Machine Learning Engineer (London)

  • Support end-to-end deployment of ML models (batch and real-time) from code validation through to production rollout under guidance from senior team members.
  • Work with Data Science teams to facilitate smooth model handover and ensure deployment readiness aligned with implementation standards.
  • Build and maintain CI/CD pipelines for model deployment, scoring, and operational monitoring.
  • Debug and fix pipeline issues including data ingestion problems, model scoring failures, and deployment errors.
  • Write comprehensive tests for ML pipelines (unit, integration, validation) and implement data quality checks and operational monitoring.
  • Ensure deployed models meet audit, reconciliation, and governance requirements.
  • Monitor production models for operational health, troubleshoot failures, and track data/variable drift over time.
  • Work with Platform Engineers within the team to create reusable MLOps templates and support Data Scientists in using them effectively.
  • Support model migrations across data sources, tools, systems, and platforms.
  • Participate in code reviews, knowledge sharing, and pod activities (standups, grooming, delivery check-ins).
  • Learn from senior team members and contribute to continuous improvement of model delivery practices.

  • What You Will Be Doing

    • Support end-to-end deployment of ML models (batch and real-time) from code validation through to production rollout under guidance from senior team members.
    • Work with Data Science teams to facilitate smooth model handover and ensure deployment readiness aligned with implementation standards.
    • Build and maintain CI/CD pipelines for model deployment, scoring, and operational monitoring.
    • Debug and fix pipeline issues including data ingestion problems, model scoring failures, and deployment errors.
    • Write comprehensive tests for ML pipelines (unit, integration, validation) and implement data quality checks and operational monitoring.
    • Ensure deployed models meet audit, reconciliation, and governance requirements.
    • Monitor production models for operational health, troubleshoot failures, and track data/variable drift over time.
    • Work with Platform Engineers within the team to create reusable MLOps templates and support Data Scientists in using them effectively.
    • Support model migrations across data sources, tools, systems, and platforms.
    • Participate in code reviews, knowledge sharing, and pod activities (standups, grooming, delivery check-ins).
    • Learn from senior team members and contribute to continuous improvement of model delivery practices.

    Required Skills & Experience

    • Solid Python engineering background with some experience in ML model deployment
    • Familiarity with AWS services and cloud-based ML deployment (SageMaker experience preferred but not required)
    • Basic understanding of data warehousing concepts and SQL (Snowflake experience a plus)
    • Experience with or willingness to learn CI/CD tooling (e.g. GitHub Actions), containerization (Docker), and workflow orchestration tools (Airflow/AstroCloud)
    • Strong debugging and troubleshooting skills for data pipelines and ML systems
    • Experience writing tests (unit, integration) and implementing monitoring/alerting for production systems
    • Strong data skills, including the ability to explore and validate datasets to ensure model inputs and outputs are correct
    • Basic understanding of ML lifecycle concepts and willingness to learn about model registry, versioning, and deployment practices
    • Experience collaborating with Data Science teams or similar cross-functional collaboration
    • Understanding of software testing and validation practices, with willingness to learn model-specific governance requirements
    • Ability to participate in code reviews and learn from feedback
    • Good communication skills with both technical and business stakeholders
    • Eagerness to learn and grow in ML engineering and deployment practices
    • (Nice to have) Any exposure to MLflow, model monitoring, or MLOps tools
    • (Nice to have) Experience with data pipeline tools or frameworks

    Personal Attributes

    • You're a motivated engineer who enjoys collaborative problem-solving and wants to grow your expertise in ML engineering.
    • You care about code quality and are eager to learn about model deployment best practices, auditability, and production systems.
    • You communicate well, ask thoughtful questions, and are excited to bridge the gap between Data Science experimentation and production-grade systems.
    • You're interested in learning about deployment standards and the audit and reconciliation expectations that come with production ML.
    • You're enthusiastic about contributing to automated and self-serve model deployment systems.
    • You take initiative, are reliable in your commitments, and value learning from experienced team members.
    • You appreciate structure and are committed to developing high standards in both technical delivery and communication. What you will be doing
    • Support end-to-end deployment of ML models (batch and real-time) from code validation through to production rollout under guidance from senior team members.
    • Work with Data Science teams to facilitate smooth model handover and ensure deployment readiness aligned with implementation standards.
    • Build and maintain CI/CD pipelines for model deployment, scoring, and operational monitoring.
    • Debug and fix pipeline issues including data ingestion problems, model scoring failures, and deployment errors.
    • Write comprehensive tests for ML pipelines (unit, integration, validation) and implement data quality checks and operational monitoring.
    • Ensure deployed models meet audit, reconciliation, and governance requirements.
    • Monitor production models for operational health, troubleshoot failures, and track data/variable drift over time.
    • Work with Platform Engineers within the team to create reusable MLOps templates and support Data Scientists in using them effectively.
    • Support model migrations across data sources, tools, systems, and platforms.
    • Participate in code reviews, knowledge sharing, and pod activities (standups, grooming, delivery check-ins).
    • Learn from senior team members and contribute to continuous improvement of model delivery practices.
    • Required Skills & Experience
    • Solid Python engineering background with some experience in ML model deployment
    • Familiarity with AWS services and cloud-based ML deployment (SageMaker experience preferred but not required)
    • Basic understanding of data warehousing concepts and SQL (Snowflake experience a plus)
    • Experience with or willingness to learn CI/CD tooling (e.g. GitHub Actions), containerization (Docker), and workflow orchestration tools (Airflow/AstroCloud)
    • Strong debugging and troubleshooting skills for data pipelines and ML systems
    • Experience writing tests (unit, integration) and implementing monitoring/alerting for production systems
    • Strong data skills, including the ability to explore and validate datasets to ensure model inputs and outputs are correct
    • Basic understanding of ML lifecycle concepts and willingness to learn about model registry, versioning, and deployment practices
    • Experience collaborating with Data Science teams or similar cross-functional collaboration
    • Understanding of software testing and validation practices, with willingness to learn model-specific governance requirements
    • Ability to participate in code reviews and learn from feedback
    • Good communication skills with both technical and business stakeholders
    • Eagerness to learn and grow in ML engineering and deployment practices
    • (Nice to have) Any exposure to MLflow, model monitoring, or MLOps tools
    • (Nice to have) Experience with data pipeline tools or frameworks
    • Personal Attributes
    • You're a motivated engineer who enjoys collaborative problem-solving and wants to grow your expertise in ML engineering.
    • You care about code quality and are eager to learn about model deployment best practices, auditability, and production systems.
    • You communicate well, ask thoughtful questions, and are excited to bridge the gap between Data Science experimentation and production-grade systems.
    • You're interested in learning about deployment standards and the audit and reconciliation expectations that come with production ML.
    • You're enthusiastic about contributing to automated and self-serve model deployment systems.
    • You take initiative, are reliable in your commitments, and value learning from experienced team members.
    • You appreciate structure and are committed to developing high standards in both technical delivery and communication.

    We work with Textio to make our job design and hiring inclusive.

    Permanent
    Seniority level
    • Seniority level
      Entry level
    Employment type
    • Employment type
      Full-time
    Job function
    • Job function
      Engineering and Information Technology

    Referrals increase your chances of interviewing at NewDay by 2x

    Sign in to set job alerts for “Machine Learning Engineer” roles.

    Continue with Google Continue with Google

    Continue with Google Continue with Google

    London, England, United Kingdom 2 weeks ago

    London, England, United Kingdom 1 week ago

    London, England, United Kingdom 2 weeks ago

    London, England, United Kingdom 1 month]]> <

Company
NewDay
Location
London, UK
Employment Type
Full-time
Posted
Company
NewDay
Location
London, UK
Employment Type
Full-time
Posted