, deploying and maintaining machine learning or deep learning systems in production.

  • Knowledge of natural language processing, transformers or generative AI architectures.

  • Experience working with large-scale datasets, data pipelines and cloud data platforms.

  • Understanding of software engineering best practice, testing, versioning and CI/CD for ML systems.

  • Familiarity with MLOps principles including monitoring, evaluation, retraining and lifecycle management.

  • Ability to communicate complex technical concepts clearly to a wide range of stakeholders.

  • Experience collaborating within multidisciplinary digital or product teams.

  • Commitment to ethical, transparent and responsible AI engineering.

  • Comfortable working in fast-moving, evolving and sometimes ambiguous environments.

    Desirable (but not essential):

  • Experience integrating large language models via APIs or open-source frameworks.

  • Fine-tuning, evaluating or optimising generative AI systems.

  • Experience with containerisation, orchestration and scalable cloud infrastructure.

  • Knowledge of reinforcement learning, graph machine learning or advanced deep learning approaches.

  • Exposure to observability, model governance and AI assurance practices.

  • Experience within government, public sector or other regulated environments.

  • Mentoring engineers or contributing to AI engineering standards and capability development.

    This is a unique opportunity to engineer AI systems that directly impact digital services, working with modern platforms, meaningful challenges and technology that benefits millions of users

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